/* Navicat MySQL Data Transfer Source Server : mysql Source Server Version : 50137 Source Host : localhost:6688 Source Database : demo Target Server Type : MYSQL Target Server Version : 50137 File Encoding : 65001 Date: 2019-08-24 19:39:18 */ SET FOREIGN_KEY_CHECKS=0; -- ---------------------------- -- Table structure for categories -- ---------------------------- DROP TABLE IF EXISTS `categories`; CREATE TABLE `categories` ( `CategoryID` int(10) NOT NULL AUTO_INCREMENT, `CategoryName` varchar(15) DEFAULT NULL, `Description` longtext, `Picture` longblob, PRIMARY KEY (`CategoryID`) ) ENGINE=InnoDB AUTO_INCREMENT=9 DEFAULT CHARSET=gbk; -- ---------------------------- -- Records of categories -- ---------------------------- INSERT INTO `categories` VALUES ('1', '饮料', '软饮料、咖啡、茶、啤酒和淡啤酒', ''); INSERT INTO `categories` VALUES ('2', '调味品', '香甜可口的果酱、调料、酱汁和调味品', ''); INSERT INTO `categories` VALUES ('3', '点心', '甜点、糖和甜面包', ''); INSERT INTO `categories` VALUES ('4', '日用品', '乳酪', ''); INSERT INTO `categories` VALUES ('5', '谷类/麦片', '面包、饼干、生面团和谷物', ''); INSERT INTO `categories` VALUES ('6', '肉/家禽', '精制肉', ''); INSERT INTO `categories` VALUES ('7', '特制品', '干果和豆乳', ''); INSERT INTO `categories` VALUES ('8', '海鲜', '海菜和鱼', ''); -- ---------------------------- -- Table structure for employees -- ---------------------------- DROP TABLE IF EXISTS `employees`; CREATE TABLE `employees` ( `EmployeeID` int(10) NOT NULL AUTO_INCREMENT, `LastName` varchar(20) DEFAULT NULL, `FirstName` varchar(10) DEFAULT NULL, `FullName` varchar(20) DEFAULT NULL, `Age` varchar(10) DEFAULT NULL, `gender` varchar(5) DEFAULT NULL, `Title` smallint(5) DEFAULT NULL, `TitleOfCourtesy` varchar(25) DEFAULT NULL, `BirthDate` datetime DEFAULT NULL, `HireDate` datetime DEFAULT NULL, `Address` varchar(60) DEFAULT NULL, `City` varchar(15) DEFAULT NULL, `Region` varchar(15) DEFAULT NULL, `PostalCode` varchar(10) DEFAULT NULL, `Country` varchar(15) DEFAULT NULL, `HomePhone` varchar(24) DEFAULT NULL, `Extension` varchar(4) DEFAULT NULL, `Photo` longblob, `Notes` longtext, `ReportsTo` int(10) DEFAULT NULL, `Sex` smallint(5) DEFAULT NULL, `EducationalLevel` smallint(5) DEFAULT NULL, `EMail` varchar(50) DEFAULT NULL, `HomePage` varchar(50) DEFAULT NULL, `Goal` int(10) DEFAULT NULL, PRIMARY KEY (`EmployeeID`) ) ENGINE=InnoDB AUTO_INCREMENT=10 DEFAULT CHARSET=gbk; -- ---------------------------- -- Records of employees -- ---------------------------- INSERT INTO `employees` VALUES ('1', '张', '颖', '张颖', '26', '女', '4', '女士', '1988-12-08 00:00:00', '2016-05-01 00:00:00', '复兴门 245 号', '北京', '华北', '100098', '中国', '(010) 65559857', '5467', 0xFFD8FFE000104A46494600010100000100010000FFDB00430001010101010101010101010101020203020202020204030302030504050505040404050607060505070604040609060708080808080506090A09080A07080808FFDB0043010101010303030503030402050703050505050606080F0605060608070D0705090709070A0A0F0C0C0F07080D0F070F0F0F090F0F0A0A0F0F0F0F0B0F0F0F0F0FFFC000110800C800C803012200021101031101FFC4001E0000010403010101000000000000000000070005060802040903010AFFC4004E10000103020305020A060804050109000002010304000506111207132122313241081442515261627181A11523728291B11624334392B2C1C25363A2D1257383F0F209182654648493B3D2E2FFC4001E0100010305010100000000000000000000070506080002030409010AFFC4003E110001030203040706050108030000000001000203041105122106314151071322617181A108324291B1C114235272F04315336282A2C2D1F15373B2FFDA000C03010002110311003F00FDEE19751CABCE957A37DF42AB5D7A4ACB4F2E9CE9292270EAB595609DB2F757AD3B80F88DAEB390B152CFB5C13BE82DB61DAED8B65387A6CC91FADDF0D9258B0C09378F2F72F1E09C7CF4F5B53DA75BB66B878AE5243C6AEAF12B30222168F187725EABE4027523F252B9AF749576C5F79957EC4530EE531C7778E91F2EA2EE044EE01EE1A8CBED09D3B4782C269A972C93CC3C98D37198F98D3C13DF647657F12FCF2039586FDE4F21F74D3630BD5D675E319E25564711DD1C075F16855019144E4011EA99270CCB8AF7F1A7396FAAE421A0F2EF4EEF7D6DB8E68131143152EFEE1A87DD273B17EA592C9E5CF35AE53E2B894D512BA699E5EE90925DC4A3CC108D0345AC341C07828C623968EBA1184D1507AA6551811D3DF9D38B8D938E6EC5ADE38A5D6B6D9822245A47517B354DB3425C63B28F1D5338EA693344D2BDCAB58390CDC6C5E71085B4CC956A6F6FC3BA84A64AD6D35D402A078DAE431D9DD0920EBE544AC8C6171B2C94E731B21C5EEEADCA78D88A2BB91E1A97CAA1EDFDD558521A69535AB47F9549DC65C7174B22625DE54DF3AD62ACC811FDB1818A2FAD5324A70C200CB6E69CB059A5081BB62356886FAA9212B20AB9FAD12BEC7864E2B8D9F963CB979FBBE74E56B71B9D87ECA43CC3E28D6BFE14CFE634ECCC71D3CA3D296DB2DEE0A5CFC413A2F9697B7CC811216A4E57387424E14FE3970F3532C68FB9B938DE7F57207783F6D3B5F2D3523F1573BB25AD77EF5A52B6C57836E109F2A674FB6797718B321DDAD6F34CCF8921B971C9451776E016A15542E0A9ABBBBFA5311364D97372D3E5AC862C86F785CA7909E5EBE957364CA330B0CBADF91E1EBBBBD6BCB1E616E7F4E3E8BB09E0EDB758BB4FB6C8B8BCCB76EC650DB698BF5BD38A38C829204A63CE28AA48A9DC8499F44D57445C0206DE65509B51E05DD92F4FC6B83DB3FBE5E30362EB7E2BC2E59DE18E769BE892853B4C2FA42E8EA4D5E49EED6BB5BB37C5764C7183AC989EC0FB6F59E5B28E329DECFF0096A9E490AEA1D3DDD2BA19ECE1D297F6942FA3AA75A5A76B4F7BDBB81B7976F9917E2A26F48BB2E29672F87DC90DDBFCF1440EB92A74AFB5E605DCB5E952BC3AFAF3F97921B10952A54ABD5E2D7AF60ECA57987692BD03B2958D81606A45D95A8E628C4D67C1F61BA626BEC90836A84D2BCF9F9913B93CEAABC13D7523254D2B9F28FAEB9E3E1378D9DC5389E0ECFADEE195AA118499623FBE9249F54D97D842D6BFF4E871D2B74851E0D40EAA20973AED8DBCDD6FE5D38F67B06353308EF602C5C790424C47896F7B58C5D2F12DE04E1C55D231A3296630E3A761BFB79F152F28B57708D672376DE96191D223D57D2A7B28B1ECB69660B420E3C4599AFAFBD6991B6C9C701B1ED571AB6B71E9EB2A1F3CEFCEE99C5C4FDBFE3B9484A6A66B1A1ACD0463281C96B9088B6E11172A26AA16CE227A43FC865997051A255E1C6F49476DCDDC70695C757D24CF487F110917DDA8CDBE30893721EE625E3A7D15A4310651AF2BA56A6784C71ECB285B53DD3E4E1745A935A6C29CA5214C447B48BE7A7C1207399B252CFBAB61C991ADF19F90F16ED90052322F2512BD86E4ABFAE24F9D946B165D23D9E0BCE38E03790777524EE44F695795280131BFA59C71C73B4592AAF7369E887B5E7A76B84A9DB44C54E43644DBB3C22E645F29D24E08BF6478D3C5DB0FDD20B7E2D6CB69CC7979514DC444F7E49C69460889D1A2E96E9ACC235009D7C90F2535120C7FAC7019673ED170A61B5DAEE98B261336D8D2460B4688FBFA725155E8D82779AF70F5A31E1BD87E20C453066624980CB49CC2263900F9B26D332FE4AB6783F6450AC16F73E8B8325E71A60C5B90F8A020E699AEEDBF233ECF0E6F3AD137663612798B8E5F706658F10C7D910EC9ED5D725A1615BB615B6B76BBD4708F70664BA0603C5050895C0445FB2E0FDAD25E8D6FB61CA3C38D1F76DD67FA3EFD11C26FF55B9306205FFCC32B9FCC0DCFE1A0BC189BC6F79E4A1A67491511163887022C539F0EA9CF1E63BCAF37A289C38D287F68C389F82F05F915481B8E243ABA897327BAB2662EA6E434E7963F9D3B5B63B8F5B61E43CDA3417DD554FCF55264EF3C16696436D547E5454719E510CD3A562D325A444BBAA504C8363BB21E9D6B2287F57AB4EA5F355D1C9A58AC5D66A029E6196DCB9DAC4848DB94D641AC3AB6A9D153DDD6AEDF82663D4B2631BB60398411ED974D53A1B7E44793966E00FB25A0D7EE8D536D9FB69E31304B95B220424F668A51DB9965C55876F169546EE42EE6C17F9E3F5823F7B4107DEA5FE8FB6AE4C331382B623FDD3C070E6C768F1E63D50EB6CB0C1510C919B7685DBE2176504913B3DFD512BDAA2D85311C2C5B87ACD89ADE4850E747092DE5E4EA4E28BEE5E1529AECED1D532563648CDDAF68734F3075BF9EFF0035139ED20D8EF1BD2A54A956CAB5621D94AFB9A659D7DAF022410CB2E95E075B53B883AF78DCA871EE4C7892EECD9EC574BB4AE58D1E39BCEAE7DC899E5F1E95CC2B2B522F5882E988EE1914A75E71F7157CA75DEB97B9387D9D3574BC253132D9F0485958734BF707D195E1FBB1E62FEDAAAB6187E256B8FA874B8A1BE3FB45D3E435CEDF6BDDB0326211E1ED7661471E693BDEE1BBC9B6459D84A611C2663FD4240F0B269BB93AF4CD223CA29A699E61789DBF57665485DD0AFA29DEBF04D54F523EB8843A6B5A1FE349CF3CF4C8314B490B291857D13717255F8B7CB5085CC00924DF76BCF4BFDD14236F640E6B56D22F5D1C7A639ABC5DC357913BB4765B0F80E93FBD52128224BF57CA3DE9585A5C1286CC38E20DB61CBF69572CFF002FE5A749D95BE2B929E201001E9EBEEF9D69B59ADD6D897704C32085973763DC299FFB5407184CB94C18787ECECF8D5DA53880CB3C7EB1C5EC8F0F5D4963C82719724482C88F33F3705A76D96C16D9C692B68371847748F150E1C0651CC805DFDF38ABC7A2E90FBB4E3D9DC2DB3CEC63DE18D0EBBDD626C3C97B2D41634BFF004FBBFB919766FE0C78470CDA60C7BE3F71C417444D724C9C56DB374B892A20754CE8EB0F66B8260A8EE70EDB9A2EF546D557F1EB5138FB5A8EE1278CE1A9ED0AE7993729A738FB95116A7169C71866ECF371927789C82E08CBE2AD992FA95787E153776629F046811C0286E3F5001D7EECDC10E2BAAAA9CE2F90CC331BE9B93E46B3D9E108F894083132F29B1CBF3E35B6A3C39BA2D6E696C3B29E56AF3D63BB22D02DF6A89D131A1B601A011636DD6F2487D61DE4B8F8AE757849ECE66DD2C18820DA23EF2ED09E0B95B047AB9A39B749F6D1483EF5560C2763837CC3B6EBA452DE352A3A3CDAAF42425CD33F693946BAD7B49C2C371809708CA89258E05ED35DEABEA4ED573818B07E87E2EC4183C1BDDDAE51397AB47985B71CD4FC74F69B7B565ECBB50E3A53D9C7534C5EDDCF371E08C3B338F6688347C3A21AC8B1C88E3205C1E6145E3A786694E98660F8E5BAFD145BD3221CD3D03E93648849F9951A9EB3C79F137823A9C30D27FD2A2B836DBE2B8C2FD14840464DBE24944F58E6D9FCD068441F70539C6237041439930D1C5EC697507254ADE8B69DF5BC9C6C72C8B42D1171061B721CCD4D8FEAEE2E63FED4E785ECBBC8F39B719D484423F9D5B14BC163FED0EC03AA8AE0D6BC5EE0F3243DB443FC38518A6452722B52190D521879B90D2FAC4D0B2F9544E5DA5BB3DDB0CCA644C5B911F2753FCC4CD0BFB688CCB3A9BDDF51C9456B5E7075B702DF5D3EE926B26B9BF30ADA7830DEF796AC65849C2334B65D55F89EB892477A1F816F52AD187DBD5542B621735B36D26DE0EB85B9B95BD60BABE938DAA9B65FCC357CC5533F9227E75D60F671DACFC7E050E7F7A98BA077F97DDFF490A30ED4D1F5750E1A76BB4BD6956243ABD54A8F42E9BAB2CF2AF225EDA74F5D667D95AF3709397D757375045EDBADF42A88E3C950BF081B91622DA1DBECA3CD1218234289D335E2E7FDFB151398F72CC6DBE56DB6B8FBCBA7C92B6274872F58BAED7E21EF709B55F3912AD6BC56D1C6EF4F39C5B593BA151E8482222B5C63E9231835D88D4D5137EBE57B87ED072B3FD20290185C21914717E968FF009519DE0EF85178E42A4A9E8A6699D0749C7AE0E3AF08EF2448926F65EFE00BF01D544291707240DEA5196A7017422FA2A8DA2AFE63519871FC4E2B9308798594D3F144FF00F91FBB429AA1604A73C2FBB80E413D6138AE3CF4A7579990FAA01F577AFE35AF8E250F8D336B6CBEAC03539ED1F77CAA5D86638C1B2B729C1D3A855E5F765FEDA685332414C95264116A533522FE9F2ACF1D301101C5D62B669DB99F71C17D86DCC9C51EDF0C77D20CD1B683D2355C87E75D0EC0B8520E0BC2D69C3915B07198ED692251E2E1AF153F8AA92FF1553DD88DA46EFB448EDBADEB6EDEC24973DEBC13E757CBC9C8BFF155CD6A58F41BB302384D5B85DD36EFDB61F74C7DABAD2E7860DC353E2B55605BDE4D270E1B88BE9328B4DF2708E1D943F5D66B7399F7EE5057E54F397541CB556404489C55528F0DC3A32002D8EFDFBD35F39BDC12B5A1DB235BA3A458A282D07653529E9FF6ADC11D05EFAFBA8BAF935F75A799694596B58060B725E78AF859692D5A34E9F2AA9B6DF365D33771F10E1F68165C37FC7619AF465DCB99A32FF09C12212F372AF93572B501271A62C4987E0628B4BD65B8949488EF2AEE5C545E3EEA696D7ECC32B69DD1380246ADF14A185E266090381B0DCEF05CF1C2F7287882DA33A283CCB67996E9E1D0EC7345C9C69C4EE203D42A35A50E0F89E38C3F2BF727E376D3FBC9BD0A956D0763970D8ECE2C6D84A44CBD61475DD775B7E94D639A719019752444C97344E5A6872E10A65DAC77087219940EAB1718C63FBCDDB8224BF1177B3ECD423C77029A8E531CC2C47D38228535635EC2F8CDC11A2225C2C2DCE60E3B8D8212F322FAD38535DB6C7E26DB8DE9DD96AD45E62A9A3CE36CAC775795B57B74ABF1C93E74E1E2E23CBA554D33A47634137093C563836C8578F238B316C3204799875073F7F1A90418E4E69C8BAE5F3E35BD8F608BD87E4169FD91A1D6565D450E1C811EDB21C7E1553446EB6993F63CD6C4398B61BA59EEDD9287241FCFD915CD7E55D2663418838259B669A857D55CD5BAB2DB8D8B265A77C2A0ABEFE157BF6597BFA7B677836EC44A4FB96F645DFF009829A0BE605535BD8BB1CCAFACA47DFDD8E66791B3FD2C83DB7B4FDA63C7024221071525A55F1BEFA553E597B6BC34438B2F4AD29C44DC27DC1ED0B4449F04ADDAF075BDEB06DAF0124545AB6606C72EFB7DD7AD5CEEB48895A62CA2CF9D80535F5E54DD6D242C3F2088B516FA4FFF0090AB4ACB39CFD0E71B7B96434F2C424F44DB7144BE61499942DE0B9921BFDB7D7867E8A939A53E655C4CAC681727E16B8FCCA908D75883FE23F542B885FF00B9D7EBA116A724DD1F8ECAFA5A9EDD7E4034E17A1F188D163B3D979C46153D48BA57E655B17C8236EC3F84ECAC8E914B8B4F127A4E139A957F122A5618FE38B6A326F78428248BE8A973534EA9B67B631C6C12BC327BC7F48BA955D8BC4EC3204497F63A113DFC284A4CB6C92B84460239F3179F86545DC5CD6E59871457511A299250AB1239F47D86ED3887985B334FBA19FF006D6FD45212E0C3C2C16ED04DA07036CC5588F05F8F1A461EC498B0B76253E79B2C9FA4D33C89F31AB42E4C811DB27A4C9662B69C54DC2C87E2B5C9393B3EF0A0B9601C3B85F665B5FC3FB3B8ADC64348D1F7ADBEE1AAEB2537841722CCBB39D061ED90FF00EA4D8507E92B2F841621BC5C10F923A5C81E17173E1C8F21A69F3E6952FB65F6819153C71804E4681FCFFB4DFABD93748F73FAE85B73B89B1FA15DB5FD32C21AC41BC5187F5AAE9CBC700173F8D481B705C1171B3071B31CC4909150BE29C16B8E7847C22BC35B6597C8D07C22B07FE99605173712EE906030471D532555CDB6D10F2CF35E541FF313B55D5CC0988B0BE28C336BC458424C09564941BD68E3B7BB02CFAE428B927AC7CF4FFC0F1F133B25ADFCF129B389E0EF835391C0F106E3E814C77A485A7CF5F335F3AD67DBF56558E96D4B9879A9CEE7592735C392C90F8714E35F10F24CB2CE90822A754CEB0AC333F82B8342D0BA456E7C17A2BEC84865C1C884BCAFF6AE7E6D930026CFEF185F1861B292CD95AB923B3A128E6DEEDFFAA709ACBB196B152CB954B4F657B5D0D75CC8732CF3A13ED2B0AB38A30ADDE10B6B21C58EE690EF25CB34CBDAA167499B362A699C5A2EE8C5DBF74AF845598DD61C500A54970B0C94B2E0E36E22AFB5938AB9D1181C17045DE9AB997E2AAB409B5DD3C7B063844F6F242680753DB15D25F7B34D5F64868E5075390E2E9CF3C93F24A8694FA388B5ADA0FE78A7516F1E69A7173225866FCE7A1115DFC173A69B18EE6D76D6905791B40FC157FDA9FB1608B7847163DE4F881827E2894DECB7A19647CC89F92529E254F60CF0FBABE09AED23BD68DDBEAC60B9C7817F5AB59E0E1255ED9C37148B52C4B94C8C8BEADEA9FF007D557BB35BE8ECB7A90B94F2AB1DE0C4F1B9857133248998DDDC35F79363FED47CF654AB7331D2C1FD585EDF910EFF006A62EDD8BC03B9CACE37DA2A55882F29FB929574F29DB717E64A102F7E049E74AF8B9972AF5EEACAB55C704B4A8FC16AE966005F7D81D39F35E86DF778AE6B633B7BB85EF38E2C6EB7BB6DDB815CA30FA486E289FE0A825FF56BCAC2DA4EC373A29768659EAFC40EAC478486116E75962E2A841A6647791B35F51E439FC86ABBE0BD25231A5ADB791E8E8A12D82F49B36F24FE4AE4D74A7B11261D8BC94CED448E73E33CD875FADD1BB0BC4C4D4CD905B5D0F8850BC4AE14C18BB9EAC130A3F02455FE5A78C13189E6F7DA7B32543F8510698749039323BA3CCDBA80BEE2042FEB52EC025BB8F7E67F78D5C934FB88457FA50469E1CD50D71E27EE9C8E77E5DFB96F62E648AE11797991BFEB42DDA45B5C66DB6BB4B61A5C9AF331453D2571C145F92951FAED04645FA2C6254C963017E2E2D43B1CDAC65632C170D4778DA4CDF2A7D86D553F2A204383173CBBFC6C1EAB6B0BA9EDB077129DA3DB5C6370E37D1B44C93DF96753B8A471DC734EBD2A19A27AEBE14170C5CD69A75228E7A7B59E74F712DFE30E6A2EDE8514FBDFF8D1C70DC26C728E2B72A6B8168BF0D139D94DD77F57269928E499986945425F5E7C2A6364B3DAACADB8D5A6DD02D919C3574C586D1B1235F2B24E14CD69B6391D59521D3A3827B552DA28E0B44582EFBDC6EF0B261E252B4BBB36593EEAB6D969ED56A8C8D3E527AE9BAECF1B2DE4D8679AE64B515179F1711D473957BAAABB1BC8EB73554B4399B753F39087C5C5E9DF43DC55B50C1782D837F14E2CB3E1987A57EB263C0DA92A75C917355F854B5AD4B15B4CF5E7D5280FB41D966CDF1C3C4E62EC1387B104A2E4DEC9650CC43CC85DD58F17AF9191873388BFFCAC94142D73F2BBACB775BEE831FF00B73F83CBD78916F6BC222C305C43D02975B59F8BB9EA17800321FB6B9D5ADC2F8DACF8D2CB1AF7872FD87B124131CBC66D3291F8E4BECAA2AE455CF5DA47801F83D633B5DD060E17FD17BA3B2425332A1B9FB345ED36A2BD4572254FB555463F81D78457838E2C6F177830ED0DF911448BC66D272B74328334556DC65ECDB3F8AAD315DB406F69371DFE29DAED9A8246FE53DC083B9F6B7A2E86E3AB4C1C378AAFD6B8A211E2DE5E09D1913F662F92A23A89EF51D69F7A8C16F1D2CB2C913659642BEF4C916A985DF6898836ACC6CCD71461D938331C377E8506E96D747469700D1E3705B2E6415112FE8A495706CE4E1908912A92659A7AD3AD45CC780158ECBFD4795A7240E6372BAFA7F345B18B353987E7474CC864103229EF34A69F186F4E7AB4FABF05A75C4D9105BE3F922EAB9FC29A53F3A8239247C72DB6E6F9A5487740A0741045CD557DFA6B5B1C90E7637F4D82A840B5FBD4C1E6B78B14F52E95CA8F5E0C2DB8361C744596EFF485F647EE887FBD06E5278B8C72F2B8E9F8704F9D1CBC1A58567004A99A53F5EBCDC260FD8279447E41520FD98E82D8D663F0C6F3F46FFB93176C67BC3A7EA0AC68752F852AF8DF153F7252AE9C431170CDCD0AE11A2DB2E8BEEAD735CB9B8F756CD60439E6BDF5AAF07E6AE70E2879B4882375C197A6377BC2D006083D572245FE955B2EF81E04179AC61655001B9456DB96C07637A29C4C3ED7367EBAB873A3373224A88E67A1C026CBDCA9950519B6C872C72AD7BB0727C47155017A3DA57992A3DF4C5B11155DDCF6309EAFF2DDC5AF692E1E8E29C7825716B6D7B6BF65482FC3E2B881C1DE6A6E5476DF64BD2D2BA493F956BDB08C858B7AB9472E5194C352007D271A5D25F27069971B3F3AC77A9984AF51DEFA4ADD24A45B9F74796642778B79AFA48AA4D2FF00CA1A6D9D7218056FBF32E6A6E1BC8F38BDCE472E573FD2BABEED731312062A97070782C78CC0F075FB48CD412678AC35ECA3B5FAEA36DC6D8245CE562683F1117FCC4E70FCA9E3135B59FD3AC0E43CA2529F02F67EAD553FBAA278D3733B0DDA71045D0F4EB7BC13593FB196AFF4895106F08CDD25611BD452CE299B13592F44078FF2D1C3017364EB2E0939E27A471210E16E447A228BD059E56F761C387DAAC998C2DA6482035B8591A37A7B2BC53DDC7FDE9BE6CF876D8EF4CB84C8D062065ADD79C4006F35C93355544EB523626341CC5A7549D1CA48B15B7A3C9CB8D39C71ECFAAA07071E60EB82BA56EC4B6AB80B7FB438EE6B11F88A2FE74E038F3033429E378C30F44CF9511E980DFF0032A52836AD8DF886AB0D413652395095C517034269545E62E03EBF850D708DE931849BE4B856AB944C3519FF001589364B64D7D24E0E7ACDA6D78EE5178092F6FAA701A29DB6E56ABBB42F5A6E502ECC7A71A403C9F8A2AE55B8E9362ABAB21F577D69FE098F21D7045EFE6B5D958471099CA3969D23DA4E9509BD47C9E115FDA775108B2CF8531CE86DC8422D28756631485EC2070DC95A82AB2BAE5095B6CBEAFEAD09B5031CFD59F0A6B8B6B248E4BA508B51E94F4B8AF0A2548B2B2D8EA143CD7A8FA34CB38A2DB62C89721D662C565A575C74FA362299AAAFB289436AFC24B459FBAC9DB1E282DD9BF6B454C71E3C57BF084D9AE1E6743CCD8EDD32F1333F4DE456194F9B855632CE05A49CE4ED6A5F30AE755F703471C553B196D6A43321B977E31760EBFDDC064FEA13ED28809AFACA8E1F48132D3631D00A4385A5A0EF270B2CBF0A8BF8C10FA975BE1701EAACAA7DC11C82F3C412B95B2D402DA9A88AFA280992FF00A8AA2780E3B988714337425FD5F42933ECB02B922FDE5E34D38D257D21880B09C17BF5182CB51E618F4D1FB4344F7EA14A2F6CC6DACB716ED7671B08D1F3F160CFF760DA645F82F1AC94D49F88AFC8385CBBC00498EA8C910299B1CDC3E8DB7CE705799965507E6B571764760730F60DB1D8DCE2E46641B73FE6236087FEAD5552ADD6A2C6B8D2C36B79B3184E49F1D97E6161B5DE17E423F7EAF7E1D649BB6C670C405E7B37C93D1525D4A9F3A977ECA98097CF3D79B652EEAA3F2D64FA8438DACABBB4339F6948B4E905F3D2AC8B80AA52A9EAE16D0F9A60BC6AB2AF32D03D53E75E94A93CD9CB6160682A2BABB3DF5109D0861CEFA519651D65D14092DA2FE0552990E3620A846895A4E5C63B65A08C893D54998A88DEDCAE31022C413CC7057C40DF4E4ABC6DA766F68C65648F736188CE5C9853F177D7AEECFB4C92F7829695AA4D06D70E63D78C1AF11C5BC33BC218F2B91C70178AA2A77E9CF4FAD349F955D3DBB35066C6951C23EEC9C05E225F1E2955EF176CCF08ED01B646F90DE8B88A0AE4C4F8CE2B1322E49C0DB7078A8FB07CBE7A85FD3AF45F156D49AAA6EA43A503303A324FD5A8DC6D6B6FF2441D9AC60C6CB3BBD53AC0B892E102DF72C0F7C6CFE94B5B8A0D6AE2B2184E5CBD797657EC8FA5450D99E20799C2F7AC1B209265D2C0F1DCAD59F15996C23E2DFDB6D54817FE9AF95513DA96CA76896A73F4A2DF2AC9889E607EBA4F18CFC8D29CAAE8E8D287975305142E8A9CD554E56DEAC387F1359E0DD6F2E603C78C48538C1716D5A4794781822E7A4DA242115C97B25C34AD46EC39B5386D416CCC9486B4870B76CB785EDA1B6874BEE4F2A7A5150D1977DD75D2C331B996E8F21A2272393426C910F171A2E22ABEBEEA806DE3075D318EC871BD9AC05A3110C649903FCC90CB82F08F7F695AD3432D8A7844602C41648B85EED77B559EEF189C0884B23531223A9EA0469E5E5E1D9505E6E51F7D5B48F21890224CB804D927051ECFBF8705A95B83CF1545382C7C643DA3F7036D47CD37EA992C327698E195C0F7582E7B5876EF8BE161EB5DDB0D5EDDB56F986DE5689947033244D48ADA8F72F0ADB8BE19FB4886BE2B8830D608C5D17CB5565C8E649EBCB5A7CA9B36DDB3995B39C513AE76A637781EF0F2BF1C80730B6CC5EDB25E809F6C7DAD5556AFD15F675382D9B659AEB44E99D3521DA4ADA6718E39EA9B97E13AB0F7D89B2951B1FB1B83E2B0367960A77193791769078EAD20ABC50BC24B603889124E2BD8B3F6194BC4A4DAF76AE0AF9F7AD934E7E145EC3D8F76557013FD09DB2496E4286B6ED58985D56C7CC82F3C22EA27B8CEB92F15CB813E222C3EE0AE42A9A68AF86BC7BC7DB645B744115111BD39EA5F370A506EDCC86FD6C540E27E26B7AB93C9D1DBD4396B6D37B3ED0C6D2F82A2B22B6A01709231E445FD574F2D78E9B918819C297E82363C42E838EC610943223DC803B66C3C089990F781A21279BCAA9D886BF3500B625B2FBA589E958EF186F3F48E4B5E2D0A2A96696B8BD74F9B7CE2F3179BA2766AC0C896CC46D0E4A496CB8E4211DC3D5EAC869C18756173334BD4B0702E373E7A0D79EE518EBC32390B23766CBA13B813C6C2E569C81EF1ED7FDF5AAE5B5769BC702F6018A6636370846F8F35D5E6B34558609DFAB4F397921C3CAA2B62272E972B7C827A43D82F0F08AEFEE131C469E26FBD1B45FD8FDA5AAE188B6B185ECB1E2D976696F8D309C7770DCD51556C7D23CCB8A965A894BCAEB9D0D76DF6A9AC8DCC3D5303C65CCF1DA777307D16E61B771ECA915CA2B167B7B305BDCC59041F531CBF76D0A264869DDEAF5540E1DE2630EDC2E91477D35960C2DE2BD19E1CD21CF5A7646A510ED338AD2770B838E3D7595C824F1667EF54F9A7B34CB21B8B1E38D8ED2D9BCDA3A9BE7BB4721F5F3AF78A2F369EEA8D35CCCBDAB1171668E37EF4BCF945ADF350F8715BC3B619572905E3121C3765C8797AC87578AAFF006D59416D30EE0BB2E19D1AAE071DB7A5E9EA2849AD47ED6742B2B1B77695060B2D9CA8F0CD1D7904734D63C78AF764A947CC17851EC59725973890AD8D9A14974BA3CA9FBB4F875A706C5E035134869E06932560C87B9A7579F417EE4858A56B6C1C773753F6F552ED9860B7EDB01EBD4C6C3E93B9650D8F658CF5197DECBF96ACAB40080223926597E5C2A336868643837246D023A06EA20FF97E9FDECB87AAA581D17DF5D4AE8CB63E2C3A9194F1EE8DBBF993ABCF9B8923B8A116255A647971BEBFC1E892F6C7DD4AB3A54500525756BC9C26DA1D464009E72A87DF716C0B3B2C92A38ECB70B430C022AB920FBD047867C39957B878D0631A6D7D9C3F87E5E23BB07D0D0984CD5352487E4B99A20B2C20AE4AE12E94CF8E5AAA1187A1DFA3473C458B1E7971B5C4115D68DCD69698E5CC315BEED5CC2A44883A97ECD459DB1F685A6829DF2D35DC232413C8DB41C4DFF4E9CD3AA9B053BDEA6D896E57ABFCA139D8BAEB608A3C4A1D9B768A3EA72498AAA97D9414FCEBCEDD6329624387F1C63BB45CC7985654C49A0E79B36DE454FBA8A951612705C41648C735D3977FBEA6F67C33769F6AB9AB535EB5C890CAC761F4EADA12E44E27B592965EBA8A3B07D2CE2B8B6241A5BD607971908B8CACEE7DC11DDCC8095A585AC6E8A2F03106D1B12CFB9D92D572C2B0E1C45F17957B661B8E0EF93AB4CB4679198F95C5406A13B4EBF63AD99597F48AF170C2B8CA237E597FC2E6171CB34D2A6C9FC7451AEF7330D6CBF06CE9CE33F47E19B4C353D2DF13D0899AAFACC8BCAF294BDAAE3EED1B6C18B36A1E3172BF5AEE0315C3538AC8CA06E332DAF444054255FC3C9CFCAA23F48DB4E68606B039D2C8FE19BB2D6DFB248E3BB4BEB64AFB3D84BE77E660B86EFF00BA3349F0F8C1644DC5C4186F185B48B90D4618496C85782EADC967F2AA0F7C7A3ED5B6C18EB688CC35FD09891C2CF66431D1BC5CF375D10EE14D5A533F669FADB842762490E69B485AE1E9D0EB862AA6E277A0668990AFA68944099618765B6C3B6C18AC438ADA640D80F01CBBD3FF00DAA3E6318F4B3B3F34B491C46FB70BA905B11B30C8A4EB4C76BA10E1D9376D9DE2CB5E38C27160489919D471E8329B4362622F0347117D24E15DC1D8B6D8B09ED7309B58830BBDE2EFB59333ADCE65BFB5BBDED3883C113D12F2D38A7656B8C4F364449A798917A70FEB4DB6B7B1A608C40CE36D97E287B08E2E64740BBBBDEC798D679AB3298554479A5ECF5121EA8A8A3AA96F6036F5D452659756BB877EE4E2DB3D81656373445AC78DD9BDD70E4BF40976B5DB7105BA4DA6F70E35C6D8F0687D8707307017D5F95555C6BE0E3703571CC11758A4CAF48970220D289C1327850BA270E6425F5D0B761BE1E98631548B560DDB75BA0EC93688E1234D3AEBC4769BB1F72C494489A097FC07504D3A26B4E6AE844698C486C5C120DDAF42EBA917BF34E15261CCA4AE883DA637661BF8B7B900E19EBF0C9881D6B08D6DF09F25CF48FE0D5B5896E90BD170DDA433D24F39395C4CBCE80039AFE23567B669B08B0601DD5D2E531CC51890539243CD6EDA8FDDF52CA2F0EBD555557CF4679D7CB75A597265CA6468B0C138B8EB88003EF5554AADF8FBC307C1CB676CCC7AEBB4CC377098CF02896D93E39273CBA2B4D22E5C7CEBEFA43870DA480DDEF75DBFA8E895316DB7C4F106F545D358DB48DB607B89FAAB3DBE411457115450B5711ED179F2C96AB86D736958770F149B45B2FB790C68E012B36DB74E777A2ABD1C7B4AAA3409D751AA7AB8D532C4BE165B78DAFC717F64180A7E0CD9FBC4A0971992190B8CC6D7AA829098302A9E6D4A9E7CEA6BB27B0C3BB33728B060C6B4E288EF22DC199F215F75C7493578C13E99EFB3D5DBCB5536368BA438CC6E869D85C48B5CF647F972EBF249CCD937C0D12D43001CAF723C56726C576C45122C8C7388265E1B6437A5E33215D6DB51EAA9BC55451E6ED513F67FB2D6A51A632BB43720DA0411B82CBE396F93AA72F9957988BCAA2861BD9FE18B7C86AE58AEE5FA657015436A04464821B67DCBCDFB42F6957E094569B61BA5F59F1ABC38CDAE227EC21EF111453BB82530701E8F249CF5F331D29B5DB1021C7F748EDC0721BCA4BAAC7183B3100077FDBBD04C6CB72C657206E094987630CD969C69B457E52A7695A455445CFA212F20A73D4C13045A6C622C194386F08E46DA2AAA470FF9ABC4CD7BF80A67D387688D6DC3F8AA400C1B0B6CD8EDEA991C8DD8238F7A957AFE1C2A7165D995BE190BD75907717878A010F2E7EBF4E8AB81743934E016C2F7B9C75925196368DDD9E7E5EA9B1578C81AB9C7C389F1429B4E0F731032C4765B5B1E116933255FAB394BDEAABEBA38D9AC6D8C48D0E3C6F12B1343F561A7227F2F3F9933F8975A9385BA281365BB0250EC0F737F653BA9D1B15E5D5527360BA26A6A039C758F7B859CE3BBC00E03926AE218C3A4D382C5A0D0823D914E09FED5B1C3B3EAA5C3B35F68D10300161C123254A952ACCA951D6EDB6BC6588AC989DF17A661BB1A93F09A783763367922A23A41E8B69C053BCB52F935209D25E94F38E384DB920CD78F4FC53EF56CAC71B5C26E081EF09494CD57BFAE5FF7ECD323BA888087B2B5C24DB3DA37B8329DB60D889B06FBB73A1BF7D804510EB9F01644EB1D8A1C56D89121BF1895A73443E3F854DA3DC379A99C8D49172CD4B2FC12A276F903222437073D242997C38569E2498F5A6C97296C39A5ED0BA17D155E1FDD522366B6A61C329B3C2236B59182FB7C400B91E37DC912A181C7D1543F0D0DAA458B87EDFB33B7BDE3172B89AC99A4D97ECD80E220BED1110AFDDA04DBF64F72FA16DD3E50C38F074008663999704E83DDD9A13ED2AE123197847159D75932D3312DEDE7E727D09D54F89D748DC65B4B4EEDB1E544E5CFCC34C8A5C725C624755CE40EB07647203DDF4DFDE8C7B3921A581A19F16AA9A3987E3C75700474B63DFD17E3501C516D6C84DB6F9B4909FCAAC262C87E2F325088808B8A868A942DBB43DE6F4777AB315A6FD54394965F76E45DC3AB340EE7F555A6E5155991AB9F498EA54A6D231FAB12ED2F44A21628B4947266588EA6CB94BD9A0CE36BD47C37162CC90F04565178EBCF3F56597AE934375CA88F48E0E68BADBBD3963723843BC4162E9BF5DD350D63EFCE41F5C91BEFFE9D6BC1CC57B78D8ED85FB8ECC2E78AB00DAD014DC885292734CFFF004C6A68DFC13875A15E0BDA359EEFB60C07FF00100166433320B63C1137AADE628A0BC509504AAED4C6C4DB24D2C9679E68BD325E040BF852CD154CB03AEC7CADBF25A55B82C550C2C91B11BE82FE8817B17C6D8B76CEE62A9DB4CC7589F1E4C82FB6C35166CACE3B6041AB52340803D53B4A855BDB6AD8CD9710615BB47C3165B3D9B12371CE4C77624706BC61C14D48DB883DACF4E9E3515C038659D94ED7A40C0FD5F08DFD808CCC7FFE1E409EA56D3D94D7CBEA224F26AF9C3C26DDE244789204C094F9543A8AA745A5CFC44923DAE6B9E49DF75AD4B4D0D345D5B8300687016DC879E0EF8AA3E23D93E17165936C62C369A515EA39A2F05F774FB4345ED9DCA896CF094D9BD9E612AC3C436CB9DB7B4A9FAC32D8C969734F645CA82783EE17630BDF31F6CF5C0D2E42B8BA4D8F5D51DC5DE0AAFDD706A17E15384B12CAC5DE0E8C605C41270C6311C664CDBAE205924592519C56D4B82A685D191669965AA9C78630C52B6A240D22376637DDA6A7D0A1C6D4491BD92400DBAC8C9BEEB69A15DA4898062473471B952011474F0C93DFC7AD4AE1E1EB6C3D242C6F0D3BCF8AD530F057F0BCB5ED81C91B3ADA1431C0BB71B36A8D78B4485D1BE707B4E329C7957AA0E7D38A66992D5EF1700932E225E6AE826C6330CA885B5148DA4B3C0232F3B5CDD43FC5A2A985FD5CF981037F31C0AC045B6C74B4203EEAF5AF99A79D2BEAA6A454A22B06BB983C3724170EFBAC84757BABD78767D55F6952AC2CB056A54A952AF5ADE2A92A54A956554A9AB46EBE89BCCCB8F0A6DBB4818FE34E17EED5129DD5C105373244104D6ABEEFFCAA0589A438DDA5E78CBB52638AFB89E0AF9E5C567B5AC6E5CE451636E49470B4993367222ED3609FEAE34C589253AE61F871C8B99D3525FCE9C488E3DADC14F285073F55456ECF23ECC7684B941334A756D463F929FA969DF035A7CDE2FF0045A5D5EF5CE3B861D1B6F8564A9929AFF87B96B6AE51FCC464A285F3D557F80B543173AE7FDD403DA2E1D68B1460DC52D8E926D1FB73C5EC39CC1FEA42A3E5A5C6E659E1B825AB5470E3EBC953FA53EFA16C47ADA52CBDF2B72FC8D91168E5CD0B4F2D105F1941226DC2FDEB45C7EC2F4A14C86FB2423C32E3A68F38B87C5E50EAFD8BED75F5A70A0F3CCEEC9C64BD6894E2C6E9ED21289784CFD8086F7EB58390DE6C9BD4DB9A8553BF3EECBE355FE560A8F76C6705E91A2594088F9B6AE8E7C49C6854D33EF441CAAD74E89E311F7623A9C1CF21F4A83988C7F47F1660DBF385FF000D9A522C52F57F88F021325FC71F4D20B22D6E13FF0005C4B2954ABC24B665FA3716CBB61C236F663DE2CD3187E736C8A22BCD89A28B8089D085748AFA4859D5DCC192A1E30B1D93125BDC4721CD8CDC96BCDA0D352654587366706EF1DEB45F61B5768325BDD4869C6F36DC024E28BFC35F764BB27B7E0A88B845C71E762405FD51B4E09B8255515CBFD3FC54E46513DE1A3BD2AD6ED142C0E731C469A8EF416DAB6CB655C2D2DDF2DC4F372203C92554389379795F1AB9FB1EB93789B05D9AF8E36CF8F391D1B907A78EFC7948BF14A27DA7085AC20BF0DC8E2F04A0D079F98B868A6EC0BB3B8F81EDF32D705C3284EC975F042E8DEBEEF8510700D9D921943EDA3B8F7FC28358D6D6B676969F85421CC371EC7B58B2E266DB48CB738CEC0903E9382DEB6D7F0421A826DDA188E32D81CB11657758E219A217948ACBC0BF32AB74FDB2D33996126468D289B711D688C7836E0F4205AA71E1557C9B85EE5B1F3B3DB42F7784C4FE3916DE6591CA0623B86683EE12A56DB5C2045413B9858EB82EB71B91AFA84CD931C32DDB7B1C997D6FF753AC77B01C13B5AC4361C4BBEB960FDA45BD41CB6E23B51284A674F144713A3C08A3D97396ADD61DC738B70E5BE3C3C796976FC8D7D5B97AB24757187B2C9351C7CD5C697BD7AA67D38557DD9F636B4E2EB1E1FC6D87DC32B5CC651E043E621E0A842BED251723E2871B95E3115E36C932251EBA83BD3E3412F67DE9AE4C3DFF008495F20FCC2DCA75396C32E9CAFE1E210CB136BE501B25C88F72B1D62C4168C4909AB958EE51AE708955378D16A415F32A77179C578D48C138AAD5709321AC3978B7632808DC588F9B4C5DD10B20951CCD045E54FF0015A2215D5D749558C1EE2F95759362B698564777800B45F4F7798B5F5F9DF5E25322BA9B29B8E2B6295622BCB9F9AB2A7F34DC5C715A560952A54ABD54952A54AA952A3770B8ABBFABB40DB40A42A5E75A84E28222B1CE5D5FB2DDB9FC2E897F4A914B4FAD5D39227145FC12996ECDF8E5B6E50C79B78C3809FC0B5F37F88D5B9CFB970B845422C6C8ACE4E79E6773C9A73FCB8FF7535B8245CDD32AD38323C6188B232CF78C36EE5EB204ADC787536BEBA48A8AC74DEF1F7740B0C9C94031941199876E4D88FD7343E3009F655097F2AD4C1329D6626647AA3B83AF47F86ABC69FE54D65BBB45B63C26DB729A5265CF21ECBB43F69079968496EB84CB23D2A3B9A1C269E759704782120B8BA72FBA4345DE85B187472C8C37D0077F3E49E7B297787423C54F31A36DCC8802BCD93B9E7EF4A0CCD6CBCAE2E272FE15389189A1DC59F17E765C5341E3E6CFCF51F98DB62EBCD938DE943E0B479C5E56C84BDB6D6C88B85B0C6034A89B83CC2F0F653B4B419DBD5D2DF0F0494394DBDA4E6444D6D76D934714D1C4F720D1F1E864A24E206A1C94B3AAE9B6AB0BD88A4E0DC3A2F036B3F12418DCDE8221385F202A6B57CE62639DC85D2BD4CF9585E3E0D51DF036D0ADAF59ADED62294F5BE70B2DA138F36B93CA89C55553CEBC68D587EE9866FD30CED77AB4CFB936884A2D389AC50B8F45E3A78532E1BB7E9B09457841E6D990EB29AC53A6A5CB2CE823230CD92EDB74C4960B85A6195B5EC3B1A54611156D1B7C5D5471C4C9539F9E86D8174E1342E7759147208BE126C6DF34279B6BA47B9D7E2AF44570B95B16F4A8F6BCD4ED22532CB44E4A71865B14CCC8CB24144EB9AD5476F64B15B71B761E2FC670F4F2F23C9F8F1455F9D46300ECF5CC6B6D8B3AFD8DB154886CCB92CBAC8B889BE269C2145534FB34F8A7F6A9A47C64369E7074D0EA01BF824435CD76BA231E34DB541B6CA6F0FE096D9C51881C7DB89A80B28D1DD3544153753974F377535E15D8E8C8C64E6D0B1D5C4F1762DF160662B8F0E4C5AC4979C228F923972A9752A61DA361FB6E13B3E1B66CB0D98B1DCC456E5E41ED66EE59AAD58C98E123321B1CF5201FE3C69818D74B3555EF7991D1C71B48FCB1FD4E7F65A73549B8039AA9FE0B51E544C3B8D307CA6CDB6AD78B6E70D8CC7F71BCD63FCD56A26472122DD969DD764BDD40BD96936CB98EAE8C8E86E5E2192EA7B5A748AFCE8F4CBDBFD059F310E7953676671467E2E578BDCB9A7D35F5BA4E9A4B3AEA3B8F6EB31EC131ADEDC87A3C87A2C98DBC12ECF727FA486AC9EC4F1C47C77B37C2D7A19212268B03166E5E4C96934388BEF54CEAA76D2243317E868FAB437938797C529B7FF4F7C61FA49B31C70E8926A8F8AE634A3AB3D224DB4495D22F67CDB57FE3844E3612C0C6FF00986AD5A78C500741D61FE99BFCF45D2015F287BEB629B6339A84452B747A1FBAA75D354870046B7FFA3EA9824002C17AD2A54A94D58952A54AA952A173C0F2444D39A76BCDEA54A6F8E29E32CEF388EAE6F777D2A55F36159C3C1149FBD3ADA01634084C2A2293408CA7B855513E5520122311C9057DF4A952661DC7CD5AA317FB5B7728671778B1A4365BC624A7128AE22E62489DF92D57CC497E4FD230094D1439B2D089F685750B72195DDBA285DE2B909A79F564BC46952A7CF47D316D4E9C4FD93A763DC44CBDCEDBAC0DF4314CC75222A76698AFF7CB7DA2D926E9747861DBA3A66E3CA0A459A274C851496952A92728F51745D63AE6E56AE1CBEC5C4B01BBA59A5F8E5B5D14217749B68B9A679E92E6E9DCB505DA0C447B196C524299A937891C377D68B6F9197CC2952A6F6D0B07E125FD8EFF00E4A4DC69DF96FF00D8E56CED6D8A3778647B0321B3FF00EE34D95061597936FF006B942484DFD0D2193F69134AA7CE952A8778B3C8A899A3FF0019FA209C1BCFED4776C90749276534A7C2A09B26408D6FC6505A555463114F693E2A27FDF4A9531A13F92F3FFAD6283779A79DA0B6DDC5EC0305D1D61F4FC63C97FCB470D3F9289925C752248710B32DC9922FAD5334F9D2A54E6C2AA5C5ADB9E2B2A07ECBDC17AC772CBCAB9C83F896925F9D1CADA43B91CD178705A54A9EFB3F3115361C5A2EB5E5F79567C6D7D74E3DF273EEB8E1360F986699AA72AAA65F850A7C12C712ECF6CD68C6185A4B4702F3324429B0DC2C9B29039AB6AA9DE2EA3469AFB4043C79496952A9131E373D33239207BD8585B6237EE4B52B6F0B873CABB03B3FC5B0F185820DE62848601489975B7113EA9E15C88334F32F4CB95528922BD955A54ABAF1D12E312D56174F3CC417491B4B8F336425C4D803DC02F615CC78D654A9515927A54A952AA54BFFD9, '获北京大学心理学学士学位。她同时完成了“冷食的艺术”。张颖是国际美食协会的会员。', '2', '2', '1', 'zy@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('2', '王', '伟', '王伟', '32', '男', '2', '博士', '1982-02-19 00:00:00', '2016-08-14 00:00:00', '罗马花园 890 号', '北京', '华北', '109801', '中国', '(010) 65559482', '3457', 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, '王伟获南京大学商业学士学位,获该校国际营销博士学位。他能说流利的法语和意大利语并能阅读德语。他加入公司时是销售代表,被提拔为销售经理并升任销售副总裁。王伟是销售管理圆桌协会,北京商业总会和太平洋周边进口协会的成员。', '5', '1', '1', 'ww@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('3', '李', '芳', '李芳', '31', '女', '4', '女士', '1983-08-30 00:00:00', '2016-04-01 00:00:00', '芍药园小区 78 号', '北京', '华北', '198033', '中国', '(010) 65553412', '3355', 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, '李芳获北京学院化学学士学位。她同时完成了食品零售管理资格程序。李芳被雇用为销售员并提升为销售代表。', '2', '2', '1', 'lf@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('4', '郑', '建杰', '郑建杰', '26', '男', '4', '先生', '1988-09-19 00:00:00', '2017-05-03 00:00:00', '前门大街 789 号', '北京', '华北', '198052', '中国', '(010) 65558122', '5176', 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, '郑建杰持有外国语学院英国文学学士学位和中国烹调艺术学院硕士学位。在他返回到北京的永久职位之前被临时派往上海办公室工作。', '2', '1', '1', 'zjj@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('5', '赵', '军', '赵军', '29', '男', '3', '先生', '1985-03-04 00:00:00', '2016-10-17 00:00:00', '学院路 78 号', '北京', '华北', '100090', '中国', '(010) 65554848', '3453', 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, '赵军毕业于复旦大学,获学士学位。自从加入公司成为一名销售代表,他花了6个月时间在北京办公室进行适应性工作,然后回到他在上海的固定职位。他被提拔为销售经理。赵军先生完成了课程“成功的电话销售”和“国际销售管理”。他的法语非常流利。', '2', '1', '1', 'zj@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('6', '孙', '林', '孙林', '27', '男', '4', '先生', '1987-07-02 00:00:00', '2016-10-17 00:00:00', '阜外大街 110 号', '北京', '华北', '100678', '中国', '(010) 65557773', '428', 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, '孙林是交通大学(经济学硕士)和北京的清华大学的研究生(工商管理硕士)。他同时完成了课程“多元文化销售”和“销售专业人员时间管理”。他日语流利并能读写法语、葡萄牙语和西班牙语。', '5', '1', '3', 'sl@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('7', '金', '士鹏', '金士鹏', '34', '男', '4', '先生', '1980-05-29 00:00:00', '2016-01-02 00:00:00', '成府路 119 号', '北京', '华北', '100345', '中国', '(010) 65555598', '465', 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, '金士鹏在完成他在交通大学的英语学位之前服务于和平公司并旅行了很多地方。此后他加入本公司。完成“在华北销售”的课程之后,他被调到上海办公室。', '5', '1', '1', 'jsp@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('8', '刘', '英玫', '刘英玫', '35', '女', '5', '女士', '1979-01-09 00:00:00', '2016-03-05 00:00:00', '建国门 76 号', '北京', '华北', '198105', '中国', '(010) 65551189', '2344', 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, '刘英枚获得北京大学心理学学士学位。她同时完成了一门商务法语课程。她能读写法语。', '2', '2', '1', 'lym@northwind.com', 'http://www.fenet.com.cn', '2000'); INSERT INTO `employees` VALUES ('9', '张', '雪眉', '张雪眉', '35', '女', '4', '女士', '1979-07-02 00:00:00', '2016-11-15 00:00:00', '永安路 678 号', '北京', '华北', '100056', '中国', '(010) 65554444', '452', 0xFFD8FFE000104A46494600010101006000600000FFDB0043000302020302020303030304030304050805050404050A070706080C0A0C0C0B0A0B0B0D0E12100D0E110E0B0B1016101113141515150C0F171816141812141514FFDB00430103040405040509050509140D0B0D1414141414141414141414141414141414141414141414141414141414141414141414141414141414141414141414141414FFC000110800C800C803012200021101031101FFC4001F0000010501010101010100000000000000000102030405060708090A0BFFC400B5100002010303020403050504040000017D01020300041105122131410613516107227114328191A1082342B1C11552D1F02433627282090A161718191A25262728292A3435363738393A434445464748494A535455565758595A636465666768696A737475767778797A838485868788898A92939495969798999AA2A3A4A5A6A7A8A9AAB2B3B4B5B6B7B8B9BAC2C3C4C5C6C7C8C9CAD2D3D4D5D6D7D8D9DAE1E2E3E4E5E6E7E8E9EAF1F2F3F4F5F6F7F8F9FAFFC4001F0100030101010101010101010000000000000102030405060708090A0BFFC400B51100020102040403040705040400010277000102031104052131061241510761711322328108144291A1B1C109233352F0156272D10A162434E125F11718191A262728292A35363738393A434445464748494A535455565758595A636465666768696A737475767778797A82838485868788898A92939495969798999AA2A3A4A5A6A7A8A9AAB2B3B4B5B6B7B8B9BAC2C3C4C5C6C7C8C9CAD2D3D4D5D6D7D8D9DAE2E3E4E5E6E7E8E9EAF2F3F4F5F6F7F8F9FAFFDA000C03010002110311003F00FD08A28A2BEACF9A0A28A2800A28A2800A28A2800A28A28010741FD68CF3D79AC1F1B78C6D3C0BE1D9F55BB469C8658A0B58880F71331C2C6B9F5EE7B004F6AF9CBC57F187C45AADC4A977ACCD6119FF00987E887C9441FDD798FCEE7DC6D1EC2BE7334CF70B955A356EE4FA23DAC06535F1F794348AEACFAAFA0CE0FD71401EF5F1645E3BBEB771243A9EB90C83A3A6AD2123F3247E95E9DE07F8F1A9E9F187D699B5AD214E26BA1185BCB5007DE6551B655039E006FAD79184E2EC1622A2A7522E17EAF547A388E1CC4D1873D36A5F99F435150DA5D437D6B15CDB4A93DBCAA1E3910E55D48C823D8822A6AFB94D35747CA34D3B30A28A2980514514005145140051451400514514005145140051451400514514005145140051454734F1DBC4F2CD22430A02CF248C1551475249E00FAD26D2576095F4478B7ED013C8DE25F08DB3E7ECC22BC9D011D66511A8FC42BBFE66BCBADB42B4B6BB92E769924739C4982149F4AEF7E2F7C42D1BC7BA7C169E1EB59B51BEB1B9135AEB0FFBAB446C157009F9A55652CA768C7439E2BCF8D8EA971CCDAA8801CE63B481401EDB9F71FC78AFC2389274EAE6539D39A9276DBA696B1FACE4B09D3C146138F2BD7FE1CD268A3914ABA2B29E086008355F4ED3ADB4946110288CDBD8B1CF1FE18AA8347BC424C7AD5E06C63F789138FC8AD472C3AA831C375E56A1A7BBA8B836C3C9B93167E75504942C4646723AD7CD462A524AF6B9EDB764D9F4A7C19825B7F857E1A59432B7D93728639210B315FF00C748AECEB98F03F8F3C3DE30B2F2B449C4725A22AC9A6CCA62B8B65030A1A33CE38C0232A7D6BA7AFE8FC1727D5A0A9CB992495FD11F8AE2B9FDBCDCE366DB760A28A2BB8E50A28A2800A28A2800A28A2800A28A2800A28A2800A28A2800A28A2800A28A280229E78AD6DE49E7916182242EF239015140C924F60066BE6FF1CF8EEE7E25DEFF001DBF86226CDA58938FB5E3A4F30EE0F5543C0182724F1DF7C7CD79974CD3FC351381FDA64CF783D6DA323E4FF81BED07D95877AF28ED5F95715E6F353FA851765F6BFC8FBEE1FCBA3C9F5BAAAEFA7F986738E7D87B0A0514B5F999F6E21A5A28A00899248EEA0BDB5B892C753B639B7BC80E2488FA7BA9E854F0475AF7EF85FF0010878EF4A963BB48EDB5DB0212F6DE22761C8F9254CF3B1F071E84107A5782FF009F7ABBE1BD75BC27E2AD2F59472914720B6BC0BFF2D2DA460AD91DF6B1571E983EA6BEAF87F369E5F898D393FDDC9D9AEDE67839BE5F1C650724BDF8EDFE47D434504751FAD15FBA9F940514514C028A28A0028A28A0028A28A0028A28A0028A28A0028A28A00290F1EC3BD2D1FCA901F387C48D44EADF11F5C9720A5A795611E3B044DEDF9B487F23581525DDC7DB357D66E49DDE76A7772063DC79CC17FF001D007E151D7F3866359D7C655A8FAC9FE67ED583A6A961E9C174485A28A6BBAC4A59982A8E4B31C015E71D63A90F5A860BFB6B989E48A5578D321981E98F5ACAD1FC491EABA95C5AF0BB4663183F30EFCF4CE0838EB8E68036EA3B9B75BBB69A06194950A11EA0822A434A3F5A00FA2BE1CEB2DE20F00F87F5090B34D2D9A2C8CDD4BA8D8C7F3535D1D79DFC069FCCF00184E08B7D42EE21F4F3091FFA157A257F4865D55D7C1D2A8FAC57E47E2D8DA7ECB13520BA361451457A271851451400514514005145140051451400514514005145140052A7FAC4FA8FE74948DC73DC72293047C996BFF2F1FF005F571FFA39EA6144F08B4D4356878558351BC8F8E802CEE3F9557D3ADB5BF1647A8B786B4C17F069C824BBBD9A658A1846D2DD4F2C42A93C03DBD6BF9AAB5394B1138455DDDFE67EDD4E718D28C9BB2B21F7775159406699C2201CE7AFD0572379797FE286BAFB2E2DF4DB25F36EEEA507C9B64F573FC4E7A2C63963D3D6B2BF667D7347FDA73C6DAFE937373A9D9BE911ACDF678E354FB5C7B8A965973F2AE71D141393D2BEB69FF673F0DEAA74F86EE2B88348B100C3A3413ECB5DFDE470A373B9E84B31AEC865D594AD52366BA1CD3C6D18ABA67CBFF0FF00C27AAF8B95B46F0F5B4AC934E65BCBEB8E562CFDD1230E0B0503E45E49CF41CD7D2F75FB3FDB45F0C4E83A5B08F54B726EED6EA7C191AE873BDCFF00B7CA11D369C76AF53D0FC39A6F86ACA2B4D36CE1B3B68861238502AA8F603A5797FED3FF00B4CF87FF0065AF015B789B5EB2B9D53ED776B676D6368EA924AC4166396E0050327EA2BD8C3E5F18A6A5AB67915F1F3A925C9A247CEFA878AFFB36F34A82E2D5ADFED92B5BCA8E70F04C0ED2847B3020FD2BA1EFC8FCEA9F8C34EB0F8A1E2ED27C53E1E8E57D0FC53A04BE26823907CD148213BBE84C8222707A96AB16F2FDA208A50722450C3F119AF9AAF41D0938BF33E869555562A48F64F80073E14D506723FB567FE495E9B5E73F0150FF00C20D3C87FE5AEA576C3E81F03F957A357EFB93271CBA827FCA8FC8F3377C6D57E6C28A28AF68F3028A28A0028A28A0028A28A0028A28A0028A28A0028A28A002901C6726969074E78A00F95BE24DBCBA6F897C676EA42917AD3211C7C92223E7F32F5D8FEC9D045A9D9F8E34CB9FDEDADCA40AF16700ABC722373D7900FE9537ED0FE149239D3C410C44D95D5B1D3F5061F7626C1F2656F4072509ED95CD62FC16B593E1CCF3BDC5B5EDDF83BC43A3A347A9E9F0191EC9D3E578E5206E1B4BC83233D8E3AE3F13C4E02B61F35AAD474BDFE52EBF7EE7E9F4B154EBE5D057D6D6F9AB163F651FD86F4CFD973E2178CBC4D69AF49ABA6B29F66B1B67836B5A5BEFDE559C93B9B803231C0AFA82B0FC2B268F736714BA3EAC353B7218E63BB13062C41248CF0720F1C63278ADD652A70411F5AEF7394DF34B73CA92B3B212BC27F6C2FD96AD7F6ADF86D67E1D7D5FFB0B50B0BD5BCB5BE684CAABC6D7565C8CE57DF8C57BAD54D634C7BFB5453773E9E1240E6684ED2477527D083429383E68EE84926ECCE1F41F87FA6FC1FF008190F86ED1BED36DA0787A4B35BC95144B22242C58923A64E4E3A57CA9A16AF3C9AA4564AE8D6F6D0AAC88A01C61073F9D7D2DF14BC676F3780FC49A1F874DE78AB57B981ACC45A6AF9E2DFCC023DB2483E51C139E49E4F15F3D689F0DA7B2F1ADDF85ACE7FB66B5746182F668F94B601733B03D951582027EF38AF1B1F85AF8870E58BD5DBD5B3DBC056A74633737E7F247D1BF05ADBECBF0BF41DC02BCF1BDCB0F5DF2330FD08AEDAA1B3B586C2CE0B5B74F2EDE08D62893FBA8A0003F215357EDB86A5EC284297F2A4BEE3F32AF53DAD5954EEDB0A28A2BA4C028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0064D124F13C52A2491382AC8E015607A820F51ED591E17F07E93E0AB4B9B4D16D8D8D95C4ED706D564668A376037796A49D80E33B4719CF15B5483238359BA7072536B545A9C945C53D198BA9F82BC3FAC5CFDA2F346B496EBFE7E162D929F62EB863F89AF17F88BAD6B6BE204F0D78021D56197CD92D1EE9354982A48817CD203310AB1EF50589E58ED03835EA9F117C5B3F87EC16D6C1826A3711BC8B2119F26241967C7F7BA2AFB9CF635E41F07FC4D3B7883C19369D6124D6F2DB5CDA9D435065582F1E402662926E2C19995F0ECBB58A9F627E7F35A119D1972415FBDB5E9E5E67B180AB28D44E72D3B37A7F5A1B5F132D3C5DE089ECB50D1E7F126AFA2242E751CEA32C9E4E083E615521F6EDDD92B9C7D6BAEF05D87863C7DA635D5C6972CB796CE21BAB4D42F65BA4472AAC08DEDB5D195832B15E41F506BA1F891E2ED4B4FF0087FAE5C43A57D926FB3343135E5D40E1DE4F911116291CB3B330001DA39C93818AF0EF09F8B67F0EF8E54D947736D776DA440BA868D705489911B0181466527613B5D49E5769E2BC8C9B0ED397B58DF556BAEF7FC7FE09E86615AE9723B6FB3F4FC0FA46D6DA1B18521B6862B685061238502227D00E0563784FC0BA1F8222B94D1EC45BCB752196E6E647324F70E49259E46C96E49E33819E95AF677906A5656F776D209ADAE235962703EF230C838FA1A9EBED7D9C24D4ADB6C7CC73CD271BEFB887AE0F4C52D2700FB9A5AD8CC28A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A00291B804D2D34F1C0FA50079078B275D57C6FE228E4CBADBAC36217FBA9E5963F9994D79EFC48F0CF846FBE1A9D1FC52E2D3C136F25A8BF91277885BDAA4AA19FCC5F9976AE4E47A77AF67D6BC1DA2F893C71AB5FDFDBBC6FA568B1CBF69B699A091643248DCBA919F9231D41C026BC3E24D2F57F8730F866E2DAE354FB56943CEB48607B922374C8F331EB9FA9F4E6B930F8FA55E15B06E2938A97BDDDB7A7FC136AD84A94A74B1316DA6E3A76D0F3EF857F023E03786FE22D87883E107C44D5BC792411DC3DE4177AA25CC1659DA22F9562460C773E0B13C21EFCD7BBFF63DAC9AD45AA7920DFA40D6CB263931960DB4FE22BCBFC06BF0AFC17A9DCDEF803C3D0E876FA8585A9BFB3D1A09A7D97037F9A645CB98D51B2A32457A0E890E97E32F88FA0DAC97EF7DA24D185921B2BA2885C993697D84372C883191DE9E131D86C0E5CEBC973BBDEDD7B263C5612BE2F1CA927CAAD6BF4EED1EA1F092F0CFE1496D3F874FBEB9B44E73840FB947E01C0FC2BB5AE5FC09A6DAF87E2D6F43B3B74B7B5D33539A386241C2C52059A3193D7893193E87D2BA8A30B5557A31A8B6615E0E954707D028A28AEA300A28A2800A28A2800A28A2800A28A2800A28A2800A28A2800A28A2800A28A2800A43C0CD0BD29CA373A8E3A8EB480E1EFD95F42F88F70305EEEE22D1D3AF27CB8E203F133915F155BFED3BE03F87E6EFC2BA9693E3DD3BECF792ADC49268B16A76576C8FB166B762F1B01B5576939180339EFF005FD9EAB1EA3A4E8DA7C67E7D4754BCD76E580C816D0C924A0B73FF005C47B9AF1AB4FDA57F696F0E68761A3E87FB3149AAE9D670471D9EA536AAB32CF1E0624C2A8C6E1838078E9CE2BE070BEFD59D74F56D9F5F5572D38D26B4B23CCDFF006B3F8256514716816BF103CD9046274D63C2C97C92BA162AE079AA558177E87F8BDABD4FE09F8F34CF1BA78A3C53A5F857C4DA11B4B9D3B5096FBC516496936A463B86569638D7858D50E08C9E73924F34CF0FFED05FB66788AFBCBB6FD9CFC39A50DC42CDA9DC98553D0926704FD40AF43F875A47C64D67C47AE2FC6E9BC2F15DEB5A3496D65A7786D64D96B08970EB233677F2EA4609C73CF22BB650F69154BA7F9E862A4A0DCCF52B8C58FC4BD42145023D434E8AEB70C60BC523467F1DAE9F90AD92322B80B6D6EE2F5FE1FEA571B96657B8D1AF54E3E59C21460DEE5E107F1AEF79C73D2BD1C92A73619C1FD96D7EA79999C396B29775FF00007514515F4279214514500145145001451450014514500145145001451450014514500145145001484FA641F5F4A5A296E07136FE06B1F06786B5E96DEE2E6EE66D3E58526BC656686154729126000141627A649E493C579D5B7C5FFDA9FC1FE1DD2ED6DBE01787FC436F1DAC4B0CDA6F8A9572814050CB2203BB0327B57B86ABA7A6AFA55E58CAEF147750B42CF11C300C31907D79AE7F47D5FC6CDAAEAFA641E26125AE9C6DE289DB4A8B7E1E3CF3838E31C715F2F98A8606319463686DA77DCF7F0529629C94A5EF6FAF63CA61FDA2BF6B2D41FECF17ECCDA7D8CAE0EDB8BBF14C26243FED05E7F515D0F80B5DF8D5AE78FF004AB8F8B9E18F0CF86216D3AED2C23D0AF9EE65793740CCB28390A028C8C13CE73DABA6F08F8DBC7DE2B9ADE2FF008486DE3171A77DBBCC834C8F284DCCB0803736318881E7B9356FC2B16ADAFDF4BAAF88359B9D4B50D32F6F6CA087CA8E186350FB33B5464B145527E6C64F4E2B93095957C42A705AAB3D7E474E221ECA93949F90BA9FC3E17BE205D42D754974FB792EE1BEBAB34851D269E2E16452798D8AE1588CEE007719AEB4138E9DA968AFADA7429D1727056E6D59F393AB3A8929BBD828A28ADCC828A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A002B33C11FF236F8BBBFEFECFF00F449AD13D076E78ACDF06031F8EBC58BD15D34F9000781F24A0FF21F957CE67ABFD997AFE8CF5B2DFE24BD3F5472DF04CEEBBB7EE13438874FBB9BDBA207F5ADCF080E7C41FF0061BBDFFD1958BF03713492F629A6DBC673DF33DC9E3F3AD8F039DFA76A73053B66D5EFE553EA0DCBE0FBF15E4E53FEFAFF00C3FE47A5987FBBFCFF00CCE8E8A28AFB93E5C28A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A006FE1EF595A238B5F89F79193B56F3498A45CF768E660DFA3AFE75AE0E4563EBDA4DE5DCD677FA55CC365ACD896FB3CB7311921657C078E450412A40078208201AF2733C34B13867086FB9DD82AB1A3594A5B6C72BF022E52DE1D66E266023B7B3B627D9434EC7FAD741F0F11D7C17A5BCA0896746B96CF7F31DA407F261587A2FC3DD4F43B0B8D29352B5934DD42D6386FA5585967CAEEDE2339C0560E473920679CF4EF23448A348E3411A2285541D14018007D2BCECAF05568569D5AAADA591DB8FC4D3A9050A6EFADC7514515F4E7881451450014514500145145001451483D7BD002D141E9C303452B80514514C02828CA012AC0372B9E879C7F8D14526F61A0A28A298828A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A0028A28A00FFFD9, '张雪眉获得科技大学英语学士学位。她的法语和德语都很流利。', '5', '2', '1', 'zxm@northwind.com', 'http://www.fenet.com.cn', '2000'); -- ---------------------------- -- Table structure for orderdetails -- ---------------------------- DROP TABLE IF EXISTS `orderdetails`; CREATE TABLE `orderdetails` ( `OrderID` int(10) DEFAULT NULL, `ProductID` int(10) DEFAULT NULL, `UnitPrice` decimal(19,4) DEFAULT NULL, `Quantity` smallint(5) DEFAULT NULL, `Discount` double(7,2) DEFAULT NULL, KEY `OrderID` (`OrderID`) USING BTREE ) ENGINE=InnoDB DEFAULT CHARSET=gbk; -- ---------------------------- -- Records of orderdetails -- ---------------------------- INSERT INTO `orderdetails` VALUES ('10249', '14', '18.6000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10249', '51', '42.4000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10250', '41', '7.7000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10250', '51', '42.4000', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10250', '65', '16.8000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10251', '22', '16.8000', '6', '0.05'); INSERT INTO `orderdetails` VALUES ('10251', '57', '15.6000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10251', '65', '16.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10252', '20', '64.8000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10252', '33', '2.0000', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10252', '60', '27.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10253', '31', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10253', '39', '14.4000', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('10253', '49', '16.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10254', '24', '3.6000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10254', '55', '19.2000', '21', '0.15'); INSERT INTO `orderdetails` VALUES ('10254', '74', '8.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10255', '2', '15.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10255', '16', '13.9000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10255', '36', '15.2000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10255', '59', '44.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10256', '53', '26.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10256', '77', '10.4000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10257', '27', '35.1000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10257', '39', '14.4000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10257', '77', '10.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10258', '2', '15.2000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10258', '5', '17.0000', '65', '0.20'); INSERT INTO `orderdetails` VALUES ('10258', '32', '25.6000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10259', '21', '8.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10259', '37', '20.8000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10260', '41', '7.7000', '16', '0.25'); INSERT INTO `orderdetails` VALUES ('10260', '57', '15.6000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10260', '62', '39.4000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10260', '70', '12.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10261', '21', '8.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10261', '35', '14.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10262', '5', '17.0000', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10262', '7', '24.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10262', '56', '30.4000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10263', '16', '13.9000', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('10263', '24', '3.6000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10263', '30', '20.7000', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('10263', '74', '8.0000', '36', '0.25'); INSERT INTO `orderdetails` VALUES ('10264', '2', '15.2000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10264', '41', '7.7000', '25', '0.15'); INSERT INTO `orderdetails` VALUES ('10265', '17', '31.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10265', '70', '12.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10266', '12', '30.4000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10267', '40', '14.7000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10267', '59', '44.0000', '70', '0.15'); INSERT INTO `orderdetails` VALUES ('10267', '76', '14.4000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10268', '29', '99.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10268', '72', '27.8000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10269', '33', '2.0000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10269', '72', '27.8000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10270', '36', '15.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10270', '43', '36.8000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10271', '33', '2.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10272', '20', '64.8000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10272', '31', '10.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10272', '72', '27.8000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10273', '10', '24.8000', '24', '0.05'); INSERT INTO `orderdetails` VALUES ('10273', '31', '10.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10273', '33', '2.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10273', '40', '14.7000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10273', '76', '14.4000', '33', '0.05'); INSERT INTO `orderdetails` VALUES ('10274', '71', '17.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10274', '72', '27.8000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10275', '24', '3.6000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10275', '59', '44.0000', '6', '0.05'); INSERT INTO `orderdetails` VALUES ('10276', '10', '24.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10276', '13', '4.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10277', '28', '36.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10277', '62', '39.4000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10278', '44', '15.5000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10278', '59', '44.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10278', '63', '35.1000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10278', '73', '12.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10279', '17', '31.2000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10280', '24', '3.6000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10280', '55', '19.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10280', '75', '6.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10281', '19', '7.3000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10281', '24', '3.6000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10281', '35', '14.4000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10282', '30', '20.7000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10282', '57', '15.6000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10283', '15', '12.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10283', '19', '7.3000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10283', '60', '27.2000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10283', '72', '27.8000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10284', '27', '35.1000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10284', '44', '15.5000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10284', '60', '27.2000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10284', '67', '11.2000', '5', '0.25'); INSERT INTO `orderdetails` VALUES ('10285', '1', '14.4000', '45', '0.20'); INSERT INTO `orderdetails` VALUES ('10285', '40', '14.7000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10285', '53', '26.2000', '36', '0.20'); INSERT INTO `orderdetails` VALUES ('10286', '35', '14.4000', '100', '0.00'); INSERT INTO `orderdetails` VALUES ('10286', '62', '39.4000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10287', '16', '13.9000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10287', '34', '11.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10287', '46', '9.6000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10288', '54', '5.9000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10288', '68', '10.0000', '3', '0.10'); INSERT INTO `orderdetails` VALUES ('10289', '3', '8.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10289', '64', '26.6000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10290', '5', '17.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10290', '29', '99.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10290', '49', '16.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10290', '77', '10.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10291', '13', '4.8000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10291', '44', '15.5000', '24', '0.10'); INSERT INTO `orderdetails` VALUES ('10291', '51', '42.4000', '2', '0.10'); INSERT INTO `orderdetails` VALUES ('10292', '20', '64.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10293', '18', '50.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10293', '24', '3.6000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10293', '63', '35.1000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10293', '75', '6.2000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10294', '1', '14.4000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10294', '17', '31.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10294', '43', '36.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10294', '60', '27.2000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10294', '75', '6.2000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10295', '56', '30.4000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10296', '11', '16.8000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10296', '16', '13.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10296', '69', '28.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10297', '39', '14.4000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10297', '72', '27.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10298', '2', '15.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10298', '36', '15.2000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10298', '59', '44.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10298', '62', '39.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10299', '19', '7.3000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10299', '70', '12.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10300', '66', '13.6000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10300', '68', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10301', '40', '14.7000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10301', '56', '30.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10302', '17', '31.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10302', '28', '36.4000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10302', '43', '36.8000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10303', '40', '14.7000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10303', '65', '16.8000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10303', '68', '10.0000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10304', '49', '16.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10304', '59', '44.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10304', '71', '17.2000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10305', '18', '50.0000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10305', '29', '99.0000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10305', '39', '14.4000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10306', '30', '20.7000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10306', '53', '26.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10306', '54', '5.9000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10307', '62', '39.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10307', '68', '10.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10308', '69', '28.8000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10308', '70', '12.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10309', '4', '17.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10309', '6', '20.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10309', '42', '11.2000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10309', '43', '36.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10309', '71', '17.2000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10310', '16', '13.9000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10310', '62', '39.4000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10311', '42', '11.2000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10311', '69', '28.8000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10312', '28', '36.4000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10312', '43', '36.8000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10312', '53', '26.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10312', '75', '6.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10313', '36', '15.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10314', '32', '25.6000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10314', '58', '10.6000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10314', '62', '39.4000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10315', '34', '11.2000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10315', '70', '12.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10316', '41', '7.7000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10316', '62', '39.4000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10317', '1', '14.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10318', '41', '7.7000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10318', '76', '14.4000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10319', '17', '31.2000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10319', '28', '36.4000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10319', '76', '14.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10320', '71', '17.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10321', '35', '14.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10322', '52', '5.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10323', '15', '12.4000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10323', '25', '11.2000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10323', '39', '14.4000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10324', '16', '13.9000', '21', '0.15'); INSERT INTO `orderdetails` VALUES ('10324', '35', '14.4000', '70', '0.15'); INSERT INTO `orderdetails` VALUES ('10324', '46', '9.6000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10324', '59', '44.0000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10324', '63', '35.1000', '80', '0.15'); INSERT INTO `orderdetails` VALUES ('10325', '6', '20.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10325', '13', '4.8000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10325', '14', '18.6000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10325', '31', '10.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10325', '72', '27.8000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10326', '4', '17.6000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10326', '57', '15.6000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10326', '75', '6.2000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10327', '2', '15.2000', '25', '0.20'); INSERT INTO `orderdetails` VALUES ('10327', '11', '16.8000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10327', '30', '20.7000', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('10327', '58', '10.6000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10328', '59', '44.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10328', '65', '16.8000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10328', '68', '10.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10329', '19', '7.3000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10329', '30', '20.7000', '8', '0.05'); INSERT INTO `orderdetails` VALUES ('10329', '38', '210.8000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10329', '56', '30.4000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10330', '26', '24.9000', '50', '0.15'); INSERT INTO `orderdetails` VALUES ('10330', '72', '27.8000', '25', '0.15'); INSERT INTO `orderdetails` VALUES ('10331', '54', '5.9000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10332', '18', '50.0000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10332', '42', '11.2000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10332', '47', '7.6000', '16', '0.20'); INSERT INTO `orderdetails` VALUES ('10333', '14', '18.6000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10333', '21', '8.0000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10333', '71', '17.2000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10334', '52', '5.6000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10334', '68', '10.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10335', '2', '15.2000', '7', '0.20'); INSERT INTO `orderdetails` VALUES ('10335', '31', '10.0000', '25', '0.20'); INSERT INTO `orderdetails` VALUES ('10335', '32', '25.6000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10335', '51', '42.4000', '48', '0.20'); INSERT INTO `orderdetails` VALUES ('10336', '4', '17.6000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10337', '23', '7.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10337', '26', '24.9000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10337', '36', '15.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10337', '37', '20.8000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10337', '72', '27.8000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10338', '17', '31.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10338', '30', '20.7000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10339', '4', '17.6000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10339', '17', '31.2000', '70', '0.05'); INSERT INTO `orderdetails` VALUES ('10339', '62', '39.4000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10340', '18', '50.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10340', '41', '7.7000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10340', '43', '36.8000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10341', '33', '2.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10341', '59', '44.0000', '9', '0.15'); INSERT INTO `orderdetails` VALUES ('10342', '2', '15.2000', '24', '0.20'); INSERT INTO `orderdetails` VALUES ('10342', '31', '10.0000', '56', '0.20'); INSERT INTO `orderdetails` VALUES ('10342', '36', '15.2000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10342', '55', '19.2000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10343', '64', '26.6000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10343', '68', '10.0000', '4', '0.05'); INSERT INTO `orderdetails` VALUES ('10343', '76', '14.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10344', '4', '17.6000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10344', '8', '32.0000', '70', '0.25'); INSERT INTO `orderdetails` VALUES ('10345', '8', '32.0000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10345', '19', '7.3000', '80', '0.00'); INSERT INTO `orderdetails` VALUES ('10345', '42', '11.2000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10346', '17', '31.2000', '36', '0.10'); INSERT INTO `orderdetails` VALUES ('10346', '56', '30.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10347', '25', '11.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10347', '39', '14.4000', '50', '0.15'); INSERT INTO `orderdetails` VALUES ('10347', '40', '14.7000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10347', '75', '6.2000', '6', '0.15'); INSERT INTO `orderdetails` VALUES ('10348', '1', '14.4000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10348', '23', '7.2000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10349', '54', '5.9000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10350', '50', '13.0000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10350', '69', '28.8000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10351', '38', '210.8000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10351', '41', '7.7000', '13', '0.00'); INSERT INTO `orderdetails` VALUES ('10351', '44', '15.5000', '77', '0.05'); INSERT INTO `orderdetails` VALUES ('10351', '65', '16.8000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10352', '24', '3.6000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10352', '54', '5.9000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10353', '11', '16.8000', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10353', '38', '210.8000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10354', '1', '14.4000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10354', '29', '99.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10355', '24', '3.6000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10355', '57', '15.6000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10356', '31', '10.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10356', '55', '19.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10356', '69', '28.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10357', '10', '24.8000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10357', '26', '24.9000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10357', '60', '27.2000', '8', '0.20'); INSERT INTO `orderdetails` VALUES ('10358', '24', '3.6000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10358', '34', '11.2000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10358', '36', '15.2000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10359', '16', '13.9000', '56', '0.05'); INSERT INTO `orderdetails` VALUES ('10359', '31', '10.0000', '70', '0.05'); INSERT INTO `orderdetails` VALUES ('10359', '60', '27.2000', '80', '0.05'); INSERT INTO `orderdetails` VALUES ('10360', '28', '36.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10360', '29', '99.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10360', '38', '210.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10360', '49', '16.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10360', '54', '5.9000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10361', '39', '14.4000', '54', '0.10'); INSERT INTO `orderdetails` VALUES ('10361', '60', '27.2000', '55', '0.10'); INSERT INTO `orderdetails` VALUES ('10362', '25', '11.2000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10362', '51', '42.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10362', '54', '5.9000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10363', '31', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10363', '75', '6.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10363', '76', '14.4000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10364', '69', '28.8000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10364', '71', '17.2000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10365', '11', '16.8000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10366', '65', '16.8000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10366', '77', '10.4000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10367', '34', '11.2000', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10367', '54', '5.9000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10367', '65', '16.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10367', '77', '10.4000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10368', '21', '8.0000', '5', '0.10'); INSERT INTO `orderdetails` VALUES ('10368', '28', '36.4000', '13', '0.10'); INSERT INTO `orderdetails` VALUES ('10368', '57', '15.6000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10368', '64', '26.6000', '35', '0.10'); INSERT INTO `orderdetails` VALUES ('10369', '29', '99.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10369', '56', '30.4000', '18', '0.25'); INSERT INTO `orderdetails` VALUES ('10370', '1', '14.4000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10370', '64', '26.6000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10370', '74', '8.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10371', '36', '15.2000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10372', '20', '64.8000', '12', '0.25'); INSERT INTO `orderdetails` VALUES ('10372', '38', '210.8000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10372', '60', '27.2000', '70', '0.25'); INSERT INTO `orderdetails` VALUES ('10372', '72', '27.8000', '42', '0.25'); INSERT INTO `orderdetails` VALUES ('10373', '58', '10.6000', '80', '0.20'); INSERT INTO `orderdetails` VALUES ('10373', '71', '17.2000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10374', '31', '10.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10374', '58', '10.6000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10375', '14', '18.6000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10375', '54', '5.9000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10376', '31', '10.0000', '42', '0.05'); INSERT INTO `orderdetails` VALUES ('10377', '28', '36.4000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10377', '39', '14.4000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10378', '71', '17.2000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10379', '41', '7.7000', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10379', '63', '35.1000', '16', '0.10'); INSERT INTO `orderdetails` VALUES ('10379', '65', '16.8000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10380', '30', '20.7000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10380', '53', '26.2000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10380', '60', '27.2000', '6', '0.10'); INSERT INTO `orderdetails` VALUES ('10380', '70', '12.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10381', '74', '8.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10382', '5', '17.0000', '32', '0.00'); INSERT INTO `orderdetails` VALUES ('10382', '18', '50.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10382', '29', '99.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10382', '33', '2.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10382', '74', '8.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10383', '13', '4.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10383', '50', '13.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10383', '56', '30.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10384', '20', '64.8000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10384', '60', '27.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10385', '7', '24.0000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10385', '60', '27.2000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10385', '68', '10.0000', '8', '0.20'); INSERT INTO `orderdetails` VALUES ('10386', '24', '3.6000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10386', '34', '11.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10387', '24', '3.6000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10387', '28', '36.4000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10387', '59', '44.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10387', '71', '17.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10388', '45', '7.6000', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10388', '52', '5.6000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10388', '53', '26.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10389', '10', '24.8000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10389', '55', '19.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10389', '62', '39.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10389', '70', '12.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10390', '31', '10.0000', '60', '0.10'); INSERT INTO `orderdetails` VALUES ('10390', '35', '14.4000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10390', '46', '9.6000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10390', '72', '27.8000', '24', '0.10'); INSERT INTO `orderdetails` VALUES ('10391', '13', '4.8000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10392', '69', '28.8000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10393', '2', '15.2000', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('10393', '14', '18.6000', '42', '0.25'); INSERT INTO `orderdetails` VALUES ('10393', '25', '11.2000', '7', '0.25'); INSERT INTO `orderdetails` VALUES ('10393', '26', '24.9000', '70', '0.25'); INSERT INTO `orderdetails` VALUES ('10393', '31', '10.0000', '32', '0.00'); INSERT INTO `orderdetails` VALUES ('10394', '13', '4.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10394', '62', '39.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10395', '46', '9.6000', '28', '0.10'); INSERT INTO `orderdetails` VALUES ('10395', '53', '26.2000', '70', '0.10'); INSERT INTO `orderdetails` VALUES ('10395', '69', '28.8000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10396', '23', '7.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10396', '71', '17.2000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10396', '72', '27.8000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10397', '21', '8.0000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('10397', '51', '42.4000', '18', '0.15'); INSERT INTO `orderdetails` VALUES ('10398', '35', '14.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10398', '55', '19.2000', '120', '0.10'); INSERT INTO `orderdetails` VALUES ('10399', '68', '10.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10399', '71', '17.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10399', '76', '14.4000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10399', '77', '10.4000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10400', '29', '99.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10400', '35', '14.4000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10400', '49', '16.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10401', '30', '20.7000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10401', '56', '30.4000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10401', '65', '16.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10401', '71', '17.2000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10402', '23', '7.2000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10402', '63', '35.1000', '65', '0.00'); INSERT INTO `orderdetails` VALUES ('10403', '16', '13.9000', '21', '0.15'); INSERT INTO `orderdetails` VALUES ('10403', '48', '10.2000', '70', '0.15'); INSERT INTO `orderdetails` VALUES ('10404', '26', '24.9000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10404', '42', '11.2000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10404', '49', '16.0000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10405', '3', '8.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10406', '1', '14.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10406', '21', '8.0000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10406', '28', '36.4000', '42', '0.10'); INSERT INTO `orderdetails` VALUES ('10406', '36', '15.2000', '5', '0.10'); INSERT INTO `orderdetails` VALUES ('10406', '40', '14.7000', '2', '0.10'); INSERT INTO `orderdetails` VALUES ('10407', '11', '16.8000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10407', '69', '28.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10407', '71', '17.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10408', '37', '20.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10408', '54', '5.9000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10408', '62', '39.4000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10409', '14', '18.6000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10409', '21', '8.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10410', '33', '2.0000', '49', '0.00'); INSERT INTO `orderdetails` VALUES ('10410', '59', '44.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10411', '41', '7.7000', '25', '0.20'); INSERT INTO `orderdetails` VALUES ('10411', '44', '15.5000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10411', '59', '44.0000', '9', '0.20'); INSERT INTO `orderdetails` VALUES ('10412', '14', '18.6000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10413', '1', '14.4000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10413', '62', '39.4000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10413', '76', '14.4000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10414', '19', '7.3000', '18', '0.05'); INSERT INTO `orderdetails` VALUES ('10414', '33', '2.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10415', '17', '31.2000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10415', '33', '2.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10416', '19', '7.3000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10416', '53', '26.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10416', '57', '15.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10417', '38', '210.8000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10417', '46', '9.6000', '2', '0.25'); INSERT INTO `orderdetails` VALUES ('10417', '68', '10.0000', '36', '0.25'); INSERT INTO `orderdetails` VALUES ('10417', '77', '10.4000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10418', '2', '15.2000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10418', '47', '7.6000', '55', '0.00'); INSERT INTO `orderdetails` VALUES ('10418', '61', '22.8000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10418', '74', '8.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10419', '60', '27.2000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10419', '69', '28.8000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10420', '9', '77.6000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10420', '13', '4.8000', '2', '0.10'); INSERT INTO `orderdetails` VALUES ('10420', '70', '12.0000', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10420', '73', '12.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10421', '19', '7.3000', '4', '0.15'); INSERT INTO `orderdetails` VALUES ('10421', '26', '24.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10421', '53', '26.2000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10421', '77', '10.4000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('10422', '26', '24.9000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10423', '31', '10.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10423', '59', '44.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10424', '35', '14.4000', '60', '0.20'); INSERT INTO `orderdetails` VALUES ('10424', '38', '210.8000', '49', '0.20'); INSERT INTO `orderdetails` VALUES ('10424', '68', '10.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10425', '55', '19.2000', '10', '0.25'); INSERT INTO `orderdetails` VALUES ('10425', '76', '14.4000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10426', '56', '30.4000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10426', '64', '26.6000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10427', '14', '18.6000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10428', '46', '9.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10429', '50', '13.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10429', '63', '35.1000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10430', '17', '31.2000', '45', '0.20'); INSERT INTO `orderdetails` VALUES ('10430', '21', '8.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10430', '56', '30.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10430', '59', '44.0000', '70', '0.20'); INSERT INTO `orderdetails` VALUES ('10431', '17', '31.2000', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10431', '40', '14.7000', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10431', '47', '7.6000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10432', '26', '24.9000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10432', '54', '5.9000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10433', '56', '30.4000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10434', '11', '16.8000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10434', '76', '14.4000', '18', '0.15'); INSERT INTO `orderdetails` VALUES ('10435', '2', '15.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10435', '22', '16.8000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10435', '72', '27.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10436', '46', '9.6000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10436', '56', '30.4000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10436', '64', '26.6000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10436', '75', '6.2000', '24', '0.10'); INSERT INTO `orderdetails` VALUES ('10437', '53', '26.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10438', '19', '7.3000', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10438', '34', '11.2000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10438', '57', '15.6000', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10439', '12', '30.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10439', '16', '13.9000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10439', '64', '26.6000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10439', '74', '8.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10440', '2', '15.2000', '45', '0.15'); INSERT INTO `orderdetails` VALUES ('10440', '16', '13.9000', '49', '0.15'); INSERT INTO `orderdetails` VALUES ('10440', '29', '99.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('10440', '61', '22.8000', '90', '0.15'); INSERT INTO `orderdetails` VALUES ('10441', '27', '35.1000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10442', '11', '16.8000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10442', '54', '5.9000', '80', '0.00'); INSERT INTO `orderdetails` VALUES ('10442', '66', '13.6000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10443', '11', '16.8000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10443', '28', '36.4000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10444', '17', '31.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10444', '26', '24.9000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10444', '35', '14.4000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10444', '41', '7.7000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10445', '39', '14.4000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10445', '54', '5.9000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10446', '19', '7.3000', '12', '0.10'); INSERT INTO `orderdetails` VALUES ('10446', '24', '3.6000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10446', '31', '10.0000', '3', '0.10'); INSERT INTO `orderdetails` VALUES ('10446', '52', '5.6000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10447', '19', '7.3000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10447', '65', '16.8000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10447', '71', '17.2000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10448', '26', '24.9000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10448', '40', '14.7000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10449', '10', '24.8000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10449', '52', '5.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10449', '62', '39.4000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10450', '10', '24.8000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10450', '54', '5.9000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10451', '55', '19.2000', '120', '0.10'); INSERT INTO `orderdetails` VALUES ('10451', '64', '26.6000', '35', '0.10'); INSERT INTO `orderdetails` VALUES ('10451', '65', '16.8000', '28', '0.10'); INSERT INTO `orderdetails` VALUES ('10451', '77', '10.4000', '55', '0.10'); INSERT INTO `orderdetails` VALUES ('10452', '28', '36.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10452', '44', '15.5000', '100', '0.05'); INSERT INTO `orderdetails` VALUES ('10453', '48', '10.2000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10453', '70', '12.0000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10454', '16', '13.9000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10454', '33', '2.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10454', '46', '9.6000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10455', '39', '14.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10455', '53', '26.2000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10455', '61', '22.8000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10455', '71', '17.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10456', '21', '8.0000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10456', '49', '16.0000', '21', '0.15'); INSERT INTO `orderdetails` VALUES ('10457', '59', '44.0000', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10458', '26', '24.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10458', '28', '36.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10458', '43', '36.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10458', '56', '30.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10458', '71', '17.2000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10459', '7', '24.0000', '16', '0.05'); INSERT INTO `orderdetails` VALUES ('10459', '46', '9.6000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10459', '72', '27.8000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10460', '68', '10.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10460', '75', '6.2000', '4', '0.25'); INSERT INTO `orderdetails` VALUES ('10461', '21', '8.0000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10461', '30', '20.7000', '28', '0.25'); INSERT INTO `orderdetails` VALUES ('10461', '55', '19.2000', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('10462', '13', '4.8000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10462', '23', '7.2000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10463', '19', '7.3000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10463', '42', '11.2000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10464', '4', '17.6000', '16', '0.20'); INSERT INTO `orderdetails` VALUES ('10464', '43', '36.8000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10464', '56', '30.4000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10464', '60', '27.2000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10465', '24', '3.6000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10465', '29', '99.0000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10465', '40', '14.7000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10465', '45', '7.6000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10465', '50', '13.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10466', '11', '16.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10466', '46', '9.6000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10467', '24', '3.6000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10467', '25', '11.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10468', '30', '20.7000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10468', '43', '36.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10469', '2', '15.2000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10469', '16', '13.9000', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10469', '44', '15.5000', '2', '0.15'); INSERT INTO `orderdetails` VALUES ('10470', '18', '50.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10470', '23', '7.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10470', '64', '26.6000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10471', '7', '24.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10471', '56', '30.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10472', '24', '3.6000', '80', '0.05'); INSERT INTO `orderdetails` VALUES ('10472', '51', '42.4000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10473', '33', '2.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10473', '71', '17.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10474', '14', '18.6000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10474', '28', '36.4000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10474', '40', '14.7000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10474', '75', '6.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10475', '31', '10.0000', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10475', '66', '13.6000', '60', '0.15'); INSERT INTO `orderdetails` VALUES ('10475', '76', '14.4000', '42', '0.15'); INSERT INTO `orderdetails` VALUES ('10476', '55', '19.2000', '2', '0.05'); INSERT INTO `orderdetails` VALUES ('10476', '70', '12.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10477', '1', '14.4000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10477', '21', '8.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10477', '39', '14.4000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10478', '10', '24.8000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10479', '38', '210.8000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10479', '53', '26.2000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10479', '59', '44.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10479', '64', '26.6000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10480', '47', '7.6000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10480', '59', '44.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10481', '49', '16.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10481', '60', '27.2000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10482', '40', '14.7000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10483', '34', '11.2000', '35', '0.05'); INSERT INTO `orderdetails` VALUES ('10483', '77', '10.4000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10484', '21', '8.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10484', '40', '14.7000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10484', '51', '42.4000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10485', '2', '15.2000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10485', '3', '8.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10485', '55', '19.2000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10485', '70', '12.0000', '60', '0.10'); INSERT INTO `orderdetails` VALUES ('10486', '11', '16.8000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10486', '51', '42.4000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10486', '74', '8.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10487', '19', '7.3000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10487', '26', '24.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10487', '54', '5.9000', '24', '0.25'); INSERT INTO `orderdetails` VALUES ('10488', '59', '44.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10488', '73', '12.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10489', '11', '16.8000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10489', '16', '13.9000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10490', '59', '44.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10490', '68', '10.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10490', '75', '6.2000', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10491', '44', '15.5000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10491', '77', '10.4000', '7', '0.15'); INSERT INTO `orderdetails` VALUES ('10492', '25', '11.2000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10492', '42', '11.2000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10493', '65', '16.8000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10493', '66', '13.6000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10493', '69', '28.8000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10494', '56', '30.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10495', '23', '7.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10495', '41', '7.7000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10495', '77', '10.4000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10496', '31', '10.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10497', '56', '30.4000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10497', '72', '27.8000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10497', '77', '10.4000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10498', '24', '4.5000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10498', '40', '18.4000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10498', '42', '14.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10499', '28', '45.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10499', '49', '20.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10500', '15', '15.5000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10500', '28', '45.6000', '8', '0.05'); INSERT INTO `orderdetails` VALUES ('10501', '54', '7.4500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10502', '45', '9.5000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10502', '53', '32.8000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10502', '67', '14.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10503', '14', '23.2500', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10503', '65', '21.0500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10504', '2', '19.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10504', '21', '10.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10504', '53', '32.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10504', '61', '28.5000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10505', '62', '49.3000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10506', '25', '14.0000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10506', '70', '15.0000', '14', '0.10'); INSERT INTO `orderdetails` VALUES ('10507', '43', '46.0000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10507', '48', '12.7500', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10508', '13', '6.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10508', '39', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10509', '28', '45.6000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10510', '29', '123.7900', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10510', '75', '7.7500', '36', '0.10'); INSERT INTO `orderdetails` VALUES ('10511', '4', '22.0000', '50', '0.15'); INSERT INTO `orderdetails` VALUES ('10511', '7', '30.0000', '50', '0.15'); INSERT INTO `orderdetails` VALUES ('10511', '8', '40.0000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('10512', '24', '4.5000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('10512', '46', '12.0000', '9', '0.15'); INSERT INTO `orderdetails` VALUES ('10512', '47', '9.5000', '6', '0.15'); INSERT INTO `orderdetails` VALUES ('10512', '60', '34.0000', '12', '0.15'); INSERT INTO `orderdetails` VALUES ('10513', '21', '10.0000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10513', '32', '32.0000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10513', '61', '28.5000', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10514', '20', '81.0000', '39', '0.00'); INSERT INTO `orderdetails` VALUES ('10514', '28', '45.6000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10514', '56', '38.0000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10514', '65', '21.0500', '39', '0.00'); INSERT INTO `orderdetails` VALUES ('10514', '75', '7.7500', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10515', '9', '97.0000', '16', '0.15'); INSERT INTO `orderdetails` VALUES ('10515', '16', '17.4500', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10515', '27', '43.9000', '120', '0.00'); INSERT INTO `orderdetails` VALUES ('10515', '33', '2.5000', '16', '0.15'); INSERT INTO `orderdetails` VALUES ('10515', '60', '34.0000', '84', '0.15'); INSERT INTO `orderdetails` VALUES ('10516', '18', '62.5000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10516', '41', '9.6500', '80', '0.10'); INSERT INTO `orderdetails` VALUES ('10516', '42', '14.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10517', '52', '7.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10517', '59', '55.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10517', '70', '15.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10518', '24', '4.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10518', '38', '263.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10518', '44', '19.4500', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10519', '10', '31.0000', '16', '0.05'); INSERT INTO `orderdetails` VALUES ('10519', '56', '38.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10519', '60', '34.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10520', '24', '4.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10520', '53', '32.8000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10521', '35', '18.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10521', '41', '9.6500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10521', '68', '12.5000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10522', '1', '18.0000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10522', '8', '40.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10522', '30', '25.8900', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10522', '40', '18.4000', '25', '0.20'); INSERT INTO `orderdetails` VALUES ('10523', '17', '39.0000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10523', '20', '81.0000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10523', '37', '26.0000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10523', '41', '9.6500', '6', '0.10'); INSERT INTO `orderdetails` VALUES ('10524', '10', '31.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10524', '30', '25.8900', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10524', '43', '46.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10524', '54', '7.4500', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10525', '36', '19.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10525', '40', '18.4000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10526', '1', '18.0000', '8', '0.15'); INSERT INTO `orderdetails` VALUES ('10526', '13', '6.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10526', '56', '38.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10527', '4', '22.0000', '50', '0.10'); INSERT INTO `orderdetails` VALUES ('10527', '36', '19.0000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10528', '11', '21.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10528', '33', '2.5000', '8', '0.20'); INSERT INTO `orderdetails` VALUES ('10528', '72', '34.8000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10529', '55', '24.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10529', '68', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10529', '69', '36.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10530', '17', '39.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10530', '43', '46.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10530', '61', '28.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10530', '76', '18.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10531', '59', '55.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10532', '30', '25.8900', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10532', '66', '17.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10533', '4', '22.0000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10533', '72', '34.8000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10533', '73', '15.0000', '24', '0.05'); INSERT INTO `orderdetails` VALUES ('10534', '30', '25.8900', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10534', '40', '18.4000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10534', '54', '7.4500', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10535', '11', '21.0000', '50', '0.10'); INSERT INTO `orderdetails` VALUES ('10535', '40', '18.4000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10535', '57', '19.5000', '5', '0.10'); INSERT INTO `orderdetails` VALUES ('10535', '59', '55.0000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10536', '12', '38.0000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10536', '31', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10536', '33', '2.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10536', '60', '34.0000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10537', '31', '12.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10537', '51', '53.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10537', '58', '13.2500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10537', '72', '34.8000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10537', '73', '15.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10538', '70', '15.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10538', '72', '34.8000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10539', '13', '6.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10539', '21', '10.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10539', '33', '2.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10539', '49', '20.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10540', '3', '10.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10540', '26', '31.2300', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10540', '38', '263.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10540', '68', '12.5000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10541', '24', '4.5000', '35', '0.10'); INSERT INTO `orderdetails` VALUES ('10541', '38', '263.5000', '4', '0.10'); INSERT INTO `orderdetails` VALUES ('10541', '65', '21.0500', '36', '0.10'); INSERT INTO `orderdetails` VALUES ('10541', '71', '21.5000', '9', '0.10'); INSERT INTO `orderdetails` VALUES ('10542', '11', '21.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10542', '54', '7.4500', '24', '0.05'); INSERT INTO `orderdetails` VALUES ('10543', '12', '38.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10543', '23', '9.0000', '70', '0.15'); INSERT INTO `orderdetails` VALUES ('10544', '28', '45.6000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10544', '67', '14.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10545', '11', '21.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10546', '7', '30.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10546', '35', '18.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10546', '62', '49.3000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10547', '32', '32.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('10547', '36', '19.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10548', '34', '14.0000', '10', '0.25'); INSERT INTO `orderdetails` VALUES ('10548', '41', '9.6500', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10549', '31', '12.5000', '55', '0.15'); INSERT INTO `orderdetails` VALUES ('10549', '45', '9.5000', '100', '0.15'); INSERT INTO `orderdetails` VALUES ('10549', '51', '53.0000', '48', '0.15'); INSERT INTO `orderdetails` VALUES ('10550', '17', '39.0000', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10550', '19', '9.2000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10550', '21', '10.0000', '6', '0.10'); INSERT INTO `orderdetails` VALUES ('10550', '61', '28.5000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10551', '16', '17.4500', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10551', '35', '18.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10551', '44', '19.4500', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10552', '69', '36.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10552', '75', '7.7500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10553', '11', '21.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10553', '16', '17.4500', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10553', '22', '21.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10553', '31', '12.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10553', '35', '18.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10554', '16', '17.4500', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10554', '23', '9.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10554', '62', '49.3000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10554', '77', '13.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10555', '14', '23.2500', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10555', '19', '9.2000', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('10555', '24', '4.5000', '18', '0.20'); INSERT INTO `orderdetails` VALUES ('10555', '51', '53.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10555', '56', '38.0000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10556', '72', '34.8000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10557', '64', '33.2500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10557', '75', '7.7500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10558', '47', '9.5000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10558', '51', '53.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10558', '52', '7.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10558', '53', '32.8000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10558', '73', '15.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10559', '41', '9.6500', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10559', '55', '24.0000', '18', '0.05'); INSERT INTO `orderdetails` VALUES ('10560', '30', '25.8900', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10560', '62', '49.3000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10561', '44', '19.4500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10561', '51', '53.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10562', '33', '2.5000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10562', '62', '49.3000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10563', '36', '19.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10563', '52', '7.0000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10564', '17', '39.0000', '16', '0.05'); INSERT INTO `orderdetails` VALUES ('10564', '31', '12.5000', '6', '0.05'); INSERT INTO `orderdetails` VALUES ('10564', '55', '24.0000', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10565', '24', '4.5000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10565', '64', '33.2500', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10566', '11', '21.0000', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10566', '18', '62.5000', '18', '0.15'); INSERT INTO `orderdetails` VALUES ('10566', '76', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10567', '31', '12.5000', '60', '0.20'); INSERT INTO `orderdetails` VALUES ('10567', '51', '53.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10567', '59', '55.0000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10568', '10', '31.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10569', '31', '12.5000', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('10569', '76', '18.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10570', '11', '21.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10570', '56', '38.0000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10571', '14', '23.2500', '11', '0.15'); INSERT INTO `orderdetails` VALUES ('10571', '42', '14.0000', '28', '0.15'); INSERT INTO `orderdetails` VALUES ('10572', '16', '17.4500', '12', '0.10'); INSERT INTO `orderdetails` VALUES ('10572', '32', '32.0000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10572', '40', '18.4000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10572', '75', '7.7500', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10573', '17', '39.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10573', '34', '14.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10573', '53', '32.8000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10574', '33', '2.5000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10574', '40', '18.4000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10574', '62', '49.3000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10574', '64', '33.2500', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10575', '59', '55.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10575', '63', '43.9000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10575', '72', '34.8000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10575', '76', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10576', '1', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10576', '31', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10576', '44', '19.4500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10577', '39', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10577', '75', '7.7500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10577', '77', '13.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10578', '35', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10578', '57', '19.5000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10579', '15', '15.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10579', '75', '7.7500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10580', '14', '23.2500', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10580', '41', '9.6500', '9', '0.05'); INSERT INTO `orderdetails` VALUES ('10580', '65', '21.0500', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10581', '75', '7.7500', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10582', '57', '19.5000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10582', '76', '18.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10583', '29', '123.7900', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10583', '60', '34.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('10583', '69', '36.0000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('10584', '31', '12.5000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10585', '47', '9.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10586', '52', '7.0000', '4', '0.15'); INSERT INTO `orderdetails` VALUES ('10587', '26', '31.2300', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10587', '35', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10587', '77', '13.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10588', '18', '62.5000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10588', '42', '14.0000', '100', '0.20'); INSERT INTO `orderdetails` VALUES ('10589', '35', '18.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10590', '1', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10590', '77', '13.0000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10591', '3', '10.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10591', '7', '30.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10591', '54', '7.4500', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10592', '15', '15.5000', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10592', '26', '31.2300', '5', '0.05'); INSERT INTO `orderdetails` VALUES ('10593', '20', '81.0000', '21', '0.20'); INSERT INTO `orderdetails` VALUES ('10593', '69', '36.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10593', '76', '18.0000', '4', '0.20'); INSERT INTO `orderdetails` VALUES ('10594', '52', '7.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10594', '58', '13.2500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10595', '35', '18.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10595', '61', '28.5000', '120', '0.25'); INSERT INTO `orderdetails` VALUES ('10595', '69', '36.0000', '65', '0.25'); INSERT INTO `orderdetails` VALUES ('10596', '56', '38.0000', '5', '0.20'); INSERT INTO `orderdetails` VALUES ('10596', '63', '43.9000', '24', '0.20'); INSERT INTO `orderdetails` VALUES ('10596', '75', '7.7500', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10597', '24', '4.5000', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('10597', '57', '19.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10597', '65', '21.0500', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10598', '27', '43.9000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10598', '71', '21.5000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10599', '62', '49.3000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10600', '54', '7.4500', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10600', '73', '15.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10601', '13', '6.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10601', '59', '55.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10602', '77', '13.0000', '5', '0.25'); INSERT INTO `orderdetails` VALUES ('10603', '22', '21.0000', '48', '0.00'); INSERT INTO `orderdetails` VALUES ('10603', '49', '20.0000', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10604', '48', '12.7500', '6', '0.10'); INSERT INTO `orderdetails` VALUES ('10604', '76', '18.0000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10605', '16', '17.4500', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10605', '59', '55.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10605', '60', '34.0000', '70', '0.05'); INSERT INTO `orderdetails` VALUES ('10605', '71', '21.5000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10606', '4', '22.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10606', '55', '24.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10606', '62', '49.3000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10607', '7', '30.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10607', '17', '39.0000', '100', '0.00'); INSERT INTO `orderdetails` VALUES ('10607', '33', '2.5000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10607', '40', '18.4000', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('10607', '72', '34.8000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10608', '56', '38.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10609', '1', '18.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10609', '10', '31.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10609', '21', '10.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10610', '36', '19.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10611', '1', '18.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10611', '2', '19.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10611', '60', '34.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10612', '10', '31.0000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10612', '36', '19.0000', '55', '0.00'); INSERT INTO `orderdetails` VALUES ('10612', '49', '20.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10612', '60', '34.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10612', '76', '18.0000', '80', '0.00'); INSERT INTO `orderdetails` VALUES ('10613', '13', '6.0000', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10613', '75', '7.7500', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10614', '11', '21.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10614', '21', '10.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10614', '39', '18.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10615', '55', '24.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10616', '38', '263.5000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10616', '56', '38.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10616', '70', '15.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10616', '71', '21.5000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10617', '59', '55.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10618', '6', '25.0000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10618', '56', '38.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10618', '68', '12.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10619', '21', '10.0000', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('10619', '22', '21.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10620', '24', '4.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10620', '52', '7.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10621', '19', '9.2000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10621', '23', '9.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10621', '70', '15.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10621', '71', '21.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10622', '2', '19.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10622', '68', '12.5000', '18', '0.20'); INSERT INTO `orderdetails` VALUES ('10623', '14', '23.2500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10623', '19', '9.2000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10623', '21', '10.0000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10623', '24', '4.5000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10623', '35', '18.0000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10624', '28', '45.6000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10624', '29', '123.7900', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10624', '44', '19.4500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10625', '14', '23.2500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10625', '42', '14.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10625', '60', '34.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10626', '53', '32.8000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10626', '60', '34.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10626', '71', '21.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10627', '62', '49.3000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10627', '73', '15.0000', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10628', '1', '18.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10629', '29', '123.7900', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10629', '64', '33.2500', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10630', '55', '24.0000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10630', '76', '18.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10631', '75', '7.7500', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10632', '2', '19.0000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10632', '33', '2.5000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10633', '12', '38.0000', '36', '0.15'); INSERT INTO `orderdetails` VALUES ('10633', '13', '6.0000', '13', '0.15'); INSERT INTO `orderdetails` VALUES ('10633', '26', '31.2300', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10633', '62', '49.3000', '80', '0.15'); INSERT INTO `orderdetails` VALUES ('10634', '7', '30.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10634', '18', '62.5000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10634', '51', '53.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10634', '75', '7.7500', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10635', '4', '22.0000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10635', '5', '21.3500', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10635', '22', '21.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10636', '4', '22.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10636', '58', '13.2500', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10637', '11', '21.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10637', '50', '16.2500', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10637', '56', '38.0000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10638', '45', '9.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10638', '65', '21.0500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10638', '72', '34.8000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10639', '18', '62.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10640', '69', '36.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10640', '70', '15.0000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10641', '2', '19.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10641', '40', '18.4000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10642', '21', '10.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10642', '61', '28.5000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10643', '28', '45.6000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10643', '39', '18.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10643', '46', '12.0000', '2', '0.25'); INSERT INTO `orderdetails` VALUES ('10644', '18', '62.5000', '4', '0.10'); INSERT INTO `orderdetails` VALUES ('10644', '43', '46.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10644', '46', '12.0000', '21', '0.10'); INSERT INTO `orderdetails` VALUES ('10645', '18', '62.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10645', '36', '19.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10646', '1', '18.0000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10646', '10', '31.0000', '18', '0.25'); INSERT INTO `orderdetails` VALUES ('10646', '71', '21.5000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10646', '77', '13.0000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10647', '19', '9.2000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10647', '39', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10648', '22', '21.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10648', '24', '4.5000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10649', '28', '45.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10649', '72', '34.8000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10650', '30', '25.8900', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10650', '53', '32.8000', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10650', '54', '7.4500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10651', '19', '9.2000', '12', '0.25'); INSERT INTO `orderdetails` VALUES ('10651', '22', '21.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10652', '30', '25.8900', '2', '0.25'); INSERT INTO `orderdetails` VALUES ('10652', '42', '14.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10653', '16', '17.4500', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10653', '60', '34.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10654', '4', '22.0000', '12', '0.10'); INSERT INTO `orderdetails` VALUES ('10654', '39', '18.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10654', '54', '7.4500', '6', '0.10'); INSERT INTO `orderdetails` VALUES ('10655', '41', '9.6500', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10656', '14', '23.2500', '3', '0.10'); INSERT INTO `orderdetails` VALUES ('10656', '44', '19.4500', '28', '0.10'); INSERT INTO `orderdetails` VALUES ('10656', '47', '9.5000', '6', '0.10'); INSERT INTO `orderdetails` VALUES ('10657', '15', '15.5000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10657', '41', '9.6500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10657', '46', '12.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10657', '47', '9.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10657', '56', '38.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10657', '60', '34.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10658', '21', '10.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10658', '40', '18.4000', '70', '0.05'); INSERT INTO `orderdetails` VALUES ('10658', '60', '34.0000', '55', '0.05'); INSERT INTO `orderdetails` VALUES ('10658', '77', '13.0000', '70', '0.05'); INSERT INTO `orderdetails` VALUES ('10659', '31', '12.5000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10659', '40', '18.4000', '24', '0.05'); INSERT INTO `orderdetails` VALUES ('10659', '70', '15.0000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10660', '20', '81.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10661', '39', '18.0000', '3', '0.20'); INSERT INTO `orderdetails` VALUES ('10661', '58', '13.2500', '49', '0.20'); INSERT INTO `orderdetails` VALUES ('10662', '68', '12.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10663', '40', '18.4000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10663', '42', '14.0000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10663', '51', '53.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10664', '10', '31.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('10664', '56', '38.0000', '12', '0.15'); INSERT INTO `orderdetails` VALUES ('10664', '65', '21.0500', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10665', '51', '53.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10665', '59', '55.0000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10665', '76', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10666', '29', '123.7900', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10666', '65', '21.0500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10667', '69', '36.0000', '45', '0.20'); INSERT INTO `orderdetails` VALUES ('10667', '71', '21.5000', '14', '0.20'); INSERT INTO `orderdetails` VALUES ('10668', '31', '12.5000', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10668', '55', '24.0000', '4', '0.10'); INSERT INTO `orderdetails` VALUES ('10668', '64', '33.2500', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10669', '36', '19.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10670', '23', '9.0000', '32', '0.00'); INSERT INTO `orderdetails` VALUES ('10670', '46', '12.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10670', '67', '14.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10670', '73', '15.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10670', '75', '7.7500', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10671', '16', '17.4500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10671', '62', '49.3000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10671', '65', '21.0500', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10672', '38', '263.5000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10672', '71', '21.5000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10673', '16', '17.4500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10673', '42', '14.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10673', '43', '46.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10674', '23', '9.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10675', '14', '23.2500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10675', '53', '32.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10675', '58', '13.2500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10676', '10', '31.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10676', '19', '9.2000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10676', '44', '19.4500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10677', '26', '31.2300', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10677', '33', '2.5000', '8', '0.15'); INSERT INTO `orderdetails` VALUES ('10678', '12', '38.0000', '100', '0.00'); INSERT INTO `orderdetails` VALUES ('10678', '33', '2.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10678', '41', '9.6500', '120', '0.00'); INSERT INTO `orderdetails` VALUES ('10678', '54', '7.4500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10679', '59', '55.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10680', '16', '17.4500', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10680', '31', '12.5000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10680', '42', '14.0000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10681', '19', '9.2000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10681', '21', '10.0000', '12', '0.10'); INSERT INTO `orderdetails` VALUES ('10681', '64', '33.2500', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10682', '33', '2.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10682', '66', '17.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10682', '75', '7.7500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10683', '52', '7.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10684', '40', '18.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10684', '47', '9.5000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10684', '60', '34.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10685', '10', '31.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10685', '41', '9.6500', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10685', '47', '9.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10686', '17', '39.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10686', '26', '31.2300', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10687', '9', '97.0000', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10687', '29', '123.7900', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10687', '36', '19.0000', '6', '0.25'); INSERT INTO `orderdetails` VALUES ('10688', '10', '31.0000', '18', '0.10'); INSERT INTO `orderdetails` VALUES ('10688', '28', '45.6000', '60', '0.10'); INSERT INTO `orderdetails` VALUES ('10688', '34', '14.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10689', '1', '18.0000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10690', '56', '38.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10690', '77', '13.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10691', '1', '18.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10691', '29', '123.7900', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10691', '43', '46.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10691', '44', '19.4500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10691', '62', '49.3000', '48', '0.00'); INSERT INTO `orderdetails` VALUES ('10692', '50', '43.9000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10693', '9', '97.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10693', '54', '7.4500', '60', '0.15'); INSERT INTO `orderdetails` VALUES ('10693', '69', '36.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10693', '73', '15.0000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10694', '7', '30.0000', '90', '0.00'); INSERT INTO `orderdetails` VALUES ('10694', '59', '55.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10694', '70', '15.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10695', '8', '40.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10695', '12', '38.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10695', '24', '4.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10696', '17', '39.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10696', '46', '12.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10697', '19', '9.2000', '7', '0.25'); INSERT INTO `orderdetails` VALUES ('10697', '35', '18.0000', '9', '0.25'); INSERT INTO `orderdetails` VALUES ('10697', '58', '13.2500', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10697', '70', '15.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10698', '11', '21.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10698', '17', '39.0000', '8', '0.05'); INSERT INTO `orderdetails` VALUES ('10698', '29', '123.7900', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10698', '65', '21.0500', '65', '0.05'); INSERT INTO `orderdetails` VALUES ('10698', '70', '15.0000', '8', '0.05'); INSERT INTO `orderdetails` VALUES ('10699', '47', '9.5000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10700', '1', '18.0000', '5', '0.20'); INSERT INTO `orderdetails` VALUES ('10700', '34', '14.0000', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10700', '68', '12.5000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10700', '71', '21.5000', '60', '0.20'); INSERT INTO `orderdetails` VALUES ('10701', '59', '55.0000', '42', '0.15'); INSERT INTO `orderdetails` VALUES ('10701', '71', '21.5000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10701', '76', '18.0000', '35', '0.15'); INSERT INTO `orderdetails` VALUES ('10702', '3', '10.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10702', '76', '18.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10703', '2', '19.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10703', '59', '55.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10703', '73', '15.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10704', '4', '22.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10704', '24', '4.5000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10704', '48', '12.7500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10705', '31', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10705', '32', '32.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10706', '16', '17.4500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10706', '43', '46.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10706', '59', '55.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10707', '55', '24.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10707', '57', '19.5000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10707', '70', '15.0000', '28', '0.15'); INSERT INTO `orderdetails` VALUES ('10708', '5', '21.3500', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10708', '36', '19.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10709', '8', '40.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10709', '51', '53.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10709', '60', '34.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10710', '19', '9.2000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10710', '47', '9.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10711', '19', '9.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10711', '41', '9.6500', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('10711', '53', '32.8000', '120', '0.00'); INSERT INTO `orderdetails` VALUES ('10712', '53', '32.8000', '3', '0.05'); INSERT INTO `orderdetails` VALUES ('10712', '56', '38.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10713', '10', '31.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10713', '26', '31.2300', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10713', '45', '9.5000', '110', '0.00'); INSERT INTO `orderdetails` VALUES ('10713', '46', '12.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10714', '2', '19.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10714', '17', '39.0000', '27', '0.25'); INSERT INTO `orderdetails` VALUES ('10714', '47', '9.5000', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10714', '56', '38.0000', '18', '0.25'); INSERT INTO `orderdetails` VALUES ('10714', '58', '13.2500', '12', '0.25'); INSERT INTO `orderdetails` VALUES ('10715', '10', '31.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10715', '71', '21.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10716', '21', '10.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10716', '51', '53.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10716', '61', '28.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10717', '21', '10.0000', '32', '0.05'); INSERT INTO `orderdetails` VALUES ('10717', '54', '7.4500', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10717', '69', '36.0000', '25', '0.05'); INSERT INTO `orderdetails` VALUES ('10718', '12', '38.0000', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10718', '16', '17.4500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10718', '36', '19.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10718', '62', '49.3000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10719', '18', '62.5000', '12', '0.25'); INSERT INTO `orderdetails` VALUES ('10719', '30', '25.8900', '3', '0.25'); INSERT INTO `orderdetails` VALUES ('10719', '54', '7.4500', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10720', '35', '18.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10720', '71', '21.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10721', '44', '19.4500', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10722', '2', '19.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10722', '31', '12.5000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10722', '68', '12.5000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10722', '75', '7.7500', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('10723', '26', '31.2300', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10724', '10', '31.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10724', '61', '28.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10725', '41', '9.6500', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10725', '52', '7.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10725', '55', '24.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10726', '4', '22.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10726', '11', '21.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10727', '17', '39.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10727', '56', '38.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10727', '59', '55.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10728', '30', '25.8900', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10728', '40', '18.4000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10728', '55', '24.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10728', '60', '34.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10729', '1', '18.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10729', '21', '10.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10729', '50', '16.2500', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10730', '16', '17.4500', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10730', '31', '12.5000', '3', '0.05'); INSERT INTO `orderdetails` VALUES ('10730', '65', '21.0500', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10731', '21', '10.0000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10731', '51', '53.0000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10732', '76', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10733', '14', '23.2500', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10733', '28', '45.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10733', '52', '7.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10734', '6', '25.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10734', '30', '25.8900', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10734', '76', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10735', '61', '28.5000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10735', '77', '13.0000', '2', '0.10'); INSERT INTO `orderdetails` VALUES ('10736', '65', '21.0500', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10736', '75', '7.7500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10737', '13', '6.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10737', '41', '9.6500', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10738', '16', '17.4500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10739', '36', '19.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10739', '52', '7.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10740', '28', '45.6000', '5', '0.20'); INSERT INTO `orderdetails` VALUES ('10740', '35', '18.0000', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('10740', '45', '9.5000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10740', '56', '38.0000', '14', '0.20'); INSERT INTO `orderdetails` VALUES ('10741', '2', '19.0000', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10742', '3', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10742', '60', '34.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10742', '72', '34.8000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10743', '46', '12.0000', '28', '0.05'); INSERT INTO `orderdetails` VALUES ('10744', '40', '18.4000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10745', '18', '62.5000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10745', '44', '19.4500', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10745', '59', '55.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10745', '72', '34.8000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10746', '13', '6.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10746', '42', '14.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10746', '62', '49.3000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10746', '69', '36.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10747', '31', '12.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10747', '41', '9.6500', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10747', '63', '43.9000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10747', '69', '36.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10748', '23', '9.0000', '44', '0.00'); INSERT INTO `orderdetails` VALUES ('10748', '40', '18.4000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10748', '56', '38.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10749', '56', '38.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10749', '59', '55.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10749', '76', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10750', '14', '23.2500', '5', '0.15'); INSERT INTO `orderdetails` VALUES ('10750', '45', '9.5000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10750', '59', '55.0000', '25', '0.15'); INSERT INTO `orderdetails` VALUES ('10751', '26', '31.2300', '12', '0.10'); INSERT INTO `orderdetails` VALUES ('10751', '30', '25.8900', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10751', '50', '16.2500', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10751', '73', '15.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10752', '1', '18.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10752', '69', '36.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10753', '45', '9.5000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10753', '74', '10.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10754', '40', '18.4000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10755', '47', '9.5000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10755', '56', '38.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10755', '57', '19.5000', '14', '0.25'); INSERT INTO `orderdetails` VALUES ('10755', '69', '36.0000', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('10756', '18', '62.5000', '21', '0.20'); INSERT INTO `orderdetails` VALUES ('10756', '36', '19.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10756', '68', '12.5000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10756', '69', '36.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10757', '34', '14.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10757', '59', '55.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10757', '62', '49.3000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10757', '64', '33.2500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10758', '26', '31.2300', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10758', '52', '7.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10758', '70', '15.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10759', '32', '32.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10760', '25', '14.0000', '12', '0.25'); INSERT INTO `orderdetails` VALUES ('10760', '27', '43.9000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10760', '43', '46.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10761', '25', '14.0000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10761', '75', '7.7500', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10762', '39', '18.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10762', '47', '9.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10762', '51', '53.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10762', '56', '38.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10763', '21', '10.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10763', '22', '21.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10763', '24', '4.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10764', '3', '10.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10764', '39', '18.0000', '130', '0.10'); INSERT INTO `orderdetails` VALUES ('10765', '65', '21.0500', '80', '0.10'); INSERT INTO `orderdetails` VALUES ('10766', '2', '19.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10766', '7', '30.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10766', '68', '12.5000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10767', '42', '14.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10768', '22', '21.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10768', '31', '12.5000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10768', '60', '34.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10768', '71', '21.5000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10769', '41', '9.6500', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10769', '52', '7.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10769', '61', '28.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10769', '62', '49.3000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10770', '11', '21.0000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10771', '71', '21.5000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10772', '29', '123.7900', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10772', '59', '55.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10773', '17', '39.0000', '33', '0.00'); INSERT INTO `orderdetails` VALUES ('10773', '31', '12.5000', '70', '0.20'); INSERT INTO `orderdetails` VALUES ('10773', '75', '7.7500', '7', '0.20'); INSERT INTO `orderdetails` VALUES ('10774', '31', '12.5000', '2', '0.25'); INSERT INTO `orderdetails` VALUES ('10774', '66', '17.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10775', '10', '31.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10775', '67', '14.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10776', '31', '12.5000', '16', '0.05'); INSERT INTO `orderdetails` VALUES ('10776', '42', '14.0000', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10776', '45', '9.5000', '27', '0.05'); INSERT INTO `orderdetails` VALUES ('10776', '51', '53.0000', '120', '0.05'); INSERT INTO `orderdetails` VALUES ('10777', '42', '14.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10778', '41', '9.6500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10779', '16', '17.4500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10779', '62', '49.3000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10780', '70', '15.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10780', '77', '13.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10781', '54', '7.4500', '3', '0.20'); INSERT INTO `orderdetails` VALUES ('10781', '56', '38.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10781', '74', '10.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10782', '31', '12.5000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10783', '31', '12.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10783', '38', '263.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10784', '36', '19.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10784', '39', '18.0000', '2', '0.15'); INSERT INTO `orderdetails` VALUES ('10784', '72', '34.8000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10785', '10', '31.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10785', '75', '7.7500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10786', '8', '40.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10786', '30', '25.8900', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10786', '75', '7.7500', '42', '0.20'); INSERT INTO `orderdetails` VALUES ('10787', '2', '19.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10787', '29', '123.7900', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10788', '19', '9.2000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10788', '75', '7.7500', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10789', '18', '62.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10789', '35', '18.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10789', '63', '43.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10789', '68', '12.5000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10790', '7', '30.0000', '3', '0.15'); INSERT INTO `orderdetails` VALUES ('10790', '56', '38.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10791', '29', '123.7900', '14', '0.05'); INSERT INTO `orderdetails` VALUES ('10791', '41', '9.6500', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10792', '2', '19.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10792', '54', '7.4500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10792', '68', '12.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10793', '41', '9.6500', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10793', '52', '7.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10794', '14', '23.2500', '15', '0.20'); INSERT INTO `orderdetails` VALUES ('10794', '54', '7.4500', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10795', '16', '17.4500', '65', '0.00'); INSERT INTO `orderdetails` VALUES ('10795', '17', '39.0000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10796', '26', '31.2300', '21', '0.20'); INSERT INTO `orderdetails` VALUES ('10796', '44', '19.4500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10796', '64', '33.2500', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('10796', '69', '36.0000', '24', '0.20'); INSERT INTO `orderdetails` VALUES ('10797', '11', '21.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10798', '62', '49.3000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10798', '72', '34.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10799', '13', '6.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10799', '24', '4.5000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10799', '59', '55.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10800', '11', '21.0000', '50', '0.10'); INSERT INTO `orderdetails` VALUES ('10800', '51', '53.0000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('10800', '54', '7.4500', '7', '0.10'); INSERT INTO `orderdetails` VALUES ('10801', '17', '39.0000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10801', '29', '123.7900', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10802', '30', '25.8900', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('10802', '51', '53.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10802', '55', '24.0000', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('10802', '62', '49.3000', '5', '0.25'); INSERT INTO `orderdetails` VALUES ('10803', '19', '9.2000', '24', '0.05'); INSERT INTO `orderdetails` VALUES ('10803', '25', '14.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10803', '59', '55.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10804', '10', '31.0000', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10804', '28', '45.6000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10804', '49', '20.0000', '4', '0.15'); INSERT INTO `orderdetails` VALUES ('10805', '34', '14.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10805', '38', '263.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10806', '2', '19.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10806', '65', '21.0500', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10806', '74', '10.0000', '15', '0.25'); INSERT INTO `orderdetails` VALUES ('10807', '40', '18.4000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10808', '56', '38.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10808', '76', '18.0000', '50', '0.15'); INSERT INTO `orderdetails` VALUES ('10809', '52', '7.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10810', '13', '6.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10810', '25', '14.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10810', '70', '15.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10811', '19', '9.2000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10811', '23', '9.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10811', '40', '18.4000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10812', '31', '12.5000', '16', '0.10'); INSERT INTO `orderdetails` VALUES ('10812', '72', '34.8000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10812', '77', '13.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10813', '2', '19.0000', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10813', '46', '12.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10814', '41', '9.6500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10814', '43', '46.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10814', '48', '12.7500', '8', '0.15'); INSERT INTO `orderdetails` VALUES ('10814', '61', '28.5000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10815', '33', '2.5000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10816', '38', '263.5000', '30', '0.05'); INSERT INTO `orderdetails` VALUES ('10816', '62', '49.3000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10817', '26', '31.2300', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10817', '38', '263.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10817', '40', '18.4000', '60', '0.15'); INSERT INTO `orderdetails` VALUES ('10817', '62', '49.3000', '25', '0.15'); INSERT INTO `orderdetails` VALUES ('10818', '32', '32.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10818', '41', '9.6500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10819', '43', '46.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10819', '75', '7.7500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10820', '56', '38.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10821', '35', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10821', '51', '53.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10822', '62', '49.3000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10822', '70', '15.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10823', '11', '21.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10823', '57', '19.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10823', '59', '55.0000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10823', '77', '13.0000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10824', '41', '9.6500', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10824', '70', '15.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10825', '26', '31.2300', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10825', '53', '32.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10826', '31', '12.5000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10826', '57', '19.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10827', '10', '31.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10827', '39', '18.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10828', '20', '81.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10828', '38', '263.5000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10829', '2', '19.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10829', '8', '40.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10829', '13', '6.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10829', '60', '34.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10830', '6', '25.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10830', '39', '18.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10830', '60', '34.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10830', '68', '12.5000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10831', '19', '9.2000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10831', '35', '18.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10831', '38', '263.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10831', '43', '46.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10832', '13', '6.0000', '3', '0.20'); INSERT INTO `orderdetails` VALUES ('10832', '25', '14.0000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10832', '44', '19.4500', '16', '0.20'); INSERT INTO `orderdetails` VALUES ('10832', '64', '33.2500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10833', '7', '30.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10833', '31', '12.5000', '9', '0.10'); INSERT INTO `orderdetails` VALUES ('10833', '53', '32.8000', '9', '0.10'); INSERT INTO `orderdetails` VALUES ('10834', '29', '123.7900', '8', '0.05'); INSERT INTO `orderdetails` VALUES ('10834', '30', '25.8900', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10835', '59', '55.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10835', '70', '15.0000', '2', '0.20'); INSERT INTO `orderdetails` VALUES ('10836', '22', '21.0000', '52', '0.00'); INSERT INTO `orderdetails` VALUES ('10836', '35', '18.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10836', '57', '19.5000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10836', '60', '34.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10836', '64', '33.2500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10837', '13', '6.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10837', '40', '18.4000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10837', '47', '9.5000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10837', '76', '18.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10838', '1', '18.0000', '4', '0.25'); INSERT INTO `orderdetails` VALUES ('10838', '18', '62.5000', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('10838', '36', '19.0000', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10839', '58', '13.2500', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10839', '72', '34.8000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('10840', '25', '14.0000', '6', '0.20'); INSERT INTO `orderdetails` VALUES ('10840', '39', '18.0000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10841', '10', '31.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10841', '56', '38.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10841', '59', '55.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10841', '77', '13.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10842', '11', '21.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10842', '43', '46.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10842', '68', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10842', '70', '15.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10843', '51', '53.0000', '4', '0.25'); INSERT INTO `orderdetails` VALUES ('10844', '22', '21.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10845', '23', '9.0000', '70', '0.10'); INSERT INTO `orderdetails` VALUES ('10845', '35', '18.0000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('10845', '42', '14.0000', '42', '0.10'); INSERT INTO `orderdetails` VALUES ('10845', '58', '13.2500', '60', '0.10'); INSERT INTO `orderdetails` VALUES ('10845', '64', '33.2500', '48', '0.00'); INSERT INTO `orderdetails` VALUES ('10846', '4', '22.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10846', '70', '15.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10846', '74', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10847', '1', '18.0000', '80', '0.20'); INSERT INTO `orderdetails` VALUES ('10847', '19', '9.2000', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10847', '37', '26.0000', '60', '0.20'); INSERT INTO `orderdetails` VALUES ('10847', '45', '9.5000', '36', '0.20'); INSERT INTO `orderdetails` VALUES ('10847', '60', '34.0000', '45', '0.20'); INSERT INTO `orderdetails` VALUES ('10847', '71', '21.5000', '55', '0.20'); INSERT INTO `orderdetails` VALUES ('10848', '5', '21.3500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10848', '9', '97.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10849', '3', '10.0000', '49', '0.00'); INSERT INTO `orderdetails` VALUES ('10849', '26', '31.2300', '18', '0.15'); INSERT INTO `orderdetails` VALUES ('10850', '25', '14.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10850', '33', '2.5000', '4', '0.15'); INSERT INTO `orderdetails` VALUES ('10850', '70', '15.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10851', '2', '19.0000', '5', '0.05'); INSERT INTO `orderdetails` VALUES ('10851', '25', '14.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10851', '57', '19.5000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10851', '59', '55.0000', '42', '0.05'); INSERT INTO `orderdetails` VALUES ('10852', '2', '19.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10852', '17', '39.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10852', '62', '49.3000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10853', '18', '62.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10854', '10', '31.0000', '100', '0.15'); INSERT INTO `orderdetails` VALUES ('10854', '13', '6.0000', '65', '0.15'); INSERT INTO `orderdetails` VALUES ('10855', '16', '17.4500', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10855', '31', '12.5000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10855', '56', '38.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10855', '65', '21.0500', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('10856', '2', '19.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10856', '42', '14.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10857', '3', '10.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10857', '26', '31.2300', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10857', '29', '123.7900', '10', '0.25'); INSERT INTO `orderdetails` VALUES ('10858', '7', '30.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10858', '27', '43.9000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10858', '70', '15.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10859', '24', '4.5000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10859', '54', '7.4500', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10859', '64', '33.2500', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10860', '51', '53.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10860', '76', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10861', '17', '39.0000', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('10861', '18', '62.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10861', '21', '10.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10861', '33', '2.5000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10861', '62', '49.3000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10862', '11', '21.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10862', '52', '7.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10863', '1', '18.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10863', '58', '13.2500', '12', '0.15'); INSERT INTO `orderdetails` VALUES ('10864', '35', '18.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10864', '67', '14.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10865', '38', '263.5000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('10865', '39', '18.0000', '80', '0.05'); INSERT INTO `orderdetails` VALUES ('10866', '2', '19.0000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('10866', '24', '4.5000', '6', '0.25'); INSERT INTO `orderdetails` VALUES ('10866', '30', '25.8900', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10867', '53', '32.8000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10868', '26', '31.2300', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10868', '35', '18.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10868', '49', '20.0000', '42', '0.10'); INSERT INTO `orderdetails` VALUES ('10869', '1', '18.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10869', '11', '21.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10869', '23', '9.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10869', '68', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10870', '35', '18.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10870', '51', '53.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10871', '6', '25.0000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10871', '16', '17.4500', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10871', '17', '39.0000', '16', '0.05'); INSERT INTO `orderdetails` VALUES ('10872', '55', '24.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('10872', '62', '49.3000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10872', '64', '33.2500', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10872', '65', '21.0500', '21', '0.05'); INSERT INTO `orderdetails` VALUES ('10873', '21', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10873', '28', '45.6000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('10874', '10', '31.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10875', '19', '9.2000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10875', '47', '9.5000', '21', '0.10'); INSERT INTO `orderdetails` VALUES ('10875', '49', '20.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10876', '46', '12.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10876', '64', '33.2500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10877', '16', '17.4500', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10877', '18', '62.5000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10878', '20', '81.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10879', '40', '18.4000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10879', '65', '21.0500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10879', '76', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10880', '23', '9.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10880', '61', '28.5000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10880', '70', '15.0000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10881', '73', '15.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10882', '42', '14.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10882', '49', '20.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10882', '54', '7.4500', '32', '0.15'); INSERT INTO `orderdetails` VALUES ('10883', '24', '4.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10884', '21', '10.0000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10884', '56', '38.0000', '21', '0.05'); INSERT INTO `orderdetails` VALUES ('10884', '65', '21.0500', '12', '0.05'); INSERT INTO `orderdetails` VALUES ('10885', '2', '19.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10885', '24', '4.5000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10885', '70', '15.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10885', '77', '13.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10886', '10', '31.0000', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('10886', '31', '12.5000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10886', '77', '13.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10887', '25', '14.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10888', '2', '19.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10888', '68', '12.5000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10889', '11', '21.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10889', '38', '263.5000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10890', '17', '39.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10890', '34', '14.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10890', '41', '9.6500', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10891', '30', '25.8900', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10892', '59', '55.0000', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('10893', '8', '40.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10893', '24', '4.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10893', '29', '123.7900', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10893', '30', '25.8900', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10893', '36', '19.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10894', '13', '6.0000', '28', '0.05'); INSERT INTO `orderdetails` VALUES ('10894', '69', '36.0000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10894', '75', '7.7500', '120', '0.05'); INSERT INTO `orderdetails` VALUES ('10895', '24', '4.5000', '110', '0.00'); INSERT INTO `orderdetails` VALUES ('10895', '39', '18.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10895', '40', '18.4000', '91', '0.00'); INSERT INTO `orderdetails` VALUES ('10895', '60', '34.0000', '100', '0.00'); INSERT INTO `orderdetails` VALUES ('10896', '45', '9.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10896', '56', '38.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10897', '29', '123.7900', '80', '0.00'); INSERT INTO `orderdetails` VALUES ('10897', '30', '25.8900', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10898', '13', '6.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10899', '39', '18.0000', '8', '0.15'); INSERT INTO `orderdetails` VALUES ('10900', '70', '15.0000', '3', '0.25'); INSERT INTO `orderdetails` VALUES ('10901', '41', '9.6500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10901', '71', '21.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10902', '55', '24.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('10902', '62', '49.3000', '6', '0.15'); INSERT INTO `orderdetails` VALUES ('10903', '13', '6.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10903', '65', '21.0500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10903', '68', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10904', '58', '13.2500', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10904', '62', '49.3000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10905', '1', '18.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10906', '61', '28.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10907', '75', '7.7500', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10908', '7', '30.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10908', '52', '7.0000', '14', '0.05'); INSERT INTO `orderdetails` VALUES ('10909', '7', '30.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10909', '16', '17.4500', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10909', '41', '9.6500', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10910', '19', '9.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10910', '49', '20.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10910', '61', '28.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10911', '1', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10911', '17', '39.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10911', '67', '14.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10912', '11', '21.0000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10912', '29', '123.7900', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('10913', '4', '22.0000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10913', '33', '2.5000', '40', '0.25'); INSERT INTO `orderdetails` VALUES ('10913', '58', '13.2500', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10914', '71', '21.5000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10915', '17', '39.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10915', '33', '2.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10915', '54', '7.4500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10916', '16', '17.4500', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10916', '32', '32.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10916', '57', '19.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10917', '30', '25.8900', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10917', '60', '34.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10918', '1', '18.0000', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('10918', '60', '34.0000', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('10919', '16', '17.4500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10919', '25', '14.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10919', '40', '18.4000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10920', '50', '16.2500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10921', '35', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10921', '63', '43.9000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10922', '17', '39.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10922', '24', '4.5000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10923', '42', '14.0000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10923', '43', '46.0000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('10923', '67', '14.0000', '24', '0.20'); INSERT INTO `orderdetails` VALUES ('10924', '10', '31.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10924', '28', '45.6000', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10924', '75', '7.7500', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10925', '36', '19.0000', '25', '0.15'); INSERT INTO `orderdetails` VALUES ('10925', '52', '7.0000', '12', '0.15'); INSERT INTO `orderdetails` VALUES ('10926', '11', '21.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10926', '13', '6.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10926', '19', '9.2000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10926', '72', '34.8000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10927', '20', '81.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10927', '52', '7.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10927', '76', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10928', '47', '9.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10928', '76', '18.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10929', '21', '10.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10929', '75', '7.7500', '49', '0.00'); INSERT INTO `orderdetails` VALUES ('10929', '77', '13.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10930', '21', '10.0000', '36', '0.00'); INSERT INTO `orderdetails` VALUES ('10930', '27', '43.9000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10930', '55', '24.0000', '25', '0.20'); INSERT INTO `orderdetails` VALUES ('10930', '58', '13.2500', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10931', '13', '6.0000', '42', '0.15'); INSERT INTO `orderdetails` VALUES ('10931', '57', '19.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10932', '16', '17.4500', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('10932', '62', '49.3000', '14', '0.10'); INSERT INTO `orderdetails` VALUES ('10932', '72', '34.8000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10932', '75', '7.7500', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('10933', '53', '32.8000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10933', '61', '28.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10934', '6', '25.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10935', '1', '18.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10935', '18', '62.5000', '4', '0.25'); INSERT INTO `orderdetails` VALUES ('10935', '23', '9.0000', '8', '0.25'); INSERT INTO `orderdetails` VALUES ('10936', '36', '19.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('10937', '28', '45.6000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10937', '34', '14.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10938', '13', '6.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10938', '43', '46.0000', '24', '0.25'); INSERT INTO `orderdetails` VALUES ('10938', '60', '34.0000', '49', '0.25'); INSERT INTO `orderdetails` VALUES ('10938', '71', '21.5000', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10939', '2', '19.0000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('10939', '67', '14.0000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10940', '7', '30.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10940', '13', '6.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10941', '31', '12.5000', '44', '0.25'); INSERT INTO `orderdetails` VALUES ('10941', '62', '49.3000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('10941', '68', '12.5000', '80', '0.25'); INSERT INTO `orderdetails` VALUES ('10941', '72', '34.8000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10942', '49', '20.0000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('10943', '13', '6.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10943', '22', '21.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('10943', '46', '12.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10944', '11', '21.0000', '5', '0.25'); INSERT INTO `orderdetails` VALUES ('10944', '44', '19.4500', '18', '0.25'); INSERT INTO `orderdetails` VALUES ('10944', '56', '38.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10945', '13', '6.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10945', '31', '12.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10946', '10', '31.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10946', '24', '4.5000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('10946', '77', '13.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10947', '59', '55.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10948', '50', '16.2500', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10948', '51', '53.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10948', '55', '24.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10949', '6', '25.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10949', '10', '31.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10949', '17', '39.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10949', '62', '49.3000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10950', '4', '22.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10951', '33', '2.5000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10951', '41', '9.6500', '6', '0.05'); INSERT INTO `orderdetails` VALUES ('10951', '75', '7.7500', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10952', '6', '25.0000', '16', '0.05'); INSERT INTO `orderdetails` VALUES ('10952', '28', '45.6000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10952', '47', '9.5000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10952', '56', '38.0000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('10953', '20', '81.0000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10953', '31', '12.5000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('10954', '16', '17.4500', '28', '0.15'); INSERT INTO `orderdetails` VALUES ('10954', '31', '12.5000', '25', '0.15'); INSERT INTO `orderdetails` VALUES ('10954', '45', '9.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10954', '60', '34.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('10955', '75', '7.7500', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('10956', '21', '10.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10956', '47', '9.5000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10956', '51', '53.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10957', '30', '25.8900', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10957', '35', '18.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10957', '64', '33.2500', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10958', '5', '21.3500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10958', '7', '30.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10958', '72', '34.8000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10959', '75', '7.7500', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10960', '24', '4.5000', '10', '0.25'); INSERT INTO `orderdetails` VALUES ('10960', '41', '9.6500', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10961', '52', '7.0000', '6', '0.05'); INSERT INTO `orderdetails` VALUES ('10961', '76', '18.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10962', '7', '30.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('10962', '13', '6.0000', '77', '0.00'); INSERT INTO `orderdetails` VALUES ('10962', '53', '32.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10962', '69', '36.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10962', '76', '18.0000', '44', '0.00'); INSERT INTO `orderdetails` VALUES ('10963', '60', '34.0000', '2', '0.15'); INSERT INTO `orderdetails` VALUES ('10964', '18', '62.5000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10964', '38', '263.5000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10964', '69', '36.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10965', '51', '53.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10966', '37', '26.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('10966', '56', '38.0000', '12', '0.15'); INSERT INTO `orderdetails` VALUES ('10966', '62', '49.3000', '12', '0.15'); INSERT INTO `orderdetails` VALUES ('10967', '19', '9.2000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10967', '49', '20.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10968', '12', '38.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10968', '24', '4.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10968', '64', '33.2500', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10969', '46', '12.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10970', '52', '7.0000', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10971', '29', '123.7900', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('10972', '17', '39.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10972', '33', '2.5000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10973', '26', '31.2300', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('10973', '41', '9.6500', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10973', '75', '7.7500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10974', '63', '43.9000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10975', '8', '40.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('10975', '75', '7.7500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10976', '28', '45.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10977', '39', '18.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10977', '47', '9.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10977', '51', '53.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10977', '63', '43.9000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10978', '8', '40.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('10978', '21', '10.0000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('10978', '40', '18.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10978', '44', '19.4500', '6', '0.15'); INSERT INTO `orderdetails` VALUES ('10979', '7', '30.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('10979', '12', '38.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10979', '24', '4.5000', '80', '0.00'); INSERT INTO `orderdetails` VALUES ('10979', '27', '43.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10979', '31', '12.5000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('10979', '63', '43.9000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('10980', '75', '7.7500', '40', '0.20'); INSERT INTO `orderdetails` VALUES ('10981', '38', '263.5000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10982', '7', '30.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10982', '43', '46.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('10983', '13', '6.0000', '84', '0.15'); INSERT INTO `orderdetails` VALUES ('10983', '57', '19.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10984', '16', '17.4500', '55', '0.00'); INSERT INTO `orderdetails` VALUES ('10984', '24', '4.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10984', '36', '19.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10985', '16', '17.4500', '36', '0.10'); INSERT INTO `orderdetails` VALUES ('10985', '18', '62.5000', '8', '0.10'); INSERT INTO `orderdetails` VALUES ('10985', '32', '32.0000', '35', '0.10'); INSERT INTO `orderdetails` VALUES ('10986', '11', '21.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10986', '20', '81.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10986', '76', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('10986', '77', '13.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10987', '7', '30.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10987', '43', '46.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('10987', '72', '34.8000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10988', '7', '30.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('10988', '62', '49.3000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('10989', '6', '25.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10989', '11', '21.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('10989', '41', '9.6500', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10990', '21', '10.0000', '65', '0.00'); INSERT INTO `orderdetails` VALUES ('10990', '34', '14.0000', '60', '0.15'); INSERT INTO `orderdetails` VALUES ('10990', '55', '24.0000', '65', '0.15'); INSERT INTO `orderdetails` VALUES ('10990', '61', '28.5000', '66', '0.15'); INSERT INTO `orderdetails` VALUES ('10991', '2', '19.0000', '50', '0.20'); INSERT INTO `orderdetails` VALUES ('10991', '70', '15.0000', '20', '0.20'); INSERT INTO `orderdetails` VALUES ('10991', '76', '18.0000', '90', '0.20'); INSERT INTO `orderdetails` VALUES ('10992', '72', '34.8000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('10993', '29', '123.7900', '50', '0.25'); INSERT INTO `orderdetails` VALUES ('10993', '41', '9.6500', '35', '0.25'); INSERT INTO `orderdetails` VALUES ('10994', '59', '55.0000', '18', '0.05'); INSERT INTO `orderdetails` VALUES ('10995', '51', '53.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10995', '60', '34.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('10996', '42', '14.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('10997', '32', '32.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('10997', '46', '12.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10997', '52', '7.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('10998', '24', '4.5000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('10998', '61', '28.5000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('10998', '74', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('10998', '75', '7.7500', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('10999', '41', '9.6500', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('10999', '51', '53.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('10999', '77', '13.0000', '21', '0.05'); INSERT INTO `orderdetails` VALUES ('11000', '4', '22.0000', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('11000', '24', '4.5000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('11000', '77', '13.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11001', '7', '30.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('11001', '22', '21.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('11001', '46', '12.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('11001', '55', '24.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('11002', '13', '6.0000', '56', '0.00'); INSERT INTO `orderdetails` VALUES ('11002', '35', '18.0000', '15', '0.15'); INSERT INTO `orderdetails` VALUES ('11002', '42', '14.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('11002', '55', '24.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('11003', '1', '18.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11003', '40', '18.4000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11003', '52', '7.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11004', '26', '31.2300', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('11004', '76', '18.0000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('11005', '1', '18.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11005', '59', '55.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11006', '1', '18.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('11006', '29', '123.7900', '2', '0.25'); INSERT INTO `orderdetails` VALUES ('11007', '8', '40.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11007', '29', '123.7900', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11007', '42', '14.0000', '14', '0.00'); INSERT INTO `orderdetails` VALUES ('11008', '28', '45.6000', '70', '0.05'); INSERT INTO `orderdetails` VALUES ('11008', '34', '14.0000', '90', '0.05'); INSERT INTO `orderdetails` VALUES ('11008', '71', '21.5000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('11009', '24', '4.5000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11009', '36', '19.0000', '18', '0.25'); INSERT INTO `orderdetails` VALUES ('11009', '60', '34.0000', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('11010', '7', '30.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11010', '24', '4.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11011', '58', '13.2500', '40', '0.05'); INSERT INTO `orderdetails` VALUES ('11011', '71', '21.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11012', '19', '9.2000', '50', '0.05'); INSERT INTO `orderdetails` VALUES ('11012', '60', '34.0000', '36', '0.05'); INSERT INTO `orderdetails` VALUES ('11012', '71', '21.5000', '60', '0.05'); INSERT INTO `orderdetails` VALUES ('11013', '23', '9.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11013', '42', '14.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11013', '45', '9.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11013', '68', '12.5000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11014', '41', '9.6500', '28', '0.10'); INSERT INTO `orderdetails` VALUES ('11015', '30', '25.8900', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11015', '77', '13.0000', '18', '0.00'); INSERT INTO `orderdetails` VALUES ('11016', '31', '12.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11016', '36', '19.0000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('11017', '3', '10.0000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('11017', '59', '55.0000', '110', '0.00'); INSERT INTO `orderdetails` VALUES ('11017', '70', '15.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11018', '12', '38.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11018', '18', '62.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11018', '56', '38.0000', '5', '0.00'); INSERT INTO `orderdetails` VALUES ('11019', '46', '12.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('11019', '49', '20.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11020', '10', '31.0000', '24', '0.15'); INSERT INTO `orderdetails` VALUES ('11021', '2', '19.0000', '11', '0.25'); INSERT INTO `orderdetails` VALUES ('11021', '20', '81.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11021', '26', '31.2300', '63', '0.00'); INSERT INTO `orderdetails` VALUES ('11021', '51', '53.0000', '44', '0.25'); INSERT INTO `orderdetails` VALUES ('11021', '72', '34.8000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11022', '19', '9.2000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11022', '69', '36.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11023', '7', '30.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11023', '43', '46.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11024', '26', '31.2300', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11024', '33', '2.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11024', '65', '21.0500', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('11024', '71', '21.5000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('11025', '1', '18.0000', '10', '0.10'); INSERT INTO `orderdetails` VALUES ('11025', '13', '6.0000', '20', '0.10'); INSERT INTO `orderdetails` VALUES ('11026', '18', '62.5000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('11026', '51', '53.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11027', '24', '4.5000', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('11027', '62', '49.3000', '21', '0.25'); INSERT INTO `orderdetails` VALUES ('11028', '55', '24.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11028', '59', '55.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('11029', '56', '38.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11029', '63', '43.9000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11030', '2', '19.0000', '100', '0.25'); INSERT INTO `orderdetails` VALUES ('11030', '5', '21.3500', '70', '0.00'); INSERT INTO `orderdetails` VALUES ('11030', '29', '123.7900', '60', '0.25'); INSERT INTO `orderdetails` VALUES ('11030', '59', '55.0000', '100', '0.25'); INSERT INTO `orderdetails` VALUES ('11031', '1', '18.0000', '45', '0.00'); INSERT INTO `orderdetails` VALUES ('11031', '13', '6.0000', '80', '0.00'); INSERT INTO `orderdetails` VALUES ('11031', '24', '4.5000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('11031', '64', '33.2500', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11031', '71', '21.5000', '16', '0.00'); INSERT INTO `orderdetails` VALUES ('11032', '36', '19.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11032', '38', '263.5000', '25', '0.00'); INSERT INTO `orderdetails` VALUES ('11032', '59', '55.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11033', '53', '32.8000', '70', '0.10'); INSERT INTO `orderdetails` VALUES ('11033', '69', '36.0000', '36', '0.10'); INSERT INTO `orderdetails` VALUES ('11034', '21', '10.0000', '15', '0.10'); INSERT INTO `orderdetails` VALUES ('11034', '44', '19.4500', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11034', '61', '28.5000', '6', '0.00'); INSERT INTO `orderdetails` VALUES ('11035', '1', '18.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11035', '35', '18.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('11035', '42', '14.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11035', '54', '7.4500', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11036', '13', '6.0000', '7', '0.00'); INSERT INTO `orderdetails` VALUES ('11036', '59', '55.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11037', '70', '15.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11038', '40', '18.4000', '5', '0.20'); INSERT INTO `orderdetails` VALUES ('11038', '52', '7.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11038', '71', '21.5000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11039', '28', '45.6000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11039', '35', '18.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('11039', '49', '20.0000', '60', '0.00'); INSERT INTO `orderdetails` VALUES ('11039', '57', '19.5000', '28', '0.00'); INSERT INTO `orderdetails` VALUES ('11040', '21', '10.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11041', '2', '19.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('11041', '63', '43.9000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11042', '44', '19.4500', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11042', '61', '28.5000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11043', '11', '21.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11044', '62', '49.3000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11045', '33', '2.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11045', '51', '53.0000', '24', '0.00'); INSERT INTO `orderdetails` VALUES ('11046', '12', '38.0000', '20', '0.05'); INSERT INTO `orderdetails` VALUES ('11046', '32', '32.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('11046', '35', '18.0000', '18', '0.05'); INSERT INTO `orderdetails` VALUES ('11047', '1', '18.0000', '25', '0.25'); INSERT INTO `orderdetails` VALUES ('11047', '5', '21.3500', '30', '0.25'); INSERT INTO `orderdetails` VALUES ('11048', '68', '12.5000', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('11049', '2', '19.0000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('11049', '12', '38.0000', '4', '0.20'); INSERT INTO `orderdetails` VALUES ('11050', '76', '18.0000', '50', '0.10'); INSERT INTO `orderdetails` VALUES ('11051', '24', '4.5000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('11052', '43', '46.0000', '30', '0.20'); INSERT INTO `orderdetails` VALUES ('11052', '61', '28.5000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('11053', '18', '62.5000', '35', '0.20'); INSERT INTO `orderdetails` VALUES ('11053', '32', '32.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11053', '64', '33.2500', '25', '0.20'); INSERT INTO `orderdetails` VALUES ('11054', '33', '2.5000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11054', '67', '14.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11055', '24', '4.5000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11055', '25', '14.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11055', '51', '53.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11055', '57', '19.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11056', '7', '30.0000', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('11056', '55', '24.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11056', '60', '34.0000', '50', '0.00'); INSERT INTO `orderdetails` VALUES ('11057', '70', '15.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('11058', '21', '10.0000', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('11058', '60', '34.0000', '21', '0.00'); INSERT INTO `orderdetails` VALUES ('11058', '61', '28.5000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11059', '13', '6.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11059', '17', '39.0000', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11059', '60', '34.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11060', '60', '34.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11060', '77', '13.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11061', '60', '34.0000', '15', '0.00'); INSERT INTO `orderdetails` VALUES ('11062', '53', '32.8000', '10', '0.20'); INSERT INTO `orderdetails` VALUES ('11062', '70', '15.0000', '12', '0.20'); INSERT INTO `orderdetails` VALUES ('11063', '34', '14.0000', '30', '0.00'); INSERT INTO `orderdetails` VALUES ('11063', '40', '18.4000', '40', '0.10'); INSERT INTO `orderdetails` VALUES ('11063', '41', '9.6500', '30', '0.10'); INSERT INTO `orderdetails` VALUES ('11064', '17', '39.0000', '77', '0.10'); INSERT INTO `orderdetails` VALUES ('11064', '41', '9.6500', '12', '0.00'); INSERT INTO `orderdetails` VALUES ('11064', '53', '32.8000', '25', '0.10'); INSERT INTO `orderdetails` VALUES ('11064', '55', '24.0000', '4', '0.10'); INSERT INTO `orderdetails` VALUES ('11064', '68', '12.5000', '55', '0.00'); INSERT INTO `orderdetails` VALUES ('11065', '30', '25.8900', '4', '0.25'); INSERT INTO `orderdetails` VALUES ('11065', '54', '7.4500', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('11066', '16', '17.4500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('11066', '19', '9.2000', '42', '0.00'); INSERT INTO `orderdetails` VALUES ('11066', '34', '14.0000', '35', '0.00'); INSERT INTO `orderdetails` VALUES ('11067', '41', '9.6500', '9', '0.00'); INSERT INTO `orderdetails` VALUES ('11068', '28', '45.6000', '8', '0.15'); INSERT INTO `orderdetails` VALUES ('11068', '43', '46.0000', '36', '0.15'); INSERT INTO `orderdetails` VALUES ('11068', '77', '13.0000', '28', '0.15'); INSERT INTO `orderdetails` VALUES ('11069', '39', '18.0000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11070', '1', '18.0000', '40', '0.15'); INSERT INTO `orderdetails` VALUES ('11070', '2', '19.0000', '20', '0.15'); INSERT INTO `orderdetails` VALUES ('11070', '16', '17.4500', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('11070', '31', '12.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11071', '7', '30.0000', '15', '0.05'); INSERT INTO `orderdetails` VALUES ('11071', '13', '6.0000', '10', '0.05'); INSERT INTO `orderdetails` VALUES ('11072', '2', '19.0000', '8', '0.00'); INSERT INTO `orderdetails` VALUES ('11072', '41', '9.6500', '40', '0.00'); INSERT INTO `orderdetails` VALUES ('11072', '50', '16.2500', '22', '0.00'); INSERT INTO `orderdetails` VALUES ('11072', '64', '33.2500', '130', '0.00'); INSERT INTO `orderdetails` VALUES ('11073', '11', '21.0000', '10', '0.00'); INSERT INTO `orderdetails` VALUES ('11073', '24', '4.5000', '20', '0.00'); INSERT INTO `orderdetails` VALUES ('11074', '16', '17.4500', '14', '0.05'); INSERT INTO `orderdetails` VALUES ('11075', '2', '19.0000', '10', '0.15'); INSERT INTO `orderdetails` VALUES ('11075', '46', '12.0000', '30', '0.15'); INSERT INTO `orderdetails` VALUES ('11075', '76', '18.0000', '2', '0.15'); INSERT INTO `orderdetails` VALUES ('11076', '6', '25.0000', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('11076', '14', '23.2500', '20', '0.25'); INSERT INTO `orderdetails` VALUES ('11076', '19', '9.2000', '10', '0.25'); INSERT INTO `orderdetails` VALUES ('11077', '2', '19.0000', '24', '0.20'); INSERT INTO `orderdetails` VALUES ('11077', '3', '10.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '4', '22.0000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '6', '25.0000', '1', '0.02'); INSERT INTO `orderdetails` VALUES ('11077', '7', '30.0000', '1', '0.05'); INSERT INTO `orderdetails` VALUES ('11077', '8', '40.0000', '2', '0.10'); INSERT INTO `orderdetails` VALUES ('11077', '10', '31.0000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '12', '38.0000', '2', '0.05'); INSERT INTO `orderdetails` VALUES ('11077', '13', '6.0000', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '14', '23.2500', '1', '0.03'); INSERT INTO `orderdetails` VALUES ('11077', '16', '17.4500', '2', '0.03'); INSERT INTO `orderdetails` VALUES ('11077', '20', '81.0000', '1', '0.04'); INSERT INTO `orderdetails` VALUES ('11077', '23', '9.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '32', '32.0000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '39', '18.0000', '2', '0.05'); INSERT INTO `orderdetails` VALUES ('11077', '41', '9.6500', '3', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '46', '12.0000', '3', '0.02'); INSERT INTO `orderdetails` VALUES ('11077', '52', '7.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '55', '24.0000', '2', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '60', '34.0000', '2', '0.06'); INSERT INTO `orderdetails` VALUES ('11077', '64', '33.2500', '2', '0.03'); INSERT INTO `orderdetails` VALUES ('11077', '66', '17.0000', '1', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '73', '15.0000', '2', '0.01'); INSERT INTO `orderdetails` VALUES ('11077', '75', '7.7500', '4', '0.00'); INSERT INTO `orderdetails` VALUES ('11077', '77', '13.0000', '2', '0.00'); -- ---------------------------- -- Table structure for orders -- ---------------------------- DROP TABLE IF EXISTS `orders`; CREATE TABLE `orders` ( `OrderID` int(10) NOT NULL AUTO_INCREMENT, `CustomerID` varchar(5) DEFAULT NULL, `EmployeeID` int(10) DEFAULT NULL, `OrderDate` datetime DEFAULT NULL, `RequiredDate` datetime DEFAULT NULL, `ShippedDate` datetime DEFAULT NULL, `ShipVia` int(10) DEFAULT NULL, `Freight` decimal(19,4) DEFAULT NULL, `ShipName` varchar(40) DEFAULT NULL, `ShipAddress` varchar(60) DEFAULT NULL, `ShipCity` varchar(15) DEFAULT NULL, `ShipProvince` varchar(15) DEFAULT NULL, `ShipRegion` varchar(15) DEFAULT NULL, `ShipPostalCode` varchar(10) DEFAULT NULL, `ShipCountry` varchar(15) DEFAULT NULL, PRIMARY KEY (`OrderID`), KEY `OrderDate` (`OrderDate`) USING BTREE ) ENGINE=InnoDB AUTO_INCREMENT=11078 DEFAULT CHARSET=gbk; -- ---------------------------- -- Records of orders -- ---------------------------- INSERT INTO `orders` VALUES ('10248', 'VINET', '5', '2016-07-05 00:00:00', '2016-08-01 00:00:00', '2016-07-16 00:00:00', '3', '32.3800', '余小姐', '光明北路 124 号', '北京', '北京市', '华北', '111080', '中国'); INSERT INTO `orders` VALUES ('10249', 'TOMSP', '6', '2016-07-05 00:00:00', '2016-08-16 00:00:00', '2016-07-10 00:00:00', '1', '11.6100', '谢小姐', '青年东路 543 号', '济南', '山东省', '华东', '440876', '中国'); INSERT INTO `orders` VALUES ('10250', 'HANAR', '4', '2016-07-08 00:00:00', '2016-08-05 00:00:00', '2016-07-12 00:00:00', '2', '65.8300', '谢小姐', '光化街 22 号', '秦皇岛', '河北省', '华北', '754546', '中国'); INSERT INTO `orders` VALUES ('10251', 'VICTE', '3', '2016-07-08 00:00:00', '2016-08-05 00:00:00', '2016-07-15 00:00:00', '1', '41.3400', '陈先生', '清林桥 68 号', '南京', '江苏省', '华东', '690047', '中国'); INSERT INTO `orders` VALUES ('10252', 'SUPRD', '4', '2016-07-09 00:00:00', '2016-08-06 00:00:00', '2016-07-11 00:00:00', '2', '51.3000', '刘先生', '东管西林路 87 号', '长春', '吉林省', '东北', '567889', '中国'); INSERT INTO `orders` VALUES ('10253', 'HANAR', '3', '2016-07-10 00:00:00', '2016-07-24 00:00:00', '2016-07-16 00:00:00', '2', '58.1700', '谢小姐', '新成东 96 号', '长治', '山西省', '华北', '545486', '中国'); INSERT INTO `orders` VALUES ('10254', 'CHOPS', '5', '2016-07-11 00:00:00', '2016-08-08 00:00:00', '2016-07-23 00:00:00', '2', '22.9800', '林小姐', '汉正东街 12 号', '武汉', '湖北省', '华中', '301256', '中国'); INSERT INTO `orders` VALUES ('10255', 'RICSU', '9', '2016-07-12 00:00:00', '2016-08-09 00:00:00', '2016-07-15 00:00:00', '3', '148.3300', '方先生', '白石路 116 号', '北京', '北京市', '华北', '120477', '中国'); INSERT INTO `orders` VALUES ('10256', 'WELLI', '3', '2016-07-15 00:00:00', '2016-08-12 00:00:00', '2016-07-17 00:00:00', '2', '13.9700', '何先生', '山大北路 237 号', '济南', '山东省', '华东', '873763', '中国'); INSERT INTO `orders` VALUES ('10257', 'HILAA', '4', '2016-07-16 00:00:00', '2016-08-13 00:00:00', '2016-07-22 00:00:00', '3', '81.9100', '王先生', '清华路 78 号', '上海', '上海市', '华东', '502234', '中国'); INSERT INTO `orders` VALUES ('10258', 'ERNSH', '1', '2016-07-17 00:00:00', '2016-08-14 00:00:00', '2016-07-23 00:00:00', '1', '140.5100', '王先生', '经三纬四路 48 号', '济南', '山东省', '华东', '801009', '中国'); INSERT INTO `orders` VALUES ('10259', 'CENTC', '4', '2016-07-18 00:00:00', '2016-08-15 00:00:00', '2016-07-25 00:00:00', '3', '3.2500', '林小姐', '青年西路甲 245 号', '上海', '上海市', '华东', '705022', '中国'); INSERT INTO `orders` VALUES ('10260', 'OTTIK', '4', '2016-07-19 00:00:00', '2016-08-16 00:00:00', '2016-07-29 00:00:00', '1', '55.0900', '徐文彬', '海淀区明成路甲 8 号', '北京', '北京市', '华北', '140739', '中国'); INSERT INTO `orders` VALUES ('10261', 'QUEDE', '4', '2016-07-19 00:00:00', '2016-08-16 00:00:00', '2016-07-30 00:00:00', '2', '3.0500', '刘先生', '花园北街 754 号', '济南', '山东省', '华东', '238967', '中国'); INSERT INTO `orders` VALUES ('10262', 'RATTC', '8', '2016-07-22 00:00:00', '2016-08-19 00:00:00', '2016-07-25 00:00:00', '3', '48.2900', '王先生', '浦东临江北路 43 号', '上海', '上海市', '华东', '871610', '中国'); INSERT INTO `orders` VALUES ('10263', 'ERNSH', '9', '2016-07-23 00:00:00', '2016-08-20 00:00:00', '2016-07-31 00:00:00', '3', '146.0600', '王先生', '复兴路 12 号', '北京', '北京市', '华北', '101043', '中国'); INSERT INTO `orders` VALUES ('10264', 'FOLKO', '6', '2016-07-24 00:00:00', '2016-08-21 00:00:00', '2016-08-23 00:00:00', '3', '3.6700', '陈先生', '石景山路 462 号', '北京', '北京市', '华北', '144567', '中国'); INSERT INTO `orders` VALUES ('10265', 'BLONP', '2', '2016-07-25 00:00:00', '2016-08-22 00:00:00', '2016-08-12 00:00:00', '1', '55.2800', '方先生', '学院路甲 66 号', '武汉', '湖北省', '华中', '670005', '中国'); INSERT INTO `orders` VALUES ('10266', 'WARTH', '3', '2016-07-26 00:00:00', '2016-09-06 00:00:00', '2016-07-31 00:00:00', '3', '25.7300', '成先生', '幸福大街 83 号', '北京', '北京市', '华北', '101103', '中国'); INSERT INTO `orders` VALUES ('10267', 'FRANK', '4', '2016-07-29 00:00:00', '2016-08-26 00:00:00', '2016-08-06 00:00:00', '1', '208.5800', '余小姐', '黄河西口大街 324 号', '上海', '上海市', '华东', '380805', '中国'); INSERT INTO `orders` VALUES ('10268', 'GROSR', '8', '2016-07-30 00:00:00', '2016-08-27 00:00:00', '2016-08-02 00:00:00', '3', '66.2900', '刘先生', '泰山路 72 号', '青岛', '山东省', '华东', '108651', '中国'); INSERT INTO `orders` VALUES ('10269', 'WHITC', '5', '2016-07-31 00:00:00', '2016-08-14 00:00:00', '2016-08-09 00:00:00', '1', '4.5600', '黎先生', '即墨路 452 号', '青岛', '山东省', '华东', '981124', '中国'); INSERT INTO `orders` VALUES ('10270', 'WARTH', '1', '2016-08-01 00:00:00', '2016-08-29 00:00:00', '2016-08-02 00:00:00', '1', '136.5400', '成先生', '朝阳区光华路 523 号', '北京', '北京市', '华北', '101106', '中国'); INSERT INTO `orders` VALUES ('10271', 'SPLIR', '6', '2016-08-01 00:00:00', '2016-08-29 00:00:00', '2016-08-30 00:00:00', '2', '4.5400', '唐小姐', '山东路 645 号', '上海', '上海市', '华东', '820520', '中国'); INSERT INTO `orders` VALUES ('10272', 'RATTC', '6', '2016-08-02 00:00:00', '2016-08-30 00:00:00', '2016-08-06 00:00:00', '2', '98.0300', '王先生', '海淀区学院路 31 号', '北京', '北京市', '华北', '171103', '中国'); INSERT INTO `orders` VALUES ('10273', 'QUICK', '3', '2016-08-05 00:00:00', '2016-09-02 00:00:00', '2016-08-12 00:00:00', '3', '76.0700', '刘先生', '八一路 43 号', '济南', '山东省', '华东', '301307', '中国'); INSERT INTO `orders` VALUES ('10274', 'VINET', '6', '2016-08-06 00:00:00', '2016-09-03 00:00:00', '2016-08-16 00:00:00', '1', '6.0100', '余小姐', '丰台区方庄北路 87 号', '北京', '北京市', '华北', '111004', '中国'); INSERT INTO `orders` VALUES ('10275', 'MAGAA', '1', '2016-08-07 00:00:00', '2016-09-04 00:00:00', '2016-08-09 00:00:00', '1', '26.9300', '王炫皓', '宣武区琉璃厂东大街 45 号', '北京', '北京市', '华北', '141007', '中国'); INSERT INTO `orders` VALUES ('10276', 'TORTU', '8', '2016-08-08 00:00:00', '2016-08-22 00:00:00', '2016-08-14 00:00:00', '3', '13.8400', '王先生', '四方区广林东路 6 号', '青岛', '山东省', '华东', '805033', '中国'); INSERT INTO `orders` VALUES ('10277', 'MORGK', '2', '2016-08-09 00:00:00', '2016-09-06 00:00:00', '2016-08-13 00:00:00', '3', '125.7700', '方建文', '南开北路 3 号', '南京', '江苏省', '华东', '234325', '中国'); INSERT INTO `orders` VALUES ('10278', 'BERGS', '8', '2016-08-12 00:00:00', '2016-09-09 00:00:00', '2016-08-16 00:00:00', '2', '92.6900', '李先生', '广汇东区甲 2 号', '南京', '江苏省', '华东', '295822', '中国'); INSERT INTO `orders` VALUES ('10279', 'LEHMS', '8', '2016-08-13 00:00:00', '2016-09-10 00:00:00', '2016-08-16 00:00:00', '2', '25.8300', '黎先生', '黄岛区新技术开发区 65 号', '青岛', '山东省', '华东', '605244', '中国'); INSERT INTO `orders` VALUES ('10280', 'BERGS', '2', '2016-08-14 00:00:00', '2016-09-11 00:00:00', '2016-09-12 00:00:00', '1', '8.9800', '李先生', '江北开发区 7 号', '南京', '江苏省', '华东', '958222', '中国'); INSERT INTO `orders` VALUES ('10281', 'ROMEY', '4', '2016-08-14 00:00:00', '2016-08-28 00:00:00', '2016-08-21 00:00:00', '1', '2.9400', '陈先生', '陕西路 423 号', '上海', '上海市', '华东', '280045', '中国'); INSERT INTO `orders` VALUES ('10282', 'ROMEY', '4', '2016-08-15 00:00:00', '2016-09-12 00:00:00', '2016-08-21 00:00:00', '1', '12.6900', '陈先生', '广东路 867 号', '上海', '上海市', '华东', '280035', '中国'); INSERT INTO `orders` VALUES ('10283', 'LILAS', '3', '2016-08-16 00:00:00', '2016-09-13 00:00:00', '2016-08-23 00:00:00', '3', '84.8100', '陈玉美', '冀北路 23 号', '秦皇岛', '河北省', '华北', '350788', '中国'); INSERT INTO `orders` VALUES ('10284', 'LEHMS', '4', '2016-08-19 00:00:00', '2016-09-16 00:00:00', '2016-08-27 00:00:00', '1', '76.5600', '黎先生', '市中区绮丽路 54 号', '烟台', '山东省', '华东', '605543', '中国'); INSERT INTO `orders` VALUES ('10285', 'QUICK', '1', '2016-08-20 00:00:00', '2016-09-17 00:00:00', '2016-08-26 00:00:00', '2', '76.8300', '刘先生', '新技术开发工业区 32 号', '烟台', '山东省', '华东', '455457', '中国'); INSERT INTO `orders` VALUES ('10286', 'QUICK', '8', '2016-08-21 00:00:00', '2016-09-18 00:00:00', '2016-08-30 00:00:00', '3', '229.2400', '刘先生', '新技术开发工业区 66 号', '烟台', '山东省', '华东', '214578', '中国'); INSERT INTO `orders` VALUES ('10287', 'RICAR', '8', '2016-08-22 00:00:00', '2016-09-19 00:00:00', '2016-08-28 00:00:00', '3', '12.7600', '周先生', '曙光路东区 45 号', '深圳', '广东省', '华南', '325657', '中国'); INSERT INTO `orders` VALUES ('10288', 'REGGC', '4', '2016-08-23 00:00:00', '2016-09-20 00:00:00', '2016-09-03 00:00:00', '1', '7.4500', '徐先生', '东城区和平里甲 45 号', '北京', '北京市', '华北', '154657', '中国'); INSERT INTO `orders` VALUES ('10289', 'BSBEV', '7', '2016-08-26 00:00:00', '2016-09-23 00:00:00', '2016-08-28 00:00:00', '3', '22.7700', '徐先生', '金陵大街 54 号', '南京', '江苏省', '华东', '456978', '中国'); INSERT INTO `orders` VALUES ('10290', 'COMMI', '8', '2016-08-27 00:00:00', '2016-09-24 00:00:00', '2016-09-03 00:00:00', '1', '79.7000', '锺小姐', '富成路 476 号', '昆明', '云南省', '西南', '375667', '中国'); INSERT INTO `orders` VALUES ('10291', 'QUEDE', '6', '2016-08-27 00:00:00', '2016-09-24 00:00:00', '2016-09-04 00:00:00', '2', '6.4000', '刘先生', '花园区花园路 76 号', '济南', '山东省', '华东', '840462', '中国'); INSERT INTO `orders` VALUES ('10292', 'TRADH', '1', '2016-08-28 00:00:00', '2016-09-25 00:00:00', '2016-09-02 00:00:00', '2', '1.3500', '徐先生', '历下区浪潮路 97 号', '济南', '山东省', '华东', '807902', '中国'); INSERT INTO `orders` VALUES ('10293', 'TORTU', '1', '2016-08-29 00:00:00', '2016-09-26 00:00:00', '2016-09-11 00:00:00', '3', '21.1800', '王先生', '历下区浪潮路 2 号', '济南', '山东省', '华东', '417907', '中国'); INSERT INTO `orders` VALUES ('10294', 'RATTC', '4', '2016-08-30 00:00:00', '2016-09-27 00:00:00', '2016-09-05 00:00:00', '2', '147.2600', '王先生', '西城区新开胡同 54 号', '北京', '北京市', '华北', '143589', '中国'); INSERT INTO `orders` VALUES ('10295', 'VINET', '2', '2016-09-02 00:00:00', '2016-09-30 00:00:00', '2016-09-10 00:00:00', '2', '1.1500', '余小姐', '海淀区明成大街 29 号', '北京', '北京市', '华北', '112234', '中国'); INSERT INTO `orders` VALUES ('10296', 'LILAS', '6', '2016-09-03 00:00:00', '2016-10-01 00:00:00', '2016-09-11 00:00:00', '1', '0.1200', '陈玉美', '市南区联合大街 245 号', '深圳', '广东省', '华南', '546790', '中国'); INSERT INTO `orders` VALUES ('10297', 'BLONP', '5', '2016-09-04 00:00:00', '2016-10-16 00:00:00', '2016-09-10 00:00:00', '2', '5.7400', '方先生', '城东路 762 号', '厦门', '福建省', '华南', '243565', '中国'); INSERT INTO `orders` VALUES ('10298', 'HUNGO', '6', '2016-09-05 00:00:00', '2016-10-03 00:00:00', '2016-09-11 00:00:00', '2', '168.2200', '周先生', '和平路 794 号', '北京', '北京市', '华北', '154768', '中国'); INSERT INTO `orders` VALUES ('10299', 'RICAR', '4', '2016-09-06 00:00:00', '2016-10-04 00:00:00', '2016-09-13 00:00:00', '2', '29.7600', '周先生', '光明路 6 号', '温州', '浙江省', '华东', '345465', '中国'); INSERT INTO `orders` VALUES ('10300', 'MAGAA', '2', '2016-09-09 00:00:00', '2016-10-07 00:00:00', '2016-09-18 00:00:00', '2', '17.6800', '王炫皓', '广渠路东街 42 号', '深圳', '广东省', '华南', '354545', '中国'); INSERT INTO `orders` VALUES ('10301', 'WANDK', '8', '2016-09-09 00:00:00', '2016-10-07 00:00:00', '2016-09-17 00:00:00', '2', '45.0800', '苏先生', '北海东路 77 号', '张家口', '河北省', '华北', '178007', '中国'); INSERT INTO `orders` VALUES ('10302', 'SUPRD', '4', '2016-09-10 00:00:00', '2016-10-08 00:00:00', '2016-10-09 00:00:00', '2', '6.2700', '刘先生', '历城区和平路 53 号', '济南', '山东省', '华东', '244570', '中国'); INSERT INTO `orders` VALUES ('10303', 'GODOS', '7', '2016-09-11 00:00:00', '2016-10-09 00:00:00', '2016-09-18 00:00:00', '2', '107.8300', '锺小姐', '舜井街 54 号', '济南', '山东省', '华东', '254570', '中国'); INSERT INTO `orders` VALUES ('10304', 'TORTU', '1', '2016-09-12 00:00:00', '2016-10-10 00:00:00', '2016-09-17 00:00:00', '2', '63.7900', '王先生', '经二纬六路 8 号', '济南', '山东省', '华东', '254796', '中国'); INSERT INTO `orders` VALUES ('10305', 'OLDWO', '8', '2016-09-13 00:00:00', '2016-10-11 00:00:00', '2016-10-09 00:00:00', '3', '257.6200', '王俊元', '盐城街甲 2 号', '北京', '北京市', '华北', '180982', '中国'); INSERT INTO `orders` VALUES ('10306', 'ROMEY', '1', '2016-09-16 00:00:00', '2016-10-14 00:00:00', '2016-09-23 00:00:00', '3', '7.5600', '陈先生', '建外大街 77 号', '北京', '北京市', '华北', '180023', '中国'); INSERT INTO `orders` VALUES ('10307', 'LONEP', '2', '2016-09-17 00:00:00', '2016-10-15 00:00:00', '2016-09-25 00:00:00', '2', '0.5600', '胡继尧', '上海路 432 号', '青岛', '山东省', '华东', '254579', '中国'); INSERT INTO `orders` VALUES ('10308', 'ANATR', '7', '2016-09-18 00:00:00', '2016-10-16 00:00:00', '2016-09-24 00:00:00', '3', '1.6100', '黄小姐', '黄江路 34 号', '深圳', '广东省', '华南', '233434', '中国'); INSERT INTO `orders` VALUES ('10309', 'HUNGO', '3', '2016-09-19 00:00:00', '2016-10-17 00:00:00', '2016-10-23 00:00:00', '1', '47.3000', '周先生', '旅顺西路 78 号', '长春', '吉林省', '东北', '121212', '中国'); INSERT INTO `orders` VALUES ('10310', 'THEBI', '8', '2016-09-20 00:00:00', '2016-10-18 00:00:00', '2016-09-27 00:00:00', '2', '17.5200', '方先生', '承德路 281 号', '张家口', '河北省', '华北', '343432', '中国'); INSERT INTO `orders` VALUES ('10311', 'DUMON', '1', '2016-09-20 00:00:00', '2016-10-04 00:00:00', '2016-09-26 00:00:00', '3', '24.6900', '刘先生', '花园口南街 62 号', '重庆', '重庆市', '西南', '440003', '中国'); INSERT INTO `orders` VALUES ('10312', 'WANDK', '2', '2016-09-23 00:00:00', '2016-10-21 00:00:00', '2016-10-03 00:00:00', '2', '40.2600', '苏先生', '新街口大街 57 号', '北京', '北京市', '华北', '143454', '中国'); INSERT INTO `orders` VALUES ('10313', 'QUICK', '2', '2016-09-24 00:00:00', '2016-10-22 00:00:00', '2016-10-04 00:00:00', '2', '1.9600', '刘先生', '东土城路 72 号', '北京', '北京市', '华北', '155657', '中国'); INSERT INTO `orders` VALUES ('10314', 'RATTC', '1', '2016-09-25 00:00:00', '2016-10-23 00:00:00', '2016-10-04 00:00:00', '2', '74.1600', '王先生', '阜石路 58 号', '北京', '北京市', '华北', '196896', '中国'); INSERT INTO `orders` VALUES ('10315', 'ISLAT', '4', '2016-09-26 00:00:00', '2016-10-24 00:00:00', '2016-10-03 00:00:00', '2', '41.7600', '方先生', '关北大路东 82 号', '长春', '吉林省', '东北', '242354', '中国'); INSERT INTO `orders` VALUES ('10316', 'RATTC', '1', '2016-09-27 00:00:00', '2016-10-25 00:00:00', '2016-10-08 00:00:00', '3', '150.1500', '王先生', '清河南路 85 号', '张家口', '河北省', '华北', '242454', '中国'); INSERT INTO `orders` VALUES ('10317', 'LONEP', '6', '2016-09-30 00:00:00', '2016-10-28 00:00:00', '2016-10-10 00:00:00', '1', '12.6900', '胡继尧', '明成大街 29 号', '南昌', '江西省', '华东', '573467', '中国'); INSERT INTO `orders` VALUES ('10318', 'ISLAT', '8', '2016-10-01 00:00:00', '2016-10-29 00:00:00', '2016-10-04 00:00:00', '2', '4.7300', '方先生', '汉正南街 62 号', '长春', '吉林省', '东北', '353656', '中国'); INSERT INTO `orders` VALUES ('10319', 'TORTU', '7', '2016-10-02 00:00:00', '2016-10-30 00:00:00', '2016-10-11 00:00:00', '3', '64.5000', '王先生', '广渠路 645 号', '深圳', '广东省', '华南', '345326', '中国'); INSERT INTO `orders` VALUES ('10320', 'WARTH', '5', '2016-10-03 00:00:00', '2016-10-17 00:00:00', '2016-10-18 00:00:00', '3', '34.5700', '成先生', '南江浙街 7 号', '温州', '浙江省', '华东', '856894', '中国'); INSERT INTO `orders` VALUES ('10321', 'ISLAT', '3', '2016-10-03 00:00:00', '2016-10-31 00:00:00', '2016-10-11 00:00:00', '2', '3.4300', '方先生', '广饶路 43 号', '长春', '吉林省', '东北', '365890', '中国'); INSERT INTO `orders` VALUES ('10322', 'PERIC', '7', '2016-10-04 00:00:00', '2016-11-01 00:00:00', '2016-10-23 00:00:00', '3', '0.4000', '林慧音', '昆山路甲 4 号', '昆明', '云南省', '西南', '356369', '中国'); INSERT INTO `orders` VALUES ('10323', 'KOENE', '4', '2016-10-07 00:00:00', '2016-11-04 00:00:00', '2016-10-14 00:00:00', '1', '4.8800', '陈先生', '承德路 28 号', '张家口', '河北省', '华北', '256076', '中国'); INSERT INTO `orders` VALUES ('10324', 'SAVEA', '9', '2016-10-08 00:00:00', '2016-11-05 00:00:00', '2016-10-10 00:00:00', '1', '214.2700', '苏先生', '崇明西大路 393 号', '重庆', '重庆市', '西南', '369700', '中国'); INSERT INTO `orders` VALUES ('10325', 'KOENE', '1', '2016-10-09 00:00:00', '2016-10-23 00:00:00', '2016-10-14 00:00:00', '3', '64.8600', '陈先生', '亮京南路 271 号', '厦门', '福建省', '华南', '345376', '中国'); INSERT INTO `orders` VALUES ('10326', 'BOLID', '4', '2016-10-10 00:00:00', '2016-11-07 00:00:00', '2016-10-14 00:00:00', '2', '77.9200', '刘先生', '成大西街 69 号', '厦门', '福建省', '华南', '232345', '中国'); INSERT INTO `orders` VALUES ('10327', 'FOLKO', '2', '2016-10-11 00:00:00', '2016-11-08 00:00:00', '2016-10-14 00:00:00', '1', '63.3600', '陈先生', '川明东街 37 号', '重庆', '重庆市', '西南', '234324', '中国'); INSERT INTO `orders` VALUES ('10328', 'FURIB', '4', '2016-10-14 00:00:00', '2016-11-11 00:00:00', '2016-10-17 00:00:00', '3', '87.0300', '林小姐', '承德路 21 号', '北京', '北京市', '华北', '132134', '中国'); INSERT INTO `orders` VALUES ('10329', 'SPLIR', '4', '2016-10-15 00:00:00', '2016-11-26 00:00:00', '2016-10-23 00:00:00', '2', '191.6700', '唐小姐', '亮马桥路 41 号', '北京', '北京市', '华北', '143434', '中国'); INSERT INTO `orders` VALUES ('10330', 'LILAS', '3', '2016-10-16 00:00:00', '2016-11-13 00:00:00', '2016-10-28 00:00:00', '1', '12.7500', '陈玉美', '明成大街 29 号', '青岛', '山东省', '华东', '234456', '中国'); INSERT INTO `orders` VALUES ('10331', 'BONAP', '9', '2016-10-16 00:00:00', '2016-11-27 00:00:00', '2016-10-21 00:00:00', '1', '10.1900', '谢小姐', '机场西路 63 号', '成都', '四川省', '西南', '576744', '中国'); INSERT INTO `orders` VALUES ('10332', 'MEREP', '3', '2016-10-17 00:00:00', '2016-11-28 00:00:00', '2016-10-21 00:00:00', '2', '52.8400', '刘维国', '机场路 21 号', '大连', '辽宁省', '东北', '476747', '中国'); INSERT INTO `orders` VALUES ('10333', 'WARTH', '5', '2016-10-18 00:00:00', '2016-11-15 00:00:00', '2016-10-25 00:00:00', '3', '0.5900', '成先生', '津成北路 45 号', '天津', '天津市', '华北', '478833', '中国'); INSERT INTO `orders` VALUES ('10334', 'VICTE', '8', '2016-10-21 00:00:00', '2016-11-18 00:00:00', '2016-10-28 00:00:00', '2', '8.5600', '陈先生', '西四东大街 64 号', '北京', '北京市', '华北', '164569', '中国'); INSERT INTO `orders` VALUES ('10335', 'HUNGO', '7', '2016-10-22 00:00:00', '2016-11-19 00:00:00', '2016-10-24 00:00:00', '2', '42.1100', '周先生', '明成大街 69 号', '长春', '吉林省', '东北', '367894', '中国'); INSERT INTO `orders` VALUES ('10336', 'PRINI', '7', '2016-10-23 00:00:00', '2016-11-20 00:00:00', '2016-10-25 00:00:00', '2', '15.5100', '锺彩瑜', '亮马路 86 号', '北京', '北京市', '华北', '176098', '中国'); INSERT INTO `orders` VALUES ('10337', 'FRANK', '4', '2016-10-24 00:00:00', '2016-11-21 00:00:00', '2016-10-29 00:00:00', '3', '108.2600', '余小姐', '成四大街 29 号', '天津', '天津市', '华北', '346579', '中国'); INSERT INTO `orders` VALUES ('10338', 'OLDWO', '4', '2016-10-25 00:00:00', '2016-11-22 00:00:00', '2016-10-29 00:00:00', '3', '84.2100', '王俊元', '明成路 85 号', '石家庄', '河北省', '华北', '367697', '中国'); INSERT INTO `orders` VALUES ('10339', 'MEREP', '2', '2016-10-28 00:00:00', '2016-11-25 00:00:00', '2016-11-04 00:00:00', '2', '15.6600', '刘维国', '津塘南路 84 号', '天津', '天津市', '华北', '365935', '中国'); INSERT INTO `orders` VALUES ('10340', 'BONAP', '1', '2016-10-29 00:00:00', '2016-11-26 00:00:00', '2016-11-08 00:00:00', '3', '166.3100', '谢小姐', '明川街 79 号', '重庆', '重庆市', '西南', '356780', '中国'); INSERT INTO `orders` VALUES ('10341', 'SIMOB', '7', '2016-10-29 00:00:00', '2016-11-26 00:00:00', '2016-11-05 00:00:00', '3', '26.7800', '何先生', '机场东路 27 号', '长春', '吉林省', '东北', '576846', '中国'); INSERT INTO `orders` VALUES ('10342', 'FRANK', '4', '2016-10-30 00:00:00', '2016-11-13 00:00:00', '2016-11-04 00:00:00', '2', '54.8300', '余小姐', '明光大街 79 号', '重庆', '重庆市', '西南', '467805', '中国'); INSERT INTO `orders` VALUES ('10343', 'LEHMS', '4', '2016-10-31 00:00:00', '2016-11-28 00:00:00', '2016-11-06 00:00:00', '1', '110.3700', '黎先生', '江界街甲 6 号', '天津', '天津市', '华北', '365869', '中国'); INSERT INTO `orders` VALUES ('10344', 'WHITC', '4', '2016-11-01 00:00:00', '2016-11-29 00:00:00', '2016-11-05 00:00:00', '2', '23.2900', '黎先生', '西清河路 35 号', '天津', '天津市', '华北', '981245', '中国'); INSERT INTO `orders` VALUES ('10345', 'QUICK', '2', '2016-11-04 00:00:00', '2016-06-02 00:00:00', '2016-11-11 00:00:00', '2', '249.0600', '刘先生', '崇明大路 83 号', '长春', '吉林省', '东北', '243576', '中国'); INSERT INTO `orders` VALUES ('10346', 'RATTC', '3', '2016-11-05 00:00:00', '2016-06-17 00:00:00', '2016-11-08 00:00:00', '3', '142.0800', '王先生', '冀州街 583 号', '石家庄', '河北省', '华北', '343455', '中国'); INSERT INTO `orders` VALUES ('10347', 'FAMIA', '4', '2016-11-06 00:00:00', '2016-06-04 00:00:00', '2016-11-08 00:00:00', '3', '3.1000', '徐先生', '崇明西路甲 3 号', '张家口', '河北省', '华北', '987643', '中国'); INSERT INTO `orders` VALUES ('10348', 'WANDK', '4', '2016-11-07 00:00:00', '2016-06-05 00:00:00', '2016-11-15 00:00:00', '2', '0.7800', '苏先生', '明成路 48 号', '天津', '天津市', '华北', '745690', '中国'); INSERT INTO `orders` VALUES ('10349', 'SPLIR', '7', '2016-11-08 00:00:00', '2016-06-06 00:00:00', '2016-11-15 00:00:00', '1', '8.6300', '唐小姐', '东长安街 62 号', '北京', '北京市', '华北', '189648', '中国'); INSERT INTO `orders` VALUES ('10350', 'LAMAI', '6', '2016-11-11 00:00:00', '2016-06-09 00:00:00', '2016-06-03 00:00:00', '2', '64.1900', '苏先生', '明川西街 39 号', '昆明', '云南省', '西南', '657880', '中国'); INSERT INTO `orders` VALUES ('10351', 'ERNSH', '1', '2016-11-11 00:00:00', '2016-06-09 00:00:00', '2016-11-20 00:00:00', '1', '162.3300', '王先生', '明成大街 79 号', '南昌', '江西省', '华东', '344356', '中国'); INSERT INTO `orders` VALUES ('10352', 'FURIB', '3', '2016-11-12 00:00:00', '2016-11-26 00:00:00', '2016-11-18 00:00:00', '3', '1.3000', '林小姐', '学院路 364 号', '北京', '北京市', '华北', '145457', '中国'); INSERT INTO `orders` VALUES ('10353', 'PICCO', '7', '2016-11-13 00:00:00', '2016-06-11 00:00:00', '2016-11-25 00:00:00', '3', '360.6300', '林丽莉', '冀东街 28 号', '天津', '天津市', '华北', '345687', '中国'); INSERT INTO `orders` VALUES ('10354', 'PERIC', '8', '2016-11-14 00:00:00', '2016-06-12 00:00:00', '2016-11-20 00:00:00', '3', '53.8000', '林慧音', '蜀明西街 72 号', '重庆', '重庆市', '西南', '467608', '中国'); INSERT INTO `orders` VALUES ('10355', 'AROUT', '6', '2016-11-15 00:00:00', '2016-06-13 00:00:00', '2016-11-20 00:00:00', '1', '41.9500', '王先生', '经九纬五路 37 号', '济南', '山东省', '华东', '478790', '中国'); INSERT INTO `orders` VALUES ('10356', 'WANDK', '6', '2016-11-18 00:00:00', '2016-06-16 00:00:00', '2016-11-27 00:00:00', '2', '36.7100', '苏先生', '闽中大路 368 号', '厦门', '福建省', '华南', '570968', '中国'); INSERT INTO `orders` VALUES ('10357', 'LILAS', '1', '2016-11-19 00:00:00', '2016-06-17 00:00:00', '2016-06-02 00:00:00', '3', '34.8800', '陈玉美', '承德路 21 号', '温州', '浙江省', '华东', '698579', '中国'); INSERT INTO `orders` VALUES ('10358', 'LAMAI', '5', '2016-11-20 00:00:00', '2016-06-18 00:00:00', '2016-11-27 00:00:00', '1', '19.6400', '苏先生', '津中东街 348 号', '天津', '天津市', '华北', '234642', '中国'); INSERT INTO `orders` VALUES ('10359', 'SEVES', '5', '2016-11-21 00:00:00', '2016-06-19 00:00:00', '2016-11-26 00:00:00', '3', '288.4300', '成先生', '金陵路 834 号', '南京', '江苏省', '华东', '478923', '中国'); INSERT INTO `orders` VALUES ('10360', 'BLONP', '4', '2016-11-22 00:00:00', '2016-06-20 00:00:00', '2016-06-02 00:00:00', '3', '131.7000', '方先生', '黄岛区新技术开发区 37 号', '青岛', '山东省', '华东', '343456', '中国'); INSERT INTO `orders` VALUES ('10361', 'QUICK', '1', '2016-11-22 00:00:00', '2016-06-20 00:00:00', '2016-06-03 00:00:00', '2', '183.1700', '刘先生', '崇明西大路丁 8 号', '长春', '吉林省', '东北', '343455', '中国'); INSERT INTO `orders` VALUES ('10362', 'BONAP', '3', '2016-11-25 00:00:00', '2016-06-23 00:00:00', '2016-11-28 00:00:00', '1', '96.0400', '谢小姐', '新技术开发区 28 号', '天津', '天津市', '华北', '234645', '中国'); INSERT INTO `orders` VALUES ('10363', 'DRACD', '4', '2016-11-26 00:00:00', '2016-06-24 00:00:00', '2016-06-04 00:00:00', '3', '30.5400', '方先生', '新技术开发区 57 号', '天津', '天津市', '华北', '454563', '中国'); INSERT INTO `orders` VALUES ('10364', 'EASTC', '1', '2016-11-26 00:00:00', '2016-01-07 00:00:00', '2016-06-04 00:00:00', '1', '71.9700', '谢小姐', '青年东路 53 号', '南京', '江苏省', '华东', '353662', '中国'); INSERT INTO `orders` VALUES ('10365', 'ANTON', '3', '2016-11-27 00:00:00', '2016-06-25 00:00:00', '2016-06-02 00:00:00', '2', '22.0000', '胡先生', '光明北路 854 号', '石家庄', '河北省', '华北', '877087', '中国'); INSERT INTO `orders` VALUES ('10366', 'GALED', '8', '2016-11-28 00:00:00', '2016-01-09 00:00:00', '2016-06-30 00:00:00', '2', '10.1400', '林小姐', '明成街 19 号', '海口', '海南省', '华南', '567075', '中国'); INSERT INTO `orders` VALUES ('10367', 'VAFFE', '7', '2016-11-28 00:00:00', '2016-06-26 00:00:00', '2016-06-02 00:00:00', '3', '13.5500', '方先生', '重阳路 567 号', '天津', '天津市', '华北', '680755', '中国'); INSERT INTO `orders` VALUES ('10368', 'ERNSH', '2', '2016-11-29 00:00:00', '2016-06-27 00:00:00', '2016-06-02 00:00:00', '2', '101.9500', '王先生', '冀州西街 6 号', '大连', '辽宁省', '东北', '570654', '中国'); INSERT INTO `orders` VALUES ('10369', 'SPLIR', '8', '2016-06-02 00:00:00', '2016-06-30 00:00:00', '2016-06-09 00:00:00', '2', '195.6800', '唐小姐', '新技术开发区 43 号', '天津', '天津市', '华北', '734598', '中国'); INSERT INTO `orders` VALUES ('10370', 'CHOPS', '6', '2016-06-03 00:00:00', '2016-01-01 00:00:00', '2016-06-27 00:00:00', '2', '1.1700', '林小姐', '志新路 37 号', '长春', '吉林省', '东北', '586745', '中国'); INSERT INTO `orders` VALUES ('10371', 'LAMAI', '1', '2016-06-03 00:00:00', '2016-01-01 00:00:00', '2016-06-24 00:00:00', '1', '0.4500', '苏先生', '志明东路 84 号', '重庆', '重庆市', '西南', '488705', '中国'); INSERT INTO `orders` VALUES ('10372', 'QUEEN', '5', '2016-06-04 00:00:00', '2016-01-01 00:00:00', '2016-06-09 00:00:00', '2', '890.7800', '方先生', '明正东街 12 号', '天津', '天津市', '华北', '647895', '中国'); INSERT INTO `orders` VALUES ('10373', 'HUNGO', '4', '2016-06-05 00:00:00', '2016-01-02 00:00:00', '2016-06-11 00:00:00', '3', '124.1200', '周先生', '高新技术开发区 3 号', '长春', '吉林省', '东北', '500509', '中国'); INSERT INTO `orders` VALUES ('10374', 'WOLZA', '1', '2016-06-05 00:00:00', '2016-01-02 00:00:00', '2016-06-09 00:00:00', '3', '3.9400', '吴小姐', '津东路 19 号', '天津', '天津市', '华北', '894680', '中国'); INSERT INTO `orders` VALUES ('10375', 'HUNGC', '3', '2016-06-06 00:00:00', '2016-01-03 00:00:00', '2016-06-09 00:00:00', '2', '20.1200', '徐先生', '吴越大街 35 号', '温州', '浙江省', '华东', '560904', '中国'); INSERT INTO `orders` VALUES ('10376', 'MEREP', '1', '2016-06-09 00:00:00', '2016-01-06 00:00:00', '2016-06-13 00:00:00', '2', '20.3900', '刘维国', '新技术开发区 36 号', '石家庄', '河北省', '华北', '580898', '中国'); INSERT INTO `orders` VALUES ('10377', 'SEVES', '1', '2016-06-09 00:00:00', '2016-01-06 00:00:00', '2016-06-13 00:00:00', '3', '22.2100', '成先生', '崇明路 9 号', '南京', '江苏省', '华东', '698453', '中国'); INSERT INTO `orders` VALUES ('10378', 'FOLKO', '5', '2016-06-10 00:00:00', '2016-01-07 00:00:00', '2016-06-19 00:00:00', '3', '5.4400', '陈先生', '崇明西路丁 93 号', '南昌', '江西省', '华东', '566975', '中国'); INSERT INTO `orders` VALUES ('10379', 'QUEDE', '2', '2016-06-11 00:00:00', '2016-01-08 00:00:00', '2016-06-13 00:00:00', '1', '45.0300', '刘先生', '前进路 12 号', '昆明', '云南省', '西南', '478794', '中国'); INSERT INTO `orders` VALUES ('10380', 'HUNGO', '8', '2016-06-12 00:00:00', '2016-01-09 00:00:00', '2016-01-16 00:00:00', '3', '35.0300', '周先生', '永安西里 110 号', '长春', '吉林省', '东北', '548804', '中国'); INSERT INTO `orders` VALUES ('10381', 'LILAS', '3', '2016-06-12 00:00:00', '2016-01-09 00:00:00', '2016-06-13 00:00:00', '3', '7.9900', '陈玉美', '明成大街 57 号', '温州', '浙江省', '华东', '879048', '中国'); INSERT INTO `orders` VALUES ('10382', 'ERNSH', '4', '2016-06-13 00:00:00', '2016-01-10 00:00:00', '2016-06-16 00:00:00', '1', '94.7700', '王先生', '城东路 435 号', '天津', '天津市', '华北', '787809', '中国'); INSERT INTO `orders` VALUES ('10383', 'AROUT', '8', '2016-06-16 00:00:00', '2016-01-13 00:00:00', '2016-06-18 00:00:00', '3', '34.2400', '王先生', '临江大街 76 号', '长春', '吉林省', '东北', '234346', '中国'); INSERT INTO `orders` VALUES ('10384', 'BERGS', '3', '2016-06-16 00:00:00', '2016-01-13 00:00:00', '2016-06-20 00:00:00', '3', '168.6400', '李先生', '冀州街甲 932 号', '厦门', '福建省', '华南', '633544', '中国'); INSERT INTO `orders` VALUES ('10385', 'SPLIR', '1', '2016-06-17 00:00:00', '2016-01-14 00:00:00', '2016-06-23 00:00:00', '2', '30.9600', '唐小姐', '团结西路 57 号', '重庆', '重庆市', '西南', '653563', '中国'); INSERT INTO `orders` VALUES ('10386', 'FAMIA', '9', '2016-06-18 00:00:00', '2016-01-01 00:00:00', '2016-06-25 00:00:00', '3', '13.9900', '徐先生', '泗水路 92 号', '温州', '浙江省', '华东', '465652', '中国'); INSERT INTO `orders` VALUES ('10387', 'SANTG', '1', '2016-06-18 00:00:00', '2016-01-15 00:00:00', '2016-06-20 00:00:00', '2', '93.6300', '余小姐', '霸王东路 24 号', '重庆', '重庆市', '西南', '767365', '中国'); INSERT INTO `orders` VALUES ('10388', 'SEVES', '2', '2016-06-19 00:00:00', '2016-01-16 00:00:00', '2016-06-20 00:00:00', '1', '34.8600', '成先生', '丰乡北路 62 号', '南京', '江苏省', '华东', '574633', '中国'); INSERT INTO `orders` VALUES ('10389', 'BOTTM', '4', '2016-06-20 00:00:00', '2016-01-17 00:00:00', '2016-06-24 00:00:00', '2', '47.4200', '王先生', '海丰路 39 号', '青岛', '山东省', '华东', '746537', '中国'); INSERT INTO `orders` VALUES ('10390', 'ERNSH', '6', '2016-06-23 00:00:00', '2016-01-20 00:00:00', '2016-06-26 00:00:00', '1', '126.3800', '王先生', '正汉东街 12 号', '成都', '四川省', '西南', '536548', '中国'); INSERT INTO `orders` VALUES ('10391', 'DRACD', '3', '2016-06-23 00:00:00', '2016-01-20 00:00:00', '2016-01-02 00:00:00', '3', '5.4500', '方先生', '天观大街 37 号', '天津', '天津市', '华北', '456473', '中国'); INSERT INTO `orders` VALUES ('10392', 'PICCO', '2', '2016-06-24 00:00:00', '2016-01-21 00:00:00', '2016-01-01 00:00:00', '3', '122.4600', '林丽莉', '同化路 73 号', '天津', '天津市', '华北', '743455', '中国'); INSERT INTO `orders` VALUES ('10393', 'SAVEA', '1', '2016-06-25 00:00:00', '2016-01-22 00:00:00', '2016-01-03 00:00:00', '3', '126.5600', '苏先生', '青年路 43 号', '秦皇岛', '河北省', '华北', '574883', '中国'); INSERT INTO `orders` VALUES ('10394', 'HUNGC', '1', '2016-06-25 00:00:00', '2016-01-22 00:00:00', '2016-01-03 00:00:00', '3', '30.3400', '徐先生', '连滨新路 29 号', '石家庄', '河北省', '华北', '743537', '中国'); INSERT INTO `orders` VALUES ('10395', 'HILAA', '6', '2016-06-26 00:00:00', '2016-01-23 00:00:00', '2016-01-03 00:00:00', '1', '184.4100', '王先生', '明成大街 58 号', '大连', '辽宁省', '东北', '564573', '中国'); INSERT INTO `orders` VALUES ('10396', 'FRANK', '1', '2016-06-27 00:00:00', '2016-01-10 00:00:00', '2016-01-06 00:00:00', '3', '135.3500', '余小姐', '城东路 62 号', '海口', '海南省', '华南', '365645', '中国'); INSERT INTO `orders` VALUES ('10397', 'PRINI', '5', '2016-06-27 00:00:00', '2016-01-24 00:00:00', '2016-01-02 00:00:00', '1', '60.2600', '锺彩瑜', '玉成路 412 号', '天津', '天津市', '华北', '746456', '中国'); INSERT INTO `orders` VALUES ('10398', 'SAVEA', '2', '2016-06-30 00:00:00', '2016-01-27 00:00:00', '2016-01-09 00:00:00', '3', '89.1600', '苏先生', '丰联新路 235 号', '重庆', '重庆市', '西南', '563546', '中国'); INSERT INTO `orders` VALUES ('10399', 'VAFFE', '8', '2016-01-14 00:00:00', '2016-01-14 00:00:00', '2016-01-08 00:00:00', '3', '27.3600', '方先生', '鄂伦春路 283 号', '长春', '吉林省', '东北', '574564', '中国'); INSERT INTO `orders` VALUES ('10400', 'EASTC', '1', '2016-01-01 00:00:00', '2016-01-29 00:00:00', '2016-01-16 00:00:00', '3', '83.9300', '谢小姐', '前进北路 746 号', '南京', '江苏省', '华东', '746746', '中国'); INSERT INTO `orders` VALUES ('10401', 'RATTC', '1', '2016-01-01 00:00:00', '2016-01-29 00:00:00', '2016-01-10 00:00:00', '1', '12.5100', '王先生', '跃进路 326 号', '大连', '辽宁省', '东北', '465465', '中国'); INSERT INTO `orders` VALUES ('10402', 'ERNSH', '8', '2016-01-02 00:00:00', '2016-02-13 00:00:00', '2016-01-10 00:00:00', '2', '67.8800', '王先生', '津塘大路 39 号', '天津', '天津市', '华北', '585855', '中国'); INSERT INTO `orders` VALUES ('10403', 'ERNSH', '4', '2016-01-03 00:00:00', '2016-01-31 00:00:00', '2016-01-09 00:00:00', '3', '73.7900', '王先生', '铁人路 36 号', '天津', '天津市', '华北', '877946', '中国'); INSERT INTO `orders` VALUES ('10404', 'MAGAA', '2', '2016-01-03 00:00:00', '2016-01-31 00:00:00', '2016-01-08 00:00:00', '1', '155.9700', '王炫皓', '江槐东街 746 号', '天津', '天津市', '华北', '576676', '中国'); INSERT INTO `orders` VALUES ('10405', 'LINOD', '1', '2016-01-06 00:00:00', '2016-02-03 00:00:00', '2016-01-22 00:00:00', '1', '34.8200', '黄雅玲', '华翠南路 276 号', '温州', '浙江省', '华东', '868764', '中国'); INSERT INTO `orders` VALUES ('10406', 'QUEEN', '7', '2016-01-07 00:00:00', '2016-02-18 00:00:00', '2016-01-13 00:00:00', '1', '108.0400', '方先生', '九江西街 374 号', '南昌', '江西省', '华东', '678795', '中国'); INSERT INTO `orders` VALUES ('10407', 'OTTIK', '2', '2016-01-07 00:00:00', '2016-02-04 00:00:00', '2016-01-30 00:00:00', '2', '91.4800', '徐文彬', '湾乡甲路 327 号', '张家口', '河北省', '华北', '567685', '中国'); INSERT INTO `orders` VALUES ('10408', 'FOLIG', '8', '2016-01-08 00:00:00', '2016-02-05 00:00:00', '2016-01-14 00:00:00', '1', '11.2600', '方先生', '幸福西大路 237 号', '昆明', '云南省', '西南', '476678', '中国'); INSERT INTO `orders` VALUES ('10409', 'OCEAN', '3', '2016-01-09 00:00:00', '2016-02-06 00:00:00', '2016-01-14 00:00:00', '1', '29.8300', '谢丽秋', '南京路丁 93 号', '上海', '上海市', '华东', '564567', '中国'); INSERT INTO `orders` VALUES ('10410', 'BOTTM', '3', '2016-01-10 00:00:00', '2016-02-07 00:00:00', '2016-01-15 00:00:00', '3', '2.4000', '王先生', '云南路 912 号', '上海', '上海市', '华东', '575643', '中国'); INSERT INTO `orders` VALUES ('10411', 'BOTTM', '9', '2016-01-10 00:00:00', '2016-02-07 00:00:00', '2016-01-21 00:00:00', '3', '23.6500', '王先生', '天大东路 347 号', '天津', '天津市', '华北', '785685', '中国'); INSERT INTO `orders` VALUES ('10412', 'WARTH', '8', '2016-01-13 00:00:00', '2016-02-10 00:00:00', '2016-01-15 00:00:00', '2', '3.7700', '成先生', '柳明辅路 361 号', '天津', '天津市', '华北', '456456', '中国'); INSERT INTO `orders` VALUES ('10413', 'LAMAI', '3', '2016-01-14 00:00:00', '2016-02-11 00:00:00', '2016-01-16 00:00:00', '2', '95.6600', '苏先生', '城东路 12 号', '昆明', '云南省', '西南', '345755', '中国'); INSERT INTO `orders` VALUES ('10414', 'FAMIA', '2', '2016-01-14 00:00:00', '2016-02-11 00:00:00', '2016-01-17 00:00:00', '3', '21.4800', '徐先生', '同兴北路 364 号', '厦门', '福建省', '华南', '746573', '中国'); INSERT INTO `orders` VALUES ('10415', 'HUNGC', '3', '2016-01-15 00:00:00', '2016-02-12 00:00:00', '2016-01-24 00:00:00', '1', '0.2000', '徐先生', '承德路 73 号', '温州', '浙江省', '华东', '764767', '中国'); INSERT INTO `orders` VALUES ('10416', 'WARTH', '8', '2016-01-16 00:00:00', '2016-02-13 00:00:00', '2016-01-27 00:00:00', '3', '22.7200', '成先生', '光德新路 237 号', '天津', '天津市', '华北', '534559', '中国'); INSERT INTO `orders` VALUES ('10417', 'SIMOB', '4', '2016-01-16 00:00:00', '2016-02-13 00:00:00', '2016-01-28 00:00:00', '3', '70.2900', '何先生', '老龙头东路 216 号', '重庆', '重庆市', '西南', '568974', '中国'); INSERT INTO `orders` VALUES ('10418', 'QUICK', '4', '2016-01-17 00:00:00', '2016-02-14 00:00:00', '2016-01-24 00:00:00', '1', '17.5500', '刘先生', '明涌江 328 号', '长春', '吉林省', '东北', '566957', '中国'); INSERT INTO `orders` VALUES ('10419', 'RICSU', '4', '2016-01-20 00:00:00', '2016-02-17 00:00:00', '2016-01-30 00:00:00', '2', '137.3500', '方先生', '西跃进路 34 号', '成都', '四川省', '西南', '678905', '中国'); INSERT INTO `orders` VALUES ('10420', 'WELLI', '3', '2016-01-21 00:00:00', '2016-02-18 00:00:00', '2016-01-27 00:00:00', '1', '44.1200', '何先生', '黄河老路 358 号', '天津', '天津市', '华北', '479865', '中国'); INSERT INTO `orders` VALUES ('10421', 'QUEDE', '8', '2016-01-21 00:00:00', '2016-03-04 00:00:00', '2016-01-27 00:00:00', '1', '99.2300', '刘先生', '宏伟辅路 383 号', '天津', '天津市', '华北', '478678', '中国'); INSERT INTO `orders` VALUES ('10422', 'FRANS', '2', '2016-01-22 00:00:00', '2016-02-19 00:00:00', '2016-01-31 00:00:00', '1', '3.0200', '成先生', '光明北路 643 号', '秦皇岛', '河北省', '华北', '576959', '中国'); INSERT INTO `orders` VALUES ('10423', 'GOURL', '6', '2016-01-23 00:00:00', '2016-02-06 00:00:00', '2016-02-24 00:00:00', '3', '24.5000', '刘先生', '方甲路 327 号', '长春', '吉林省', '东北', '475680', '中国'); INSERT INTO `orders` VALUES ('10424', 'MEREP', '7', '2016-01-23 00:00:00', '2016-02-20 00:00:00', '2016-01-27 00:00:00', '2', '370.6100', '刘维国', '复后路 713 号', '天津', '天津市', '华北', '477484', '中国'); INSERT INTO `orders` VALUES ('10425', 'LAMAI', '6', '2016-01-24 00:00:00', '2016-02-21 00:00:00', '2016-02-14 00:00:00', '2', '7.9300', '苏先生', '长江老路 358 号', '重庆', '重庆市', '西南', '477940', '中国'); INSERT INTO `orders` VALUES ('10426', 'GALED', '4', '2016-01-27 00:00:00', '2016-02-24 00:00:00', '2016-02-06 00:00:00', '1', '18.6900', '林小姐', '德新路 37 号', '海口', '海南省', '华南', '367870', '中国'); INSERT INTO `orders` VALUES ('10427', 'PICCO', '4', '2016-01-27 00:00:00', '2016-02-24 00:00:00', '2016-03-03 00:00:00', '2', '31.2900', '林丽莉', '渝顺口南街 52 号', '天津', '天津市', '华北', '668056', '中国'); INSERT INTO `orders` VALUES ('10428', 'REGGC', '7', '2016-01-28 00:00:00', '2016-02-25 00:00:00', '2016-02-04 00:00:00', '1', '11.0900', '徐先生', '天法东路 47 号', '长春', '吉林省', '东北', '667800', '中国'); INSERT INTO `orders` VALUES ('10429', 'HUNGO', '3', '2016-01-29 00:00:00', '2016-03-12 00:00:00', '2016-02-07 00:00:00', '2', '56.6300', '周先生', '三森北路 764 号', '长春', '吉林省', '东北', '778968', '中国'); INSERT INTO `orders` VALUES ('10430', 'ERNSH', '4', '2016-01-30 00:00:00', '2016-02-13 00:00:00', '2016-02-03 00:00:00', '1', '458.7800', '王先生', '跃进路 734 号', '重庆', '重庆市', '西南', '789800', '中国'); INSERT INTO `orders` VALUES ('10431', 'BOTTM', '4', '2016-01-30 00:00:00', '2016-02-13 00:00:00', '2016-02-07 00:00:00', '2', '44.1700', '王先生', '明成街 9 号', '大连', '辽宁省', '东北', '785789', '中国'); INSERT INTO `orders` VALUES ('10432', 'SPLIR', '3', '2016-01-31 00:00:00', '2016-02-14 00:00:00', '2016-02-07 00:00:00', '2', '4.3400', '唐小姐', '黄河路 58 号', '南京', '江苏省', '华东', '232334', '中国'); INSERT INTO `orders` VALUES ('10433', 'PRINI', '3', '2016-02-03 00:00:00', '2016-03-03 00:00:00', '2016-03-04 00:00:00', '3', '73.8300', '锺彩瑜', '光新路 27 号', '南京', '江苏省', '华东', '254356', '中国'); INSERT INTO `orders` VALUES ('10434', 'FOLKO', '3', '2016-02-03 00:00:00', '2016-03-03 00:00:00', '2016-02-13 00:00:00', '2', '17.9200', '陈先生', '江畅大街 38 号', '南昌', '江西省', '华东', '453534', '中国'); INSERT INTO `orders` VALUES ('10435', 'CONSH', '8', '2016-02-04 00:00:00', '2016-03-18 00:00:00', '2016-02-07 00:00:00', '2', '9.2100', '刘先生', '淮德路甲 237 号', '南京', '江苏省', '华东', '242345', '中国'); INSERT INTO `orders` VALUES ('10436', 'BLONP', '3', '2016-02-05 00:00:00', '2016-03-05 00:00:00', '2016-02-11 00:00:00', '2', '156.6600', '方先生', '工立大路 734 号', '重庆', '重庆市', '西南', '245675', '中国'); INSERT INTO `orders` VALUES ('10437', 'WARTH', '8', '2016-02-05 00:00:00', '2016-03-05 00:00:00', '2016-02-12 00:00:00', '1', '19.9700', '成先生', '渝口南街 52 号', '昆明', '云南省', '西南', '685624', '中国'); INSERT INTO `orders` VALUES ('10438', 'TOMSP', '3', '2016-02-06 00:00:00', '2016-03-06 00:00:00', '2016-02-14 00:00:00', '2', '8.2400', '谢小姐', '师大辅路 364 号', '天津', '天津市', '华北', '464674', '中国'); INSERT INTO `orders` VALUES ('10439', 'MEREP', '6', '2016-02-07 00:00:00', '2016-03-07 00:00:00', '2016-02-10 00:00:00', '3', '4.0700', '刘维国', '世恒路 377 号', '温州', '浙江省', '华东', '864648', '中国'); INSERT INTO `orders` VALUES ('10440', 'SAVEA', '4', '2016-02-10 00:00:00', '2016-03-10 00:00:00', '2016-02-28 00:00:00', '2', '86.5300', '苏先生', '团结南路 784 号', '天津', '天津市', '华北', '465894', '中国'); INSERT INTO `orders` VALUES ('10441', 'OLDWO', '3', '2016-02-10 00:00:00', '2016-03-24 00:00:00', '2016-03-14 00:00:00', '2', '73.0200', '王俊元', '泉城路 37 号', '济南', '山东省', '华东', '456778', '中国'); INSERT INTO `orders` VALUES ('10442', 'ERNSH', '3', '2016-02-11 00:00:00', '2016-03-11 00:00:00', '2016-02-18 00:00:00', '2', '47.9400', '王先生', '明成路 38 号', '厦门', '福建省', '华南', '467683', '中国'); INSERT INTO `orders` VALUES ('10443', 'REGGC', '8', '2016-02-12 00:00:00', '2016-03-12 00:00:00', '2016-02-14 00:00:00', '1', '13.9500', '徐先生', '和瑞路 82 号', '天津', '天津市', '华北', '978946', '中国'); INSERT INTO `orders` VALUES ('10444', 'BERGS', '3', '2016-02-12 00:00:00', '2016-03-12 00:00:00', '2016-02-21 00:00:00', '3', '3.5000', '李先生', '承德路 29 号', '南京', '江苏省', '华东', '579648', '中国'); INSERT INTO `orders` VALUES ('10445', 'BERGS', '3', '2016-02-13 00:00:00', '2016-03-13 00:00:00', '2016-02-20 00:00:00', '1', '9.3000', '李先生', '兴明西路 374 号', '南京', '江苏省', '华东', '768478', '中国'); INSERT INTO `orders` VALUES ('10446', 'TOMSP', '6', '2016-02-14 00:00:00', '2016-03-14 00:00:00', '2016-02-19 00:00:00', '1', '14.6800', '谢小姐', '浩明南街 92 号', '成都', '四川省', '西南', '895885', '中国'); INSERT INTO `orders` VALUES ('10447', 'RICAR', '4', '2016-02-14 00:00:00', '2016-03-14 00:00:00', '2016-03-07 00:00:00', '2', '68.6600', '周先生', '纬二路 47 号', '济南', '山东省', '华东', '466805', '中国'); INSERT INTO `orders` VALUES ('10448', 'RANCH', '4', '2016-02-17 00:00:00', '2016-03-17 00:00:00', '2016-02-24 00:00:00', '2', '38.8200', '谢小姐', '光明路 281 号', '天津', '天津市', '华北', '697498', '中国'); INSERT INTO `orders` VALUES ('10449', 'BLONP', '3', '2016-02-18 00:00:00', '2016-03-18 00:00:00', '2016-02-27 00:00:00', '2', '53.3000', '方先生', '师大路 945 号', '重庆', '重庆市', '西南', '697834', '中国'); INSERT INTO `orders` VALUES ('10450', 'VICTE', '8', '2016-02-19 00:00:00', '2016-03-19 00:00:00', '2016-03-11 00:00:00', '2', '7.2300', '陈先生', '黄石路 116 号', '南京', '江苏省', '华东', '784698', '中国'); INSERT INTO `orders` VALUES ('10451', 'QUICK', '4', '2016-02-19 00:00:00', '2016-03-05 00:00:00', '2016-03-12 00:00:00', '3', '189.0900', '刘先生', '青年东路 59 号', '长春', '吉林省', '东北', '324545', '中国'); INSERT INTO `orders` VALUES ('10452', 'SAVEA', '8', '2016-02-20 00:00:00', '2016-03-20 00:00:00', '2016-02-26 00:00:00', '1', '140.2600', '苏先生', '海明街 39 号', '秦皇岛', '河北省', '华北', '454356', '中国'); INSERT INTO `orders` VALUES ('10453', 'AROUT', '1', '2016-02-21 00:00:00', '2016-03-21 00:00:00', '2016-02-26 00:00:00', '2', '25.3600', '王先生', '奋进路 374 号', '石家庄', '河北省', '华北', '254356', '中国'); INSERT INTO `orders` VALUES ('10454', 'LAMAI', '4', '2016-02-21 00:00:00', '2016-03-21 00:00:00', '2016-02-25 00:00:00', '3', '2.7400', '苏先生', '南兴明路 64 号', '天津', '天津市', '华北', '452256', '中国'); INSERT INTO `orders` VALUES ('10455', 'WARTH', '8', '2016-02-24 00:00:00', '2016-04-07 00:00:00', '2016-03-03 00:00:00', '2', '180.4500', '成先生', '南口街 782 号', '天津', '天津市', '华北', '354325', '中国'); INSERT INTO `orders` VALUES ('10456', 'KOENE', '8', '2016-02-25 00:00:00', '2016-04-08 00:00:00', '2016-02-28 00:00:00', '2', '8.1200', '陈先生', '明南街 942 号', '海口', '海南省', '华南', '535977', '中国'); INSERT INTO `orders` VALUES ('10457', 'KOENE', '2', '2016-02-25 00:00:00', '2016-03-25 00:00:00', '2016-03-03 00:00:00', '1', '11.5700', '陈先生', '和平路 382 号', '长春', '吉林省', '东北', '870868', '中国'); INSERT INTO `orders` VALUES ('10458', 'SUPRD', '7', '2016-02-26 00:00:00', '2016-03-26 00:00:00', '2016-03-04 00:00:00', '3', '147.0600', '刘先生', '祥瑞路 57 号', '长春', '吉林省', '东北', '970905', '中国'); INSERT INTO `orders` VALUES ('10459', 'VICTE', '4', '2016-02-27 00:00:00', '2016-03-27 00:00:00', '2016-02-28 00:00:00', '2', '25.0900', '陈先生', '兴西路 74 号', '南京', '江苏省', '华东', '442567', '中国'); INSERT INTO `orders` VALUES ('10460', 'FOLKO', '8', '2016-02-28 00:00:00', '2016-03-28 00:00:00', '2016-03-03 00:00:00', '1', '16.2700', '陈先生', '和安路 82 号', '大连', '辽宁省', '东北', '567800', '中国'); INSERT INTO `orders` VALUES ('10461', 'LILAS', '1', '2016-02-28 00:00:00', '2016-03-28 00:00:00', '2016-03-05 00:00:00', '3', '148.6100', '陈玉美', '时瑞路 58 号', '南昌', '江西省', '华东', '456897', '中国'); INSERT INTO `orders` VALUES ('10462', 'CONSH', '2', '2016-03-03 00:00:00', '2016-03-31 00:00:00', '2016-03-18 00:00:00', '1', '6.1700', '刘先生', '和发路 324 号', '南京', '江苏省', '华东', '354568', '中国'); INSERT INTO `orders` VALUES ('10463', 'SUPRD', '5', '2016-03-04 00:00:00', '2016-04-01 00:00:00', '2016-03-06 00:00:00', '3', '14.7800', '刘先生', '浩明街 247 号', '长春', '吉林省', '东北', '754525', '中国'); INSERT INTO `orders` VALUES ('10464', 'FURIB', '4', '2016-03-04 00:00:00', '2016-04-01 00:00:00', '2016-03-14 00:00:00', '2', '89.0000', '林小姐', '渝口南路 232 号', '南京', '江苏省', '华东', '653289', '中国'); INSERT INTO `orders` VALUES ('10465', 'VAFFE', '1', '2016-03-05 00:00:00', '2016-04-02 00:00:00', '2016-03-14 00:00:00', '3', '145.0400', '方先生', '大明西路 374 号', '常州', '江苏省', '华东', '453738', '中国'); INSERT INTO `orders` VALUES ('10466', 'COMMI', '4', '2016-03-06 00:00:00', '2016-04-03 00:00:00', '2016-03-13 00:00:00', '1', '11.9300', '锺小姐', '渝街南口 357 号', '昆明', '云南省', '西南', '775498', '中国'); INSERT INTO `orders` VALUES ('10467', 'MAGAA', '8', '2016-03-06 00:00:00', '2016-04-03 00:00:00', '2016-03-11 00:00:00', '2', '4.9300', '王炫皓', '子仪南街 237 号', '张家口', '河北省', '华北', '875376', '中国'); INSERT INTO `orders` VALUES ('10468', 'KOENE', '3', '2016-03-07 00:00:00', '2016-04-04 00:00:00', '2016-03-12 00:00:00', '3', '44.1200', '陈先生', '日定路 326 号', '张家口', '河北省', '华北', '147764', '中国'); INSERT INTO `orders` VALUES ('10469', 'WHITC', '1', '2016-03-10 00:00:00', '2016-04-07 00:00:00', '2016-03-14 00:00:00', '1', '60.1800', '黎先生', '法明路 735 号', '温州', '浙江省', '华东', '981245', '中国'); INSERT INTO `orders` VALUES ('10470', 'BONAP', '4', '2016-03-11 00:00:00', '2016-04-08 00:00:00', '2016-03-14 00:00:00', '2', '64.5600', '谢小姐', '时百西街 287 号', '天津', '天津市', '华北', '130084', '中国'); INSERT INTO `orders` VALUES ('10471', 'BSBEV', '2', '2016-03-11 00:00:00', '2016-04-08 00:00:00', '2016-03-18 00:00:00', '3', '45.5900', '徐先生', '冀州路 83 号', '南京', '江苏省', '华东', '435234', '中国'); INSERT INTO `orders` VALUES ('10472', 'SEVES', '8', '2016-03-12 00:00:00', '2016-04-09 00:00:00', '2016-03-19 00:00:00', '1', '4.2000', '成先生', '同日路 43 号', '南京', '江苏省', '华东', '345252', '中国'); INSERT INTO `orders` VALUES ('10473', 'ISLAT', '1', '2016-03-13 00:00:00', '2016-03-27 00:00:00', '2016-03-21 00:00:00', '3', '16.3700', '方先生', '承德路 281 号', '厦门', '福建省', '华南', '254577', '中国'); INSERT INTO `orders` VALUES ('10474', 'PERIC', '5', '2016-03-13 00:00:00', '2016-04-10 00:00:00', '2016-03-21 00:00:00', '2', '83.4900', '林慧音', '顺口南街 52 号', '常州', '江苏省', '华东', '353573', '中国'); INSERT INTO `orders` VALUES ('10475', 'SUPRD', '9', '2016-03-14 00:00:00', '2016-04-11 00:00:00', '2016-04-04 00:00:00', '1', '68.5200', '刘先生', '四川路 13 号', '上海', '上海市', '华东', '564577', '中国'); INSERT INTO `orders` VALUES ('10476', 'HILAA', '8', '2016-03-17 00:00:00', '2016-04-14 00:00:00', '2016-03-24 00:00:00', '3', '4.4100', '王先生', '起义路 237 号', '青岛', '山东省', '华东', '476577', '中国'); INSERT INTO `orders` VALUES ('10477', 'PRINI', '5', '2016-03-17 00:00:00', '2016-04-14 00:00:00', '2016-03-25 00:00:00', '2', '13.0200', '锺彩瑜', '燕子山路 42 号', '南京', '江苏省', '华东', '353578', '中国'); INSERT INTO `orders` VALUES ('10478', 'VICTE', '2', '2016-03-18 00:00:00', '2016-04-01 00:00:00', '2016-03-26 00:00:00', '3', '4.8100', '陈先生', '方分大街 38 号', '南京', '江苏省', '华东', '645645', '中国'); INSERT INTO `orders` VALUES ('10479', 'RATTC', '3', '2016-03-19 00:00:00', '2016-04-16 00:00:00', '2016-03-21 00:00:00', '3', '708.9500', '王先生', '大方园 37 号', '天津', '天津市', '华北', '357678', '中国'); INSERT INTO `orders` VALUES ('10480', 'FOLIG', '6', '2016-03-20 00:00:00', '2016-04-17 00:00:00', '2016-03-24 00:00:00', '2', '1.3500', '方先生', '青年东路 334 号', '南京', '江苏省', '华东', '978684', '中国'); INSERT INTO `orders` VALUES ('10481', 'RICAR', '8', '2016-03-20 00:00:00', '2016-04-17 00:00:00', '2016-03-25 00:00:00', '2', '64.3300', '周先生', '青龙湾路 37 号', '秦皇岛', '河北省', '华北', '457693', '中国'); INSERT INTO `orders` VALUES ('10482', 'LAZYK', '1', '2016-03-21 00:00:00', '2016-04-18 00:00:00', '2016-04-10 00:00:00', '3', '7.4800', '何先生', '明德南路 382 号', '天津', '天津市', '华北', '368895', '中国'); INSERT INTO `orders` VALUES ('10483', 'WHITC', '7', '2016-03-24 00:00:00', '2016-04-21 00:00:00', '2016-04-25 00:00:00', '2', '15.2800', '黎先生', '冀光街 468 号', '天津', '天津市', '华北', '457687', '中国'); INSERT INTO `orders` VALUES ('10484', 'BSBEV', '3', '2016-03-24 00:00:00', '2016-04-21 00:00:00', '2016-04-01 00:00:00', '3', '6.8800', '徐先生', '闲居阁西街 89 号', '南京', '江苏省', '华东', '465856', '中国'); INSERT INTO `orders` VALUES ('10485', 'LINOD', '4', '2016-03-25 00:00:00', '2016-04-08 00:00:00', '2016-03-31 00:00:00', '2', '64.4500', '黄雅玲', '龙山北里 47 号', '天津', '天津市', '华北', '456568', '中国'); INSERT INTO `orders` VALUES ('10486', 'HILAA', '1', '2016-03-26 00:00:00', '2016-04-23 00:00:00', '2016-04-02 00:00:00', '2', '30.5300', '王先生', '方中路 84 号', '长春', '吉林省', '东北', '480905', '中国'); INSERT INTO `orders` VALUES ('10487', 'QUEEN', '2', '2016-03-26 00:00:00', '2016-04-23 00:00:00', '2016-03-28 00:00:00', '2', '71.0700', '方先生', '金玉街 23 号', '大连', '辽宁省', '东北', '687005', '中国'); INSERT INTO `orders` VALUES ('10488', 'FRANK', '8', '2016-03-27 00:00:00', '2016-04-24 00:00:00', '2016-04-02 00:00:00', '2', '4.9300', '余小姐', '乌木街甲 48 号', '大连', '辽宁省', '东北', '476799', '中国'); INSERT INTO `orders` VALUES ('10489', 'PICCO', '6', '2016-03-28 00:00:00', '2016-04-25 00:00:00', '2016-04-09 00:00:00', '2', '5.2900', '林丽莉', '揽翠碑路 37 号', '南昌', '江西省', '华东', '567086', '中国'); INSERT INTO `orders` VALUES ('10490', 'HILAA', '7', '2016-03-31 00:00:00', '2016-04-28 00:00:00', '2016-04-03 00:00:00', '2', '210.1900', '王先生', '西藏路 79 号', '上海', '上海市', '华东', '586909', '中国'); INSERT INTO `orders` VALUES ('10491', 'FURIB', '8', '2016-03-31 00:00:00', '2016-04-28 00:00:00', '2016-04-08 00:00:00', '3', '16.9600', '林小姐', '华明南路 32 号', '南京', '江苏省', '华东', '567568', '中国'); INSERT INTO `orders` VALUES ('10492', 'BOTTM', '3', '2016-04-01 00:00:00', '2016-04-29 00:00:00', '2016-04-11 00:00:00', '1', '62.8900', '王先生', '大明路 37 号', '天津', '天津市', '华北', '567657', '中国'); INSERT INTO `orders` VALUES ('10493', 'LAMAI', '4', '2016-04-02 00:00:00', '2016-04-30 00:00:00', '2016-04-10 00:00:00', '3', '10.6400', '苏先生', '昌隆西路 84 号', '天津', '天津市', '华北', '585788', '中国'); INSERT INTO `orders` VALUES ('10494', 'COMMI', '4', '2016-04-02 00:00:00', '2016-04-30 00:00:00', '2016-04-09 00:00:00', '2', '65.9900', '锺小姐', '青年东路 145 号', '天津', '天津市', '华北', '587699', '中国'); INSERT INTO `orders` VALUES ('10495', 'LAUGB', '3', '2016-04-03 00:00:00', '2016-05-01 00:00:00', '2016-04-11 00:00:00', '3', '4.6500', '成先生', '庄园西口 328 号', '昆明', '云南省', '西南', '345368', '中国'); INSERT INTO `orders` VALUES ('10496', 'TRADH', '7', '2016-04-04 00:00:00', '2016-05-02 00:00:00', '2016-04-07 00:00:00', '2', '46.7700', '徐先生', '胜利南路 293 号', '石家庄', '河北省', '华北', '574577', '中国'); INSERT INTO `orders` VALUES ('10497', 'LEHMS', '7', '2016-04-04 00:00:00', '2016-05-02 00:00:00', '2016-04-07 00:00:00', '1', '36.2100', '黎先生', '故园西里 24 号', '天津', '天津市', '华北', '756747', '中国'); INSERT INTO `orders` VALUES ('10498', 'HILAA', '8', '2016-04-07 00:00:00', '2016-05-05 00:00:00', '2016-04-11 00:00:00', '2', '29.7500', '王先生', '西隆路 54 号', '张家口', '河北省', '华北', '354564', '中国'); INSERT INTO `orders` VALUES ('10499', 'LILAS', '4', '2016-04-08 00:00:00', '2016-05-06 00:00:00', '2016-04-16 00:00:00', '2', '102.0200', '陈玉美', '西四北大街 83 号', '北京', '北京市', '华北', '156567', '中国'); INSERT INTO `orders` VALUES ('10500', 'LAMAI', '6', '2016-04-09 00:00:00', '2016-05-07 00:00:00', '2016-04-17 00:00:00', '1', '42.6800', '苏先生', '速德南路 43 号', '厦门', '福建省', '华南', '768847', '中国'); INSERT INTO `orders` VALUES ('10501', 'BLAUS', '9', '2016-04-09 00:00:00', '2016-05-07 00:00:00', '2016-04-16 00:00:00', '3', '8.8500', '刘先生', '大崇明路 57 号', '天津', '天津市', '华北', '756878', '中国'); INSERT INTO `orders` VALUES ('10502', 'PERIC', '2', '2016-04-10 00:00:00', '2016-05-08 00:00:00', '2016-04-29 00:00:00', '1', '69.3200', '林慧音', '承德西路 81 号', '常州', '江苏省', '华东', '457567', '中国'); INSERT INTO `orders` VALUES ('10503', 'HUNGO', '6', '2016-04-11 00:00:00', '2016-05-09 00:00:00', '2016-04-16 00:00:00', '2', '16.7400', '周先生', '共振路 392 号', '天津', '天津市', '华北', '746768', '中国'); INSERT INTO `orders` VALUES ('10504', 'WHITC', '4', '2016-04-11 00:00:00', '2016-05-09 00:00:00', '2016-04-18 00:00:00', '3', '59.1300', '黎先生', '佛光街 32 号', '重庆', '重庆市', '西南', '564576', '中国'); INSERT INTO `orders` VALUES ('10505', 'MEREP', '3', '2016-04-14 00:00:00', '2016-05-12 00:00:00', '2016-04-21 00:00:00', '3', '7.1300', '刘维国', '天桥路 73 号', '济南', '山东省', '华东', '547667', '中国'); INSERT INTO `orders` VALUES ('10506', 'KOENE', '9', '2016-04-15 00:00:00', '2016-05-13 00:00:00', '2016-05-02 00:00:00', '2', '21.1900', '陈先生', '银河路 38 号', '天津', '天津市', '华北', '879598', '中国'); INSERT INTO `orders` VALUES ('10507', 'ANTON', '7', '2016-04-15 00:00:00', '2016-05-13 00:00:00', '2016-04-22 00:00:00', '1', '47.4500', '胡先生', '方园东 37 号', '重庆', '重庆市', '西南', '547769', '中国'); INSERT INTO `orders` VALUES ('10508', 'OTTIK', '1', '2016-04-16 00:00:00', '2016-05-14 00:00:00', '2016-05-13 00:00:00', '2', '4.9900', '徐文彬', '科技路 783 号', '天津', '天津市', '华北', '768890', '中国'); INSERT INTO `orders` VALUES ('10509', 'BLAUS', '4', '2016-04-17 00:00:00', '2016-05-15 00:00:00', '2016-04-29 00:00:00', '1', '0.1500', '刘先生', '渝顺南街 52 号', '秦皇岛', '河北省', '华北', '475684', '中国'); INSERT INTO `orders` VALUES ('10510', 'SAVEA', '6', '2016-04-18 00:00:00', '2016-05-16 00:00:00', '2016-04-28 00:00:00', '3', '367.6300', '苏先生', '发展路 83 号', '大连', '辽宁省', '东北', '375695', '中国'); INSERT INTO `orders` VALUES ('10511', 'BONAP', '4', '2016-04-18 00:00:00', '2016-05-16 00:00:00', '2016-04-21 00:00:00', '3', '350.6400', '谢小姐', '前进路 92 号', '石家庄', '河北省', '华北', '568670', '中国'); INSERT INTO `orders` VALUES ('10512', 'FAMIA', '7', '2016-04-21 00:00:00', '2016-05-19 00:00:00', '2016-04-24 00:00:00', '2', '3.5300', '徐先生', '黄石岗路 73 号', '天津', '天津市', '华北', '468978', '中国'); INSERT INTO `orders` VALUES ('10513', 'WANDK', '7', '2016-04-22 00:00:00', '2016-06-03 00:00:00', '2016-04-28 00:00:00', '1', '105.6500', '苏先生', '明光西路 371 号', '天津', '天津市', '华北', '476964', '中国'); INSERT INTO `orders` VALUES ('10514', 'ERNSH', '3', '2016-04-22 00:00:00', '2016-05-20 00:00:00', '2016-05-16 00:00:00', '2', '789.9500', '王先生', '黄石岗路 247 号', '天津', '天津市', '华北', '468780', '中国'); INSERT INTO `orders` VALUES ('10515', 'QUICK', '2', '2016-04-23 00:00:00', '2016-05-07 00:00:00', '2016-05-23 00:00:00', '1', '204.4700', '刘先生', '崇明路 84 号', '长春', '吉林省', '东北', '458769', '中国'); INSERT INTO `orders` VALUES ('10516', 'HUNGO', '2', '2016-04-24 00:00:00', '2016-05-22 00:00:00', '2016-05-01 00:00:00', '3', '62.7800', '周先生', '德南路甲 23 号', '海口', '海南省', '华南', '678699', '中国'); INSERT INTO `orders` VALUES ('10517', 'NORTS', '3', '2016-04-24 00:00:00', '2016-05-22 00:00:00', '2016-04-29 00:00:00', '3', '32.0700', '刘小龙', '黄台北路 783 号', '南京', '江苏省', '华东', '575683', '中国'); INSERT INTO `orders` VALUES ('10518', 'TORTU', '4', '2016-04-25 00:00:00', '2016-05-09 00:00:00', '2016-05-05 00:00:00', '2', '218.1500', '王先生', '天府东街 37 号', '南昌', '江西省', '华东', '678690', '中国'); INSERT INTO `orders` VALUES ('10519', 'CHOPS', '6', '2016-04-28 00:00:00', '2016-05-26 00:00:00', '2016-05-01 00:00:00', '3', '91.7600', '林小姐', '东园西甲 34 号', '天津', '天津市', '华北', '567690', '中国'); INSERT INTO `orders` VALUES ('10520', 'SANTG', '7', '2016-04-29 00:00:00', '2016-05-27 00:00:00', '2016-05-01 00:00:00', '1', '13.3700', '余小姐', '常保阁东 85 号', '大连', '辽宁省', '东北', '475674', '中国'); INSERT INTO `orders` VALUES ('10521', 'CACTU', '8', '2016-04-29 00:00:00', '2016-05-27 00:00:00', '2016-05-02 00:00:00', '2', '17.2200', '李先生', '广发南路 895 号', '天津', '天津市', '华北', '345456', '中国'); INSERT INTO `orders` VALUES ('10522', 'LEHMS', '4', '2016-04-30 00:00:00', '2016-05-28 00:00:00', '2016-05-06 00:00:00', '1', '45.3300', '黎先生', '广发北路 15 号', '天津', '天津市', '华北', '654635', '中国'); INSERT INTO `orders` VALUES ('10523', 'SEVES', '7', '2016-05-01 00:00:00', '2016-05-29 00:00:00', '2016-05-30 00:00:00', '2', '77.6300', '成先生', '技术东街 38 号', '南京', '江苏省', '华东', '457678', '中国'); INSERT INTO `orders` VALUES ('10524', 'BERGS', '1', '2016-05-01 00:00:00', '2016-05-29 00:00:00', '2016-05-07 00:00:00', '2', '244.7900', '李先生', '临翠大街 83 号', '昆明', '云南省', '西南', '735274', '中国'); INSERT INTO `orders` VALUES ('10525', 'BONAP', '1', '2016-05-02 00:00:00', '2016-05-30 00:00:00', '2016-05-23 00:00:00', '2', '11.0600', '谢小姐', '花园东街 94 号', '济南', '山东省', '华东', '564575', '中国'); INSERT INTO `orders` VALUES ('10526', 'WARTH', '4', '2016-05-05 00:00:00', '2016-06-02 00:00:00', '2016-05-15 00:00:00', '2', '58.5900', '成先生', '黄石路 57 号', '石家庄', '河北省', '华北', '685688', '中国'); INSERT INTO `orders` VALUES ('10527', 'QUICK', '7', '2016-05-05 00:00:00', '2016-06-02 00:00:00', '2016-05-07 00:00:00', '1', '41.9000', '刘先生', '科技路 74 号', '天津', '天津市', '华北', '345479', '中国'); INSERT INTO `orders` VALUES ('10528', 'GREAL', '6', '2016-05-06 00:00:00', '2016-05-20 00:00:00', '2016-05-09 00:00:00', '2', '3.3500', '方先生', '园东路 27 号', '张家口', '河北省', '华北', '368780', '中国'); INSERT INTO `orders` VALUES ('10529', 'MAISD', '5', '2016-05-07 00:00:00', '2016-06-04 00:00:00', '2016-05-09 00:00:00', '2', '66.6900', '李柏麟', '光德南路 23 号', '厦门', '福建省', '华南', '568679', '中国'); INSERT INTO `orders` VALUES ('10530', 'PICCO', '3', '2016-05-08 00:00:00', '2016-06-05 00:00:00', '2016-05-12 00:00:00', '2', '339.2200', '林丽莉', '东园西甲 83 号', '天津', '天津市', '华北', '457568', '中国'); INSERT INTO `orders` VALUES ('10531', 'OCEAN', '7', '2016-05-08 00:00:00', '2016-06-05 00:00:00', '2016-05-19 00:00:00', '1', '8.1200', '谢丽秋', '酒大馆街 358 号', '常州', '江苏省', '华东', '798746', '中国'); INSERT INTO `orders` VALUES ('10532', 'EASTC', '7', '2016-05-09 00:00:00', '2016-06-06 00:00:00', '2016-05-12 00:00:00', '3', '74.4600', '谢小姐', '技术东街 173 号', '南京', '江苏省', '华东', '476598', '中国'); INSERT INTO `orders` VALUES ('10533', 'FOLKO', '8', '2016-05-12 00:00:00', '2016-06-09 00:00:00', '2016-05-22 00:00:00', '1', '188.0400', '陈先生', '天府路 263 号', '成都', '四川省', '西南', '685849', '中国'); INSERT INTO `orders` VALUES ('10534', 'LEHMS', '8', '2016-05-12 00:00:00', '2016-06-09 00:00:00', '2016-05-14 00:00:00', '2', '27.9400', '黎先生', '前进路 94 号', '重庆', '重庆市', '西南', '680075', '中国'); INSERT INTO `orders` VALUES ('10535', 'ANTON', '4', '2016-05-13 00:00:00', '2016-06-10 00:00:00', '2016-05-21 00:00:00', '1', '15.6400', '胡先生', '经三纬六路 237 号', '济南', '山东省', '华东', '464598', '中国'); INSERT INTO `orders` VALUES ('10536', 'LEHMS', '3', '2016-05-14 00:00:00', '2016-06-11 00:00:00', '2016-06-06 00:00:00', '2', '58.8800', '黎先生', '德明南路 23 号', '天津', '天津市', '华北', '565894', '中国'); INSERT INTO `orders` VALUES ('10537', 'RICSU', '1', '2016-05-14 00:00:00', '2016-05-28 00:00:00', '2016-05-19 00:00:00', '1', '78.8500', '方先生', '义利路 83 号', '重庆', '重庆市', '西南', '586797', '中国'); INSERT INTO `orders` VALUES ('10538', 'BSBEV', '9', '2016-05-15 00:00:00', '2016-06-12 00:00:00', '2016-05-16 00:00:00', '3', '4.8700', '徐先生', '光明路 124 号', '南京', '江苏省', '华东', '364869', '中国'); INSERT INTO `orders` VALUES ('10539', 'BSBEV', '6', '2016-05-16 00:00:00', '2016-06-13 00:00:00', '2016-05-23 00:00:00', '3', '12.3600', '徐先生', '光明路 58 号', '南京', '江苏省', '华东', '578697', '中国'); INSERT INTO `orders` VALUES ('10540', 'QUICK', '3', '2016-05-19 00:00:00', '2016-06-16 00:00:00', '2016-06-13 00:00:00', '3', '1007.6400', '刘先生', '黄石路 238 号', '石家庄', '河北省', '华北', '569870', '中国'); INSERT INTO `orders` VALUES ('10541', 'HANAR', '2', '2016-05-19 00:00:00', '2016-06-16 00:00:00', '2016-05-29 00:00:00', '1', '68.6500', '谢小姐', '东园西路 83 号', '秦皇岛', '河北省', '华北', '465790', '中国'); INSERT INTO `orders` VALUES ('10542', 'KOENE', '1', '2016-05-20 00:00:00', '2016-06-17 00:00:00', '2016-05-26 00:00:00', '3', '10.9500', '陈先生', '胜风大街 24 号', '天津', '天津市', '华北', '687609', '中国'); INSERT INTO `orders` VALUES ('10543', 'LILAS', '8', '2016-05-21 00:00:00', '2016-06-18 00:00:00', '2016-05-23 00:00:00', '2', '48.1700', '陈玉美', '常保阁西 324 号', '大连', '辽宁省', '东北', '457656', '中国'); INSERT INTO `orders` VALUES ('10544', 'LONEP', '4', '2016-05-21 00:00:00', '2016-06-18 00:00:00', '2016-05-30 00:00:00', '1', '24.9100', '胡继尧', '旧功南街 35 号', '长春', '吉林省', '东北', '564578', '中国'); INSERT INTO `orders` VALUES ('10545', 'LAZYK', '8', '2016-05-22 00:00:00', '2016-06-19 00:00:00', '2016-06-26 00:00:00', '2', '11.9200', '何先生', '德明南路 62 号', '天津', '天津市', '华北', '577890', '中国'); INSERT INTO `orders` VALUES ('10546', 'VICTE', '1', '2016-05-23 00:00:00', '2016-06-20 00:00:00', '2016-05-27 00:00:00', '3', '194.7200', '陈先生', '技术南街 834 号', '南京', '江苏省', '华东', '897800', '中国'); INSERT INTO `orders` VALUES ('10547', 'SEVES', '3', '2016-05-23 00:00:00', '2016-06-20 00:00:00', '2016-06-02 00:00:00', '2', '178.4300', '成先生', '技术东街 93 号', '南京', '江苏省', '华东', '879685', '中国'); INSERT INTO `orders` VALUES ('10548', 'TOMSP', '3', '2016-05-26 00:00:00', '2016-06-23 00:00:00', '2016-06-02 00:00:00', '2', '1.4300', '谢小姐', '德明北路 82 号', '天津', '天津市', '华北', '568679', '中国'); INSERT INTO `orders` VALUES ('10549', 'QUICK', '5', '2016-05-27 00:00:00', '2016-06-10 00:00:00', '2016-05-30 00:00:00', '1', '171.2400', '刘先生', '德明南路 129 号', '天津', '天津市', '华北', '786786', '中国'); INSERT INTO `orders` VALUES ('10550', 'GODOS', '7', '2016-05-28 00:00:00', '2016-06-25 00:00:00', '2016-06-06 00:00:00', '3', '4.3200', '锺小姐', '荣华大街 389 号', '大连', '辽宁省', '东北', '574564', '中国'); INSERT INTO `orders` VALUES ('10551', 'FURIB', '4', '2016-05-28 00:00:00', '2016-07-09 00:00:00', '2016-06-06 00:00:00', '3', '72.9500', '林小姐', '荣华路 348 号', '南京', '江苏省', '华东', '587906', '中国'); INSERT INTO `orders` VALUES ('10552', 'HILAA', '2', '2016-05-29 00:00:00', '2016-06-26 00:00:00', '2016-06-05 00:00:00', '1', '83.2200', '王先生', '德明东路 34 号', '天津', '天津市', '华北', '475690', '中国'); INSERT INTO `orders` VALUES ('10553', 'WARTH', '2', '2016-05-30 00:00:00', '2016-06-27 00:00:00', '2016-06-03 00:00:00', '2', '149.4900', '成先生', '义利西路 731 号', '昆明', '云南省', '西南', '475680', '中国'); INSERT INTO `orders` VALUES ('10554', 'OTTIK', '4', '2016-05-30 00:00:00', '2016-06-27 00:00:00', '2016-06-05 00:00:00', '3', '120.9700', '徐文彬', '荣华东里 382 号', '天津', '天津市', '华北', '465804', '中国'); INSERT INTO `orders` VALUES ('10555', 'SAVEA', '6', '2016-06-02 00:00:00', '2016-06-30 00:00:00', '2016-06-04 00:00:00', '3', '252.4900', '苏先生', '舜井路 4 号', '济南', '山东省', '华东', '479846', '中国'); INSERT INTO `orders` VALUES ('10556', 'SIMOB', '2', '2016-06-03 00:00:00', '2016-07-15 00:00:00', '2016-06-13 00:00:00', '1', '9.8000', '何先生', '英雄路 278 号', '石家庄', '河北省', '华北', '467900', '中国'); INSERT INTO `orders` VALUES ('10557', 'LEHMS', '9', '2016-06-03 00:00:00', '2016-06-17 00:00:00', '2016-06-06 00:00:00', '2', '96.7200', '黎先生', '挺进路 83 号', '天津', '天津市', '华北', '457569', '中国'); INSERT INTO `orders` VALUES ('10558', 'AROUT', '1', '2016-06-04 00:00:00', '2016-07-02 00:00:00', '2016-06-10 00:00:00', '2', '72.9700', '王先生', '滨东西路 364 号', '厦门', '福建省', '华南', '798780', '中国'); INSERT INTO `orders` VALUES ('10559', 'BLONP', '6', '2016-06-05 00:00:00', '2016-07-03 00:00:00', '2016-06-13 00:00:00', '1', '8.0500', '方先生', '功南大街 325 号', '温州', '浙江省', '华东', '687589', '中国'); INSERT INTO `orders` VALUES ('10560', 'FRANK', '8', '2016-06-06 00:00:00', '2016-07-04 00:00:00', '2016-06-09 00:00:00', '1', '36.6500', '余小姐', '胜成街 54 号', '常州', '江苏省', '华东', '976474', '中国'); INSERT INTO `orders` VALUES ('10561', 'FOLKO', '2', '2016-06-06 00:00:00', '2016-07-04 00:00:00', '2016-06-09 00:00:00', '2', '242.2100', '陈先生', '承德东路 281 号', '天津', '天津市', '华北', '768700', '中国'); INSERT INTO `orders` VALUES ('10562', 'REGGC', '1', '2016-06-09 00:00:00', '2016-07-07 00:00:00', '2016-06-12 00:00:00', '1', '22.9500', '徐先生', '天府路甲 238 号', '成都', '四川省', '西南', '476978', '中国'); INSERT INTO `orders` VALUES ('10563', 'RICAR', '2', '2016-06-10 00:00:00', '2016-07-22 00:00:00', '2016-06-24 00:00:00', '2', '60.4300', '周先生', '兖州路 83 号', '青岛', '山东省', '华东', '676868', '中国'); INSERT INTO `orders` VALUES ('10564', 'RATTC', '4', '2016-06-10 00:00:00', '2016-07-08 00:00:00', '2016-06-16 00:00:00', '3', '13.7500', '王先生', '同庆路 347 号', '重庆', '重庆市', '西南', '657888', '中国'); INSERT INTO `orders` VALUES ('10565', 'MEREP', '8', '2016-06-11 00:00:00', '2016-07-09 00:00:00', '2016-06-18 00:00:00', '2', '7.1500', '刘维国', '滨西路 464 号', '重庆', '重庆市', '西南', '878979', '中国'); INSERT INTO `orders` VALUES ('10566', 'BLONP', '9', '2016-06-12 00:00:00', '2016-07-10 00:00:00', '2016-06-18 00:00:00', '1', '88.4000', '方先生', '大庆路 45 号', '天津', '天津市', '华北', '790787', '中国'); INSERT INTO `orders` VALUES ('10567', 'HUNGO', '1', '2016-06-12 00:00:00', '2016-07-10 00:00:00', '2016-06-17 00:00:00', '1', '33.9700', '周先生', '荣华街 486 号', '秦皇岛', '河北省', '华北', '787078', '中国'); INSERT INTO `orders` VALUES ('10568', 'GALED', '3', '2016-06-13 00:00:00', '2016-07-11 00:00:00', '2016-07-09 00:00:00', '3', '6.5400', '林小姐', '方兴西大路 736 号', '重庆', '重庆市', '西南', '780979', '中国'); INSERT INTO `orders` VALUES ('10569', 'RATTC', '5', '2016-06-16 00:00:00', '2016-07-14 00:00:00', '2016-07-11 00:00:00', '1', '58.9800', '王先生', '承德西路 76 号', '天津', '天津市', '华北', '879007', '中国'); INSERT INTO `orders` VALUES ('10570', 'MEREP', '3', '2016-06-17 00:00:00', '2016-07-15 00:00:00', '2016-06-19 00:00:00', '3', '188.9900', '刘维国', '承德北路 28 号', '天津', '天津市', '华北', '870970', '中国'); INSERT INTO `orders` VALUES ('10571', 'ERNSH', '8', '2016-06-17 00:00:00', '2016-07-29 00:00:00', '2016-07-04 00:00:00', '3', '26.0600', '王先生', '高新科技园 23 号', '天津', '天津市', '华北', '564868', '中国'); INSERT INTO `orders` VALUES ('10572', 'BERGS', '3', '2016-06-18 00:00:00', '2016-07-16 00:00:00', '2016-06-25 00:00:00', '2', '116.4300', '李先生', '滨江东路 87 号', '南京', '江苏省', '华东', '578567', '中国'); INSERT INTO `orders` VALUES ('10573', 'ANTON', '7', '2016-06-19 00:00:00', '2016-07-17 00:00:00', '2016-06-20 00:00:00', '3', '84.8400', '胡先生', '城东科技园 74 号', '长春', '吉林省', '东北', '765345', '中国'); INSERT INTO `orders` VALUES ('10574', 'TRAIH', '4', '2016-06-19 00:00:00', '2016-07-17 00:00:00', '2016-06-30 00:00:00', '2', '37.6000', '周先生', '广发路 784 号', '石家庄', '河北省', '华北', '548765', '中国'); INSERT INTO `orders` VALUES ('10575', 'MORGK', '5', '2016-06-20 00:00:00', '2016-07-04 00:00:00', '2016-06-30 00:00:00', '1', '127.3400', '方建文', '科技路 37 号', '南京', '江苏省', '华东', '643798', '中国'); INSERT INTO `orders` VALUES ('10576', 'TORTU', '3', '2016-06-23 00:00:00', '2016-07-07 00:00:00', '2016-06-30 00:00:00', '3', '18.5600', '王先生', '三峡路 327 号', '南昌', '江西省', '华东', '789375', '中国'); INSERT INTO `orders` VALUES ('10577', 'TRAIH', '9', '2016-06-23 00:00:00', '2016-08-04 00:00:00', '2016-06-30 00:00:00', '2', '25.4100', '周先生', '丰饶西区 237 号', '天津', '天津市', '华北', '756456', '中国'); INSERT INTO `orders` VALUES ('10578', 'BSBEV', '4', '2016-06-24 00:00:00', '2016-07-22 00:00:00', '2016-07-25 00:00:00', '3', '29.6000', '徐先生', '平乐南区 84 号', '南京', '江苏省', '华东', '876754', '中国'); INSERT INTO `orders` VALUES ('10579', 'LETSS', '1', '2016-06-25 00:00:00', '2016-07-23 00:00:00', '2016-07-04 00:00:00', '2', '13.7300', '唐小姐', '实验西路 83 号', '天津', '天津市', '华北', '698665', '中国'); INSERT INTO `orders` VALUES ('10580', 'OTTIK', '4', '2016-06-26 00:00:00', '2016-07-24 00:00:00', '2016-07-01 00:00:00', '3', '75.8900', '徐文彬', '潼关东路 342 号', '大连', '辽宁省', '东北', '568905', '中国'); INSERT INTO `orders` VALUES ('10581', 'FAMIA', '3', '2016-06-26 00:00:00', '2016-07-24 00:00:00', '2016-07-02 00:00:00', '1', '3.0100', '徐先生', '三园北路 382 号', '天津', '天津市', '华北', '908054', '中国'); INSERT INTO `orders` VALUES ('10582', 'BLAUS', '3', '2016-06-27 00:00:00', '2016-07-25 00:00:00', '2016-07-14 00:00:00', '2', '27.7100', '刘先生', '川庆路 35 号', '昆明', '云南省', '西南', '780654', '中国'); INSERT INTO `orders` VALUES ('10583', 'WARTH', '2', '2016-06-30 00:00:00', '2016-07-28 00:00:00', '2016-07-04 00:00:00', '2', '7.2800', '成先生', '冠成园西口 348 号', '天津', '天津市', '华北', '859756', '中国'); INSERT INTO `orders` VALUES ('10584', 'BLONP', '4', '2016-06-30 00:00:00', '2016-07-28 00:00:00', '2016-07-04 00:00:00', '1', '59.1400', '方先生', '实验北路 38 号', '天津', '天津市', '华北', '695646', '中国'); INSERT INTO `orders` VALUES ('10585', 'WELLI', '7', '2016-07-01 00:00:00', '2016-07-29 00:00:00', '2016-07-10 00:00:00', '1', '13.4100', '何先生', '广林路 76 号', '常州', '江苏省', '华东', '687554', '中国'); INSERT INTO `orders` VALUES ('10586', 'REGGC', '9', '2016-07-02 00:00:00', '2016-07-30 00:00:00', '2016-07-09 00:00:00', '1', '0.4800', '徐先生', '冀庆路 59 号', '石家庄', '河北省', '华北', '767432', '中国'); INSERT INTO `orders` VALUES ('10587', 'QUEDE', '1', '2016-07-02 00:00:00', '2016-07-30 00:00:00', '2016-07-09 00:00:00', '1', '62.5200', '刘先生', '平乐区东 84 号', '厦门', '福建省', '华南', '576553', '中国'); INSERT INTO `orders` VALUES ('10588', 'QUICK', '2', '2016-07-03 00:00:00', '2016-07-31 00:00:00', '2016-07-10 00:00:00', '3', '194.6700', '刘先生', '光明西路 758 号', '张家口', '河北省', '华北', '064563', '中国'); INSERT INTO `orders` VALUES ('10589', 'GREAL', '8', '2016-07-04 00:00:00', '2016-08-01 00:00:00', '2016-07-14 00:00:00', '2', '4.4200', '方先生', '泺口大街 54 号', '济南', '山东省', '华东', '805667', '中国'); INSERT INTO `orders` VALUES ('10590', 'MEREP', '4', '2016-07-07 00:00:00', '2016-08-04 00:00:00', '2016-07-14 00:00:00', '3', '44.7700', '刘维国', '成社街 84 号', '天津', '天津市', '华北', '687574', '中国'); INSERT INTO `orders` VALUES ('10591', 'VAFFE', '1', '2016-07-07 00:00:00', '2016-07-21 00:00:00', '2016-07-16 00:00:00', '1', '55.9200', '方先生', '泺水东路 38 号', '成都', '四川省', '西南', '878545', '中国'); INSERT INTO `orders` VALUES ('10592', 'LEHMS', '3', '2016-07-08 00:00:00', '2016-08-05 00:00:00', '2016-07-16 00:00:00', '1', '32.1000', '黎先生', '黄岛区青年路 37 号', '青岛', '山东省', '华东', '786643', '中国'); INSERT INTO `orders` VALUES ('10593', 'LEHMS', '7', '2016-07-09 00:00:00', '2016-08-06 00:00:00', '2016-08-13 00:00:00', '2', '174.2000', '黎先生', '实验西路 293 号', '天津', '天津市', '华北', '806656', '中国'); INSERT INTO `orders` VALUES ('10594', 'OLDWO', '3', '2016-07-09 00:00:00', '2016-08-06 00:00:00', '2016-07-16 00:00:00', '2', '5.2400', '王俊元', '承德南街 281 号', '重庆', '重庆市', '西南', '608756', '中国'); INSERT INTO `orders` VALUES ('10595', 'ERNSH', '2', '2016-07-10 00:00:00', '2016-08-07 00:00:00', '2016-07-14 00:00:00', '1', '96.7800', '王先生', '和平路 427 号', '济南', '山东省', '华东', '086446', '中国'); INSERT INTO `orders` VALUES ('10596', 'WHITC', '8', '2016-07-11 00:00:00', '2016-08-08 00:00:00', '2016-08-12 00:00:00', '1', '16.3400', '黎先生', '北石碑路 214 号', '秦皇岛', '河北省', '华北', '657646', '中国'); INSERT INTO `orders` VALUES ('10597', 'PICCO', '7', '2016-07-11 00:00:00', '2016-08-08 00:00:00', '2016-07-18 00:00:00', '3', '35.1200', '林丽莉', '冠成园东口 82 号', '天津', '天津市', '华北', '756436', '中国'); INSERT INTO `orders` VALUES ('10598', 'RATTC', '1', '2016-07-14 00:00:00', '2016-08-11 00:00:00', '2016-07-18 00:00:00', '3', '44.4200', '王先生', '光明西街 924 号', '重庆', '重庆市', '西南', '755634', '中国'); INSERT INTO `orders` VALUES ('10599', 'BSBEV', '6', '2016-07-15 00:00:00', '2016-08-26 00:00:00', '2016-07-21 00:00:00', '3', '29.9800', '徐先生', '花园路 38 号', '南京', '江苏省', '华东', '875634', '中国'); INSERT INTO `orders` VALUES ('10600', 'HUNGC', '4', '2016-07-16 00:00:00', '2016-08-13 00:00:00', '2016-07-21 00:00:00', '1', '45.1300', '徐先生', '花园西路 348 号', '天津', '天津市', '华北', '876457', '中国'); INSERT INTO `orders` VALUES ('10601', 'HILAA', '7', '2016-07-16 00:00:00', '2016-08-27 00:00:00', '2016-07-22 00:00:00', '1', '58.3000', '王先生', '光明北路 59 号', '石家庄', '河北省', '华北', '675645', '中国'); INSERT INTO `orders` VALUES ('10602', 'VAFFE', '8', '2016-07-17 00:00:00', '2016-08-14 00:00:00', '2016-07-22 00:00:00', '2', '2.9200', '方先生', '潼关路 48 号', '长春', '吉林省', '东北', '785764', '中国'); INSERT INTO `orders` VALUES ('10603', 'SAVEA', '8', '2016-07-18 00:00:00', '2016-08-15 00:00:00', '2016-08-08 00:00:00', '2', '48.7700', '苏先生', '津门路 37 号', '天津', '天津市', '华北', '767564', '中国'); INSERT INTO `orders` VALUES ('10604', 'FURIB', '1', '2016-07-18 00:00:00', '2016-08-15 00:00:00', '2016-07-29 00:00:00', '1', '7.4600', '林小姐', '冠成园路 32 号', '南京', '江苏省', '华东', '789786', '中国'); INSERT INTO `orders` VALUES ('10605', 'MEREP', '1', '2016-07-21 00:00:00', '2016-08-18 00:00:00', '2016-07-29 00:00:00', '2', '379.1300', '刘维国', '起义路 23 号', '南昌', '江西省', '华东', '656454', '中国'); INSERT INTO `orders` VALUES ('10606', 'TRADH', '4', '2016-07-22 00:00:00', '2016-08-19 00:00:00', '2016-07-31 00:00:00', '3', '79.4000', '徐先生', '黄口江路 52 号', '海口', '海南省', '华南', '767567', '中国'); INSERT INTO `orders` VALUES ('10607', 'SAVEA', '5', '2016-07-22 00:00:00', '2016-08-19 00:00:00', '2016-07-25 00:00:00', '1', '200.2400', '苏先生', '车站东路 83 号', '天津', '天津市', '华北', '756456', '中国'); INSERT INTO `orders` VALUES ('10608', 'TOMSP', '4', '2016-07-23 00:00:00', '2016-08-20 00:00:00', '2016-08-01 00:00:00', '2', '27.7900', '谢小姐', '车站南路 72 号', '天津', '天津市', '华北', '756457', '中国'); INSERT INTO `orders` VALUES ('10609', 'DUMON', '7', '2016-07-24 00:00:00', '2016-08-21 00:00:00', '2016-07-30 00:00:00', '2', '1.8500', '刘先生', '机场东路 95 号', '天津', '天津市', '华北', '656453', '中国'); INSERT INTO `orders` VALUES ('10610', 'LAMAI', '8', '2016-07-25 00:00:00', '2016-08-22 00:00:00', '2016-08-06 00:00:00', '1', '26.7800', '苏先生', '车站路 63 号', '大连', '辽宁省', '东北', '645356', '中国'); INSERT INTO `orders` VALUES ('10611', 'WOLZA', '6', '2016-07-25 00:00:00', '2016-08-22 00:00:00', '2016-08-01 00:00:00', '2', '80.6500', '吴小姐', '车站西路 39 号', '昆明', '云南省', '西南', '756453', '中国'); INSERT INTO `orders` VALUES ('10612', 'SAVEA', '1', '2016-07-28 00:00:00', '2016-08-25 00:00:00', '2016-08-01 00:00:00', '2', '544.0800', '苏先生', '起义路甲 92 号', '天津', '天津市', '华北', '675645', '中国'); INSERT INTO `orders` VALUES ('10613', 'HILAA', '4', '2016-07-29 00:00:00', '2016-08-26 00:00:00', '2016-08-01 00:00:00', '2', '8.1100', '王先生', '长春路 37 号', '上海', '上海市', '华东', '786989', '中国'); INSERT INTO `orders` VALUES ('10614', 'BLAUS', '8', '2016-07-29 00:00:00', '2016-08-26 00:00:00', '2016-08-01 00:00:00', '3', '1.9300', '刘先生', '石碑路丁 21 号', '天津', '天津市', '华北', '786756', '中国'); INSERT INTO `orders` VALUES ('10615', 'WILMK', '2', '2016-07-30 00:00:00', '2016-08-27 00:00:00', '2016-08-06 00:00:00', '3', '0.7500', '唐小姐', '石碑路甲 14 号', '天津', '天津市', '华北', '564586', '中国'); INSERT INTO `orders` VALUES ('10616', 'GREAL', '1', '2016-07-31 00:00:00', '2016-08-28 00:00:00', '2016-08-05 00:00:00', '2', '116.5300', '方先生', '威成路 32 号', '厦门', '福建省', '华南', '679975', '中国'); INSERT INTO `orders` VALUES ('10617', 'GREAL', '4', '2016-07-31 00:00:00', '2016-08-28 00:00:00', '2016-08-04 00:00:00', '2', '18.5300', '方先生', '明成西街 47 号', '天津', '天津市', '华北', '678689', '中国'); INSERT INTO `orders` VALUES ('10618', 'MEREP', '1', '2016-08-01 00:00:00', '2016-09-12 00:00:00', '2016-08-08 00:00:00', '1', '154.6800', '刘维国', '舜井街 56 号', '济南', '山东省', '华东', '567659', '中国'); INSERT INTO `orders` VALUES ('10619', 'MEREP', '3', '2016-08-04 00:00:00', '2016-09-01 00:00:00', '2016-08-07 00:00:00', '3', '91.0500', '刘维国', '使馆路 37 号', '温州', '浙江省', '华东', '656759', '中国'); INSERT INTO `orders` VALUES ('10620', 'LAUGB', '2', '2016-08-05 00:00:00', '2016-09-02 00:00:00', '2016-08-14 00:00:00', '3', '0.9400', '成先生', '黄池路 93 号', '成都', '四川省', '西南', '768786', '中国'); INSERT INTO `orders` VALUES ('10621', 'ISLAT', '4', '2016-08-05 00:00:00', '2016-09-02 00:00:00', '2016-08-11 00:00:00', '2', '23.7300', '方先生', '威刚街 48 号', '温州', '浙江省', '华东', '756586', '中国'); INSERT INTO `orders` VALUES ('10622', 'RICAR', '4', '2016-08-06 00:00:00', '2016-09-03 00:00:00', '2016-08-11 00:00:00', '3', '50.9700', '周先生', '花园西路 83 号', '天津', '天津市', '华北', '677868', '中国'); INSERT INTO `orders` VALUES ('10623', 'FRANK', '8', '2016-08-07 00:00:00', '2016-09-04 00:00:00', '2016-08-12 00:00:00', '2', '97.1800', '余小姐', '光明北路 21 号', '天津', '天津市', '华北', '080878', '中国'); INSERT INTO `orders` VALUES ('10624', 'THECR', '4', '2016-08-07 00:00:00', '2016-09-04 00:00:00', '2016-08-19 00:00:00', '2', '94.8000', '刘先生', '潼关路 4 号', '重庆', '重庆市', '西南', '674545', '中国'); INSERT INTO `orders` VALUES ('10625', 'ANATR', '3', '2016-08-08 00:00:00', '2016-09-05 00:00:00', '2016-08-14 00:00:00', '1', '43.9000', '黄小姐', '津门路 7 号', '秦皇岛', '河北省', '华北', '325456', '中国'); INSERT INTO `orders` VALUES ('10626', 'BERGS', '1', '2016-08-11 00:00:00', '2016-09-08 00:00:00', '2016-08-20 00:00:00', '2', '138.6900', '李先生', '冠成园路 3 号', '南京', '江苏省', '华东', '564536', '中国'); INSERT INTO `orders` VALUES ('10627', 'SAVEA', '8', '2016-08-11 00:00:00', '2016-09-22 00:00:00', '2016-08-21 00:00:00', '3', '107.4600', '苏先生', '起义路 2 号', '天津', '天津市', '华北', '967857', '中国'); INSERT INTO `orders` VALUES ('10628', 'BLONP', '4', '2016-08-12 00:00:00', '2016-09-09 00:00:00', '2016-08-20 00:00:00', '3', '30.3600', '方先生', '黄口江路 5 号', '重庆', '重庆市', '西南', '077885', '中国'); INSERT INTO `orders` VALUES ('10629', 'GODOS', '4', '2016-08-12 00:00:00', '2016-09-09 00:00:00', '2016-08-20 00:00:00', '3', '85.4600', '锺小姐', '车站东路 8 号', '天津', '天津市', '华北', '980965', '中国'); INSERT INTO `orders` VALUES ('10630', 'KOENE', '1', '2016-08-13 00:00:00', '2016-09-10 00:00:00', '2016-08-19 00:00:00', '2', '32.3500', '陈先生', '广渠北路 82 号', '石家庄', '河北省', '华北', '089767', '中国'); INSERT INTO `orders` VALUES ('10631', 'LAMAI', '8', '2016-08-14 00:00:00', '2016-09-11 00:00:00', '2016-08-15 00:00:00', '1', '0.8700', '苏先生', '滨海路 3 号', '天津', '天津市', '华北', '708675', '中国'); INSERT INTO `orders` VALUES ('10632', 'WANDK', '8', '2016-08-14 00:00:00', '2016-09-11 00:00:00', '2016-08-19 00:00:00', '1', '41.3800', '苏先生', '滨海路 27 号', '天津', '天津市', '华北', '976574', '中国'); INSERT INTO `orders` VALUES ('10633', 'ERNSH', '7', '2016-08-15 00:00:00', '2016-09-12 00:00:00', '2016-08-18 00:00:00', '3', '477.9000', '王先生', '阜石路 73 号', '北京', '北京市', '华北', '175678', '中国'); INSERT INTO `orders` VALUES ('10634', 'FOLIG', '4', '2016-08-15 00:00:00', '2016-09-12 00:00:00', '2016-08-21 00:00:00', '3', '487.3800', '方先生', '三峡路 81 号', '南京', '江苏省', '华东', '798707', '中国'); INSERT INTO `orders` VALUES ('10635', 'MAGAA', '8', '2016-08-18 00:00:00', '2016-09-15 00:00:00', '2016-08-21 00:00:00', '3', '47.4600', '王炫皓', '丰饶西区 19 号', '南昌', '江西省', '华东', '345346', '中国'); INSERT INTO `orders` VALUES ('10636', 'WARTH', '4', '2016-08-19 00:00:00', '2016-09-16 00:00:00', '2016-08-26 00:00:00', '1', '1.1500', '成先生', '平乐南区 11 号', '海口', '海南省', '华南', '678690', '中国'); INSERT INTO `orders` VALUES ('10637', 'QUEEN', '6', '2016-08-19 00:00:00', '2016-09-16 00:00:00', '2016-08-26 00:00:00', '1', '201.2900', '方先生', '实验西路 13 号', '天津', '天津市', '华北', '456580', '中国'); INSERT INTO `orders` VALUES ('10638', 'LINOD', '3', '2016-08-20 00:00:00', '2016-09-17 00:00:00', '2016-09-01 00:00:00', '1', '158.4400', '黄雅玲', '潼关东路 5 号', '天津', '天津市', '华北', '470704', '中国'); INSERT INTO `orders` VALUES ('10639', 'SANTG', '7', '2016-08-20 00:00:00', '2016-09-17 00:00:00', '2016-08-27 00:00:00', '3', '38.6400', '余小姐', '广渠路 72 号', '北京', '北京市', '华北', '165806', '中国'); INSERT INTO `orders` VALUES ('10640', 'WANDK', '4', '2016-08-21 00:00:00', '2016-09-18 00:00:00', '2016-08-28 00:00:00', '1', '23.5500', '苏先生', '广发路 3 号', '昆明', '云南省', '西南', '456467', '中国'); INSERT INTO `orders` VALUES ('10641', 'HILAA', '4', '2016-08-22 00:00:00', '2016-09-19 00:00:00', '2016-08-26 00:00:00', '2', '179.6100', '王先生', '科技路 7 号', '大连', '辽宁省', '东北', '098056', '中国'); INSERT INTO `orders` VALUES ('10642', 'SIMOB', '7', '2016-08-22 00:00:00', '2016-09-19 00:00:00', '2016-09-05 00:00:00', '3', '41.8900', '何先生', '新疆路 287 号', '上海', '上海市', '华东', '543547', '中国'); INSERT INTO `orders` VALUES ('10643', 'BOLID', '6', '2016-08-25 00:00:00', '2016-09-22 00:00:00', '2016-09-02 00:00:00', '1', '29.4600', '王先生', '甘肃路 5 号', '上海', '上海市', '华东', '754654', '中国'); INSERT INTO `orders` VALUES ('10644', 'WELLI', '3', '2016-08-25 00:00:00', '2016-09-22 00:00:00', '2016-09-01 00:00:00', '2', '0.1400', '何先生', '常保阁西 14 号', '天津', '天津市', '华北', '342345', '中国'); INSERT INTO `orders` VALUES ('10645', 'HANAR', '4', '2016-08-26 00:00:00', '2016-09-23 00:00:00', '2016-09-02 00:00:00', '1', '12.4100', '谢小姐', '旧功南街 13 号', '厦门', '福建省', '华南', '356799', '中国'); INSERT INTO `orders` VALUES ('10646', 'HUNGO', '9', '2016-08-27 00:00:00', '2016-10-08 00:00:00', '2016-09-03 00:00:00', '3', '142.3300', '周先生', '德明南路 10 号', '石家庄', '河北省', '华北', '456980', '中国'); INSERT INTO `orders` VALUES ('10647', 'QUEDE', '4', '2016-08-27 00:00:00', '2016-09-10 00:00:00', '2016-09-03 00:00:00', '2', '45.5400', '刘先生', '承德北街 281 号', '常州', '江苏省', '华东', '345457', '中国'); INSERT INTO `orders` VALUES ('10648', 'RICAR', '5', '2016-08-28 00:00:00', '2016-10-09 00:00:00', '2016-09-09 00:00:00', '2', '14.2500', '周先生', '通港路 297 号', '张家口', '河北省', '华北', '456453', '中国'); INSERT INTO `orders` VALUES ('10649', 'MAISD', '5', '2016-08-28 00:00:00', '2016-09-25 00:00:00', '2016-08-29 00:00:00', '3', '6.2000', '李柏麟', '达江路 83 号', '成都', '四川省', '西南', '456587', '中国'); INSERT INTO `orders` VALUES ('10650', 'FAMIA', '5', '2016-08-29 00:00:00', '2016-09-26 00:00:00', '2016-09-03 00:00:00', '3', '176.8100', '徐先生', '栈桥南路 78 号', '青岛', '山东省', '华东', '345765', '中国'); INSERT INTO `orders` VALUES ('10651', 'WANDK', '8', '2016-09-01 00:00:00', '2016-09-29 00:00:00', '2016-09-11 00:00:00', '2', '20.6000', '苏先生', '东八里庄 91 号', '北京', '北京市', '华北', '156583', '中国'); INSERT INTO `orders` VALUES ('10652', 'GOURL', '4', '2016-09-01 00:00:00', '2016-09-29 00:00:00', '2016-09-08 00:00:00', '2', '7.1400', '刘先生', '通港西路 82 号', '天津', '天津市', '华北', '457690', '中国'); INSERT INTO `orders` VALUES ('10653', 'FRANK', '1', '2016-09-02 00:00:00', '2016-09-30 00:00:00', '2016-09-19 00:00:00', '1', '93.2500', '余小姐', '滨海路 434 号', '天津', '天津市', '华北', '457656', '中国'); INSERT INTO `orders` VALUES ('10654', 'BERGS', '5', '2016-09-02 00:00:00', '2016-09-30 00:00:00', '2016-09-11 00:00:00', '1', '55.2600', '李先生', '广发路 53 号', '南京', '江苏省', '华东', '208563', '中国'); INSERT INTO `orders` VALUES ('10655', 'REGGC', '1', '2016-09-03 00:00:00', '2016-10-01 00:00:00', '2016-09-11 00:00:00', '2', '4.4100', '徐先生', '科技路 37 号', '秦皇岛', '河北省', '华北', '070857', '中国'); INSERT INTO `orders` VALUES ('10656', 'GREAL', '6', '2016-09-04 00:00:00', '2016-10-02 00:00:00', '2016-09-10 00:00:00', '1', '57.1500', '方先生', '湖北路 21 号', '上海', '上海市', '华东', '978096', '中国'); INSERT INTO `orders` VALUES ('10657', 'SAVEA', '2', '2016-09-04 00:00:00', '2016-10-02 00:00:00', '2016-09-15 00:00:00', '2', '352.6900', '苏先生', '湖北路 62 号', '上海', '上海市', '华东', '067985', '中国'); INSERT INTO `orders` VALUES ('10658', 'QUICK', '4', '2016-09-05 00:00:00', '2016-10-03 00:00:00', '2016-09-08 00:00:00', '1', '364.1500', '刘先生', '新疆路甲 3 号', '重庆', '重庆市', '西南', '369780', '中国'); INSERT INTO `orders` VALUES ('10659', 'QUEEN', '7', '2016-09-05 00:00:00', '2016-10-03 00:00:00', '2016-09-10 00:00:00', '2', '105.8100', '方先生', '甘肃路丁 5 号', '石家庄', '河北省', '华北', '345876', '中国'); INSERT INTO `orders` VALUES ('10660', 'HUNGC', '8', '2016-09-08 00:00:00', '2016-10-06 00:00:00', '2016-10-15 00:00:00', '1', '111.2900', '徐先生', '常保阁甲 14 号', '天津', '天津市', '华北', '043944', '中国'); INSERT INTO `orders` VALUES ('10661', 'HUNGO', '7', '2016-09-09 00:00:00', '2016-10-07 00:00:00', '2016-09-15 00:00:00', '3', '17.5500', '周先生', '旧功街 13 号', '大连', '辽宁省', '东北', '390283', '中国'); INSERT INTO `orders` VALUES ('10662', 'LONEP', '3', '2016-09-09 00:00:00', '2016-10-07 00:00:00', '2016-09-18 00:00:00', '2', '1.2800', '胡继尧', '德明路 10 号', '天津', '天津市', '华北', '493479', '中国'); INSERT INTO `orders` VALUES ('10663', 'BONAP', '2', '2016-09-10 00:00:00', '2016-09-24 00:00:00', '2016-10-03 00:00:00', '2', '113.1500', '谢小姐', '承德东街 281 号', '南昌', '江西省', '华东', '989333', '中国'); INSERT INTO `orders` VALUES ('10664', 'FURIB', '1', '2016-09-10 00:00:00', '2016-10-08 00:00:00', '2016-09-19 00:00:00', '3', '1.2700', '林小姐', '通港南路 297 号', '南京', '江苏省', '华东', '978894', '中国'); INSERT INTO `orders` VALUES ('10665', 'LONEP', '1', '2016-09-11 00:00:00', '2016-10-09 00:00:00', '2016-09-17 00:00:00', '2', '26.3100', '胡继尧', '达明西路 83 号', '天津', '天津市', '华北', '493874', '中国'); INSERT INTO `orders` VALUES ('10666', 'RICSU', '7', '2016-09-12 00:00:00', '2016-10-10 00:00:00', '2016-09-22 00:00:00', '2', '232.4200', '方先生', '箭桥南路 78 号', '海口', '海南省', '华南', '837487', '中国'); INSERT INTO `orders` VALUES ('10667', 'ERNSH', '7', '2016-09-12 00:00:00', '2016-10-10 00:00:00', '2016-09-19 00:00:00', '1', '78.0900', '王先生', '东八路 91 号', '天津', '天津市', '华北', '080948', '中国'); INSERT INTO `orders` VALUES ('10668', 'WANDK', '1', '2016-09-15 00:00:00', '2016-10-13 00:00:00', '2016-09-23 00:00:00', '2', '47.2200', '苏先生', '通明西路 82 号', '天津', '天津市', '华北', '084074', '中国'); INSERT INTO `orders` VALUES ('10669', 'SIMOB', '2', '2016-09-15 00:00:00', '2016-10-13 00:00:00', '2016-09-22 00:00:00', '1', '24.3900', '何先生', '滨海南路 434 号', '昆明', '云南省', '西南', '938497', '中国'); INSERT INTO `orders` VALUES ('10670', 'FRANK', '4', '2016-09-16 00:00:00', '2016-10-14 00:00:00', '2016-09-18 00:00:00', '1', '203.4800', '余小姐', '广发大街 53 号', '大连', '辽宁省', '东北', '493284', '中国'); INSERT INTO `orders` VALUES ('10671', 'FRANR', '1', '2016-09-17 00:00:00', '2016-10-15 00:00:00', '2016-09-24 00:00:00', '1', '30.3400', '苏先生', '科技街 37 号', '天津', '天津市', '华北', '423466', '中国'); INSERT INTO `orders` VALUES ('10672', 'BERGS', '9', '2016-09-17 00:00:00', '2016-10-01 00:00:00', '2016-09-26 00:00:00', '2', '95.7500', '李先生', '潮北路 21 号', '南京', '江苏省', '华东', '876835', '中国'); INSERT INTO `orders` VALUES ('10673', 'WILMK', '2', '2016-09-18 00:00:00', '2016-10-16 00:00:00', '2016-09-19 00:00:00', '1', '22.7600', '唐小姐', '潮源东路 62 号', '天津', '天津市', '华北', '756879', '中国'); INSERT INTO `orders` VALUES ('10674', 'ISLAT', '4', '2016-09-18 00:00:00', '2016-10-16 00:00:00', '2016-09-30 00:00:00', '2', '0.9000', '方先生', '红旗大街 38 号', '厦门', '福建省', '华南', '356356', '中国'); INSERT INTO `orders` VALUES ('10675', 'FRANK', '5', '2016-09-19 00:00:00', '2016-10-17 00:00:00', '2016-09-23 00:00:00', '2', '31.8500', '余小姐', '联合北路 49 号', '常州', '江苏省', '华东', '978956', '中国'); INSERT INTO `orders` VALUES ('10676', 'TORTU', '2', '2016-09-22 00:00:00', '2016-10-20 00:00:00', '2016-09-29 00:00:00', '2', '2.0100', '王先生', '联合西路 18 号', '常州', '江苏省', '华东', '346573', '中国'); INSERT INTO `orders` VALUES ('10677', 'ANTON', '1', '2016-09-22 00:00:00', '2016-10-20 00:00:00', '2016-09-26 00:00:00', '3', '4.0300', '胡先生', '广联西路 39 号', '天津', '天津市', '华北', '356457', '中国'); INSERT INTO `orders` VALUES ('10678', 'SAVEA', '7', '2016-09-23 00:00:00', '2016-10-21 00:00:00', '2016-10-16 00:00:00', '3', '388.9800', '苏先生', '成江南路 28 号', '张家口', '河北省', '华北', '585004', '中国'); INSERT INTO `orders` VALUES ('10679', 'BLONP', '8', '2016-09-23 00:00:00', '2016-10-21 00:00:00', '2016-09-30 00:00:00', '3', '27.9400', '方先生', '承德路甲 42 号', '青岛', '山东省', '华东', '458340', '中国'); INSERT INTO `orders` VALUES ('10680', 'OLDWO', '1', '2016-09-24 00:00:00', '2016-10-22 00:00:00', '2016-09-26 00:00:00', '1', '26.6100', '王俊元', '潮源东路 66 号', '天津', '天津市', '华北', '344095', '中国'); INSERT INTO `orders` VALUES ('10681', 'GREAL', '3', '2016-09-25 00:00:00', '2016-10-23 00:00:00', '2016-09-30 00:00:00', '3', '76.1300', '方先生', '红旗大街 33 号', '温州', '浙江省', '华东', '050430', '中国'); INSERT INTO `orders` VALUES ('10682', 'ANTON', '3', '2016-09-25 00:00:00', '2016-10-23 00:00:00', '2016-10-01 00:00:00', '2', '36.1300', '胡先生', '联合北路 44 号', '天津', '天津市', '华北', '496809', '中国'); INSERT INTO `orders` VALUES ('10683', 'DUMON', '2', '2016-09-26 00:00:00', '2016-10-24 00:00:00', '2016-10-01 00:00:00', '1', '4.4000', '刘先生', '联合西路 11 号', '秦皇岛', '河北省', '华北', '498569', '中国'); INSERT INTO `orders` VALUES ('10684', 'OTTIK', '3', '2016-09-26 00:00:00', '2016-10-24 00:00:00', '2016-09-30 00:00:00', '1', '145.6300', '徐文彬', '广联西路 33 号', '重庆', '重庆市', '西南', '468093', '中国'); INSERT INTO `orders` VALUES ('10685', 'GOURL', '4', '2016-09-29 00:00:00', '2016-10-13 00:00:00', '2016-10-03 00:00:00', '2', '33.7500', '刘先生', '成江南路 22 号', '济南', '山东省', '华东', '676585', '中国'); INSERT INTO `orders` VALUES ('10686', 'PICCO', '2', '2016-09-30 00:00:00', '2016-10-28 00:00:00', '2016-10-08 00:00:00', '1', '96.5000', '林丽莉', '通州区北广路 74 号', '北京', '北京市', '华北', '143645', '中国'); INSERT INTO `orders` VALUES ('10687', 'HUNGO', '9', '2016-09-30 00:00:00', '2016-10-28 00:00:00', '2016-10-30 00:00:00', '2', '296.4300', '周先生', '丰台区方庄小区 48 号', '北京', '北京市', '华北', '165745', '中国'); INSERT INTO `orders` VALUES ('10688', 'VAFFE', '4', '2016-10-01 00:00:00', '2016-10-15 00:00:00', '2016-10-07 00:00:00', '2', '299.0900', '方先生', '德明路甲 10 号', '重庆', '重庆市', '西南', '453534', '中国'); INSERT INTO `orders` VALUES ('10689', 'BERGS', '1', '2016-10-01 00:00:00', '2016-10-29 00:00:00', '2016-10-07 00:00:00', '2', '13.4200', '李先生', '承德东街甲 281 号', '南京', '江苏省', '华东', '564535', '中国'); INSERT INTO `orders` VALUES ('10690', 'HANAR', '1', '2016-10-02 00:00:00', '2016-10-30 00:00:00', '2016-10-03 00:00:00', '1', '15.8000', '谢小姐', '通港南路丁 297 号', '石家庄', '河北省', '华北', '765473', '中国'); INSERT INTO `orders` VALUES ('10691', 'QUICK', '2', '2016-10-03 00:00:00', '2016-11-14 00:00:00', '2016-10-22 00:00:00', '2', '810.0500', '刘先生', '达明西路丁 83 号', '天津', '天津市', '华北', '563576', '中国'); INSERT INTO `orders` VALUES ('10692', 'BSBEV', '9', '2016-10-03 00:00:00', '2016-10-31 00:00:00', '2016-10-13 00:00:00', '2', '61.0200', '黎先生', '箭桥南路甲 78 号', '南京', '江苏省', '华东', '635367', '中国'); INSERT INTO `orders` VALUES ('10693', 'WHITC', '3', '2016-10-06 00:00:00', '2016-10-20 00:00:00', '2016-10-10 00:00:00', '3', '139.3400', '黎先生', '东八路甲 91 号', '天津', '天津市', '华北', '675635', '中国'); INSERT INTO `orders` VALUES ('10694', 'QUICK', '8', '2016-10-06 00:00:00', '2016-11-03 00:00:00', '2016-10-09 00:00:00', '3', '398.3600', '刘先生', '通明西路甲 82 号', '天津', '天津市', '华北', '565477', '中国'); INSERT INTO `orders` VALUES ('10695', 'WILMK', '7', '2016-10-07 00:00:00', '2016-11-18 00:00:00', '2016-10-14 00:00:00', '1', '16.7200', '唐小姐', '滨海南路丁 434 号', '天津', '天津市', '华北', '345346', '中国'); INSERT INTO `orders` VALUES ('10696', 'WHITC', '8', '2016-10-08 00:00:00', '2016-11-19 00:00:00', '2016-10-14 00:00:00', '3', '102.5500', '黎先生', '滨海东路甲 864 号', '海口', '海南省', '华南', '675673', '中国'); INSERT INTO `orders` VALUES ('10697', 'LINOD', '3', '2016-10-08 00:00:00', '2016-11-05 00:00:00', '2016-10-14 00:00:00', '1', '45.5200', '黄雅玲', '西三旗 463 号', '北京', '北京市', '华北', '178533', '中国'); INSERT INTO `orders` VALUES ('10698', 'ERNSH', '4', '2016-10-09 00:00:00', '2016-11-06 00:00:00', '2016-10-17 00:00:00', '1', '272.4700', '王先生', '通港碑街 7 号', '昆明', '云南省', '西南', '657689', '中国'); INSERT INTO `orders` VALUES ('10699', 'MORGK', '3', '2016-10-09 00:00:00', '2016-11-06 00:00:00', '2016-10-13 00:00:00', '3', '0.5800', '方建文', '达明街 23 号', '南京', '江苏省', '华东', '456589', '中国'); INSERT INTO `orders` VALUES ('10700', 'SAVEA', '3', '2016-10-10 00:00:00', '2016-11-07 00:00:00', '2016-10-16 00:00:00', '1', '65.1000', '苏先生', '箭桥街 178 号', '大连', '辽宁省', '东北', '634743', '中国'); INSERT INTO `orders` VALUES ('10701', 'HUNGO', '6', '2016-10-13 00:00:00', '2016-10-27 00:00:00', '2016-10-15 00:00:00', '3', '220.3100', '周先生', '河北街 15 号', '上海', '上海市', '华东', '896784', '中国'); INSERT INTO `orders` VALUES ('10702', 'ANATR', '1', '2016-10-13 00:00:00', '2016-11-24 00:00:00', '2016-10-21 00:00:00', '1', '23.9400', '锺小姐', '承德路甲 82 号', '天津', '天津市', '华北', '876842', '中国'); INSERT INTO `orders` VALUES ('10703', 'FOLKO', '6', '2016-10-14 00:00:00', '2016-11-11 00:00:00', '2016-10-20 00:00:00', '2', '152.3000', '陈先生', '西广联路 49 号', '厦门', '福建省', '华南', '857352', '中国'); INSERT INTO `orders` VALUES ('10704', 'QUEEN', '6', '2016-10-14 00:00:00', '2016-11-11 00:00:00', '2016-11-07 00:00:00', '1', '4.7800', '方先生', '南成江路 68 号', '天津', '天津市', '华北', '267579', '中国'); INSERT INTO `orders` VALUES ('10705', 'HILAA', '9', '2016-10-15 00:00:00', '2016-11-12 00:00:00', '2016-11-18 00:00:00', '2', '3.5200', '王先生', '东承德路 72 号', '常州', '江苏省', '华东', '235475', '中国'); INSERT INTO `orders` VALUES ('10706', 'OLDWO', '8', '2016-10-16 00:00:00', '2016-11-13 00:00:00', '2016-10-21 00:00:00', '3', '135.6300', '王俊元', '东潮源路 36 号', '石家庄', '河北省', '华北', '546527', '中国'); INSERT INTO `orders` VALUES ('10707', 'AROUT', '4', '2016-10-16 00:00:00', '2016-10-30 00:00:00', '2016-10-23 00:00:00', '3', '21.7400', '王先生', '望蜀路 384 号', '成都', '四川省', '西南', '645767', '中国'); INSERT INTO `orders` VALUES ('10708', 'THEBI', '6', '2016-10-17 00:00:00', '2016-11-28 00:00:00', '2016-11-05 00:00:00', '2', '2.9600', '方先生', '明智路 932 号', '张家口', '河北省', '华北', '568768', '中国'); INSERT INTO `orders` VALUES ('10709', 'GOURL', '1', '2016-10-17 00:00:00', '2016-11-14 00:00:00', '2016-11-20 00:00:00', '3', '210.8000', '刘先生', '北京路 17 号', '上海', '上海市', '华东', '678609', '中国'); INSERT INTO `orders` VALUES ('10710', 'FRANS', '1', '2016-10-20 00:00:00', '2016-11-17 00:00:00', '2016-10-23 00:00:00', '1', '4.9800', '成先生', '老山北里 23 号', '北京', '北京市', '华北', '178845', '中国'); INSERT INTO `orders` VALUES ('10711', 'SAVEA', '5', '2016-10-21 00:00:00', '2016-12-02 00:00:00', '2016-10-29 00:00:00', '2', '52.4100', '苏先生', '使馆南路 37 号', '温州', '浙江省', '华东', '976324', '中国'); INSERT INTO `orders` VALUES ('10712', 'HUNGO', '3', '2016-10-21 00:00:00', '2016-11-18 00:00:00', '2016-10-31 00:00:00', '1', '89.9300', '周先生', '黄池北路 93 号', '秦皇岛', '河北省', '华北', '863257', '中国'); INSERT INTO `orders` VALUES ('10713', 'SAVEA', '1', '2016-10-22 00:00:00', '2016-11-19 00:00:00', '2016-10-24 00:00:00', '1', '167.0500', '苏先生', '威刚大街 48 号', '天津', '天津市', '华北', '989694', '中国'); INSERT INTO `orders` VALUES ('10714', 'SAVEA', '5', '2016-10-22 00:00:00', '2016-11-19 00:00:00', '2016-10-27 00:00:00', '3', '24.4900', '苏先生', '花园大路 83 号', '温州', '浙江省', '华东', '076446', '中国'); INSERT INTO `orders` VALUES ('10715', 'BONAP', '3', '2016-10-23 00:00:00', '2016-11-06 00:00:00', '2016-10-29 00:00:00', '1', '63.2000', '谢小姐', '光明东路 21 号', '温州', '浙江省', '华东', '549573', '中国'); INSERT INTO `orders` VALUES ('10716', 'RANCH', '4', '2016-10-24 00:00:00', '2016-11-21 00:00:00', '2016-10-27 00:00:00', '2', '22.5700', '谢小姐', '潼关西路 4 号', '温州', '浙江省', '华东', '597420', '中国'); INSERT INTO `orders` VALUES ('10717', 'FRANK', '1', '2016-10-24 00:00:00', '2016-11-21 00:00:00', '2016-10-29 00:00:00', '2', '59.2500', '余小姐', '津门北路 7 号', '天津', '天津市', '华北', '975383', '中国'); INSERT INTO `orders` VALUES ('10718', 'KOENE', '1', '2016-10-27 00:00:00', '2016-11-24 00:00:00', '2016-10-29 00:00:00', '3', '170.8800', '陈先生', '冠成南路 3 号', '重庆', '重庆市', '西南', '653892', '中国'); INSERT INTO `orders` VALUES ('10719', 'LETSS', '8', '2016-10-27 00:00:00', '2016-11-24 00:00:00', '2016-11-05 00:00:00', '2', '51.4400', '唐小姐', '起义东路 2 号', '天津', '天津市', '华北', '863642', '中国'); INSERT INTO `orders` VALUES ('10720', 'QUEDE', '8', '2016-10-28 00:00:00', '2016-11-11 00:00:00', '2016-11-05 00:00:00', '2', '9.5300', '刘先生', '黄口江西路 5 号', '天津', '天津市', '华北', '085226', '中国'); INSERT INTO `orders` VALUES ('10721', 'QUICK', '5', '2016-10-29 00:00:00', '2016-11-26 00:00:00', '2016-10-31 00:00:00', '3', '48.9200', '刘先生', '东车站路 8 号', '南昌', '江西省', '华东', '855464', '中国'); INSERT INTO `orders` VALUES ('10722', 'SAVEA', '8', '2016-10-29 00:00:00', '2016-12-10 00:00:00', '2016-11-04 00:00:00', '1', '74.5800', '苏先生', '北广渠路 82 号', '天津', '天津市', '华北', '854390', '中国'); INSERT INTO `orders` VALUES ('10723', 'WHITC', '3', '2016-10-30 00:00:00', '2016-11-27 00:00:00', '2016-11-25 00:00:00', '1', '21.7200', '黎先生', '滨海大路 3 号', '大连', '辽宁省', '东北', '075328', '中国'); INSERT INTO `orders` VALUES ('10724', 'MEREP', '8', '2016-10-30 00:00:00', '2016-12-11 00:00:00', '2016-11-05 00:00:00', '2', '57.7500', '刘维国', '和平西街 38 号', '北京', '北京市', '华北', '153250', '中国'); INSERT INTO `orders` VALUES ('10725', 'FAMIA', '4', '2016-10-31 00:00:00', '2016-11-28 00:00:00', '2016-11-05 00:00:00', '3', '10.8300', '徐先生', '玉泉路 128 号', '北京', '北京市', '华北', '154430', '中国'); INSERT INTO `orders` VALUES ('10726', 'EASTC', '4', '2016-11-03 00:00:00', '2016-11-17 00:00:00', '2016-12-05 00:00:00', '1', '16.5600', '谢小姐', '黄花路 328 号', '南京', '江苏省', '华东', '642853', '中国'); INSERT INTO `orders` VALUES ('10727', 'REGGC', '2', '2016-11-03 00:00:00', '2016-12-01 00:00:00', '2016-12-05 00:00:00', '1', '89.9000', '徐先生', '扶翠路 82 号', '昆明', '云南省', '西南', '421007', '中国'); INSERT INTO `orders` VALUES ('10728', 'QUEEN', '4', '2016-11-04 00:00:00', '2016-12-02 00:00:00', '2016-11-11 00:00:00', '2', '58.3300', '方先生', '石条街 37 号', '天津', '天津市', '华北', '054870', '中国'); INSERT INTO `orders` VALUES ('10729', 'LINOD', '8', '2016-11-04 00:00:00', '2016-12-16 00:00:00', '2016-11-14 00:00:00', '3', '141.0600', '黄雅玲', '北京路 63 号', '上海', '上海市', '华东', '367953', '中国'); INSERT INTO `orders` VALUES ('10730', 'BONAP', '5', '2016-11-05 00:00:00', '2016-12-03 00:00:00', '2016-11-14 00:00:00', '1', '20.1200', '谢小姐', '方远大街 38 号', '大连', '辽宁省', '东北', '130087', '中国'); INSERT INTO `orders` VALUES ('10731', 'CHOPS', '7', '2016-11-06 00:00:00', '2016-12-04 00:00:00', '2016-11-14 00:00:00', '1', '96.6500', '林小姐', '方园路 37 号', '天津', '天津市', '华北', '301243', '中国'); INSERT INTO `orders` VALUES ('10732', 'BONAP', '3', '2016-11-06 00:00:00', '2016-12-04 00:00:00', '2016-11-07 00:00:00', '1', '16.9700', '谢小姐', '青年新路 334 号', '厦门', '福建省', '华南', '130081', '中国'); INSERT INTO `orders` VALUES ('10733', 'BERGS', '1', '2016-11-07 00:00:00', '2016-12-05 00:00:00', '2016-11-10 00:00:00', '3', '110.1100', '李先生', '青龙新路 37 号', '南京', '江苏省', '华东', '468421', '中国'); INSERT INTO `orders` VALUES ('10734', 'GOURL', '2', '2016-11-07 00:00:00', '2016-12-05 00:00:00', '2016-11-12 00:00:00', '3', '1.6300', '刘先生', '明德新路 382 号', '常州', '江苏省', '华东', '170743', '中国'); INSERT INTO `orders` VALUES ('10735', 'LETSS', '6', '2016-11-10 00:00:00', '2016-12-08 00:00:00', '2016-11-21 00:00:00', '2', '45.9700', '唐小姐', '冀光新街 468 号', '常州', '江苏省', '华东', '372156', '中国'); INSERT INTO `orders` VALUES ('10736', 'HUNGO', '9', '2016-11-11 00:00:00', '2016-12-09 00:00:00', '2016-11-21 00:00:00', '2', '44.1000', '周先生', '阁新街 89 号', '成都', '四川省', '西南', '643170', '中国'); INSERT INTO `orders` VALUES ('10737', 'VINET', '2', '2016-11-11 00:00:00', '2016-12-09 00:00:00', '2016-11-18 00:00:00', '2', '7.7900', '余小姐', '龙山路 47 号', '青岛', '山东省', '华东', '511009', '中国'); INSERT INTO `orders` VALUES ('10738', 'SPECD', '2', '2016-11-12 00:00:00', '2016-12-10 00:00:00', '2016-11-18 00:00:00', '1', '2.9100', '黎先生', '方新路 84 号', '张家口', '河北省', '华北', '750166', '中国'); INSERT INTO `orders` VALUES ('10739', 'VINET', '3', '2016-11-12 00:00:00', '2016-12-10 00:00:00', '2016-11-17 00:00:00', '3', '11.0800', '余小姐', '玉新街 23 号', '天津', '天津市', '华北', '511005', '中国'); INSERT INTO `orders` VALUES ('10740', 'WHITC', '4', '2016-11-13 00:00:00', '2016-12-11 00:00:00', '2016-11-25 00:00:00', '2', '81.8800', '黎先生', '新街甲 48 号', '石家庄', '河北省', '华北', '981240', '中国'); INSERT INTO `orders` VALUES ('10741', 'AROUT', '4', '2016-11-14 00:00:00', '2016-11-28 00:00:00', '2016-11-18 00:00:00', '3', '10.9600', '王先生', '新碑路 37 号', '秦皇岛', '河北省', '华北', '486526', '中国'); INSERT INTO `orders` VALUES ('10742', 'BOTTM', '3', '2016-11-14 00:00:00', '2016-12-12 00:00:00', '2016-11-18 00:00:00', '3', '243.7300', '王先生', '西石路 79 号', '天津', '天津市', '华北', '480216', '中国'); INSERT INTO `orders` VALUES ('10743', 'AROUT', '1', '2016-11-17 00:00:00', '2016-12-15 00:00:00', '2016-11-21 00:00:00', '2', '23.7200', '王先生', '明新路 32 号', '天津', '天津市', '华北', '683235', '中国'); INSERT INTO `orders` VALUES ('10744', 'VAFFE', '6', '2016-11-17 00:00:00', '2016-12-15 00:00:00', '2016-11-24 00:00:00', '1', '69.1900', '方先生', '靳明路 37 号', '温州', '浙江省', '华东', '537932', '中国'); INSERT INTO `orders` VALUES ('10745', 'QUICK', '9', '2016-11-18 00:00:00', '2016-12-16 00:00:00', '2016-11-27 00:00:00', '1', '3.5200', '刘先生', '昌隆新路 84 号', '天津', '天津市', '华北', '013070', '中国'); INSERT INTO `orders` VALUES ('10746', 'CHOPS', '1', '2016-11-19 00:00:00', '2016-12-17 00:00:00', '2016-11-21 00:00:00', '3', '31.4300', '林小姐', '青年新路 145 号', '天津', '天津市', '华北', '301246', '中国'); INSERT INTO `orders` VALUES ('10747', 'PICCO', '6', '2016-11-19 00:00:00', '2016-12-17 00:00:00', '2016-11-26 00:00:00', '1', '117.3300', '林丽莉', '新庄园西口 328 号', '天津', '天津市', '华北', '502058', '中国'); INSERT INTO `orders` VALUES ('10748', 'SAVEA', '3', '2016-11-20 00:00:00', '2016-12-18 00:00:00', '2016-11-28 00:00:00', '1', '232.5500', '苏先生', '胜利新路 293 号', '重庆', '重庆市', '西南', '837203', '中国'); INSERT INTO `orders` VALUES ('10749', 'ISLAT', '4', '2016-11-20 00:00:00', '2016-12-18 00:00:00', '2016-12-19 00:00:00', '2', '61.5300', '方先生', '新故园西里 24 号', '天津', '天津市', '华北', '368964', '中国'); INSERT INTO `orders` VALUES ('10750', 'WARTH', '9', '2016-11-21 00:00:00', '2016-12-19 00:00:00', '2016-11-24 00:00:00', '1', '79.3000', '成先生', '西隆新路 54 号', '南昌', '江西省', '华东', '901107', '中国'); INSERT INTO `orders` VALUES ('10751', 'RICSU', '3', '2016-11-24 00:00:00', '2016-12-22 00:00:00', '2016-12-03 00:00:00', '3', '130.7900', '方先生', '西北新街 83 号', '天津', '天津市', '华北', '120442', '中国'); INSERT INTO `orders` VALUES ('10752', 'NORTS', '2', '2016-11-24 00:00:00', '2016-12-22 00:00:00', '2016-11-28 00:00:00', '3', '1.3900', '刘小龙', '速德新路 43 号', '南京', '江苏省', '华东', '795415', '中国'); INSERT INTO `orders` VALUES ('10753', 'FRANS', '3', '2016-11-25 00:00:00', '2016-12-23 00:00:00', '2016-11-27 00:00:00', '1', '7.7000', '成先生', '青岛路 25 号', '上海', '上海市', '华东', '101000', '中国'); INSERT INTO `orders` VALUES ('10754', 'MAGAA', '6', '2016-11-25 00:00:00', '2016-12-23 00:00:00', '2016-11-27 00:00:00', '3', '2.3800', '王炫皓', '和平里甲 38 号', '北京', '北京市', '华北', '179063', '中国'); INSERT INTO `orders` VALUES ('10755', 'BONAP', '4', '2016-11-26 00:00:00', '2016-12-24 00:00:00', '2016-11-28 00:00:00', '2', '16.7100', '谢小姐', '怀柔新街 63 号', '北京', '北京市', '华北', '130086', '中国'); INSERT INTO `orders` VALUES ('10756', 'SPLIR', '8', '2016-11-27 00:00:00', '2016-12-25 00:00:00', '2016-12-02 00:00:00', '2', '73.2100', '唐小姐', '密云庆安路 295 号', '北京', '北京市', '华北', '125205', '中国'); INSERT INTO `orders` VALUES ('10757', 'SAVEA', '6', '2016-11-27 00:00:00', '2016-12-25 00:00:00', '2016-12-15 00:00:00', '1', '8.1900', '苏先生', '房山区石口街 73 号', '北京', '北京市', '华北', '137206', '中国'); INSERT INTO `orders` VALUES ('10758', 'RICSU', '3', '2016-11-28 00:00:00', '2016-12-26 00:00:00', '2016-12-04 00:00:00', '3', '138.1700', '方先生', '崇文区庆丰街 29 号', '北京', '北京市', '华北', '120476', '中国'); INSERT INTO `orders` VALUES ('10759', 'ANATR', '3', '2016-11-28 00:00:00', '2016-12-26 00:00:00', '2016-12-12 00:00:00', '3', '11.9900', '黄小姐', '海淀区翠微路 238 号', '北京', '北京市', '华北', '150216', '中国'); INSERT INTO `orders` VALUES ('10760', 'MAISD', '4', '2016-12-01 00:00:00', '2016-12-29 00:00:00', '2016-12-10 00:00:00', '1', '155.6400', '李柏麟', '大沙子口路 27 号', '大连', '辽宁省', '东北', '585756', '中国'); INSERT INTO `orders` VALUES ('10761', 'RATTC', '5', '2016-12-02 00:00:00', '2016-12-30 00:00:00', '2016-12-08 00:00:00', '2', '18.6600', '王先生', '沙滩北路 38 号', '厦门', '福建省', '华南', '871109', '中国'); INSERT INTO `orders` VALUES ('10762', 'FOLKO', '3', '2016-12-02 00:00:00', '2016-12-30 00:00:00', '2016-12-09 00:00:00', '1', '328.7400', '陈先生', '云南路 74 号', '上海', '上海市', '华东', '468275', '中国'); INSERT INTO `orders` VALUES ('10763', 'FOLIG', '3', '2016-12-03 00:00:00', '2016-12-31 00:00:00', '2016-12-08 00:00:00', '3', '37.3500', '方先生', '芳园街 37 号', '南京', '江苏省', '华东', '590007', '中国'); INSERT INTO `orders` VALUES ('10764', 'ERNSH', '6', '2016-12-03 00:00:00', '2016-12-31 00:00:00', '2016-12-08 00:00:00', '3', '145.4500', '王先生', '长安东街 3 号', '天津', '天津市', '华北', '801086', '中国'); INSERT INTO `orders` VALUES ('10765', 'QUICK', '3', '2016-12-04 00:00:00', '2017-01-01 00:00:00', '2016-12-09 00:00:00', '3', '42.7400', '刘先生', '大兴管庄东街 27 号', '北京', '北京市', '华北', '113075', '中国'); INSERT INTO `orders` VALUES ('10766', 'OTTIK', '4', '2016-12-05 00:00:00', '2017-01-02 00:00:00', '2016-12-09 00:00:00', '1', '157.5500', '徐文彬', '警卫路 93 号', '青岛', '山东省', '华东', '507395', '中国'); INSERT INTO `orders` VALUES ('10767', 'SUPRD', '4', '2016-12-05 00:00:00', '2017-01-02 00:00:00', '2016-12-15 00:00:00', '3', '1.5900', '刘先生', '警民东路 73 号', '石家庄', '河北省', '华北', '327954', '中国'); INSERT INTO `orders` VALUES ('10768', 'AROUT', '3', '2016-12-08 00:00:00', '2017-01-05 00:00:00', '2016-12-15 00:00:00', '2', '146.3200', '王先生', '黄石碑东街 37 号', '张家口', '河北省', '华北', '268964', '中国'); INSERT INTO `orders` VALUES ('10769', 'VAFFE', '3', '2016-12-08 00:00:00', '2017-01-05 00:00:00', '2016-12-12 00:00:00', '1', '65.0600', '方先生', '官园大街 83 号', '北京', '北京市', '华北', '180436', '中国'); INSERT INTO `orders` VALUES ('10770', 'HANAR', '8', '2016-12-09 00:00:00', '2017-01-06 00:00:00', '2016-12-17 00:00:00', '3', '5.3200', '谢小姐', '扬帆路 83 号', '秦皇岛', '河北省', '华北', '852790', '中国'); INSERT INTO `orders` VALUES ('10771', 'ERNSH', '9', '2016-12-10 00:00:00', '2017-01-07 00:00:00', '2017-01-02 00:00:00', '2', '11.1900', '王先生', '石锚路 89 号', '天津', '天津市', '华北', '505357', '中国'); INSERT INTO `orders` VALUES ('10772', 'LEHMS', '3', '2016-12-10 00:00:00', '2017-01-07 00:00:00', '2016-12-19 00:00:00', '2', '91.2800', '黎先生', '统一路 35 号', '天津', '天津市', '华北', '736896', '中国'); INSERT INTO `orders` VALUES ('10773', 'ERNSH', '1', '2016-12-11 00:00:00', '2017-01-08 00:00:00', '2016-12-16 00:00:00', '3', '96.4300', '王先生', '盛江路 82 号', '天津', '天津市', '华北', '801067', '中国'); INSERT INTO `orders` VALUES ('10774', 'FOLKO', '4', '2016-12-11 00:00:00', '2016-12-25 00:00:00', '2016-12-12 00:00:00', '1', '48.2000', '陈先生', '西黄东路 34 号', '温州', '浙江省', '华东', '638953', '中国'); INSERT INTO `orders` VALUES ('10775', 'THECR', '7', '2016-12-12 00:00:00', '2017-01-09 00:00:00', '2016-12-26 00:00:00', '1', '20.2500', '刘先生', '榛子口大街 21 号', '天津', '天津市', '华北', '598017', '中国'); INSERT INTO `orders` VALUES ('10776', 'ERNSH', '1', '2016-12-15 00:00:00', '2017-01-12 00:00:00', '2016-12-18 00:00:00', '3', '351.5300', '王先生', '白颐路 54 号', '北京', '北京市', '华北', '101075', '中国'); INSERT INTO `orders` VALUES ('10777', 'GOURL', '7', '2016-12-15 00:00:00', '2016-12-29 00:00:00', '2017-01-21 00:00:00', '2', '3.0100', '刘先生', '卡方路 37 号', '天津', '天津市', '华北', '468942', '中国'); INSERT INTO `orders` VALUES ('10778', 'BERGS', '3', '2016-12-16 00:00:00', '2017-01-13 00:00:00', '2016-12-24 00:00:00', '1', '6.7900', '李先生', '佛方路 23 号', '南京', '江苏省', '华东', '963169', '中国'); INSERT INTO `orders` VALUES ('10779', 'MORGK', '3', '2016-12-16 00:00:00', '2017-01-13 00:00:00', '2017-01-14 00:00:00', '2', '58.1300', '方建文', '时法路 38 号', '南京', '江苏省', '华东', '041795', '中国'); INSERT INTO `orders` VALUES ('10780', 'LILAS', '2', '2016-12-16 00:00:00', '2016-12-30 00:00:00', '2016-12-25 00:00:00', '1', '42.1300', '陈玉美', '甘肃路 23 号', '上海', '上海市', '华东', '350835', '中国'); INSERT INTO `orders` VALUES ('10781', 'WARTH', '2', '2016-12-17 00:00:00', '2017-01-14 00:00:00', '2016-12-19 00:00:00', '3', '73.1600', '成先生', '科技园东 25 号', '天津', '天津市', '华北', '901106', '中国'); INSERT INTO `orders` VALUES ('10782', 'CACTU', '9', '2016-12-17 00:00:00', '2017-01-14 00:00:00', '2016-12-22 00:00:00', '3', '1.1000', '李先生', '西藏路 18 号', '上海', '上海市', '华东', '101065', '中国'); INSERT INTO `orders` VALUES ('10783', 'HANAR', '4', '2016-12-18 00:00:00', '2017-01-15 00:00:00', '2016-12-19 00:00:00', '2', '124.9800', '谢小姐', '警卫东路 3 号', '大连', '辽宁省', '东北', '532865', '中国'); INSERT INTO `orders` VALUES ('10784', 'MAGAA', '4', '2016-12-18 00:00:00', '2017-01-15 00:00:00', '2016-12-22 00:00:00', '3', '70.0900', '王炫皓', '民东路 7 号', '大连', '辽宁省', '东北', '241004', '中国'); INSERT INTO `orders` VALUES ('10785', 'GROSR', '1', '2016-12-18 00:00:00', '2017-01-15 00:00:00', '2016-12-24 00:00:00', '3', '1.5100', '刘先生', '石碑东街 31 号', '天津', '天津市', '华北', '108146', '中国'); INSERT INTO `orders` VALUES ('10786', 'QUEEN', '8', '2016-12-19 00:00:00', '2017-01-16 00:00:00', '2016-12-23 00:00:00', '1', '110.8700', '方先生', '园中大街 3 号', '海口', '海南省', '华南', '368325', '中国'); INSERT INTO `orders` VALUES ('10787', 'LAMAI', '2', '2016-12-19 00:00:00', '2017-01-02 00:00:00', '2016-12-26 00:00:00', '1', '249.9300', '苏先生', '扬成路 8 号', '天津', '天津市', '华北', '310004', '中国'); INSERT INTO `orders` VALUES ('10788', 'QUICK', '1', '2016-12-22 00:00:00', '2017-01-19 00:00:00', '2017-01-19 00:00:00', '2', '42.7000', '刘先生', '石凉路 9 号', '天津', '天津市', '华北', '713074', '中国'); INSERT INTO `orders` VALUES ('10789', 'FOLIG', '1', '2016-12-22 00:00:00', '2017-01-19 00:00:00', '2016-12-31 00:00:00', '2', '100.6000', '方先生', '环一路 3 号', '南京', '江苏省', '华东', '590007', '中国'); INSERT INTO `orders` VALUES ('10790', 'GOURL', '6', '2016-12-22 00:00:00', '2017-01-19 00:00:00', '2016-12-26 00:00:00', '1', '28.2300', '刘先生', '会江路 62 号', '厦门', '福建省', '华南', '378900', '中国'); INSERT INTO `orders` VALUES ('10791', 'FRANK', '6', '2016-12-23 00:00:00', '2017-01-20 00:00:00', '2017-01-01 00:00:00', '2', '16.8500', '余小姐', '表东路 34 号', '天津', '天津市', '华北', '808059', '中国'); INSERT INTO `orders` VALUES ('10792', 'WOLZA', '1', '2016-12-23 00:00:00', '2017-01-20 00:00:00', '2016-12-31 00:00:00', '3', '23.7900', '吴小姐', '口子大街 21 号', '常州', '江苏省', '华东', '367953', '中国'); INSERT INTO `orders` VALUES ('10793', 'AROUT', '3', '2016-12-24 00:00:00', '2017-01-21 00:00:00', '2017-01-08 00:00:00', '3', '4.5200', '王先生', '白土路 54 号', '天津', '天津市', '华北', '564270', '中国'); INSERT INTO `orders` VALUES ('10794', 'QUEDE', '6', '2016-12-24 00:00:00', '2017-01-21 00:00:00', '2017-01-02 00:00:00', '1', '21.4900', '刘先生', '大方路 37 号', '成都', '四川省', '西南', '389673', '中国'); INSERT INTO `orders` VALUES ('10795', 'ERNSH', '8', '2016-12-24 00:00:00', '2017-01-21 00:00:00', '2017-01-20 00:00:00', '2', '126.6600', '王先生', '能光路 23 号', '常州', '江苏省', '华东', '801074', '中国'); INSERT INTO `orders` VALUES ('10796', 'HILAA', '3', '2016-12-25 00:00:00', '2017-01-22 00:00:00', '2017-01-14 00:00:00', '1', '26.5200', '王先生', '华抗路 38 号', '石家庄', '河北省', '华北', '502286', '中国'); INSERT INTO `orders` VALUES ('10797', 'DRACD', '7', '2016-12-25 00:00:00', '2017-01-22 00:00:00', '2017-01-05 00:00:00', '2', '33.3500', '方先生', '甘北路 23 号', '天津', '天津市', '华北', '520665', '中国'); INSERT INTO `orders` VALUES ('10798', 'ISLAT', '2', '2016-12-26 00:00:00', '2017-01-23 00:00:00', '2017-01-05 00:00:00', '1', '2.3300', '方先生', '科园东路 25 号', '张家口', '河北省', '华北', '356784', '中国'); INSERT INTO `orders` VALUES ('10799', 'KOENE', '9', '2016-12-26 00:00:00', '2017-02-06 00:00:00', '2017-01-05 00:00:00', '3', '30.7600', '陈先生', '孟姜路 587 号', '秦皇岛', '河北省', '华北', '147764', '中国'); INSERT INTO `orders` VALUES ('10800', 'SEVES', '1', '2016-12-26 00:00:00', '2017-01-23 00:00:00', '2017-01-05 00:00:00', '3', '137.4400', '成先生', '东管头北街 76 号', '南京', '江苏省', '华东', '436705', '中国'); INSERT INTO `orders` VALUES ('10801', 'BOLID', '4', '2016-12-29 00:00:00', '2017-01-26 00:00:00', '2016-12-31 00:00:00', '2', '97.0900', '刘先生', '新疆路 51 号', '上海', '上海市', '华东', '280238', '中国'); INSERT INTO `orders` VALUES ('10802', 'SIMOB', '4', '2016-12-29 00:00:00', '2017-01-26 00:00:00', '2017-01-02 00:00:00', '2', '257.2600', '何先生', '十坪西路 67 号', '石家庄', '河北省', '华北', '473465', '中国'); INSERT INTO `orders` VALUES ('10803', 'WELLI', '4', '2016-12-30 00:00:00', '2017-01-27 00:00:00', '2017-01-06 00:00:00', '1', '55.2300', '何先生', '月坛西路 64 号', '北京', '北京市', '华北', '148533', '中国'); INSERT INTO `orders` VALUES ('10804', 'SEVES', '6', '2016-12-30 00:00:00', '2017-01-27 00:00:00', '2017-01-07 00:00:00', '2', '27.3300', '成先生', '大崇明路 50 号', '南京', '江苏省', '华东', '356894', '中国'); INSERT INTO `orders` VALUES ('10805', 'THEBI', '2', '2016-12-30 00:00:00', '2017-01-27 00:00:00', '2017-01-09 00:00:00', '3', '237.3400', '方先生', '承德西路 80 号', '天津', '天津市', '华北', '356796', '中国'); INSERT INTO `orders` VALUES ('10806', 'VICTE', '3', '2016-12-31 00:00:00', '2017-01-28 00:00:00', '2017-01-05 00:00:00', '2', '22.1100', '陈先生', '共振路 390 号', '南京', '江苏省', '华东', '677890', '中国'); INSERT INTO `orders` VALUES ('10807', 'FRANS', '4', '2016-12-31 00:00:00', '2017-01-28 00:00:00', '2017-01-30 00:00:00', '1', '1.3600', '成先生', '佛光街 30 号', '天津', '天津市', '华北', '367863', '中国'); INSERT INTO `orders` VALUES ('10808', 'OLDWO', '2', '2017-01-01 00:00:00', '2017-01-29 00:00:00', '2017-01-09 00:00:00', '3', '45.5300', '王俊元', '天桥路 70 号', '南昌', '江西省', '华东', '995087', '中国'); INSERT INTO `orders` VALUES ('10809', 'WELLI', '7', '2017-01-01 00:00:00', '2017-01-29 00:00:00', '2017-01-07 00:00:00', '1', '4.8700', '何先生', '银河路 30 号', '重庆', '重庆市', '西南', '553257', '中国'); INSERT INTO `orders` VALUES ('10810', 'LAUGB', '2', '2017-01-01 00:00:00', '2017-01-29 00:00:00', '2017-01-07 00:00:00', '3', '4.3300', '成先生', '方园东 30 号', '大连', '辽宁省', '东北', '632678', '中国'); INSERT INTO `orders` VALUES ('10811', 'LINOD', '8', '2017-01-02 00:00:00', '2017-01-30 00:00:00', '2017-01-08 00:00:00', '1', '31.2200', '黄雅玲', '科技路 780 号', '天津', '天津市', '华北', '874257', '中国'); INSERT INTO `orders` VALUES ('10812', 'REGGC', '5', '2017-01-02 00:00:00', '2017-01-30 00:00:00', '2017-01-12 00:00:00', '1', '59.7800', '徐先生', '渝顺南街 50 号', '天津', '天津市', '华北', '421007', '中国'); INSERT INTO `orders` VALUES ('10813', 'RICAR', '1', '2017-01-05 00:00:00', '2017-02-02 00:00:00', '2017-01-09 00:00:00', '1', '47.3800', '周先生', '发展路 80 号', '大连', '辽宁省', '东北', '763543', '中国'); INSERT INTO `orders` VALUES ('10814', 'VICTE', '3', '2017-01-05 00:00:00', '2017-02-02 00:00:00', '2017-01-14 00:00:00', '3', '130.9400', '陈先生', '前进路 90 号', '南京', '江苏省', '华东', '690046', '中国'); INSERT INTO `orders` VALUES ('10815', 'SAVEA', '2', '2017-01-05 00:00:00', '2017-02-02 00:00:00', '2017-01-14 00:00:00', '3', '14.6200', '苏先生', '黄石岗路 70 号', '天津', '天津市', '华北', '837204', '中国'); INSERT INTO `orders` VALUES ('10816', 'GREAL', '4', '2017-01-06 00:00:00', '2017-02-03 00:00:00', '2017-02-04 00:00:00', '2', '719.7800', '方先生', '明光西路 370 号', '海口', '海南省', '华南', '974037', '中国'); INSERT INTO `orders` VALUES ('10817', 'KOENE', '3', '2017-01-06 00:00:00', '2017-01-20 00:00:00', '2017-01-13 00:00:00', '2', '306.0700', '陈先生', '黄石岗路 240 号', '天津', '天津市', '华北', '147766', '中国'); INSERT INTO `orders` VALUES ('10818', 'MAGAA', '7', '2017-01-07 00:00:00', '2017-02-04 00:00:00', '2017-01-12 00:00:00', '3', '65.4800', '王炫皓', '崇明路 80 号', '天津', '天津市', '华北', '241005', '中国'); INSERT INTO `orders` VALUES ('10819', 'CACTU', '2', '2017-01-07 00:00:00', '2017-02-04 00:00:00', '2017-01-16 00:00:00', '3', '19.7600', '李先生', '德南路甲 20 号', '厦门', '福建省', '华南', '369742', '中国'); INSERT INTO `orders` VALUES ('10820', 'RATTC', '3', '2017-01-07 00:00:00', '2017-02-04 00:00:00', '2017-01-13 00:00:00', '2', '37.5200', '王先生', '黄台北路 780 号', '大连', '辽宁省', '东北', '459435', '中国'); INSERT INTO `orders` VALUES ('10821', 'SPLIR', '1', '2017-01-08 00:00:00', '2017-02-05 00:00:00', '2017-01-15 00:00:00', '1', '36.6800', '唐小姐', '天府东街 30 号', '南京', '江苏省', '华东', '532689', '中国'); INSERT INTO `orders` VALUES ('10822', 'TRAIH', '6', '2017-01-08 00:00:00', '2017-02-05 00:00:00', '2017-01-16 00:00:00', '3', '7.0000', '周先生', '东园西甲 30 号', '北京', '北京市', '华北', '425700', '中国'); INSERT INTO `orders` VALUES ('10823', 'LILAS', '5', '2017-01-09 00:00:00', '2017-02-06 00:00:00', '2017-01-13 00:00:00', '2', '163.9700', '陈玉美', '常保阁东 80 号', '成都', '四川省', '西南', '965579', '中国'); INSERT INTO `orders` VALUES ('10824', 'FOLKO', '8', '2017-01-09 00:00:00', '2017-02-06 00:00:00', '2017-01-30 00:00:00', '1', '1.2300', '陈先生', '广发南路 890 号', '青岛', '山东省', '华东', '786400', '中国'); INSERT INTO `orders` VALUES ('10825', 'DRACD', '1', '2017-01-09 00:00:00', '2017-02-06 00:00:00', '2017-01-14 00:00:00', '1', '79.2500', '方先生', '广发北路 10 号', '常州', '江苏省', '华东', '875546', '中国'); INSERT INTO `orders` VALUES ('10826', 'BLONP', '6', '2017-01-12 00:00:00', '2017-02-09 00:00:00', '2017-02-06 00:00:00', '1', '7.0900', '方先生', '技术东街 30 号', '石家庄', '河北省', '华北', '670046', '中国'); INSERT INTO `orders` VALUES ('10827', 'BONAP', '1', '2017-01-12 00:00:00', '2017-01-26 00:00:00', '2017-02-06 00:00:00', '2', '63.5400', '谢小姐', '临翠大街 80 号', '天津', '天津市', '华北', '654797', '中国'); INSERT INTO `orders` VALUES ('10828', 'RANCH', '9', '2017-01-13 00:00:00', '2017-01-27 00:00:00', '2017-02-04 00:00:00', '1', '90.8500', '谢小姐', '花园东街 90 号', '秦皇岛', '河北省', '华北', '744267', '中国'); INSERT INTO `orders` VALUES ('10829', 'ISLAT', '9', '2017-01-13 00:00:00', '2017-02-10 00:00:00', '2017-01-23 00:00:00', '1', '154.7200', '方先生', '平谷嘉石大街 38 号', '北京', '北京市', '华北', '133568', '中国'); INSERT INTO `orders` VALUES ('10830', 'TRADH', '4', '2017-01-13 00:00:00', '2017-02-24 00:00:00', '2017-01-21 00:00:00', '2', '81.8300', '徐先生', '黄石路 50 号', '大连', '辽宁省', '东北', '347797', '中国'); INSERT INTO `orders` VALUES ('10831', 'SANTG', '3', '2017-01-14 00:00:00', '2017-02-11 00:00:00', '2017-01-23 00:00:00', '2', '72.1900', '余小姐', '经七纬二路 13 号', '济南', '山东省', '华东', '776478', '中国'); INSERT INTO `orders` VALUES ('10832', 'LAMAI', '2', '2017-01-14 00:00:00', '2017-02-11 00:00:00', '2017-01-19 00:00:00', '2', '43.2600', '苏先生', '英雄山路 84 号', '济南', '山东省', '华东', '997438', '中国'); INSERT INTO `orders` VALUES ('10833', 'OTTIK', '6', '2017-01-15 00:00:00', '2017-02-12 00:00:00', '2017-01-23 00:00:00', '2', '71.4900', '徐文彬', '白广路 314 号', '北京', '北京市', '华北', '643588', '中国'); INSERT INTO `orders` VALUES ('10834', 'TRADH', '1', '2017-01-15 00:00:00', '2017-02-12 00:00:00', '2017-01-19 00:00:00', '3', '29.7800', '徐先生', '七一路 37 号', '温州', '浙江省', '华东', '522577', '中国'); INSERT INTO `orders` VALUES ('10835', 'ANATR', '1', '2017-01-15 00:00:00', '2017-02-12 00:00:00', '2017-01-21 00:00:00', '3', '69.5300', '方先生', '劳动路 23 号', '天津', '天津市', '华北', '632700', '中国'); INSERT INTO `orders` VALUES ('10836', 'ERNSH', '7', '2017-01-16 00:00:00', '2017-02-13 00:00:00', '2017-01-21 00:00:00', '1', '411.8800', '王先生', '光明东路 395 号', '西安', '陕西省', '西北', '864145', '中国'); INSERT INTO `orders` VALUES ('10837', 'BERGS', '9', '2017-01-16 00:00:00', '2017-02-13 00:00:00', '2017-01-23 00:00:00', '3', '13.3200', '李先生', '沉香街 329 号', '南京', '江苏省', '华东', '853258', '中国'); INSERT INTO `orders` VALUES ('10838', 'LINOD', '3', '2017-01-19 00:00:00', '2017-02-16 00:00:00', '2017-01-23 00:00:00', '3', '59.2800', '黄雅玲', '光复北路 895 号', '石家庄', '河北省', '华北', '886478', '中国'); INSERT INTO `orders` VALUES ('10839', 'TRADH', '3', '2017-01-19 00:00:00', '2017-02-16 00:00:00', '2017-01-22 00:00:00', '3', '35.4300', '徐先生', '临江东街 62 号', '重庆', '重庆市', '西南', '754379', '中国'); INSERT INTO `orders` VALUES ('10840', 'LINOD', '4', '2017-01-19 00:00:00', '2017-03-02 00:00:00', '2017-02-16 00:00:00', '2', '2.7100', '黄雅玲', '外滩西路 238 号', '大连', '辽宁省', '东北', '873570', '中国'); INSERT INTO `orders` VALUES ('10841', 'SUPRD', '5', '2017-01-20 00:00:00', '2017-02-17 00:00:00', '2017-01-29 00:00:00', '2', '424.3000', '刘先生', '东湖大街 28 号', '天津', '天津市', '华北', '963248', '中国'); INSERT INTO `orders` VALUES ('10842', 'TORTU', '1', '2017-01-20 00:00:00', '2017-02-17 00:00:00', '2017-01-29 00:00:00', '3', '54.4200', '王先生', '经三纬二路 8 号', '大连', '辽宁省', '东北', '755347', '中国'); INSERT INTO `orders` VALUES ('10843', 'VICTE', '4', '2017-01-21 00:00:00', '2017-02-18 00:00:00', '2017-01-26 00:00:00', '2', '9.2600', '陈先生', '沿江北路 942 号', '南京', '江苏省', '华东', '755380', '中国'); INSERT INTO `orders` VALUES ('10844', 'PICCO', '8', '2017-01-21 00:00:00', '2017-02-18 00:00:00', '2017-01-26 00:00:00', '2', '25.2200', '林丽莉', '经二路 9 号', '天津', '天津市', '华北', '642809', '中国'); INSERT INTO `orders` VALUES ('10845', 'QUICK', '8', '2017-01-21 00:00:00', '2017-02-04 00:00:00', '2017-01-30 00:00:00', '1', '212.9800', '刘先生', '辅城街 42 号', '天津', '天津市', '华北', '834666', '中国'); INSERT INTO `orders` VALUES ('10846', 'SUPRD', '2', '2017-01-22 00:00:00', '2017-03-05 00:00:00', '2017-01-23 00:00:00', '3', '56.4600', '刘先生', '临江街 32 号', '海口', '海南省', '华南', '357953', '中国'); INSERT INTO `orders` VALUES ('10847', 'SAVEA', '4', '2017-01-22 00:00:00', '2017-02-05 00:00:00', '2017-02-10 00:00:00', '3', '487.5700', '苏先生', '授业路 361 号', '天津', '天津市', '华北', '458909', '中国'); INSERT INTO `orders` VALUES ('10848', 'CONSH', '7', '2017-01-23 00:00:00', '2017-02-20 00:00:00', '2017-01-29 00:00:00', '2', '38.2400', '刘先生', '尊石路 238 号', '南京', '江苏省', '华东', '855700', '中国'); INSERT INTO `orders` VALUES ('10849', 'KOENE', '9', '2017-01-23 00:00:00', '2017-02-20 00:00:00', '2017-01-30 00:00:00', '2', '0.5600', '陈先生', '广惠东路 38 号', '厦门', '福建省', '华南', '643689', '中国'); INSERT INTO `orders` VALUES ('10850', 'VICTE', '1', '2017-01-23 00:00:00', '2017-03-06 00:00:00', '2017-01-30 00:00:00', '1', '49.1900', '陈先生', '淮河路 348 号', '南京', '江苏省', '华东', '470631', '中国'); INSERT INTO `orders` VALUES ('10851', 'RICAR', '5', '2017-01-26 00:00:00', '2017-02-23 00:00:00', '2017-02-02 00:00:00', '1', '160.5500', '周先生', '经三纬四路 18 号', '天津', '天津市', '华北', '641689', '中国'); INSERT INTO `orders` VALUES ('10852', 'RATTC', '8', '2017-01-26 00:00:00', '2017-02-09 00:00:00', '2017-01-30 00:00:00', '1', '174.0500', '王先生', '成川东街 951 号', '成都', '四川省', '西南', '863257', '中国'); INSERT INTO `orders` VALUES ('10853', 'BLAUS', '9', '2017-01-27 00:00:00', '2017-02-24 00:00:00', '2017-02-03 00:00:00', '2', '53.8300', '刘先生', '永惠西街 392 号', '青岛', '山东省', '华东', '999875', '中国'); INSERT INTO `orders` VALUES ('10854', 'ERNSH', '3', '2017-01-27 00:00:00', '2017-02-24 00:00:00', '2017-02-05 00:00:00', '2', '100.2200', '王先生', '崇盛路 82 号', '天津', '天津市', '华北', '744688', '中国'); INSERT INTO `orders` VALUES ('10855', 'OLDWO', '3', '2017-01-27 00:00:00', '2017-02-24 00:00:00', '2017-02-04 00:00:00', '1', '170.9700', '王俊元', '德昌路甲 29 号', '常州', '江苏省', '华东', '741468', '中国'); INSERT INTO `orders` VALUES ('10856', 'ANTON', '3', '2017-01-28 00:00:00', '2017-02-25 00:00:00', '2017-02-10 00:00:00', '2', '58.4300', '胡先生', '黄岗北路 73 号', '石家庄', '河北省', '华北', '987353', '中国'); INSERT INTO `orders` VALUES ('10857', 'BERGS', '8', '2017-01-28 00:00:00', '2017-02-25 00:00:00', '2017-02-06 00:00:00', '2', '188.8500', '李先生', '东府大街 31 号', '南京', '江苏省', '华东', '863641', '中国'); INSERT INTO `orders` VALUES ('10858', 'LACOR', '2', '2017-01-29 00:00:00', '2017-02-26 00:00:00', '2017-02-03 00:00:00', '1', '52.5100', '余小姐', '东园大路 78 号', '南京', '江苏省', '华东', '780006', '中国'); INSERT INTO `orders` VALUES ('10859', 'FRANK', '1', '2017-01-29 00:00:00', '2017-02-26 00:00:00', '2017-02-02 00:00:00', '2', '76.1000', '余小姐', '东岗大路 9 号', '张家口', '河北省', '华北', '808085', '中国'); INSERT INTO `orders` VALUES ('10860', 'FRANR', '3', '2017-01-29 00:00:00', '2017-02-26 00:00:00', '2017-02-04 00:00:00', '3', '19.2600', '苏先生', '青年南街 291 号', '深圳', '广东省', '华南', '440005', '中国'); INSERT INTO `orders` VALUES ('10861', 'WHITC', '4', '2017-01-30 00:00:00', '2017-02-27 00:00:00', '2017-02-17 00:00:00', '2', '14.9300', '黎先生', '创业西路 238 号', '秦皇岛', '河北省', '华北', '981247', '中国'); INSERT INTO `orders` VALUES ('10862', 'LEHMS', '8', '2017-01-30 00:00:00', '2017-03-13 00:00:00', '2017-02-02 00:00:00', '2', '53.2300', '黎先生', '劳动辅路 395 号', '石家庄', '河北省', '华北', '605288', '中国'); INSERT INTO `orders` VALUES ('10863', 'HILAA', '4', '2017-02-02 00:00:00', '2017-03-02 00:00:00', '2017-02-17 00:00:00', '2', '30.2600', '王先生', '七一路 89 号', '天津', '天津市', '华北', '502253', '中国'); INSERT INTO `orders` VALUES ('10864', 'AROUT', '4', '2017-02-02 00:00:00', '2017-03-02 00:00:00', '2017-02-09 00:00:00', '2', '3.0400', '王先生', '豪威西路 238 号', '温州', '浙江省', '华东', '737427', '中国'); INSERT INTO `orders` VALUES ('10865', 'QUICK', '2', '2017-02-02 00:00:00', '2017-02-16 00:00:00', '2017-02-12 00:00:00', '1', '348.1400', '刘先生', '光伦东路 381 号', '重庆', '重庆市', '西南', '863136', '中国'); INSERT INTO `orders` VALUES ('10866', 'BERGS', '5', '2017-02-03 00:00:00', '2017-03-03 00:00:00', '2017-02-12 00:00:00', '1', '109.1100', '李先生', '创业北路 32 号', '南京', '江苏省', '华东', '754245', '中国'); INSERT INTO `orders` VALUES ('10867', 'LONEP', '6', '2017-02-03 00:00:00', '2017-03-17 00:00:00', '2017-02-11 00:00:00', '1', '1.9300', '胡继尧', '花园西街 28 号', '深圳', '广东省', '华南', '367807', '中国'); INSERT INTO `orders` VALUES ('10868', 'QUEEN', '7', '2017-02-04 00:00:00', '2017-03-04 00:00:00', '2017-02-23 00:00:00', '2', '191.2700', '方先生', '城东大街 47 号', '深圳', '广东省', '华南', '136075', '中国'); INSERT INTO `orders` VALUES ('10869', 'SEVES', '5', '2017-02-04 00:00:00', '2017-03-04 00:00:00', '2017-02-09 00:00:00', '1', '143.2800', '成先生', '八一路 384 号', '南京', '江苏省', '华东', '842785', '中国'); INSERT INTO `orders` VALUES ('10870', 'WOLZA', '5', '2017-02-04 00:00:00', '2017-03-04 00:00:00', '2017-02-13 00:00:00', '3', '12.0400', '吴小姐', '和光北路 952 号', '天津', '天津市', '华北', '642790', '中国'); INSERT INTO `orders` VALUES ('10871', 'BONAP', '9', '2017-02-05 00:00:00', '2017-03-05 00:00:00', '2017-02-10 00:00:00', '2', '112.2700', '谢小姐', '创业街 57 号', '深圳', '广东省', '华南', '769074', '中国'); INSERT INTO `orders` VALUES ('10872', 'GODOS', '5', '2017-02-05 00:00:00', '2017-03-05 00:00:00', '2017-02-09 00:00:00', '2', '175.3200', '锺小姐', '广西路 24 号', '上海', '上海市', '华东', '411016', '中国'); INSERT INTO `orders` VALUES ('10873', 'WILMK', '4', '2017-02-06 00:00:00', '2017-03-06 00:00:00', '2017-02-09 00:00:00', '1', '0.8200', '唐小姐', '东临大街 32 号', '天津', '天津市', '华北', '212406', '中国'); INSERT INTO `orders` VALUES ('10874', 'GODOS', '5', '2017-02-06 00:00:00', '2017-03-06 00:00:00', '2017-02-11 00:00:00', '2', '19.5800', '锺小姐', '创业路 361 号', '天津', '天津市', '华北', '411017', '中国'); INSERT INTO `orders` VALUES ('10875', 'BERGS', '4', '2017-02-06 00:00:00', '2017-03-06 00:00:00', '2017-03-03 00:00:00', '2', '32.3700', '李先生', '基石路 238 号', '南京', '江苏省', '华东', '631708', '中国'); INSERT INTO `orders` VALUES ('10876', 'BONAP', '7', '2017-02-09 00:00:00', '2017-03-09 00:00:00', '2017-02-12 00:00:00', '3', '60.4200', '谢小姐', '惠安大路 38 号', '海口', '海南省', '华南', '130085', '中国'); INSERT INTO `orders` VALUES ('10877', 'RICAR', '1', '2017-02-09 00:00:00', '2017-03-09 00:00:00', '2017-02-19 00:00:00', '1', '38.0600', '周先生', '淮水路 348 号', '深圳', '广东省', '华南', '542699', '中国'); INSERT INTO `orders` VALUES ('10878', 'QUICK', '4', '2017-02-10 00:00:00', '2017-03-10 00:00:00', '2017-02-12 00:00:00', '1', '46.6900', '刘先生', '纬四路 523 号', '厦门', '福建省', '华南', '756878', '中国'); INSERT INTO `orders` VALUES ('10879', 'WILMK', '3', '2017-02-10 00:00:00', '2017-03-10 00:00:00', '2017-02-12 00:00:00', '3', '8.5000', '唐小姐', '成东大街 951 号', '常州', '江苏省', '华东', '212409', '中国'); INSERT INTO `orders` VALUES ('10880', 'FOLKO', '7', '2017-02-10 00:00:00', '2017-03-24 00:00:00', '2017-02-18 00:00:00', '1', '88.0100', '陈先生', '广安南街 82 号', '大连', '辽宁省', '东北', '643790', '中国'); INSERT INTO `orders` VALUES ('10881', 'CACTU', '4', '2017-02-11 00:00:00', '2017-03-11 00:00:00', '2017-02-18 00:00:00', '1', '2.8400', '李先生', '定成路 92 号', '成都', '四川省', '西南', '101042', '中国'); INSERT INTO `orders` VALUES ('10882', 'SAVEA', '4', '2017-02-11 00:00:00', '2017-03-11 00:00:00', '2017-02-20 00:00:00', '3', '23.1000', '苏先生', '广场路 205 号', '青岛', '山东省', '华东', '744335', '中国'); INSERT INTO `orders` VALUES ('10883', 'LONEP', '8', '2017-02-12 00:00:00', '2017-03-12 00:00:00', '2017-02-20 00:00:00', '3', '0.5300', '胡继尧', '创业东路 38 号', '天津', '天津市', '华北', '752775', '中国'); INSERT INTO `orders` VALUES ('10884', 'LETSS', '4', '2017-02-12 00:00:00', '2017-03-12 00:00:00', '2017-02-13 00:00:00', '2', '90.9700', '唐小姐', '辅城路 601 号', '石家庄', '河北省', '华北', '526893', '中国'); INSERT INTO `orders` VALUES ('10885', 'SUPRD', '6', '2017-02-12 00:00:00', '2017-03-12 00:00:00', '2017-02-18 00:00:00', '3', '5.6400', '刘先生', '肥水路 93 号', '常州', '江苏省', '华东', '426400', '中国'); INSERT INTO `orders` VALUES ('10886', 'HANAR', '1', '2017-02-13 00:00:00', '2017-03-13 00:00:00', '2017-03-02 00:00:00', '1', '4.9900', '谢小姐', '大峪口街 702 号', '秦皇岛', '河北省', '华北', '863900', '中国'); INSERT INTO `orders` VALUES ('10887', 'GALED', '8', '2017-02-13 00:00:00', '2017-03-13 00:00:00', '2017-02-16 00:00:00', '3', '1.2500', '林小姐', '港务口街 29 号', '天津', '天津市', '华北', '973698', '中国'); INSERT INTO `orders` VALUES ('10888', 'GODOS', '1', '2017-02-16 00:00:00', '2017-03-16 00:00:00', '2017-02-23 00:00:00', '2', '51.8700', '锺小姐', '劝业路 103 号', '天津', '天津市', '华北', '979063', '中国'); INSERT INTO `orders` VALUES ('10889', 'RATTC', '9', '2017-02-16 00:00:00', '2017-03-16 00:00:00', '2017-02-23 00:00:00', '3', '280.6100', '王先生', '成前路 116 号', '深圳', '广东省', '华南', '832608', '中国'); INSERT INTO `orders` VALUES ('10890', 'DUMON', '7', '2017-02-16 00:00:00', '2017-03-16 00:00:00', '2017-02-18 00:00:00', '1', '32.7600', '刘先生', '冠成园路 321 号', '深圳', '广东省', '华南', '358986', '中国'); INSERT INTO `orders` VALUES ('10891', 'LEHMS', '7', '2017-02-17 00:00:00', '2017-03-17 00:00:00', '2017-02-19 00:00:00', '2', '20.3700', '黎先生', '起义路 231 号', '深圳', '广东省', '华南', '632790', '中国'); INSERT INTO `orders` VALUES ('10892', 'MAISD', '4', '2017-02-17 00:00:00', '2017-03-17 00:00:00', '2017-02-19 00:00:00', '2', '120.2700', '李柏麟', '黄口江路 521 号', '天津', '天津市', '华北', '076489', '中国'); INSERT INTO `orders` VALUES ('10893', 'KOENE', '9', '2017-02-18 00:00:00', '2017-03-18 00:00:00', '2017-02-20 00:00:00', '2', '77.7800', '陈先生', '车站东路 831 号', '石家庄', '河北省', '华北', '147765', '中国'); INSERT INTO `orders` VALUES ('10894', 'SAVEA', '1', '2017-02-18 00:00:00', '2017-03-18 00:00:00', '2017-02-20 00:00:00', '1', '116.1300', '苏先生', '车站南路 721 号', '温州', '浙江省', '华东', '837204', '中国'); INSERT INTO `orders` VALUES ('10895', 'ERNSH', '3', '2017-02-18 00:00:00', '2017-03-18 00:00:00', '2017-02-23 00:00:00', '1', '162.7500', '王先生', '机场东路 951 号', '南昌', '江西省', '华东', '801044', '中国'); INSERT INTO `orders` VALUES ('10896', 'MAISD', '7', '2017-02-19 00:00:00', '2017-03-19 00:00:00', '2017-02-27 00:00:00', '3', '32.4500', '李柏麟', '车站路 631 号', '西安', '陕西省', '西北', '456556', '中国'); INSERT INTO `orders` VALUES ('10897', 'HUNGO', '3', '2017-02-19 00:00:00', '2017-03-19 00:00:00', '2017-02-25 00:00:00', '2', '603.5400', '周先生', '车站西路 391 号', '西安', '陕西省', '西北', '435636', '中国'); INSERT INTO `orders` VALUES ('10898', 'OCEAN', '4', '2017-02-20 00:00:00', '2017-03-20 00:00:00', '2017-03-06 00:00:00', '2', '1.2700', '谢丽秋', '起义路甲 921 号', '重庆', '重庆市', '西南', '653356', '中国'); INSERT INTO `orders` VALUES ('10899', 'LILAS', '5', '2017-02-20 00:00:00', '2017-03-20 00:00:00', '2017-02-26 00:00:00', '3', '1.2100', '陈玉美', '长春路 371 号', '重庆', '重庆市', '西南', '654780', '中国'); INSERT INTO `orders` VALUES ('10900', 'WELLI', '1', '2017-02-20 00:00:00', '2017-03-20 00:00:00', '2017-03-04 00:00:00', '2', '1.6600', '何先生', '石碑路丁 211 号', '天津', '天津市', '华北', '675898', '中国'); INSERT INTO `orders` VALUES ('10901', 'HILAA', '4', '2017-02-23 00:00:00', '2017-03-23 00:00:00', '2017-02-26 00:00:00', '1', '62.0900', '王先生', '石碑路甲 141 号', '天津', '天津市', '华北', '798642', '中国'); INSERT INTO `orders` VALUES ('10902', 'FOLKO', '1', '2017-02-23 00:00:00', '2017-03-23 00:00:00', '2017-03-03 00:00:00', '1', '44.1500', '陈先生', '威成路 321 号', '大连', '辽宁省', '东北', '687698', '中国'); INSERT INTO `orders` VALUES ('10903', 'HANAR', '3', '2017-02-24 00:00:00', '2017-03-24 00:00:00', '2017-03-04 00:00:00', '3', '36.7100', '谢小姐', '明成西街 471 号', '石家庄', '河北省', '华北', '345457', '中国'); INSERT INTO `orders` VALUES ('10904', 'WHITC', '3', '2017-02-24 00:00:00', '2017-03-24 00:00:00', '2017-02-27 00:00:00', '3', '162.9500', '黎先生', '舜井街 561 号', '天津', '天津市', '华北', '697800', '中国'); INSERT INTO `orders` VALUES ('10905', 'WELLI', '9', '2017-02-24 00:00:00', '2017-03-24 00:00:00', '2017-03-06 00:00:00', '2', '13.7200', '何先生', '使馆路 371 号', '深圳', '广东省', '华南', '456470', '中国'); INSERT INTO `orders` VALUES ('10906', 'WOLZA', '4', '2017-02-25 00:00:00', '2017-03-11 00:00:00', '2017-03-03 00:00:00', '3', '26.2900', '吴小姐', '黄池路 931 号', '深圳', '广东省', '华南', '789765', '中国'); INSERT INTO `orders` VALUES ('10907', 'SPECD', '6', '2017-02-25 00:00:00', '2017-03-25 00:00:00', '2017-02-27 00:00:00', '3', '9.1900', '黎先生', '威刚街 481 号', '厦门', '福建省', '华南', '674677', '中国'); INSERT INTO `orders` VALUES ('10908', 'REGGC', '4', '2017-02-26 00:00:00', '2017-03-26 00:00:00', '2017-03-06 00:00:00', '2', '32.9600', '徐先生', '花园西路 831 号', '常州', '江苏省', '华东', '676547', '中国'); INSERT INTO `orders` VALUES ('10909', 'SANTG', '1', '2017-02-26 00:00:00', '2017-03-26 00:00:00', '2017-03-10 00:00:00', '2', '53.0500', '余小姐', '光明北路 211 号', '石家庄', '河北省', '华北', '875567', '中国'); INSERT INTO `orders` VALUES ('10910', 'WILMK', '1', '2017-02-26 00:00:00', '2017-03-26 00:00:00', '2017-03-04 00:00:00', '3', '38.1100', '唐小姐', '潼关路 41 号', '成都', '四川省', '西南', '212405', '中国'); INSERT INTO `orders` VALUES ('10911', 'GODOS', '3', '2017-02-26 00:00:00', '2017-03-26 00:00:00', '2017-03-05 00:00:00', '1', '38.1900', '锺小姐', '津门路 71 号', '青岛', '山东省', '华东', '411017', '中国'); INSERT INTO `orders` VALUES ('10912', 'HUNGO', '2', '2017-02-26 00:00:00', '2017-03-26 00:00:00', '2017-03-18 00:00:00', '2', '580.9100', '周先生', '冠成园路 31 号', '天津', '天津市', '华北', '589789', '中国'); INSERT INTO `orders` VALUES ('10913', 'QUEEN', '4', '2017-02-26 00:00:00', '2017-03-26 00:00:00', '2017-03-04 00:00:00', '1', '33.0500', '方先生', '起义路 21 号', '天津', '天津市', '华北', '854369', '中国'); INSERT INTO `orders` VALUES ('10914', 'QUEEN', '6', '2017-02-27 00:00:00', '2017-03-27 00:00:00', '2017-03-02 00:00:00', '1', '21.1900', '方先生', '黄口江路 51 号', '深圳', '广东省', '华南', '975380', '中国'); INSERT INTO `orders` VALUES ('10915', 'TORTU', '2', '2017-02-27 00:00:00', '2017-03-27 00:00:00', '2017-03-02 00:00:00', '2', '3.5100', '王先生', '车站东路 81 号', '秦皇岛', '河北省', '华北', '956436', '中国'); INSERT INTO `orders` VALUES ('10916', 'RANCH', '1', '2017-02-27 00:00:00', '2017-03-27 00:00:00', '2017-03-09 00:00:00', '2', '63.7700', '谢小姐', '冠成园路 320 号', '常州', '江苏省', '华东', '886380', '中国'); INSERT INTO `orders` VALUES ('10917', 'ROMEY', '4', '2017-03-02 00:00:00', '2017-03-30 00:00:00', '2017-03-11 00:00:00', '2', '8.2900', '陈先生', '起义路 230 号', '天津', '天津市', '华北', '280010', '中国'); INSERT INTO `orders` VALUES ('10918', 'BOTTM', '3', '2017-03-02 00:00:00', '2017-03-30 00:00:00', '2017-03-11 00:00:00', '3', '48.8300', '王先生', '黄口江路 520 号', '北京', '北京市', '华北', '756479', '中国'); INSERT INTO `orders` VALUES ('10919', 'LINOD', '2', '2017-03-02 00:00:00', '2017-03-30 00:00:00', '2017-03-04 00:00:00', '2', '19.8000', '黄雅玲', '车站东路 830 号', '张家口', '河北省', '华北', '498023', '中国'); INSERT INTO `orders` VALUES ('10920', 'AROUT', '4', '2017-03-03 00:00:00', '2017-03-31 00:00:00', '2017-03-09 00:00:00', '2', '29.6100', '王先生', '车站南路 720 号', '天津', '天津市', '华北', '343567', '中国'); INSERT INTO `orders` VALUES ('10921', 'VAFFE', '1', '2017-03-03 00:00:00', '2017-04-14 00:00:00', '2017-03-09 00:00:00', '1', '176.4800', '方先生', '机场东路 950 号', '天津', '天津市', '华北', '234575', '中国'); INSERT INTO `orders` VALUES ('10922', 'HANAR', '5', '2017-03-03 00:00:00', '2017-03-31 00:00:00', '2017-03-05 00:00:00', '3', '62.7400', '谢小姐', '车站路 630 号', '石家庄', '河北省', '华北', '985060', '中国'); INSERT INTO `orders` VALUES ('10923', 'LAMAI', '7', '2017-03-03 00:00:00', '2017-04-14 00:00:00', '2017-03-13 00:00:00', '3', '68.2600', '苏先生', '车站西路 390 号', '深圳', '广东省', '华南', '890879', '中国'); INSERT INTO `orders` VALUES ('10924', 'BERGS', '3', '2017-03-04 00:00:00', '2017-04-01 00:00:00', '2017-04-08 00:00:00', '2', '151.5200', '李先生', '起义路甲 920 号', '南京', '江苏省', '华东', '798089', '中国'); INSERT INTO `orders` VALUES ('10925', 'HANAR', '3', '2017-03-04 00:00:00', '2017-04-01 00:00:00', '2017-03-13 00:00:00', '1', '2.2700', '谢小姐', '长春路 370 号', '天津', '天津市', '华北', '787045', '中国'); INSERT INTO `orders` VALUES ('10926', 'ANATR', '4', '2017-03-04 00:00:00', '2017-04-01 00:00:00', '2017-03-11 00:00:00', '3', '39.9200', '黄小姐', '石碑路丁 210 号', '大连', '辽宁省', '东北', '565479', '中国'); INSERT INTO `orders` VALUES ('10927', 'LACOR', '4', '2017-03-05 00:00:00', '2017-04-02 00:00:00', '2017-04-08 00:00:00', '1', '19.7900', '余小姐', '石碑路甲 140 号', '西安', '陕西省', '西北', '907987', '中国'); INSERT INTO `orders` VALUES ('10928', 'GALED', '1', '2017-03-05 00:00:00', '2017-04-02 00:00:00', '2017-03-18 00:00:00', '1', '1.3600', '林小姐', '威成路 320 号', '重庆', '重庆市', '西南', '567690', '中国'); INSERT INTO `orders` VALUES ('10929', 'FRANK', '6', '2017-03-05 00:00:00', '2017-04-02 00:00:00', '2017-03-12 00:00:00', '1', '33.9300', '余小姐', '明成西街 470 号', '重庆', '重庆市', '西南', '808059', '中国'); INSERT INTO `orders` VALUES ('10930', 'SUPRD', '4', '2017-03-06 00:00:00', '2017-04-17 00:00:00', '2017-03-18 00:00:00', '3', '15.5500', '刘先生', '舜井街 560 号', '深圳', '广东省', '华南', '760908', '中国'); INSERT INTO `orders` VALUES ('10931', 'RICSU', '4', '2017-03-06 00:00:00', '2017-03-20 00:00:00', '2017-03-19 00:00:00', '2', '13.6000', '方先生', '使馆路 370 号', '大连', '辽宁省', '东北', '120412', '中国'); INSERT INTO `orders` VALUES ('10932', 'BONAP', '8', '2017-03-06 00:00:00', '2017-04-03 00:00:00', '2017-03-24 00:00:00', '1', '134.6400', '谢小姐', '黄池路 930 号', '大连', '辽宁省', '东北', '130083', '中国'); INSERT INTO `orders` VALUES ('10933', 'ISLAT', '6', '2017-03-06 00:00:00', '2017-04-03 00:00:00', '2017-03-16 00:00:00', '3', '54.1500', '方先生', '威刚街 480 号', '天津', '天津市', '华北', '234254', '中国'); INSERT INTO `orders` VALUES ('10934', 'LEHMS', '3', '2017-03-09 00:00:00', '2017-04-06 00:00:00', '2017-03-12 00:00:00', '3', '32.0100', '黎先生', '花园西路 830 号', '天津', '天津市', '华北', '453466', '中国'); INSERT INTO `orders` VALUES ('10935', 'WELLI', '4', '2017-03-09 00:00:00', '2017-04-06 00:00:00', '2017-03-18 00:00:00', '3', '47.5900', '何先生', '光明北路 210 号', '厦门', '福建省', '华南', '353467', '中国'); INSERT INTO `orders` VALUES ('10936', 'GREAL', '3', '2017-03-09 00:00:00', '2017-04-06 00:00:00', '2017-03-18 00:00:00', '2', '33.6800', '方先生', '潼关路 40 号', '海口', '海南省', '华南', '454748', '中国'); INSERT INTO `orders` VALUES ('10937', 'CACTU', '7', '2017-03-10 00:00:00', '2017-03-24 00:00:00', '2017-03-13 00:00:00', '3', '31.5100', '李先生', '津门路 70 号', '常州', '江苏省', '华东', '565474', '中国'); INSERT INTO `orders` VALUES ('10938', 'QUICK', '3', '2017-03-10 00:00:00', '2017-04-07 00:00:00', '2017-03-16 00:00:00', '2', '31.8900', '刘先生', '冠成园路 30 号', '天津', '天津市', '华北', '809784', '中国'); INSERT INTO `orders` VALUES ('10939', 'MAGAA', '2', '2017-03-10 00:00:00', '2017-04-07 00:00:00', '2017-03-13 00:00:00', '2', '76.3300', '王炫皓', '起义路 20 号', '深圳', '广东省', '华南', '906853', '中国'); INSERT INTO `orders` VALUES ('10940', 'BONAP', '8', '2017-03-11 00:00:00', '2017-04-08 00:00:00', '2017-03-23 00:00:00', '3', '19.7700', '谢小姐', '黄口江路 50 号', '深圳', '广东省', '华南', '687759', '中国'); INSERT INTO `orders` VALUES ('10941', 'SAVEA', '7', '2017-03-11 00:00:00', '2017-04-08 00:00:00', '2017-03-20 00:00:00', '2', '400.8100', '苏先生', '车站东路 80 号', '天津', '天津市', '华北', '458965', '中国'); INSERT INTO `orders` VALUES ('10942', 'REGGC', '9', '2017-03-11 00:00:00', '2017-04-08 00:00:00', '2017-03-18 00:00:00', '3', '17.9500', '徐先生', '文化北街 283 号', '石家庄', '河北省', '华北', '576906', '中国'); INSERT INTO `orders` VALUES ('10943', 'BSBEV', '4', '2017-03-11 00:00:00', '2017-04-08 00:00:00', '2017-03-19 00:00:00', '2', '2.1700', '徐先生', '江北路 274 号', '南京', '江苏省', '华东', '876060', '中国'); INSERT INTO `orders` VALUES ('10944', 'BOTTM', '6', '2017-03-12 00:00:00', '2017-03-26 00:00:00', '2017-03-13 00:00:00', '3', '52.9200', '王先生', '汇安路 257 号', '秦皇岛', '河北省', '华北', '500798', '中国'); INSERT INTO `orders` VALUES ('10945', 'MORGK', '4', '2017-03-12 00:00:00', '2017-04-09 00:00:00', '2017-03-18 00:00:00', '1', '10.2200', '方建文', '文化南路 38 号', '南京', '江苏省', '华东', '546590', '中国'); INSERT INTO `orders` VALUES ('10946', 'VAFFE', '1', '2017-03-12 00:00:00', '2017-04-09 00:00:00', '2017-03-19 00:00:00', '2', '27.2000', '方先生', '团结路 24 号', '常州', '江苏省', '华东', '820097', '中国'); INSERT INTO `orders` VALUES ('10947', 'BSBEV', '3', '2017-03-13 00:00:00', '2017-04-10 00:00:00', '2017-03-16 00:00:00', '2', '3.2600', '徐先生', '大众东路 378 号', '南京', '江苏省', '华东', '964532', '中国'); INSERT INTO `orders` VALUES ('10948', 'GODOS', '3', '2017-03-13 00:00:00', '2017-04-10 00:00:00', '2017-03-19 00:00:00', '3', '23.3900', '锺小姐', '人民路 38 号', '深圳', '广东省', '华南', '411012', '中国'); INSERT INTO `orders` VALUES ('10949', 'BOTTM', '2', '2017-03-13 00:00:00', '2017-04-10 00:00:00', '2017-03-17 00:00:00', '3', '74.4400', '王先生', '通化街 23 号', '张家口', '河北省', '华北', '242353', '中国'); INSERT INTO `orders` VALUES ('10950', 'MAGAA', '1', '2017-03-16 00:00:00', '2017-04-13 00:00:00', '2017-03-23 00:00:00', '2', '2.5000', '王炫皓', '河北路 852 号', '上海', '上海市', '华东', '241008', '中国'); INSERT INTO `orders` VALUES ('10951', 'RICSU', '9', '2017-03-16 00:00:00', '2017-04-27 00:00:00', '2017-04-07 00:00:00', '2', '30.8500', '方先生', '阜石路 921 号', '北京', '北京市', '华北', '120475', '中国'); INSERT INTO `orders` VALUES ('10952', 'ALFKI', '1', '2017-03-16 00:00:00', '2017-04-27 00:00:00', '2017-03-24 00:00:00', '1', '40.4200', '李小姐', '大崇明路 50 号', '天津', '天津市', '华北', '343567', '中国'); INSERT INTO `orders` VALUES ('10953', 'AROUT', '9', '2017-03-16 00:00:00', '2017-03-30 00:00:00', '2017-03-25 00:00:00', '2', '23.7200', '王先生', '跃进路 320 号', '南昌', '江西省', '华东', '674674', '中国'); INSERT INTO `orders` VALUES ('10954', 'LINOD', '5', '2017-03-17 00:00:00', '2017-04-28 00:00:00', '2017-03-20 00:00:00', '1', '27.9100', '黄雅玲', '津塘大路 390 号', '深圳', '广东省', '华南', '498045', '中国'); INSERT INTO `orders` VALUES ('10955', 'FOLKO', '8', '2017-03-17 00:00:00', '2017-04-14 00:00:00', '2017-03-20 00:00:00', '2', '3.2600', '陈先生', '铁人路 360 号', '大连', '辽宁省', '东北', '564576', '中国'); INSERT INTO `orders` VALUES ('10956', 'BLAUS', '6', '2017-03-17 00:00:00', '2017-04-28 00:00:00', '2017-03-20 00:00:00', '2', '44.6500', '刘先生', '江槐东街 740 号', '天津', '天津市', '华北', '683045', '中国'); INSERT INTO `orders` VALUES ('10957', 'HILAA', '8', '2017-03-18 00:00:00', '2017-04-15 00:00:00', '2017-03-27 00:00:00', '3', '105.3600', '王先生', '华翠南路 270 号', '西安', '陕西省', '西北', '502255', '中国'); INSERT INTO `orders` VALUES ('10958', 'OCEAN', '7', '2017-03-18 00:00:00', '2017-04-15 00:00:00', '2017-03-27 00:00:00', '2', '49.5600', '谢丽秋', '九江西街 370 号', '重庆', '重庆市', '西南', '101057', '中国'); INSERT INTO `orders` VALUES ('10959', 'GOURL', '6', '2017-03-18 00:00:00', '2017-04-29 00:00:00', '2017-03-23 00:00:00', '2', '4.9800', '刘先生', '湾乡甲路 320 号', '重庆', '重庆市', '西南', '048766', '中国'); INSERT INTO `orders` VALUES ('10960', 'HILAA', '3', '2017-03-19 00:00:00', '2017-04-02 00:00:00', '2017-04-08 00:00:00', '1', '2.0800', '王先生', '幸福西大路 230 号', '天津', '天津市', '华北', '502564', '中国'); INSERT INTO `orders` VALUES ('10961', 'QUEEN', '8', '2017-03-19 00:00:00', '2017-04-16 00:00:00', '2017-03-30 00:00:00', '1', '104.4700', '方先生', '南京路丁 930 号', '天津', '天津市', '华北', '055654', '中国'); INSERT INTO `orders` VALUES ('10962', 'QUICK', '8', '2017-03-19 00:00:00', '2017-04-16 00:00:00', '2017-03-23 00:00:00', '2', '275.7900', '刘先生', '云南路 910 号', '深圳', '广东省', '华南', '013056', '中国'); INSERT INTO `orders` VALUES ('10963', 'FURIB', '9', '2017-03-19 00:00:00', '2017-04-16 00:00:00', '2017-03-26 00:00:00', '3', '2.7000', '林小姐', '天大东路 340 号', '南京', '江苏省', '华东', '167556', '中国'); INSERT INTO `orders` VALUES ('10964', 'SPECD', '3', '2017-03-20 00:00:00', '2017-04-17 00:00:00', '2017-03-24 00:00:00', '2', '87.3800', '黎先生', '柳明辅路 300 号', '厦门', '福建省', '华南', '750165', '中国'); INSERT INTO `orders` VALUES ('10965', 'OLDWO', '6', '2017-03-20 00:00:00', '2017-04-17 00:00:00', '2017-03-30 00:00:00', '3', '144.3800', '王俊元', '城东路 120 号', '天津', '天津市', '华北', '995085', '中国'); INSERT INTO `orders` VALUES ('10966', 'CHOPS', '4', '2017-03-20 00:00:00', '2017-04-17 00:00:00', '2017-04-08 00:00:00', '1', '27.1900', '林小姐', '同兴北路 360 号', '海口', '海南省', '华南', '301256', '中国'); INSERT INTO `orders` VALUES ('10967', 'TOMSP', '2', '2017-03-23 00:00:00', '2017-04-20 00:00:00', '2017-04-02 00:00:00', '2', '62.2200', '谢小姐', '承德路 730 号', '天津', '天津市', '华北', '440875', '中国'); INSERT INTO `orders` VALUES ('10968', 'ERNSH', '1', '2017-03-23 00:00:00', '2017-04-20 00:00:00', '2017-04-01 00:00:00', '3', '74.6000', '王先生', '光德新路 230 号', '深圳', '广东省', '华南', '801056', '中国'); INSERT INTO `orders` VALUES ('10969', 'COMMI', '1', '2017-03-23 00:00:00', '2017-04-20 00:00:00', '2017-03-30 00:00:00', '2', '0.2100', '锺小姐', '老龙头东路 210 号', '青岛', '山东省', '华东', '054356', '中国'); INSERT INTO `orders` VALUES ('10970', 'BOLID', '9', '2017-03-24 00:00:00', '2017-04-07 00:00:00', '2017-04-24 00:00:00', '1', '16.1600', '刘先生', '明涌江 320 号', '大连', '辽宁省', '东北', '280235', '中国'); INSERT INTO `orders` VALUES ('10971', 'FRANR', '2', '2017-03-24 00:00:00', '2017-04-21 00:00:00', '2017-04-02 00:00:00', '2', '121.8200', '苏先生', '西跃进路 340 号', '天津', '天津市', '华北', '440007', '中国'); INSERT INTO `orders` VALUES ('10972', 'LACOR', '4', '2017-03-24 00:00:00', '2017-04-21 00:00:00', '2017-03-26 00:00:00', '2', '0.0200', '余小姐', '黄河老路 350 号', '石家庄', '河北省', '华北', '780008', '中国'); INSERT INTO `orders` VALUES ('10973', 'LACOR', '6', '2017-03-24 00:00:00', '2017-04-21 00:00:00', '2017-03-27 00:00:00', '2', '15.1700', '余小姐', '宏伟辅路 380 号', '秦皇岛', '河北省', '华北', '780005', '中国'); INSERT INTO `orders` VALUES ('10974', 'SPLIR', '3', '2017-03-25 00:00:00', '2017-04-08 00:00:00', '2017-04-03 00:00:00', '3', '12.9600', '唐小姐', '光明北路 60 号', '南京', '江苏省', '华东', '825777', '中国'); INSERT INTO `orders` VALUES ('10975', 'BOTTM', '1', '2017-03-25 00:00:00', '2017-04-22 00:00:00', '2017-03-27 00:00:00', '3', '32.2700', '王先生', '方甲路 30 号', '深圳', '广东省', '华南', '687578', '中国'); INSERT INTO `orders` VALUES ('10976', 'HILAA', '1', '2017-03-25 00:00:00', '2017-05-06 00:00:00', '2017-04-03 00:00:00', '1', '37.9700', '王先生', '复后路 70 号', '石家庄', '河北省', '华北', '502299', '中国'); INSERT INTO `orders` VALUES ('10977', 'FOLKO', '8', '2017-03-26 00:00:00', '2017-04-23 00:00:00', '2017-04-10 00:00:00', '3', '208.5000', '陈先生', '长江老路 30 号', '天津', '天津市', '华北', '786785', '中国'); INSERT INTO `orders` VALUES ('10978', 'MAISD', '9', '2017-03-26 00:00:00', '2017-04-23 00:00:00', '2017-04-23 00:00:00', '2', '32.8200', '李柏麟', '榛子路 21 号', '常州', '江苏省', '华东', '907077', '中国'); INSERT INTO `orders` VALUES ('10979', 'ERNSH', '8', '2017-03-26 00:00:00', '2017-04-23 00:00:00', '2017-03-31 00:00:00', '2', '353.0700', '王先生', '白颐街 54 号', '张家口', '河北省', '华北', '801070', '中国'); INSERT INTO `orders` VALUES ('10980', 'FOLKO', '4', '2017-03-27 00:00:00', '2017-05-08 00:00:00', '2017-04-17 00:00:00', '1', '1.2600', '陈先生', '复兴路丁 37 号', '北京', '北京市', '华北', '785678', '中国'); INSERT INTO `orders` VALUES ('10981', 'HANAR', '1', '2017-03-27 00:00:00', '2017-04-24 00:00:00', '2017-04-02 00:00:00', '2', '193.3700', '谢小姐', '万泉河路 23 号', '北京', '北京市', '华北', '785878', '中国'); INSERT INTO `orders` VALUES ('10982', 'BOTTM', '2', '2017-03-27 00:00:00', '2017-04-24 00:00:00', '2017-04-08 00:00:00', '1', '14.0100', '王先生', '长百路 38 号', '天津', '天津市', '华北', '787869', '中国'); INSERT INTO `orders` VALUES ('10983', 'SAVEA', '2', '2017-03-27 00:00:00', '2017-04-24 00:00:00', '2017-04-06 00:00:00', '2', '657.5400', '苏先生', '百肃路 23 号', '深圳', '广东省', '华南', '837207', '中国'); INSERT INTO `orders` VALUES ('10984', 'SAVEA', '1', '2017-03-30 00:00:00', '2017-04-27 00:00:00', '2017-04-03 00:00:00', '3', '211.2200', '苏先生', '远园东路 25 号', '温州', '浙江省', '华东', '837209', '中国'); INSERT INTO `orders` VALUES ('10985', 'HUNGO', '2', '2017-03-30 00:00:00', '2017-04-27 00:00:00', '2017-04-02 00:00:00', '1', '91.5100', '周先生', '西明路 18 号', '天津', '天津市', '华北', '345256', '中国'); INSERT INTO `orders` VALUES ('10986', 'OCEAN', '8', '2017-03-30 00:00:00', '2017-04-27 00:00:00', '2017-04-21 00:00:00', '2', '217.8600', '谢丽秋', '卫东路 3 号', '天津', '天津市', '华北', '101046', '中国'); INSERT INTO `orders` VALUES ('10987', 'EASTC', '8', '2017-03-31 00:00:00', '2017-04-28 00:00:00', '2017-04-06 00:00:00', '1', '185.4800', '谢小姐', '民东大路 7 号', '南京', '江苏省', '华东', '478668', '中国'); INSERT INTO `orders` VALUES ('10988', 'RATTC', '3', '2017-03-31 00:00:00', '2017-04-28 00:00:00', '2017-04-10 00:00:00', '2', '61.1400', '王先生', '东石碑街 31 号', '天津', '天津市', '华北', '871108', '中国'); INSERT INTO `orders` VALUES ('10989', 'QUEDE', '2', '2017-03-31 00:00:00', '2017-04-28 00:00:00', '2017-04-02 00:00:00', '1', '34.7600', '刘先生', '中园大街 3 号', '重庆', '重庆市', '西南', '027773', '中国'); INSERT INTO `orders` VALUES ('10990', 'ERNSH', '2', '2017-04-01 00:00:00', '2017-05-13 00:00:00', '2017-04-07 00:00:00', '3', '117.6100', '王先生', '扬成新路 80 号', '重庆', '重庆市', '西南', '801023', '中国'); INSERT INTO `orders` VALUES ('10991', 'QUICK', '1', '2017-04-01 00:00:00', '2017-04-29 00:00:00', '2017-04-07 00:00:00', '1', '38.5100', '刘先生', '北石路 19 号', '天津', '天津市', '华北', '013072', '中国'); INSERT INTO `orders` VALUES ('10992', 'THEBI', '1', '2017-04-01 00:00:00', '2017-04-29 00:00:00', '2017-04-03 00:00:00', '3', '4.2700', '方先生', '环二路 3 号', '天津', '天津市', '华北', '972077', '中国'); INSERT INTO `orders` VALUES ('10993', 'FOLKO', '7', '2017-04-01 00:00:00', '2017-04-29 00:00:00', '2017-04-10 00:00:00', '3', '8.8100', '陈先生', '会江新路 39 号', '厦门', '福建省', '华南', '899453', '中国'); INSERT INTO `orders` VALUES ('10994', 'VAFFE', '2', '2017-04-02 00:00:00', '2017-04-16 00:00:00', '2017-04-09 00:00:00', '3', '65.5300', '方先生', '江成路甲 34 号', '深圳', '广东省', '华南', '820077', '中国'); INSERT INTO `orders` VALUES ('10995', 'PERIC', '1', '2017-04-02 00:00:00', '2017-04-30 00:00:00', '2017-04-06 00:00:00', '3', '46.0000', '林慧音', '口内大街 21 号', '天津', '天津市', '华北', '050337', '中国'); INSERT INTO `orders` VALUES ('10996', 'QUICK', '4', '2017-04-02 00:00:00', '2017-04-30 00:00:00', '2017-04-10 00:00:00', '2', '1.1200', '刘先生', '白岭路 54 号', '海口', '海南省', '华南', '013077', '中国'); INSERT INTO `orders` VALUES ('10997', 'LILAS', '8', '2017-04-03 00:00:00', '2017-05-15 00:00:00', '2017-04-13 00:00:00', '2', '73.9100', '陈玉美', '大岗路 37 号', '成都', '四川省', '西南', '350894', '中国'); INSERT INTO `orders` VALUES ('10998', 'WOLZA', '8', '2017-04-03 00:00:00', '2017-04-17 00:00:00', '2017-04-17 00:00:00', '2', '20.3100', '吴小姐', '灵光路 23 号', '青岛', '山东省', '华东', '474747', '中国'); INSERT INTO `orders` VALUES ('10999', 'OTTIK', '6', '2017-04-03 00:00:00', '2017-05-01 00:00:00', '2017-04-10 00:00:00', '2', '96.3500', '徐文彬', '华光路 38 号', '天津', '天津市', '华北', '507392', '中国'); INSERT INTO `orders` VALUES ('11000', 'RATTC', '2', '2017-04-06 00:00:00', '2017-05-04 00:00:00', '2017-04-14 00:00:00', '3', '55.1200', '王先生', '华北路 23 号', '石家庄', '河北省', '华北', '871102', '中国'); INSERT INTO `orders` VALUES ('11001', 'FOLKO', '2', '2017-04-06 00:00:00', '2017-05-04 00:00:00', '2017-04-14 00:00:00', '2', '197.3000', '陈先生', '科东路 25 号', '深圳', '广东省', '华南', '342356', '中国'); INSERT INTO `orders` VALUES ('11002', 'SAVEA', '4', '2017-04-06 00:00:00', '2017-05-04 00:00:00', '2017-04-16 00:00:00', '1', '141.1600', '苏先生', '明城东路 762 号', '深圳', '广东省', '华南', '837206', '中国'); INSERT INTO `orders` VALUES ('11003', 'THECR', '3', '2017-04-06 00:00:00', '2017-05-04 00:00:00', '2017-04-08 00:00:00', '3', '14.9100', '刘先生', '平和路 794 号', '秦皇岛', '河北省', '华北', '598018', '中国'); INSERT INTO `orders` VALUES ('11004', 'MAISD', '3', '2017-04-07 00:00:00', '2017-05-05 00:00:00', '2017-04-20 00:00:00', '1', '44.8400', '李柏麟', '光成路 6 号', '天津', '天津市', '华北', '575909', '中国'); INSERT INTO `orders` VALUES ('11005', 'WILMK', '2', '2017-04-07 00:00:00', '2017-05-05 00:00:00', '2017-04-10 00:00:00', '1', '0.7500', '唐小姐', '广渠东路 42 号', '天津', '天津市', '华北', '212400', '中国'); INSERT INTO `orders` VALUES ('11006', 'GREAL', '3', '2017-04-07 00:00:00', '2017-05-05 00:00:00', '2017-04-15 00:00:00', '2', '25.1900', '方先生', '海东大路 77 号', '石家庄', '河北省', '华北', '974030', '中国'); INSERT INTO `orders` VALUES ('11007', 'PRINI', '8', '2017-04-08 00:00:00', '2017-05-06 00:00:00', '2017-04-13 00:00:00', '2', '202.2400', '锺彩瑜', '历平路 53 号', '深圳', '广东省', '华南', '175600', '中国'); INSERT INTO `orders` VALUES ('11008', 'ERNSH', '7', '2017-04-08 00:00:00', '2017-05-06 00:00:00', '2017-04-13 00:00:00', '3', '79.4600', '王先生', '井口大街 4 号', '常州', '江苏省', '华东', '860954', '中国'); INSERT INTO `orders` VALUES ('11009', 'GODOS', '2', '2017-04-08 00:00:00', '2017-05-06 00:00:00', '2017-04-10 00:00:00', '1', '59.1100', '锺小姐', '经纬路 8 号', '张家口', '河北省', '华北', '411019', '中国'); INSERT INTO `orders` VALUES ('11010', 'REGGC', '2', '2017-04-09 00:00:00', '2017-05-07 00:00:00', '2017-04-21 00:00:00', '2', '28.7100', '徐先生', '圆城街甲 2 号', '天津', '天津市', '华北', '421008', '中国'); INSERT INTO `orders` VALUES ('11011', 'BONAP', '3', '2017-04-09 00:00:00', '2017-05-07 00:00:00', '2017-04-13 00:00:00', '1', '1.2100', '陈小姐', '城内大街 77 号', '南昌', '江西省', '华东', '130088', '中国'); INSERT INTO `orders` VALUES ('11012', 'FRANK', '1', '2017-04-09 00:00:00', '2017-04-23 00:00:00', '2017-04-17 00:00:00', '3', '242.9500', '余小姐', '上饶路 432 号', '天津', '天津市', '华北', '808050', '中国'); INSERT INTO `orders` VALUES ('11013', 'ROMEY', '2', '2017-04-09 00:00:00', '2017-05-07 00:00:00', '2017-04-10 00:00:00', '1', '32.9900', '陈先生', '江饶路 34 号', '深圳', '广东省', '华南', '280010', '中国'); INSERT INTO `orders` VALUES ('11014', 'LINOD', '2', '2017-04-10 00:00:00', '2017-05-08 00:00:00', '2017-04-15 00:00:00', '3', '23.6000', '黄雅玲', '旅西路 74 号', '温州', '浙江省', '华东', '498000', '中国'); INSERT INTO `orders` VALUES ('11015', 'SANTG', '2', '2017-04-10 00:00:00', '2017-04-24 00:00:00', '2017-04-20 00:00:00', '2', '4.6200', '余小姐', '承恩路 21 号', '天津', '天津市', '华北', '411000', '中国'); INSERT INTO `orders` VALUES ('11016', 'BONAP', '9', '2017-04-10 00:00:00', '2017-05-08 00:00:00', '2017-04-13 00:00:00', '2', '33.8000', '王先生', '花园街甲 2 号', '常州', '江苏省', '华东', '130080', '中国'); INSERT INTO `orders` VALUES ('11017', 'ERNSH', '9', '2017-04-13 00:00:00', '2017-05-11 00:00:00', '2017-04-20 00:00:00', '2', '754.2600', '王先生', '街口大路 57 号', '西安', '陕西省', '西北', '801000', '中国'); INSERT INTO `orders` VALUES ('11018', 'LONEP', '4', '2017-04-13 00:00:00', '2017-05-11 00:00:00', '2017-04-16 00:00:00', '2', '11.6500', '胡继尧', '东城路 72 号', '常州', '江苏省', '华东', '972190', '中国'); INSERT INTO `orders` VALUES ('11019', 'RANCH', '6', '2017-04-13 00:00:00', '2017-05-11 00:00:00', '2017-04-16 00:00:00', '3', '3.1700', '谢小姐', '广石路 58 号', '重庆', '重庆市', '西南', '101000', '中国'); INSERT INTO `orders` VALUES ('11020', 'OTTIK', '2', '2017-04-14 00:00:00', '2017-05-12 00:00:00', '2017-04-16 00:00:00', '2', '43.3000', '徐文彬', '北大路东 82 号', '重庆', '重庆市', '西南', '507390', '中国'); INSERT INTO `orders` VALUES ('11021', 'QUICK', '3', '2017-04-14 00:00:00', '2017-05-12 00:00:00', '2017-04-21 00:00:00', '1', '297.1800', '刘先生', '红河南路 85 号', '深圳', '广东省', '华南', '013077', '中国'); INSERT INTO `orders` VALUES ('11022', 'HANAR', '9', '2017-04-14 00:00:00', '2017-05-12 00:00:00', '2017-05-04 00:00:00', '2', '6.2700', '谢小姐', '明成南路 29 号', '厦门', '福建省', '华南', '054876', '中国'); INSERT INTO `orders` VALUES ('11023', 'BSBEV', '1', '2017-04-14 00:00:00', '2017-04-28 00:00:00', '2017-04-24 00:00:00', '2', '123.8300', '徐先生', '正光街 62 号', '南京', '江苏省', '华东', '386980', '中国'); INSERT INTO `orders` VALUES ('11024', 'EASTC', '4', '2017-04-15 00:00:00', '2017-05-13 00:00:00', '2017-04-20 00:00:00', '1', '74.3600', '谢小姐', '广正路 645 号', '南京', '江苏省', '华东', '597008', '中国'); INSERT INTO `orders` VALUES ('11025', 'WARTH', '6', '2017-04-15 00:00:00', '2017-05-13 00:00:00', '2017-04-24 00:00:00', '3', '29.1700', '成先生', '南江路 7 号', '天津', '天津市', '华北', '901100', '中国'); INSERT INTO `orders` VALUES ('11026', 'FRANS', '4', '2017-04-15 00:00:00', '2017-05-13 00:00:00', '2017-04-28 00:00:00', '1', '47.0900', '成先生', '南饶路 43 号', '深圳', '广东省', '华南', '101000', '中国'); INSERT INTO `orders` VALUES ('11027', 'BOTTM', '1', '2017-04-16 00:00:00', '2017-05-14 00:00:00', '2017-04-20 00:00:00', '1', '52.5200', '王先生', '黄岛区科技园 4 号', '青岛', '山东省', '华东', '386567', '中国'); INSERT INTO `orders` VALUES ('11028', 'KOENE', '2', '2017-04-16 00:00:00', '2017-05-14 00:00:00', '2017-04-22 00:00:00', '1', '29.5900', '陈先生', '科技路 28 号', '张家口', '河北省', '华北', '147767', '中国'); INSERT INTO `orders` VALUES ('11029', 'CHOPS', '4', '2017-04-16 00:00:00', '2017-05-14 00:00:00', '2017-04-27 00:00:00', '1', '47.8400', '林小姐', '崇西大路 393 号', '重庆', '重庆市', '西南', '301200', '中国'); INSERT INTO `orders` VALUES ('11030', 'SAVEA', '7', '2017-04-17 00:00:00', '2017-05-15 00:00:00', '2017-04-27 00:00:00', '2', '830.7500', '苏先生', '京南路 271 号', '大连', '辽宁省', '东北', '837204', '中国'); INSERT INTO `orders` VALUES ('11031', 'SAVEA', '6', '2017-04-17 00:00:00', '2017-05-15 00:00:00', '2017-04-24 00:00:00', '2', '227.2200', '苏先生', '成西街 69 号', '秦皇岛', '河北省', '华北', '837205', '中国'); INSERT INTO `orders` VALUES ('11032', 'WHITC', '2', '2017-04-17 00:00:00', '2017-05-15 00:00:00', '2017-04-23 00:00:00', '3', '606.1900', '黎先生', '川东街 37 号', '天津', '天津市', '华北', '981246', '中国'); INSERT INTO `orders` VALUES ('11033', 'RICSU', '7', '2017-04-17 00:00:00', '2017-05-15 00:00:00', '2017-04-23 00:00:00', '3', '84.7400', '方先生', '承佐路 21 号', '南京', '江苏省', '华东', '120489', '中国'); INSERT INTO `orders` VALUES ('11034', 'OLDWO', '8', '2017-04-20 00:00:00', '2016-06-01 00:00:00', '2017-04-27 00:00:00', '1', '40.3200', '王俊元', '建桥街 1 号', '南京', '江苏省', '华东', '995080', '中国'); INSERT INTO `orders` VALUES ('11035', 'SUPRD', '2', '2017-04-20 00:00:00', '2017-05-18 00:00:00', '2017-04-24 00:00:00', '2', '0.1700', '刘先生', '枫江街 29 号', '张家口', '河北省', '华北', '386769', '中国'); INSERT INTO `orders` VALUES ('11036', 'DRACD', '8', '2017-04-20 00:00:00', '2017-05-18 00:00:00', '2017-04-22 00:00:00', '3', '149.4700', '方先生', '广场西路 63 号', '石家庄', '河北省', '华北', '520600', '中国'); INSERT INTO `orders` VALUES ('11037', 'GODOS', '7', '2017-04-21 00:00:00', '2017-05-19 00:00:00', '2017-04-27 00:00:00', '1', '3.2000', '锺小姐', '茶花园街 54 号', '天津', '天津市', '华北', '411010', '中国'); INSERT INTO `orders` VALUES ('11038', 'SUPRD', '1', '2017-04-21 00:00:00', '2017-05-19 00:00:00', '2017-04-30 00:00:00', '2', '29.5900', '刘先生', '月桂西路 39 号', '常州', '江苏省', '华东', '232400', '中国'); INSERT INTO `orders` VALUES ('11039', 'LINOD', '1', '2017-04-21 00:00:00', '2017-05-19 00:00:00', null, '2', '65.0000', '黄雅玲', '平乡路 127 号', '张家口', '河北省', '华北', '498020', '中国'); INSERT INTO `orders` VALUES ('11040', 'GREAL', '4', '2017-04-22 00:00:00', '2017-05-20 00:00:00', null, '3', '18.8400', '方先生', '品涛路 93 号', '南京', '江苏省', '华东', '974034', '中国'); INSERT INTO `orders` VALUES ('11041', 'CHOPS', '3', '2017-04-22 00:00:00', '2017-05-20 00:00:00', '2017-04-28 00:00:00', '2', '48.2200', '林小姐', '广宁北路 83 号', '天津', '天津市', '华北', '301280', '中国'); INSERT INTO `orders` VALUES ('11042', 'COMMI', '2', '2017-04-22 00:00:00', '2017-05-06 00:00:00', '2017-05-01 00:00:00', '1', '29.9900', '锺小姐', '寒江口甲 37 号', '张家口', '河北省', '华北', '054303', '中国'); INSERT INTO `orders` VALUES ('11043', 'SPECD', '5', '2017-04-22 00:00:00', '2017-05-20 00:00:00', '2017-04-29 00:00:00', '2', '8.8000', '黎先生', '柳坞口 64 号', '天津', '天津市', '华北', '750198', '中国'); INSERT INTO `orders` VALUES ('11044', 'WOLZA', '4', '2017-04-23 00:00:00', '2017-05-21 00:00:00', '2017-05-01 00:00:00', '1', '8.7200', '吴小姐', '广源西路 35 号', '温州', '浙江省', '华东', '087680', '中国'); INSERT INTO `orders` VALUES ('11045', 'BOTTM', '6', '2017-04-23 00:00:00', '2017-05-21 00:00:00', null, '2', '70.5800', '王先生', '佑明南路 251 号', '深圳', '广东省', '华南', '705759', '中国'); INSERT INTO `orders` VALUES ('11046', 'WANDK', '8', '2017-04-23 00:00:00', '2017-05-21 00:00:00', '2017-04-24 00:00:00', '2', '71.6400', '苏先生', '光明路 73 号', '天津', '天津市', '华北', '705639', '中国'); INSERT INTO `orders` VALUES ('11047', 'EASTC', '7', '2017-04-24 00:00:00', '2017-05-22 00:00:00', '2017-05-01 00:00:00', '3', '46.6200', '谢小姐', '兴国大街 38 号', '南京', '江苏省', '华东', '758000', '中国'); INSERT INTO `orders` VALUES ('11048', 'BOTTM', '7', '2017-04-24 00:00:00', '2017-05-22 00:00:00', '2017-04-30 00:00:00', '3', '24.1200', '王先生', '光明北路 424 号', '南京', '江苏省', '华东', '769980', '中国'); INSERT INTO `orders` VALUES ('11049', 'GOURL', '3', '2017-04-24 00:00:00', '2017-05-22 00:00:00', '2017-05-04 00:00:00', '1', '8.3400', '刘先生', '忠良路 28 号', '天津', '天津市', '华北', '678970', '中国'); INSERT INTO `orders` VALUES ('11050', 'FOLKO', '8', '2017-04-27 00:00:00', '2017-05-25 00:00:00', '2017-05-05 00:00:00', '2', '59.4100', '陈先生', '孝先口 92 号', '天津', '天津市', '华北', '687080', '中国'); INSERT INTO `orders` VALUES ('11051', 'LAMAI', '7', '2017-04-27 00:00:00', '2017-05-25 00:00:00', null, '3', '2.7900', '苏先生', '昌和东路 218 号', '深圳', '广东省', '华南', '310006', '中国'); INSERT INTO `orders` VALUES ('11052', 'HANAR', '3', '2017-04-27 00:00:00', '2017-05-25 00:00:00', '2017-05-01 00:00:00', '1', '67.2600', '谢小姐', '光华路 74 号', '厦门', '福建省', '华南', '054876', '中国'); INSERT INTO `orders` VALUES ('11053', 'PICCO', '2', '2017-04-27 00:00:00', '2017-05-25 00:00:00', '2017-04-29 00:00:00', '2', '53.0500', '林丽莉', '原中街 48 号', '南京', '江苏省', '华东', '502060', '中国'); INSERT INTO `orders` VALUES ('11054', 'CACTU', '8', '2017-04-28 00:00:00', '2017-05-26 00:00:00', null, '1', '0.3300', '李先生', '红光东路 38 号', '张家口', '河北省', '华北', '101050', '中国'); INSERT INTO `orders` VALUES ('11055', 'HILAA', '7', '2017-04-28 00:00:00', '2017-05-26 00:00:00', '2017-05-05 00:00:00', '2', '120.9200', '王先生', '巫山口路 87 号', '成都', '四川省', '西南', '502230', '中国'); INSERT INTO `orders` VALUES ('11056', 'EASTC', '8', '2017-04-28 00:00:00', '2017-05-12 00:00:00', '2017-05-01 00:00:00', '2', '278.9600', '谢小姐', '金陵西街 27 号', '南京', '江苏省', '华东', '324234', '中国'); INSERT INTO `orders` VALUES ('11057', 'NORTS', '3', '2017-04-29 00:00:00', '2017-05-27 00:00:00', '2017-05-01 00:00:00', '3', '4.1300', '刘小龙', '复大南路 48 号', '南京', '江苏省', '华东', '345235', '中国'); INSERT INTO `orders` VALUES ('11058', 'BLAUS', '9', '2017-04-29 00:00:00', '2017-05-27 00:00:00', null, '3', '31.1400', '刘先生', '即墨路 32 号', '青岛', '山东省', '华东', '564567', '中国'); INSERT INTO `orders` VALUES ('11059', 'RICAR', '2', '2017-04-29 00:00:00', '2016-06-10 00:00:00', null, '2', '85.8000', '周先生', '光明路 535 号', '海口', '海南省', '华南', '356680', '中国'); INSERT INTO `orders` VALUES ('11060', 'FRANS', '2', '2017-04-30 00:00:00', '2017-05-28 00:00:00', '2017-05-04 00:00:00', '2', '10.9800', '成先生', '黄河辅路 31 号', '秦皇岛', '河北省', '华北', '457678', '中国'); INSERT INTO `orders` VALUES ('11061', 'GREAL', '4', '2017-04-30 00:00:00', '2016-06-11 00:00:00', null, '3', '14.0100', '方先生', '宏辅路 30 号', '深圳', '广东省', '华南', '756744', '中国'); INSERT INTO `orders` VALUES ('11062', 'REGGC', '4', '2017-04-30 00:00:00', '2017-05-28 00:00:00', null, '2', '29.9300', '徐先生', '光北路 6 号', '张家口', '河北省', '华北', '475689', '中国'); INSERT INTO `orders` VALUES ('11063', 'HUNGO', '3', '2017-04-30 00:00:00', '2017-05-28 00:00:00', '2017-05-06 00:00:00', '2', '81.7300', '周先生', '伟明路 12 号', '石家庄', '河北省', '华北', '379870', '中国'); INSERT INTO `orders` VALUES ('11064', 'SAVEA', '1', '2017-05-01 00:00:00', '2017-05-29 00:00:00', '2017-05-04 00:00:00', '1', '30.0900', '苏先生', '光复路 70 号', '天津', '天津市', '华北', '475686', '中国'); INSERT INTO `orders` VALUES ('11065', 'LILAS', '8', '2017-05-01 00:00:00', '2017-05-29 00:00:00', null, '1', '12.9100', '陈玉美', '江中路 30 号', '重庆', '重庆市', '西南', '575965', '中国'); INSERT INTO `orders` VALUES ('11066', 'WHITC', '7', '2017-05-01 00:00:00', '2017-05-29 00:00:00', '2017-05-04 00:00:00', '2', '44.7200', '黎先生', '学子路 21 号', '石家庄', '河北省', '华北', '981240', '中国'); INSERT INTO `orders` VALUES ('11067', 'DRACD', '1', '2017-05-04 00:00:00', '2017-05-18 00:00:00', '2017-05-06 00:00:00', '2', '7.9800', '方先生', '青灰石路 4 号', '天津', '天津市', '华北', '520660', '中国'); INSERT INTO `orders` VALUES ('11068', 'QUEEN', '8', '2017-05-04 00:00:00', '2016-06-01 00:00:00', null, '2', '81.7500', '方先生', '开兴路甲37 号', '大连', '辽宁省', '东北', '054870', '中国'); INSERT INTO `orders` VALUES ('11069', 'TORTU', '1', '2017-05-04 00:00:00', '2016-06-01 00:00:00', '2002-05-06 00:00:00', '2', '15.6700', '王先生', '万泉路 23 号', '深圳', '广东省', '华南', '050330', '中国'); INSERT INTO `orders` VALUES ('11070', 'LEHMS', '2', '2017-05-05 00:00:00', '2016-06-02 00:00:00', null, '1', '136.0000', '黎先生', '长河路 38 号', '海口', '海南省', '华南', '605280', '中国'); INSERT INTO `orders` VALUES ('11071', 'LILAS', '1', '2017-05-05 00:00:00', '2016-06-02 00:00:00', null, '1', '0.9300', '陈玉美', '百川路 23 号', '南昌', '江西省', '华东', '350800', '中国'); INSERT INTO `orders` VALUES ('11072', 'ERNSH', '4', '2017-05-05 00:00:00', '2016-06-02 00:00:00', null, '2', '258.6400', '王先生', '冀东路 25 号', '张家口', '河北省', '华北', '801070', '中国'); INSERT INTO `orders` VALUES ('11073', 'PERIC', '2', '2017-05-05 00:00:00', '2016-06-02 00:00:00', null, '2', '24.9500', '林慧音', '西华路 18 号', '深圳', '广东省', '华南', '050330', '中国'); INSERT INTO `orders` VALUES ('11074', 'SIMOB', '7', '2017-05-06 00:00:00', '2016-06-03 00:00:00', null, '2', '18.4400', '何先生', '巩东路 3 号', '温州', '浙江省', '华东', '173400', '中国'); INSERT INTO `orders` VALUES ('11075', 'RICSU', '8', '2017-05-06 00:00:00', '2016-06-03 00:00:00', null, '2', '6.1900', '方先生', '成昆路 524 号', '常州', '江苏省', '华东', '120400', '中国'); INSERT INTO `orders` VALUES ('11076', 'BONAP', '4', '2017-05-06 00:00:00', '2016-06-03 00:00:00', null, '2', '38.2800', '谢小姐', '季源南路 25 号', '常州', '江苏省', '华东', '130080', '中国'); INSERT INTO `orders` VALUES ('11077', 'RATTC', '1', '2017-05-06 00:00:00', '2016-06-03 00:00:00', null, '2', '8.5300', '王先生', '宽石西路 37 号', '深圳', '广东省', '华南', '871100', '中国'); -- ---------------------------- -- Table structure for products -- ---------------------------- DROP TABLE IF EXISTS `products`; CREATE TABLE `products` ( `ProductID` int(10) NOT NULL AUTO_INCREMENT, `ProductName` varchar(40) DEFAULT NULL, `SupplierID` int(10) DEFAULT NULL, `CategoryID` int(10) DEFAULT NULL, `QuantityPerUnit` varchar(20) DEFAULT NULL, `UnitPrice` decimal(19,4) DEFAULT NULL, `UnitsInStock` smallint(5) DEFAULT NULL, `UnitsOnOrder` smallint(5) DEFAULT NULL, `ReorderLevel` smallint(5) DEFAULT NULL, `Discontinued` tinyint(1) NOT NULL, PRIMARY KEY (`ProductID`) ) ENGINE=InnoDB AUTO_INCREMENT=78 DEFAULT CHARSET=gbk; -- ---------------------------- -- Records of products -- ---------------------------- INSERT INTO `products` VALUES ('1', '苹果汁', '1', '1', '每箱24瓶', '18.0000', '39', '0', '10', '-1'); INSERT INTO `products` VALUES ('2', '牛奶', '1', '1', '每箱24瓶', '19.0000', '17', '40', '25', '0'); INSERT INTO `products` VALUES ('3', '蕃茄酱', '1', '2', '每箱12瓶', '10.0000', '13', '70', '25', '0'); INSERT INTO `products` VALUES ('4', '盐', '2', '2', '每箱12瓶', '22.0000', '53', '0', '0', '0'); INSERT INTO `products` VALUES ('5', '麻油', '2', '2', '每箱12瓶', '21.3500', '0', '0', '0', '-1'); INSERT INTO `products` VALUES ('6', '酱油', '3', '2', '每箱12瓶', '25.0000', '120', '0', '25', '0'); INSERT INTO `products` VALUES ('7', '海鲜粉', '3', '7', '每箱30盒', '30.0000', '15', '0', '10', '0'); INSERT INTO `products` VALUES ('8', '胡椒粉', '3', '2', '每箱30盒', '40.0000', '6', '0', '0', '0'); INSERT INTO `products` VALUES ('9', '鸡', '4', '6', '每袋500克', '97.0000', '29', '0', '0', '-1'); INSERT INTO `products` VALUES ('10', '蟹', '4', '8', '每袋500克', '31.0000', '31', '0', '0', '0'); INSERT INTO `products` VALUES ('11', '民众奶酪', '5', '4', '每袋6包', '21.0000', '22', '30', '30', '0'); INSERT INTO `products` VALUES ('12', '德国奶酪', '5', '4', '每箱12瓶', '38.0000', '86', '0', '0', '0'); INSERT INTO `products` VALUES ('13', '龙虾', '6', '8', '每袋500克', '6.0000', '24', '0', '5', '0'); INSERT INTO `products` VALUES ('14', '沙茶', '6', '7', '每箱12瓶', '23.2500', '35', '0', '0', '0'); INSERT INTO `products` VALUES ('15', '味精', '6', '2', '每箱30盒', '15.5000', '39', '0', '5', '0'); INSERT INTO `products` VALUES ('16', '饼干', '7', '3', '每箱30盒', '17.4500', '29', '0', '10', '0'); INSERT INTO `products` VALUES ('17', '猪肉', '7', '6', '每袋500克', '39.0000', '0', '0', '0', '-1'); INSERT INTO `products` VALUES ('18', '墨鱼', '9', '8', '每袋500克', '62.5000', '42', '0', '0', '0'); INSERT INTO `products` VALUES ('19', '糖果', '8', '3', '每箱30盒', '9.2000', '25', '0', '5', '0'); INSERT INTO `products` VALUES ('20', '桂花糕', '8', '3', '每箱30盒', '81.0000', '40', '0', '0', '0'); INSERT INTO `products` VALUES ('21', '花生', '8', '3', '每箱30包', '10.0000', '3', '40', '5', '0'); INSERT INTO `products` VALUES ('22', '糯米', '9', '5', '每袋3公斤', '21.0000', '104', '0', '25', '0'); INSERT INTO `products` VALUES ('23', '燕麦', '9', '5', '每袋3公斤', '9.0000', '61', '0', '25', '0'); INSERT INTO `products` VALUES ('24', '汽水', '10', '1', '每箱12瓶', '4.5000', '20', '0', '0', '-1'); INSERT INTO `products` VALUES ('25', '巧克力', '11', '3', '每箱30盒', '14.0000', '76', '0', '30', '0'); INSERT INTO `products` VALUES ('26', '棉花糖', '11', '3', '每箱30盒', '31.2300', '15', '0', '0', '0'); INSERT INTO `products` VALUES ('27', '牛肉干', '11', '3', '每箱30包', '43.9000', '49', '0', '30', '0'); INSERT INTO `products` VALUES ('28', '烤肉酱', '12', '7', '每箱12瓶', '45.6000', '26', '0', '0', '-1'); INSERT INTO `products` VALUES ('29', '鸭肉', '12', '6', '每袋3公斤', '123.7900', '0', '0', '0', '-1'); INSERT INTO `products` VALUES ('30', '黄鱼', '13', '8', '每袋3公斤', '25.8900', '10', '0', '15', '0'); INSERT INTO `products` VALUES ('31', '温馨奶酪', '14', '4', '每箱12瓶', '12.5000', '0', '70', '20', '0'); INSERT INTO `products` VALUES ('32', '白奶酪', '14', '4', '每箱12瓶', '32.0000', '9', '40', '25', '0'); INSERT INTO `products` VALUES ('33', '浪花奶酪', '15', '4', '每箱12瓶', '2.5000', '112', '0', '20', '0'); INSERT INTO `products` VALUES ('34', '啤酒', '16', '1', '每箱24瓶', '14.0000', '111', '0', '15', '0'); INSERT INTO `products` VALUES ('35', '蜜桃汁', '16', '1', '每箱24瓶', '18.0000', '20', '0', '15', '0'); INSERT INTO `products` VALUES ('36', '鱿鱼', '17', '8', '每袋3公斤', '19.0000', '112', '0', '20', '0'); INSERT INTO `products` VALUES ('37', '干贝', '17', '8', '每袋3公斤', '26.0000', '11', '50', '25', '0'); INSERT INTO `products` VALUES ('38', '绿茶', '18', '1', '每箱24瓶', '263.5000', '17', '0', '15', '0'); INSERT INTO `products` VALUES ('39', '运动饮料', '18', '1', '每箱24瓶', '18.0000', '69', '0', '5', '0'); INSERT INTO `products` VALUES ('40', '虾米', '19', '8', '每袋3公斤', '18.4000', '123', '0', '30', '0'); INSERT INTO `products` VALUES ('41', '虾子', '19', '8', '每袋3公斤', '9.6500', '85', '0', '10', '0'); INSERT INTO `products` VALUES ('42', '糙米', '20', '5', '每袋3公斤', '14.0000', '26', '0', '0', '-1'); INSERT INTO `products` VALUES ('43', '柳橙汁', '20', '1', '每箱24瓶', '46.0000', '17', '10', '25', '0'); INSERT INTO `products` VALUES ('44', '蚝油', '20', '2', '每箱24瓶', '19.4500', '27', '0', '15', '0'); INSERT INTO `products` VALUES ('45', '雪鱼', '21', '8', '每袋3公斤', '9.5000', '5', '70', '15', '0'); INSERT INTO `products` VALUES ('46', '蚵', '21', '8', '每袋3公斤', '12.0000', '95', '0', '0', '0'); INSERT INTO `products` VALUES ('47', '蛋糕', '22', '3', '每箱24个', '9.5000', '36', '0', '0', '0'); INSERT INTO `products` VALUES ('48', '玉米片', '22', '3', '每箱24包', '12.7500', '15', '70', '25', '0'); INSERT INTO `products` VALUES ('49', '薯条', '23', '3', '每箱24包', '20.0000', '10', '60', '15', '0'); INSERT INTO `products` VALUES ('50', '玉米饼', '23', '3', '每箱24包', '16.2500', '65', '0', '30', '0'); INSERT INTO `products` VALUES ('51', '猪肉干', '24', '7', '每箱24包', '53.0000', '20', '0', '10', '0'); INSERT INTO `products` VALUES ('52', '三合一麦片', '24', '5', '每箱24包', '7.0000', '38', '0', '25', '0'); INSERT INTO `products` VALUES ('53', '盐水鸭', '24', '6', '每袋3公斤', '32.8000', '0', '0', '0', '-1'); INSERT INTO `products` VALUES ('54', '鸡肉', '25', '6', '每袋3公斤', '7.4500', '21', '0', '10', '0'); INSERT INTO `products` VALUES ('55', '鸭肉', '25', '6', '每袋3公斤', '24.0000', '115', '0', '20', '0'); INSERT INTO `products` VALUES ('56', '白米', '26', '5', '每袋3公斤', '38.0000', '21', '10', '30', '0'); INSERT INTO `products` VALUES ('57', '小米', '26', '5', '每袋3公斤', '19.5000', '36', '0', '20', '0'); INSERT INTO `products` VALUES ('58', '海参', '27', '8', '每袋3公斤', '13.2500', '62', '0', '20', '0'); INSERT INTO `products` VALUES ('59', '苏澳奶酪', '28', '4', '每箱24瓶', '55.0000', '79', '0', '0', '0'); INSERT INTO `products` VALUES ('60', '花奶酪', '28', '4', '每箱24瓶', '34.0000', '19', '0', '0', '0'); INSERT INTO `products` VALUES ('61', '海鲜酱', '29', '2', '每箱24瓶', '28.5000', '113', '0', '25', '0'); INSERT INTO `products` VALUES ('62', '山渣片', '29', '3', '每箱24包', '49.3000', '17', '0', '0', '0'); INSERT INTO `products` VALUES ('63', '甜辣酱', '7', '2', '每箱24瓶', '43.9000', '24', '0', '5', '0'); INSERT INTO `products` VALUES ('64', '黄豆', '12', '5', '每袋3公斤', '33.2500', '22', '80', '30', '0'); INSERT INTO `products` VALUES ('65', '海苔酱', '2', '2', '每箱24瓶', '21.0500', '76', '0', '0', '0'); INSERT INTO `products` VALUES ('66', '肉松', '2', '2', '每箱24瓶', '17.0000', '4', '100', '20', '0'); INSERT INTO `products` VALUES ('67', '矿泉水', '16', '1', '每箱24瓶', '14.0000', '52', '0', '10', '0'); INSERT INTO `products` VALUES ('68', '绿豆糕', '8', '3', '每箱24包', '12.5000', '6', '10', '15', '0'); INSERT INTO `products` VALUES ('69', '黑奶酪', '15', '4', '每盒24个', '36.0000', '26', '0', '15', '0'); INSERT INTO `products` VALUES ('70', '苏打水', '7', '1', '每箱24瓶', '15.0000', '15', '10', '30', '0'); INSERT INTO `products` VALUES ('71', '义大利奶酪', '15', '4', '每箱2个', '21.5000', '26', '0', '0', '0'); INSERT INTO `products` VALUES ('72', '酸奶酪', '14', '4', '每箱2个', '34.8000', '14', '0', '0', '0'); INSERT INTO `products` VALUES ('73', '海哲皮', '17', '8', '每袋3公斤', '15.0000', '101', '0', '5', '0'); INSERT INTO `products` VALUES ('74', '鸡精', '4', '7', '每盒24个', '10.0000', '4', '20', '5', '0'); INSERT INTO `products` VALUES ('75', '浓缩咖啡', '12', '1', '每箱24瓶', '7.7500', '125', '0', '25', '0'); INSERT INTO `products` VALUES ('76', '柠檬汁', '23', '1', '每箱24瓶', '18.0000', '57', '0', '20', '0'); INSERT INTO `products` VALUES ('77', '辣椒粉', '12', '2', '每袋3公斤', '13.0000', '32', '0', '15', '0'); -- ---------------------------- -- Table structure for sales -- ---------------------------- DROP TABLE IF EXISTS `sales`; CREATE TABLE `sales` ( `OrderDate` datetime DEFAULT NULL, `ShipRegion` varchar(255) DEFAULT NULL, `ShipProvince` varchar(255) DEFAULT NULL, `ShipCity` varchar(255) DEFAULT NULL, `FullName` varchar(255) DEFAULT NULL, `CategoryName` varchar(255) DEFAULT NULL, `ProductName` varchar(255) DEFAULT NULL, `Quantity` int(11) DEFAULT NULL, `amount` varchar(255) DEFAULT NULL ) ENGINE=MyISAM DEFAULT CHARSET=gbk; -- ---------------------------- -- Records of sales -- ---------------------------- INSERT INTO `sales` VALUES ('2016-07-05 00:00:00', '华东', '山东省', '济南', '孙林', '特制品', '沙茶', '9', '167.4000'); INSERT INTO `sales` VALUES ('2016-07-05 00:00:00', '华东', '山东省', '济南', '孙林', '特制品', '猪肉干', '40', '1696.0000'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '海鲜', '虾子', '10', '77.0000'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '特制品', '猪肉干', '35', '1261.4000'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '调味品', '海苔酱', '15', '214.2000'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华东', '江苏省', '南京', '李芳', '谷类/麦片', '糯米', '6', '95.7600'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华东', '江苏省', '南京', '李芳', '谷类/麦片', '小米', '15', '222.3000'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华东', '江苏省', '南京', '李芳', '调味品', '海苔酱', '20', '336.0000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '东北', '吉林省', '长春', '郑建杰', '点心', '桂花糕', '40', '2462.4000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '东北', '吉林省', '长春', '郑建杰', '日用品', '浪花奶酪', '25', '47.5000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '东北', '吉林省', '长春', '郑建杰', '日用品', '花奶酪', '40', '1088.0000'); INSERT INTO `sales` VALUES ('2016-07-10 00:00:00', '华北', '山西省', '长治', '李芳', '日用品', '温馨奶酪', '20', '200.0000'); INSERT INTO `sales` VALUES ('2016-07-10 00:00:00', '华北', '山西省', '长治', '李芳', '饮料', '运动饮料', '42', '604.8000'); INSERT INTO `sales` VALUES ('2016-07-10 00:00:00', '华北', '山西省', '长治', '李芳', '点心', '薯条', '40', '640.0000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华中', '湖北省', '武汉', '赵军', '饮料', '汽水', '15', '45.9000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华中', '湖北省', '武汉', '赵军', '肉/家禽', '鸭肉', '21', '342.7200'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华中', '湖北省', '武汉', '赵军', '特制品', '鸡精', '21', '168.0000'); INSERT INTO `sales` VALUES ('2016-07-12 00:00:00', '华北', '北京市', '北京', '张雪眉', '饮料', '牛奶', '20', '304.0000'); INSERT INTO `sales` VALUES ('2016-07-12 00:00:00', '华北', '北京市', '北京', '张雪眉', '点心', '饼干', '35', '486.5000'); INSERT INTO `sales` VALUES ('2016-07-12 00:00:00', '华北', '北京市', '北京', '张雪眉', '海鲜', '鱿鱼', '25', '380.0000'); INSERT INTO `sales` VALUES ('2016-07-12 00:00:00', '华北', '北京市', '北京', '张雪眉', '日用品', '苏澳奶酪', '30', '1320.0000'); INSERT INTO `sales` VALUES ('2016-07-15 00:00:00', '华东', '山东省', '济南', '李芳', '肉/家禽', '盐水鸭', '15', '393.0000'); INSERT INTO `sales` VALUES ('2016-07-15 00:00:00', '华东', '山东省', '济南', '李芳', '调味品', '辣椒粉', '12', '124.8000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华东', '上海市', '上海', '郑建杰', '点心', '牛肉干', '25', '877.5000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华东', '上海市', '上海', '郑建杰', '饮料', '运动饮料', '6', '86.4000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华东', '上海市', '上海', '郑建杰', '调味品', '辣椒粉', '15', '156.0000'); INSERT INTO `sales` VALUES ('2016-07-17 00:00:00', '华东', '山东省', '济南', '张颖', '饮料', '牛奶', '50', '608.0000'); INSERT INTO `sales` VALUES ('2016-07-17 00:00:00', '华东', '山东省', '济南', '张颖', '调味品', '麻油', '65', '884.0000'); INSERT INTO `sales` VALUES ('2016-07-17 00:00:00', '华东', '山东省', '济南', '张颖', '日用品', '白奶酪', '6', '122.8800'); INSERT INTO `sales` VALUES ('2016-07-18 00:00:00', '华东', '上海市', '上海', '郑建杰', '点心', '花生', '10', '80.0000'); INSERT INTO `sales` VALUES ('2016-07-18 00:00:00', '华东', '上海市', '上海', '郑建杰', '海鲜', '干贝', '1', '20.8000'); INSERT INTO `sales` VALUES ('2016-07-19 00:00:00', '华北', '北京市', '北京', '郑建杰', '海鲜', '虾子', '16', '92.4000'); INSERT INTO `sales` VALUES ('2016-07-19 00:00:00', '华北', '北京市', '北京', '郑建杰', '谷类/麦片', '小米', '50', '780.0000'); INSERT INTO `sales` VALUES ('2016-07-19 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '山渣片', '15', '443.2500'); INSERT INTO `sales` VALUES ('2016-07-19 00:00:00', '华北', '北京市', '北京', '郑建杰', '饮料', '苏打水', '21', '189.0000'); INSERT INTO `sales` VALUES ('2016-07-19 00:00:00', '华东', '山东省', '济南', '郑建杰', '点心', '花生', '20', '160.0000'); INSERT INTO `sales` VALUES ('2016-07-19 00:00:00', '华东', '山东省', '济南', '郑建杰', '饮料', '蜜桃汁', '20', '288.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华东', '上海市', '上海', '刘英玫', '调味品', '麻油', '12', '163.2000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华东', '上海市', '上海', '刘英玫', '特制品', '海鲜粉', '15', '360.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华东', '上海市', '上海', '刘英玫', '谷类/麦片', '白米', '2', '60.8000'); INSERT INTO `sales` VALUES ('2016-07-23 00:00:00', '华北', '北京市', '北京', '张雪眉', '点心', '饼干', '60', '625.5000'); INSERT INTO `sales` VALUES ('2016-07-23 00:00:00', '华北', '北京市', '北京', '张雪眉', '饮料', '汽水', '28', '100.8000'); INSERT INTO `sales` VALUES ('2016-07-23 00:00:00', '华北', '北京市', '北京', '张雪眉', '海鲜', '黄鱼', '60', '931.5000'); INSERT INTO `sales` VALUES ('2016-07-23 00:00:00', '华北', '北京市', '北京', '张雪眉', '特制品', '鸡精', '36', '216.0000'); INSERT INTO `sales` VALUES ('2016-07-24 00:00:00', '华北', '北京市', '北京', '孙林', '饮料', '牛奶', '35', '532.0000'); INSERT INTO `sales` VALUES ('2016-07-24 00:00:00', '华北', '北京市', '北京', '孙林', '海鲜', '虾子', '25', '163.6250'); INSERT INTO `sales` VALUES ('2016-07-25 00:00:00', '华中', '湖北省', '武汉', '王伟', '肉/家禽', '猪肉', '30', '936.0000'); INSERT INTO `sales` VALUES ('2016-07-25 00:00:00', '华中', '湖北省', '武汉', '王伟', '饮料', '苏打水', '20', '240.0000'); INSERT INTO `sales` VALUES ('2016-07-26 00:00:00', '华北', '北京市', '北京', '李芳', '日用品', '德国奶酪', '12', '346.5600'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '海鲜', '虾米', '50', '735.0000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '日用品', '苏澳奶酪', '70', '2618.0000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '饮料', '柠檬汁', '15', '183.6000'); INSERT INTO `sales` VALUES ('2016-07-30 00:00:00', '华东', '山东省', '青岛', '刘英玫', '肉/家禽', '鸭肉', '10', '990.0000'); INSERT INTO `sales` VALUES ('2016-07-30 00:00:00', '华东', '山东省', '青岛', '刘英玫', '日用品', '酸奶酪', '4', '111.2000'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华东', '山东省', '青岛', '赵军', '日用品', '浪花奶酪', '60', '114.0000'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华东', '山东省', '青岛', '赵军', '日用品', '酸奶酪', '20', '528.2000'); INSERT INTO `sales` VALUES ('2016-08-01 00:00:00', '华北', '北京市', '北京', '张颖', '海鲜', '鱿鱼', '30', '456.0000'); INSERT INTO `sales` VALUES ('2016-08-01 00:00:00', '华北', '北京市', '北京', '张颖', '饮料', '柳橙汁', '25', '920.0000'); INSERT INTO `sales` VALUES ('2016-08-01 00:00:00', '华东', '上海市', '上海', '孙林', '日用品', '浪花奶酪', '24', '48.0000'); INSERT INTO `sales` VALUES ('2016-08-02 00:00:00', '华北', '北京市', '北京', '孙林', '点心', '桂花糕', '6', '388.8000'); INSERT INTO `sales` VALUES ('2016-08-02 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '温馨奶酪', '40', '400.0000'); INSERT INTO `sales` VALUES ('2016-08-02 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '酸奶酪', '24', '667.2000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '山东省', '济南', '李芳', '海鲜', '蟹', '24', '565.4400'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '山东省', '济南', '李芳', '日用品', '温馨奶酪', '15', '142.5000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '山东省', '济南', '李芳', '日用品', '浪花奶酪', '20', '40.0000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '山东省', '济南', '李芳', '海鲜', '虾米', '60', '837.9000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '山东省', '济南', '李芳', '饮料', '柠檬汁', '33', '451.4400'); INSERT INTO `sales` VALUES ('2016-08-06 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '义大利奶酪', '20', '344.0000'); INSERT INTO `sales` VALUES ('2016-08-06 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '酸奶酪', '7', '194.6000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '北京市', '北京', '张颖', '饮料', '汽水', '12', '41.0400'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '北京市', '北京', '张颖', '日用品', '苏澳奶酪', '6', '250.8000'); INSERT INTO `sales` VALUES ('2016-08-08 00:00:00', '华东', '山东省', '青岛', '刘英玫', '海鲜', '蟹', '15', '372.0000'); INSERT INTO `sales` VALUES ('2016-08-08 00:00:00', '华东', '山东省', '青岛', '刘英玫', '海鲜', '龙虾', '10', '48.0000'); INSERT INTO `sales` VALUES ('2016-08-09 00:00:00', '华东', '江苏省', '南京', '王伟', '特制品', '烤肉酱', '20', '728.0000'); INSERT INTO `sales` VALUES ('2016-08-09 00:00:00', '华东', '江苏省', '南京', '王伟', '点心', '山渣片', '12', '472.8000'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '蚝油', '16', '248.0000'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '华东', '江苏省', '南京', '刘英玫', '日用品', '苏澳奶酪', '15', '660.0000'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '甜辣酱', '8', '280.8000'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '华东', '江苏省', '南京', '刘英玫', '海鲜', '海哲皮', '25', '300.0000'); INSERT INTO `sales` VALUES ('2016-08-13 00:00:00', '华东', '山东省', '青岛', '刘英玫', '肉/家禽', '猪肉', '15', '351.0000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华东', '江苏省', '南京', '王伟', '饮料', '汽水', '12', '43.2000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华东', '江苏省', '南京', '王伟', '肉/家禽', '鸭肉', '20', '384.0000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华东', '江苏省', '南京', '王伟', '饮料', '浓缩咖啡', '30', '186.0000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华东', '上海市', '上海', '郑建杰', '点心', '糖果', '1', '7.3000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华东', '上海市', '上海', '郑建杰', '饮料', '汽水', '6', '21.6000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华东', '上海市', '上海', '郑建杰', '饮料', '蜜桃汁', '4', '57.6000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华东', '上海市', '上海', '郑建杰', '海鲜', '黄鱼', '6', '124.2000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华东', '上海市', '上海', '郑建杰', '谷类/麦片', '小米', '2', '31.2000'); INSERT INTO `sales` VALUES ('2016-08-16 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '调味品', '味精', '20', '248.0000'); INSERT INTO `sales` VALUES ('2016-08-16 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '点心', '糖果', '18', '131.4000'); INSERT INTO `sales` VALUES ('2016-08-16 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '日用品', '花奶酪', '35', '952.0000'); INSERT INTO `sales` VALUES ('2016-08-16 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '日用品', '酸奶酪', '3', '83.4000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华东', '山东省', '烟台', '郑建杰', '点心', '牛肉干', '15', '394.8750'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华东', '山东省', '烟台', '郑建杰', '调味品', '蚝油', '21', '325.5000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华东', '山东省', '烟台', '郑建杰', '日用品', '花奶酪', '20', '408.0000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华东', '山东省', '烟台', '郑建杰', '饮料', '矿泉水', '5', '42.0000'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华东', '山东省', '烟台', '张颖', '饮料', '苹果汁', '45', '518.4000'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华东', '山东省', '烟台', '张颖', '海鲜', '虾米', '40', '470.4000'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华东', '山东省', '烟台', '张颖', '肉/家禽', '盐水鸭', '36', '754.5600'); INSERT INTO `sales` VALUES ('2016-08-21 00:00:00', '华东', '山东省', '烟台', '刘英玫', '饮料', '蜜桃汁', '100', '1440.0000'); INSERT INTO `sales` VALUES ('2016-08-21 00:00:00', '华东', '山东省', '烟台', '刘英玫', '点心', '山渣片', '40', '1576.0000'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '华南', '广东省', '深圳', '刘英玫', '点心', '饼干', '40', '472.6000'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '华南', '广东省', '深圳', '刘英玫', '饮料', '啤酒', '20', '224.0000'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '华南', '广东省', '深圳', '刘英玫', '海鲜', '蚵', '15', '122.4000'); INSERT INTO `sales` VALUES ('2016-08-23 00:00:00', '华北', '北京市', '北京', '郑建杰', '肉/家禽', '鸡肉', '10', '53.1000'); INSERT INTO `sales` VALUES ('2016-08-23 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '绿豆糕', '3', '27.0000'); INSERT INTO `sales` VALUES ('2016-08-26 00:00:00', '华东', '江苏省', '南京', '金士鹏', '调味品', '蕃茄酱', '30', '240.0000'); INSERT INTO `sales` VALUES ('2016-08-26 00:00:00', '华东', '江苏省', '南京', '金士鹏', '谷类/麦片', '黄豆', '9', '239.4000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '西南', '云南省', '昆明', '刘英玫', '调味品', '麻油', '20', '340.0000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '西南', '云南省', '昆明', '刘英玫', '肉/家禽', '鸭肉', '15', '1485.0000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '西南', '云南省', '昆明', '刘英玫', '点心', '薯条', '15', '240.0000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '西南', '云南省', '昆明', '刘英玫', '调味品', '辣椒粉', '10', '104.0000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华东', '山东省', '济南', '孙林', '海鲜', '龙虾', '20', '86.4000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华东', '山东省', '济南', '孙林', '调味品', '蚝油', '24', '334.8000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华东', '山东省', '济南', '孙林', '特制品', '猪肉干', '2', '76.3200'); INSERT INTO `sales` VALUES ('2016-08-28 00:00:00', '华东', '山东省', '济南', '张颖', '点心', '桂花糕', '20', '1296.0000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '济南', '张颖', '海鲜', '墨鱼', '12', '600.0000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '济南', '张颖', '饮料', '汽水', '10', '36.0000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '济南', '张颖', '调味品', '甜辣酱', '5', '175.5000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '济南', '张颖', '饮料', '浓缩咖啡', '6', '37.2000'); INSERT INTO `sales` VALUES ('2016-08-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '饮料', '苹果汁', '18', '259.2000'); INSERT INTO `sales` VALUES ('2016-08-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '肉/家禽', '猪肉', '15', '468.0000'); INSERT INTO `sales` VALUES ('2016-08-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '饮料', '柳橙汁', '15', '552.0000'); INSERT INTO `sales` VALUES ('2016-08-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '日用品', '花奶酪', '21', '571.2000'); INSERT INTO `sales` VALUES ('2016-08-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '饮料', '浓缩咖啡', '6', '37.2000'); INSERT INTO `sales` VALUES ('2016-09-02 00:00:00', '华北', '北京市', '北京', '王伟', '谷类/麦片', '白米', '4', '121.6000'); INSERT INTO `sales` VALUES ('2016-09-03 00:00:00', '华南', '广东省', '深圳', '孙林', '日用品', '民众奶酪', '12', '201.6000'); INSERT INTO `sales` VALUES ('2016-09-03 00:00:00', '华南', '广东省', '深圳', '孙林', '点心', '饼干', '30', '417.0000'); INSERT INTO `sales` VALUES ('2016-09-03 00:00:00', '华南', '广东省', '深圳', '孙林', '日用品', '黑奶酪', '15', '432.0000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华南', '福建省', '厦门', '赵军', '饮料', '运动饮料', '60', '864.0000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华南', '福建省', '厦门', '赵军', '日用品', '酸奶酪', '20', '556.0000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '北京市', '北京', '孙林', '饮料', '牛奶', '40', '608.0000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '北京市', '北京', '孙林', '海鲜', '鱿鱼', '40', '456.0000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '苏澳奶酪', '30', '990.0000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '北京市', '北京', '孙林', '点心', '山渣片', '15', '591.0000'); INSERT INTO `sales` VALUES ('2016-09-06 00:00:00', '华东', '浙江省', '温州', '郑建杰', '点心', '糖果', '15', '109.5000'); INSERT INTO `sales` VALUES ('2016-09-06 00:00:00', '华东', '浙江省', '温州', '郑建杰', '饮料', '苏打水', '20', '240.0000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '华南', '广东省', '深圳', '王伟', '调味品', '肉松', '30', '408.0000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '华南', '广东省', '深圳', '王伟', '点心', '绿豆糕', '20', '200.0000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '华北', '河北省', '张家口', '刘英玫', '海鲜', '虾米', '10', '147.0000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '华北', '河北省', '张家口', '刘英玫', '谷类/麦片', '白米', '20', '608.0000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '山东省', '济南', '郑建杰', '肉/家禽', '猪肉', '40', '1248.0000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '山东省', '济南', '郑建杰', '特制品', '烤肉酱', '28', '1019.2000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '山东省', '济南', '郑建杰', '饮料', '柳橙汁', '12', '441.6000'); INSERT INTO `sales` VALUES ('2016-09-11 00:00:00', '华东', '山东省', '济南', '金士鹏', '海鲜', '虾米', '40', '529.2000'); INSERT INTO `sales` VALUES ('2016-09-11 00:00:00', '华东', '山东省', '济南', '金士鹏', '调味品', '海苔酱', '30', '453.6000'); INSERT INTO `sales` VALUES ('2016-09-11 00:00:00', '华东', '山东省', '济南', '金士鹏', '点心', '绿豆糕', '15', '135.0000'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华东', '山东省', '济南', '张颖', '点心', '薯条', '30', '480.0000'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华东', '山东省', '济南', '张颖', '日用品', '苏澳奶酪', '10', '440.0000'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华东', '山东省', '济南', '张颖', '日用品', '义大利奶酪', '2', '34.4000'); INSERT INTO `sales` VALUES ('2016-09-13 00:00:00', '华北', '北京市', '北京', '刘英玫', '海鲜', '墨鱼', '25', '1125.0000'); INSERT INTO `sales` VALUES ('2016-09-13 00:00:00', '华北', '北京市', '北京', '刘英玫', '肉/家禽', '鸭肉', '25', '2227.5000'); INSERT INTO `sales` VALUES ('2016-09-13 00:00:00', '华北', '北京市', '北京', '刘英玫', '饮料', '运动饮料', '30', '388.8000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '华北', '北京市', '北京', '张颖', '海鲜', '黄鱼', '10', '207.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '华北', '北京市', '北京', '张颖', '肉/家禽', '盐水鸭', '10', '262.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '华北', '北京市', '北京', '张颖', '肉/家禽', '鸡肉', '5', '29.5000'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华东', '山东省', '青岛', '王伟', '点心', '山渣片', '10', '394.0000'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华东', '山东省', '青岛', '王伟', '点心', '绿豆糕', '3', '30.0000'); INSERT INTO `sales` VALUES ('2016-09-18 00:00:00', '华南', '广东省', '深圳', '金士鹏', '日用品', '黑奶酪', '1', '28.8000'); INSERT INTO `sales` VALUES ('2016-09-18 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '苏打水', '5', '60.0000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '东北', '吉林省', '长春', '李芳', '调味品', '盐', '20', '352.0000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '东北', '吉林省', '长春', '李芳', '调味品', '酱油', '30', '600.0000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '东北', '吉林省', '长春', '李芳', '谷类/麦片', '糙米', '2', '22.4000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '东北', '吉林省', '长春', '李芳', '饮料', '柳橙汁', '20', '736.0000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '东北', '吉林省', '长春', '李芳', '日用品', '义大利奶酪', '3', '51.6000'); INSERT INTO `sales` VALUES ('2016-09-20 00:00:00', '华北', '河北省', '张家口', '刘英玫', '点心', '饼干', '10', '139.0000'); INSERT INTO `sales` VALUES ('2016-09-20 00:00:00', '华北', '河北省', '张家口', '刘英玫', '点心', '山渣片', '5', '197.0000'); INSERT INTO `sales` VALUES ('2016-09-20 00:00:00', '西南', '重庆市', '重庆', '张颖', '谷类/麦片', '糙米', '6', '67.2000'); INSERT INTO `sales` VALUES ('2016-09-20 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '黑奶酪', '7', '201.6000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '北京市', '北京', '王伟', '特制品', '烤肉酱', '4', '145.6000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '北京市', '北京', '王伟', '饮料', '柳橙汁', '24', '883.2000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '北京市', '北京', '王伟', '肉/家禽', '盐水鸭', '20', '524.0000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '北京市', '北京', '王伟', '饮料', '浓缩咖啡', '10', '62.0000'); INSERT INTO `sales` VALUES ('2016-09-24 00:00:00', '华北', '北京市', '北京', '王伟', '海鲜', '鱿鱼', '12', '182.4000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华北', '北京市', '北京', '张颖', '日用品', '白奶酪', '40', '921.6000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华北', '北京市', '北京', '张颖', '海鲜', '海参', '30', '286.2000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华北', '北京市', '北京', '张颖', '点心', '山渣片', '25', '886.5000'); INSERT INTO `sales` VALUES ('2016-09-26 00:00:00', '东北', '吉林省', '长春', '郑建杰', '饮料', '啤酒', '14', '156.8000'); INSERT INTO `sales` VALUES ('2016-09-26 00:00:00', '东北', '吉林省', '长春', '郑建杰', '饮料', '苏打水', '30', '360.0000'); INSERT INTO `sales` VALUES ('2016-09-27 00:00:00', '华北', '河北省', '张家口', '张颖', '海鲜', '虾子', '10', '77.0000'); INSERT INTO `sales` VALUES ('2016-09-27 00:00:00', '华北', '河北省', '张家口', '张颖', '点心', '山渣片', '70', '2758.0000'); INSERT INTO `sales` VALUES ('2016-09-30 00:00:00', '华东', '江西省', '南昌', '孙林', '饮料', '苹果汁', '20', '288.0000'); INSERT INTO `sales` VALUES ('2016-10-01 00:00:00', '东北', '吉林省', '长春', '刘英玫', '海鲜', '虾子', '20', '154.0000'); INSERT INTO `sales` VALUES ('2016-10-01 00:00:00', '东北', '吉林省', '长春', '刘英玫', '饮料', '柠檬汁', '6', '86.4000'); INSERT INTO `sales` VALUES ('2016-10-02 00:00:00', '华南', '广东省', '深圳', '金士鹏', '肉/家禽', '猪肉', '8', '249.6000'); INSERT INTO `sales` VALUES ('2016-10-02 00:00:00', '华南', '广东省', '深圳', '金士鹏', '特制品', '烤肉酱', '14', '509.6000'); INSERT INTO `sales` VALUES ('2016-10-02 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '柠檬汁', '30', '432.0000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华东', '浙江省', '温州', '赵军', '日用品', '义大利奶酪', '30', '516.0000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '东北', '吉林省', '长春', '李芳', '饮料', '蜜桃汁', '10', '144.0000'); INSERT INTO `sales` VALUES ('2016-10-04 00:00:00', '西南', '云南省', '昆明', '金士鹏', '谷类/麦片', '三合一麦片', '20', '112.0000'); INSERT INTO `sales` VALUES ('2016-10-07 00:00:00', '华北', '河北省', '张家口', '郑建杰', '调味品', '味精', '5', '62.0000'); INSERT INTO `sales` VALUES ('2016-10-07 00:00:00', '华北', '河北省', '张家口', '郑建杰', '点心', '巧克力', '4', '44.8000'); INSERT INTO `sales` VALUES ('2016-10-07 00:00:00', '华北', '河北省', '张家口', '郑建杰', '饮料', '运动饮料', '4', '57.6000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '西南', '重庆市', '重庆', '张雪眉', '点心', '饼干', '21', '248.1150'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '西南', '重庆市', '重庆', '张雪眉', '饮料', '蜜桃汁', '70', '856.8000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '西南', '重庆市', '重庆', '张雪眉', '海鲜', '蚵', '30', '288.0000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '西南', '重庆市', '重庆', '张雪眉', '日用品', '苏澳奶酪', '40', '1496.0000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '西南', '重庆市', '重庆', '张雪眉', '调味品', '甜辣酱', '80', '2386.8000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '华南', '福建省', '厦门', '张颖', '调味品', '酱油', '6', '120.0000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '华南', '福建省', '厦门', '张颖', '海鲜', '龙虾', '12', '57.6000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '华南', '福建省', '厦门', '张颖', '特制品', '沙茶', '9', '167.4000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '华南', '福建省', '厦门', '张颖', '日用品', '温馨奶酪', '4', '40.0000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '华南', '福建省', '厦门', '张颖', '日用品', '酸奶酪', '40', '1112.0000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '华南', '福建省', '厦门', '郑建杰', '调味品', '盐', '24', '422.4000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '华南', '福建省', '厦门', '郑建杰', '谷类/麦片', '小米', '16', '249.6000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '华南', '福建省', '厦门', '郑建杰', '饮料', '浓缩咖啡', '50', '310.0000'); INSERT INTO `sales` VALUES ('2016-10-11 00:00:00', '西南', '重庆市', '重庆', '王伟', '饮料', '牛奶', '25', '304.0000'); INSERT INTO `sales` VALUES ('2016-10-11 00:00:00', '西南', '重庆市', '重庆', '王伟', '日用品', '民众奶酪', '50', '672.0000'); INSERT INTO `sales` VALUES ('2016-10-11 00:00:00', '西南', '重庆市', '重庆', '王伟', '海鲜', '黄鱼', '35', '579.6000'); INSERT INTO `sales` VALUES ('2016-10-11 00:00:00', '西南', '重庆市', '重庆', '王伟', '海鲜', '海参', '30', '254.4000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华北', '北京市', '北京', '郑建杰', '日用品', '苏澳奶酪', '9', '396.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华北', '北京市', '北京', '郑建杰', '调味品', '海苔酱', '40', '672.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '绿豆糕', '10', '100.0000'); INSERT INTO `sales` VALUES ('2016-10-15 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '糖果', '10', '69.3500'); INSERT INTO `sales` VALUES ('2016-10-15 00:00:00', '华北', '北京市', '北京', '郑建杰', '海鲜', '黄鱼', '8', '157.3200'); INSERT INTO `sales` VALUES ('2016-10-15 00:00:00', '华北', '北京市', '北京', '郑建杰', '饮料', '绿茶', '20', '4005.2000'); INSERT INTO `sales` VALUES ('2016-10-15 00:00:00', '华北', '北京市', '北京', '郑建杰', '谷类/麦片', '白米', '12', '346.5600'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '华东', '山东省', '青岛', '李芳', '点心', '棉花糖', '50', '1058.2500'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '华东', '山东省', '青岛', '李芳', '日用品', '酸奶酪', '25', '590.7500'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '西南', '四川省', '成都', '张雪眉', '肉/家禽', '鸡肉', '15', '88.5000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '东北', '辽宁省', '大连', '李芳', '海鲜', '墨鱼', '40', '1600.0000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '东北', '辽宁省', '大连', '李芳', '谷类/麦片', '糙米', '10', '89.6000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '东北', '辽宁省', '大连', '李芳', '点心', '蛋糕', '16', '97.2800'); INSERT INTO `sales` VALUES ('2016-10-18 00:00:00', '华北', '天津市', '天津', '赵军', '特制品', '沙茶', '10', '186.0000'); INSERT INTO `sales` VALUES ('2016-10-18 00:00:00', '华北', '天津市', '天津', '赵军', '点心', '花生', '10', '72.0000'); INSERT INTO `sales` VALUES ('2016-10-18 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '义大利奶酪', '40', '619.2000'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华北', '北京市', '北京', '刘英玫', '谷类/麦片', '三合一麦片', '8', '44.8000'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华北', '北京市', '北京', '刘英玫', '点心', '绿豆糕', '10', '100.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '东北', '吉林省', '长春', '金士鹏', '饮料', '牛奶', '7', '85.1200'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '东北', '吉林省', '长春', '金士鹏', '日用品', '温馨奶酪', '25', '200.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '东北', '吉林省', '长春', '金士鹏', '日用品', '白奶酪', '6', '122.8800'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '东北', '吉林省', '长春', '金士鹏', '特制品', '猪肉干', '48', '1628.1600'); INSERT INTO `sales` VALUES ('2016-10-23 00:00:00', '华北', '北京市', '北京', '金士鹏', '调味品', '盐', '18', '285.1200'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '燕麦', '40', '288.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '棉花糖', '24', '597.6000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '鱿鱼', '20', '304.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '干贝', '28', '582.4000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '酸奶酪', '25', '695.0000'); INSERT INTO `sales` VALUES ('2016-10-25 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '肉/家禽', '猪肉', '20', '624.0000'); INSERT INTO `sales` VALUES ('2016-10-25 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '海鲜', '黄鱼', '15', '310.5000'); INSERT INTO `sales` VALUES ('2016-10-28 00:00:00', '华北', '天津市', '天津', '王伟', '调味品', '盐', '10', '176.0000'); INSERT INTO `sales` VALUES ('2016-10-28 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '猪肉', '70', '2074.8000'); INSERT INTO `sales` VALUES ('2016-10-28 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '山渣片', '28', '1103.2000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '西南', '重庆市', '重庆', '张颖', '海鲜', '墨鱼', '20', '950.0000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '西南', '重庆市', '重庆', '张颖', '海鲜', '虾子', '12', '87.7800'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '西南', '重庆市', '重庆', '张颖', '饮料', '柳橙汁', '40', '1398.4000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '东北', '吉林省', '长春', '金士鹏', '日用品', '浪花奶酪', '8', '16.0000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '东北', '吉林省', '长春', '金士鹏', '日用品', '苏澳奶酪', '9', '336.6000'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '饮料', '牛奶', '24', '291.8400'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '日用品', '温馨奶酪', '56', '448.0000'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '海鲜', '鱿鱼', '40', '486.4000'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '肉/家禽', '鸭肉', '40', '614.4000'); INSERT INTO `sales` VALUES ('2016-10-31 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '黄豆', '50', '1330.0000'); INSERT INTO `sales` VALUES ('2016-10-31 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '绿豆糕', '4', '38.0000'); INSERT INTO `sales` VALUES ('2016-10-31 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '柠檬汁', '15', '216.0000'); INSERT INTO `sales` VALUES ('2016-11-01 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '盐', '35', '616.0000'); INSERT INTO `sales` VALUES ('2016-11-01 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '胡椒粉', '70', '1680.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '东北', '吉林省', '长春', '王伟', '调味品', '胡椒粉', '70', '2240.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '东北', '吉林省', '长春', '王伟', '点心', '糖果', '80', '584.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '东北', '吉林省', '长春', '王伟', '谷类/麦片', '糙米', '9', '100.8000'); INSERT INTO `sales` VALUES ('2016-11-05 00:00:00', '华北', '河北省', '石家庄', '李芳', '肉/家禽', '猪肉', '36', '1010.8800'); INSERT INTO `sales` VALUES ('2016-11-05 00:00:00', '华北', '河北省', '石家庄', '李芳', '谷类/麦片', '白米', '20', '608.0000'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华北', '河北省', '张家口', '郑建杰', '点心', '巧克力', '10', '112.0000'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华北', '河北省', '张家口', '郑建杰', '饮料', '运动饮料', '50', '612.0000'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华北', '河北省', '张家口', '郑建杰', '海鲜', '虾米', '4', '58.8000'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华北', '河北省', '张家口', '郑建杰', '饮料', '浓缩咖啡', '6', '31.6200'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '苹果汁', '15', '183.6000'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '燕麦', '25', '180.0000'); INSERT INTO `sales` VALUES ('2016-11-08 00:00:00', '华北', '北京市', '北京', '金士鹏', '肉/家禽', '鸡肉', '24', '141.6000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '西南', '云南省', '昆明', '孙林', '点心', '玉米饼', '15', '175.5000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '西南', '云南省', '昆明', '孙林', '日用品', '黑奶酪', '18', '466.5600'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '华东', '江西省', '南昌', '张颖', '饮料', '绿茶', '20', '4005.2000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '华东', '江西省', '南昌', '张颖', '海鲜', '虾子', '13', '100.1000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '华东', '江西省', '南昌', '张颖', '调味品', '蚝油', '77', '1133.8250'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '华东', '江西省', '南昌', '张颖', '调味品', '海苔酱', '10', '159.6000'); INSERT INTO `sales` VALUES ('2016-11-12 00:00:00', '华北', '北京市', '北京', '李芳', '饮料', '汽水', '10', '36.0000'); INSERT INTO `sales` VALUES ('2016-11-12 00:00:00', '华北', '北京市', '北京', '李芳', '肉/家禽', '鸡肉', '20', '100.3000'); INSERT INTO `sales` VALUES ('2016-11-13 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '民众奶酪', '12', '161.2800'); INSERT INTO `sales` VALUES ('2016-11-13 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '绿茶', '50', '8432.0000'); INSERT INTO `sales` VALUES ('2016-11-14 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '饮料', '苹果汁', '12', '172.8000'); INSERT INTO `sales` VALUES ('2016-11-14 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '肉/家禽', '鸭肉', '4', '396.0000'); INSERT INTO `sales` VALUES ('2016-11-15 00:00:00', '华东', '山东省', '济南', '孙林', '饮料', '汽水', '25', '90.0000'); INSERT INTO `sales` VALUES ('2016-11-15 00:00:00', '华东', '山东省', '济南', '孙林', '谷类/麦片', '小米', '25', '390.0000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华南', '福建省', '厦门', '孙林', '日用品', '温馨奶酪', '30', '300.0000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华南', '福建省', '厦门', '孙林', '肉/家禽', '鸭肉', '12', '230.4000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华南', '福建省', '厦门', '孙林', '日用品', '黑奶酪', '20', '576.0000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华东', '浙江省', '温州', '张颖', '海鲜', '蟹', '30', '595.2000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华东', '浙江省', '温州', '张颖', '点心', '棉花糖', '16', '398.4000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华东', '浙江省', '温州', '张颖', '日用品', '花奶酪', '8', '174.0800'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '华北', '天津市', '天津', '赵军', '饮料', '汽水', '10', '34.2000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '华北', '天津市', '天津', '赵军', '饮料', '啤酒', '10', '106.4000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '华北', '天津市', '天津', '赵军', '海鲜', '鱿鱼', '20', '288.8000'); INSERT INTO `sales` VALUES ('2016-11-21 00:00:00', '华东', '江苏省', '南京', '赵军', '点心', '饼干', '56', '739.4800'); INSERT INTO `sales` VALUES ('2016-11-21 00:00:00', '华东', '江苏省', '南京', '赵军', '日用品', '温馨奶酪', '70', '665.0000'); INSERT INTO `sales` VALUES ('2016-11-21 00:00:00', '华东', '江苏省', '南京', '赵军', '日用品', '花奶酪', '80', '2067.2000'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '华东', '山东省', '青岛', '郑建杰', '特制品', '烤肉酱', '30', '1092.0000'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '华东', '山东省', '青岛', '郑建杰', '肉/家禽', '鸭肉', '35', '3465.0000'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '华东', '山东省', '青岛', '郑建杰', '饮料', '绿茶', '10', '2108.0000'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '华东', '山东省', '青岛', '郑建杰', '点心', '薯条', '35', '560.0000'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '华东', '山东省', '青岛', '郑建杰', '肉/家禽', '鸡肉', '28', '165.2000'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '东北', '吉林省', '长春', '张颖', '饮料', '运动饮料', '54', '699.8400'); INSERT INTO `sales` VALUES ('2016-11-22 00:00:00', '东北', '吉林省', '长春', '张颖', '日用品', '花奶酪', '55', '1346.4000'); INSERT INTO `sales` VALUES ('2016-11-25 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '巧克力', '50', '560.0000'); INSERT INTO `sales` VALUES ('2016-11-25 00:00:00', '华北', '天津市', '天津', '李芳', '特制品', '猪肉干', '20', '848.0000'); INSERT INTO `sales` VALUES ('2016-11-25 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '鸡肉', '24', '141.6000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '温馨奶酪', '20', '200.0000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '浓缩咖啡', '12', '74.4000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '柠檬汁', '12', '172.8000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华东', '江苏省', '南京', '张颖', '日用品', '黑奶酪', '30', '864.0000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华东', '江苏省', '南京', '张颖', '日用品', '义大利奶酪', '5', '86.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '河北省', '石家庄', '李芳', '日用品', '民众奶酪', '24', '403.2000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华南', '海南省', '海口', '刘英玫', '调味品', '海苔酱', '5', '84.0000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华南', '海南省', '海口', '刘英玫', '调味品', '辣椒粉', '5', '52.0000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '啤酒', '36', '403.2000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '天津市', '天津', '金士鹏', '肉/家禽', '鸡肉', '18', '106.2000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '海苔酱', '15', '252.0000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '辣椒粉', '7', '72.8000'); INSERT INTO `sales` VALUES ('2016-11-29 00:00:00', '东北', '辽宁省', '大连', '王伟', '点心', '花生', '5', '36.0000'); INSERT INTO `sales` VALUES ('2016-11-29 00:00:00', '东北', '辽宁省', '大连', '王伟', '特制品', '烤肉酱', '13', '425.8800'); INSERT INTO `sales` VALUES ('2016-11-29 00:00:00', '东北', '辽宁省', '大连', '王伟', '谷类/麦片', '小米', '25', '390.0000'); INSERT INTO `sales` VALUES ('2016-11-29 00:00:00', '东北', '辽宁省', '大连', '王伟', '谷类/麦片', '黄豆', '35', '837.9000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '肉/家禽', '鸭肉', '20', '1980.0000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '白米', '18', '410.4000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '东北', '吉林省', '长春', '孙林', '饮料', '苹果汁', '15', '183.6000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '东北', '吉林省', '长春', '孙林', '谷类/麦片', '黄豆', '30', '798.0000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '东北', '吉林省', '长春', '孙林', '特制品', '鸡精', '20', '136.0000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '西南', '重庆市', '重庆', '张颖', '海鲜', '鱿鱼', '6', '72.9600'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华北', '天津市', '天津', '赵军', '点心', '桂花糕', '12', '583.2000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华北', '天津市', '天津', '赵军', '饮料', '绿茶', '40', '6324.0000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '花奶酪', '70', '1428.0000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '酸奶酪', '42', '875.7000'); INSERT INTO `sales` VALUES ('2016-06-05 00:00:00', '东北', '吉林省', '长春', '郑建杰', '海鲜', '海参', '80', '678.4000'); INSERT INTO `sales` VALUES ('2016-06-05 00:00:00', '东北', '吉林省', '长春', '郑建杰', '日用品', '义大利奶酪', '50', '688.0000'); INSERT INTO `sales` VALUES ('2016-06-05 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '温馨奶酪', '30', '300.0000'); INSERT INTO `sales` VALUES ('2016-06-05 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '海参', '15', '159.0000'); INSERT INTO `sales` VALUES ('2016-06-06 00:00:00', '华东', '浙江省', '温州', '李芳', '特制品', '沙茶', '15', '279.0000'); INSERT INTO `sales` VALUES ('2016-06-06 00:00:00', '华东', '浙江省', '温州', '李芳', '肉/家禽', '鸡肉', '10', '59.0000'); INSERT INTO `sales` VALUES ('2016-06-09 00:00:00', '华北', '河北省', '石家庄', '张颖', '日用品', '温馨奶酪', '42', '399.0000'); INSERT INTO `sales` VALUES ('2016-06-09 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '烤肉酱', '20', '618.8000'); INSERT INTO `sales` VALUES ('2016-06-09 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '运动饮料', '20', '244.8000'); INSERT INTO `sales` VALUES ('2016-06-10 00:00:00', '华东', '江西省', '南昌', '赵军', '日用品', '义大利奶酪', '6', '103.2000'); INSERT INTO `sales` VALUES ('2016-06-11 00:00:00', '西南', '云南省', '昆明', '王伟', '海鲜', '虾子', '8', '55.4400'); INSERT INTO `sales` VALUES ('2016-06-11 00:00:00', '西南', '云南省', '昆明', '王伟', '调味品', '甜辣酱', '16', '505.4400'); INSERT INTO `sales` VALUES ('2016-06-11 00:00:00', '西南', '云南省', '昆明', '王伟', '调味品', '海苔酱', '20', '302.4000'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '东北', '吉林省', '长春', '刘英玫', '海鲜', '黄鱼', '18', '335.3400'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '东北', '吉林省', '长春', '刘英玫', '肉/家禽', '盐水鸭', '20', '471.6000'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '东北', '吉林省', '长春', '刘英玫', '日用品', '花奶酪', '6', '146.8800'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '东北', '吉林省', '长春', '刘英玫', '饮料', '苏打水', '30', '360.0000'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华东', '浙江省', '温州', '李芳', '特制品', '鸡精', '14', '112.0000'); INSERT INTO `sales` VALUES ('2016-06-13 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '麻油', '32', '544.0000'); INSERT INTO `sales` VALUES ('2016-06-13 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '墨鱼', '9', '450.0000'); INSERT INTO `sales` VALUES ('2016-06-13 00:00:00', '华北', '天津市', '天津', '郑建杰', '肉/家禽', '鸭肉', '14', '1386.0000'); INSERT INTO `sales` VALUES ('2016-06-13 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '浪花奶酪', '60', '120.0000'); INSERT INTO `sales` VALUES ('2016-06-13 00:00:00', '华北', '天津市', '天津', '郑建杰', '特制品', '鸡精', '50', '400.0000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '东北', '吉林省', '长春', '刘英玫', '海鲜', '龙虾', '20', '96.0000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '东北', '吉林省', '长春', '刘英玫', '点心', '玉米饼', '15', '195.0000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '东北', '吉林省', '长春', '刘英玫', '谷类/麦片', '白米', '20', '608.0000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '华南', '福建省', '厦门', '李芳', '点心', '桂花糕', '28', '1814.4000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '华南', '福建省', '厦门', '李芳', '日用品', '花奶酪', '15', '408.0000'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '西南', '重庆市', '重庆', '张颖', '特制品', '海鲜粉', '10', '192.0000'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '花奶酪', '20', '435.2000'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '西南', '重庆市', '重庆', '张颖', '点心', '绿豆糕', '8', '64.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '华东', '浙江省', '温州', '张雪眉', '饮料', '汽水', '15', '54.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '华东', '浙江省', '温州', '张雪眉', '饮料', '啤酒', '10', '112.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '西南', '重庆市', '重庆', '张颖', '饮料', '汽水', '15', '54.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '西南', '重庆市', '重庆', '张颖', '特制品', '烤肉酱', '6', '218.4000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '苏澳奶酪', '12', '528.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '义大利奶酪', '15', '258.0000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华东', '江苏省', '南京', '王伟', '海鲜', '雪鱼', '15', '91.2000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华东', '江苏省', '南京', '王伟', '谷类/麦片', '三合一麦片', '20', '89.6000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华东', '江苏省', '南京', '王伟', '肉/家禽', '盐水鸭', '40', '1048.0000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '山东省', '青岛', '郑建杰', '海鲜', '蟹', '16', '396.8000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '山东省', '青岛', '郑建杰', '肉/家禽', '鸭肉', '15', '288.0000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '山东省', '青岛', '郑建杰', '点心', '山渣片', '20', '788.0000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '山东省', '青岛', '郑建杰', '饮料', '苏打水', '30', '360.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '西南', '四川省', '成都', '孙林', '日用品', '温馨奶酪', '60', '540.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '西南', '四川省', '成都', '孙林', '饮料', '蜜桃汁', '40', '518.4000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '西南', '四川省', '成都', '孙林', '海鲜', '蚵', '45', '432.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '西南', '四川省', '成都', '孙林', '日用品', '酸奶酪', '24', '600.4800'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '龙虾', '18', '86.4000'); INSERT INTO `sales` VALUES ('2016-06-24 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '黑奶酪', '50', '1440.0000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '饮料', '牛奶', '25', '285.0000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '特制品', '沙茶', '42', '585.9000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '点心', '巧克力', '7', '58.8000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '点心', '棉花糖', '70', '1307.2500'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '日用品', '温馨奶酪', '32', '320.0000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '石家庄', '张颖', '海鲜', '龙虾', '10', '48.0000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '河北省', '石家庄', '张颖', '点心', '山渣片', '10', '394.0000'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '东北', '辽宁省', '大连', '孙林', '海鲜', '蚵', '28', '241.9200'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '东北', '辽宁省', '大连', '孙林', '肉/家禽', '盐水鸭', '70', '1650.6000'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '东北', '辽宁省', '大连', '孙林', '日用品', '黑奶酪', '8', '230.4000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '华南', '海南省', '海口', '张颖', '谷类/麦片', '燕麦', '40', '288.0000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '华南', '海南省', '海口', '张颖', '日用品', '义大利奶酪', '60', '1032.0000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '华南', '海南省', '海口', '张颖', '日用品', '酸奶酪', '21', '583.8000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '华北', '天津市', '天津', '赵军', '点心', '花生', '10', '68.0000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '华北', '天津市', '天津', '赵军', '特制品', '猪肉干', '18', '648.7200'); INSERT INTO `sales` VALUES ('2016-06-30 00:00:00', '西南', '重庆市', '重庆', '王伟', '饮料', '蜜桃汁', '30', '432.0000'); INSERT INTO `sales` VALUES ('2016-06-30 00:00:00', '西南', '重庆市', '重庆', '王伟', '肉/家禽', '鸭肉', '120', '2073.6000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '东北', '吉林省', '长春', '刘英玫', '点心', '绿豆糕', '60', '600.0000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '东北', '吉林省', '长春', '刘英玫', '日用品', '义大利奶酪', '30', '516.0000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '东北', '吉林省', '长春', '刘英玫', '饮料', '柠檬汁', '35', '504.0000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '东北', '吉林省', '长春', '刘英玫', '调味品', '辣椒粉', '14', '145.6000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '华东', '江苏省', '南京', '张颖', '肉/家禽', '鸭肉', '21', '2079.0000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '蜜桃汁', '35', '504.0000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '华东', '江苏省', '南京', '张颖', '点心', '薯条', '30', '480.0000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '东北', '辽宁省', '大连', '张颖', '海鲜', '黄鱼', '18', '372.6000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '东北', '辽宁省', '大连', '张颖', '谷类/麦片', '白米', '70', '2128.0000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '东北', '辽宁省', '大连', '张颖', '调味品', '海苔酱', '20', '336.0000'); INSERT INTO `sales` VALUES ('2016-01-01 00:00:00', '东北', '辽宁省', '大连', '张颖', '日用品', '义大利奶酪', '60', '1032.0000'); INSERT INTO `sales` VALUES ('2016-01-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '燕麦', '60', '432.0000'); INSERT INTO `sales` VALUES ('2016-01-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '调味品', '甜辣酱', '65', '2281.5000'); INSERT INTO `sales` VALUES ('2016-01-03 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '饼干', '21', '248.1150'); INSERT INTO `sales` VALUES ('2016-01-03 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '玉米片', '70', '606.9000'); INSERT INTO `sales` VALUES ('2016-01-03 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '棉花糖', '30', '709.6500'); INSERT INTO `sales` VALUES ('2016-01-03 00:00:00', '华北', '天津市', '天津', '王伟', '谷类/麦片', '糙米', '40', '425.6000'); INSERT INTO `sales` VALUES ('2016-01-03 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '薯条', '30', '456.0000'); INSERT INTO `sales` VALUES ('2016-01-06 00:00:00', '华东', '浙江省', '温州', '张颖', '调味品', '蕃茄酱', '50', '400.0000'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华东', '江西省', '南昌', '金士鹏', '饮料', '苹果汁', '10', '144.0000'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华东', '江西省', '南昌', '金士鹏', '点心', '花生', '30', '216.0000'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华东', '江西省', '南昌', '金士鹏', '特制品', '烤肉酱', '42', '1375.9200'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华东', '江西省', '南昌', '金士鹏', '海鲜', '鱿鱼', '5', '68.4000'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华东', '江西省', '南昌', '金士鹏', '海鲜', '虾米', '2', '26.4600'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华北', '河北省', '张家口', '王伟', '日用品', '民众奶酪', '30', '504.0000'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华北', '河北省', '张家口', '王伟', '日用品', '黑奶酪', '15', '432.0000'); INSERT INTO `sales` VALUES ('2016-01-07 00:00:00', '华北', '河北省', '张家口', '王伟', '日用品', '义大利奶酪', '15', '258.0000'); INSERT INTO `sales` VALUES ('2016-01-08 00:00:00', '西南', '云南省', '昆明', '刘英玫', '海鲜', '干贝', '10', '208.0000'); INSERT INTO `sales` VALUES ('2016-01-08 00:00:00', '西南', '云南省', '昆明', '刘英玫', '肉/家禽', '鸡肉', '6', '35.4000'); INSERT INTO `sales` VALUES ('2016-01-08 00:00:00', '西南', '云南省', '昆明', '刘英玫', '点心', '山渣片', '35', '1379.0000'); INSERT INTO `sales` VALUES ('2016-01-09 00:00:00', '华东', '上海市', '上海', '李芳', '特制品', '沙茶', '12', '223.2000'); INSERT INTO `sales` VALUES ('2016-01-09 00:00:00', '华东', '上海市', '上海', '李芳', '点心', '花生', '12', '96.0000'); INSERT INTO `sales` VALUES ('2016-01-10 00:00:00', '华东', '上海市', '上海', '李芳', '日用品', '浪花奶酪', '49', '98.0000'); INSERT INTO `sales` VALUES ('2016-01-10 00:00:00', '华东', '上海市', '上海', '李芳', '日用品', '苏澳奶酪', '16', '704.0000'); INSERT INTO `sales` VALUES ('2016-01-10 00:00:00', '华北', '天津市', '天津', '张雪眉', '海鲜', '虾子', '25', '154.0000'); INSERT INTO `sales` VALUES ('2016-01-10 00:00:00', '华北', '天津市', '天津', '张雪眉', '调味品', '蚝油', '40', '496.0000'); INSERT INTO `sales` VALUES ('2016-01-10 00:00:00', '华北', '天津市', '天津', '张雪眉', '日用品', '苏澳奶酪', '9', '316.8000'); INSERT INTO `sales` VALUES ('2016-01-13 00:00:00', '华北', '天津市', '天津', '刘英玫', '特制品', '沙茶', '20', '334.8000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '西南', '云南省', '昆明', '李芳', '饮料', '苹果汁', '24', '345.6000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '西南', '云南省', '昆明', '李芳', '点心', '山渣片', '40', '1576.0000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '西南', '云南省', '昆明', '李芳', '饮料', '柠檬汁', '14', '201.6000'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '华南', '福建省', '厦门', '王伟', '点心', '糖果', '18', '124.8300'); INSERT INTO `sales` VALUES ('2016-01-14 00:00:00', '华南', '福建省', '厦门', '王伟', '日用品', '浪花奶酪', '50', '100.0000'); INSERT INTO `sales` VALUES ('2016-01-15 00:00:00', '华东', '浙江省', '温州', '李芳', '肉/家禽', '猪肉', '2', '62.4000'); INSERT INTO `sales` VALUES ('2016-01-15 00:00:00', '华东', '浙江省', '温州', '李芳', '日用品', '浪花奶酪', '20', '40.0000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '糖果', '20', '146.0000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '华北', '天津市', '天津', '刘英玫', '肉/家禽', '盐水鸭', '10', '262.0000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '小米', '20', '312.0000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '饮料', '绿茶', '50', '10540.0000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '海鲜', '蚵', '2', '14.4000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '点心', '绿豆糕', '36', '270.0000'); INSERT INTO `sales` VALUES ('2016-01-16 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '调味品', '辣椒粉', '35', '364.0000'); INSERT INTO `sales` VALUES ('2016-01-17 00:00:00', '东北', '吉林省', '长春', '郑建杰', '饮料', '牛奶', '60', '912.0000'); INSERT INTO `sales` VALUES ('2016-01-17 00:00:00', '东北', '吉林省', '长春', '郑建杰', '点心', '蛋糕', '55', '418.0000'); INSERT INTO `sales` VALUES ('2016-01-17 00:00:00', '东北', '吉林省', '长春', '郑建杰', '调味品', '海鲜酱', '16', '364.8000'); INSERT INTO `sales` VALUES ('2016-01-17 00:00:00', '东北', '吉林省', '长春', '郑建杰', '特制品', '鸡精', '15', '120.0000'); INSERT INTO `sales` VALUES ('2016-01-20 00:00:00', '西南', '四川省', '成都', '郑建杰', '日用品', '花奶酪', '60', '1550.4000'); INSERT INTO `sales` VALUES ('2016-01-20 00:00:00', '西南', '四川省', '成都', '郑建杰', '日用品', '黑奶酪', '20', '547.2000'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '鸡', '20', '1396.8000'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '龙虾', '2', '8.6400'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '苏打水', '8', '86.4000'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '海哲皮', '20', '216.0000'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '糖果', '4', '24.8200'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '棉花糖', '30', '747.0000'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '肉/家禽', '盐水鸭', '15', '334.0500'); INSERT INTO `sales` VALUES ('2016-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '调味品', '辣椒粉', '10', '88.4000'); INSERT INTO `sales` VALUES ('2016-01-22 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '点心', '棉花糖', '2', '49.8000'); INSERT INTO `sales` VALUES ('2016-01-23 00:00:00', '东北', '吉林省', '长春', '孙林', '日用品', '温馨奶酪', '14', '140.0000'); INSERT INTO `sales` VALUES ('2016-01-23 00:00:00', '东北', '吉林省', '长春', '孙林', '日用品', '苏澳奶酪', '20', '880.0000'); INSERT INTO `sales` VALUES ('2016-01-23 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '蜜桃汁', '60', '691.2000'); INSERT INTO `sales` VALUES ('2016-01-23 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '绿茶', '49', '8263.3600'); INSERT INTO `sales` VALUES ('2016-01-23 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '绿豆糕', '30', '240.0000'); INSERT INTO `sales` VALUES ('2016-01-24 00:00:00', '西南', '重庆市', '重庆', '孙林', '肉/家禽', '鸭肉', '10', '144.0000'); INSERT INTO `sales` VALUES ('2016-01-24 00:00:00', '西南', '重庆市', '重庆', '孙林', '饮料', '柠檬汁', '20', '216.0000'); INSERT INTO `sales` VALUES ('2016-01-27 00:00:00', '华南', '海南省', '海口', '郑建杰', '谷类/麦片', '白米', '5', '152.0000'); INSERT INTO `sales` VALUES ('2016-01-27 00:00:00', '华南', '海南省', '海口', '郑建杰', '谷类/麦片', '黄豆', '7', '186.2000'); INSERT INTO `sales` VALUES ('2016-01-27 00:00:00', '华北', '天津市', '天津', '郑建杰', '特制品', '沙茶', '35', '651.0000'); INSERT INTO `sales` VALUES ('2016-01-28 00:00:00', '东北', '吉林省', '长春', '金士鹏', '海鲜', '蚵', '20', '192.0000'); INSERT INTO `sales` VALUES ('2016-01-29 00:00:00', '东北', '吉林省', '长春', '李芳', '点心', '玉米饼', '40', '520.0000'); INSERT INTO `sales` VALUES ('2016-01-29 00:00:00', '东北', '吉林省', '长春', '李芳', '调味品', '甜辣酱', '35', '921.3750'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '肉/家禽', '猪肉', '45', '1123.2000'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '点心', '花生', '50', '400.0000'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '谷类/麦片', '白米', '30', '912.0000'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '日用品', '苏澳奶酪', '70', '2464.0000'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '肉/家禽', '猪肉', '50', '1170.0000'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '虾米', '50', '551.2500'); INSERT INTO `sales` VALUES ('2016-01-30 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '点心', '蛋糕', '30', '171.0000'); INSERT INTO `sales` VALUES ('2016-01-31 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '棉花糖', '10', '249.0000'); INSERT INTO `sales` VALUES ('2016-01-31 00:00:00', '华东', '江苏省', '南京', '李芳', '肉/家禽', '鸡肉', '40', '236.0000'); INSERT INTO `sales` VALUES ('2016-02-03 00:00:00', '华东', '江苏省', '南京', '李芳', '谷类/麦片', '白米', '28', '851.2000'); INSERT INTO `sales` VALUES ('2016-02-03 00:00:00', '华东', '江西省', '南昌', '李芳', '日用品', '民众奶酪', '6', '100.8000'); INSERT INTO `sales` VALUES ('2016-02-03 00:00:00', '华东', '江西省', '南昌', '李芳', '饮料', '柠檬汁', '18', '220.3200'); INSERT INTO `sales` VALUES ('2016-02-04 00:00:00', '华东', '江苏省', '南京', '刘英玫', '饮料', '牛奶', '10', '152.0000'); INSERT INTO `sales` VALUES ('2016-02-04 00:00:00', '华东', '江苏省', '南京', '刘英玫', '谷类/麦片', '糯米', '12', '201.6000'); INSERT INTO `sales` VALUES ('2016-02-04 00:00:00', '华东', '江苏省', '南京', '刘英玫', '日用品', '酸奶酪', '10', '278.0000'); INSERT INTO `sales` VALUES ('2016-02-05 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '蚵', '5', '48.0000'); INSERT INTO `sales` VALUES ('2016-02-05 00:00:00', '西南', '重庆市', '重庆', '李芳', '谷类/麦片', '白米', '40', '1094.4000'); INSERT INTO `sales` VALUES ('2016-02-05 00:00:00', '西南', '重庆市', '重庆', '李芳', '谷类/麦片', '黄豆', '30', '718.2000'); INSERT INTO `sales` VALUES ('2016-02-05 00:00:00', '西南', '重庆市', '重庆', '李芳', '饮料', '浓缩咖啡', '24', '133.9200'); INSERT INTO `sales` VALUES ('2016-02-05 00:00:00', '西南', '云南省', '昆明', '刘英玫', '肉/家禽', '盐水鸭', '15', '393.0000'); INSERT INTO `sales` VALUES ('2016-02-06 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '糖果', '15', '87.6000'); INSERT INTO `sales` VALUES ('2016-02-06 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '啤酒', '20', '179.2000'); INSERT INTO `sales` VALUES ('2016-02-06 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '小米', '15', '187.2000'); INSERT INTO `sales` VALUES ('2016-02-07 00:00:00', '华东', '浙江省', '温州', '孙林', '日用品', '德国奶酪', '15', '456.0000'); INSERT INTO `sales` VALUES ('2016-02-07 00:00:00', '华东', '浙江省', '温州', '孙林', '点心', '饼干', '16', '222.4000'); INSERT INTO `sales` VALUES ('2016-02-07 00:00:00', '华东', '浙江省', '温州', '孙林', '谷类/麦片', '黄豆', '6', '159.6000'); INSERT INTO `sales` VALUES ('2016-02-07 00:00:00', '华东', '浙江省', '温州', '孙林', '特制品', '鸡精', '30', '240.0000'); INSERT INTO `sales` VALUES ('2016-02-10 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '牛奶', '45', '581.4000'); INSERT INTO `sales` VALUES ('2016-02-10 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '饼干', '49', '578.9350'); INSERT INTO `sales` VALUES ('2016-02-10 00:00:00', '华北', '天津市', '天津', '郑建杰', '肉/家禽', '鸭肉', '24', '2019.6000'); INSERT INTO `sales` VALUES ('2016-02-10 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '海鲜酱', '90', '1744.2000'); INSERT INTO `sales` VALUES ('2016-02-10 00:00:00', '华东', '山东省', '济南', '李芳', '点心', '牛肉干', '50', '1755.0000'); INSERT INTO `sales` VALUES ('2016-02-11 00:00:00', '华南', '福建省', '厦门', '李芳', '日用品', '民众奶酪', '30', '504.0000'); INSERT INTO `sales` VALUES ('2016-02-11 00:00:00', '华南', '福建省', '厦门', '李芳', '肉/家禽', '鸡肉', '80', '472.0000'); INSERT INTO `sales` VALUES ('2016-02-11 00:00:00', '华南', '福建省', '厦门', '李芳', '调味品', '肉松', '60', '816.0000'); INSERT INTO `sales` VALUES ('2016-02-12 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '民众奶酪', '6', '80.6400'); INSERT INTO `sales` VALUES ('2016-02-12 00:00:00', '华北', '天津市', '天津', '刘英玫', '特制品', '烤肉酱', '12', '436.8000'); INSERT INTO `sales` VALUES ('2016-02-12 00:00:00', '华东', '江苏省', '南京', '李芳', '肉/家禽', '猪肉', '10', '312.0000'); INSERT INTO `sales` VALUES ('2016-02-12 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '棉花糖', '15', '373.5000'); INSERT INTO `sales` VALUES ('2016-02-12 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '蜜桃汁', '8', '115.2000'); INSERT INTO `sales` VALUES ('2016-02-12 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '虾子', '30', '231.0000'); INSERT INTO `sales` VALUES ('2016-02-13 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '运动饮料', '6', '86.4000'); INSERT INTO `sales` VALUES ('2016-02-13 00:00:00', '华东', '江苏省', '南京', '李芳', '肉/家禽', '鸡肉', '15', '88.5000'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '西南', '四川省', '成都', '孙林', '点心', '糖果', '12', '78.8400'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '西南', '四川省', '成都', '孙林', '饮料', '汽水', '20', '64.8000'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '西南', '四川省', '成都', '孙林', '日用品', '温馨奶酪', '3', '27.0000'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '西南', '四川省', '成都', '孙林', '谷类/麦片', '三合一麦片', '15', '75.6000'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '华东', '山东省', '济南', '郑建杰', '点心', '糖果', '40', '292.0000'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '华东', '山东省', '济南', '郑建杰', '调味品', '海苔酱', '35', '588.0000'); INSERT INTO `sales` VALUES ('2016-02-14 00:00:00', '华东', '山东省', '济南', '郑建杰', '日用品', '义大利奶酪', '2', '34.4000'); INSERT INTO `sales` VALUES ('2016-02-17 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '棉花糖', '6', '149.4000'); INSERT INTO `sales` VALUES ('2016-02-17 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '虾米', '20', '294.0000'); INSERT INTO `sales` VALUES ('2016-02-18 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '蟹', '14', '347.2000'); INSERT INTO `sales` VALUES ('2016-02-18 00:00:00', '西南', '重庆市', '重庆', '李芳', '谷类/麦片', '三合一麦片', '20', '112.0000'); INSERT INTO `sales` VALUES ('2016-02-18 00:00:00', '西南', '重庆市', '重庆', '李芳', '点心', '山渣片', '35', '1379.0000'); INSERT INTO `sales` VALUES ('2016-02-19 00:00:00', '华东', '江苏省', '南京', '刘英玫', '海鲜', '蟹', '20', '396.8000'); INSERT INTO `sales` VALUES ('2016-02-19 00:00:00', '华东', '江苏省', '南京', '刘英玫', '肉/家禽', '鸡肉', '6', '28.3200'); INSERT INTO `sales` VALUES ('2016-02-19 00:00:00', '东北', '吉林省', '长春', '郑建杰', '肉/家禽', '鸭肉', '120', '2073.6000'); INSERT INTO `sales` VALUES ('2016-02-19 00:00:00', '东北', '吉林省', '长春', '郑建杰', '谷类/麦片', '黄豆', '35', '837.9000'); INSERT INTO `sales` VALUES ('2016-02-19 00:00:00', '东北', '吉林省', '长春', '郑建杰', '调味品', '海苔酱', '28', '423.3600'); INSERT INTO `sales` VALUES ('2016-02-19 00:00:00', '东北', '吉林省', '长春', '郑建杰', '调味品', '辣椒粉', '55', '514.8000'); INSERT INTO `sales` VALUES ('2016-02-20 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '特制品', '烤肉酱', '15', '546.0000'); INSERT INTO `sales` VALUES ('2016-02-20 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '调味品', '蚝油', '100', '1472.5000'); INSERT INTO `sales` VALUES ('2016-02-21 00:00:00', '华北', '河北省', '石家庄', '张颖', '点心', '玉米片', '15', '137.7000'); INSERT INTO `sales` VALUES ('2016-02-21 00:00:00', '华北', '河北省', '石家庄', '张颖', '饮料', '苏打水', '25', '270.0000'); INSERT INTO `sales` VALUES ('2016-02-21 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '饼干', '20', '222.4000'); INSERT INTO `sales` VALUES ('2016-02-21 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '浪花奶酪', '20', '32.0000'); INSERT INTO `sales` VALUES ('2016-02-21 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '蚵', '10', '76.8000'); INSERT INTO `sales` VALUES ('2016-02-24 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '运动饮料', '20', '288.0000'); INSERT INTO `sales` VALUES ('2016-02-24 00:00:00', '华北', '天津市', '天津', '刘英玫', '肉/家禽', '盐水鸭', '50', '1310.0000'); INSERT INTO `sales` VALUES ('2016-02-24 00:00:00', '华北', '天津市', '天津', '刘英玫', '调味品', '海鲜酱', '25', '570.0000'); INSERT INTO `sales` VALUES ('2016-02-24 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '义大利奶酪', '30', '516.0000'); INSERT INTO `sales` VALUES ('2016-02-25 00:00:00', '华南', '海南省', '海口', '刘英玫', '点心', '花生', '40', '272.0000'); INSERT INTO `sales` VALUES ('2016-02-25 00:00:00', '华南', '海南省', '海口', '刘英玫', '点心', '薯条', '21', '285.6000'); INSERT INTO `sales` VALUES ('2016-02-25 00:00:00', '东北', '吉林省', '长春', '王伟', '日用品', '苏澳奶酪', '36', '1584.0000'); INSERT INTO `sales` VALUES ('2016-02-26 00:00:00', '东北', '吉林省', '长春', '金士鹏', '点心', '棉花糖', '30', '747.0000'); INSERT INTO `sales` VALUES ('2016-02-26 00:00:00', '东北', '吉林省', '长春', '金士鹏', '特制品', '烤肉酱', '30', '1092.0000'); INSERT INTO `sales` VALUES ('2016-02-26 00:00:00', '东北', '吉林省', '长春', '金士鹏', '饮料', '柳橙汁', '20', '736.0000'); INSERT INTO `sales` VALUES ('2016-02-26 00:00:00', '东北', '吉林省', '长春', '金士鹏', '谷类/麦片', '白米', '15', '456.0000'); INSERT INTO `sales` VALUES ('2016-02-26 00:00:00', '东北', '吉林省', '长春', '金士鹏', '日用品', '义大利奶酪', '50', '860.0000'); INSERT INTO `sales` VALUES ('2016-02-27 00:00:00', '华东', '江苏省', '南京', '郑建杰', '特制品', '海鲜粉', '16', '364.8000'); INSERT INTO `sales` VALUES ('2016-02-27 00:00:00', '华东', '江苏省', '南京', '郑建杰', '海鲜', '蚵', '20', '182.4000'); INSERT INTO `sales` VALUES ('2016-02-27 00:00:00', '华东', '江苏省', '南京', '郑建杰', '日用品', '酸奶酪', '40', '1112.0000'); INSERT INTO `sales` VALUES ('2016-02-28 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '点心', '绿豆糕', '21', '157.5000'); INSERT INTO `sales` VALUES ('2016-02-28 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '饮料', '浓缩咖啡', '4', '18.6000'); INSERT INTO `sales` VALUES ('2016-02-28 00:00:00', '华东', '江西省', '南昌', '张颖', '点心', '花生', '40', '240.0000'); INSERT INTO `sales` VALUES ('2016-02-28 00:00:00', '华东', '江西省', '南昌', '张颖', '海鲜', '黄鱼', '28', '434.7000'); INSERT INTO `sales` VALUES ('2016-02-28 00:00:00', '华东', '江西省', '南昌', '张颖', '肉/家禽', '鸭肉', '60', '864.0000'); INSERT INTO `sales` VALUES ('2016-03-03 00:00:00', '华东', '江苏省', '南京', '王伟', '海鲜', '龙虾', '1', '4.8000'); INSERT INTO `sales` VALUES ('2016-03-03 00:00:00', '华东', '江苏省', '南京', '王伟', '谷类/麦片', '燕麦', '21', '151.2000'); INSERT INTO `sales` VALUES ('2016-03-04 00:00:00', '东北', '吉林省', '长春', '赵军', '点心', '糖果', '21', '153.3000'); INSERT INTO `sales` VALUES ('2016-03-04 00:00:00', '东北', '吉林省', '长春', '赵军', '谷类/麦片', '糙米', '50', '560.0000'); INSERT INTO `sales` VALUES ('2016-03-04 00:00:00', '华东', '江苏省', '南京', '郑建杰', '调味品', '盐', '16', '225.2800'); INSERT INTO `sales` VALUES ('2016-03-04 00:00:00', '华东', '江苏省', '南京', '郑建杰', '饮料', '柳橙汁', '3', '110.4000'); INSERT INTO `sales` VALUES ('2016-03-04 00:00:00', '华东', '江苏省', '南京', '郑建杰', '谷类/麦片', '白米', '30', '729.6000'); INSERT INTO `sales` VALUES ('2016-03-04 00:00:00', '华东', '江苏省', '南京', '郑建杰', '日用品', '花奶酪', '20', '544.0000'); INSERT INTO `sales` VALUES ('2016-03-05 00:00:00', '华东', '江苏省', '常州', '张颖', '饮料', '汽水', '25', '90.0000'); INSERT INTO `sales` VALUES ('2016-03-05 00:00:00', '华东', '江苏省', '常州', '张颖', '肉/家禽', '鸭肉', '18', '1603.8000'); INSERT INTO `sales` VALUES ('2016-03-05 00:00:00', '华东', '江苏省', '常州', '张颖', '海鲜', '虾米', '20', '294.0000'); INSERT INTO `sales` VALUES ('2016-03-05 00:00:00', '华东', '江苏省', '常州', '张颖', '海鲜', '雪鱼', '30', '205.2000'); INSERT INTO `sales` VALUES ('2016-03-05 00:00:00', '华东', '江苏省', '常州', '张颖', '点心', '玉米饼', '25', '325.0000'); INSERT INTO `sales` VALUES ('2016-03-06 00:00:00', '西南', '云南省', '昆明', '郑建杰', '日用品', '民众奶酪', '10', '168.0000'); INSERT INTO `sales` VALUES ('2016-03-06 00:00:00', '西南', '云南省', '昆明', '郑建杰', '海鲜', '蚵', '5', '48.0000'); INSERT INTO `sales` VALUES ('2016-03-06 00:00:00', '华北', '河北省', '张家口', '刘英玫', '饮料', '汽水', '28', '100.8000'); INSERT INTO `sales` VALUES ('2016-03-06 00:00:00', '华北', '河北省', '张家口', '刘英玫', '点心', '巧克力', '12', '134.4000'); INSERT INTO `sales` VALUES ('2016-03-07 00:00:00', '华北', '河北省', '张家口', '李芳', '海鲜', '黄鱼', '8', '165.6000'); INSERT INTO `sales` VALUES ('2016-03-07 00:00:00', '华北', '河北省', '张家口', '李芳', '饮料', '柳橙汁', '15', '552.0000'); INSERT INTO `sales` VALUES ('2016-03-10 00:00:00', '华东', '浙江省', '温州', '张颖', '饮料', '牛奶', '40', '516.8000'); INSERT INTO `sales` VALUES ('2016-03-10 00:00:00', '华东', '浙江省', '温州', '张颖', '点心', '饼干', '35', '413.5250'); INSERT INTO `sales` VALUES ('2016-03-10 00:00:00', '华东', '浙江省', '温州', '张颖', '调味品', '蚝油', '2', '26.3500'); INSERT INTO `sales` VALUES ('2016-03-11 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '墨鱼', '30', '1500.0000'); INSERT INTO `sales` VALUES ('2016-03-11 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '燕麦', '15', '108.0000'); INSERT INTO `sales` VALUES ('2016-03-11 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '黄豆', '8', '212.8000'); INSERT INTO `sales` VALUES ('2016-03-11 00:00:00', '华东', '江苏省', '南京', '王伟', '特制品', '海鲜粉', '30', '720.0000'); INSERT INTO `sales` VALUES ('2016-03-11 00:00:00', '华东', '江苏省', '南京', '王伟', '谷类/麦片', '白米', '20', '608.0000'); INSERT INTO `sales` VALUES ('2016-03-12 00:00:00', '华东', '江苏省', '南京', '刘英玫', '饮料', '汽水', '80', '273.6000'); INSERT INTO `sales` VALUES ('2016-03-12 00:00:00', '华东', '江苏省', '南京', '刘英玫', '特制品', '猪肉干', '18', '763.2000'); INSERT INTO `sales` VALUES ('2016-03-13 00:00:00', '华南', '福建省', '厦门', '张颖', '日用品', '浪花奶酪', '12', '24.0000'); INSERT INTO `sales` VALUES ('2016-03-13 00:00:00', '华南', '福建省', '厦门', '张颖', '日用品', '义大利奶酪', '12', '206.4000'); INSERT INTO `sales` VALUES ('2016-03-13 00:00:00', '华东', '江苏省', '常州', '赵军', '特制品', '沙茶', '12', '223.2000'); INSERT INTO `sales` VALUES ('2016-03-13 00:00:00', '华东', '江苏省', '常州', '赵军', '特制品', '烤肉酱', '18', '655.2000'); INSERT INTO `sales` VALUES ('2016-03-13 00:00:00', '华东', '江苏省', '常州', '赵军', '海鲜', '虾米', '21', '308.7000'); INSERT INTO `sales` VALUES ('2016-03-13 00:00:00', '华东', '江苏省', '常州', '赵军', '饮料', '浓缩咖啡', '10', '62.0000'); INSERT INTO `sales` VALUES ('2016-03-14 00:00:00', '华东', '上海市', '上海', '张雪眉', '日用品', '温馨奶酪', '35', '297.5000'); INSERT INTO `sales` VALUES ('2016-03-14 00:00:00', '华东', '上海市', '上海', '张雪眉', '调味品', '肉松', '60', '693.6000'); INSERT INTO `sales` VALUES ('2016-03-14 00:00:00', '华东', '上海市', '上海', '张雪眉', '饮料', '柠檬汁', '42', '514.0800'); INSERT INTO `sales` VALUES ('2016-03-17 00:00:00', '华东', '山东省', '青岛', '刘英玫', '肉/家禽', '鸭肉', '2', '36.4800'); INSERT INTO `sales` VALUES ('2016-03-17 00:00:00', '华东', '山东省', '青岛', '刘英玫', '饮料', '苏打水', '12', '144.0000'); INSERT INTO `sales` VALUES ('2016-03-17 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '苹果汁', '15', '216.0000'); INSERT INTO `sales` VALUES ('2016-03-17 00:00:00', '华东', '江苏省', '南京', '赵军', '点心', '花生', '21', '126.0000'); INSERT INTO `sales` VALUES ('2016-03-17 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '运动饮料', '20', '216.0000'); INSERT INTO `sales` VALUES ('2016-03-18 00:00:00', '华东', '江苏省', '南京', '王伟', '海鲜', '蟹', '20', '471.2000'); INSERT INTO `sales` VALUES ('2016-03-19 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '绿茶', '30', '6324.0000'); INSERT INTO `sales` VALUES ('2016-03-19 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '盐水鸭', '28', '733.6000'); INSERT INTO `sales` VALUES ('2016-03-19 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '苏澳奶酪', '60', '2640.0000'); INSERT INTO `sales` VALUES ('2016-03-19 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '黄豆', '30', '798.0000'); INSERT INTO `sales` VALUES ('2016-03-20 00:00:00', '华东', '江苏省', '南京', '孙林', '点心', '蛋糕', '30', '228.0000'); INSERT INTO `sales` VALUES ('2016-03-20 00:00:00', '华东', '江苏省', '南京', '孙林', '日用品', '苏澳奶酪', '12', '528.0000'); INSERT INTO `sales` VALUES ('2016-03-20 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '点心', '薯条', '24', '384.0000'); INSERT INTO `sales` VALUES ('2016-03-20 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '日用品', '花奶酪', '40', '1088.0000'); INSERT INTO `sales` VALUES ('2016-03-21 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '虾米', '10', '147.0000'); INSERT INTO `sales` VALUES ('2016-03-24 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '啤酒', '35', '372.4000'); INSERT INTO `sales` VALUES ('2016-03-24 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '辣椒粉', '30', '296.4000'); INSERT INTO `sales` VALUES ('2016-03-24 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '花生', '14', '112.0000'); INSERT INTO `sales` VALUES ('2016-03-24 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '虾米', '10', '147.0000'); INSERT INTO `sales` VALUES ('2016-03-24 00:00:00', '华东', '江苏省', '南京', '李芳', '特制品', '猪肉干', '3', '127.2000'); INSERT INTO `sales` VALUES ('2016-03-25 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '牛奶', '20', '273.6000'); INSERT INTO `sales` VALUES ('2016-03-25 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '蕃茄酱', '20', '144.0000'); INSERT INTO `sales` VALUES ('2016-03-25 00:00:00', '华北', '天津市', '天津', '郑建杰', '肉/家禽', '鸭肉', '30', '518.4000'); INSERT INTO `sales` VALUES ('2016-03-25 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '苏打水', '60', '648.0000'); INSERT INTO `sales` VALUES ('2016-03-26 00:00:00', '东北', '吉林省', '长春', '张颖', '日用品', '民众奶酪', '5', '84.0000'); INSERT INTO `sales` VALUES ('2016-03-26 00:00:00', '东北', '吉林省', '长春', '张颖', '特制品', '猪肉干', '25', '1060.0000'); INSERT INTO `sales` VALUES ('2016-03-26 00:00:00', '东北', '吉林省', '长春', '张颖', '特制品', '鸡精', '16', '128.0000'); INSERT INTO `sales` VALUES ('2016-03-26 00:00:00', '东北', '辽宁省', '大连', '王伟', '点心', '糖果', '5', '36.5000'); INSERT INTO `sales` VALUES ('2016-03-26 00:00:00', '东北', '辽宁省', '大连', '王伟', '点心', '棉花糖', '30', '747.0000'); INSERT INTO `sales` VALUES ('2016-03-26 00:00:00', '东北', '辽宁省', '大连', '王伟', '肉/家禽', '鸡肉', '24', '106.2000'); INSERT INTO `sales` VALUES ('2016-03-27 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '日用品', '苏澳奶酪', '30', '1320.0000'); INSERT INTO `sales` VALUES ('2016-03-27 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '海鲜', '海哲皮', '20', '192.0000'); INSERT INTO `sales` VALUES ('2016-03-28 00:00:00', '华东', '江西省', '南昌', '孙林', '日用品', '民众奶酪', '15', '189.0000'); INSERT INTO `sales` VALUES ('2016-03-28 00:00:00', '华东', '江西省', '南昌', '孙林', '点心', '饼干', '18', '250.2000'); INSERT INTO `sales` VALUES ('2016-03-31 00:00:00', '华东', '上海市', '上海', '金士鹏', '日用品', '苏澳奶酪', '60', '2640.0000'); INSERT INTO `sales` VALUES ('2016-03-31 00:00:00', '华东', '上海市', '上海', '金士鹏', '点心', '绿豆糕', '30', '300.0000'); INSERT INTO `sales` VALUES ('2016-03-31 00:00:00', '华东', '上海市', '上海', '金士鹏', '饮料', '浓缩咖啡', '36', '223.2000'); INSERT INTO `sales` VALUES ('2016-03-31 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '蚝油', '15', '197.6250'); INSERT INTO `sales` VALUES ('2016-03-31 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '辣椒粉', '7', '61.8800'); INSERT INTO `sales` VALUES ('2016-04-01 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '巧克力', '60', '638.4000'); INSERT INTO `sales` VALUES ('2016-04-01 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '糙米', '20', '212.8000'); INSERT INTO `sales` VALUES ('2016-04-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '海苔酱', '15', '226.8000'); INSERT INTO `sales` VALUES ('2016-04-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '肉松', '10', '122.4000'); INSERT INTO `sales` VALUES ('2016-04-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '黑奶酪', '10', '259.2000'); INSERT INTO `sales` VALUES ('2016-04-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '白米', '30', '912.0000'); INSERT INTO `sales` VALUES ('2016-04-03 00:00:00', '西南', '云南省', '昆明', '李芳', '谷类/麦片', '燕麦', '10', '72.0000'); INSERT INTO `sales` VALUES ('2016-04-03 00:00:00', '西南', '云南省', '昆明', '李芳', '海鲜', '虾子', '20', '154.0000'); INSERT INTO `sales` VALUES ('2016-04-03 00:00:00', '西南', '云南省', '昆明', '李芳', '调味品', '辣椒粉', '5', '52.0000'); INSERT INTO `sales` VALUES ('2016-04-04 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '日用品', '温馨奶酪', '20', '190.0000'); INSERT INTO `sales` VALUES ('2016-04-04 00:00:00', '华北', '天津市', '天津', '金士鹏', '谷类/麦片', '白米', '14', '425.6000'); INSERT INTO `sales` VALUES ('2016-04-04 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '酸奶酪', '25', '695.0000'); INSERT INTO `sales` VALUES ('2016-04-04 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '辣椒粉', '25', '260.0000'); INSERT INTO `sales` VALUES ('2016-04-07 00:00:00', '华北', '河北省', '张家口', '刘英玫', '饮料', '汽水', '14', '63.0000'); INSERT INTO `sales` VALUES ('2016-04-07 00:00:00', '华北', '河北省', '张家口', '刘英玫', '海鲜', '虾米', '5', '92.0000'); INSERT INTO `sales` VALUES ('2016-04-07 00:00:00', '华北', '河北省', '张家口', '刘英玫', '谷类/麦片', '糙米', '30', '420.0000'); INSERT INTO `sales` VALUES ('2016-04-08 00:00:00', '华北', '北京市', '北京', '郑建杰', '特制品', '烤肉酱', '20', '912.0000'); INSERT INTO `sales` VALUES ('2016-04-08 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '薯条', '25', '500.0000'); INSERT INTO `sales` VALUES ('2016-04-09 00:00:00', '华南', '福建省', '厦门', '孙林', '调味品', '味精', '12', '176.7000'); INSERT INTO `sales` VALUES ('2016-04-09 00:00:00', '华南', '福建省', '厦门', '孙林', '特制品', '烤肉酱', '8', '346.5600'); INSERT INTO `sales` VALUES ('2016-04-09 00:00:00', '华北', '天津市', '天津', '张雪眉', '肉/家禽', '鸡肉', '20', '149.0000'); INSERT INTO `sales` VALUES ('2016-04-10 00:00:00', '华东', '江苏省', '常州', '王伟', '海鲜', '雪鱼', '21', '199.5000'); INSERT INTO `sales` VALUES ('2016-04-10 00:00:00', '华东', '江苏省', '常州', '王伟', '肉/家禽', '盐水鸭', '6', '196.8000'); INSERT INTO `sales` VALUES ('2016-04-10 00:00:00', '华东', '江苏省', '常州', '王伟', '饮料', '矿泉水', '30', '420.0000'); INSERT INTO `sales` VALUES ('2016-04-11 00:00:00', '华北', '天津市', '天津', '孙林', '特制品', '沙茶', '70', '1627.5000'); INSERT INTO `sales` VALUES ('2016-04-11 00:00:00', '华北', '天津市', '天津', '孙林', '调味品', '海苔酱', '20', '421.0000'); INSERT INTO `sales` VALUES ('2016-04-11 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '饮料', '牛奶', '12', '228.0000'); INSERT INTO `sales` VALUES ('2016-04-11 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '点心', '花生', '12', '120.0000'); INSERT INTO `sales` VALUES ('2016-04-11 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '肉/家禽', '盐水鸭', '10', '328.0000'); INSERT INTO `sales` VALUES ('2016-04-11 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '调味品', '海鲜酱', '25', '712.5000'); INSERT INTO `sales` VALUES ('2016-04-14 00:00:00', '华东', '山东省', '济南', '李芳', '点心', '山渣片', '3', '147.9000'); INSERT INTO `sales` VALUES ('2016-04-15 00:00:00', '华北', '天津市', '天津', '张雪眉', '点心', '巧克力', '18', '226.8000'); INSERT INTO `sales` VALUES ('2016-04-15 00:00:00', '华北', '天津市', '天津', '张雪眉', '饮料', '苏打水', '14', '189.0000'); INSERT INTO `sales` VALUES ('2016-04-15 00:00:00', '西南', '重庆市', '重庆', '金士鹏', '饮料', '柳橙汁', '15', '586.5000'); INSERT INTO `sales` VALUES ('2016-04-15 00:00:00', '西南', '重庆市', '重庆', '金士鹏', '点心', '玉米片', '15', '162.5625'); INSERT INTO `sales` VALUES ('2016-04-16 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '龙虾', '10', '60.0000'); INSERT INTO `sales` VALUES ('2016-04-16 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '运动饮料', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-04-17 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '特制品', '烤肉酱', '3', '136.8000'); INSERT INTO `sales` VALUES ('2016-04-18 00:00:00', '东北', '辽宁省', '大连', '孙林', '肉/家禽', '鸭肉', '36', '4456.4400'); INSERT INTO `sales` VALUES ('2016-04-18 00:00:00', '东北', '辽宁省', '大连', '孙林', '饮料', '浓缩咖啡', '36', '251.1000'); INSERT INTO `sales` VALUES ('2016-04-18 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '调味品', '盐', '50', '935.0000'); INSERT INTO `sales` VALUES ('2016-04-18 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '特制品', '海鲜粉', '50', '1275.0000'); INSERT INTO `sales` VALUES ('2016-04-18 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '调味品', '胡椒粉', '10', '340.0000'); INSERT INTO `sales` VALUES ('2016-04-21 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '汽水', '10', '38.2500'); INSERT INTO `sales` VALUES ('2016-04-21 00:00:00', '华北', '天津市', '天津', '金士鹏', '海鲜', '蚵', '9', '91.8000'); INSERT INTO `sales` VALUES ('2016-04-21 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '蛋糕', '6', '48.4500'); INSERT INTO `sales` VALUES ('2016-04-21 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '花奶酪', '12', '346.8000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '花生', '40', '320.0000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '白奶酪', '50', '1280.0000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '海鲜酱', '15', '342.0000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '桂花糕', '39', '3159.0000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '特制品', '烤肉酱', '35', '1596.0000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '白米', '70', '2660.0000'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '海苔酱', '39', '820.9500'); INSERT INTO `sales` VALUES ('2016-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '浓缩咖啡', '50', '387.5000'); INSERT INTO `sales` VALUES ('2016-04-23 00:00:00', '东北', '吉林省', '长春', '王伟', '肉/家禽', '鸡', '16', '1319.2000'); INSERT INTO `sales` VALUES ('2016-04-23 00:00:00', '东北', '吉林省', '长春', '王伟', '点心', '饼干', '50', '872.5000'); INSERT INTO `sales` VALUES ('2016-04-23 00:00:00', '东北', '吉林省', '长春', '王伟', '点心', '牛肉干', '120', '5268.0000'); INSERT INTO `sales` VALUES ('2016-04-23 00:00:00', '东北', '吉林省', '长春', '王伟', '日用品', '浪花奶酪', '16', '34.0000'); INSERT INTO `sales` VALUES ('2016-04-23 00:00:00', '东北', '吉林省', '长春', '王伟', '日用品', '花奶酪', '84', '2427.6000'); INSERT INTO `sales` VALUES ('2016-04-24 00:00:00', '华南', '海南省', '海口', '王伟', '海鲜', '墨鱼', '25', '1406.2500'); INSERT INTO `sales` VALUES ('2016-04-24 00:00:00', '华南', '海南省', '海口', '王伟', '海鲜', '虾子', '80', '694.8000'); INSERT INTO `sales` VALUES ('2016-04-24 00:00:00', '华南', '海南省', '海口', '王伟', '谷类/麦片', '糙米', '20', '280.0000'); INSERT INTO `sales` VALUES ('2016-04-24 00:00:00', '华东', '江苏省', '南京', '李芳', '谷类/麦片', '三合一麦片', '6', '42.0000'); INSERT INTO `sales` VALUES ('2016-04-24 00:00:00', '华东', '江苏省', '南京', '李芳', '日用品', '苏澳奶酪', '4', '220.0000'); INSERT INTO `sales` VALUES ('2016-04-24 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '苏打水', '6', '90.0000'); INSERT INTO `sales` VALUES ('2016-04-25 00:00:00', '华东', '江西省', '南昌', '郑建杰', '饮料', '汽水', '5', '22.5000'); INSERT INTO `sales` VALUES ('2016-04-25 00:00:00', '华东', '江西省', '南昌', '郑建杰', '饮料', '绿茶', '15', '3952.5000'); INSERT INTO `sales` VALUES ('2016-04-25 00:00:00', '华东', '江西省', '南昌', '郑建杰', '调味品', '蚝油', '9', '175.0500'); INSERT INTO `sales` VALUES ('2016-04-28 00:00:00', '华北', '天津市', '天津', '孙林', '海鲜', '蟹', '16', '471.2000'); INSERT INTO `sales` VALUES ('2016-04-28 00:00:00', '华北', '天津市', '天津', '孙林', '谷类/麦片', '白米', '40', '1520.0000'); INSERT INTO `sales` VALUES ('2016-04-28 00:00:00', '华北', '天津市', '天津', '孙林', '日用品', '花奶酪', '10', '323.0000'); INSERT INTO `sales` VALUES ('2016-04-29 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '饮料', '汽水', '8', '36.0000'); INSERT INTO `sales` VALUES ('2016-04-29 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '肉/家禽', '盐水鸭', '5', '164.0000'); INSERT INTO `sales` VALUES ('2016-04-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '蜜桃汁', '3', '54.0000'); INSERT INTO `sales` VALUES ('2016-04-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '海鲜', '虾子', '10', '96.5000'); INSERT INTO `sales` VALUES ('2016-04-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '绿豆糕', '6', '75.0000'); INSERT INTO `sales` VALUES ('2016-04-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '苹果汁', '40', '576.0000'); INSERT INTO `sales` VALUES ('2016-04-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '胡椒粉', '24', '960.0000'); INSERT INTO `sales` VALUES ('2016-04-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '黄鱼', '20', '414.2400'); INSERT INTO `sales` VALUES ('2016-04-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '虾米', '25', '368.0000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '华东', '江苏省', '南京', '金士鹏', '肉/家禽', '猪肉', '25', '877.5000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '华东', '江苏省', '南京', '金士鹏', '点心', '桂花糕', '15', '1093.5000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '华东', '江苏省', '南京', '金士鹏', '海鲜', '干贝', '18', '421.2000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '华东', '江苏省', '南京', '金士鹏', '海鲜', '虾子', '6', '52.1100'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '西南', '云南省', '昆明', '张颖', '海鲜', '蟹', '2', '62.0000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '西南', '云南省', '昆明', '张颖', '海鲜', '黄鱼', '10', '258.9000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '西南', '云南省', '昆明', '张颖', '饮料', '柳橙汁', '60', '2760.0000'); INSERT INTO `sales` VALUES ('2016-05-01 00:00:00', '西南', '云南省', '昆明', '张颖', '肉/家禽', '鸡肉', '15', '111.7500'); INSERT INTO `sales` VALUES ('2016-05-02 00:00:00', '华东', '山东省', '济南', '张颖', '海鲜', '鱿鱼', '30', '570.0000'); INSERT INTO `sales` VALUES ('2016-05-02 00:00:00', '华东', '山东省', '济南', '张颖', '海鲜', '虾米', '15', '248.4000'); INSERT INTO `sales` VALUES ('2016-05-05 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '饮料', '苹果汁', '8', '122.4000'); INSERT INTO `sales` VALUES ('2016-05-05 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '海鲜', '龙虾', '10', '60.0000'); INSERT INTO `sales` VALUES ('2016-05-05 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '谷类/麦片', '白米', '30', '969.0000'); INSERT INTO `sales` VALUES ('2016-05-05 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '盐', '50', '990.0000'); INSERT INTO `sales` VALUES ('2016-05-05 00:00:00', '华北', '天津市', '天津', '金士鹏', '海鲜', '鱿鱼', '30', '513.0000'); INSERT INTO `sales` VALUES ('2016-05-06 00:00:00', '华北', '河北省', '张家口', '孙林', '日用品', '民众奶酪', '3', '63.0000'); INSERT INTO `sales` VALUES ('2016-05-06 00:00:00', '华北', '河北省', '张家口', '孙林', '日用品', '浪花奶酪', '8', '16.0000'); INSERT INTO `sales` VALUES ('2016-05-06 00:00:00', '华北', '河北省', '张家口', '孙林', '日用品', '酸奶酪', '9', '313.2000'); INSERT INTO `sales` VALUES ('2016-05-07 00:00:00', '华南', '福建省', '厦门', '赵军', '肉/家禽', '鸭肉', '14', '336.0000'); INSERT INTO `sales` VALUES ('2016-05-07 00:00:00', '华南', '福建省', '厦门', '赵军', '点心', '绿豆糕', '20', '250.0000'); INSERT INTO `sales` VALUES ('2016-05-07 00:00:00', '华南', '福建省', '厦门', '赵军', '日用品', '黑奶酪', '10', '360.0000'); INSERT INTO `sales` VALUES ('2016-05-08 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '猪肉', '40', '1560.0000'); INSERT INTO `sales` VALUES ('2016-05-08 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '柳橙汁', '25', '1150.0000'); INSERT INTO `sales` VALUES ('2016-05-08 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '海鲜酱', '20', '570.0000'); INSERT INTO `sales` VALUES ('2016-05-08 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '柠檬汁', '50', '900.0000'); INSERT INTO `sales` VALUES ('2016-05-08 00:00:00', '华东', '江苏省', '常州', '金士鹏', '日用品', '苏澳奶酪', '2', '110.0000'); INSERT INTO `sales` VALUES ('2016-05-09 00:00:00', '华东', '江苏省', '南京', '金士鹏', '海鲜', '黄鱼', '15', '388.3500'); INSERT INTO `sales` VALUES ('2016-05-09 00:00:00', '华东', '江苏省', '南京', '金士鹏', '调味品', '肉松', '24', '408.0000'); INSERT INTO `sales` VALUES ('2016-05-12 00:00:00', '西南', '四川省', '成都', '刘英玫', '调味品', '盐', '50', '1045.0000'); INSERT INTO `sales` VALUES ('2016-05-12 00:00:00', '西南', '四川省', '成都', '刘英玫', '日用品', '酸奶酪', '24', '835.2000'); INSERT INTO `sales` VALUES ('2016-05-12 00:00:00', '西南', '四川省', '成都', '刘英玫', '海鲜', '海哲皮', '24', '342.0000'); INSERT INTO `sales` VALUES ('2016-05-12 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '海鲜', '黄鱼', '10', '258.9000'); INSERT INTO `sales` VALUES ('2016-05-12 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '海鲜', '虾米', '10', '147.2000'); INSERT INTO `sales` VALUES ('2016-05-12 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '肉/家禽', '鸡肉', '10', '59.6000'); INSERT INTO `sales` VALUES ('2016-05-13 00:00:00', '华东', '山东省', '济南', '郑建杰', '日用品', '民众奶酪', '50', '945.0000'); INSERT INTO `sales` VALUES ('2016-05-13 00:00:00', '华东', '山东省', '济南', '郑建杰', '海鲜', '虾米', '10', '165.6000'); INSERT INTO `sales` VALUES ('2016-05-13 00:00:00', '华东', '山东省', '济南', '郑建杰', '谷类/麦片', '小米', '5', '87.7500'); INSERT INTO `sales` VALUES ('2016-05-13 00:00:00', '华东', '山东省', '济南', '郑建杰', '日用品', '苏澳奶酪', '15', '742.5000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '德国奶酪', '15', '427.5000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '温馨奶酪', '20', '250.0000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '浪花奶酪', '30', '75.0000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '花奶酪', '35', '892.5000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '温馨奶酪', '30', '375.0000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '特制品', '猪肉干', '6', '318.0000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '海鲜', '海参', '20', '265.0000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '酸奶酪', '21', '730.8000'); INSERT INTO `sales` VALUES ('2016-05-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '海鲜', '海哲皮', '9', '135.0000'); INSERT INTO `sales` VALUES ('2016-05-15 00:00:00', '华东', '江苏省', '南京', '张雪眉', '饮料', '苏打水', '7', '105.0000'); INSERT INTO `sales` VALUES ('2016-05-15 00:00:00', '华东', '江苏省', '南京', '张雪眉', '日用品', '酸奶酪', '1', '34.8000'); INSERT INTO `sales` VALUES ('2016-05-16 00:00:00', '华东', '江苏省', '南京', '孙林', '海鲜', '龙虾', '8', '48.0000'); INSERT INTO `sales` VALUES ('2016-05-16 00:00:00', '华东', '江苏省', '南京', '孙林', '点心', '花生', '15', '150.0000'); INSERT INTO `sales` VALUES ('2016-05-16 00:00:00', '华东', '江苏省', '南京', '孙林', '日用品', '浪花奶酪', '15', '37.5000'); INSERT INTO `sales` VALUES ('2016-05-16 00:00:00', '华东', '江苏省', '南京', '孙林', '点心', '薯条', '6', '120.0000'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '调味品', '蕃茄酱', '60', '600.0000'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '点心', '棉花糖', '40', '1249.2000'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '饮料', '绿茶', '30', '7905.0000'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '点心', '绿豆糕', '35', '437.5000'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '饮料', '汽水', '35', '141.7500'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '饮料', '绿茶', '4', '948.6000'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '调味品', '海苔酱', '36', '682.0200'); INSERT INTO `sales` VALUES ('2016-05-19 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '日用品', '义大利奶酪', '9', '174.1500'); INSERT INTO `sales` VALUES ('2016-05-20 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '民众奶酪', '15', '299.2500'); INSERT INTO `sales` VALUES ('2016-05-20 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '鸡肉', '24', '169.8600'); INSERT INTO `sales` VALUES ('2016-05-21 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '日用品', '德国奶酪', '30', '969.0000'); INSERT INTO `sales` VALUES ('2016-05-21 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '谷类/麦片', '燕麦', '70', '535.5000'); INSERT INTO `sales` VALUES ('2016-05-21 00:00:00', '东北', '吉林省', '长春', '郑建杰', '特制品', '烤肉酱', '7', '319.2000'); INSERT INTO `sales` VALUES ('2016-05-21 00:00:00', '东北', '吉林省', '长春', '郑建杰', '饮料', '矿泉水', '7', '98.0000'); INSERT INTO `sales` VALUES ('2016-05-22 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '民众奶酪', '10', '210.0000'); INSERT INTO `sales` VALUES ('2016-05-23 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '海鲜粉', '10', '300.0000'); INSERT INTO `sales` VALUES ('2016-05-23 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '蜜桃汁', '30', '540.0000'); INSERT INTO `sales` VALUES ('2016-05-23 00:00:00', '华东', '江苏省', '南京', '张颖', '点心', '山渣片', '40', '1972.0000'); INSERT INTO `sales` VALUES ('2016-05-23 00:00:00', '华东', '江苏省', '南京', '李芳', '日用品', '白奶酪', '24', '652.8000'); INSERT INTO `sales` VALUES ('2016-05-23 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '鱿鱼', '60', '1140.0000'); INSERT INTO `sales` VALUES ('2016-05-26 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '啤酒', '10', '105.0000'); INSERT INTO `sales` VALUES ('2016-05-26 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '虾子', '14', '135.1000'); INSERT INTO `sales` VALUES ('2016-05-27 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '温馨奶酪', '55', '584.3750'); INSERT INTO `sales` VALUES ('2016-05-27 00:00:00', '华北', '天津市', '天津', '赵军', '海鲜', '雪鱼', '100', '807.5000'); INSERT INTO `sales` VALUES ('2016-05-27 00:00:00', '华北', '天津市', '天津', '赵军', '特制品', '猪肉干', '48', '2162.4000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '肉/家禽', '猪肉', '8', '280.8000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '点心', '糖果', '10', '92.0000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '点心', '花生', '6', '54.0000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '调味品', '海鲜酱', '10', '256.5000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '华东', '江苏省', '南京', '郑建杰', '点心', '饼干', '40', '593.3000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '华东', '江苏省', '南京', '郑建杰', '饮料', '蜜桃汁', '20', '306.0000'); INSERT INTO `sales` VALUES ('2016-05-28 00:00:00', '华东', '江苏省', '南京', '郑建杰', '调味品', '蚝油', '40', '778.0000'); INSERT INTO `sales` VALUES ('2016-05-29 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '黑奶酪', '18', '648.0000'); INSERT INTO `sales` VALUES ('2016-05-29 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '浓缩咖啡', '30', '232.5000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '西南', '云南省', '昆明', '王伟', '日用品', '民众奶酪', '15', '315.0000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '西南', '云南省', '昆明', '王伟', '点心', '饼干', '14', '244.3000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '西南', '云南省', '昆明', '王伟', '谷类/麦片', '糯米', '24', '504.0000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '西南', '云南省', '昆明', '王伟', '日用品', '温馨奶酪', '30', '375.0000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '西南', '云南省', '昆明', '王伟', '饮料', '蜜桃汁', '6', '108.0000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '饼干', '30', '497.3250'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '燕麦', '20', '171.0000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '山渣片', '20', '936.7000'); INSERT INTO `sales` VALUES ('2016-05-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '辣椒粉', '10', '123.5000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华东', '山东省', '济南', '孙林', '特制品', '沙茶', '30', '558.0000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华东', '山东省', '济南', '孙林', '点心', '糖果', '35', '257.6000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华东', '山东省', '济南', '孙林', '饮料', '汽水', '18', '64.8000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华东', '山东省', '济南', '孙林', '特制品', '猪肉干', '20', '848.0000'); INSERT INTO `sales` VALUES ('2016-06-02 00:00:00', '华东', '山东省', '济南', '孙林', '谷类/麦片', '白米', '40', '1216.0000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '华北', '河北省', '石家庄', '王伟', '日用品', '酸奶酪', '24', '835.2000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '华北', '天津市', '天津', '张雪眉', '谷类/麦片', '黄豆', '30', '997.5000'); INSERT INTO `sales` VALUES ('2016-06-03 00:00:00', '华北', '天津市', '天津', '张雪眉', '饮料', '浓缩咖啡', '20', '155.0000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华南', '福建省', '厦门', '张颖', '点心', '蛋糕', '25', '237.5000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华南', '福建省', '厦门', '张颖', '特制品', '猪肉干', '20', '1060.0000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华南', '福建省', '厦门', '张颖', '谷类/麦片', '三合一麦片', '30', '210.0000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华南', '福建省', '厦门', '张颖', '肉/家禽', '盐水鸭', '18', '590.4000'); INSERT INTO `sales` VALUES ('2016-06-04 00:00:00', '华南', '福建省', '厦门', '张颖', '海鲜', '海哲皮', '3', '45.0000'); INSERT INTO `sales` VALUES ('2016-06-05 00:00:00', '华东', '浙江省', '温州', '孙林', '海鲜', '虾子', '12', '110.0100'); INSERT INTO `sales` VALUES ('2016-06-05 00:00:00', '华东', '浙江省', '温州', '孙林', '肉/家禽', '鸭肉', '18', '410.4000'); INSERT INTO `sales` VALUES ('2016-06-06 00:00:00', '华东', '江苏省', '常州', '刘英玫', '海鲜', '黄鱼', '20', '517.8000'); INSERT INTO `sales` VALUES ('2016-06-06 00:00:00', '华东', '江苏省', '常州', '刘英玫', '点心', '山渣片', '15', '554.6250'); INSERT INTO `sales` VALUES ('2016-06-06 00:00:00', '华北', '天津市', '天津', '王伟', '调味品', '蚝油', '10', '194.5000'); INSERT INTO `sales` VALUES ('2016-06-06 00:00:00', '华北', '天津市', '天津', '王伟', '特制品', '猪肉干', '50', '2650.0000'); INSERT INTO `sales` VALUES ('2016-06-09 00:00:00', '西南', '四川省', '成都', '张颖', '日用品', '浪花奶酪', '20', '45.0000'); INSERT INTO `sales` VALUES ('2016-06-09 00:00:00', '西南', '四川省', '成都', '张颖', '点心', '山渣片', '10', '443.7000'); INSERT INTO `sales` VALUES ('2016-06-10 00:00:00', '华东', '山东省', '青岛', '王伟', '海鲜', '鱿鱼', '25', '475.0000'); INSERT INTO `sales` VALUES ('2016-06-10 00:00:00', '华东', '山东省', '青岛', '王伟', '谷类/麦片', '三合一麦片', '70', '490.0000'); INSERT INTO `sales` VALUES ('2016-06-10 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '肉/家禽', '猪肉', '16', '592.8000'); INSERT INTO `sales` VALUES ('2016-06-10 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '日用品', '温馨奶酪', '6', '71.2500'); INSERT INTO `sales` VALUES ('2016-06-10 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '肉/家禽', '鸭肉', '25', '570.0000'); INSERT INTO `sales` VALUES ('2016-06-11 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '饮料', '汽水', '25', '101.2500'); INSERT INTO `sales` VALUES ('2016-06-11 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '谷类/麦片', '黄豆', '18', '538.6500'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华北', '天津市', '天津', '张雪眉', '日用品', '民众奶酪', '35', '624.7500'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华北', '天津市', '天津', '张雪眉', '海鲜', '墨鱼', '18', '956.2500'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华北', '天津市', '天津', '张雪眉', '饮料', '柠檬汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '日用品', '温馨奶酪', '60', '600.0000'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '特制品', '猪肉干', '3', '159.0000'); INSERT INTO `sales` VALUES ('2016-06-12 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '日用品', '苏澳奶酪', '40', '1760.0000'); INSERT INTO `sales` VALUES ('2016-06-13 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '蟹', '5', '155.0000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '温馨奶酪', '35', '350.0000'); INSERT INTO `sales` VALUES ('2016-06-16 00:00:00', '华北', '天津市', '天津', '赵军', '饮料', '柠檬汁', '30', '540.0000'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '民众奶酪', '15', '299.2500'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '白米', '60', '2166.0000'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '华北', '天津市', '天津', '刘英玫', '特制品', '沙茶', '11', '217.3875'); INSERT INTO `sales` VALUES ('2016-06-17 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '糙米', '28', '333.2000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '饼干', '12', '188.4600'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '华东', '江苏省', '南京', '李芳', '日用品', '白奶酪', '10', '288.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '虾米', '50', '920.0000'); INSERT INTO `sales` VALUES ('2016-06-18 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '浓缩咖啡', '15', '104.6250'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '东北', '吉林省', '长春', '金士鹏', '肉/家禽', '猪肉', '18', '702.0000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '东北', '吉林省', '长春', '金士鹏', '饮料', '啤酒', '40', '560.0000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '东北', '吉林省', '长春', '金士鹏', '肉/家禽', '盐水鸭', '25', '820.0000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '日用品', '浪花奶酪', '14', '35.0000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '海鲜', '虾米', '2', '36.8000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '点心', '山渣片', '10', '493.0000'); INSERT INTO `sales` VALUES ('2016-06-19 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '谷类/麦片', '黄豆', '6', '199.5000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '江苏省', '南京', '赵军', '日用品', '苏澳奶酪', '12', '660.0000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '江苏省', '南京', '赵军', '调味品', '甜辣酱', '6', '263.4000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '江苏省', '南京', '赵军', '日用品', '酸奶酪', '30', '1044.0000'); INSERT INTO `sales` VALUES ('2016-06-20 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '柠檬汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华东', '江西省', '南昌', '李芳', '饮料', '苹果汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华东', '江西省', '南昌', '李芳', '日用品', '温馨奶酪', '20', '250.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华东', '江西省', '南昌', '李芳', '调味品', '蚝油', '21', '408.4500'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华北', '天津市', '天津', '张雪眉', '饮料', '运动饮料', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华北', '天津市', '天津', '张雪眉', '饮料', '浓缩咖啡', '20', '155.0000'); INSERT INTO `sales` VALUES ('2016-06-23 00:00:00', '华北', '天津市', '天津', '张雪眉', '调味品', '辣椒粉', '18', '234.0000'); INSERT INTO `sales` VALUES ('2016-06-24 00:00:00', '华东', '江苏省', '南京', '郑建杰', '饮料', '蜜桃汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2016-06-24 00:00:00', '华东', '江苏省', '南京', '郑建杰', '谷类/麦片', '小米', '6', '117.0000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '天津市', '天津', '张颖', '调味品', '味精', '10', '155.0000'); INSERT INTO `sales` VALUES ('2016-06-25 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '浓缩咖啡', '21', '162.7500'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '特制品', '沙茶', '15', '331.3125'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '虾子', '9', '82.5075'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '调味品', '海苔酱', '30', '599.9250'); INSERT INTO `sales` VALUES ('2016-06-26 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '浓缩咖啡', '50', '310.0000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '西南', '云南省', '昆明', '李芳', '谷类/麦片', '小米', '4', '78.0000'); INSERT INTO `sales` VALUES ('2016-06-27 00:00:00', '西南', '云南省', '昆明', '李芳', '饮料', '柠檬汁', '14', '252.0000'); INSERT INTO `sales` VALUES ('2016-06-30 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸭肉', '10', '1237.9000'); INSERT INTO `sales` VALUES ('2016-06-30 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '花奶酪', '24', '693.6000'); INSERT INTO `sales` VALUES ('2016-06-30 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '黑奶酪', '10', '306.0000'); INSERT INTO `sales` VALUES ('2016-06-30 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '温馨奶酪', '50', '593.7500'); INSERT INTO `sales` VALUES ('2016-07-01 00:00:00', '华东', '江苏省', '常州', '金士鹏', '点心', '蛋糕', '15', '142.5000'); INSERT INTO `sales` VALUES ('2016-07-02 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '谷类/麦片', '三合一麦片', '4', '23.8000'); INSERT INTO `sales` VALUES ('2016-07-02 00:00:00', '华南', '福建省', '厦门', '张颖', '点心', '棉花糖', '6', '187.3800'); INSERT INTO `sales` VALUES ('2016-07-02 00:00:00', '华南', '福建省', '厦门', '张颖', '饮料', '蜜桃汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2016-07-02 00:00:00', '华南', '福建省', '厦门', '张颖', '调味品', '辣椒粉', '20', '260.0000'); INSERT INTO `sales` VALUES ('2016-07-03 00:00:00', '华北', '河北省', '张家口', '王伟', '海鲜', '墨鱼', '40', '2000.0000'); INSERT INTO `sales` VALUES ('2016-07-03 00:00:00', '华北', '河北省', '张家口', '王伟', '谷类/麦片', '糙米', '100', '1120.0000'); INSERT INTO `sales` VALUES ('2016-07-04 00:00:00', '华东', '山东省', '济南', '刘英玫', '饮料', '蜜桃汁', '4', '72.0000'); INSERT INTO `sales` VALUES ('2016-07-07 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '苹果汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2016-07-07 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '辣椒粉', '60', '741.0000'); INSERT INTO `sales` VALUES ('2016-07-07 00:00:00', '西南', '四川省', '成都', '张颖', '调味品', '蕃茄酱', '14', '140.0000'); INSERT INTO `sales` VALUES ('2016-07-07 00:00:00', '西南', '四川省', '成都', '张颖', '特制品', '海鲜粉', '10', '300.0000'); INSERT INTO `sales` VALUES ('2016-07-07 00:00:00', '西南', '四川省', '成都', '张颖', '肉/家禽', '鸡肉', '50', '372.5000'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华东', '山东省', '青岛', '李芳', '调味品', '味精', '25', '368.1250'); INSERT INTO `sales` VALUES ('2016-07-08 00:00:00', '华东', '山东省', '青岛', '李芳', '点心', '棉花糖', '5', '148.3425'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '桂花糕', '21', '1360.8000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '黑奶酪', '20', '576.0000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '柠檬汁', '4', '57.6000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '西南', '重庆市', '重庆', '李芳', '谷类/麦片', '三合一麦片', '24', '168.0000'); INSERT INTO `sales` VALUES ('2016-07-09 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '海参', '30', '397.5000'); INSERT INTO `sales` VALUES ('2016-07-10 00:00:00', '华东', '山东省', '济南', '王伟', '饮料', '蜜桃汁', '30', '405.0000'); INSERT INTO `sales` VALUES ('2016-07-10 00:00:00', '华东', '山东省', '济南', '王伟', '调味品', '海鲜酱', '120', '2565.0000'); INSERT INTO `sales` VALUES ('2016-07-10 00:00:00', '华东', '山东省', '济南', '王伟', '日用品', '黑奶酪', '65', '1755.0000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '谷类/麦片', '白米', '5', '152.0000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '调味品', '甜辣酱', '24', '842.8800'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '饮料', '浓缩咖啡', '30', '186.0000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '汽水', '35', '126.0000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '谷类/麦片', '小米', '20', '390.0000'); INSERT INTO `sales` VALUES ('2016-07-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '海苔酱', '12', '202.0800'); INSERT INTO `sales` VALUES ('2016-07-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '点心', '牛肉干', '50', '2195.0000'); INSERT INTO `sales` VALUES ('2016-07-14 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '义大利奶酪', '9', '193.5000'); INSERT INTO `sales` VALUES ('2016-07-15 00:00:00', '华东', '江苏省', '南京', '孙林', '点心', '山渣片', '10', '493.0000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华北', '天津市', '天津', '郑建杰', '肉/家禽', '鸡肉', '4', '29.8000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '海哲皮', '30', '450.0000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '海鲜', '龙虾', '60', '360.0000'); INSERT INTO `sales` VALUES ('2016-07-16 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '日用品', '苏澳奶酪', '35', '1925.0000'); INSERT INTO `sales` VALUES ('2016-07-17 00:00:00', '东北', '吉林省', '长春', '刘英玫', '调味品', '辣椒粉', '5', '48.7500'); INSERT INTO `sales` VALUES ('2016-07-18 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '糯米', '48', '1008.0000'); INSERT INTO `sales` VALUES ('2016-07-18 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '薯条', '25', '475.0000'); INSERT INTO `sales` VALUES ('2016-07-18 00:00:00', '华东', '江苏省', '南京', '张颖', '点心', '玉米片', '6', '68.8500'); INSERT INTO `sales` VALUES ('2016-07-18 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '柠檬汁', '10', '162.0000'); INSERT INTO `sales` VALUES ('2016-07-21 00:00:00', '华东', '江西省', '南昌', '张颖', '点心', '饼干', '30', '497.3250'); INSERT INTO `sales` VALUES ('2016-07-21 00:00:00', '华东', '江西省', '南昌', '张颖', '日用品', '苏澳奶酪', '20', '1045.0000'); INSERT INTO `sales` VALUES ('2016-07-21 00:00:00', '华东', '江西省', '南昌', '张颖', '日用品', '花奶酪', '70', '2261.0000'); INSERT INTO `sales` VALUES ('2016-07-21 00:00:00', '华东', '江西省', '南昌', '张颖', '日用品', '义大利奶酪', '15', '306.3750'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华南', '海南省', '海口', '郑建杰', '调味品', '盐', '20', '352.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华南', '海南省', '海口', '郑建杰', '肉/家禽', '鸭肉', '20', '384.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华南', '海南省', '海口', '郑建杰', '点心', '山渣片', '10', '394.4000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华北', '天津市', '天津', '赵军', '特制品', '海鲜粉', '45', '1350.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华北', '天津市', '天津', '赵军', '肉/家禽', '猪肉', '100', '3900.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '浪花奶酪', '14', '35.0000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华北', '天津市', '天津', '赵军', '海鲜', '虾米', '42', '772.8000'); INSERT INTO `sales` VALUES ('2016-07-22 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '酸奶酪', '12', '417.6000'); INSERT INTO `sales` VALUES ('2016-07-23 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '白米', '28', '1064.0000'); INSERT INTO `sales` VALUES ('2016-07-24 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '苹果汁', '3', '54.0000'); INSERT INTO `sales` VALUES ('2016-07-24 00:00:00', '华北', '天津市', '天津', '金士鹏', '海鲜', '蟹', '10', '310.0000'); INSERT INTO `sales` VALUES ('2016-07-24 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '花生', '6', '60.0000'); INSERT INTO `sales` VALUES ('2016-07-25 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '海鲜', '鱿鱼', '21', '299.2500'); INSERT INTO `sales` VALUES ('2016-07-25 00:00:00', '西南', '云南省', '昆明', '孙林', '饮料', '苹果汁', '6', '108.0000'); INSERT INTO `sales` VALUES ('2016-07-25 00:00:00', '西南', '云南省', '昆明', '孙林', '饮料', '牛奶', '10', '190.0000'); INSERT INTO `sales` VALUES ('2016-07-25 00:00:00', '西南', '云南省', '昆明', '孙林', '日用品', '花奶酪', '15', '510.0000'); INSERT INTO `sales` VALUES ('2016-07-28 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '蟹', '70', '2170.0000'); INSERT INTO `sales` VALUES ('2016-07-28 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '鱿鱼', '55', '1045.0000'); INSERT INTO `sales` VALUES ('2016-07-28 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '薯条', '18', '360.0000'); INSERT INTO `sales` VALUES ('2016-07-28 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '花奶酪', '40', '1360.0000'); INSERT INTO `sales` VALUES ('2016-07-28 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '柠檬汁', '80', '1440.0000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '海鲜', '龙虾', '8', '43.2000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '饮料', '浓缩咖啡', '40', '310.0000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '民众奶酪', '14', '294.0000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '花生', '8', '80.0000'); INSERT INTO `sales` VALUES ('2016-07-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '运动饮料', '5', '90.0000'); INSERT INTO `sales` VALUES ('2016-07-30 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸭肉', '5', '120.0000'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华南', '福建省', '厦门', '张颖', '饮料', '绿茶', '15', '3754.8750'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华南', '福建省', '厦门', '张颖', '谷类/麦片', '白米', '14', '532.0000'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华南', '福建省', '厦门', '张颖', '饮料', '苏打水', '15', '213.7500'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华南', '福建省', '厦门', '张颖', '日用品', '义大利奶酪', '15', '306.3750'); INSERT INTO `sales` VALUES ('2016-07-31 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '苏澳奶酪', '30', '1402.5000'); INSERT INTO `sales` VALUES ('2016-08-01 00:00:00', '华东', '山东省', '济南', '张颖', '调味品', '酱油', '70', '1750.0000'); INSERT INTO `sales` VALUES ('2016-08-01 00:00:00', '华东', '山东省', '济南', '张颖', '谷类/麦片', '白米', '20', '760.0000'); INSERT INTO `sales` VALUES ('2016-08-01 00:00:00', '华东', '山东省', '济南', '张颖', '点心', '绿豆糕', '15', '187.5000'); INSERT INTO `sales` VALUES ('2016-08-04 00:00:00', '华东', '浙江省', '温州', '李芳', '点心', '花生', '42', '420.0000'); INSERT INTO `sales` VALUES ('2016-08-04 00:00:00', '华东', '浙江省', '温州', '李芳', '谷类/麦片', '糯米', '40', '840.0000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '西南', '四川省', '成都', '王伟', '饮料', '汽水', '5', '22.5000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '西南', '四川省', '成都', '王伟', '谷类/麦片', '三合一麦片', '5', '35.0000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '浙江省', '温州', '郑建杰', '点心', '糖果', '5', '46.0000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '浙江省', '温州', '郑建杰', '谷类/麦片', '燕麦', '10', '90.0000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '浙江省', '温州', '郑建杰', '饮料', '苏打水', '20', '300.0000'); INSERT INTO `sales` VALUES ('2016-08-05 00:00:00', '华东', '浙江省', '温州', '郑建杰', '日用品', '义大利奶酪', '15', '322.5000'); INSERT INTO `sales` VALUES ('2016-08-06 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '牛奶', '20', '380.0000'); INSERT INTO `sales` VALUES ('2016-08-06 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '绿豆糕', '18', '180.0000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '天津市', '天津', '刘英玫', '特制品', '沙茶', '21', '488.2500'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '糖果', '15', '124.2000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '花生', '25', '225.0000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '汽水', '3', '13.5000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '蜜桃汁', '30', '486.0000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '特制品', '烤肉酱', '10', '456.0000'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '肉/家禽', '鸭肉', '6', '742.7400'); INSERT INTO `sales` VALUES ('2016-08-07 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '调味品', '蚝油', '10', '194.5000'); INSERT INTO `sales` VALUES ('2016-08-08 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '特制品', '沙茶', '3', '69.7500'); INSERT INTO `sales` VALUES ('2016-08-08 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '谷类/麦片', '糙米', '5', '70.0000'); INSERT INTO `sales` VALUES ('2016-08-08 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '日用品', '花奶酪', '10', '340.0000'); INSERT INTO `sales` VALUES ('2016-08-11 00:00:00', '华东', '江苏省', '南京', '张颖', '肉/家禽', '盐水鸭', '12', '393.6000'); INSERT INTO `sales` VALUES ('2016-08-11 00:00:00', '华东', '江苏省', '南京', '张颖', '日用品', '花奶酪', '20', '680.0000'); INSERT INTO `sales` VALUES ('2016-08-11 00:00:00', '华东', '江苏省', '南京', '张颖', '日用品', '义大利奶酪', '20', '430.0000'); INSERT INTO `sales` VALUES ('2016-08-11 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '山渣片', '15', '739.5000'); INSERT INTO `sales` VALUES ('2016-08-11 00:00:00', '华北', '天津市', '天津', '刘英玫', '海鲜', '海哲皮', '35', '446.2500'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '饮料', '苹果汁', '25', '450.0000'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '华北', '天津市', '天津', '郑建杰', '肉/家禽', '鸭肉', '20', '2475.8000'); INSERT INTO `sales` VALUES ('2016-08-12 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '黄豆', '9', '299.2500'); INSERT INTO `sales` VALUES ('2016-08-13 00:00:00', '华北', '河北省', '石家庄', '张颖', '肉/家禽', '鸭肉', '12', '273.6000'); INSERT INTO `sales` VALUES ('2016-08-13 00:00:00', '华北', '河北省', '石家庄', '张颖', '饮料', '柠檬汁', '35', '630.0000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '浓缩咖啡', '8', '55.8000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '牛奶', '30', '541.5000'); INSERT INTO `sales` VALUES ('2016-08-14 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '浪花奶酪', '20', '47.5000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华北', '北京市', '北京', '金士鹏', '日用品', '德国奶酪', '36', '1162.8000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华北', '北京市', '北京', '金士鹏', '海鲜', '龙虾', '13', '66.3000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华北', '北京市', '北京', '金士鹏', '点心', '棉花糖', '35', '929.0925'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华北', '北京市', '北京', '金士鹏', '点心', '山渣片', '80', '3352.4000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '特制品', '海鲜粉', '35', '1050.0000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '海鲜', '墨鱼', '50', '3125.0000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '特制品', '猪肉干', '15', '795.0000'); INSERT INTO `sales` VALUES ('2016-08-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '饮料', '浓缩咖啡', '2', '15.5000'); INSERT INTO `sales` VALUES ('2016-08-18 00:00:00', '华东', '江西省', '南昌', '刘英玫', '调味品', '盐', '10', '198.0000'); INSERT INTO `sales` VALUES ('2016-08-18 00:00:00', '华东', '江西省', '南昌', '刘英玫', '调味品', '麻油', '15', '288.2250'); INSERT INTO `sales` VALUES ('2016-08-18 00:00:00', '华东', '江西省', '南昌', '刘英玫', '谷类/麦片', '糯米', '40', '840.0000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华南', '海南省', '海口', '郑建杰', '调味品', '盐', '25', '550.0000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华南', '海南省', '海口', '郑建杰', '海鲜', '海参', '6', '79.5000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华北', '天津市', '天津', '孙林', '日用品', '民众奶酪', '10', '210.0000'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华北', '天津市', '天津', '孙林', '点心', '玉米饼', '25', '385.9375'); INSERT INTO `sales` VALUES ('2016-08-19 00:00:00', '华北', '天津市', '天津', '孙林', '谷类/麦片', '白米', '60', '2166.0000'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '雪鱼', '20', '190.0000'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '海苔酱', '21', '442.0500'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '酸奶酪', '60', '2088.0000'); INSERT INTO `sales` VALUES ('2016-08-20 00:00:00', '华北', '北京市', '北京', '金士鹏', '海鲜', '墨鱼', '8', '500.0000'); INSERT INTO `sales` VALUES ('2016-08-21 00:00:00', '西南', '云南省', '昆明', '郑建杰', '日用品', '黑奶酪', '20', '540.0000'); INSERT INTO `sales` VALUES ('2016-08-21 00:00:00', '西南', '云南省', '昆明', '郑建杰', '饮料', '苏打水', '15', '168.7500'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '牛奶', '50', '950.0000'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '虾米', '60', '1104.0000'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '华东', '上海市', '上海', '金士鹏', '点心', '花生', '30', '240.0000'); INSERT INTO `sales` VALUES ('2016-08-22 00:00:00', '华东', '上海市', '上海', '金士鹏', '调味品', '海鲜酱', '20', '456.0000'); INSERT INTO `sales` VALUES ('2016-08-25 00:00:00', '华东', '上海市', '上海', '孙林', '特制品', '烤肉酱', '15', '513.0000'); INSERT INTO `sales` VALUES ('2016-08-25 00:00:00', '华东', '上海市', '上海', '孙林', '饮料', '运动饮料', '21', '283.5000'); INSERT INTO `sales` VALUES ('2016-08-25 00:00:00', '华东', '上海市', '上海', '孙林', '海鲜', '蚵', '2', '18.0000'); INSERT INTO `sales` VALUES ('2016-08-25 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '墨鱼', '4', '225.0000'); INSERT INTO `sales` VALUES ('2016-08-25 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '柳橙汁', '20', '920.0000'); INSERT INTO `sales` VALUES ('2016-08-25 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '蚵', '21', '226.8000'); INSERT INTO `sales` VALUES ('2016-08-26 00:00:00', '华南', '福建省', '厦门', '郑建杰', '海鲜', '墨鱼', '20', '1250.0000'); INSERT INTO `sales` VALUES ('2016-08-26 00:00:00', '华南', '福建省', '厦门', '郑建杰', '海鲜', '鱿鱼', '15', '285.0000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '饮料', '苹果汁', '15', '202.5000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '海鲜', '蟹', '18', '418.5000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '日用品', '义大利奶酪', '30', '483.7500'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '调味品', '辣椒粉', '35', '341.2500'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华东', '江苏省', '常州', '郑建杰', '点心', '糖果', '30', '276.0000'); INSERT INTO `sales` VALUES ('2016-08-27 00:00:00', '华东', '江苏省', '常州', '郑建杰', '饮料', '运动饮料', '20', '360.0000'); INSERT INTO `sales` VALUES ('2016-08-28 00:00:00', '华北', '河北省', '张家口', '赵军', '谷类/麦片', '糯米', '15', '315.0000'); INSERT INTO `sales` VALUES ('2016-08-28 00:00:00', '华北', '河北省', '张家口', '赵军', '饮料', '汽水', '15', '57.3750'); INSERT INTO `sales` VALUES ('2016-08-28 00:00:00', '西南', '四川省', '成都', '赵军', '特制品', '烤肉酱', '20', '912.0000'); INSERT INTO `sales` VALUES ('2016-08-28 00:00:00', '西南', '四川省', '成都', '赵军', '日用品', '酸奶酪', '15', '522.0000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '青岛', '赵军', '海鲜', '黄鱼', '30', '776.7000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '青岛', '赵军', '肉/家禽', '盐水鸭', '25', '779.0000'); INSERT INTO `sales` VALUES ('2016-08-29 00:00:00', '华东', '山东省', '青岛', '赵军', '肉/家禽', '鸡肉', '30', '223.5000'); INSERT INTO `sales` VALUES ('2016-09-01 00:00:00', '华北', '北京市', '北京', '刘英玫', '点心', '糖果', '12', '82.8000'); INSERT INTO `sales` VALUES ('2016-09-01 00:00:00', '华北', '北京市', '北京', '刘英玫', '谷类/麦片', '糯米', '20', '315.0000'); INSERT INTO `sales` VALUES ('2016-09-01 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '黄鱼', '2', '38.8350'); INSERT INTO `sales` VALUES ('2016-09-01 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '糙米', '20', '280.0000'); INSERT INTO `sales` VALUES ('2016-09-02 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '饼干', '30', '471.1500'); INSERT INTO `sales` VALUES ('2016-09-02 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '花奶酪', '20', '612.0000'); INSERT INTO `sales` VALUES ('2016-09-02 00:00:00', '华东', '江苏省', '南京', '赵军', '调味品', '盐', '12', '237.6000'); INSERT INTO `sales` VALUES ('2016-09-02 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '运动饮料', '20', '324.0000'); INSERT INTO `sales` VALUES ('2016-09-02 00:00:00', '华东', '江苏省', '南京', '赵军', '肉/家禽', '鸡肉', '6', '40.2300'); INSERT INTO `sales` VALUES ('2016-09-03 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '海鲜', '虾子', '20', '154.4000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '孙林', '特制品', '沙茶', '3', '62.7750'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '孙林', '调味品', '蚝油', '28', '490.1400'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '孙林', '点心', '蛋糕', '6', '51.3000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '王伟', '调味品', '味精', '50', '775.0000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '王伟', '海鲜', '虾子', '24', '231.6000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '王伟', '海鲜', '蚵', '45', '540.0000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '王伟', '点心', '蛋糕', '10', '95.0000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '王伟', '谷类/麦片', '白米', '45', '1710.0000'); INSERT INTO `sales` VALUES ('2016-09-04 00:00:00', '华东', '上海市', '上海', '王伟', '日用品', '花奶酪', '30', '1020.0000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '点心', '花生', '60', '600.0000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '海鲜', '虾米', '70', '1223.6000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '日用品', '花奶酪', '55', '1776.5000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '调味品', '辣椒粉', '70', '864.5000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '日用品', '温馨奶酪', '20', '237.5000'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '海鲜', '虾米', '24', '419.5200'); INSERT INTO `sales` VALUES ('2016-09-05 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '饮料', '苏打水', '40', '570.0000'); INSERT INTO `sales` VALUES ('2016-09-08 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '桂花糕', '21', '1701.0000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '饮料', '运动饮料', '3', '43.2000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '海鲜', '海参', '49', '519.4000'); INSERT INTO `sales` VALUES ('2016-09-09 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '绿豆糕', '10', '125.0000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '江西省', '南昌', '王伟', '海鲜', '虾米', '30', '524.4000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '江西省', '南昌', '王伟', '谷类/麦片', '糙米', '30', '399.0000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '江西省', '南昌', '王伟', '特制品', '猪肉干', '20', '1007.0000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '江苏省', '南京', '张颖', '海鲜', '蟹', '24', '632.4000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '江苏省', '南京', '张颖', '谷类/麦片', '白米', '12', '387.6000'); INSERT INTO `sales` VALUES ('2016-09-10 00:00:00', '华东', '江苏省', '南京', '张颖', '调味品', '海苔酱', '15', '268.3875'); INSERT INTO `sales` VALUES ('2016-09-11 00:00:00', '华北', '天津市', '天津', '张颖', '特制品', '猪肉干', '20', '1060.0000'); INSERT INTO `sales` VALUES ('2016-09-11 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '苏澳奶酪', '1', '55.0000'); INSERT INTO `sales` VALUES ('2016-09-11 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '柠檬汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华南', '海南省', '海口', '金士鹏', '肉/家禽', '鸭肉', '36', '4456.4400'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华南', '海南省', '海口', '金士鹏', '调味品', '海苔酱', '10', '210.5000'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '黑奶酪', '45', '1296.0000'); INSERT INTO `sales` VALUES ('2016-09-12 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '义大利奶酪', '14', '240.8000'); INSERT INTO `sales` VALUES ('2016-09-15 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '温馨奶酪', '8', '90.0000'); INSERT INTO `sales` VALUES ('2016-09-15 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '鸭肉', '4', '86.4000'); INSERT INTO `sales` VALUES ('2016-09-15 00:00:00', '华北', '天津市', '天津', '张颖', '谷类/麦片', '黄豆', '15', '448.8750'); INSERT INTO `sales` VALUES ('2016-09-15 00:00:00', '西南', '云南省', '昆明', '王伟', '海鲜', '鱿鱼', '30', '570.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '谷类/麦片', '燕麦', '32', '288.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '蚵', '60', '720.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '矿泉水', '25', '350.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '海哲皮', '50', '750.0000'); INSERT INTO `sales` VALUES ('2016-09-16 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '浓缩咖啡', '25', '193.7500'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '饼干', '10', '174.5000'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '山渣片', '10', '493.0000'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华北', '天津市', '天津', '张颖', '调味品', '海苔酱', '12', '252.6000'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华东', '江苏省', '南京', '张雪眉', '饮料', '绿茶', '15', '3557.2500'); INSERT INTO `sales` VALUES ('2016-09-17 00:00:00', '华东', '江苏省', '南京', '张雪眉', '日用品', '义大利奶酪', '12', '258.0000'); INSERT INTO `sales` VALUES ('2016-09-18 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '饼干', '3', '52.3500'); INSERT INTO `sales` VALUES ('2016-09-18 00:00:00', '华北', '天津市', '天津', '王伟', '谷类/麦片', '糙米', '6', '84.0000'); INSERT INTO `sales` VALUES ('2016-09-18 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '柳橙汁', '6', '276.0000'); INSERT INTO `sales` VALUES ('2016-09-18 00:00:00', '华南', '福建省', '厦门', '郑建杰', '谷类/麦片', '燕麦', '5', '45.0000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '华东', '江苏省', '常州', '赵军', '特制品', '沙茶', '30', '697.5000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '华东', '江苏省', '常州', '赵军', '肉/家禽', '盐水鸭', '10', '328.0000'); INSERT INTO `sales` VALUES ('2016-09-19 00:00:00', '华东', '江苏省', '常州', '赵军', '海鲜', '海参', '30', '397.5000'); INSERT INTO `sales` VALUES ('2016-09-22 00:00:00', '华东', '江苏省', '常州', '王伟', '海鲜', '蟹', '2', '62.0000'); INSERT INTO `sales` VALUES ('2016-09-22 00:00:00', '华东', '江苏省', '常州', '王伟', '点心', '糖果', '7', '64.4000'); INSERT INTO `sales` VALUES ('2016-09-22 00:00:00', '华东', '江苏省', '常州', '王伟', '调味品', '蚝油', '21', '408.4500'); INSERT INTO `sales` VALUES ('2016-09-22 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '棉花糖', '30', '796.3650'); INSERT INTO `sales` VALUES ('2016-09-22 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '浪花奶酪', '8', '17.0000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '河北省', '张家口', '金士鹏', '日用品', '德国奶酪', '100', '3800.0000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '河北省', '张家口', '金士鹏', '日用品', '浪花奶酪', '30', '75.0000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '河北省', '张家口', '金士鹏', '海鲜', '虾子', '120', '1158.0000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华北', '河北省', '张家口', '金士鹏', '肉/家禽', '鸡肉', '30', '223.5000'); INSERT INTO `sales` VALUES ('2016-09-23 00:00:00', '华东', '山东省', '青岛', '刘英玫', '日用品', '苏澳奶酪', '12', '660.0000'); INSERT INTO `sales` VALUES ('2016-09-24 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '饼干', '50', '654.3750'); INSERT INTO `sales` VALUES ('2016-09-24 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '温馨奶酪', '20', '187.5000'); INSERT INTO `sales` VALUES ('2016-09-24 00:00:00', '华北', '天津市', '天津', '张颖', '谷类/麦片', '糙米', '40', '420.0000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华东', '浙江省', '温州', '李芳', '点心', '糖果', '30', '248.4000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华东', '浙江省', '温州', '李芳', '点心', '花生', '12', '108.0000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华东', '浙江省', '温州', '李芳', '谷类/麦片', '黄豆', '28', '931.0000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '浪花奶酪', '30', '75.0000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '肉松', '4', '68.0000'); INSERT INTO `sales` VALUES ('2016-09-25 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '浓缩咖啡', '30', '232.5000'); INSERT INTO `sales` VALUES ('2016-09-26 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '谷类/麦片', '三合一麦片', '9', '63.0000'); INSERT INTO `sales` VALUES ('2016-09-26 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '虾米', '20', '368.0000'); INSERT INTO `sales` VALUES ('2016-09-26 00:00:00', '西南', '重庆市', '重庆', '李芳', '点心', '蛋糕', '40', '380.0000'); INSERT INTO `sales` VALUES ('2016-09-26 00:00:00', '西南', '重庆市', '重庆', '李芳', '日用品', '花奶酪', '30', '1020.0000'); INSERT INTO `sales` VALUES ('2016-09-29 00:00:00', '华东', '山东省', '济南', '郑建杰', '海鲜', '蟹', '20', '620.0000'); INSERT INTO `sales` VALUES ('2016-09-29 00:00:00', '华东', '山东省', '济南', '郑建杰', '海鲜', '虾子', '4', '38.6000'); INSERT INTO `sales` VALUES ('2016-09-29 00:00:00', '华东', '山东省', '济南', '郑建杰', '点心', '蛋糕', '15', '142.5000'); INSERT INTO `sales` VALUES ('2016-09-30 00:00:00', '华北', '北京市', '北京', '王伟', '肉/家禽', '猪肉', '30', '936.0000'); INSERT INTO `sales` VALUES ('2016-09-30 00:00:00', '华北', '北京市', '北京', '王伟', '点心', '棉花糖', '15', '468.4500'); INSERT INTO `sales` VALUES ('2016-09-30 00:00:00', '华北', '北京市', '北京', '张雪眉', '肉/家禽', '鸡', '50', '3637.5000'); INSERT INTO `sales` VALUES ('2016-09-30 00:00:00', '华北', '北京市', '北京', '张雪眉', '肉/家禽', '鸭肉', '10', '1237.9000'); INSERT INTO `sales` VALUES ('2016-09-30 00:00:00', '华北', '北京市', '北京', '张雪眉', '海鲜', '鱿鱼', '6', '85.5000'); INSERT INTO `sales` VALUES ('2016-10-01 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '海鲜', '蟹', '18', '502.2000'); INSERT INTO `sales` VALUES ('2016-10-01 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '特制品', '烤肉酱', '60', '2462.4000'); INSERT INTO `sales` VALUES ('2016-10-01 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '饮料', '啤酒', '14', '196.0000'); INSERT INTO `sales` VALUES ('2016-10-01 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '苹果汁', '35', '472.5000'); INSERT INTO `sales` VALUES ('2016-10-02 00:00:00', '华北', '河北省', '石家庄', '张颖', '谷类/麦片', '白米', '20', '570.0000'); INSERT INTO `sales` VALUES ('2016-10-02 00:00:00', '华北', '河北省', '石家庄', '张颖', '调味品', '辣椒粉', '30', '292.5000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '苹果汁', '30', '540.0000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸭肉', '40', '4951.6000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '柳橙汁', '40', '1840.0000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华北', '天津市', '天津', '王伟', '调味品', '蚝油', '24', '466.8000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '山渣片', '48', '2366.4000'); INSERT INTO `sales` VALUES ('2016-10-03 00:00:00', '华东', '江苏省', '南京', '张雪眉', '点心', '玉米饼', '20', '878.0000'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '鸡', '6', '582.0000'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '鸡肉', '60', '379.9500'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '黑奶酪', '30', '918.0000'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '海哲皮', '15', '191.2500'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '刘英玫', '特制品', '海鲜粉', '90', '2700.0000'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '苏澳奶酪', '25', '1375.0000'); INSERT INTO `sales` VALUES ('2016-10-06 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '苏打水', '50', '750.0000'); INSERT INTO `sales` VALUES ('2016-10-07 00:00:00', '华北', '天津市', '天津', '金士鹏', '调味品', '胡椒粉', '10', '400.0000'); INSERT INTO `sales` VALUES ('2016-10-07 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '德国奶酪', '4', '152.0000'); INSERT INTO `sales` VALUES ('2016-10-07 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '汽水', '20', '90.0000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '华南', '海南省', '海口', '刘英玫', '肉/家禽', '猪肉', '20', '780.0000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '华南', '海南省', '海口', '刘英玫', '海鲜', '蚵', '18', '216.0000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '华北', '北京市', '北京', '李芳', '点心', '糖果', '7', '48.3000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '华北', '北京市', '北京', '李芳', '饮料', '蜜桃汁', '9', '121.5000'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '华北', '北京市', '北京', '李芳', '海鲜', '海参', '30', '298.1250'); INSERT INTO `sales` VALUES ('2016-10-08 00:00:00', '华北', '北京市', '北京', '李芳', '饮料', '苏打水', '30', '337.5000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '西南', '云南省', '昆明', '郑建杰', '日用品', '民众奶酪', '15', '315.0000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '西南', '云南省', '昆明', '郑建杰', '肉/家禽', '猪肉', '8', '296.4000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '西南', '云南省', '昆明', '郑建杰', '肉/家禽', '鸭肉', '12', '1411.2060'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '西南', '云南省', '昆明', '郑建杰', '调味品', '海苔酱', '65', '1299.8375'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '西南', '云南省', '昆明', '郑建杰', '饮料', '苏打水', '8', '114.0000'); INSERT INTO `sales` VALUES ('2016-10-09 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '蛋糕', '12', '114.0000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '东北', '辽宁省', '大连', '李芳', '饮料', '苹果汁', '5', '72.0000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '东北', '辽宁省', '大连', '李芳', '饮料', '啤酒', '12', '134.4000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '东北', '辽宁省', '大连', '李芳', '点心', '绿豆糕', '40', '400.0000'); INSERT INTO `sales` VALUES ('2016-10-10 00:00:00', '东北', '辽宁省', '大连', '李芳', '日用品', '义大利奶酪', '60', '1032.0000'); INSERT INTO `sales` VALUES ('2016-10-13 00:00:00', '华东', '上海市', '上海', '孙林', '日用品', '苏澳奶酪', '42', '1963.5000'); INSERT INTO `sales` VALUES ('2016-10-13 00:00:00', '华东', '上海市', '上海', '孙林', '日用品', '义大利奶酪', '20', '365.5000'); INSERT INTO `sales` VALUES ('2016-10-13 00:00:00', '华东', '上海市', '上海', '孙林', '饮料', '柠檬汁', '35', '535.5000'); INSERT INTO `sales` VALUES ('2016-10-13 00:00:00', '华北', '天津市', '天津', '张颖', '调味品', '蕃茄酱', '6', '60.0000'); INSERT INTO `sales` VALUES ('2016-10-13 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '柠檬汁', '15', '270.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华南', '福建省', '厦门', '孙林', '饮料', '牛奶', '5', '95.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华南', '福建省', '厦门', '孙林', '日用品', '苏澳奶酪', '35', '1925.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华南', '福建省', '厦门', '孙林', '海鲜', '海哲皮', '35', '525.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华北', '天津市', '天津', '孙林', '调味品', '盐', '6', '132.0000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华北', '天津市', '天津', '孙林', '饮料', '汽水', '35', '157.5000'); INSERT INTO `sales` VALUES ('2016-10-14 00:00:00', '华北', '天津市', '天津', '孙林', '点心', '玉米片', '24', '306.0000'); INSERT INTO `sales` VALUES ('2016-10-15 00:00:00', '华东', '江苏省', '常州', '张雪眉', '日用品', '温馨奶酪', '20', '250.0000'); INSERT INTO `sales` VALUES ('2016-10-15 00:00:00', '华东', '江苏省', '常州', '张雪眉', '日用品', '白奶酪', '4', '128.0000'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '点心', '饼干', '20', '349.0000'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '饮料', '柳橙汁', '24', '1104.0000'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '日用品', '苏澳奶酪', '8', '440.0000'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '西南', '四川省', '成都', '郑建杰', '肉/家禽', '鸭肉', '21', '504.0000'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '西南', '四川省', '成都', '郑建杰', '谷类/麦片', '小米', '40', '780.0000'); INSERT INTO `sales` VALUES ('2016-10-16 00:00:00', '西南', '四川省', '成都', '郑建杰', '饮料', '苏打水', '28', '357.0000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '华北', '河北省', '张家口', '孙林', '调味品', '麻油', '4', '85.4000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '华北', '河北省', '张家口', '孙林', '海鲜', '鱿鱼', '5', '95.0000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '华东', '上海市', '上海', '张颖', '调味品', '胡椒粉', '40', '1600.0000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '华东', '上海市', '上海', '张颖', '特制品', '猪肉干', '28', '1484.0000'); INSERT INTO `sales` VALUES ('2016-10-17 00:00:00', '华东', '上海市', '上海', '张颖', '日用品', '花奶酪', '10', '340.0000'); INSERT INTO `sales` VALUES ('2016-10-20 00:00:00', '华北', '北京市', '北京', '张颖', '点心', '糖果', '5', '46.0000'); INSERT INTO `sales` VALUES ('2016-10-20 00:00:00', '华北', '北京市', '北京', '张颖', '点心', '蛋糕', '5', '47.5000'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华东', '浙江省', '温州', '赵军', '点心', '糖果', '12', '110.4000'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华东', '浙江省', '温州', '赵军', '海鲜', '虾子', '42', '405.3000'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华东', '浙江省', '温州', '赵军', '肉/家禽', '盐水鸭', '120', '3936.0000'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '肉/家禽', '盐水鸭', '3', '93.4800'); INSERT INTO `sales` VALUES ('2016-10-21 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '谷类/麦片', '白米', '30', '1140.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '蟹', '18', '558.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '棉花糖', '30', '936.9000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '雪鱼', '110', '1045.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '蚵', '24', '288.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华东', '浙江省', '温州', '赵军', '饮料', '牛奶', '30', '427.5000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华东', '浙江省', '温州', '赵军', '肉/家禽', '猪肉', '27', '789.7500'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华东', '浙江省', '温州', '赵军', '点心', '蛋糕', '50', '356.2500'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华东', '浙江省', '温州', '赵军', '谷类/麦片', '白米', '18', '513.0000'); INSERT INTO `sales` VALUES ('2016-10-22 00:00:00', '华东', '浙江省', '温州', '赵军', '海鲜', '海参', '12', '119.2500'); INSERT INTO `sales` VALUES ('2016-10-23 00:00:00', '华东', '浙江省', '温州', '李芳', '海鲜', '蟹', '21', '651.0000'); INSERT INTO `sales` VALUES ('2016-10-23 00:00:00', '华东', '浙江省', '温州', '李芳', '日用品', '义大利奶酪', '30', '645.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华东', '浙江省', '温州', '郑建杰', '点心', '花生', '5', '50.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华东', '浙江省', '温州', '郑建杰', '特制品', '猪肉干', '7', '371.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华东', '浙江省', '温州', '郑建杰', '调味品', '海鲜酱', '10', '285.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '花生', '32', '304.0000'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '鸡肉', '15', '111.7500'); INSERT INTO `sales` VALUES ('2016-10-24 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '黑奶酪', '25', '855.0000'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '西南', '重庆市', '重庆', '张颖', '日用品', '德国奶酪', '36', '1368.0000'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '西南', '重庆市', '重庆', '张颖', '点心', '饼干', '20', '349.0000'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '西南', '重庆市', '重庆', '张颖', '海鲜', '鱿鱼', '40', '760.0000'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '西南', '重庆市', '重庆', '张颖', '点心', '山渣片', '20', '986.0000'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '华北', '天津市', '天津', '刘英玫', '海鲜', '墨鱼', '12', '562.5000'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '华北', '天津市', '天津', '刘英玫', '海鲜', '黄鱼', '3', '58.2525'); INSERT INTO `sales` VALUES ('2016-10-27 00:00:00', '华北', '天津市', '天津', '刘英玫', '肉/家禽', '鸡肉', '40', '223.5000'); INSERT INTO `sales` VALUES ('2016-10-28 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '蜜桃汁', '21', '378.0000'); INSERT INTO `sales` VALUES ('2016-10-28 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '义大利奶酪', '8', '172.0000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '华东', '江西省', '南昌', '赵军', '调味品', '蚝油', '50', '923.8750'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '牛奶', '3', '57.0000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '温馨奶酪', '50', '625.0000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '绿豆糕', '45', '562.5000'); INSERT INTO `sales` VALUES ('2016-10-29 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '浓缩咖啡', '42', '325.5000'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '东北', '辽宁省', '大连', '李芳', '点心', '棉花糖', '15', '468.4500'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '华北', '北京市', '北京', '刘英玫', '海鲜', '蟹', '16', '496.0000'); INSERT INTO `sales` VALUES ('2016-10-30 00:00:00', '华北', '北京市', '北京', '刘英玫', '调味品', '海鲜酱', '5', '142.5000'); INSERT INTO `sales` VALUES ('2016-10-31 00:00:00', '华北', '北京市', '北京', '郑建杰', '海鲜', '虾子', '12', '115.8000'); INSERT INTO `sales` VALUES ('2016-10-31 00:00:00', '华北', '北京市', '北京', '郑建杰', '谷类/麦片', '三合一麦片', '4', '28.0000'); INSERT INTO `sales` VALUES ('2016-10-31 00:00:00', '华北', '北京市', '北京', '郑建杰', '肉/家禽', '鸭肉', '6', '144.0000'); INSERT INTO `sales` VALUES ('2016-11-03 00:00:00', '华东', '江苏省', '南京', '郑建杰', '调味品', '盐', '25', '550.0000'); INSERT INTO `sales` VALUES ('2016-11-03 00:00:00', '华东', '江苏省', '南京', '郑建杰', '日用品', '民众奶酪', '5', '105.0000'); INSERT INTO `sales` VALUES ('2016-11-03 00:00:00', '西南', '云南省', '昆明', '王伟', '肉/家禽', '猪肉', '20', '741.0000'); INSERT INTO `sales` VALUES ('2016-11-03 00:00:00', '西南', '云南省', '昆明', '王伟', '谷类/麦片', '白米', '10', '361.0000'); INSERT INTO `sales` VALUES ('2016-11-03 00:00:00', '西南', '云南省', '昆明', '王伟', '日用品', '苏澳奶酪', '10', '522.5000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '黄鱼', '15', '388.3500'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '虾米', '6', '110.4000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华北', '天津市', '天津', '郑建杰', '肉/家禽', '鸭肉', '12', '288.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '花奶酪', '15', '510.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华东', '上海市', '上海', '刘英玫', '饮料', '苹果汁', '50', '900.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华东', '上海市', '上海', '刘英玫', '点心', '花生', '30', '300.0000'); INSERT INTO `sales` VALUES ('2016-11-04 00:00:00', '华东', '上海市', '上海', '刘英玫', '点心', '玉米饼', '40', '650.0000'); INSERT INTO `sales` VALUES ('2016-11-05 00:00:00', '东北', '辽宁省', '大连', '赵军', '点心', '饼干', '15', '248.6625'); INSERT INTO `sales` VALUES ('2016-11-05 00:00:00', '东北', '辽宁省', '大连', '赵军', '日用品', '温馨奶酪', '3', '35.6250'); INSERT INTO `sales` VALUES ('2016-11-05 00:00:00', '东北', '辽宁省', '大连', '赵军', '调味品', '海苔酱', '10', '199.9750'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '花生', '40', '380.0000'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华北', '天津市', '天津', '金士鹏', '特制品', '猪肉干', '30', '1510.5000'); INSERT INTO `sales` VALUES ('2016-11-06 00:00:00', '华南', '福建省', '厦门', '李芳', '饮料', '柠檬汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '沙茶', '16', '372.0000'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '烤肉酱', '20', '912.0000'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华东', '江苏省', '南京', '张颖', '谷类/麦片', '三合一麦片', '25', '175.0000'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华东', '江苏省', '常州', '王伟', '调味品', '酱油', '30', '750.0000'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华东', '江苏省', '常州', '王伟', '海鲜', '黄鱼', '15', '388.3500'); INSERT INTO `sales` VALUES ('2016-11-07 00:00:00', '华东', '江苏省', '常州', '王伟', '饮料', '柠檬汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2016-11-10 00:00:00', '华东', '江苏省', '常州', '孙林', '调味品', '海鲜酱', '20', '513.0000'); INSERT INTO `sales` VALUES ('2016-11-10 00:00:00', '华东', '江苏省', '常州', '孙林', '调味品', '辣椒粉', '2', '23.4000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '西南', '四川省', '成都', '张雪眉', '调味品', '海苔酱', '40', '842.0000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '西南', '四川省', '成都', '张雪眉', '饮料', '浓缩咖啡', '20', '155.0000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '华东', '山东省', '青岛', '王伟', '海鲜', '龙虾', '4', '24.0000'); INSERT INTO `sales` VALUES ('2016-11-11 00:00:00', '华东', '山东省', '青岛', '王伟', '海鲜', '虾子', '12', '115.8000'); INSERT INTO `sales` VALUES ('2016-11-12 00:00:00', '华北', '河北省', '张家口', '王伟', '点心', '饼干', '3', '52.3500'); INSERT INTO `sales` VALUES ('2016-11-12 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '鱿鱼', '6', '114.0000'); INSERT INTO `sales` VALUES ('2016-11-12 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '三合一麦片', '18', '126.0000'); INSERT INTO `sales` VALUES ('2016-11-13 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '特制品', '烤肉酱', '5', '182.4000'); INSERT INTO `sales` VALUES ('2016-11-13 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '饮料', '蜜桃汁', '35', '504.0000'); INSERT INTO `sales` VALUES ('2016-11-13 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '海鲜', '雪鱼', '40', '304.0000'); INSERT INTO `sales` VALUES ('2016-11-13 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '谷类/麦片', '白米', '14', '425.6000'); INSERT INTO `sales` VALUES ('2016-11-14 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '饮料', '牛奶', '15', '228.0000'); INSERT INTO `sales` VALUES ('2016-11-14 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '蕃茄酱', '20', '200.0000'); INSERT INTO `sales` VALUES ('2016-11-14 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '花奶酪', '50', '1700.0000'); INSERT INTO `sales` VALUES ('2016-11-14 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '酸奶酪', '35', '1218.0000'); INSERT INTO `sales` VALUES ('2016-11-17 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '蚵', '28', '319.2000'); INSERT INTO `sales` VALUES ('2016-11-17 00:00:00', '华东', '浙江省', '温州', '孙林', '海鲜', '虾米', '50', '736.0000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华北', '天津市', '天津', '张雪眉', '海鲜', '墨鱼', '24', '1500.0000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华北', '天津市', '天津', '张雪眉', '调味品', '蚝油', '16', '311.2000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华北', '天津市', '天津', '张雪眉', '日用品', '苏澳奶酪', '45', '2475.0000'); INSERT INTO `sales` VALUES ('2016-11-18 00:00:00', '华北', '天津市', '天津', '张雪眉', '日用品', '酸奶酪', '7', '243.6000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '龙虾', '6', '36.0000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '张颖', '谷类/麦片', '糙米', '28', '392.0000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '山渣片', '9', '443.7000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '黑奶酪', '40', '1440.0000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '孙林', '日用品', '温馨奶酪', '8', '100.0000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '孙林', '海鲜', '虾子', '35', '337.7500'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '孙林', '调味品', '甜辣酱', '9', '395.1000'); INSERT INTO `sales` VALUES ('2016-11-19 00:00:00', '华北', '天津市', '天津', '孙林', '日用品', '黑奶酪', '30', '1080.0000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '西南', '重庆市', '重庆', '李芳', '谷类/麦片', '燕麦', '44', '396.0000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '虾米', '40', '736.0000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '西南', '重庆市', '重庆', '李芳', '谷类/麦片', '白米', '28', '1064.0000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '华北', '天津市', '天津', '郑建杰', '谷类/麦片', '白米', '15', '570.0000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '苏澳奶酪', '6', '330.0000'); INSERT INTO `sales` VALUES ('2016-11-20 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '柠檬汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2016-11-21 00:00:00', '华东', '江西省', '南昌', '张雪眉', '特制品', '沙茶', '5', '98.8125'); INSERT INTO `sales` VALUES ('2016-11-21 00:00:00', '华东', '江西省', '南昌', '张雪眉', '海鲜', '雪鱼', '40', '323.0000'); INSERT INTO `sales` VALUES ('2016-11-21 00:00:00', '华东', '江西省', '南昌', '张雪眉', '日用品', '苏澳奶酪', '25', '1168.7500'); INSERT INTO `sales` VALUES ('2016-11-24 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '棉花糖', '12', '337.2840'); INSERT INTO `sales` VALUES ('2016-11-24 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '黄鱼', '30', '776.7000'); INSERT INTO `sales` VALUES ('2016-11-24 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '玉米饼', '20', '292.5000'); INSERT INTO `sales` VALUES ('2016-11-24 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '海哲皮', '15', '225.0000'); INSERT INTO `sales` VALUES ('2016-11-24 00:00:00', '华东', '江苏省', '南京', '王伟', '饮料', '苹果汁', '8', '144.0000'); INSERT INTO `sales` VALUES ('2016-11-24 00:00:00', '华东', '江苏省', '南京', '王伟', '日用品', '黑奶酪', '3', '108.0000'); INSERT INTO `sales` VALUES ('2016-11-25 00:00:00', '华东', '上海市', '上海', '李芳', '海鲜', '雪鱼', '4', '38.0000'); INSERT INTO `sales` VALUES ('2016-11-25 00:00:00', '华东', '上海市', '上海', '李芳', '特制品', '鸡精', '5', '50.0000'); INSERT INTO `sales` VALUES ('2016-11-25 00:00:00', '华北', '北京市', '北京', '孙林', '海鲜', '虾米', '3', '55.2000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '蛋糕', '30', '213.7500'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '北京市', '北京', '郑建杰', '谷类/麦片', '白米', '30', '855.0000'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '北京市', '北京', '郑建杰', '谷类/麦片', '小米', '14', '204.7500'); INSERT INTO `sales` VALUES ('2016-11-26 00:00:00', '华北', '北京市', '北京', '郑建杰', '日用品', '黑奶酪', '25', '675.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '刘英玫', '海鲜', '墨鱼', '21', '1050.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '刘英玫', '海鲜', '鱿鱼', '20', '304.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '刘英玫', '点心', '绿豆糕', '6', '60.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '刘英玫', '日用品', '黑奶酪', '20', '576.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '孙林', '饮料', '啤酒', '30', '420.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '苏澳奶酪', '7', '385.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '孙林', '点心', '山渣片', '30', '1479.0000'); INSERT INTO `sales` VALUES ('2016-11-27 00:00:00', '华北', '北京市', '北京', '孙林', '谷类/麦片', '黄豆', '24', '798.0000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '北京市', '北京', '李芳', '点心', '棉花糖', '20', '624.6000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '北京市', '北京', '李芳', '谷类/麦片', '三合一麦片', '60', '420.0000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '北京市', '北京', '李芳', '饮料', '苏打水', '40', '600.0000'); INSERT INTO `sales` VALUES ('2016-11-28 00:00:00', '华北', '北京市', '北京', '李芳', '日用品', '白奶酪', '10', '320.0000'); INSERT INTO `sales` VALUES ('2016-12-01 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '点心', '巧克力', '12', '126.0000'); INSERT INTO `sales` VALUES ('2016-12-01 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '点心', '牛肉干', '40', '1756.0000'); INSERT INTO `sales` VALUES ('2016-12-01 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '柳橙汁', '30', '1035.0000'); INSERT INTO `sales` VALUES ('2016-12-02 00:00:00', '华南', '福建省', '厦门', '赵军', '点心', '巧克力', '35', '367.5000'); INSERT INTO `sales` VALUES ('2016-12-02 00:00:00', '华南', '福建省', '厦门', '赵军', '饮料', '浓缩咖啡', '18', '139.5000'); INSERT INTO `sales` VALUES ('2016-12-02 00:00:00', '华东', '上海市', '上海', '李芳', '饮料', '运动饮料', '16', '288.0000'); INSERT INTO `sales` VALUES ('2016-12-02 00:00:00', '华东', '上海市', '上海', '李芳', '点心', '蛋糕', '30', '285.0000'); INSERT INTO `sales` VALUES ('2016-12-02 00:00:00', '华东', '上海市', '上海', '李芳', '特制品', '猪肉干', '28', '1484.0000'); INSERT INTO `sales` VALUES ('2016-12-02 00:00:00', '华东', '上海市', '上海', '李芳', '谷类/麦片', '白米', '60', '2280.0000'); INSERT INTO `sales` VALUES ('2016-12-03 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '花生', '40', '400.0000'); INSERT INTO `sales` VALUES ('2016-12-03 00:00:00', '华东', '江苏省', '南京', '李芳', '谷类/麦片', '糯米', '6', '126.0000'); INSERT INTO `sales` VALUES ('2016-12-03 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '汽水', '20', '90.0000'); INSERT INTO `sales` VALUES ('2016-12-03 00:00:00', '华北', '天津市', '天津', '孙林', '调味品', '蕃茄酱', '20', '180.0000'); INSERT INTO `sales` VALUES ('2016-12-03 00:00:00', '华北', '天津市', '天津', '孙林', '饮料', '运动饮料', '130', '2106.0000'); INSERT INTO `sales` VALUES ('2016-12-04 00:00:00', '华北', '北京市', '北京', '李芳', '调味品', '海苔酱', '80', '1515.6000'); INSERT INTO `sales` VALUES ('2016-12-05 00:00:00', '华东', '山东省', '青岛', '郑建杰', '饮料', '牛奶', '40', '760.0000'); INSERT INTO `sales` VALUES ('2016-12-05 00:00:00', '华东', '山东省', '青岛', '郑建杰', '特制品', '海鲜粉', '35', '1050.0000'); INSERT INTO `sales` VALUES ('2016-12-05 00:00:00', '华东', '山东省', '青岛', '郑建杰', '点心', '绿豆糕', '40', '500.0000'); INSERT INTO `sales` VALUES ('2016-12-05 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '谷类/麦片', '糙米', '2', '28.0000'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '河北省', '张家口', '李芳', '谷类/麦片', '糯米', '4', '84.0000'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '河北省', '张家口', '李芳', '日用品', '温馨奶酪', '50', '625.0000'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '河北省', '张家口', '李芳', '日用品', '花奶酪', '15', '510.0000'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '河北省', '张家口', '李芳', '日用品', '义大利奶酪', '12', '258.0000'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '北京市', '北京', '李芳', '海鲜', '虾子', '30', '275.0250'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '北京市', '北京', '李芳', '谷类/麦片', '三合一麦片', '15', '99.7500'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '北京市', '北京', '李芳', '调味品', '海鲜酱', '20', '570.0000'); INSERT INTO `sales` VALUES ('2016-12-08 00:00:00', '华北', '北京市', '北京', '李芳', '点心', '山渣片', '15', '739.5000'); INSERT INTO `sales` VALUES ('2016-12-09 00:00:00', '华北', '河北省', '秦皇岛', '刘英玫', '日用品', '民众奶酪', '15', '236.2500'); INSERT INTO `sales` VALUES ('2016-12-10 00:00:00', '华北', '天津市', '天津', '张雪眉', '日用品', '义大利奶酪', '16', '344.0000'); INSERT INTO `sales` VALUES ('2016-12-10 00:00:00', '华北', '天津市', '天津', '李芳', '肉/家禽', '鸭肉', '18', '2228.2200'); INSERT INTO `sales` VALUES ('2016-12-10 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '苏澳奶酪', '25', '1375.0000'); INSERT INTO `sales` VALUES ('2016-12-11 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '猪肉', '33', '1287.0000'); INSERT INTO `sales` VALUES ('2016-12-11 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '温馨奶酪', '70', '700.0000'); INSERT INTO `sales` VALUES ('2016-12-11 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '浓缩咖啡', '7', '43.4000'); INSERT INTO `sales` VALUES ('2016-12-11 00:00:00', '华东', '浙江省', '温州', '郑建杰', '日用品', '温馨奶酪', '2', '18.7500'); INSERT INTO `sales` VALUES ('2016-12-11 00:00:00', '华东', '浙江省', '温州', '郑建杰', '调味品', '肉松', '50', '850.0000'); INSERT INTO `sales` VALUES ('2016-12-12 00:00:00', '华北', '天津市', '天津', '金士鹏', '海鲜', '蟹', '6', '186.0000'); INSERT INTO `sales` VALUES ('2016-12-12 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '矿泉水', '3', '42.0000'); INSERT INTO `sales` VALUES ('2016-12-15 00:00:00', '华北', '北京市', '北京', '张颖', '日用品', '温馨奶酪', '16', '190.0000'); INSERT INTO `sales` VALUES ('2016-12-15 00:00:00', '华北', '北京市', '北京', '张颖', '谷类/麦片', '糙米', '12', '159.6000'); INSERT INTO `sales` VALUES ('2016-12-15 00:00:00', '华北', '北京市', '北京', '张颖', '海鲜', '雪鱼', '27', '243.6750'); INSERT INTO `sales` VALUES ('2016-12-15 00:00:00', '华北', '北京市', '北京', '张颖', '特制品', '猪肉干', '120', '6042.0000'); INSERT INTO `sales` VALUES ('2016-12-15 00:00:00', '华北', '天津市', '天津', '金士鹏', '谷类/麦片', '糙米', '20', '224.0000'); INSERT INTO `sales` VALUES ('2016-12-16 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '虾子', '10', '96.5000'); INSERT INTO `sales` VALUES ('2016-12-16 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '饼干', '20', '349.0000'); INSERT INTO `sales` VALUES ('2016-12-16 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '山渣片', '20', '986.0000'); INSERT INTO `sales` VALUES ('2016-12-16 00:00:00', '华东', '上海市', '上海', '王伟', '饮料', '苏打水', '35', '525.0000'); INSERT INTO `sales` VALUES ('2016-12-16 00:00:00', '华东', '上海市', '上海', '王伟', '调味品', '辣椒粉', '15', '195.0000'); INSERT INTO `sales` VALUES ('2016-12-17 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸡肉', '3', '17.8800'); INSERT INTO `sales` VALUES ('2016-12-17 00:00:00', '华北', '天津市', '天津', '王伟', '谷类/麦片', '白米', '20', '608.0000'); INSERT INTO `sales` VALUES ('2016-12-17 00:00:00', '华北', '天津市', '天津', '王伟', '特制品', '鸡精', '35', '350.0000'); INSERT INTO `sales` VALUES ('2016-12-17 00:00:00', '华东', '上海市', '上海', '张雪眉', '日用品', '温馨奶酪', '1', '12.5000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '日用品', '温馨奶酪', '10', '125.0000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '绿茶', '5', '1317.5000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '鱿鱼', '30', '570.0000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '运动饮料', '2', '30.6000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '日用品', '酸奶酪', '30', '887.4000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '蟹', '10', '310.0000'); INSERT INTO `sales` VALUES ('2016-12-18 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '浓缩咖啡', '10', '77.5000'); INSERT INTO `sales` VALUES ('2016-12-19 00:00:00', '华南', '海南省', '海口', '刘英玫', '调味品', '胡椒粉', '30', '960.0000'); INSERT INTO `sales` VALUES ('2016-12-19 00:00:00', '华南', '海南省', '海口', '刘英玫', '海鲜', '黄鱼', '15', '310.6800'); INSERT INTO `sales` VALUES ('2016-12-19 00:00:00', '华南', '海南省', '海口', '刘英玫', '饮料', '浓缩咖啡', '42', '260.4000'); INSERT INTO `sales` VALUES ('2016-12-19 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '牛奶', '15', '270.7500'); INSERT INTO `sales` VALUES ('2016-12-19 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸭肉', '20', '2352.0100'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '糖果', '50', '437.0000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '浓缩咖啡', '40', '294.5000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华东', '江苏省', '南京', '张颖', '海鲜', '墨鱼', '30', '1875.0000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '蜜桃汁', '15', '270.0000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华东', '江苏省', '南京', '张颖', '调味品', '甜辣酱', '30', '1317.0000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华东', '江苏省', '南京', '张颖', '点心', '绿豆糕', '18', '225.0000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华南', '福建省', '厦门', '孙林', '特制品', '海鲜粉', '3', '76.5000'); INSERT INTO `sales` VALUES ('2016-12-22 00:00:00', '华南', '福建省', '厦门', '孙林', '谷类/麦片', '白米', '20', '646.0000'); INSERT INTO `sales` VALUES ('2016-12-23 00:00:00', '华北', '天津市', '天津', '孙林', '肉/家禽', '鸭肉', '14', '1646.4070'); INSERT INTO `sales` VALUES ('2016-12-23 00:00:00', '华北', '天津市', '天津', '孙林', '海鲜', '虾子', '20', '183.3500'); INSERT INTO `sales` VALUES ('2016-12-23 00:00:00', '华东', '江苏省', '常州', '张颖', '饮料', '牛奶', '10', '190.0000'); INSERT INTO `sales` VALUES ('2016-12-23 00:00:00', '华东', '江苏省', '常州', '张颖', '肉/家禽', '鸡肉', '3', '22.3500'); INSERT INTO `sales` VALUES ('2016-12-23 00:00:00', '华东', '江苏省', '常州', '张颖', '点心', '绿豆糕', '15', '187.5000'); INSERT INTO `sales` VALUES ('2016-12-24 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '虾子', '14', '135.1000'); INSERT INTO `sales` VALUES ('2016-12-24 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '三合一麦片', '8', '56.0000'); INSERT INTO `sales` VALUES ('2016-12-24 00:00:00', '西南', '四川省', '成都', '孙林', '特制品', '沙茶', '15', '279.0000'); INSERT INTO `sales` VALUES ('2016-12-24 00:00:00', '西南', '四川省', '成都', '孙林', '肉/家禽', '鸡肉', '6', '35.7600'); INSERT INTO `sales` VALUES ('2016-12-24 00:00:00', '华东', '江苏省', '常州', '刘英玫', '点心', '饼干', '65', '1134.2500'); INSERT INTO `sales` VALUES ('2016-12-24 00:00:00', '华东', '江苏省', '常州', '刘英玫', '肉/家禽', '猪肉', '35', '1023.7500'); INSERT INTO `sales` VALUES ('2016-12-25 00:00:00', '华北', '河北省', '石家庄', '李芳', '点心', '棉花糖', '21', '524.6640'); INSERT INTO `sales` VALUES ('2016-12-25 00:00:00', '华北', '河北省', '石家庄', '李芳', '调味品', '蚝油', '10', '194.5000'); INSERT INTO `sales` VALUES ('2016-12-25 00:00:00', '华北', '河北省', '石家庄', '李芳', '谷类/麦片', '黄豆', '35', '931.0000'); INSERT INTO `sales` VALUES ('2016-12-25 00:00:00', '华北', '河北省', '石家庄', '李芳', '日用品', '黑奶酪', '24', '691.2000'); INSERT INTO `sales` VALUES ('2016-12-25 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '民众奶酪', '20', '420.0000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华北', '河北省', '张家口', '王伟', '点心', '山渣片', '2', '98.6000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华北', '河北省', '张家口', '王伟', '日用品', '酸奶酪', '10', '348.0000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华北', '河北省', '秦皇岛', '张雪眉', '海鲜', '龙虾', '20', '102.0000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华北', '河北省', '秦皇岛', '张雪眉', '饮料', '汽水', '20', '76.5000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华北', '河北省', '秦皇岛', '张雪眉', '日用品', '苏澳奶酪', '25', '1375.0000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华东', '江苏省', '南京', '张颖', '日用品', '民众奶酪', '50', '945.0000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '猪肉干', '10', '477.0000'); INSERT INTO `sales` VALUES ('2016-12-26 00:00:00', '华东', '江苏省', '南京', '张颖', '肉/家禽', '鸡肉', '7', '46.9350'); INSERT INTO `sales` VALUES ('2016-12-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '肉/家禽', '猪肉', '40', '1170.0000'); INSERT INTO `sales` VALUES ('2016-12-29 00:00:00', '华东', '上海市', '上海', '郑建杰', '肉/家禽', '鸭肉', '20', '1856.8500'); INSERT INTO `sales` VALUES ('2016-12-29 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '海鲜', '黄鱼', '25', '485.4375'); INSERT INTO `sales` VALUES ('2016-12-29 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '特制品', '猪肉干', '30', '1192.5000'); INSERT INTO `sales` VALUES ('2016-12-29 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '肉/家禽', '鸭肉', '60', '1080.0000'); INSERT INTO `sales` VALUES ('2016-12-29 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '点心', '山渣片', '5', '184.8750'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '糖果', '24', '209.7600'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '点心', '巧克力', '15', '199.5000'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华北', '北京市', '北京', '郑建杰', '日用品', '苏澳奶酪', '15', '783.7500'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华东', '江苏省', '南京', '孙林', '海鲜', '蟹', '36', '1116.0000'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华东', '江苏省', '南京', '孙林', '特制品', '烤肉酱', '24', '1094.4000'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华东', '江苏省', '南京', '孙林', '点心', '薯条', '4', '68.0000'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '啤酒', '10', '140.0000'); INSERT INTO `sales` VALUES ('2016-12-30 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '绿茶', '10', '2635.0000'); INSERT INTO `sales` VALUES ('2016-12-31 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '牛奶', '20', '285.0000'); INSERT INTO `sales` VALUES ('2016-12-31 00:00:00', '华东', '江苏省', '南京', '李芳', '调味品', '海苔酱', '2', '42.1000'); INSERT INTO `sales` VALUES ('2016-12-31 00:00:00', '华东', '江苏省', '南京', '李芳', '特制品', '鸡精', '15', '112.5000'); INSERT INTO `sales` VALUES ('2016-12-31 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '虾米', '1', '18.4000'); INSERT INTO `sales` VALUES ('2017-01-01 00:00:00', '华东', '江西省', '南昌', '王伟', '谷类/麦片', '白米', '20', '646.0000'); INSERT INTO `sales` VALUES ('2017-01-01 00:00:00', '华东', '江西省', '南昌', '王伟', '饮料', '柠檬汁', '50', '765.0000'); INSERT INTO `sales` VALUES ('2017-01-01 00:00:00', '西南', '重庆市', '重庆', '金士鹏', '谷类/麦片', '三合一麦片', '20', '140.0000'); INSERT INTO `sales` VALUES ('2017-01-01 00:00:00', '东北', '辽宁省', '大连', '王伟', '海鲜', '龙虾', '7', '42.0000'); INSERT INTO `sales` VALUES ('2017-01-01 00:00:00', '东北', '辽宁省', '大连', '王伟', '点心', '巧克力', '5', '70.0000'); INSERT INTO `sales` VALUES ('2017-01-01 00:00:00', '东北', '辽宁省', '大连', '王伟', '饮料', '苏打水', '5', '75.0000'); INSERT INTO `sales` VALUES ('2017-01-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '糖果', '15', '138.0000'); INSERT INTO `sales` VALUES ('2017-01-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '燕麦', '18', '162.0000'); INSERT INTO `sales` VALUES ('2017-01-02 00:00:00', '华北', '天津市', '天津', '刘英玫', '海鲜', '虾米', '30', '552.0000'); INSERT INTO `sales` VALUES ('2017-01-02 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '温馨奶酪', '16', '180.0000'); INSERT INTO `sales` VALUES ('2017-01-02 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '酸奶酪', '40', '1252.8000'); INSERT INTO `sales` VALUES ('2017-01-02 00:00:00', '华北', '天津市', '天津', '赵军', '调味品', '辣椒粉', '20', '260.0000'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '东北', '辽宁省', '大连', '张颖', '饮料', '牛奶', '12', '182.4000'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '东北', '辽宁省', '大连', '张颖', '海鲜', '蚵', '35', '420.0000'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '虾子', '20', '193.0000'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '柳橙汁', '20', '782.0000'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '华东', '江苏省', '南京', '李芳', '点心', '玉米片', '8', '86.7000'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '华东', '江苏省', '南京', '李芳', '调味品', '海鲜酱', '30', '726.7500'); INSERT INTO `sales` VALUES ('2017-01-05 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '浪花奶酪', '16', '40.0000'); INSERT INTO `sales` VALUES ('2017-01-06 00:00:00', '华南', '海南省', '海口', '郑建杰', '饮料', '绿茶', '30', '7509.7500'); INSERT INTO `sales` VALUES ('2017-01-06 00:00:00', '华南', '海南省', '海口', '郑建杰', '点心', '山渣片', '20', '936.7000'); INSERT INTO `sales` VALUES ('2017-01-06 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '棉花糖', '40', '1061.8200'); INSERT INTO `sales` VALUES ('2017-01-06 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '绿茶', '30', '7905.0000'); INSERT INTO `sales` VALUES ('2017-01-06 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '虾米', '60', '938.4000'); INSERT INTO `sales` VALUES ('2017-01-06 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '山渣片', '25', '1047.6250'); INSERT INTO `sales` VALUES ('2017-01-07 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '白奶酪', '20', '640.0000'); INSERT INTO `sales` VALUES ('2017-01-07 00:00:00', '华北', '天津市', '天津', '金士鹏', '海鲜', '虾子', '20', '193.0000'); INSERT INTO `sales` VALUES ('2017-01-07 00:00:00', '华南', '福建省', '厦门', '王伟', '饮料', '柳橙汁', '7', '322.0000'); INSERT INTO `sales` VALUES ('2017-01-07 00:00:00', '华南', '福建省', '厦门', '王伟', '饮料', '浓缩咖啡', '20', '155.0000'); INSERT INTO `sales` VALUES ('2017-01-07 00:00:00', '东北', '辽宁省', '大连', '李芳', '谷类/麦片', '白米', '30', '1140.0000'); INSERT INTO `sales` VALUES ('2017-01-08 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '蜜桃汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2017-01-08 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '猪肉干', '6', '318.0000'); INSERT INTO `sales` VALUES ('2017-01-08 00:00:00', '华北', '北京市', '北京', '孙林', '点心', '山渣片', '3', '147.9000'); INSERT INTO `sales` VALUES ('2017-01-08 00:00:00', '华北', '北京市', '北京', '孙林', '饮料', '苏打水', '6', '90.0000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '西南', '四川省', '成都', '赵军', '日用品', '民众奶酪', '20', '378.0000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '西南', '四川省', '成都', '赵军', '谷类/麦片', '小米', '15', '292.5000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '西南', '四川省', '成都', '赵军', '日用品', '苏澳奶酪', '40', '1980.0000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '西南', '四川省', '成都', '赵军', '调味品', '辣椒粉', '15', '175.5000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '华东', '山东省', '青岛', '刘英玫', '海鲜', '虾子', '12', '115.8000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '华东', '山东省', '青岛', '刘英玫', '饮料', '苏打水', '9', '135.0000'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '华东', '江苏省', '常州', '张颖', '点心', '棉花糖', '12', '374.7600'); INSERT INTO `sales` VALUES ('2017-01-09 00:00:00', '华东', '江苏省', '常州', '张颖', '肉/家禽', '盐水鸭', '20', '656.0000'); INSERT INTO `sales` VALUES ('2017-01-12 00:00:00', '华北', '河北省', '石家庄', '孙林', '日用品', '温馨奶酪', '35', '437.5000'); INSERT INTO `sales` VALUES ('2017-01-12 00:00:00', '华北', '河北省', '石家庄', '孙林', '谷类/麦片', '小米', '15', '292.5000'); INSERT INTO `sales` VALUES ('2017-01-12 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '蟹', '15', '465.0000'); INSERT INTO `sales` VALUES ('2017-01-12 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '运动饮料', '21', '378.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '华北', '河北省', '秦皇岛', '张雪眉', '点心', '桂花糕', '5', '405.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '华北', '河北省', '秦皇岛', '张雪眉', '饮料', '绿茶', '2', '527.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '华北', '北京市', '北京', '张雪眉', '饮料', '牛奶', '10', '190.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '华北', '北京市', '北京', '张雪眉', '调味品', '胡椒粉', '20', '800.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '华北', '北京市', '北京', '张雪眉', '海鲜', '龙虾', '10', '60.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '华北', '北京市', '北京', '张雪眉', '日用品', '花奶酪', '21', '714.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '调味品', '酱油', '6', '150.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '运动饮料', '28', '504.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '日用品', '花奶酪', '30', '1020.0000'); INSERT INTO `sales` VALUES ('2017-01-13 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '点心', '绿豆糕', '24', '300.0000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '李芳', '点心', '糖果', '2', '18.4000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '李芳', '饮料', '蜜桃汁', '8', '144.0000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '李芳', '饮料', '绿茶', '8', '2108.0000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '李芳', '饮料', '柳橙汁', '9', '414.0000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '王伟', '海鲜', '龙虾', '3', '14.4000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '王伟', '点心', '巧克力', '10', '112.0000'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '王伟', '调味品', '蚝油', '16', '248.9600'); INSERT INTO `sales` VALUES ('2017-01-14 00:00:00', '华东', '山东省', '济南', '王伟', '谷类/麦片', '黄豆', '3', '99.7500'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华北', '北京市', '北京', '孙林', '特制品', '海鲜粉', '20', '540.0000'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华北', '北京市', '北京', '孙林', '日用品', '温馨奶酪', '9', '101.2500'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华北', '北京市', '北京', '孙林', '肉/家禽', '盐水鸭', '9', '265.6800'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华东', '浙江省', '温州', '张颖', '肉/家禽', '鸭肉', '8', '940.8040'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华东', '浙江省', '温州', '张颖', '海鲜', '黄鱼', '20', '491.9100'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '苏澳奶酪', '15', '825.0000'); INSERT INTO `sales` VALUES ('2017-01-15 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '苏打水', '2', '24.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '西北', '陕西省', '西安', '金士鹏', '谷类/麦片', '糯米', '52', '1092.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '西北', '陕西省', '西安', '金士鹏', '饮料', '蜜桃汁', '6', '108.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '西北', '陕西省', '西安', '金士鹏', '谷类/麦片', '小米', '24', '468.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '西北', '陕西省', '西安', '金士鹏', '日用品', '花奶酪', '60', '2040.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '西北', '陕西省', '西安', '金士鹏', '谷类/麦片', '黄豆', '30', '997.5000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '华东', '江苏省', '南京', '张雪眉', '海鲜', '龙虾', '6', '36.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '华东', '江苏省', '南京', '张雪眉', '海鲜', '虾米', '25', '460.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '华东', '江苏省', '南京', '张雪眉', '点心', '蛋糕', '40', '285.0000'); INSERT INTO `sales` VALUES ('2017-01-16 00:00:00', '华东', '江苏省', '南京', '张雪眉', '饮料', '柠檬汁', '21', '283.5000'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '饮料', '苹果汁', '4', '54.0000'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '海鲜', '墨鱼', '25', '1171.8750'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '华北', '河北省', '石家庄', '李芳', '海鲜', '鱿鱼', '50', '712.5000'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '西南', '重庆市', '重庆', '李芳', '海鲜', '海参', '30', '357.7500'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '西南', '重庆市', '重庆', '李芳', '日用品', '酸奶酪', '15', '469.8000'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '点心', '巧克力', '6', '67.2000'); INSERT INTO `sales` VALUES ('2017-01-19 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '饮料', '运动饮料', '10', '144.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '华北', '天津市', '天津', '赵军', '海鲜', '蟹', '16', '496.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '华北', '天津市', '天津', '赵军', '谷类/麦片', '白米', '30', '1140.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '苏澳奶酪', '50', '2750.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '华北', '天津市', '天津', '赵军', '调味品', '辣椒粉', '15', '195.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '东北', '辽宁省', '大连', '张颖', '日用品', '民众奶酪', '15', '315.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '东北', '辽宁省', '大连', '张颖', '饮料', '柳橙汁', '5', '230.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '东北', '辽宁省', '大连', '张颖', '点心', '绿豆糕', '20', '250.0000'); INSERT INTO `sales` VALUES ('2017-01-20 00:00:00', '东北', '辽宁省', '大连', '张颖', '饮料', '苏打水', '12', '180.0000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华东', '江苏省', '南京', '郑建杰', '特制品', '猪肉干', '4', '159.0000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '糯米', '35', '735.0000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '燕麦', '70', '567.0000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '蜜桃汁', '25', '405.0000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '糙米', '42', '529.2000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '海鲜', '海参', '60', '715.5000'); INSERT INTO `sales` VALUES ('2017-01-21 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '黄豆', '48', '1596.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华南', '海南省', '海口', '王伟', '调味品', '盐', '21', '462.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华南', '海南省', '海口', '王伟', '饮料', '苏打水', '30', '450.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华南', '海南省', '海口', '王伟', '特制品', '鸡精', '20', '200.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '苹果汁', '80', '1152.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '糖果', '12', '88.3200'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '干贝', '60', '1248.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '雪鱼', '36', '273.6000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '花奶酪', '45', '1224.0000'); INSERT INTO `sales` VALUES ('2017-01-22 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '义大利奶酪', '55', '946.0000'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华东', '江苏省', '南京', '金士鹏', '调味品', '麻油', '30', '640.5000'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华东', '江苏省', '南京', '金士鹏', '肉/家禽', '鸡', '3', '291.0000'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华南', '福建省', '厦门', '张雪眉', '调味品', '蕃茄酱', '49', '490.0000'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华南', '福建省', '厦门', '张雪眉', '点心', '棉花糖', '18', '477.8190'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华东', '江苏省', '南京', '张颖', '点心', '巧克力', '20', '238.0000'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华东', '江苏省', '南京', '张颖', '日用品', '浪花奶酪', '4', '8.5000'); INSERT INTO `sales` VALUES ('2017-01-23 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '苏打水', '30', '382.5000'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '华北', '天津市', '天津', '赵军', '饮料', '牛奶', '5', '90.2500'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '华北', '天津市', '天津', '赵军', '点心', '巧克力', '10', '133.0000'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '华北', '天津市', '天津', '赵军', '谷类/麦片', '小米', '10', '185.2500'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '苏澳奶酪', '42', '2194.5000'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '西南', '四川省', '成都', '刘英玫', '饮料', '牛奶', '15', '285.0000'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '西南', '四川省', '成都', '刘英玫', '肉/家禽', '猪肉', '6', '234.0000'); INSERT INTO `sales` VALUES ('2017-01-26 00:00:00', '西南', '四川省', '成都', '刘英玫', '点心', '山渣片', '50', '2465.0000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华东', '山东省', '青岛', '张雪眉', '海鲜', '墨鱼', '10', '625.0000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '蟹', '100', '2635.0000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '龙虾', '65', '331.5000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华东', '江苏省', '常州', '李芳', '点心', '饼干', '50', '872.5000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华东', '江苏省', '常州', '李芳', '日用品', '温馨奶酪', '14', '175.0000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华东', '江苏省', '常州', '李芳', '谷类/麦片', '白米', '24', '912.0000'); INSERT INTO `sales` VALUES ('2017-01-27 00:00:00', '华东', '江苏省', '常州', '李芳', '调味品', '海苔酱', '15', '268.3875'); INSERT INTO `sales` VALUES ('2017-01-28 00:00:00', '华北', '河北省', '石家庄', '李芳', '饮料', '牛奶', '20', '380.0000'); INSERT INTO `sales` VALUES ('2017-01-28 00:00:00', '华北', '河北省', '石家庄', '李芳', '谷类/麦片', '糙米', '20', '280.0000'); INSERT INTO `sales` VALUES ('2017-01-28 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '蕃茄酱', '30', '300.0000'); INSERT INTO `sales` VALUES ('2017-01-28 00:00:00', '华东', '江苏省', '南京', '刘英玫', '点心', '棉花糖', '35', '819.7875'); INSERT INTO `sales` VALUES ('2017-01-28 00:00:00', '华东', '江苏省', '南京', '刘英玫', '肉/家禽', '鸭肉', '10', '928.4250'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华东', '江苏省', '南京', '王伟', '特制品', '海鲜粉', '5', '150.0000'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华东', '江苏省', '南京', '王伟', '点心', '牛肉干', '10', '439.0000'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华东', '江苏省', '南京', '王伟', '饮料', '苏打水', '4', '60.0000'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华北', '河北省', '张家口', '张颖', '饮料', '汽水', '40', '135.0000'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华北', '河北省', '张家口', '张颖', '肉/家禽', '鸡肉', '35', '195.5625'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华北', '河北省', '张家口', '张颖', '谷类/麦片', '黄豆', '30', '748.1250'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华南', '广东省', '深圳', '李芳', '特制品', '猪肉干', '3', '159.0000'); INSERT INTO `sales` VALUES ('2017-01-29 00:00:00', '华南', '广东省', '深圳', '李芳', '饮料', '柠檬汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '肉/家禽', '猪肉', '42', '1638.0000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '海鲜', '墨鱼', '20', '1250.0000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '点心', '花生', '40', '400.0000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '日用品', '浪花奶酪', '35', '87.5000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '秦皇岛', '郑建杰', '点心', '山渣片', '3', '147.9000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '日用品', '民众奶酪', '25', '525.0000'); INSERT INTO `sales` VALUES ('2017-01-30 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '谷类/麦片', '三合一麦片', '8', '56.0000'); INSERT INTO `sales` VALUES ('2017-02-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '饮料', '苹果汁', '20', '306.0000'); INSERT INTO `sales` VALUES ('2017-02-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '海参', '12', '135.1500'); INSERT INTO `sales` VALUES ('2017-02-02 00:00:00', '华东', '浙江省', '温州', '郑建杰', '饮料', '蜜桃汁', '4', '72.0000'); INSERT INTO `sales` VALUES ('2017-02-02 00:00:00', '华东', '浙江省', '温州', '郑建杰', '饮料', '矿泉水', '15', '210.0000'); INSERT INTO `sales` VALUES ('2017-02-02 00:00:00', '西南', '重庆市', '重庆', '王伟', '饮料', '绿茶', '60', '15019.5000'); INSERT INTO `sales` VALUES ('2017-02-02 00:00:00', '西南', '重庆市', '重庆', '王伟', '饮料', '运动饮料', '80', '1368.0000'); INSERT INTO `sales` VALUES ('2017-02-03 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '牛奶', '21', '299.2500'); INSERT INTO `sales` VALUES ('2017-02-03 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '汽水', '6', '20.2500'); INSERT INTO `sales` VALUES ('2017-02-03 00:00:00', '华东', '江苏省', '南京', '赵军', '海鲜', '黄鱼', '40', '776.7000'); INSERT INTO `sales` VALUES ('2017-02-03 00:00:00', '华南', '广东省', '深圳', '孙林', '肉/家禽', '盐水鸭', '3', '98.4000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华南', '广东省', '深圳', '金士鹏', '点心', '棉花糖', '20', '624.6000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '蜜桃汁', '30', '540.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华南', '广东省', '深圳', '金士鹏', '点心', '薯条', '42', '756.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华东', '江苏省', '南京', '赵军', '饮料', '苹果汁', '40', '720.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华东', '江苏省', '南京', '赵军', '日用品', '民众奶酪', '10', '210.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华东', '江苏省', '南京', '赵军', '谷类/麦片', '燕麦', '50', '450.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华东', '江苏省', '南京', '赵军', '点心', '绿豆糕', '20', '250.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华北', '天津市', '天津', '赵军', '饮料', '蜜桃汁', '3', '54.0000'); INSERT INTO `sales` VALUES ('2017-02-04 00:00:00', '华北', '天津市', '天津', '赵军', '特制品', '猪肉干', '2', '106.0000'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华南', '广东省', '深圳', '张雪眉', '调味品', '酱油', '50', '1187.5000'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华南', '广东省', '深圳', '张雪眉', '点心', '饼干', '12', '198.9300'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华南', '广东省', '深圳', '张雪眉', '肉/家禽', '猪肉', '16', '592.8000'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华东', '上海市', '上海', '赵军', '肉/家禽', '鸭肉', '10', '228.0000'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华东', '上海市', '上海', '赵军', '点心', '山渣片', '20', '936.7000'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华东', '上海市', '上海', '赵军', '谷类/麦片', '黄豆', '15', '473.8125'); INSERT INTO `sales` VALUES ('2017-02-05 00:00:00', '华东', '上海市', '上海', '赵军', '调味品', '海苔酱', '21', '419.9475'); INSERT INTO `sales` VALUES ('2017-02-06 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '花生', '20', '200.0000'); INSERT INTO `sales` VALUES ('2017-02-06 00:00:00', '华北', '天津市', '天津', '郑建杰', '特制品', '烤肉酱', '3', '136.8000'); INSERT INTO `sales` VALUES ('2017-02-06 00:00:00', '华北', '天津市', '天津', '赵军', '海鲜', '蟹', '10', '310.0000'); INSERT INTO `sales` VALUES ('2017-02-06 00:00:00', '华东', '江苏省', '南京', '郑建杰', '点心', '糖果', '25', '230.0000'); INSERT INTO `sales` VALUES ('2017-02-06 00:00:00', '华东', '江苏省', '南京', '郑建杰', '点心', '蛋糕', '21', '179.5500'); INSERT INTO `sales` VALUES ('2017-02-06 00:00:00', '华东', '江苏省', '南京', '郑建杰', '点心', '薯条', '15', '300.0000'); INSERT INTO `sales` VALUES ('2017-02-09 00:00:00', '华南', '海南省', '海口', '金士鹏', '海鲜', '蚵', '21', '252.0000'); INSERT INTO `sales` VALUES ('2017-02-09 00:00:00', '华南', '海南省', '海口', '金士鹏', '谷类/麦片', '黄豆', '20', '665.0000'); INSERT INTO `sales` VALUES ('2017-02-09 00:00:00', '华南', '广东省', '深圳', '张颖', '点心', '饼干', '30', '392.6250'); INSERT INTO `sales` VALUES ('2017-02-09 00:00:00', '华南', '广东省', '深圳', '张颖', '海鲜', '墨鱼', '25', '1562.5000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '华南', '福建省', '厦门', '郑建杰', '点心', '桂花糕', '20', '1539.0000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '华东', '江苏省', '常州', '李芳', '海鲜', '虾米', '12', '220.8000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '华东', '江苏省', '常州', '李芳', '调味品', '海苔酱', '10', '210.5000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '华东', '江苏省', '常州', '李芳', '饮料', '柠檬汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '谷类/麦片', '燕麦', '30', '216.0000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '调味品', '海鲜酱', '30', '684.0000'); INSERT INTO `sales` VALUES ('2017-02-10 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '饮料', '苏打水', '50', '600.0000'); INSERT INTO `sales` VALUES ('2017-02-11 00:00:00', '西南', '四川省', '成都', '郑建杰', '海鲜', '海哲皮', '10', '150.0000'); INSERT INTO `sales` VALUES ('2017-02-11 00:00:00', '华东', '山东省', '青岛', '郑建杰', '谷类/麦片', '糙米', '25', '350.0000'); INSERT INTO `sales` VALUES ('2017-02-11 00:00:00', '华东', '山东省', '青岛', '郑建杰', '点心', '薯条', '20', '340.0000'); INSERT INTO `sales` VALUES ('2017-02-11 00:00:00', '华东', '山东省', '青岛', '郑建杰', '肉/家禽', '鸡肉', '32', '202.6400'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '汽水', '8', '36.0000'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '点心', '花生', '40', '380.0000'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '谷类/麦片', '白米', '21', '758.1000'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '调味品', '海苔酱', '12', '239.9700'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华东', '江苏省', '常州', '孙林', '饮料', '牛奶', '20', '380.0000'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华东', '江苏省', '常州', '孙林', '饮料', '汽水', '12', '54.0000'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华东', '江苏省', '常州', '孙林', '饮料', '苏打水', '30', '450.0000'); INSERT INTO `sales` VALUES ('2017-02-12 00:00:00', '华东', '江苏省', '常州', '孙林', '调味品', '辣椒粉', '25', '325.0000'); INSERT INTO `sales` VALUES ('2017-02-13 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '海鲜', '蟹', '70', '2170.0000'); INSERT INTO `sales` VALUES ('2017-02-13 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '日用品', '温馨奶酪', '35', '437.5000'); INSERT INTO `sales` VALUES ('2017-02-13 00:00:00', '华北', '河北省', '秦皇岛', '张颖', '调味品', '辣椒粉', '40', '520.0000'); INSERT INTO `sales` VALUES ('2017-02-13 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '巧克力', '5', '70.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '牛奶', '20', '380.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '绿豆糕', '18', '225.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华南', '广东省', '深圳', '张雪眉', '日用品', '民众奶酪', '40', '840.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华南', '广东省', '深圳', '张雪眉', '饮料', '绿茶', '40', '10540.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华南', '广东省', '深圳', '金士鹏', '肉/家禽', '猪肉', '15', '585.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '啤酒', '10', '140.0000'); INSERT INTO `sales` VALUES ('2017-02-16 00:00:00', '华南', '广东省', '深圳', '金士鹏', '海鲜', '虾子', '14', '135.1000'); INSERT INTO `sales` VALUES ('2017-02-17 00:00:00', '华南', '广东省', '深圳', '金士鹏', '海鲜', '黄鱼', '15', '368.9325'); INSERT INTO `sales` VALUES ('2017-02-17 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '苏澳奶酪', '40', '2090.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '调味品', '胡椒粉', '30', '1200.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '饮料', '汽水', '10', '45.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '肉/家禽', '鸭肉', '24', '2970.9600'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '海鲜', '黄鱼', '35', '906.1500'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '海鲜', '鱿鱼', '20', '380.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '浙江省', '温州', '张颖', '海鲜', '龙虾', '28', '159.6000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '浙江省', '温州', '张颖', '日用品', '黑奶酪', '50', '1710.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '浙江省', '温州', '张颖', '饮料', '浓缩咖啡', '120', '883.5000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '江西省', '南昌', '李芳', '饮料', '汽水', '110', '495.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '江西省', '南昌', '李芳', '饮料', '运动饮料', '45', '810.0000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '江西省', '南昌', '李芳', '海鲜', '虾米', '91', '1674.4000'); INSERT INTO `sales` VALUES ('2017-02-18 00:00:00', '华东', '江西省', '南昌', '李芳', '日用品', '花奶酪', '100', '3400.0000'); INSERT INTO `sales` VALUES ('2017-02-19 00:00:00', '西北', '陕西省', '西安', '金士鹏', '海鲜', '雪鱼', '15', '142.5000'); INSERT INTO `sales` VALUES ('2017-02-19 00:00:00', '西北', '陕西省', '西安', '金士鹏', '谷类/麦片', '白米', '16', '608.0000'); INSERT INTO `sales` VALUES ('2017-02-19 00:00:00', '西北', '陕西省', '西安', '李芳', '肉/家禽', '鸭肉', '80', '9903.2000'); INSERT INTO `sales` VALUES ('2017-02-19 00:00:00', '西北', '陕西省', '西安', '李芳', '海鲜', '黄鱼', '36', '932.0400'); INSERT INTO `sales` VALUES ('2017-02-20 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '海鲜', '龙虾', '5', '30.0000'); INSERT INTO `sales` VALUES ('2017-02-20 00:00:00', '西南', '重庆市', '重庆', '赵军', '饮料', '运动饮料', '8', '122.4000'); INSERT INTO `sales` VALUES ('2017-02-20 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '苏打水', '3', '33.7500'); INSERT INTO `sales` VALUES ('2017-02-23 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '虾子', '30', '289.5000'); INSERT INTO `sales` VALUES ('2017-02-23 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '义大利奶酪', '30', '645.0000'); INSERT INTO `sales` VALUES ('2017-02-23 00:00:00', '东北', '辽宁省', '大连', '张颖', '肉/家禽', '鸭肉', '30', '612.0000'); INSERT INTO `sales` VALUES ('2017-02-23 00:00:00', '东北', '辽宁省', '大连', '张颖', '点心', '山渣片', '6', '251.4300'); INSERT INTO `sales` VALUES ('2017-02-24 00:00:00', '华北', '河北省', '石家庄', '李芳', '海鲜', '龙虾', '40', '240.0000'); INSERT INTO `sales` VALUES ('2017-02-24 00:00:00', '华北', '河北省', '石家庄', '李芳', '调味品', '海苔酱', '21', '442.0500'); INSERT INTO `sales` VALUES ('2017-02-24 00:00:00', '华北', '河北省', '石家庄', '李芳', '点心', '绿豆糕', '20', '250.0000'); INSERT INTO `sales` VALUES ('2017-02-24 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '海参', '15', '198.7500'); INSERT INTO `sales` VALUES ('2017-02-24 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '山渣片', '35', '1725.5000'); INSERT INTO `sales` VALUES ('2017-02-24 00:00:00', '华南', '广东省', '深圳', '张雪眉', '饮料', '苹果汁', '20', '342.0000'); INSERT INTO `sales` VALUES ('2017-02-25 00:00:00', '华南', '广东省', '深圳', '郑建杰', '调味品', '海鲜酱', '15', '427.5000'); INSERT INTO `sales` VALUES ('2017-02-25 00:00:00', '华南', '福建省', '厦门', '孙林', '饮料', '浓缩咖啡', '14', '108.5000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华东', '江苏省', '常州', '郑建杰', '特制品', '海鲜粉', '20', '570.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华东', '江苏省', '常州', '郑建杰', '谷类/麦片', '三合一麦片', '14', '93.1000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '河北省', '石家庄', '张颖', '特制品', '海鲜粉', '12', '360.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '河北省', '石家庄', '张颖', '点心', '饼干', '15', '261.7500'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '河北省', '石家庄', '张颖', '海鲜', '虾子', '5', '48.2500'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '西南', '四川省', '成都', '张颖', '点心', '糖果', '12', '110.4000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '西南', '四川省', '成都', '张颖', '点心', '薯条', '10', '200.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '西南', '四川省', '成都', '张颖', '调味品', '海鲜酱', '5', '142.5000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华东', '山东省', '青岛', '李芳', '饮料', '苹果汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华东', '山东省', '青岛', '李芳', '肉/家禽', '猪肉', '12', '468.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华东', '山东省', '青岛', '李芳', '饮料', '矿泉水', '15', '210.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '民众奶酪', '40', '630.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸭肉', '60', '5570.5500'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '天津市', '天津', '郑建杰', '调味品', '盐', '30', '495.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '浪花奶酪', '40', '75.0000'); INSERT INTO `sales` VALUES ('2017-02-26 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '海参', '15', '198.7500'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华南', '广东省', '深圳', '孙林', '日用品', '义大利奶酪', '25', '537.5000'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '肉/家禽', '猪肉', '10', '390.0000'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '日用品', '浪花奶酪', '30', '75.0000'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '肉/家禽', '鸡肉', '10', '74.5000'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华东', '江苏省', '常州', '张颖', '点心', '饼干', '6', '104.7000'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华东', '江苏省', '常州', '张颖', '日用品', '白奶酪', '6', '192.0000'); INSERT INTO `sales` VALUES ('2017-02-27 00:00:00', '华东', '江苏省', '常州', '张颖', '谷类/麦片', '小米', '20', '390.0000'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '海鲜', '黄鱼', '1', '25.8900'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '天津市', '天津', '郑建杰', '日用品', '花奶酪', '10', '340.0000'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '北京市', '北京', '李芳', '饮料', '苹果汁', '60', '810.0000'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '北京市', '北京', '李芳', '日用品', '花奶酪', '25', '637.5000'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '河北省', '张家口', '王伟', '点心', '饼干', '24', '418.8000'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '河北省', '张家口', '王伟', '点心', '巧克力', '24', '336.0000'); INSERT INTO `sales` VALUES ('2017-03-02 00:00:00', '华北', '河北省', '张家口', '王伟', '海鲜', '虾米', '20', '368.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华北', '天津市', '天津', '郑建杰', '点心', '玉米饼', '24', '390.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '蜜桃汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华北', '天津市', '天津', '张颖', '调味品', '甜辣酱', '40', '1756.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华北', '河北省', '石家庄', '赵军', '肉/家禽', '猪肉', '15', '585.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华北', '河北省', '石家庄', '赵军', '饮料', '汽水', '35', '157.5000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华南', '广东省', '深圳', '金士鹏', '谷类/麦片', '糙米', '10', '112.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '柳橙汁', '10', '368.0000'); INSERT INTO `sales` VALUES ('2017-03-03 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '矿泉水', '24', '268.8000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '华东', '江苏省', '南京', '李芳', '海鲜', '蟹', '20', '558.0000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '华东', '江苏省', '南京', '李芳', '特制品', '烤肉酱', '30', '1231.2000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '浓缩咖啡', '6', '46.5000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '鱿鱼', '25', '403.7500'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '华北', '天津市', '天津', '李芳', '谷类/麦片', '三合一麦片', '12', '71.4000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '日用品', '民众奶酪', '2', '42.0000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '龙虾', '10', '60.0000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '点心', '糖果', '7', '64.4000'); INSERT INTO `sales` VALUES ('2017-03-04 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '日用品', '酸奶酪', '10', '348.0000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西北', '陕西省', '西安', '郑建杰', '点心', '桂花糕', '5', '405.0000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西北', '陕西省', '西安', '郑建杰', '谷类/麦片', '三合一麦片', '5', '35.0000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西北', '陕西省', '西安', '郑建杰', '饮料', '柠檬汁', '20', '360.0000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西南', '重庆市', '重庆', '张颖', '点心', '蛋糕', '5', '47.5000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西南', '重庆市', '重庆', '张颖', '饮料', '柠檬汁', '5', '90.0000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西南', '重庆市', '重庆', '孙林', '点心', '花生', '60', '600.0000'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西南', '重庆市', '重庆', '孙林', '饮料', '浓缩咖啡', '49', '379.7500'); INSERT INTO `sales` VALUES ('2017-03-05 00:00:00', '西南', '重庆市', '重庆', '孙林', '调味品', '辣椒粉', '15', '195.0000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '点心', '花生', '36', '360.0000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '点心', '牛肉干', '25', '1097.5000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '肉/家禽', '鸭肉', '25', '480.0000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '海鲜', '海参', '30', '318.0000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '海鲜', '龙虾', '42', '214.2000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '东北', '辽宁省', '大连', '郑建杰', '谷类/麦片', '小米', '30', '585.0000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '点心', '饼干', '30', '471.1500'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '点心', '山渣片', '14', '621.1800'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '日用品', '酸奶酪', '16', '556.8000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '饮料', '浓缩咖啡', '20', '139.5000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '华北', '天津市', '天津', '孙林', '肉/家禽', '盐水鸭', '2', '65.6000'); INSERT INTO `sales` VALUES ('2017-03-06 00:00:00', '华北', '天津市', '天津', '孙林', '调味品', '海鲜酱', '30', '855.0000'); INSERT INTO `sales` VALUES ('2017-03-09 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '酱油', '20', '500.0000'); INSERT INTO `sales` VALUES ('2017-03-09 00:00:00', '华南', '福建省', '厦门', '郑建杰', '饮料', '苹果汁', '21', '378.0000'); INSERT INTO `sales` VALUES ('2017-03-09 00:00:00', '华南', '福建省', '厦门', '郑建杰', '海鲜', '墨鱼', '4', '187.5000'); INSERT INTO `sales` VALUES ('2017-03-09 00:00:00', '华南', '福建省', '厦门', '郑建杰', '谷类/麦片', '燕麦', '8', '54.0000'); INSERT INTO `sales` VALUES ('2017-03-09 00:00:00', '华南', '海南省', '海口', '李芳', '海鲜', '鱿鱼', '30', '456.0000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华东', '江苏省', '常州', '金士鹏', '特制品', '烤肉酱', '8', '364.8000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华东', '江苏省', '常州', '金士鹏', '饮料', '啤酒', '20', '280.0000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '龙虾', '20', '90.0000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '柳橙汁', '24', '828.0000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '花奶酪', '49', '1249.5000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '义大利奶酪', '35', '564.3750'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华南', '广东省', '深圳', '王伟', '饮料', '牛奶', '10', '161.5000'); INSERT INTO `sales` VALUES ('2017-03-10 00:00:00', '华南', '广东省', '深圳', '王伟', '饮料', '矿泉水', '40', '476.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华南', '广东省', '深圳', '刘英玫', '特制品', '海鲜粉', '8', '240.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华南', '广东省', '深圳', '刘英玫', '海鲜', '龙虾', '20', '120.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '温馨奶酪', '44', '412.5000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '山渣片', '30', '1109.2500'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '点心', '绿豆糕', '80', '750.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华北', '天津市', '天津', '金士鹏', '日用品', '酸奶酪', '50', '1740.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华北', '河北省', '石家庄', '张雪眉', '点心', '薯条', '28', '560.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华东', '江苏省', '南京', '郑建杰', '海鲜', '龙虾', '15', '90.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华东', '江苏省', '南京', '郑建杰', '谷类/麦片', '糯米', '21', '441.0000'); INSERT INTO `sales` VALUES ('2017-03-11 00:00:00', '华东', '江苏省', '南京', '郑建杰', '海鲜', '蚵', '15', '180.0000'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '日用品', '民众奶酪', '5', '78.7500'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '调味品', '蚝油', '18', '262.5750'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '谷类/麦片', '白米', '18', '684.0000'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华东', '江苏省', '南京', '郑建杰', '海鲜', '龙虾', '20', '120.0000'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华东', '江苏省', '南京', '郑建杰', '日用品', '温馨奶酪', '10', '125.0000'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华东', '江苏省', '常州', '张颖', '海鲜', '蟹', '25', '775.0000'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华东', '江苏省', '常州', '张颖', '饮料', '汽水', '25', '112.5000'); INSERT INTO `sales` VALUES ('2017-03-12 00:00:00', '华东', '江苏省', '常州', '张颖', '调味品', '辣椒粉', '40', '520.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华东', '江苏省', '南京', '李芳', '日用品', '苏澳奶酪', '4', '220.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华南', '广东省', '深圳', '李芳', '点心', '玉米饼', '9', '146.2500'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华南', '广东省', '深圳', '李芳', '特制品', '猪肉干', '40', '2120.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华南', '广东省', '深圳', '李芳', '肉/家禽', '鸭肉', '4', '96.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华北', '河北省', '张家口', '王伟', '调味品', '酱油', '12', '300.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华北', '河北省', '张家口', '王伟', '海鲜', '蟹', '30', '930.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华北', '河北省', '张家口', '王伟', '肉/家禽', '猪肉', '6', '234.0000'); INSERT INTO `sales` VALUES ('2017-03-13 00:00:00', '华北', '河北省', '张家口', '王伟', '点心', '山渣片', '60', '2958.0000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华东', '上海市', '上海', '张颖', '调味品', '盐', '5', '110.0000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '北京市', '北京', '张雪眉', '日用品', '浪花奶酪', '15', '35.6250'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '北京市', '北京', '张雪眉', '海鲜', '虾子', '6', '55.0050'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '北京市', '北京', '张雪眉', '饮料', '浓缩咖啡', '50', '368.1250'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '天津市', '天津', '张颖', '调味品', '酱油', '16', '380.0000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '天津市', '天津', '张颖', '特制品', '烤肉酱', '2', '91.2000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '蛋糕', '1', '9.5000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华北', '天津市', '天津', '张颖', '谷类/麦片', '白米', '1', '38.0000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华东', '江西省', '南昌', '张雪眉', '点心', '桂花糕', '50', '3847.5000'); INSERT INTO `sales` VALUES ('2017-03-16 00:00:00', '华东', '江西省', '南昌', '张雪眉', '日用品', '温馨奶酪', '50', '593.7500'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华南', '广东省', '深圳', '赵军', '点心', '饼干', '28', '415.3100'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华南', '广东省', '深圳', '赵军', '日用品', '温馨奶酪', '25', '265.6250'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华南', '广东省', '深圳', '赵军', '海鲜', '雪鱼', '30', '285.0000'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华南', '广东省', '深圳', '赵军', '日用品', '花奶酪', '24', '693.6000'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '饮料', '浓缩咖啡', '12', '74.4000'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华北', '天津市', '天津', '孙林', '点心', '花生', '12', '120.0000'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华北', '天津市', '天津', '孙林', '点心', '蛋糕', '14', '133.0000'); INSERT INTO `sales` VALUES ('2017-03-17 00:00:00', '华北', '天津市', '天津', '孙林', '特制品', '猪肉干', '8', '424.0000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西北', '陕西省', '西安', '刘英玫', '海鲜', '黄鱼', '30', '776.7000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西北', '陕西省', '西安', '刘英玫', '饮料', '蜜桃汁', '40', '720.0000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西北', '陕西省', '西安', '刘英玫', '谷类/麦片', '黄豆', '8', '266.0000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西南', '重庆市', '重庆', '金士鹏', '调味品', '麻油', '20', '427.0000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西南', '重庆市', '重庆', '金士鹏', '特制品', '海鲜粉', '6', '180.0000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西南', '重庆市', '重庆', '金士鹏', '日用品', '酸奶酪', '5', '174.0000'); INSERT INTO `sales` VALUES ('2017-03-18 00:00:00', '西南', '重庆市', '重庆', '孙林', '饮料', '浓缩咖啡', '20', '131.7500'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '汽水', '10', '33.7500'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华北', '天津市', '天津', '李芳', '海鲜', '虾子', '24', '231.6000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华北', '天津市', '天津', '刘英玫', '谷类/麦片', '三合一麦片', '6', '39.9000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '柠檬汁', '60', '1080.0000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华南', '广东省', '深圳', '刘英玫', '特制品', '海鲜粉', '45', '1350.0000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华南', '广东省', '深圳', '刘英玫', '海鲜', '龙虾', '77', '462.0000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华南', '广东省', '深圳', '刘英玫', '肉/家禽', '盐水鸭', '20', '656.0000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华南', '广东省', '深圳', '刘英玫', '日用品', '黑奶酪', '9', '324.0000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华南', '广东省', '深圳', '刘英玫', '饮料', '柠檬汁', '44', '792.0000'); INSERT INTO `sales` VALUES ('2017-03-19 00:00:00', '华东', '江苏省', '南京', '张雪眉', '日用品', '花奶酪', '2', '57.8000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华南', '福建省', '厦门', '李芳', '海鲜', '墨鱼', '6', '375.0000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华南', '福建省', '厦门', '李芳', '饮料', '绿茶', '5', '1317.5000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华南', '福建省', '厦门', '李芳', '日用品', '黑奶酪', '10', '360.0000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华北', '天津市', '天津', '孙林', '特制品', '猪肉干', '16', '848.0000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华南', '海南省', '海口', '郑建杰', '海鲜', '干贝', '8', '208.0000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华南', '海南省', '海口', '郑建杰', '谷类/麦片', '白米', '12', '387.6000'); INSERT INTO `sales` VALUES ('2017-03-20 00:00:00', '华南', '海南省', '海口', '郑建杰', '点心', '山渣片', '12', '502.8600'); INSERT INTO `sales` VALUES ('2017-03-23 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '糖果', '12', '110.4000'); INSERT INTO `sales` VALUES ('2017-03-23 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '薯条', '40', '800.0000'); INSERT INTO `sales` VALUES ('2017-03-23 00:00:00', '华南', '广东省', '深圳', '张颖', '日用品', '德国奶酪', '30', '1140.0000'); INSERT INTO `sales` VALUES ('2017-03-23 00:00:00', '华南', '广东省', '深圳', '张颖', '饮料', '汽水', '30', '135.0000'); INSERT INTO `sales` VALUES ('2017-03-23 00:00:00', '华南', '广东省', '深圳', '张颖', '谷类/麦片', '黄豆', '4', '133.0000'); INSERT INTO `sales` VALUES ('2017-03-23 00:00:00', '华东', '山东省', '青岛', '张颖', '海鲜', '蚵', '9', '108.0000'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '东北', '辽宁省', '大连', '张雪眉', '谷类/麦片', '三合一麦片', '40', '224.0000'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '华北', '天津市', '天津', '王伟', '肉/家禽', '鸭肉', '14', '1733.0600'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '肉/家禽', '猪肉', '6', '234.0000'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '华北', '河北省', '石家庄', '郑建杰', '日用品', '浪花奶酪', '7', '17.5000'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '点心', '棉花糖', '5', '156.1500'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '海鲜', '虾子', '6', '57.9000'); INSERT INTO `sales` VALUES ('2017-03-24 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '饮料', '浓缩咖啡', '10', '77.5000'); INSERT INTO `sales` VALUES ('2017-03-25 00:00:00', '华东', '江苏省', '南京', '李芳', '调味品', '甜辣酱', '10', '439.0000'); INSERT INTO `sales` VALUES ('2017-03-25 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '胡椒粉', '16', '640.0000'); INSERT INTO `sales` VALUES ('2017-03-25 00:00:00', '华南', '广东省', '深圳', '张颖', '饮料', '浓缩咖啡', '10', '77.5000'); INSERT INTO `sales` VALUES ('2017-03-25 00:00:00', '华北', '河北省', '石家庄', '张颖', '特制品', '烤肉酱', '20', '912.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '运动饮料', '30', '540.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '蛋糕', '30', '285.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '天津市', '天津', '刘英玫', '特制品', '猪肉干', '10', '530.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '天津市', '天津', '刘英玫', '调味品', '甜辣酱', '20', '878.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华东', '江苏省', '常州', '张雪眉', '调味品', '胡椒粉', '20', '680.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华东', '江苏省', '常州', '张雪眉', '点心', '花生', '40', '340.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华东', '江苏省', '常州', '张雪眉', '海鲜', '虾米', '10', '184.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华东', '江苏省', '常州', '张雪眉', '调味品', '蚝油', '6', '99.1950'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '河北省', '张家口', '刘英玫', '特制品', '海鲜粉', '18', '540.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '河北省', '张家口', '刘英玫', '日用品', '德国奶酪', '20', '760.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '河北省', '张家口', '刘英玫', '饮料', '汽水', '80', '360.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '河北省', '张家口', '刘英玫', '点心', '牛肉干', '30', '1317.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '河北省', '张家口', '刘英玫', '日用品', '温馨奶酪', '24', '300.0000'); INSERT INTO `sales` VALUES ('2017-03-26 00:00:00', '华北', '河北省', '张家口', '刘英玫', '调味品', '甜辣酱', '35', '1536.5000'); INSERT INTO `sales` VALUES ('2017-03-27 00:00:00', '华北', '北京市', '北京', '郑建杰', '饮料', '浓缩咖啡', '40', '248.0000'); INSERT INTO `sales` VALUES ('2017-03-27 00:00:00', '华北', '北京市', '北京', '张颖', '饮料', '绿茶', '60', '15810.0000'); INSERT INTO `sales` VALUES ('2017-03-27 00:00:00', '华北', '天津市', '天津', '王伟', '特制品', '海鲜粉', '20', '600.0000'); INSERT INTO `sales` VALUES ('2017-03-27 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '柳橙汁', '9', '414.0000'); INSERT INTO `sales` VALUES ('2017-03-27 00:00:00', '华南', '广东省', '深圳', '王伟', '海鲜', '龙虾', '84', '428.4000'); INSERT INTO `sales` VALUES ('2017-03-27 00:00:00', '华南', '广东省', '深圳', '王伟', '谷类/麦片', '小米', '15', '292.5000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华东', '浙江省', '温州', '张颖', '点心', '饼干', '55', '959.7500'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华东', '浙江省', '温州', '张颖', '饮料', '汽水', '20', '90.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华东', '浙江省', '温州', '张颖', '海鲜', '鱿鱼', '40', '760.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '王伟', '点心', '饼干', '36', '565.3800'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '王伟', '海鲜', '墨鱼', '8', '450.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '白奶酪', '35', '1008.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '民众奶酪', '30', '630.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '刘英玫', '点心', '桂花糕', '15', '1215.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '柠檬汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2017-03-30 00:00:00', '华北', '天津市', '天津', '刘英玫', '调味品', '辣椒粉', '15', '195.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '华东', '江苏省', '南京', '刘英玫', '特制品', '海鲜粉', '60', '1800.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '华东', '江苏省', '南京', '刘英玫', '饮料', '柳橙汁', '6', '276.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '华东', '江苏省', '南京', '刘英玫', '日用品', '酸奶酪', '20', '696.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '华北', '天津市', '天津', '李芳', '特制品', '海鲜粉', '60', '1800.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '山渣片', '40', '1774.8000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '西南', '重庆市', '重庆', '王伟', '调味品', '酱油', '40', '1000.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '西南', '重庆市', '重庆', '王伟', '日用品', '民众奶酪', '15', '315.0000'); INSERT INTO `sales` VALUES ('2017-03-31 00:00:00', '西南', '重庆市', '重庆', '王伟', '海鲜', '虾子', '4', '38.6000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '西南', '重庆市', '重庆', '王伟', '点心', '花生', '65', '650.0000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '西南', '重庆市', '重庆', '王伟', '饮料', '啤酒', '60', '714.0000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '西南', '重庆市', '重庆', '王伟', '肉/家禽', '鸭肉', '65', '1326.0000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '西南', '重庆市', '重庆', '王伟', '调味品', '海鲜酱', '66', '1598.8500'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '牛奶', '50', '760.0000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '苏打水', '20', '240.0000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '华北', '天津市', '天津', '张颖', '饮料', '柠檬汁', '90', '1296.0000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '酸奶酪', '2', '69.6000'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '华南', '福建省', '厦门', '金士鹏', '肉/家禽', '鸭肉', '50', '4642.1250'); INSERT INTO `sales` VALUES ('2017-04-01 00:00:00', '华南', '福建省', '厦门', '金士鹏', '海鲜', '虾子', '35', '253.3125'); INSERT INTO `sales` VALUES ('2017-04-02 00:00:00', '华南', '广东省', '深圳', '王伟', '日用品', '苏澳奶酪', '18', '940.5000'); INSERT INTO `sales` VALUES ('2017-04-02 00:00:00', '华北', '天津市', '天津', '张颖', '特制品', '猪肉干', '20', '1060.0000'); INSERT INTO `sales` VALUES ('2017-04-02 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '花奶酪', '4', '136.0000'); INSERT INTO `sales` VALUES ('2017-04-02 00:00:00', '华南', '海南省', '海口', '郑建杰', '谷类/麦片', '糙米', '40', '560.0000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '西南', '四川省', '成都', '刘英玫', '日用品', '白奶酪', '50', '1600.0000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '西南', '四川省', '成都', '刘英玫', '海鲜', '蚵', '20', '180.0000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '西南', '四川省', '成都', '刘英玫', '谷类/麦片', '三合一麦片', '20', '105.0000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华东', '山东省', '青岛', '刘英玫', '饮料', '汽水', '12', '54.0000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华东', '山东省', '青岛', '刘英玫', '调味品', '海鲜酱', '7', '199.5000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华东', '山东省', '青岛', '刘英玫', '特制品', '鸡精', '20', '200.0000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华东', '山东省', '青岛', '刘英玫', '饮料', '浓缩咖啡', '30', '232.5000'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华北', '天津市', '天津', '孙林', '海鲜', '虾子', '20', '183.3500'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华北', '天津市', '天津', '孙林', '特制品', '猪肉干', '15', '755.2500'); INSERT INTO `sales` VALUES ('2017-04-03 00:00:00', '华北', '天津市', '天津', '孙林', '调味品', '辣椒粉', '21', '259.3500'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华北', '河北省', '石家庄', '王伟', '调味品', '盐', '25', '412.5000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华北', '河北省', '石家庄', '王伟', '饮料', '汽水', '30', '101.2500'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华北', '河北省', '石家庄', '王伟', '调味品', '辣椒粉', '30', '390.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '王伟', '特制品', '海鲜粉', '60', '1800.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '王伟', '谷类/麦片', '糯米', '25', '525.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '王伟', '海鲜', '蚵', '25', '300.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '王伟', '肉/家禽', '鸭肉', '6', '144.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '海鲜', '龙虾', '56', '336.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '饮料', '蜜桃汁', '15', '229.5000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '谷类/麦片', '糙米', '24', '285.6000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华南', '广东省', '深圳', '郑建杰', '肉/家禽', '鸭肉', '40', '960.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '饮料', '苹果汁', '4', '72.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '海鲜', '虾米', '10', '184.0000'); INSERT INTO `sales` VALUES ('2017-04-06 00:00:00', '华北', '河北省', '秦皇岛', '李芳', '谷类/麦片', '三合一麦片', '10', '70.0000'); INSERT INTO `sales` VALUES ('2017-04-07 00:00:00', '华北', '天津市', '天津', '李芳', '点心', '棉花糖', '6', '187.3800'); INSERT INTO `sales` VALUES ('2017-04-07 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '柠檬汁', '6', '108.0000'); INSERT INTO `sales` VALUES ('2017-04-07 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '苹果汁', '2', '36.0000'); INSERT INTO `sales` VALUES ('2017-04-07 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '苏澳奶酪', '10', '550.0000'); INSERT INTO `sales` VALUES ('2017-04-07 00:00:00', '华北', '河北省', '石家庄', '李芳', '饮料', '苹果汁', '8', '144.0000'); INSERT INTO `sales` VALUES ('2017-04-07 00:00:00', '华北', '河北省', '石家庄', '李芳', '肉/家禽', '鸭肉', '2', '185.6850'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华南', '广东省', '深圳', '刘英玫', '调味品', '胡椒粉', '30', '1200.0000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华南', '广东省', '深圳', '刘英玫', '肉/家禽', '鸭肉', '10', '1237.9000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华南', '广东省', '深圳', '刘英玫', '谷类/麦片', '糙米', '14', '196.0000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华东', '江苏省', '常州', '金士鹏', '特制品', '烤肉酱', '70', '3032.4000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华东', '江苏省', '常州', '金士鹏', '饮料', '啤酒', '90', '1197.0000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华东', '江苏省', '常州', '金士鹏', '日用品', '义大利奶酪', '21', '451.5000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华北', '河北省', '张家口', '王伟', '饮料', '汽水', '12', '54.0000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华北', '河北省', '张家口', '王伟', '海鲜', '鱿鱼', '18', '256.5000'); INSERT INTO `sales` VALUES ('2017-04-08 00:00:00', '华北', '河北省', '张家口', '王伟', '日用品', '花奶酪', '9', '306.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华北', '天津市', '天津', '王伟', '特制品', '海鲜粉', '20', '600.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '汽水', '10', '45.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华东', '江西省', '南昌', '李芳', '海鲜', '海参', '40', '503.5000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华东', '江西省', '南昌', '李芳', '日用品', '义大利奶酪', '20', '430.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '糖果', '50', '437.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '花奶酪', '36', '1162.8000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华北', '天津市', '天津', '张颖', '日用品', '义大利奶酪', '60', '1225.5000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华南', '广东省', '深圳', '王伟', '谷类/麦片', '燕麦', '10', '90.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华南', '广东省', '深圳', '王伟', '谷类/麦片', '糙米', '4', '56.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华南', '广东省', '深圳', '王伟', '海鲜', '雪鱼', '20', '190.0000'); INSERT INTO `sales` VALUES ('2017-04-09 00:00:00', '华南', '广东省', '深圳', '王伟', '点心', '绿豆糕', '2', '25.0000'); INSERT INTO `sales` VALUES ('2017-04-10 00:00:00', '华东', '浙江省', '温州', '王伟', '海鲜', '虾子', '28', '243.1800'); INSERT INTO `sales` VALUES ('2017-04-10 00:00:00', '华北', '天津市', '天津', '王伟', '海鲜', '黄鱼', '15', '388.3500'); INSERT INTO `sales` VALUES ('2017-04-10 00:00:00', '华北', '天津市', '天津', '王伟', '调味品', '辣椒粉', '18', '234.0000'); INSERT INTO `sales` VALUES ('2017-04-10 00:00:00', '华东', '江苏省', '常州', '张雪眉', '日用品', '温馨奶酪', '15', '187.5000'); INSERT INTO `sales` VALUES ('2017-04-10 00:00:00', '华东', '江苏省', '常州', '张雪眉', '海鲜', '鱿鱼', '16', '304.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '西北', '陕西省', '西安', '张雪眉', '调味品', '蕃茄酱', '25', '250.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '西北', '陕西省', '西安', '张雪眉', '日用品', '苏澳奶酪', '110', '6050.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '西北', '陕西省', '西安', '张雪眉', '饮料', '苏打水', '30', '450.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '华东', '江苏省', '常州', '郑建杰', '日用品', '德国奶酪', '20', '760.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '华东', '江苏省', '常州', '郑建杰', '海鲜', '墨鱼', '10', '625.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '华东', '江苏省', '常州', '郑建杰', '谷类/麦片', '白米', '5', '190.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '西南', '重庆市', '重庆', '孙林', '海鲜', '蚵', '3', '36.0000'); INSERT INTO `sales` VALUES ('2017-04-13 00:00:00', '西南', '重庆市', '重庆', '孙林', '点心', '薯条', '2', '40.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '西南', '重庆市', '重庆', '王伟', '海鲜', '蟹', '24', '632.4000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '广东省', '深圳', '李芳', '饮料', '牛奶', '11', '156.7500'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '广东省', '深圳', '李芳', '点心', '桂花糕', '15', '1215.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '广东省', '深圳', '李芳', '点心', '棉花糖', '63', '1967.4900'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '广东省', '深圳', '李芳', '特制品', '猪肉干', '44', '1749.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '广东省', '深圳', '李芳', '日用品', '酸奶酪', '35', '1218.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '福建省', '厦门', '张雪眉', '点心', '糖果', '35', '322.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华南', '福建省', '厦门', '张雪眉', '日用品', '黑奶酪', '30', '1080.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华东', '江苏省', '南京', '张颖', '特制品', '海鲜粉', '4', '120.0000'); INSERT INTO `sales` VALUES ('2017-04-14 00:00:00', '华东', '江苏省', '南京', '张颖', '饮料', '柳橙汁', '30', '1380.0000'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '点心', '棉花糖', '12', '374.7600'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '日用品', '浪花奶酪', '30', '75.0000'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '调味品', '海苔酱', '21', '442.0500'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华东', '江苏省', '南京', '郑建杰', '日用品', '义大利奶酪', '50', '1075.0000'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华北', '天津市', '天津', '孙林', '饮料', '苹果汁', '10', '162.0000'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华北', '天津市', '天津', '孙林', '海鲜', '龙虾', '20', '108.0000'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华南', '广东省', '深圳', '郑建杰', '海鲜', '墨鱼', '8', '500.0000'); INSERT INTO `sales` VALUES ('2017-04-15 00:00:00', '华南', '广东省', '深圳', '郑建杰', '特制品', '猪肉干', '10', '530.0000'); INSERT INTO `sales` VALUES ('2017-04-16 00:00:00', '华东', '山东省', '青岛', '张颖', '饮料', '汽水', '30', '101.2500'); INSERT INTO `sales` VALUES ('2017-04-16 00:00:00', '华东', '山东省', '青岛', '张颖', '点心', '山渣片', '21', '776.4750'); INSERT INTO `sales` VALUES ('2017-04-16 00:00:00', '华北', '河北省', '张家口', '王伟', '肉/家禽', '鸭肉', '35', '840.0000'); INSERT INTO `sales` VALUES ('2017-04-16 00:00:00', '华北', '河北省', '张家口', '王伟', '日用品', '苏澳奶酪', '24', '1320.0000'); INSERT INTO `sales` VALUES ('2017-04-16 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '谷类/麦片', '白米', '20', '760.0000'); INSERT INTO `sales` VALUES ('2017-04-16 00:00:00', '西南', '重庆市', '重庆', '郑建杰', '调味品', '甜辣酱', '12', '526.8000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '饮料', '牛奶', '100', '1425.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '调味品', '麻油', '70', '1494.5000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '肉/家禽', '鸭肉', '60', '5570.5500'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '东北', '辽宁省', '大连', '金士鹏', '日用品', '苏澳奶酪', '100', '4125.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '饮料', '苹果汁', '45', '810.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '海鲜', '龙虾', '80', '480.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '饮料', '汽水', '21', '94.5000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '谷类/麦片', '黄豆', '20', '665.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '河北省', '秦皇岛', '孙林', '日用品', '义大利奶酪', '16', '344.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '天津市', '天津', '王伟', '海鲜', '鱿鱼', '35', '665.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '天津市', '天津', '王伟', '饮料', '绿茶', '25', '6587.5000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华北', '天津市', '天津', '王伟', '日用品', '苏澳奶酪', '30', '1650.0000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华东', '江苏省', '南京', '金士鹏', '肉/家禽', '盐水鸭', '70', '2066.4000'); INSERT INTO `sales` VALUES ('2017-04-17 00:00:00', '华东', '江苏省', '南京', '金士鹏', '日用品', '黑奶酪', '36', '1166.4000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华东', '江苏省', '南京', '刘英玫', '点心', '花生', '15', '135.0000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '蚝油', '12', '233.4000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华东', '江苏省', '南京', '刘英玫', '调味品', '海鲜酱', '6', '171.0000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华北', '河北省', '张家口', '王伟', '饮料', '苹果汁', '10', '180.0000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华北', '河北省', '张家口', '王伟', '饮料', '蜜桃汁', '60', '1080.0000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华北', '河北省', '张家口', '王伟', '谷类/麦片', '糙米', '30', '420.0000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华北', '河北省', '张家口', '王伟', '肉/家禽', '鸡肉', '10', '74.5000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '海鲜', '龙虾', '7', '42.0000'); INSERT INTO `sales` VALUES ('2017-04-20 00:00:00', '华北', '河北省', '石家庄', '刘英玫', '日用品', '苏澳奶酪', '30', '1650.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华北', '天津市', '天津', '金士鹏', '饮料', '苏打水', '4', '60.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华东', '江苏省', '常州', '张颖', '海鲜', '虾米', '5', '73.6000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华东', '江苏省', '常州', '张颖', '谷类/麦片', '三合一麦片', '2', '14.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华东', '江苏省', '常州', '张颖', '日用品', '义大利奶酪', '30', '645.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华北', '河北省', '张家口', '张颖', '特制品', '烤肉酱', '20', '912.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华北', '河北省', '张家口', '张颖', '饮料', '蜜桃汁', '24', '432.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华北', '河北省', '张家口', '张颖', '点心', '薯条', '60', '1200.0000'); INSERT INTO `sales` VALUES ('2017-04-21 00:00:00', '华北', '河北省', '张家口', '张颖', '谷类/麦片', '小米', '28', '546.0000'); INSERT INTO `sales` VALUES ('2017-04-22 00:00:00', '华东', '江苏省', '南京', '郑建杰', '点心', '花生', '20', '200.0000'); INSERT INTO `sales` VALUES ('2017-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '牛奶', '30', '456.0000'); INSERT INTO `sales` VALUES ('2017-04-22 00:00:00', '华北', '天津市', '天津', '李芳', '调味品', '甜辣酱', '30', '1317.0000'); INSERT INTO `sales` VALUES ('2017-04-22 00:00:00', '华北', '河北省', '张家口', '王伟', '调味品', '蚝油', '15', '291.7500'); INSERT INTO `sales` VALUES ('2017-04-22 00:00:00', '华北', '河北省', '张家口', '王伟', '调味品', '海鲜酱', '4', '114.0000'); INSERT INTO `sales` VALUES ('2017-04-22 00:00:00', '华北', '天津市', '天津', '赵军', '日用品', '民众奶酪', '10', '210.0000'); INSERT INTO `sales` VALUES ('2017-04-23 00:00:00', '华东', '浙江省', '温州', '郑建杰', '点心', '山渣片', '12', '591.6000'); INSERT INTO `sales` VALUES ('2017-04-23 00:00:00', '华南', '广东省', '深圳', '孙林', '日用品', '浪花奶酪', '15', '37.5000'); INSERT INTO `sales` VALUES ('2017-04-23 00:00:00', '华南', '广东省', '深圳', '孙林', '特制品', '猪肉干', '24', '1272.0000'); INSERT INTO `sales` VALUES ('2017-04-23 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '德国奶酪', '20', '722.0000'); INSERT INTO `sales` VALUES ('2017-04-23 00:00:00', '华北', '天津市', '天津', '刘英玫', '日用品', '白奶酪', '15', '456.0000'); INSERT INTO `sales` VALUES ('2017-04-23 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '蜜桃汁', '18', '307.8000'); INSERT INTO `sales` VALUES ('2017-04-24 00:00:00', '华东', '江苏省', '南京', '金士鹏', '饮料', '苹果汁', '25', '337.5000'); INSERT INTO `sales` VALUES ('2017-04-24 00:00:00', '华东', '江苏省', '南京', '金士鹏', '调味品', '麻油', '30', '480.3750'); INSERT INTO `sales` VALUES ('2017-04-24 00:00:00', '华东', '江苏省', '南京', '金士鹏', '点心', '绿豆糕', '42', '525.0000'); INSERT INTO `sales` VALUES ('2017-04-24 00:00:00', '华北', '天津市', '天津', '李芳', '饮料', '牛奶', '10', '152.0000'); INSERT INTO `sales` VALUES ('2017-04-24 00:00:00', '华北', '天津市', '天津', '李芳', '日用品', '德国奶酪', '4', '121.6000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华北', '天津市', '天津', '刘英玫', '饮料', '柠檬汁', '50', '810.0000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华南', '广东省', '深圳', '金士鹏', '饮料', '汽水', '10', '36.0000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华南', '福建省', '厦门', '李芳', '饮料', '柳橙汁', '30', '1104.0000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华南', '福建省', '厦门', '李芳', '调味品', '海鲜酱', '10', '228.0000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华东', '江苏省', '南京', '王伟', '海鲜', '墨鱼', '35', '1750.0000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华东', '江苏省', '南京', '王伟', '日用品', '白奶酪', '20', '640.0000'); INSERT INTO `sales` VALUES ('2017-04-27 00:00:00', '华东', '江苏省', '南京', '王伟', '谷类/麦片', '黄豆', '25', '665.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '华北', '河北省', '张家口', '刘英玫', '日用品', '浪花奶酪', '10', '25.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '华北', '河北省', '张家口', '刘英玫', '饮料', '矿泉水', '20', '280.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '西南', '四川省', '成都', '金士鹏', '饮料', '汽水', '15', '67.5000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '西南', '四川省', '成都', '金士鹏', '点心', '巧克力', '15', '210.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '西南', '四川省', '成都', '金士鹏', '特制品', '猪肉干', '20', '1060.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '西南', '四川省', '成都', '金士鹏', '谷类/麦片', '小米', '20', '390.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '华东', '江苏省', '南京', '刘英玫', '特制品', '海鲜粉', '40', '1200.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '华东', '江苏省', '南京', '刘英玫', '肉/家禽', '鸭肉', '35', '840.0000'); INSERT INTO `sales` VALUES ('2017-04-28 00:00:00', '华东', '江苏省', '南京', '刘英玫', '日用品', '花奶酪', '50', '1700.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华东', '江苏省', '南京', '李芳', '饮料', '苏打水', '3', '45.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华东', '山东省', '青岛', '张雪眉', '点心', '花生', '3', '30.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华东', '山东省', '青岛', '张雪眉', '日用品', '花奶酪', '21', '714.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华东', '山东省', '青岛', '张雪眉', '调味品', '海鲜酱', '4', '114.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华南', '海南省', '海口', '王伟', '海鲜', '龙虾', '30', '180.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华南', '海南省', '海口', '王伟', '肉/家禽', '猪肉', '12', '468.0000'); INSERT INTO `sales` VALUES ('2017-04-29 00:00:00', '华南', '海南省', '海口', '王伟', '日用品', '花奶酪', '35', '1190.0000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '日用品', '花奶酪', '4', '136.0000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '秦皇岛', '王伟', '调味品', '辣椒粉', '10', '130.0000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华南', '广东省', '深圳', '郑建杰', '日用品', '花奶酪', '15', '510.0000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '张家口', '郑建杰', '肉/家禽', '盐水鸭', '10', '262.4000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '张家口', '郑建杰', '饮料', '苏打水', '12', '144.0000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '石家庄', '李芳', '饮料', '啤酒', '30', '420.0000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '石家庄', '李芳', '海鲜', '虾米', '40', '662.4000'); INSERT INTO `sales` VALUES ('2017-04-30 00:00:00', '华北', '河北省', '石家庄', '李芳', '海鲜', '虾子', '30', '260.5500'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '猪肉', '77', '2702.7000'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '虾子', '12', '115.8000'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '盐水鸭', '25', '738.0000'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '天津市', '天津', '张颖', '肉/家禽', '鸭肉', '4', '86.4000'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '天津市', '天津', '张颖', '点心', '绿豆糕', '55', '687.5000'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '海鲜', '黄鱼', '4', '77.6700'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '西南', '重庆市', '重庆', '刘英玫', '肉/家禽', '鸡肉', '20', '111.7500'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '点心', '饼干', '3', '52.3500'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '点心', '糖果', '42', '386.4000'); INSERT INTO `sales` VALUES ('2017-05-01 00:00:00', '华北', '河北省', '石家庄', '金士鹏', '饮料', '啤酒', '35', '490.0000'); INSERT INTO `sales` VALUES ('2017-05-04 00:00:00', '华北', '天津市', '天津', '张颖', '海鲜', '虾子', '9', '86.8500'); INSERT INTO `sales` VALUES ('2017-05-04 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '特制品', '烤肉酱', '8', '310.0800'); INSERT INTO `sales` VALUES ('2017-05-04 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '饮料', '柳橙汁', '36', '1407.6000'); INSERT INTO `sales` VALUES ('2017-05-04 00:00:00', '东北', '辽宁省', '大连', '刘英玫', '调味品', '辣椒粉', '28', '309.4000'); INSERT INTO `sales` VALUES ('2017-05-04 00:00:00', '华南', '广东省', '深圳', '张颖', '饮料', '运动饮料', '20', '360.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华南', '海南省', '海口', '王伟', '饮料', '苹果汁', '40', '612.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华南', '海南省', '海口', '王伟', '饮料', '牛奶', '20', '323.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华南', '海南省', '海口', '王伟', '点心', '饼干', '30', '444.9750'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华南', '海南省', '海口', '王伟', '日用品', '温馨奶酪', '20', '250.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华东', '江西省', '南昌', '张颖', '特制品', '海鲜粉', '15', '427.5000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华东', '江西省', '南昌', '张颖', '海鲜', '龙虾', '10', '57.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华北', '河北省', '张家口', '郑建杰', '饮料', '牛奶', '8', '152.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华北', '河北省', '张家口', '郑建杰', '海鲜', '虾子', '40', '386.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华北', '河北省', '张家口', '郑建杰', '点心', '玉米饼', '22', '357.5000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华北', '河北省', '张家口', '郑建杰', '谷类/麦片', '黄豆', '130', '4322.5000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华南', '广东省', '深圳', '王伟', '日用品', '民众奶酪', '10', '210.0000'); INSERT INTO `sales` VALUES ('2017-05-05 00:00:00', '华南', '广东省', '深圳', '王伟', '饮料', '汽水', '20', '90.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '浙江省', '温州', '金士鹏', '点心', '饼干', '14', '232.0850'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '江苏省', '常州', '刘英玫', '饮料', '牛奶', '10', '161.5000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '江苏省', '常州', '刘英玫', '海鲜', '蚵', '30', '306.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '江苏省', '常州', '刘英玫', '饮料', '柠檬汁', '2', '30.6000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '江苏省', '常州', '郑建杰', '调味品', '酱油', '20', '375.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '江苏省', '常州', '郑建杰', '特制品', '沙茶', '20', '348.7500'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华东', '江苏省', '常州', '郑建杰', '点心', '糖果', '10', '69.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '饮料', '牛奶', '24', '364.8000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '蕃茄酱', '4', '40.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '盐', '1', '22.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '酱油', '1', '24.5000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '特制品', '海鲜粉', '1', '28.5000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '胡椒粉', '2', '72.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '海鲜', '蟹', '1', '31.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '日用品', '德国奶酪', '2', '72.2000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '海鲜', '龙虾', '4', '24.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '特制品', '沙茶', '1', '22.5525'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '点心', '饼干', '2', '33.8530'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '点心', '桂花糕', '1', '77.7600'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '谷类/麦片', '燕麦', '2', '18.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '日用品', '白奶酪', '1', '32.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '饮料', '运动饮料', '2', '34.2000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '海鲜', '虾子', '3', '28.9500'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '海鲜', '蚵', '3', '35.2800'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '谷类/麦片', '三合一麦片', '2', '14.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '肉/家禽', '鸭肉', '2', '48.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '日用品', '花奶酪', '2', '63.9200'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '谷类/麦片', '黄豆', '2', '64.5050'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '肉松', '1', '17.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '海鲜', '海哲皮', '2', '29.7000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '饮料', '浓缩咖啡', '4', '31.0000'); INSERT INTO `sales` VALUES ('2017-05-06 00:00:00', '华南', '广东省', '深圳', '张颖', '调味品', '辣椒粉', '2', '26.0000');