WO2017124568A1 - 服装店大数据分析备货的方法以及备货系统 - Google Patents

服装店大数据分析备货的方法以及备货系统 Download PDF

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Publication number
WO2017124568A1
WO2017124568A1 PCT/CN2016/071927 CN2016071927W WO2017124568A1 WO 2017124568 A1 WO2017124568 A1 WO 2017124568A1 CN 2016071927 W CN2016071927 W CN 2016071927W WO 2017124568 A1 WO2017124568 A1 WO 2017124568A1
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clothing store
stocking
unit
user
daily
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PCT/CN2016/071927
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English (en)
French (fr)
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赵政荣
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赵政荣
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Priority to PCT/CN2016/071927 priority Critical patent/WO2017124568A1/zh
Publication of WO2017124568A1 publication Critical patent/WO2017124568A1/zh

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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q10/00Administration; Management
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q10/00Administration; Management
    • G06Q10/08Logistics, e.g. warehousing, loading or distribution; Inventory or stock management

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  • the invention belongs to the field of the Internet, and in particular relates to a method for analyzing and stocking large data in a clothing store and a stocking system.
  • the present invention is directed to the situation that the current clothing store can only formulate a stocking plan through personal experience, and it is necessary to provide a kind of Through the big data analysis technology, the historical sales data of the clothing store is analyzed, and the stocking information is recommended to the user, so that the user can more more suitable stocking, reduce the storage pressure of the merchant, and increase the sales profit.
  • a method for analyzing and stocking a big data in a clothing store comprising the following steps:
  • the data of the style, color and size of the previous cycle is pushed to the user to provide reference for the user to stock up.
  • the embodiment of the invention further provides a stocking system, the stocking system comprising:
  • Recording unit uploading unit, analyzing unit, recommending unit, wherein:
  • a recording unit located locally, for recording a daily merchandise sales list of the clothing store, and recording the purchase date of the clothing store;
  • the uploading unit is located at a local location, and the input end thereof is connected to the output unit of the recording unit, and is configured to upload the daily sales list of the clothing store to the cloud;
  • An analysis unit located in the cloud, is configured to count sales quantities of different styles, colors, and sizes of the products according to the daily merchandise sales list of the clothing store history;
  • the recommendation unit is located in the cloud, and the input end thereof is connected to the output end of the analysis unit, and is used for pushing the data of the style, color and size of the previous period to the user when the clothing store purchase date, and providing reference for the user to stock up.
  • the invention analyzes the historical sales data of the clothing store through the big data analysis technology, and recommends the stocking information to the user, thereby allowing the user to more targeted stocking, reducing the storage pressure of the merchant and increasing the sales profit.
  • FIG. 1 is a schematic flow chart of a method for analyzing and stocking big data in a clothing store according to an embodiment of the present invention
  • FIG. 2 is a schematic structural diagram of a stocking system according to an embodiment of the present invention.
  • FIG. 1 is a schematic flow chart of a method for analyzing and stocking large data in a clothing store according to an embodiment of the present invention. For the convenience of description, only parts related to the embodiment of the present invention are shown.
  • step S100 the clothing store daily merchandise sales list is recorded, and the clothing store purchase date is recorded.
  • step S101 the clothing store daily sales list is uploaded to the cloud.
  • step S103 In the clothing store purchase date, the user pushes the data of the style, color and size of the previous cycle to provide reference for the user to stock up.
  • the invention analyzes the historical sales data of the clothing store through the big data analysis technology, and recommends the stocking information to the user, thereby allowing the user to more targeted stocking, reducing the storage pressure of the merchant and increasing the sales profit.
  • FIG. 2 is a schematic structural diagram of a stocking system provided by an embodiment of the present invention, where the stocking system includes:
  • the recording unit 21 is located locally and is used for recording a daily merchandise sales list of the clothing store, and recording the purchase date of the clothing store;
  • the uploading unit 22 is located at the local location, and its input terminal and recording unit 21 The output end is connected to upload the daily sales list of the clothing store to the cloud;
  • Analysis unit 23 located in the cloud, for counting the sales volume of different styles, colors, and sizes of the products according to the daily merchandise sales list of the clothing store history;
  • the output terminal is connected to push the data of the style, color and size of the previous period to the user when the clothing store purchase date, and provide reference for the user to stock up.
  • the working principle is: the user records the daily merchandise sales list of the clothing store in the recording unit 21, records the purchase date of the clothing store, and uploads the unit 22 Uploading the clothing store daily sales list to the cloud, and the analyzing unit 23 counts the sales quantity of different styles, colors, and sizes of the products according to the clothing store historical daily product sales list, and the recommendation unit 24
  • the clothing store purchase date the data of the style, color and size of the previous cycle is pushed to the user to provide reference for the user to stock up.
  • the invention analyzes the historical sales data of the clothing store through the big data analysis technology, and recommends the stocking information to the user, thereby allowing the user to more targeted stocking, reducing the storage pressure of the merchant and increasing the sales profit.

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  • Engineering & Computer Science (AREA)
  • Economics (AREA)
  • Quality & Reliability (AREA)
  • Entrepreneurship & Innovation (AREA)
  • Human Resources & Organizations (AREA)
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Abstract

本发明属于互联网领域,提供了一种服装店大数据分析备货的方法以及备货系统,所述方法包括:记录服装店每日商品销售清单,记录服装店进货日期; 向云端上传所述服装店每日销售清单;根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量; 在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。该发明通过大数据分析技术,分析服装店历史销售数据,向用户推荐备货信息,从而让用户更加有针对性的备货,减少商家的储货压力,提高销售利润。

Description

服装店大数据分析备货的方法以及备货系统 技术领域
本发明属于互联网领域,尤其是涉及 一种服装店大数据分析备货的方法以及备货系统 。
背景技术
对于服装店备货,也许很多商家都有过'郁闷'的经历:由于计划不周,备货不足,在产品销售最快的时候,盘点仓库,却发现没产品可卖了,真乃要害时刻'掉链子',该挣的钱没有挣足,让人扼腕叹息;相反的是,也有的商家,由于对市场形势估计过于乐观,旺季时进行了大批量的存货,以致存货大于销售,造成产品积压,过了节后,又不得不咬着牙来处理,让人很'受伤'。由此可见,商家备货,既不能过多,也不能过少,而要适中,那么,如何才能找到一个合理的备货平衡点呢
我们都知道,在例如五一、国庆等国家法定假期的时候,服装店的产品销量肯定会上升,所以服装店要提前做好备货准备,但备货要合理,不能过多,也不能过少,因为过多,容易造成积压形成库存,过少又有可能错过获得更多利益的机会。所以,针对节假日营销,服装要找到一个合理的备货平衡点才行。
但是目前,影响服装店销售量的因素有很多,例如目前流行款式、气候、节假日等,而且面对服装店的每日增长的海量销售数据,普通计算机在统计起来这些海量数据时存在很多问题,首先服装店内使用电脑一般都是普通家用电脑,因为硬件限制的关系,处理起这些海量数据时,会特别慢,无法及时为商家提供实时参考。由于普通家用电脑硬盘空间局限,无法完整的存储这些数据。由于这些因素的影响,商家往往只能通过个人经验,预估出一个进货大概的值。
进入大数据时代,网络平台样式和消费者购物习惯多样化,需要对消费者数据的采集和行为的分析逐步扩展至更多数据源,结合购物网站、其他网臾浏览信息、社交媒体平台信息、移动终端、 搜索 引擎等多个平台去接触消费者,挖掘数据,从而进行综合评估和分析。
综上,需要针对当前服装店只能通过个人经验制定备货计划的情况,需要提供一种 通过大数据分析技术,分析服装店历史销售数据,向用户推荐备货信息,从而让用户更加有针对性的备货,减少商家的储货压力,提高销售利润 。
技术问题
本发明实施针对当前服装店只能通过个人经验制定备货计划的情况,需要提供一种 通过大数据分析技术,分析服装店历史销售数据,向用户推荐备货信息,从而让用户更加有针对性的备货,减少商家的储货压力,提高销售利润 。
技术解决方案
本发明是这样实现的: 一种服装店大数据分析备货的方法 ,包括以下步骤:
记录服装店每日商品销售清单,记录服装店进货日期 ;
向云端上传所述服装店每日销售清单;
根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量 ;
在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
本发明实施例还提供了备货系统,所述备货系统包括:
记录单元,上传单元,分析单元,推荐单元,其中:
记录单元,位于本地,用于记录服装店每日商品销售清单,记录服装店进货日期;
上传单元,位于本地,其输入端与记录单元输出端连接,用于向云端上传所述服装店每日销售清单;
分析单元,位于云端,用于根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量;
推荐单元,位于云端,其输入端与分析单元输出端连接,用于在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
有益效果
该发明通过大数据分析技术,分析服装店历史销售数据,向用户推荐备货信息,从而让用户更加有针对性的备货,减少商家的储货压力,提高销售利润。
附图说明
图 1 是本发明实施例提供的一种服装店大数据分析备货的方法 的流程示意图 ;
图 2 是本发明实施例提供的备货系统的结构示意图。
本发明的实施方式
为了使本发明的目的、技术方案及优点更加清楚明白,以下结合附图及实施例,对本发明进行进一步详细说明。应当理解,此处所描述的具体实施例仅仅用以解释本发明,并不用于限定本发明。
图 1 是本发明实施例提供的一种服装店大数据分析备货的方法 的流程示意图 ,为了便于说明,只示出了与本发明实施例相关的部分。
在步骤 S100 中 , 记录服装店每日商品销售清单,记录服装店进货日期。
该技术为现有技术,目前服装店通常都配有销售系统,销售系统记录了每日的销售清单。
在步骤 S101 中 , 向云端上传所述服装店每日销售清单。
在步骤 S102 中,根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量。
在步骤 S103 中,在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
该发明通过大数据分析技术,分析服装店历史销售数据,向用户推荐备货信息,从而让用户更加有针对性的备货,减少商家的储货压力,提高销售利润。
图 2 是本发明实施例提供的备货系统的结构示意图,所述备货系统包括:
记录单元 21 ,上传单元 22 ,分析单元 23 ,推荐单元 24 ,其中:
记录单元 21 ,位于本地,用于记录服装店每日商品销售清单,记录服装店进货日期;
上传单元 22 ,位于本地,其输入端与记录单元 21 输出端连接,用于向云端上传所述服装店每日销售清单;
分析单元 23 ,位于云端,用于根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量;
推荐单元 24 ,位于云端,其输入端与分析单元 23 输出端连接,用于在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
其工作原理是:用户在记录单元 21 记录服装店每日商品销售清单,记录服装店进货日期,上传单元 22 向云端上传所述服装店每日销售清单,分析单元 23 根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量,推荐单元 24 在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
该发明通过大数据分析技术,分析服装店历史销售数据,向用户推荐备货信息,从而让用户更加有针对性的备货,减少商家的储货压力,提高销售利润。
以上仅为本发明的较佳实施例而已,并不用以限制本发明,凡在本发明的精神和原则之内所作的任何修改、等同替换和改进等,均应包含在本发明的保护范围之内。

Claims (2)

  1. 一种服装店大数据分析备货的方法,其特征在于,所述方法包括如下步骤:
    记录服装店每日商品销售清单,记录服装店进货日期 ;
    向云端上传所述服装店每日销售清单;
    根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量 ;
    在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
  2. 一种备货系统,其特征在于,所述备货系统包括:
    记录单元,上传单元,分析单元,推荐单元,其中:
    记录单元,位于本地,用于记录服装店每日商品销售清单,记录服装店进货日期;
    上传单元,位于本地,其输入端与记录单元输出端连接,用于向云端上传所述服装店每日销售清单;
    分析单元,位于云端,用于根据所述服装店历史每日商品销售清单,统计商品不同款式、颜色、尺码的销售数量;
    推荐单元,位于云端,其输入端与分析单元输出端连接,用于在所述服装店进货日期时,向用户推送上一周期款式、颜色、尺码的数据,为用户备货提供参考。
PCT/CN2016/071927 2016-01-24 2016-01-24 服装店大数据分析备货的方法以及备货系统 WO2017124568A1 (zh)

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