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Toshiba TEC reduces inventory differences at EDEKA Hessenring with QlikView
技术
- 分析与建模 - 实时分析
适用行业
- 零售
适用功能
- 销售与市场营销
用例
- 减废预测
- 欺诈识别
服务
- 数据科学服务
- 系统集成
挑战
EDEKA Hessenring, part of the EDEKA Group, was facing significant inventory discrepancies amounting to €4.5 billion annually across the German retail industry. These discrepancies were largely due to organizational weaknesses and employee crime. The company's auditing department, consisting of only four people, was responsible for auditing approximately 4,300 employees. The auditing process was heavily reliant on the experience of the employees and required a significant amount of effort. With a data volume of more than 36 million lines of accounting data per month for 73 markets and branches, this was a near impossible task. EDEKA Hessenring needed an analytical tool that could evaluate all the transaction data according to various criteria both systematically and quickly.
关于客户
TOSHIBA TEC Europe is one of the leading manufacturers of information systems for business and industry. They offer a comprehensive service package to their customers, which includes consultation, system development, system installation, operation, and management of cashier systems, cash registers, scales, barcode printers, peripheral, and software information systems. One of their clients is the EDEKA Hessenring Group, part of Germany's number one food retailer, the EDEKA Group. EDEKA Hessenring focuses on north and central Hessia, western Thuringia, and southern Lower Saxony. The EDEKA Group has a large and varied range of equipment and a highly varied system landscape.
解决方案
TOSHIBA TEC introduced an efficient auditing tool, storeMate loss prevention, based on QlikView, to permanently reduce costs associated with improper postings and differences in inventory. The solution was implemented within the EDEKA Group quickly and easily, and the transactions are now evaluated at the click of a mouse without special database knowledge or training thanks to the intuitive user interface. The solution can rapidly analyze enormous amounts of data ranging from 15 to 20 terabytes, and spontaneously add additional dimensions and indexes to change the analytical perspective at any time. Conventional review criteria such as cancellations, empty packages, or personnel purchases are already predefined in “storeMate loss prevention” and can be supplemented at any time with additional criteria. Since all the data is continuously being loaded into the working memory, all the data from the branch level can be efficiently analyzed down to individual receipts using just one application.
运营影响
数量效益
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