技术
- 功能应用 - 库存管理系统
适用行业
- 教育
- 设备与机械
适用功能
- 采购
- 仓库和库存管理
用例
- 库存管理
- 拣选/分拣/定位
关于客户
Senior.com 是一家以产品和服务为基础的公司,成立于 2005 年。该公司专注于为 55 岁及以上的老年人提供合适的工具和教育,旨在创造一个让老年人长寿的环境,同时改善生活质量他们的生活质量。 2016年,该公司转向电子商务,导致其管理的供应商和SKU数量迅速扩大。这种扩张给库存管理带来了重大挑战,他们通过实施 Finale Inventory 的采购订单来解决这一问题。
挑战
Senior.com 是一家专注于为 55 岁及以上老年人提供产品和服务的公司,在 2016 年转型为电子商务时,在管理库存方面面临着重大挑战。最初,该公司通过电子表格和手动盘点来管理库存。然而,随着公司的发展,这种方法变得越来越低效,并且无法跟上公司有效运营所需的库存量。该公司最初只有几个供应商和 SKU,但很快就扩张了,这使得电子表格方法更加不够用。此外,该公司还发现供应商对他们多收了账单,并发现了价值近 50,000 美元的多收发票。
解决方案
Senior.com 采用 Finale Inventory 的采购订单来更有效地管理库存。该解决方案使他们能够为每个 SKU 添加协商成本信息,从而更容易识别不准确的供应商账单。该公司还使用 Finale Inventory 获取准确、最新的库存详细信息,这成为其日常运营的一个重要方面。客户支持团队尤其严重依赖 Finale Inventory。除了准确的库存水平之外,Senior.com 还利用了 Finale Inventory 中的报告功能。这些功能,包括库存评估和各种其他库存报告,帮助他们更有效地管理库存。 Senior.com 的 Finale Inventory 实施是无缝的,客户服务是一个主要卖点。
运营影响
数量效益
Case Study missing?
Start adding your own!
Register with your work email and create a new case study profile for your business.
相关案例.
![](/files/casestudy/Smart-Water-Filtration-Systems.png)
Case Study
Smart Water Filtration Systems
Before working with Ayla Networks, Ozner was already using cloud connectivity to identify and solve water-filtration system malfunctions as well as to monitor filter cartridges for replacements.But, in June 2015, Ozner executives talked with Ayla about how the company might further improve its water systems with IoT technology. They liked what they heard from Ayla, but the executives needed to be sure that Ayla’s Agile IoT Platform provided the security and reliability Ozner required.
![](/files/casestudy/IoT-enabled-Fleet-Management-with-MindSphere.png)
Case Study
IoT enabled Fleet Management with MindSphere
In view of growing competition, Gämmerler had a strong need to remain competitive via process optimization, reliability and gentle handling of printed products, even at highest press speeds. In addition, a digitalization initiative also included developing a key differentiation via data-driven services offers.
![](/files/casestudy/Predictive-Maintenance-for-Industrial-Chillers.png)
Case Study
Predictive Maintenance for Industrial Chillers
For global leaders in the industrial chiller manufacturing, reliability of the entire production process is of the utmost importance. Chillers are refrigeration systems that produce ice water to provide cooling for a process or industrial application. One of those leaders sought a way to respond to asset performance issues, even before they occur. The intelligence to guarantee maximum reliability of cooling devices is embedded (pre-alarming). A pre-alarming phase means that the cooling device still works, but symptoms may appear, telling manufacturers that a failure is likely to occur in the near future. Chillers who are not internet connected at that moment, provide little insight in this pre-alarming phase.
![](/files/casestudy/Premium-Appliance-Producer-Innovates-with-Internet-of-Everything.png)
Case Study
Premium Appliance Producer Innovates with Internet of Everything
Sub-Zero faced the largest product launch in the company’s history:It wanted to launch 60 new products as scheduled while simultaneously opening a new “greenfield” production facility, yet still adhering to stringent quality requirements and manage issues from new supply-chain partners. A the same time, it wanted to increase staff productivity time and collaboration while reducing travel and costs.
![](/files/casestudy/Integration-of-PLC-with-IoT-for-Bosch-Rexroth.png)
Case Study
Integration of PLC with IoT for Bosch Rexroth
The application arises from the need to monitor and anticipate the problems of one or more machines managed by a PLC. These problems, often resulting from the accumulation over time of small discrepancies, require, when they occur, ex post technical operations maintenance.
![](/files/casestudy/Data-Gathering-Solution-for-Joy-Global.png)
Case Study
Data Gathering Solution for Joy Global
Joy Global's existing business processes required customers to work through an unstable legacy system to collect mass volumes of data. With inadequate processes and tools, field level analytics were not sufficient to properly inform business decisions.