地区
- Pacific
国家
- Australia
产品
- Qlik Sense
技术栈
- Qlik’s associative analytics
影响指标
- Customer Satisfaction
- Productivity Improvements
技术
- 分析与建模 - 实时分析
适用功能
- 离散制造
- 采购
用例
- 补货预测
服务
- 数据科学服务
关于客户
Multipack LJM is a packaging service provider based in Australia. They cater to a diverse range of products including food, pharmaceuticals, and fast-moving consumer goods (FMCG). Their clientele includes major brands such as Nestle, Kellogg’s, and Coca-Cola. As a packaging service provider, Multipack LJM is responsible for adjusting and optimizing production to meet the evolving needs of their clients. This includes managing the procurement of raw materials in line with the changing requirements of their clients.
挑战
Multipack LJM is a company that provides packaging services for a diverse range of products including food, pharma and FMCG, with major brands such as Nestle, Kellogg’s and Coca-Cola as their clients. The company faces the challenge of responding to changes in demand in real-time. This involves adjusting and optimizing production to meet the evolving needs of their clients. The challenge is further compounded by the need to manage the procurement of raw materials in line with the changing requirements of their clients.
解决方案
To address the challenge of real-time demand response, Multipack LJM uses Qlik Sense. This tool allows them to simulate the impact of fluctuations and instantly see how it would affect production. Qlik’s associative analytics is a key feature of the solution, providing active business intelligence for clients such as Nestle, who have their own view of the app to monitor production. This solution enables Multipack LJM to respond to changes in demand in real-time, adjusting and optimizing procurement of raw materials for their client’s changing requirements.
运营影响
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