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Mueller, Inc. Using enhanced cognitive analytics to gain a competitive edge by finding valuable answers to questions not yet asked
技术
- 分析与建模 - 大数据分析
- 分析与建模 - 预测分析
适用行业
- 建筑与基础设施
适用功能
- 离散制造
- 质量保证
用例
- 预测性维护
- 过程控制与优化
- 视觉质量检测
服务
- 数据科学服务
- 系统集成
挑战
Mueller, Inc. 是一家专门从事金属建筑和屋顶产品的公司,它面临着挑战。为了保持竞争力,它需要像小公司一样灵活,像大型竞争对手一样具有可扩展性。然而,其现有的商业智能平台缺乏从非结构化数据中获取洞察力的能力。由于公司位于一个人才资源有限的小镇,因此还面临着技能差距。Mueller 必须在坚持自己的价值观和身份与将总部迁往大城市之间做出选择,在那里它可以通过雇佣更多人来解决问题。该公司选择留在西德克萨斯州,这意味着它需要找到更智能的工作方式。
关于客户
Mueller, Inc. 是一家专门生产金属建筑和屋顶产品的公司。该公司总部位于德克萨斯州巴林杰,该镇人口不到 4,000 人。由于当地人才资源匮乏,该公司学会了依靠技术来填补技能缺口。Mueller 通过将分析解决方案嵌入其业务流程,建立了一个数据驱动型组织。如今,该公司通过德克萨斯州、新墨西哥州、路易斯安那州和俄克拉荷马州的 35 个地点直接向美国西南部各地的消费者销售其产品。
解决方案
Mueller 决定利用 IBM Watson Analytics 的强大功能,这是一种最先进的认知分析解决方案。与传统的商业智能解决方案相比,该解决方案具有几个明显的优势。它可以分析新数据集,找出 Mueller 无法识别的趋势和模式,提供前所未有的洞察力并回答公司尚未考虑的问题。该解决方案还可以理解自然语言,这意味着业务线用户无需接受统计培训即可使用它。为了测试这项新技术,Mueller 决定在 Watson Analytics 中开发一种新的收入预测模型,并将结果与使用更传统的数据挖掘工具开发的现有模型进行比较。
运营影响
数量效益
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