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French Tech Leader Cegid Generates €15M Additional Volume Annually with AI-Driven Decisions
技术
- 分析与建模 - 预测分析
- 分析与建模 - 机器学习
适用功能
- 商业运营
用例
- 质量预测分析
- 补货预测
服务
- 数据科学服务
挑战
Cegid 是一家提供云服务和管理软件解决方案的法国科技公司,它面临的挑战是在更短的时间内创建更多模型,同时尽量减少所需的技术技能和资源。该公司为 150 个国家/地区的 35 万客户提供服务,收入为 6.32 亿欧元。Cegid 的预测分析团队面临着满足频繁收购带来的不断增长的需求的压力。该团队的任务是解决越来越多的业务挑战,包括预测发票付款的可能性以及客户添加服务的倾向。
关于客户
Cegid 是现代数字化转型的主要参与者,为企业提供云服务和管理软件解决方案。该公司创建了创新、有针对性的业务管理解决方案,旨在帮助零售和人力资源(薪酬和人才管理)、工资单、税务和 CPA 领域的专业人士实现目标并实现更多目标。Cegid 为 150 个国家/地区的 350,000 名客户提供服务,创造了 632 欧元的收入。该公司以快速增长和频繁收购而闻名。
解决方案
Cegid 采用 DataRobot AI 平台实现端到端的分析生命周期自动化。该平台是在葡萄牙 Passio Consulting 的帮助下部署的。该解决方案使用应用程序编程接口 (API) 与 Amazon Web Services 和公司的数据湖集成。然后在 Microsoft PowerBI 和 Excel 中分析洞察。该平台主要应用于 Cegid 的发票保理业务。使用 AI 平台,Cegid 可以获得必要的最终客户详细信息,以决定是否支付或拒绝选定的发票。通过付款预测模型 (PPM),他们评估每张发票的付款概率。分析还帮助他们设定最佳利率。
运营影响
数量效益
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