地区
- America
国家
- United States
产品
- DataRobot AI Cloud
- MLOps
- AutoML
技术栈
- Machine Learning
- AI Cloud Platform
- Bioinformatics
实施规模
- Enterprise-wide Deployment
影响指标
- Productivity Improvements
- Innovation Output
技术
- 分析与建模 - 机器学习
- 平台即服务 (PaaS) - 数据管理平台
适用功能
- 产品研发
- 质量保证
用例
- 预测性维护
- 机器状态监测
服务
- 数据科学服务
- 云规划/设计/实施服务
关于客户
FOXO Technologies 是一家生物技术公司,致力于利用表观遗传学让所有人都能长寿。他们使用先进的机器学习来寻找对人类健康、保健、疾病和衰老进行分类的模式。他们的使命是帮助人们活得更长寿、更健康。他们收集了超过 860,000 个 DNA 甲基化探针的定量数据,这些探针对应于人类基因组上的不同位点。他们的发现有助于承保决策和死亡率预测,彻底改变了保险行业,并消除了侵入性血液检测的需要。
挑战
FOXO Technologies 是一家生物技术公司,旨在利用表观遗传学让所有人都能长寿。他们使用机器学习来检查数千个模型,以找到对人类健康、保健、疾病和衰老进行分类的 DNA 甲基化模式。他们的使命是帮助人们活得更长寿、更健康。然而,FOXO 的数据科学团队发现,当他们试图基于 860,000 个 DNA 探针构建数千个预测模型时,扩展起来具有挑战性。他们需要一种解决方案来帮助他们大规模构建、微调、部署和管理生产中的模型。
解决方案
FOXO 求助于 DataRobot 的 AI 云平台来应对挑战。该平台允许 FOXO 数据科学家在一个地方构建、微调、部署和管理生产模型。这大大提高了团队的效率。除了提高效率外,FOXO 还看重 DataRobot 的高级别安全性和隐私性,这对公司及其人寿保险合作伙伴来说至关重要。DataRobot 实现了流程自动化,缩短了构建和管理每个模型的时间。这使他们的团队成员能够专注于建模的更具战略性的方面,从而提高他们的工作满意度,并帮助吸引和留住数据科学人才。
运营影响
数量效益
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