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Cloud-based healthcare solution for Royal Philips
技术
- 基础设施即服务 (IaaS) - 云计算
适用行业
- 医疗保健和医院
挑战
皇家飞利浦希望在中国推出其基于云的医疗保健解决方案 HealthSuite 数字平台,以提供服务以帮助应对与城市化和人口增长相关的挑战。飞利浦希望通过结合移动、云计算和大数据技术来实现这一目标。为了将这个平台和产品推向市场,飞利浦需要在中国具备云计算和本地技术服务能力,以及能够处理用户请求的灵活 IT 基础设施。
客户
皇家飞利浦
关于客户
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解决方案
阿里云随后签订协议,为飞利浦 HealthSuite 数字平台在中国提供 IT 基础设施服务。飞利浦利用阿里云弹性计算服务 (ECS)、对象存储服务 (OSS)、RDS 版云数据库以及其他安全服务和无线通信基础设施为客户提供服务。
收集的数据
Setup Time
运营影响
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