公司规模
Large Corporate
地区
- Europe
国家
- United Kingdom
产品
- HPE SimpliVity
- HPE Synergy
- HPE Apollo 2000
- HPE Apollo 6500
- HPE Nimble Storage
- HPE Primera
- HPE OneView
- HPE InfoSight
技术栈
- Data Analytics
- Virtualization
- Storage Management
- Predictive Analytics
- High-Performance Computing
实施规模
- Enterprise-wide Deployment
影响指标
- Innovation Output
- Productivity Improvements
技术
- 分析与建模 - 预测分析
- 分析与建模 - 实时分析
- 基础设施即服务 (IaaS) - 云计算
- 基础设施即服务 (IaaS) - 云存储服务
适用功能
- 产品研发
- 质量保证
用例
- 网络安全
- 边缘计算与边缘智能
- 预测性维护
- 实时定位系统 (RTLS)
服务
- 云规划/设计/实施服务
- 数据科学服务
- 硬件设计与工程服务
- 软件设计与工程服务
- 系统集成
关于客户
Oracle Red Bull Racing is a Formula One racing team based in the United Kingdom. The team is composed of hundreds of people, including technicians, engineers, and drivers, all working towards the common goal of winning races. The team uses data-driven insights to develop and optimize their cars, making thousands of changes to the car's design between races. The team operates in a highly competitive and regulated environment, with new Formula One design regulations and established cost caps requiring them to be highly efficient in their use of resources. The team's success is heavily dependent on their ability to effectively use data and technology to drive performance improvements.
挑战
Oracle Red Bull Racing team is in a constant race against time to develop and optimize their cars for each of the 22 races in the Formula One season. The team has to make thousands of changes to the car's design between races, each of which needs to be simulated, manufactured, and tested. The team also has to work within new Formula One design regulations and established cost caps, making efficiency a top priority. Furthermore, changes in F1 rules limit the number of aerodynamics testing hours each team can run per week, making it crucial to optimize every second and achieve peak application performance.
解决方案
To achieve maximum efficiency and performance, the Red Bull Racing team partnered with HPE. They implemented a range of HPE products including HPE SimpliVity, HPE Synergy, HPE Apollo 2000, HPE Apollo 6500, HPE Nimble Storage, and HPE Primera. These solutions provide a software-defined, composable platform that allows the team to quickly adapt to changes and maximize IT usage. The high-density platforms also support the team's quest for efficiency, saving money with reduced power, cooling, and footprint costs. HPE InfoSight delivers AI-enabled predictive analytics to prevent issues, while HPE Primera guarantees 100% availability. The team also uses HPE SimpliVity as the core of their mobile data center, providing post-processing of race telemetry data and real-time insight to optimize car setup and support in-race decision-making.
运营影响
数量效益
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