通过统计功率控制提高大型数据中心的容量

Guosai Wang, Shuhao Wang, Bing Luo, Weisong Shi, Yinghan Zhu, Wenjun Yang, Dianming Hu, Longbo Huang, Xin Jin, W. Xu
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引用次数: 24

摘要

考虑到大规模数据中心的高成本,一个重要的设计目标是充分利用可用的电力资源,以最大限度地提高计算能力。在本文中,我们提出了一种新的电源管理系统Ampere,用于数据中心通过过度配置服务器数量来增加计算能力。我们没有使用降低作业运行性能的功率上限,而是使用统计控制方法通过间接影响工作负载调度来实现动态电源管理,这可以极大地降低电源违规的风险。Ampere没有成为已经过于复杂的调度器的一部分,而是仅通过两个基本api与调度器交互。我们没有在机架级别上进行功率控制,而是在行级别上施加功率约束,这将为过度供应提供更多空间。我们已经在生产数据中心中实现并部署了Ampere。在400多台服务器上进行的控制实验表明,通过增加17%的服务器,我们可以将数据中心的吞吐量提高15%,从而在不影响工作性能的情况下显著节省成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Increasing large-scale data center capacity by statistical power control
Given the high cost of large-scale data centers, an important design goal is to fully utilize available power resources to maximize the computing capacity. In this paper we present Ampere, a novel power management system for data centers to increase the computing capacity by over-provisioning the number of servers. Instead of doing power capping that degrades the performance of running jobs, we use a statistical control approach to implement dynamic power management by indirectly affecting the workload scheduling, which can enormously reduce the risk of power violations. Instead of being a part of the already over-complicated scheduler, Ampere only interacts with the scheduler with two basic APIs. Instead of power control on the rack level, we impose power constraint on the row level, which leads to more room for over provisioning. We have implemented and deployed Ampere in our production data center. Controlled experiments on 400+ servers show that by adding 17% servers, we can increase the throughput of the data center by 15%, leading to significant cost savings while bringing no disturbances to the job performance.
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