Power provisioning for a warehouse-sized computer

Xiaobo Fan, W. Weber, L. Barroso
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引用次数: 2109

Abstract

Large-scale Internet services require a computing infrastructure that can beappropriately described as a warehouse-sized computing system. The cost ofbuilding datacenter facilities capable of delivering a given power capacity tosuch a computer can rival the recurring energy consumption costs themselves.Therefore, there are strong economic incentives to operate facilities as closeas possible to maximum capacity, so that the non-recurring facility costs canbe best amortized. That is difficult to achieve in practice because ofuncertainties in equipment power ratings and because power consumption tends tovary significantly with the actual computing activity. Effective powerprovisioning strategies are needed to determine how much computing equipmentcan be safely and efficiently hosted within a given power budget. In this paper we present the aggregate power usage characteristics of largecollections of servers (up to 15 thousand) for different classes ofapplications over a period of approximately six months. Those observationsallow us to evaluate opportunities for maximizing the use of the deployed powercapacity of datacenters, and assess the risks of over-subscribing it. We findthat even in well-tuned applications there is a noticeable gap (7 - 16%)between achieved and theoretical aggregate peak power usage at the clusterlevel (thousands of servers). The gap grows to almost 40% in wholedatacenters. This headroom can be used to deploy additional compute equipmentwithin the same power budget with minimal risk of exceeding it. We use ourmodeling framework to estimate the potential of power management schemes toreduce peak power and energy usage. We find that the opportunities for powerand energy savings are significant, but greater at the cluster-level (thousandsof servers) than at the rack-level (tens). Finally we argue that systems needto be power efficient across the activity range, and not only at peakperformance levels.
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仓库大小的计算机的电源供应
大规模的互联网服务需要一个计算基础设施,可以恰当地描述为一个仓库大小的计算系统。建造能够向这样一台计算机提供给定功率的数据中心设施的成本可以与重复的能源消耗成本相媲美。因此,有强烈的经济动机使设施尽可能接近最大容量运行,以便能够最好地摊销非经常性设施成本。这在实践中很难实现,因为设备额定功率存在不确定性,而且功耗往往随实际计算活动而显著变化。需要有效的电力供应策略来确定在给定的电力预算范围内可以安全有效地托管多少计算设备。在本文中,我们展示了在大约六个月的时间里,不同类别的应用程序的大型服务器集合(多达15,000台)的总功率使用特征。这些观察使我们能够评估最大化使用数据中心已部署的能力的机会,并评估过度订阅的风险。我们发现,即使在经过良好调优的应用程序中,在集群级(数千台服务器)的实际峰值功耗和理论峰值功耗之间也存在明显的差距(7 - 16%)。在整个数据中心,这一差距扩大到近40%。这个净空空间可用于在相同的功率预算内部署额外的计算设备,并且超出预算的风险最小。我们使用我们的建模框架来估计电源管理方案的潜力,以减少峰值功率和能源使用。我们发现节省电力和能源的机会是巨大的,但是在集群级别(数千台服务器)比在机架级别(数十台)更大。最后,我们认为系统需要在整个活动范围内都是节能的,而不仅仅是在峰值性能水平上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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