ACE:抽象、表征和开发数据中心的电力需求

Di Wang, Chuangang Ren, Sriram Govindan, A. Sivasubramaniam, B. Urgaonkar, A. Kansal, Kushagra Vaid
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引用次数: 17

摘要

数据中心的峰值电源管理具有巨大的成本影响。虽然已经提出了许多机制来限制功耗,但实际的数据中心功耗数据很少。之前的研究要么使用了一小部分应用程序和/或服务器,要么提供了规模庞大的数据,因此很难设计和评估新的和现有的优化。为了解决这一差距,我们在6个月内从微软公司的几个地理分布式数据中心收集了多个空间和细粒度时间分辨率的功率测量数据。我们对这些数据进行汇总分析,以研究其统计特性。我们发现在电力需求、统计多路复用效应以及与迎合IT设备的冷却功率的相关性方面存在自相似性的证据。由于工作负载表征是系统设计和评估的关键因素,我们注意到以峰值和低谷的形式捕获功率需求的更好抽象的重要性。我们确定了峰值和低谷的属性,以及这些属性之间的重要相关性,这些属性可以影响不同功率封顶技术的选择和有效性。我们描述了这些属性及其相关性,显示了小持续峰值的突发性,以及不忽视罕见但更严格或更长的峰值的重要性。波峰和波谷之间的相关性表明,需要有技术来聚合和共同处理它们。由于这些特性可以广泛地用于电力供应和优化,我们通过两个具体的案例研究来说明它的好处。第一个示例展示了如何使用现有方法根据我们的峰值和低谷特征来区别处理峰值,而不是采用一刀切的解决方案。第二部分说明了一种简单的利用峰谷特性的储能容量配置策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ACE: Abstracting, characterizing and exploiting datacenter power demands
Peak power management of datacenters has tremendous cost implications. While numerous mechanisms have been proposed to cap power consumption, real datacenter power consumption data is scarce. Prior studies have either used a small set of applications and/or servers, or presented data that is at an aggregate scale from which it is difficult to design and evaluate new and existing optimizations. To address this gap, we collect power measurement data at multiple spatial and fine-grained temporal resolutions from several geo-distributed datacenters of Microsoft corporation over 6 months. We conduct aggregate analysis of this data to study its statistical properties. We find evidence of self-similarity in power demands, statistical multiplexing effects, and correlations with the cooling power that caters to the IT equipment. With workload characterization a key ingredient for systems design and evaluation, we note the importance of better abstractions for capturing power demands, in the form of peaks and valleys. We identify attributes for peaks and valleys, and important correlations across these attributes that can influence the choice and effectiveness of different power capping techniques. We characterize these attributes and their correlations, showing the burstiness of small duration peaks, and the importance of not ignoring the rare but more stringent or long peaks. The correlations between peaks and valleys suggest the need for techniques to aggregate and collectively handle them. With the wide scope of exploitability of such characteristics for power provisioning and optimizations, we illustrate its benefits with two specific case studies. The first shows how peaks can be differentially handled based on our peak and valley characterization using existing approaches, rather than a one-size-fits-all solution. The second illustrates a simple capacity provisioning strategy for energy storage using the peak and valley characteristics.
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