DWPE, a new data center energy-efficiency metric bridging the gap between infrastructure and workload

T. Wilde, A. Auweter, M. Patterson, H. Shoukourian, Herbert Huber, A. Bode, D. Labrenz, C. Cavazzoni
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引用次数: 20

Abstract

To determine whether a High-Performance Computing (HPC) data center is energy efficient, various aspects have to be taken into account: the data center's power distribution and cooling infrastructure, the HPC system itself, the influence of the system management software, and the HPC workloads; all can contribute to the overall energy efficiency of the data center. Currently, two well-established metrics are used to determine energy efficiency for HPC data centers and systems: Power Usage Effectiveness (PUE) and FLOPS per Watt (as defined by the Green500 in their ranking list). PUE evaluates the overhead for running a data center and FLOPS per Watt characterizes the energy efficiency of a system running the High-Performance Linpack (HPL) benchmark, i.e. floating point operations per second achieved with 1 watt of electrical power. Unfortunately, under closer examination even the combination of both metrics does not characterize the overall energy efficiency of a HPC data center. First, HPL does not constitute a representative workload for most of today's HPC applications and the rev 0.9 Green500 run rules for power measurements allows for excluding subsystems (e.g. networking, storage, cooling). Second, even a combination of PUE with FLOPS per Watt metric neglects that the total energy efficiency of a system can vary with the characteristics of the data center in which it is operated. This is due to different cooling technologies implemented in HPC systems and the difference in costs incurred by the data center removing the heat using these technologies. To address these issues, this paper introduces the metrics system PUE (sPUE) and Data center Workload Power Efficiency (DWPE). sPUE calculates the overhead for operating a given system in a certain data center. DWPE is then calculated by determining the energy efficiency of a specific workload and dividing it by the sPUE. DWPE can then be used to define the energy efficiency of running a given workload on a specific HPC system in a specific data center and is currently the only fully-integrated metric suitable for rating an HPC data center's energy efficiency. In addition, DWPE allows for predicting the energy efficiency of different HPC systems in existing HPC data centers, thus making it an ideal approach for guiding HPC system procurement. This paper concludes with a demonstration of the application of DWPE using a set of representative HPC workloads.
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DWPE是一种新的数据中心能源效率指标,它弥合了基础设施和工作负载之间的差距
要确定高性能计算(HPC)数据中心是否节能,必须考虑多个方面:数据中心的配电和冷却基础设施、HPC系统本身、系统管理软件的影响以及HPC工作负载;所有这些都有助于提高数据中心的整体能源效率。目前,有两个公认的指标用于确定HPC数据中心和系统的能源效率:功率使用效率(PUE)和每瓦FLOPS(由Green500在其排名列表中定义)。PUE评估运行数据中心的开销,FLOPS / Watt表示运行高性能Linpack (HPL)基准的系统的能源效率,即使用1瓦电力实现的每秒浮点操作数。不幸的是,经过更仔细的检查,即使这两个指标的组合也不能表征HPC数据中心的整体能源效率。首先,HPL并不构成当今大多数HPC应用程序的代表性工作负载,并且rev 0.9 Green500运行规则的功率测量允许排除子系统(例如网络,存储,冷却)。其次,即使将PUE与FLOPS / Watt度量相结合,也忽略了系统的总能源效率可能随着其运行的数据中心的特征而变化。这是由于在高性能计算系统中采用了不同的冷却技术,以及数据中心使用这些技术去除热量所产生的成本差异。为了解决这些问题,本文介绍了度量系统PUE (sPUE)和数据中心工作负载功率效率(DWPE)。sPUE计算在某个数据中心中操作给定系统的开销。然后通过确定特定工作负载的能源效率并将其除以sPUE来计算DWPE。然后,DWPE可用于定义在特定数据中心的特定HPC系统上运行给定工作负载的能源效率,并且是目前唯一适合对HPC数据中心的能源效率进行评级的完全集成的度量。此外,DWPE允许预测现有HPC数据中心中不同HPC系统的能源效率,从而使其成为指导HPC系统采购的理想方法。本文最后用一组具有代表性的HPC工作负载演示了DWPE的应用。
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