评估HPC工作负载的能量和功率分析技术

Ryan E. Grant, J. Laros, M. Levenhagen, Stephen L. Olivier, K. Pedretti, L. Ward, A. Younge
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引用次数: 6

摘要

先进的功率测量功能在大规模高性能计算(HPC)部署中变得可用。目前有几种提供功率测量的方法,主要是通过带内(例如RAPL)和带外测量(例如功率表)。这两种类型的测量都可以通过应用程序级分析来增强,但是很难评估从应用程序功率配置文件中获得洞察力所需的测量类型和细节。本文提出了一种对现代高性能计算平台上的功率分析技术进行分类的分类法。本文分析了三个HPC迷你应用程序在三个生产HPC系统上的应用,以检查这些功率配置文件的详细程度、范围和复杂性。我们证明了带外测量与带内应用区域分析的结合可以在不引入开销的情况下提供准确、详细的功率使用视图。这项工作还提供了一组关于如何最佳地配置HPC工作负载的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating energy and power profiling techniques for HPC workloads
Advanced power measurement capabilities are becoming available on large scale High Performance Computing (HPC) deployments. There exist several approaches to providing power measurements today, primarily through in-band (e.g. RAPL) and out-of-band measurements (e.g. power meters). Both types of measurement can be augmented with application-level profiling, however it can be difficult to assess the type and detail of measurement needed to obtain insight from the application power profile. This paper presents a taxonomy for classifying power profiling techniques on modern HPC platforms. Three HPC mini-applications are analyzed across three production HPC systems to examine the level of detail, scope, and complexity of these power profiles. We demonstrate that a combination of out-of-band measurement with in-band application region profiling can provide an accurate, detailed view of power usage without introducing overhead. This work also provides a set of recommendations for how to best profile HPC workloads.
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