Performance and Energy Modeling for Cooperative Hybrid Computing

Rong Ge, Xizhou Feng, Martin Burtscher, Ziliang Zong
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引用次数: 8

Abstract

Accelerator-based heterogeneous systems can provide high performance and energy efficiency, both of which are key design goals in high performance computing. To fully realize the potential of heterogeneous architectures, software must optimally exploit the hosts' and accelerators' processing and power-saving capabilities. Yet, previous studies mainly focus on using hosts and accelerators to boost application performance. Power-saving features to improve the energy efficiency of parallel programs, such as Dynamic Voltage and Frequency Scaling (DVFS), remain largely unexplored. Recognizing that energy efficiency is a different objective than performance and should therefore be independently pursued, we study how to judiciously distribute computation between hosts and accelerators for energy optimization. We further explore energy-saving scheduling in combination with computation distribution for even larger gains. Moreover, we present PEACH, an analytical model for Performance and Energy Aware Cooperative Hybrid computing. With just a few system- and application-dependent parameters, PEACH accurately captures the performance and energy impact of computation distribution and energy-saving scheduling to quickly identify the optimal coupled strategy for achieving the best performance or the lowest energy consumption. PEACH thus eliminates the need for extensive profiling and measurement. Experimental results from two GPU-accelerated heterogeneous systems show that PEACH predicts the performance and energy of the studied codes with less than 3% error and successfully identifies the optimal strategy for a given objective.
协同混合计算的性能和能量建模
基于加速器的异构系统可以提供高性能和能源效率,这两者都是高性能计算的关键设计目标。为了充分实现异构架构的潜力,软件必须最佳地利用主机和加速器的处理和节能能力。然而,以前的研究主要集中在使用主机和加速器来提高应用程序的性能。提高并行程序能源效率的节能功能,如动态电压和频率缩放(DVFS),在很大程度上仍未被探索。认识到能源效率是一个不同于性能的目标,因此应该独立追求,我们研究如何明智地在主机和加速器之间分配计算以实现能源优化。我们进一步探索节能调度与计算分布的结合,以获得更大的收益。此外,我们还提出了一个性能和能源感知协同混合计算的分析模型PEACH。PEACH仅使用几个与系统和应用程序相关的参数,就能准确地捕获计算分布和节能调度对性能和能源的影响,从而快速确定实现最佳性能或最低能耗的最佳耦合策略。因此,PEACH消除了广泛分析和测量的需要。两个gpu加速异构系统的实验结果表明,PEACH预测所研究代码的性能和能量的误差小于3%,并成功地识别出给定目标的最优策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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