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Hybrid MPI/OpenMP power-aware computing

机译:Hybrid MPI / OpenMP电源感知计算

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Power-aware execution of parallel programs is now a primary concern in large-scale HPC environments. Prior research in this area has explored models and algorithms based on dynamic voltage and frequency scaling (DVFS) and dynamic concurrency throttling (DCT) to achieve power-aware execution of programs written in a single programming model, typically MPI or OpenMP. However, hybrid programming models combining MPI and OpenMP are growing in popularity as emerging large-scale systems have many nodes with several processors per node and multiple cores per process or. In th is paper we present and evaluate solutions for power-efficient execution of programs written in this hybrid model targeting large-scale distributed systems with multicore nodes. We use a new power-aware performance prediction model of hybrid MPI/OpenMP applications to derive a novel algorithm for power-efficient execution of realistic applications from the ASC Sequoia and NPB MZ bench marks. Our new algorithm yields substantial energy savings (4.18% on average and up to 13.8%) with either negligible performance loss or performance gain (up to 7.2%).
机译:Power-Invustal的并行程序执行现在是大规模HPC环境中的主要问题。在此领域的现有研究具有基于动态电压和频率缩放(DVFS)和动态并发限制(DCT)的模型和算法,以实现在单个编程模型中编写的程序的电动感知执行,通常是MPI或OpenMP。然而,组合MPI和OpenMP的混合编程模型在普及中越来越多地,因为新兴的大型系统具有许多节点,每个节点具有多个处理器和每个过程或多个核心或。在TH中,我们呈现并评估在该混合模型中编写的节目的节能执行解决方案,其针对具有多核节点的大规模分布式系统。我们使用Hybrid MPI / OpenMP应用程序的新功率感知性能预测模型,从ASC SequoIa和NPB MZ台标记导出了一种新颖的节能执行现实应用程序的算法。我们的新算法产生了大量的节能(平均4.18%,高达13.8%),性能损失或绩效收益可忽略不计(高达7.2%)。

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