Characterizing Power and Energy Efficiency of Legion Data-Centric Runtime and Applications on Heterogeneous High-Performance Computing Systems

Song Huang, Song Fu, S. Pakin, M. Lang
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引用次数: 1

Abstract

The traditional parallel programming models require programmers to explicitly specify parallelism and data movement of the underlying parallel mechanisms. Different from the traditional computation-centric programming, Legion provides a data-centric programming model for extracting parallelism and data movement. In this chapter, we aim to characterize the power and energy consumption of running HPC applications on Legion. We run benchmark applications on compute nodes equipped with both CPU and GPU, and measure the execution time, power consumption and CPU/GPU utilization. Additionally, we test the message passing interface (MPI) version of these applications and compare the performance and power consumption of high-performance computing (HPC) applications using the computation-centric and data-centric programming models. Experimental results indicate Legion applications outperforms MPI applications on both performance and energy efficiency, i.e., Legion applications can be 9.17 times as fast as MPI applications and use only 9.2% energy. Legion effectively explores the heterogeneous architecture and runs applications tasks on GPU. As far as we know, this is the first study to understand the power and energy consumption of Legion programming and runtime infrastructure. Our findings will enable HPC system designers and operators to develop and tune the performance of data-centric HPC applications with constraints on power and energy consumption.
异构高性能计算系统中以数据为中心的运行时的功率和能源效率特征
传统的并行编程模型要求程序员显式地指定底层并行机制的并行性和数据移动。与传统的以计算为中心的编程不同,Legion提供了一种以数据为中心的编程模型,用于提取并行性和数据移动。在本章中,我们的目标是描述在军团上运行HPC应用程序的功率和能量消耗。我们在同时配备CPU和GPU的计算节点上运行基准测试应用程序,并测量执行时间、功耗和CPU/GPU利用率。此外,我们测试了这些应用程序的消息传递接口(MPI)版本,并使用以计算为中心和以数据为中心的编程模型比较了高性能计算(HPC)应用程序的性能和功耗。实验结果表明,军团应用程序在性能和能效方面都优于MPI应用程序,即军团应用程序的速度是MPI应用程序的9.17倍,而能耗仅为9.2%。Legion有效地探索了异构架构,并在GPU上运行应用程序任务。据我们所知,这是第一个了解军团编程和运行时基础设施的能量和能量消耗的研究。我们的研究结果将使HPC系统设计师和运营商能够开发和调整以数据为中心的HPC应用程序的性能,并限制功率和能耗。
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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