Towards an Autonomous Framework for HPC Optimization: Using Machine Learning for Energy and Performance Modeling

Vinícius Klôh, Matheus Gritz, B. Schulze, Mariza Ferro
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引用次数: 4

Abstract

Performance and energy efficiency are now critical concerns in high performance scientific computing. It is expected that requirements of the scientific problem should guide the orchestration of different techniques of energy saving, in order to improve the balance between energy consumption and application performance. To enable this balance, we propose the development of an autonomous framework to make this orchestration and present the ongoing research to this development, more specifically, focusing in the characterization of the scientific applications and the performance modeling tasks using Machine Learning.
迈向高性能计算优化的自主框架:使用机器学习进行能源和性能建模
性能和能源效率现在是高性能科学计算的关键问题。期望科学问题的要求能够指导不同节能技术的编排,以改善能耗与应用性能之间的平衡。为了实现这种平衡,我们建议开发一个自治框架来进行这种编排,并为这一发展提供正在进行的研究,更具体地说,关注科学应用的特征和使用机器学习的性能建模任务。
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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