在高性能计算环境中实现能源效率的定制优化

Applied AI letters Pub Date : 2023-12-13 DOI:10.1002/ail2.87
Robert Tracey, Vadim Elisseev, M. Smyrnakis, Lan Hoang, Mark Fellows, Michael Ackers, Andrew Laughton, Stephen Hill, Phillip Folkes, John Whittle
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引用次数: 0

摘要

我们采用数据收集、分析以及资源和工作负载主动管理的整体方法,为高性能计算(HPC)环境提供定制的能效优化方案。我们的解决方案由三个主要部分组成:(i) 用于收集、存储和处理来自硬件和软件堆栈的多源数据的平台;(ii) 用于进行工作负载分类和能源使用预测的回归机器学习(ML)算法集合;(iii) 基于代理的决策框架,用于向中间件和基础设施提供控制决策,从而支持实时或接近实时的能效优化。我们将提供一些在高性能计算环境中使用我们提出的方法的具体实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards bespoke optimizations of energy efficiency in HPC environments
We present bespoke energy efficiency optimizations in high performance computing (HPC) environments using holistic approach to data collection, analysis and proactive management of resources and workloads. Our solution has three major components: (i) platform for collecting, storing and processing data from multiple sources across hardware and software stacks, (ii) collections of regression machine learning (ML) algorithms for making workloads classifications and energy usage predictions, (iii) agent‐based decision‐making framework for delivering control decisions to middle‐ware and infrastructure thus supporting real time or near real energy efficiency optimizations. We will provide some concrete examples of using our proposed approach in HPC environment.
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