Zeus: Understanding and Optimizing GPU Energy Consumption of DNN Training

Jie You, Jaehoon Chung, Mosharaf Chowdhury
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引用次数: 21

Abstract

Training deep neural networks (DNNs) is becoming increasingly more resource- and energy-intensive every year. Unfortunately, existing works primarily focus on optimizing DNN training for faster completion, often without considering the impact on energy efficiency. In this paper, we observe that common practices to improve training performance can often lead to inefficient energy usage. More importantly, we demonstrate that there is a tradeoff between energy consumption and performance optimization. To this end, we propose Zeus, an optimization framework to navigate this tradeoff by automatically finding optimal job- and GPU-level configurations for recurring DNN training jobs. Zeus uses an online exploration-exploitation approach in conjunction with just-in-time energy profiling, averting the need for expensive offline measurements, while adapting to data drifts over time. Our evaluation shows that Zeus can improve the energy efficiency of DNN training by 15.3%-75.8% for diverse workloads.
Zeus:理解和优化DNN训练的GPU能耗
训练深度神经网络(dnn)每年都变得越来越需要资源和能源。不幸的是,现有的工作主要集中在优化DNN训练以更快地完成,通常没有考虑对能源效率的影响。在本文中,我们观察到,提高训练绩效的常见做法往往会导致低效的能源使用。更重要的是,我们证明了在能耗和性能优化之间存在权衡。为此,我们提出了Zeus,这是一个优化框架,通过自动为重复出现的DNN训练任务找到最佳作业和gpu级配置来导航这种权衡。Zeus将在线勘探开发方法与实时能源分析相结合,避免了昂贵的离线测量的需要,同时适应了数据随时间的变化。我们的评估表明,对于不同的工作负载,Zeus可以将DNN训练的能量效率提高15.3%-75.8%。
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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