构建高性能计算设备作业能耗预测框架

Nitin Sukhija, Alexander Gessinger, Elizabeth Bautista
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引用次数: 2

摘要

随着主流计算技术进入后千兆级时代,其计算组件的数量和复杂性急剧增加。随着每个机架封装更多组件的压力越来越大,功率和系统密度也在不断增长。为了解决当前和未来计算系统的功率挑战,近年来许多研究人员都在关注功率封顶。功率封顶可以通过主动估计高性能计算(HPC)作业的功耗来实现。在这项研究中,我们提出了我们提出的机器学习框架来预测劳伦斯伯克利国家实验室(LBNL)国家能源科学计算中心(NERSC) Cori超级计算机工作负载的功耗。我们使用在Cori上执行的实际生产作业的历史数据来评估我们的框架,以预测给定作业所需的功率,并将预测应用于在LBNL或其他安装地点委托的电力有限的未来系统中实现功率上限。
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Towards a Predictive Framework for Power Consumption of Jobs in HPC Facilities
As the mainstream computing technology is entering into a post petascale era, the number and complexity of their computational components is on a sharp increase. With the increased pressure to pack more components per rack, the power and system densities are growing. Recently many researchers are focusing on Power Capping to address the power challenges in current and future computing systems. The power capping can be achieved by proactively estimating the power consumption of High Performance Computing (HPC) Jobs. In this study, we present our proposed machine learning framework to predict the power consumption of Lawrence Berkeley National Laboratory (LBNL) National Energy Scientific Computing Center (NERSC) Cori supercomputer workloads. We evaluate our framework using historical data of real production jobs executed on Cori to predict the amount of power required by a given job and to apply the predictions for enabling power capping in power-limited future systems to be commissioned at LBNL or other installation sites.
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