Tapasya Patki, Zachary Frye, H. Bhatia, F. Natale, J. Glosli, Helgi I. Ingólfsson, B. Rountree
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引用次数: 12
摘要
在潜在的功率限制下实现百亿亿次计算的目标需要高性能计算集群最大限度地提高并行效率和功率效率。随着现代HPC系统开始向每个节点使用多个gpu的极端异构趋势发展,电源管理变得更加具有挑战性,特别是在满足具有协同调度组件的科学工作流时。管理GPU功率对工作流性能和运行到运行的再现性的影响尚未得到充分的研究。在本文中,我们提出了一项开创性的研究,以研究NVIDIA Volta gpu上可用的两个电源管理旋钮:频率封顶和功率封顶的影响。我们在一个科学的工作流程中,通过调整这些旋钮,在一台排名前10的超级计算机上分析了GPU的性能和功耗指标,运行了5300多次。我们的数据发现,在科学的工作流程中,GPU功率封顶是在保持性能的同时提高功率效率的有效方法,而GPU频率封顶显然是一种不可预测的降低功耗的方法。此外,我们发现频率上限导致gpu上的更高变化和异常行为,这与在cpu上进行的研究中观察到的情况是违反直觉的。
Comparing GPU Power and Frequency Capping: A Case Study with the MuMMI Workflow
Accomplishing the goal of exascale computing under a potential power limit requires HPC clusters to maximize both parallel efficiency and power efficiency. As modern HPC systems embark on a trend toward extreme heterogeneity leveraging multiple GPUs per node, power management becomes even more challenging, especially when catering to scientific workflows with co-scheduled components. The impact of managing GPU power on workflow performance and run-to-run reproducibility has not been adequately studied. In this paper, we present a first-of-its-kind research to study the impact of the two power management knobs that are available on NVIDIA Volta GPUs: frequency capping and power capping. We analyzed performance and power metrics of GPU’s on a top-10 supercomputer by tuning these knobs for more than 5,300 runs in a scientific workflow. Our data found that GPU power capping in a scientific workflow is an effective way of improving power efficiency while preserving performance, while GPU frequency capping is a demonstrably unpredictable way of reducing power consumption. Additionally, we identified that frequency capping results in higher variation and anomalous behavior on GPUs, which is counterintuitive to what has been observed in the research conducted on CPUs.