Prediction models for multi-dimensional power-performance optimization on many cores

Matthew Curtis-Maury, Ankur Shah, F. Blagojevic, Dimitrios S. Nikolopoulos, B. Supinski, M. Schulz
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引用次数: 190

Abstract

Power has become a primary concern for HPC systems. Dynamic voltage and frequency scaling (DVFS) and dynamic concurrency throttling (DCT) are two software tools (or knobs) for reducing the dynamic power consumption of HPC systems. To date, few works have considered the synergistic integration of DVFS and DCT in performance-constrained systems, and, to the best of our knowledge, no prior research has developed application-aware simultaneous DVFS and DCT controllers in real systems and parallel programming frameworks. We present a multi-dimensional, online performance predictor, which we deploy to address the problem of simultaneous runtime optimization of DVFS and DCT on multi-core systems. We present results from an implementation of the predictor in a runtime library linked to the Intel OpenMP environment and running on an actual dual-processor quad-core system. We show that our predictor derives near-optimal settings of the power-aware program adaptation knobs that we consider. Our overall framework achieves significant reductions in energy (19% mean) and ED2 (40% mean), through simultaneous power savings (6% mean) and performance improvements (14% mean). We also find that our framework outperforms earlier solutions that adapt only DVFS or DCT, as well as one that sequentially applies DCT then DVFS. Further, our results indicate that prediction-based schemes for runtime adaptation compare favorably and typically improve upon heuristic search-based approaches in both performance and energy savings.
多核多维功率性能优化预测模型
功率已经成为高性能计算系统的主要关注点。动态电压和频率缩放(DVFS)和动态并发调节(DCT)是降低高性能计算系统动态功耗的两个软件工具(或旋钮)。迄今为止,很少有研究考虑在性能受限的系统中DVFS和DCT的协同集成,而且据我们所知,目前还没有研究在实际系统和并行编程框架中开发应用感知的DVFS和DCT控制器。我们提出了一个多维在线性能预测器,我们部署它来解决多核系统上DVFS和DCT同时运行时优化的问题。我们在与Intel OpenMP环境相关联的运行时库中提供了预测器的实现结果,并在实际的双处理器四核系统上运行。我们表明,我们的预测器导出了我们所考虑的功率感知程序自适应旋钮的接近最佳设置。我们的整体框架通过同时节能(平均6%)和性能改进(平均14%),实现了能源(平均19%)和ED2(平均40%)的显著降低。我们还发现,我们的框架优于仅适应DVFS或DCT的早期解决方案,以及依次应用DCT然后DVFS的解决方案。此外,我们的研究结果表明,基于预测的运行时适应方案在性能和节能方面都优于启发式搜索方法。
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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