A Study on Cross-Architectural Modelling of Power Consumption Using Neural Networks

V. Elisseev, Milos Puzovic, Eun Kyung Lee
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引用次数: 2

Abstract

On the path to Exascale, the goal of High Performance Computing (HPC) to achieve maximum performance becomes the goal of achieving maximum performance under strict power constraint. Novel approaches to hardware and software co-design of modern HPC systems have to be developed to address such challenges. In this paper, we study prediction of power consumption of HPC systems using metrics obtained from hardware performance counters. We argue that this methodology is portable across different micro architecture implementations and compare results obtained on Intel 64, IBMR and Cavium ThunderXR ARMv8 microarchitectures.We discuss optimal number and type of hardware performance counters required to accurately predict power consumption. We compare accuracy of power predictions provided by models based on Linear Regression (LR) and Neural Networks (NN). We find that the NN-based model provides better accuracy of predictions than the LR model. We also find, that presently it is not yet possible to predict power consumption on a given microarchitecture using data obtained on a different microarchitecture. Results of our work can be used as a starting point for developing unified, cross-architectural models for predicting power consumption.
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基于神经网络的功耗跨架构建模研究
在通向Exascale的道路上,高性能计算(High Performance Computing, HPC)实现最大性能的目标变成了在严格的功耗约束下实现最大性能的目标。为了应对这些挑战,现代高性能计算系统必须开发新的软硬件协同设计方法。在本文中,我们研究了利用硬件性能计数器获得的指标来预测HPC系统的功耗。我们认为这种方法在不同的微架构实现中是可移植的,并比较了在Intel 64、IBMR和Cavium ThunderXR ARMv8微架构上获得的结果。我们讨论了准确预测功耗所需的硬件性能计数器的最佳数量和类型。我们比较了基于线性回归(LR)和神经网络(NN)的模型提供的功率预测的准确性。我们发现基于神经网络的模型比LR模型提供了更好的预测精度。我们还发现,目前还不可能使用在不同微架构上获得的数据来预测给定微架构上的功耗。我们的工作结果可以用作开发用于预测功耗的统一的跨架构模型的起点。
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