神经网络评分的高效计算

Hugo Waltsburger, Erwan Libessart, Chengfang Ren, A. Kolar, R. Guinvarc’h
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摘要

在高性能计算(HPC)和深度学习中,已经有很多工作致力于估计和优化工作负载。然而,研究人员通常依靠很少的指标来评估这些技术的效率。最值得注意的是,与gpu或/和cpu特性相关的准确性、预测损失和计算时间。很少看到电力消耗的数据,部分原因是难以获得准确的电力读数。在本文中,我们引入了一个复合分数,旨在描述神经网络推理过程中测量的精度和功耗之间的权衡。为此,我们提出了一个新的开源工具,允许研究人员考虑更多的指标:粒度功耗,RAM/CPU/GPU利用率,以及存储和网络输入/输出(I/O)。据我们所知,这是神经架构在硬件架构上的第一个拟合测试。这要归功于可重复的功率效率测量。我们将此过程应用于各种硬件上的最先进的神经网络架构。其中一个主要的应用和新颖之处是算法功率效率的测量。目的是让研究人员更好地掌握算法的效率。这种方法是为了探索神经网络中能量使用和准确性之间的权衡而开发的。在为特定任务安装硬件或更准确地比较两种体系结构(考虑到体系结构探索)时,它也很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network scoring for efficient computing
Much work has been dedicated to estimating and optimizing workloads in high-performance computing (HPC) and deep learning. However, researchers have typically relied on few metrics to assess the efficiency of those techniques. Most notably, the accuracy, the loss of the prediction, and the computational time with regard to GPUs or/and CPUs characteristics. It is rare to see figures for power consumption, partly due to the difficulty of obtaining accurate power readings. In this paper, we introduce a composite score that aims to characterize the trade-off between accuracy and power consumption measured during the inference of neural networks. For this purpose, we present a new open-source tool allowing researchers to consider more metrics: granular power consumption, but also RAM/CPU/GPU utilization, as well as storage, and network input/output (I/O). To our best knowledge, it is the first fit test for neural architectures on hardware architectures. This is made possible thanks to reproducible power efficiency measurements. We applied this procedure to state-of-the-art neural network architectures on miscellaneous hardware. One of the main applications and novelties is the measurement of algorithmic power efficiency. The objective is to allow researchers to grasp their algorithms' efficiencies better. This methodology was developed to explore trade-offs between energy usage and accuracy in neural networks. It is also useful when fitting hardware for a specific task or to compare two architectures more accurately, with architecture exploration in mind.
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