A. Reuther, P. Michaleas, Michael Jones, V. Gadepally, S. Samsi, J. Kepner
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引用次数: 132

摘要

多核处理器和加速器的进步为机器学习技术在各种应用中的更大探索和应用打开了闸门。这些进步,加上摩尔定律(Moore’s Law)等几个趋势的瓦解,促使处理器和加速器的爆炸式增长,这些处理器和加速器有望实现更强大的计算和机器学习能力。这些处理器和加速器以多种形式出现,从cpu和gpu到asic、fpga和数据流加速器。本文调查了这些已公开发布的处理器和加速器的性能和功耗数据的现状。性能和功率值绘制在散点图上,并讨论和分析了该图上的一些维度和趋势观察结果。例如,在图中有关于功耗、数值精度和推理与训练的有趣趋势。然后,我们选择并基准测试两种商用的低尺寸、重量和功耗(SWaP)加速器,因为这些处理器对于嵌入式和移动机器学习推理应用来说是最有趣的,最适用于国防部和其他SWaP受限的用户。我们用真实世界的图像和神经网络模型来确定它们的实际表现,将这些结果与报告的性能和功耗值进行比较,并将它们与一些嵌入式应用中使用的英特尔CPU进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey and Benchmarking of Machine Learning Accelerators
Advances in multicore processors and accelerators have opened the flood gates to greater exploration and application of machine learning techniques to a variety of applications. These advances, along with breakdowns of several trends including Moore’s Law, have prompted an explosion of processors and accelerators that promise even greater computational and machine learning capabilities. These processors and accelerators are coming in many forms, from CPUs and GPUs to ASICs, FPGAs, and dataflow accelerators. This paper surveys the current state of these processors and accelerators that have been publicly announced with performance and power consumption numbers. The performance and power values are plotted on a scatter graph and a number of dimensions and observations from the trends on this plot are discussed and analyzed. For instance, there are interesting trends in the plot regarding power consumption, numerical precision, and inference versus training. We then select and benchmark two commercially available low size, weight, and power (SWaP) accelerators as these processors are the most interesting for embedded and mobile machine learning inference applications that are most applicable to the DoD and other SWaP constrained users. We determine how they actually perform with real-world images and neural network models, compare those results to the reported performance and power consumption values and evaluate them against an Intel CPU that is used in some embedded applications.
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