Survey of Machine Learning Accelerators

A. Reuther, P. Michaleas, Michael Jones, V. Gadepally, S. Samsi, J. Kepner
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引用次数: 96

Abstract

New machine learning accelerators are being announced and released each month for a variety of applications from speech recognition, video object detection, assisted driving, and many data center applications. This paper updates the survey of of AI accelerators and processors from last year's IEEE-HPEC paper. This paper collects and summarizes the current 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. This year, there are many more announced accelerators that are implemented with many more architectures and technologies from vector engines, dataflow engines, neuromorphic designs, flash-based analog memory processing, and photonic-based processing.
本文更新了去年IEEE-HPEC论文中关于人工智能加速器和处理器的调查。本文收集和总结了目前已经公开公布的加速器的性能和功耗数据。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。今年,有更多宣布的加速器采用了更多的架构和技术,包括矢量引擎、数据流引擎、神经形态设计、基于闪存的模拟存储器处理和基于光子的处理。
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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