Spiking Neural Network Integrated Circuits: A Review of Trends and Future Directions

A. Basu, C. Frenkel, Lei Deng, Xueyong Zhang
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引用次数: 30

Abstract

The rapid growth of deep learning, spurred by its successes in various fields ranging from face recognition [1] to game playing [2], has also triggered a growing interest in the design of specialized hardware accelerators to support these algorithms. This specialized hardware targets one of two categories-either operating in datacenters or on mobile devices at the network edge. While energy efficiency is important in both cases, the need is extremely stringent in the latter class of applications due to limited battery life. Several techniques have been used in the past to improve the energy efficiency of these accelerators [3], including reducing off-chip DRAM access, managing data flow across processing elements as well as in-memory computing (IMC) by exploiting analog processing of data within digital memory arrays [4].
脉冲神经网络集成电路:趋势和未来方向的回顾
深度学习在从人脸识别[1]到游戏[2]等各个领域的成功推动了深度学习的快速发展,也引发了人们对设计专用硬件加速器来支持这些算法的兴趣日益浓厚。这种专用硬件的目标是两类设备中的一种——要么在数据中心中运行,要么在网络边缘的移动设备上运行。虽然能效在这两种情况下都很重要,但由于电池寿命有限,在后一类应用中对能效的要求非常严格。过去已经使用了几种技术来提高这些加速器[3]的能源效率,包括减少片外DRAM访问,管理处理元素之间的数据流,以及通过利用数字存储阵列[4]中的数据模拟处理来进行内存计算(IMC)。
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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