利用电阻开关存储器的非理想性实现高效的机器学习

IF 1.9 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Victor Yon, A. Amirsoleimani, F. Alibart, R. Melko, D. Drouin, Y. Beilliard
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引用次数: 6

摘要

基于电阻开关存储器(也称为忆阻器或RRAM)的新型计算架构已被证明是解决深度学习和尖峰神经网络能量效率低下的有前途的方法。然而,电阻开关技术还不成熟,存在许多缺陷,这些缺陷通常被认为是对人工神经网络实现的限制。然而,可以利用合理的可变性来实现有效的概率或近似计算。这种方法提高了鲁棒性,减少了过拟合,并降低了特定应用的能耗,如贝叶斯和尖峰神经网络。因此,如果我们将机器学习方法适应电阻开关存储器的固有特性,某些非理想性可能会成为机会。在这篇简短的综述中,我们介绍了电路设计的一些关键考虑因素和最常见的非理想情况。我们用成熟的软件方法举例说明了随机性和压缩的可能好处。然后,我们概述了最近利用电阻开关记忆缺陷的神经网络实现,并讨论了这些方法的潜力和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Non-idealities of Resistive Switching Memories for Efficient Machine Learning
Novel computing architectures based on resistive switching memories (also known as memristors or RRAMs) have been shown to be promising approaches for tackling the energy inefficiency of deep learning and spiking neural networks. However, resistive switch technology is immature and suffers from numerous imperfections, which are often considered limitations on implementations of artificial neural networks. Nevertheless, a reasonable amount of variability can be harnessed to implement efficient probabilistic or approximate computing. This approach turns out to improve robustness, decrease overfitting and reduce energy consumption for specific applications, such as Bayesian and spiking neural networks. Thus, certain non-idealities could become opportunities if we adapt machine learning methods to the intrinsic characteristics of resistive switching memories. In this short review, we introduce some key considerations for circuit design and the most common non-idealities. We illustrate the possible benefits of stochasticity and compression with examples of well-established software methods. We then present an overview of recent neural network implementations that exploit the imperfections of resistive switching memory, and discuss the potential and limitations of these approaches.
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