神经网络的记忆技术

F. Merrikh-Bayat, M. Prezioso, X. Guo, B. Hoskins, D. Strukov, K. Likharev
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引用次数: 13

摘要

突触是神经网络中数量最多的元素,是记忆装置。与传统的存储应用类似,设备密度是大规模人工神经网络最重要的指标之一。然而,这个应用程序带来了许多额外的要求,例如存储器状态的不断变化,因此需要新的工程方法。在本文中,我们简要回顾了我们最近在解决这些需求方面所做的努力。我们首先回顾CrossNet概念,该概念旨在解决人工神经网络的主要挑战。然后,我们讨论了交叉网实现的最新进展,特别是具有交叉棒集成电阻开关(忆阻)金属氧化物器件的简单网络的实验结果。最后,我们回顾了重新设计商业级嵌入式NOR闪存以实现单个细胞调谐的初步结果。虽然NOR闪存的密度比忆阻交叉栅低,但其技术更加成熟,为大规模神经网络的发展做好了准备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memory Technologies for Neural Networks
Synapses, the most numerous elements of neural networks, are memory devices. Similarly to traditional memory applications, device density is one of the most essential metrics for large-scale artificial neural networks. This application, however, imposes a number of additional requirements, such as the continuous change of the memory state, so that novel engineering approaches are required. In this paper, we briefly review our recent efforts at addressing these needs. We start by reviewing the CrossNet concept, which was conceived to address major challenges of artificial neural networks. We then discuss the recent progress toward CrossNet implementation, in particular the experimental results for simple networks with crossbar-integrated resistive switching (memristive) metal oxide devices. Finally, we review preliminary results on redesigning commercial-grade embedded NOR flash memories to enable individual cell tuning. While NOR flash memories are less dense then memristor crossbars, their technology is much more mature and ready for the development of large-scale neural networks.
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