基于ReRAM的AI边缘设备内存计算电路的可靠计算

Meng-Fan Chang, Je-Ming Hung, Ping-Cheng Chen, Tai-Hao Wen
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引用次数: 1

摘要

基于非易失性存储器(nvCIM)的内存宏计算是突破人工智能(AI)边缘设备内存瓶颈的一种有前途的方法;然而,这些设备的开发涉及到可靠性、能源效率、计算延迟和读出精度之间不可避免的权衡。本文概述了基于ReRAM的nvCIM的背景以及其进一步发展中的主要挑战,包括ReRAM器件和晶体管的工艺变化以及与输入权重模式变化相关的小信号裕度。本文还研究了nvCIM宏的误差模型,以及在使用nvCIM宏时,误差模型对推理精度的影响。最后,我们总结了可靠的基于reram的nvCIM宏开发的最新趋势和进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable Computing of ReRAM Based Compute-in-Memory Circuits for AI Edge Devices
Compute-in-memory macros based on non-volatile memory (nvCIM) are a promising approach to break through the memory bottleneck for artificial intelligence (AI) edge devices; however, the development of these devices involves unavoidable tradeoffs between reliability, energy efficiency, computing latency, and readout accuracy. This paper outlines the background of ReRAM-based nvCIM as well as the major challenges in its further development, including process variation in ReRAM devices and transistors and the small signal margins associated with variation in input-weight patterns. This paper also investigates the error model of a nvCIM macro, and the correspondent degradation of inference accuracy as a function of error model when using nvCIM macros. Finally, we summarize recent trends and advances in the development of reliable ReRAM-based nvCIM macro.
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