The Impact of Non-linear NVM Devices on In-Memory Computing

Sai Zhang, Zongdong Dai, R. Xiao, Haibin Shen, Kejie Huang
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引用次数: 3

Abstract

Deep learning has significantly improved the accuracy of large-scale visual/auditory recognition and classification tasks, at the cost of ever-increasing computational resource and storage capacity in hardware. As a result, the data communication between the computing and storage units has been the bottleneck in Artificial Intelligence (AI) computation. The emerging resistive NVMs based in-memory computing architectures have been considered at the promising solution scheme to address the abovementioned issue. However, the non-linearity of the NVM devices has a significant impact on the computing accuracy. In this paper, a non-linear RRAM is modelled and implemented in various in-memory computing architectures. The results show severe accuracy losses caused by the non-linear reading/writing property, mismatch, uncertainty, etc. Several promising solutions are also discussed in this paper.
非线性NVM设备对内存计算的影响
深度学习显著提高了大规模视觉/听觉识别和分类任务的准确性,但代价是硬件的计算资源和存储容量不断增加。因此,计算单元和存储单元之间的数据通信一直是人工智能(AI)计算的瓶颈。新兴的基于内存计算架构的阻性NVMs被认为是解决上述问题的有希望的解决方案。然而,NVM器件的非线性对计算精度有很大的影响。本文对非线性随机存储器进行了建模,并在各种内存计算体系结构中实现。结果表明,非线性读/写特性、不匹配、不确定性等因素造成了严重的精度损失。本文还讨论了几种有前途的解决方案。
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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