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Embedded 1-Mb ReRAM-Based Computing-in- Memory Macro With Multibit Input and Weight for CNN-Based AI Edge Processors

机译:基于CNN的AI边缘处理器的嵌入式1-MB reram的基于1 MB reram的计算内存宏和重量

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摘要

Computing-in-memory (CIM) based on embedded nonvolatile memory is a promising candidate for energy-efficient multiply-and-accumulate (MAC) operations in artificial intelligence (AI) edge devices. However, circuit design for NVM-based CIM (nvCIM) imposes a number of challenges, including an area-latency-energy tradeoff for multibit MAC operations, pattern-dependent degradation in signal margin, and small read margin. To overcome these challenges, this article proposes the following: 1) a serial-input non-weighted product (SINWP) structure; 2) a down-scaling weighted current translator (DSWCT) and positive-negative current-subtractor (PN-ISUB); 3) a current-aware bitline clamper (CABLC) scheme; and 4) a triple-margin small-offset current-mode sense amplifier (TMCSA). A 55-nm 1-Mb ReRAM-CIM macro was fabricated to demonstrate the MAC operation of 2-b-input, 3-b-weight with 4-b-out. This nvCIM macro achieved T-MAC = 14.6 ns at 4-b-out with peak energy efficiency of 53.17 TOPS/W.
机译:基于嵌入式非易失性存储器的计算内存存储器(CIM)是人工智能(AI)边缘设备中的节能乘积(MAC)操作的有希望的候选者。然而,基于NVM的CIM(NVCIM)的电路设计施加了许多挑战,包括用于多点MAC操作的区域延迟 - 能量折衷,信号裕度中的模式依赖性劣化和小读取余量。为了克服这些挑战,本文提出了以下内容:1)串行输入的非加权产品(SINWP)结构; 2)一个下缩放的加权电流转换器(DSWCT)和正负电流 - 减法器(PN-Isub); 3)当前感知位点线夹板(CABLC)方案; 4)三缘小偏移电流模式读出放大器(TMCSA)。制造了55nm 1-MB RERAM-CIM宏以证明MAC操作2-B输入,3-B重量,4-B-OUT。该NVCIM宏以4-B-OUT实现T-MAC = 14.6 ns,峰值能效为53.17顶/倍。

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