MR-PIPA:一种基于HfOx的集成多级RRAM处理像素加速器

IF 2 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Minhaz Abedin;Arman Roohi;Maximilian Liehr;Nathaniel Cady;Shaahin Angizi
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引用次数: 10

摘要

这项工作为实现基于多级HfOx电阻随机存取存储器(RRAM)的像素内处理(PIP)加速器铺平了道路,该加速器是一种灵活、节能、高性能的解决方案,用于边缘设备的实时和智能图像处理。所提出的设计本质上实现并支持低位宽神经网络(NN)中的粗粒度卷积操作,该网络利用了在传感器侧具有非易失性权重存储的新型计算像素。我们的评估表明,与最近的传感器计算设计相比,这种设计可以显著降低数据转换和传输到芯片外处理器的功耗,从而保持精度。我们提出的设计,即基于集成多级RRAM(HfOx)的像素加速器处理(MR-PIPA),实现了1000的帧速率和约1.89 TOp/s/W的效率,同时与基线相比,它以较小的精度下降为代价,大幅降低了约84%的数据转换和传输能量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MR-PIPA: An Integrated Multilevel RRAM (HfOx)-Based Processing-In-Pixel Accelerator
This work paves the way to realize a processing-in-pixel (PIP) accelerator based on a multilevel HfOx resistive random access memory (RRAM) as a flexible, energy-efficient, and high-performance solution for real-time and smart image processing at edge devices. The proposed design intrinsically implements and supports a coarse-grained convolution operation in low-bit-width neural networks (NNs) leveraging a novel compute-pixel with nonvolatile weight storage at the sensor side. Our evaluations show that such a design can remarkably reduce the power consumption of data conversion and transmission to an off-chip processor maintaining accuracy compared with the recent in-sensor computing designs. Our proposed design, namely an integrated multilevel RRAM (HfOx)-based processing-in-pixel accelerator (MR-PIPA), achieves a frame rate of 1000 and efficiency of ~1.89 TOp/s/W, while it substantially reduces data conversion and transmission energy by ~84% compared to a baseline at the cost of minor accuracy degradation.
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来源期刊
CiteScore
5.00
自引率
4.20%
发文量
11
审稿时长
13 weeks
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