利用忆阻器进行内存和传感器存储计算

Ning Lin, Jia Chen, Ruoyu Zhao, Yangu He, Kwunhang Wong, Qinru Qiu, Zhongrui Wang, J. J. Yang
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引用次数: 0

摘要

尽管数字计算机在深度学习方面取得了重大进展,但其能耗和计算速度仍未达到类脑计算的标准。为了解决这些局限性,水库计算(RC)在电子设备、计算系统和机器学习领域日益受到关注,特别是其在硬件-软件协同设计中的内存或传感器实施。在硬件方面,内存或传感器内计算机利用新兴的电子和光电设备,在数据存储或传感的地方进行数据处理。这种技术大大降低了传感、存储和计算单元之间频繁数据传输所产生的能耗。在软件方面,RC 借助其大脑启发的动态系统实现了实时边缘学习,并降低了大量训练复杂度。从这个角度出发,我们考察了内存/传感 RC 的最新进展,包括算法设计、材料和设备开发,以及分类和回归问题的下游应用,并讨论了这一新兴领域面临的挑战和机遇。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In-memory and in-sensor reservoir computing with memristive devices
Despite the significant progress made in deep learning on digital computers, their energy consumption and computational speed still fall short of meeting the standards for brain-like computing. To address these limitations, reservoir computing (RC) has been gaining increasing attention across communities of electronic devices, computing systems, and machine learning, notably with its in-memory or in-sensor implementation on the hardware–software co-design. Hardware regarded, in-memory or in-sensor computers leverage emerging electronic and optoelectronic devices for data processing right where the data are stored or sensed. This technology dramatically reduces the energy consumption from frequent data transfers between sensing, storage, and computational units. Software regarded, RC enables real-time edge learning thanks to its brain-inspired dynamic system with massive training complexity reduction. From this perspective, we survey recent advancements in in-memory/in-sensor RC, including algorithm designs, material and device development, and downstream applications in classification and regression problems, and discuss challenges and opportunities ahead in this emerging field.
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