Tutorial on memristor-based computing for smart edge applications

Anteneh Gebregiorgis , Abhairaj Singh , Amirreza Yousefzadeh , Dirk Wouters , Rajendra Bishnoi , Francky Catthoor , Said Hamdioui
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引用次数: 7

Abstract

Smart computing on edge-devices has demonstrated huge potential for various application sectors such as personalized healthcare and smart robotics. These devices aim at bringing smart computing close to the source where the data is generated or stored, while coping with the stringent resource budget of the edge platforms. The conventional Von-Neumann architecture fails to meet these requirements due to various limitations e.g., the memory-processor data transfer bottleneck. Memristor-based Computation-In-Memory (CIM) has the potential to realize such smart edge computing for data-dominated Artificial Intelligence (AI) applications by exploiting both the inherent properties of the architecture and the physical characteristics of the memristors. This paper discusses different aspects of CIM, including classification, working principle, CIM potentials and CIM design-flow. The design-flow is illustrated through two case studies to demonstrate the huge potential of CIM in realizing orders of magnitude improvement in energy-efficiency as compared to the conventional architectures. Finally future challenges and research directions of CIM are covered.

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智能边缘应用基于忆阻器的计算教程
边缘设备上的智能计算在个性化医疗和智能机器人等各个应用领域显示出巨大的潜力。这些设备旨在使智能计算接近数据生成或存储的来源,同时应对边缘平台的严格资源预算。由于各种限制,例如存储器处理器数据传输瓶颈,传统的Von Neumann体系结构无法满足这些要求。基于忆阻器的内存计算(CIM)有潜力通过利用忆阻器结构的固有特性和物理特性,为数据主导的人工智能(AI)应用实现这种智能边缘计算。本文讨论了CIM的不同方面,包括分类、工作原理、CIM潜力和CIM设计流程。通过两个案例研究说明了设计流程,以证明CIM在实现与传统架构相比数量级能效改进方面的巨大潜力。最后介绍了CIM未来的挑战和研究方向。
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