A Cross-Layer Perspective for Energy Efficient Processing: - From beyond-CMOS Devices to Deep Learning

X. Hu
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引用次数: 3

Abstract

As Moore's Law based device scaling and accompanying performance scaling trends are slowing down, there is increasing interest in new technologies and computational models for fast and more energy-efficient information processing. Meanwhile, there is growing evidence that, with respect to traditional Boolean circuits and von Neumann processors, it will be challenging for beyond-CMOS devices to compete with the CMOS technology. Nevertheless, some beyond-CMOS devices demonstrate other unique characteristics such as ambipolarity, negative differential resistance, hysteresis, and oscillatory behavior. Exploiting such unique characteristics, especially in the context of alternative circuit and architectural paradigms, has the potential to offer orders of magnitude improvement in terms of power, performance and capability. In order to take full advantage of beyond-CMOS devices, however, it is no longer sufficient to develop algorithms, architectures and circuits independent of one another. Cross-layer efforts spanning from devices to circuits to architectures to algorithms are indispensable. This talk will examine energy-efficient neural network accelerators for embedded applications in this context. Several deep neural network accelerator designs based on alternative device technologies, circuit styles and architectures will be highlighted. A comprehensive application-level benchmarking study for the MNIST dataset will be presented. The discussions will demonstrate that cross-layer efforts indeed can lead to orders of magnitude gain towards achieving extreme scale energy-efficient processing.
节能处理的跨层视角:从cmos器件到深度学习
随着基于摩尔定律的设备扩展和随之而来的性能扩展趋势放缓,人们对快速、更节能的信息处理的新技术和计算模型的兴趣越来越大。与此同时,越来越多的证据表明,对于传统的布尔电路和冯·诺依曼处理器来说,超越CMOS的器件与CMOS技术竞争将是一个挑战。然而,一些超越cmos的器件表现出其他独特的特性,如双极性、负差分电阻、滞后和振荡行为。利用这些独特的特性,特别是在替代电路和架构范例的背景下,有可能在功率、性能和能力方面提供数量级的改进。然而,为了充分利用超cmos器件,仅仅开发彼此独立的算法、架构和电路是不够的。从设备到电路,从架构到算法的跨层努力是不可或缺的。本讲座将探讨在此背景下嵌入式应用的节能神经网络加速器。将重点介绍几种基于替代设备技术、电路风格和架构的深度神经网络加速器设计。将介绍MNIST数据集的综合应用级基准研究。讨论将表明,跨层的努力确实可以导致实现极端规模节能处理的数量级增益。
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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