4.7 Review

A Survey of Accelerator Architectures for Deep Neural Networks

Journal

ENGINEERING
Volume 6, Issue 3, Pages 264-274

Publisher

ELSEVIER
DOI: 10.1016/j.eng.2020.01.007

Keywords

Deep neural network; Domain-specific architecture; Accelerator

Funding

  1. National Science Foundations (NSFs) [1822085, 1725456, 1816833, 1500848, 1719160, 1725447]
  2. NSF Computing and Communication Foundations [1740352]
  3. Nanoelectronics COmputing REsearch Program in the Semiconductor Research Corporation [NC-2766A]
  4. Center for Research in Intelligent Storage and Processing-in-Memory - Defense Advanced Research Projects Agency

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Recently, due to the availability of big data and the rapid growth of computing power, artificial intelligence (AI) has regained tremendous attention and investment. Machine learning (ML) approaches have been successfully applied to solve many problems in academia and in industry. Although the explosion of big data applications is driving the development of ML, it also imposes severe challenges of data processing speed and scalability on conventional computer systems. Computing platforms that are dedicatedly designed for AI applications have been considered, ranging from a complement to von Neumann platforms to a must-have and stand-alone technical solution. These platforms, which belong to a larger category named domain-specific computing, focus on specific customization for AI. In this article, we focus on summarizing the recent advances in accelerator designs for deep neural networks (DNNs)-that is, DNN accelerators. We discuss various architectures that support DNN executions in terms of computing units, dataflow optimization, targeted network topologies, architectures on emerging technologies, and accelerators for emerging applications. We also provide our visions on the future trend of AI chip designs. (C) 2020 THE AUTHORS. Published by Elsevier LTD on behalf of Chinese Academy of Engineering and Higher Education Press Limited Company.

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