Publication
IEEE Design and Test
Paper

Training large-scale artificial neural networks on simulated resistive crossbar arrays

View publication

Abstract

Resistive crossbar arrays are promising options for accelerating enormous computation needed for training modern deep neural networks (DNNs). However, verification of this idea has not been scaled up to realistically sized DNNs due to the nonideal device behavior and hardware design constraints. In this article, the authors propose a novel simulation framework to explore such design constraints on the large-scale problems and devise algorithmic measures to pave the way for robust resistive crossbar-based DNN training accelerators. - Jungwook Choi, IBM Research.

Date

01 Apr 2020

Publication

IEEE Design and Test

Authors

Share