| Literature DB >> 29318659 |
Miao Hu1, Catherine E Graves1, Can Li2, Yunning Li2, Ning Ge3, Eric Montgomery1, Noraica Davila1, Hao Jiang2, R Stanley Williams1, J Joshua Yang2, Qiangfei Xia2, John Paul Strachan1.
Abstract
Using memristor crossbar arrays to accelerate computations is a promising approach to efficiently implement algorithms in deep neural networks. Early demonstrations, however, are limited to simulations or small-scale problems primarily due to materials and device challenges that limit the size of the memristor crossbar arrays that can be reliably programmed to stable and analog values, which is the focus of the current work. High-precision analog tuning and control of memristor cells across a 128 × 64 array is demonstrated, and the resulting vector matrix multiplication (VMM) computing precision is evaluated. Single-layer neural network inference is performed in these arrays, and the performance compared to a digital approach is assessed. Memristor computing system used here reaches a VMM accuracy equivalent of 6 bits, and an 89.9% recognition accuracy is achieved for the 10k MNIST handwritten digit test set. Forecasts show that with integrated (on chip) and scaled memristors, a computational efficiency greater than 100 trillion operations per second per Watt is possible.Entities:
Keywords: crossbar arrays; memristor; metal oxide; neuromorphic computing
Year: 2018 PMID: 29318659 DOI: 10.1002/adma.201705914
Source DB: PubMed Journal: Adv Mater ISSN: 0935-9648 Impact factor: 30.849