Author:
Esser Steven K.,Merolla Paul A.,Arthur John V.,Cassidy Andrew S.,Appuswamy Rathinakumar,Andreopoulos Alexander,Berg David J.,McKinstry Jeffrey L.,Melano Timothy,Barch Davis R.,di Nolfo Carmelo,Datta Pallab,Amir Arnon,Taba Brian,Flickner Myron D.,Modha Dharmendra S.
Abstract
Deep networks are now able to achieve human-level performance on a broad spectrum of recognition tasks. Independently, neuromorphic computing has now demonstrated unprecedented energy-efficiency through a new chip architecture based on spiking neurons, low precision synapses, and a scalable communication network. Here, we demonstrate that neuromorphic computing, despite its novel architectural primitives, can implement deep convolution networks that (i) approach state-of-the-art classification accuracy across eight standard datasets encompassing vision and speech, (ii) perform inference while preserving the hardware’s underlying energy-efficiency and high throughput, running on the aforementioned datasets at between 1,200 and 2,600 frames/s and using between 25 and 275 mW (effectively >6,000 frames/s per Watt), and (iii) can be specified and trained using backpropagation with the same ease-of-use as contemporary deep learning. This approach allows the algorithmic power of deep learning to be merged with the efficiency of neuromorphic processors, bringing the promise of embedded, intelligent, brain-inspired computing one step closer.
Funder
DOD | Defense Advanced Research Projects Agency
Publisher
Proceedings of the National Academy of Sciences
Cited by
461 articles.
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