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Lee, Jongeun
Intelligent Computing and Codesign Lab.
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Dynamic energy-accuracy trade-off using stochastic computing in deep neural networks

Author(s)
Kim, KyounghoonKim, JungkiYu, JoonsangSeo, JungwooLee, JongeunChoi, Kiyoung
Issued Date
2016-06-05
DOI
10.1145/2897937.2898011
URI
https://scholarworks.unist.ac.kr/handle/201301/32799
Fulltext
http://dl.acm.org/citation.cfm?doid=2897937.2898011
Citation
Design Automation Conference, pp.a124
Abstract
This paper presents an efficient DNN design with stochastic computing. Observing that directly adopting stochastic computing to DNN has some challenges including random error fluctuation, range limitation, and overhead in accumulation, we address these problems by removing near-zero weights, applying weight-scaling, and integrating the activation function with the accumulator. The approach allows an easy implementation of early decision termination with a fixed hardware design by exploiting the progressive precision characteristics of stochastic computing, which was not easy with existing approaches. Experimental results show that our approach outperforms the conventional binary logic in terms of gate area, latency, and power consumption.
Publisher
Institute of Electrical and Electronics Engineers Inc.
ISSN
0738-100X

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