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A 28 nm 66.8 TOPS/W Sparsity-Aware Dynamic-Precision Deep-Learning Processor

Authors
Mun, HanGyeolSon, HyunwooMoon, SeunghyunPark, JaehyunKim, ByungJunSim, Jae-Yoon
Issue Date
Jul-2023
Publisher
Institute of Electrical and Electronics Engineers Inc.
Citation
Digest of Technical Papers - Symposium on VLSI Technology, v.2023-June
Indexed
SCOPUS
Journal Title
Digest of Technical Papers - Symposium on VLSI Technology
Volume
2023-June
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/67619
DOI
10.23919/VLSITechnologyandCir57934.2023.10185264
ISSN
0743-1562
Abstract
The required precision for deep neural network (DNN) models strongly depends on sparsity and compactness. This paper presents a heterogeneous DNN accelerator performing dynamic-precision computing adapted to sparsity. Simulation shows that the proposed dynamic precision computing successfully covers EfficientNets and Transformers with a negligible accuracy loss. The accelerator, fabricated in a 28nm LP CMOS, achieves a peak energy efficiency of 66.8 TOPS/W with a peak performance of 4.2 TOPS. © 2023 JSAP.
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IT공과대학 (전자공학부)
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