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LANCE: Efficient Low-Precision Quantized Winograd Convolution for Neural
  Networks Based on Graphics Processing Units

LANCE: Efficient Low-Precision Quantized Winograd Convolution for Neural Networks Based on Graphics Processing Units

19 March 2020
Guangli Li
Lei Liu
Xueying Wang
Xiu Ma
Xiaobing Feng
    MQ
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Papers citing "LANCE: Efficient Low-Precision Quantized Winograd Convolution for Neural Networks Based on Graphics Processing Units"

1 / 1 papers shown
Title
Winograd Convolution: A Perspective from Fault Tolerance
Winograd Convolution: A Perspective from Fault Tolerance
Xing-xiong Xue
Haitong Huang
Cheng Liu
Ying Wang
Tao Luo
L. Zhang
47
13
0
17 Feb 2022
1