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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence

DWM: A Decomposable Winograd Method for Convolution Acceleration

February 1, 2023

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Authors

Di Huang

Chinese Academy of Sciences


Xishan Zhang

Chinese Academy of Sciences


Rui Zhang

Chinese Academy of Sciences


Tian Zhi

Chinese Academy of Sciences


Deyuan He

Chinese Academy of Sciences


Jiaming Guo

Chinese Academy of Sciences


Chang Liu

Chinese Academy of Sciences


Qi Guo

Chinese Academy of Sciences


Zidong Du

Chinese Academy of Sciences


Shaoli Liu

Chinese Academy of Sciences


Tianshi Chen

Chinese Academy of Sciences


Yunji Chen

Chinese Academy of Sciences


DOI:

10.1609/aaai.v34i04.5838


Abstract:

Winograd's minimal filtering algorithm has been widely used in Convolutional Neural Networks (CNNs) to reduce the number of multiplications for faster processing. However, it is only effective on convolutions with kernel size as 3x3 and stride as 1, because it suffers from significantly increased FLOPs and numerical accuracy problem for kernel size larger than 3x3 and fails on convolution with stride larger than 1. In this paper, we propose a novel Decomposable Winograd Method (DWM), which breaks through the limitation of original Winograd's minimal filtering algorithm to a wide and general convolutions. DWM decomposes kernels with large size or large stride to several small kernels with stride as 1 for further applying Winograd method, so that DWM can reduce the number of multiplications while keeping the numerical accuracy. It enables the fast exploring of larger kernel size and larger stride value in CNNs for high performance and accuracy and even the potential for new CNNs. Comparing against the original Winograd, the proposed DWM is able to support all kinds of convolutions with a speedup of ∼2, without affecting the numerical accuracy.

Topics: AAAI

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Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen DWM: A Decomposable Winograd Method for Convolution Acceleration Proceedings of the AAAI Conference on Artificial Intelligence (2020) 4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen DWM: A Decomposable Winograd Method for Convolution Acceleration AAAI 2020, 4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen (2020). DWM: A Decomposable Winograd Method for Convolution Acceleration. Proceedings of the AAAI Conference on Artificial Intelligence, 4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen. DWM: A Decomposable Winograd Method for Convolution Acceleration. Proceedings of the AAAI Conference on Artificial Intelligence 2020 p.4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen. 2020. DWM: A Decomposable Winograd Method for Convolution Acceleration. "Proceedings of the AAAI Conference on Artificial Intelligence". 4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen. (2020) "DWM: A Decomposable Winograd Method for Convolution Acceleration", Proceedings of the AAAI Conference on Artificial Intelligence, p.4174-4181

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen, "DWM: A Decomposable Winograd Method for Convolution Acceleration", AAAI, p.4174-4181, 2020.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen. "DWM: A Decomposable Winograd Method for Convolution Acceleration". Proceedings of the AAAI Conference on Artificial Intelligence, 2020, p.4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen. "DWM: A Decomposable Winograd Method for Convolution Acceleration". Proceedings of the AAAI Conference on Artificial Intelligence, (2020): 4174-4181.

Di Huang||Xishan Zhang||Rui Zhang||Tian Zhi||Deyuan He||Jiaming Guo||Chang Liu||Qi Guo||Zidong Du||Shaoli Liu||Tianshi Chen||Yunji Chen. DWM: A Decomposable Winograd Method for Convolution Acceleration. AAAI[Internet]. 2020[cited 2023]; 4174-4181.


ISSN: 2374-3468


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