Journal of Semiconductors, Volume. 45, Issue 1, 012301(2024)
Optimized operation scheme of flash-memory-based neural network online training with ultra-high endurance
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Yang Feng, Zhaohui Sun, Yueran Qi, Xuepeng Zhan, Junyu Zhang, Jing Liu, Masaharu Kobayashi, Jixuan Wu, Jiezhi Chen. Optimized operation scheme of flash-memory-based neural network online training with ultra-high endurance[J]. Journal of Semiconductors, 2024, 45(1): 012301
Category: Articles
Received: Jul. 14, 2023
Accepted: --
Published Online: Mar. 13, 2024
The Author Email: Jixuan Wu (JXWu), Jiezhi Chen (JZChen)