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8 март 2019 г. - ChengGong: $\mu$L2Q: An Ultra-Low Loss Quantization Method for DNN
Описание:
本文实现了多位宽的量化方案。相比于二值三值或者定点数量化等方案,本文首次从权值分布角度进行量化,实现了多位宽的高精度量化。实验表明再相同条件下,uL2Q可以实现更低精度下降。
Добавлено на ленту времени:
Quantization timeline
By
龚成
29 мар 2020
1
0
619
Дата:
8 март 2019 г.
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~ 5 гг и 2 мес назад
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