BriefGPT.xyz
Oct, 2022
深度神经网络能效实现的后训练量化
Post-Training Quantization for Energy Efficient Realization of Deep Neural Networks
HTML
PDF
Cecilia Latotzke, Batuhan Balim, Tobias Gemmeke
TL;DR
该论文提出了一种基于量化的后训练量化流程,无需重新训练即可加速深度神经网络的推理,并得到了在ImageNet上6位的Top-1准确率增加2.2%的结果。
Abstract
The biggest challenge for the deployment of
deep neural networks
(DNNs) close to the generated data on edge devices is their size, i.e., memory footprint and computational complexity. Both are significantly reduced with
→