Toward Energy–Quality Scaling in Deep Neural Networks

Jeff Anderson,Yousra Alkabani, Tarek A. El-Ghazawi

IEEE Design & Test(2021)

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摘要
Editor's notes: This article surveys the latest advances in neural network (NN) architectures by applying them to the task of energy-quality scaling. Results show that, while coarse scaling is possible with existing NN architectures, fine-grain scaling is needed for fog computing efforts, and further work should focus on hybrid NN architecture development.
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关键词
deep learning,energy-quality scaling,neural networks
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