2022
DOI: 10.48550/arxiv.2204.13878
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Energy Minimization for Federated Asynchronous Learning on Battery-Powered Mobile Devices via Application Co-running

Abstract: Energy is an essential, but often forgotten aspect in large-scale federated systems. As most of the research focuses on tackling computational and statistical heterogeneity from the machine learning algorithms, the impact on the mobile system still remains unclear. In this paper, we design and implement an online optimization framework by connecting asynchronous execution of federated training with application co-running to minimize energy consumption on battery-powered mobile devices. From a series of experim… Show more

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