Allo: Optimizing Federated Learning via Guided Epoch Allocation

Jiasheng Wang, Yufeng Zhan, Yuanqing Xia

科研成果: 书/报告/会议事项章节会议稿件同行评审

摘要

Federated learning has shown great potential for addressing the challenge of data islands while preserving data privacy. Unlike traditional distributed machine learning, federated learning faces the problem of system and statistical heterogeneity, which makes it difficult to deploy at the edge. However, current methods cannot optimize the federated learning by taking the clients' system heterogeneity and statistical heterogeneity together. This paper proposes Allo, a framework based on deep reinforcement learning that can automatically choose the appropriate number of local epochs for each client, which can mitigate the impact of stragglers and unbalanced data distribution. With extensive experiments performed in PyTorch, we show that the performance of federated training can be improved by over 15% on the MNIST dataset and over 12% on CIFAR-10 dataset, as compared to the baseline.

源语言英语
主期刊名Proceedings of the 41st Chinese Control Conference, CCC 2022
编辑Zhijun Li, Jian Sun
出版商IEEE Computer Society
3225-3230
页数6
ISBN(电子版)9789887581536
DOI
出版状态已出版 - 2022
活动41st Chinese Control Conference, CCC 2022 - Hefei, 中国
期限: 25 7月 202227 7月 2022

出版系列

姓名Chinese Control Conference, CCC
2022-July
ISSN(印刷版)1934-1768
ISSN(电子版)2161-2927

会议

会议41st Chinese Control Conference, CCC 2022
国家/地区中国
Hefei
时期25/07/2227/07/22

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