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A Novel Optimized Asynchronous Federated Learning Framework

18 November 2021
Zhicheng Zhou
Hailong Chen
Kunhua Li
Fei Hu
Bingjie Yan
Jieren Cheng
Xuyan Wei
Bernie Liu
Xiulai Li
Fuwen Chen
Yongjie Sui
    FedML
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Abstract

Federated Learning (FL) since proposed has been applied in many fields, such as credit assessment, medical, etc. Because of the difference in the network or computing resource, the clients may not update their gradients at the same time that may take a lot of time to wait or idle. That's why Asynchronous Federated Learning (AFL) method is needed. The main bottleneck in AFL is communication. How to find a balance between the model performance and the communication cost is a challenge in AFL. This paper proposed a novel AFL framework VAFL. And we verified the performance of the algorithm through sufficient experiments. The experiments show that VAFL can reduce the communication times about 51.02\% with 48.23\% average communication compression rate and allow the model to be converged faster. The code is available at \url{https://github.com/RobAI-Lab/VAFL}

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