Embracing Federated Learning: Enabling Weak Client Participation via Partial Model Training

  • Lee, Sunwoo
  • Zhang, Tuo
  • Prakash, Saurav
  • Niu, Yue
  • Avestimehr, Salman
Citations

WEB OF SCIENCE

10
Citations

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12

초록

In Federated Learning (FL), clients may have weak devices that cannot train the full model or even hold it in their memory space. To implement large-scale FL applications, thus, it is crucial to develop a distributed learning method that enables the participation of such weak clients. We propose EmbracingFL , a general FL framework that allows all available clients to join the distributed training regardless of their system resource capacity. The framework is built upon a novel form of partial model training method in which each client trains as many consecutive output-side layers as its system resources allow. Our study demonstrates that EmbracingFL encourages each layer to have similar data representations across clients, improving FL efficiency. The proposed partial model training method guarantees convergence to a neighbor of stationary points for non-convex and smooth problems. We evaluate the efficacy of EmbracingFL under a variety of settings with a mixed number of strong, moderate ( similar to 40% memory), and weak ( similar to 15% memory) clients, datasets (CIFAR-10, FEMNIST, and IMDB), and models (ResNet20, CNN, and LSTM). Our empirical study shows that EmbracingFL consistently achieves high accuracy as like all clients are strong, outperforming the state-of-the-art width reduction methods (i.e., HeteroFL and FjORD).

키워드

TrainingComputational modelingFederated learningData modelsAnalytical modelsServersLong short term memoryheterogeneous systemspartial model trainingdata similarity
제목
Embracing Federated Learning: Enabling Weak Client Participation via Partial Model Training
저자
Lee, SunwooZhang, TuoPrakash, SauravNiu, YueAvestimehr, Salman
DOI
10.1109/TMC.2024.3392212
발행일
2024-12
유형
Article
저널명
IEEE Transactions on Mobile Computing
23
12
페이지
11133 ~ 11143