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Federated Learning (FL) is a widely utilized distributed learning methodology that facilitates real-time continuous learning while preserving client privacy. In most FL implementations, it is assumed that all edge clients possess sufficient computational capabilities to participate in the training of a Deep Neural Network (DNN) model. However, in practical applications, some clients may have limited resources and can only train a significantly smaller local model. To address system heterogeneity, this paper introduces Fed-SDS, an approach that adaptively tailors sparsity strategies for local models. In comparison to existing sparse FL schemes, Fed-SDS improves convergence and enhances model accuracy through a novel channel-wise sparsity metric, namely Mean Weight Magnitude with Gradient (MWMG). In our experiments, we compared Fed-SDS with other sparse FL methods. Empirical results demonstrate that while other sparse methods can significantly impact convergence, Fed-SDS can achieve the highest task accuracies and convergence speed in various system and data heterogeneity scenarios.
Cheng et al. (Mon,) studied this question.
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