FedPLT: Scalable, Resource-Efficient, and Heterogeneity-Aware Federated Learning via Partial Layer Training
Ahmad Dabaja, Rachid El-Azouzi

TL;DR
FedPLT introduces a partial layer training method for federated learning that reduces communication costs and handles client heterogeneity effectively, matching or surpassing full-model training performance.
Contribution
The paper proposes FedPLT, a structured partial parameter training approach that adapts to client resources and improves federated learning efficiency and robustness.
Findings
FedPLT reduces trainable parameters by 71%-82%.
FedPLT achieves comparable or better performance than full-model training.
FedPLT outperforms existing methods in heterogeneous environments.
Abstract
Federated Learning (FL) has gained significant attention in distributed machine learning by enabling collaborative model training across decentralized system while preserving data privacy. Although extensive research has addressed statistical data heterogeneity, FL still faces several challenges, including high communication and computation overheads and severe device heterogeneity, which require further investigation. Prior work has addressed these issues through sub-model training and partial parameter training. However, such methods often suffer from inconsistent parameter distributions across clients, inaccurate global loss estimation, and increased bias and variance. Guided by our empirical analysis, we propose FedPLT (Federated Learning with Partial Layer Training), an innovative and structured partial parameter training approach that exhibits training behavior similar to full…
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