LGDCSYJan 8, 2023

AnycostFL: Efficient On-Demand Federated Learning over Heterogeneous Edge Devices

arXiv:2301.03062v129 citationsh-index: 57
Originality Incremental advance
AI Analysis

This addresses efficiency challenges in federated learning for edge computing with resource-constrained devices, offering incremental improvements over existing methods.

The paper tackles on-demand federated learning over heterogeneous edge devices by proposing AnycostFL, a cost-adjustable framework that reduces training latency and energy consumption by up to 1.9 times while improving converged global accuracy.

In this work, we investigate the challenging problem of on-demand federated learning (FL) over heterogeneous edge devices with diverse resource constraints. We propose a cost-adjustable FL framework, named AnycostFL, that enables diverse edge devices to efficiently perform local updates under a wide range of efficiency constraints. To this end, we design the model shrinking to support local model training with elastic computation cost, and the gradient compression to allow parameter transmission with dynamic communication overhead. An enhanced parameter aggregation is conducted in an element-wise manner to improve the model performance. Focusing on AnycostFL, we further propose an optimization design to minimize the global training loss with personalized latency and energy constraints. By revealing the theoretical insights of the convergence analysis, personalized training strategies are deduced for different devices to match their locally available resources. Experiment results indicate that, when compared to the state-of-the-art efficient FL algorithms, our learning framework can reduce up to 1.9 times of the training latency and energy consumption for realizing a reasonable global testing accuracy. Moreover, the results also demonstrate that, our approach significantly improves the converged global accuracy.

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