Federated learning (FL) has emerged as a solution to deal with the risk of privacy leaks in machine learning training. This approach allows a variety of mobile devices to collaboratively train a machine learning model without sharing the raw on-device training data with the cloud. However, efficient edge deployment of FL is challenging because of the system/data heterogeneity and runtime variance. This paper optimizes the energy-efficiency of FL use cases while guaranteeing model convergence, by accounting for the aforementioned challenges. We propose FedGPO based on a reinforcement learning, which learns how to identify optimal global parameters (B, E, K) for each FL aggregation round adapting to the system/data heterogeneity and stochastic runtime variance. In our experiments, FedGPO improves the model convergence time by 2.4 times, and achieves 3.6 times higher energy efficiency over the baseline settings, respectively.
@article{arxiv.2211.16669,
title = {FedGPO: Heterogeneity-Aware Global Parameter Optimization for Efficient Federated Learning},
author = {Young Geun Kim and Carole-Jean Wu},
journal= {arXiv preprint arXiv:2211.16669},
year = {2022}
}
Comments
12 pages, 12 figures, IEEE International Symposium on Workload Characterization (IISWC)