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Sustainable Federated Learning

13 Citations•2021•
Basak Guler, A. Yener
ArXiv

This paper proposes a practical federated learning framework that leverages intermittent energy arrivals for training, with provable convergence guarantees, and can be applied to a wide range of machine learning settings in networked environments, including distributed and Federated learning in wireless and edge networks.

Abstract

Potential environmental impact of machine learning by large-scale wireless networks is a major challenge for the sustainability of future smart ecosystems. In this paper, we introduce sustainable machine learning in federated learning settings, using rechargeable devices that can collect energy from the ambient environment. We propose a practical federated learning framework that leverages intermittent energy arrivals for training, with provable convergence guarantees. Our framework can be applied to a wide range of machine learning settings in networked environments, including distributed and federated learning in wireless and edge networks. Our experiments demonstrate that the proposed framework can provide significant performance improvement over the benchmark energy-agnostic federated learning settings. Index Terms Sustainable machine learning, federated learning, green AI.