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On Federated Learning with Energy Harvesting Clients

Cong Shen, Jing Yang, Jie Xu

2022ICASSP 2022 - 2022 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)15 citationsDOI

Abstract

Catering to the proliferation of Internet of Things devices and distributed machine learning at the edge, we propose an energy harvesting federated learning (EHFL) framework in this paper. The introduction of EH implies that a client’s availability to participate in any FL round cannot be guaranteed, which complicates the theoretical analysis. We derive novel convergence bounds that capture the impact of time-varying device availabilities due to the random EH characteristics of the participating clients, for both parallel and local stochastic gradient descent (SGD) with non-convex loss functions. The results suggest that having a uniform client scheduling that maximizes the minimum number of clients throughout the FL process is desirable, which is further corroborated by the numerical experiments using a real-world FL task and a state-of-the-art EH scheduler.

Topics & Concepts

Computer scienceStochastic gradient descentScheduling (production processes)Convergence (economics)Distributed computingRegular polygonEnhanced Data Rates for GSM EvolutionInternet of ThingsThe InternetProcess (computing)Convex functionMathematical optimizationArtificial intelligenceWorld Wide WebMathematicsArtificial neural networkGeometryOperating systemEconomicsEconomic growthEnergy Harvesting in Wireless NetworksAge of Information OptimizationAdvanced MIMO Systems Optimization
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