Sensors (Aug 2023)

Limitations and Future Aspects of Communication Costs in Federated Learning: A Survey

  • Muhammad Asad,
  • Saima Shaukat,
  • Dou Hu,
  • Zekun Wang,
  • Ehsan Javanmardi,
  • Jin Nakazato,
  • Manabu Tsukada

DOI
https://doi.org/10.3390/s23177358
Journal volume & issue
Vol. 23, no. 17
p. 7358

Abstract

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This paper explores the potential for communication-efficient federated learning (FL) in modern distributed systems. FL is an emerging distributed machine learning technique that allows for the distributed training of a single machine learning model across multiple geographically distributed clients. This paper surveys the various approaches to communication-efficient FL, including model updates, compression techniques, resource management for the edge and cloud, and client selection. We also review the various optimization techniques associated with communication-efficient FL, such as compression schemes and structured updates. Finally, we highlight the current research challenges and discuss the potential future directions for communication-efficient FL.

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