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Communication-efficient federated learning via knowledge distillation

Chuhan Wu,Fangzhao Wu,2 Authors,Xing Xie

2021 · DOI: 10.1038/s41467-022-29763-x
Nature Communications · 451 Citations

TLDR

This work presents a communication-efficient federated learning method that saves a major fraction of communication cost, and reveals the advantage of reciprocal learning in machine knowledge transfer and the evolutional low-rank properties of deep model updates.

Abstract

Federated learning is a privacy-preserving machine learning technique to train intelligent models from decentralized data, which enables exploiting private data by communicating local model updates in each iteration of model learning rather than the raw data. However, model updates can be extremely large if they contain numerous parameters, and many rounds of communication are needed for model training. The huge communication cost in federated learning leads to heavy overheads on clients and high environmental burdens. Here, we present a federated learning method named FedKD that is both communication-efficient and effective, based on adaptive mutual knowledge distillation and dynamic gradient compression techniques. FedKD is validated on three different scenarios that need privacy protection, showing that it maximally can reduce 94.89% of communication cost and achieve competitive results with centralized model learning. FedKD provides a potential to efficiently deploy privacy-preserving intelligent systems in many scenarios, such as intelligent healthcare and personalization. This work presents a communication-efficient federated learning method that saves a major fraction of communication cost. It reveals the advantage of reciprocal learning in machine knowledge transfer and the evolutional low-rank properties of deep model updates.