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Personalized Federated Learning towards Communication Efficiency, Robustness and Fairness (NeurIPS 2022)

This repository implements all experiments in the paper Personalized Federated Learning towards Communication Efficiency, Robustness and Fairness.

Authors: Shiyun Lin, Yuze Han, Xiang Li, Zhihua Zhang

The paper has been accepted by NeurIPS 2022.

This repository is built based on PyTorch.

The repository does not only implement lp-proj proposed in the paper, but also other benchmark algorithms including FedAvg, pFedMe, Per-FedAvg, Ditto, RSA, SketchedSGD, QSGD, LG-FedAvg, DGC, LBGM.