FedTHE
Personalization software
Improves machine learning models for personalized performance under evolving test distributions in distributed environments
[ICLR 2023] Test-time Robust Personalization for Federated Learning
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Language: Jupyter Notebook
last commit: over 1 year ago federated-learningood-robustnesstest-time-adaptation
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