SplitMix

Federated learning optimizer

An algorithm for distributed learning with flexible model customization during training and testing

[ICLR2022] Efficient Split-Mix federated learning for in-situ model customization during both training and testing time

GitHub

40 stars
3 watching
9 forks
Language: Python
last commit: over 1 year ago
federated-learningheterofliclr2022personalizationpytorchrobustnessslimmable-networkstiny-ml

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