federated-conformal
Federated prediction framework
A framework for incorporating uncertainty quantification into federated learning models
Conformal Prediction + Federated Learning
10 stars
2 watching
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Language: Jupyter Notebook
last commit: over 1 year ago conformal-predictionuncertainty-quantification
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