FedSim
Model aggregator
An implementation of a federated learning algorithm that aggregates models based on similarities between them to improve overall performance in a distributed machine learning environment.
Similarity Guided Model Aggregation for Federated Learning
22 stars
1 watching
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Language: Python
last commit: over 2 years ago deep-learningfederated-learningmachine-learningprivacy-preserving-machine-learning
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