EF_HC
Decentralized Learning System
A decentralized learning system that enables distributed data sharing and model updates among devices with varying network communication capabilities.
Decentralized Event-Triggered Federated Learning with Heterogeneous Communication Thresholds
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Language: Python
last commit: almost 3 years ago decentralizedevent-triggeredfederated-learning
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