Byzantine-Federated-RL

FL Framework

Provides a framework and theoretical foundation for Federated Reinforcement Learning with Byzantine Resilience in distributed systems

code for NeurIPS2021 paper on Federated Reinforcement Learning with Byzantine Resilience

GitHub

85 stars
4 watching
13 forks
Language: Python
last commit: about 1 year ago
byzantine-reinforcement-learningfederated-learningfederated-reinforcement-learningfedrlpolicy-gradientreinforcement-learningsample-efficient-rl

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