omnisafe
Safe RL framework
A framework designed to accelerate the development of safe reinforcement learning algorithms by providing a modular, high-performance platform for parallel computing and out-of-box toolkits.
JMLR: OmniSafe is an infrastructural framework for accelerating SafeRL research.
954 stars
40 watching
133 forks
Language: Python
last commit: 4 months ago
Linked from 1 awesome list
benchmarkconstraint-rlconstraint-satisfaction-problemdeep-learningdeep-reinforcement-learningmachine-learningpytorchreinforcement-learningsafe-reinforcement-learningsafe-rlsaferlsafety-criticalsafety-gymsafety-gymnasium
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