pytorch-REINFORCE
Reinforcement learning framework
A PyTorch implementation of the REINFORCE algorithm for reinforcement learning in continuous and discrete environments.
PyTorch Implementation of REINFORCE for both discrete & continuous control
266 stars
13 watching
50 forks
Language: Python
last commit: almost 8 years ago continuous-controlgymmujocopytorchreinforcereinforcement-learning
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