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Description


Reimplementation of Soft Actor-Critic: Off-Policy Maximum Entropy Deep Reinforcement Learning with a Stochastic Actor.

Contributions are welcome. If you find any mistake (very likely) or know how to make it more stable, don't hesitate to send a pull request.

Requirements


Run


Use the default hyperparameters.

For SAC :

python main.py --env-name Humanoid-v2 --scale_R 20 

For SAC (Hard Update):

python main.py --env-name Humanoid-v2 --scale_R 20 --tau 1 --value_update 1000

For SAC (Deterministic, Hard Update):

python main.py --env-name Humanoid-v2 --scale_R 20 --deterministic True --tau 1 --value_update 1000

Results


My results on Humanoid-v2 environment using SAC, SAC(hard update) and SAC(deterministic, hard update). This is a plot of average rewards at every 10000 step interval

sac all

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Description
PyTorch implementation of soft actor critic
Readme MIT
1.4 MiB
Languages
Python 96%
Makefile 4%