Based on PARL, the SAC algorithm of deep reinforcement learning has been reproduced, reaching the same level of indicators as the paper in Mujoco benchmarks.
Paper: SAC in Soft Actor-Critic: Off-Policy Maximum Entropy Deep Reinforcement Learning with a Stochastic Actor
PARL currently supports the open-source version of Mujoco provided by DeepMind, so users do not need to download binaries of Mujoco as well as install mujoco-py and get license. For more details, please visit Mujoco
- Each experiment was run three times with different seeds
- python3.7+
- parl>=2.1.1
- paddlepaddle>=2.0.0
- gym>=0.26.0
- mujoco-py>=2.2.2
# To train for HalfCheetah-v4(default),Hopper-v4,Walker2d-v4,Ant-v4
# --alpha 0.2(default)
python train.py --env [ENV_NAME]
# To reproduce the performance of Humanoid-v4
python train.py --env Humanoid-v4 --alpha 0.05