Minimal and clean examples of reinforcement learning algorithms presented by RLCode team. [한국어]
From the basics to deep reinforcement learning, this repo provides easy-to-read code examples. One file for each algorithm. Please feel free to create a Pull Request, or open an issue!
- Python 3.5
- Tensorflow 1.0.0
- Keras
- numpy
- pandas
- matplot
- pillow
- Skimage
- h5py
pip install -r requirements.txt
Grid World - Mastering the basics of reinforcement learning in the simplified world called "Grid World"
CartPole - Applying deep reinforcement learning on basic Cartpole game.
- Deep Q Network
- Double Deep Q Network
- Policy Gradient
- Actor Critic (A2C)
- Asynchronous Advantage Actor Critic (A3C)
Atari - Mastering Atari games with Deep Reinforcement Learning
- Breakout - DQN, DDQN Dueling DDQN A3C
- Pong - Policy Gradient
OpenAI GYM - [WIP]
- Mountain Car - DQN