Reinforcement Learning with Burn in Rust
Last updated May 5, 2026
79
Stars
13
Forks
4
Issues
0
Stars/day
Attention Score
30
Language breakdown
No language data available.
โธ Files
click to expand
README
Experimenting Reinforcement Learning with Rust Burn
Training on CartPole
Agents
The project implements the following algorithms: - Deep Q-Network (DQN) - Proximal Policy Optimization (PPO) - Soft Actor-Critic for Discrete Action (SAC-Discrete)Environment
This project uses gym-rs for simulating environments. Users can create their own environment by implementing theEnvironment trait.
References
- PyTorch RL tutorial
- PPO with TorchRL tutorial
- Christodoulou, P. (2019). Soft actor-critic for discrete action settings. arXiv preprint arXiv:1910.07207.
๐ More in this category