yunjhongwu
burn-rl-examples
Rust

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.
โ–ธ Files click to expand
README

Experimenting Reinforcement Learning with Rust Burn

Training on CartPole

cartpole-training

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 the Environment trait.

References

๐Ÿ”— More in this category

ยฉ 2026 GitRepoTrend ยท yunjhongwu/burn-rl-examples ยท Updated daily from GitHub