The source code and dockerfile for the GSW2024 AI Lab.
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```{project-logo} _static/img/minigrid-text.png :alt: Minigrid Logo ```
```{project-heading} Minigrid contains simple and easily configurable grid world environments to conduct Reinforcement Learning research. This library was previously known as gym-minigrid. ```
```{figure} ../figures/door-key-curriculum.gif :alt: door key environment gif :width: 350 :height: 350 ```
This library contains a collection of 2D grid-world environments with goal-oriented tasks. The agent in these environments is a triangle-like agent with a discrete action space. The tasks involve solving different maze maps and interacting with different objects such as doors, keys, or boxes. The design of the library is meant to be simple, fast, and easily customizable.
In addition, the environments found in the [BabyAI](https://github.com/mila-iqia/babyai) repository have been included in Minigrid and will be further maintained under this library.
The Gymnasium interface allows to initialize and interact with the Minigrid default environments as follows:
```{code-block} python
import gymnasium as gym env = gym.make("MiniGrid-Empty-5x5-v0", render_mode="human") observation, info = env.reset(seed=42) for _ in range(1000): action = policy(observation) # User-defined policy function observation, reward, terminated, truncated, info = env.step(action)
if terminated or truncated: observation, info = env.reset() env.close() ```
To cite this project please use:
```bibtex @article{MinigridMiniworld23, author = {Maxime Chevalier-Boisvert and Bolun Dai and Mark Towers and Rodrigo de Lazcano and Lucas Willems and Salem Lahlou and Suman Pal and Pablo Samuel Castro and Jordan Terry}, title = {Minigrid \& Miniworld: Modular \& Customizable Reinforcement Learning Environments for Goal-Oriented Tasks}, journal = {CoRR}, volume = {abs/2306.13831}, year = {2023}, } ```
```{toctree} :hidden: :caption: Introduction
content/basic_usage content/publications content/create_env_tutorial content/training ```
```{toctree} :hidden: :caption: Wrappers
api/wrapper ```
```{toctree} :hidden: :caption: Environments
environments/minigrid/index environments/babyai/index ```
```{toctree} :hidden: :caption: Development
release_notes Github <https://github.com/Farama-Foundation/MiniGrid> ```
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