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A suite of test scenarios for multi-agent reinforcement learning.

Project description

Melting Pot

A suite of test scenarios for multi-agent reinforcement learning.

Melting Pot substrates

Melting Pot 2.0 Tech Report Melting Pot Contest at NeurIPS 2023

About

Melting Pot assesses generalization to novel social situations involving both familiar and unfamiliar individuals, and has been designed to test a broad range of social interactions such as: cooperation, competition, deception, reciprocation, trust, stubbornness and so on. Melting Pot offers researchers a set of over 50 multi-agent reinforcement learning substrates (multi-agent games) on which to train agents, and over 256 unique test scenarios on which to evaluate these trained agents. The performance of agents on these held-out test scenarios quantifies whether agents:

  • perform well across a range of social situations where individuals are interdependent,
  • interact effectively with unfamiliar individuals not seen during training

The resulting score can then be used to rank different multi-agent RL algorithms by their ability to generalize to novel social situations.

We hope Melting Pot will become a standard benchmark for multi-agent reinforcement learning. We plan to maintain it, and will be extending it in the coming years to cover more social interactions and generalization scenarios.

If you are interested in extending Melting Pot, please refer to the Extending Melting Pot documentation.

Installation

pip install

Melting Pot is available on PyPI and can be installed using:

pip install dm-meltingpot

NOTE: Melting Pot is built on top of DeepMind Lab2D which is distributed as pre-built wheels. If there is no appropriate wheel for dmlab2d, you will need to build it from source (see the dmlab2d README.md for details).

Manual install

If you want to work on the Melting Pot source code, you can perform an editable installation as follows:

  1. Clone Melting Pot:

    git clone -b main https://github.com/google-deepmind/meltingpot
    cd meltingpot
    
  2. (Optional) Activate a virtual environment, e.g.:

    python -m venv venv
    source venv/bin/activate
    
  3. Install Melting Pot:

    pip install --editable .[dev]
    
  4. (Optional) Test the installation:

    pytest --pyargs meltingpot
    

Devcontainer (x86 only)

NOTE: This Devcontainer only works for x86 platforms. For arm64 (newer M1 Macs) users will have to follow the manual installation steps.

This project includes a pre-configured development environment (devcontainer).

You can launch a working development environment with one click, using e.g. Github Codespaces or the VSCode Containers extension.

CUDA support

To enable CUDA support (required for GPU training), make sure you have the nvidia-container-toolkit package installed, and then run Docker with the ---gpus all flag enabled. Note that for GitHub Codespaces this isn't necessary, as it's done for you automatically.

Example usage

Evaluation

The evaluation library can be used to evaluate SavedModels trained on Melting Pot substrates.

Evaluation results from the Melting Pot 2.0 Tech Report can be viewed in the Evaluation Notebook.

Open In Colab

Interacting with the substrates

You can try out the substrates interactively with the human_players scripts. For example, to play the clean_up substrate, you can run:

python meltingpot/human_players/play_clean_up.py

You can move around with the W, A, S, D keys, Turn with Q, and E, fire the zapper with 1, and fire the cleaning beam with 2. You can switch between players with TAB. There are other substrates available in the human_players directory. Some have multiple variants, which you select with the --level_name flag.

Training agents

We provide two example scripts: one using RLlib, and another using PettingZoo with Stable-Baselines3 (SB3). Note that Melting Pot is agnostic to how you train your agents, and as such, these scripts are not meant to be a suggestion on how to achieve good scores in the task suite.

RLlib

This example uses RLlib to train agents in self-play on a Melting Pot substrate.

First you will need to install the dependencies needed by the examples:

cd <meltingpot_root>
pip install -r examples/requirements.txt

Then you can run the training experiment using:

cd examples/rllib
python self_play_train.py

PettingZoo and Stable-Baselines3

This example uses a PettingZoo wrapper with a fully parameter shared PPO agent from SB3.

The PettingZoo wrapper can be used separately from SB3 and can be found here.

cd <meltingpot_root>
pip install -r examples/requirements.txt
cd examples/pettingzoo
python sb3_train.py

Documentation

Full documentation is available here.

Citing Melting Pot

If you use Melting Pot in your work, please cite the accompanying article:

@inproceedings{leibo2021meltingpot,
    title={Scalable Evaluation of Multi-Agent Reinforcement Learning with
           Melting Pot},
    author={Joel Z. Leibo AND Edgar Du\'e\~nez-Guzm\'an AND Alexander Sasha
            Vezhnevets AND John P. Agapiou AND Peter Sunehag AND Raphael Koster
            AND Jayd Matyas AND Charles Beattie AND Igor Mordatch AND Thore
            Graepel},
    year={2021},
    journal={International conference on machine learning},
    organization={PMLR},
    url={https://doi.org/10.48550/arXiv.2107.06857},
    doi={10.48550/arXiv.2107.06857}
}

Disclaimer

This is not an officially supported Google product.

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