Overview | Requirements | Installation | Usage | Documentation | Tutorial | Paper | Blog post
The DeepMind Alchemy environment is a meta-reinforcement learning benchmark that presents tasks sampled from a task distribution with deep underlying structure. It was created to test for the ability of agents to reason and plan via latent state inference, as well as useful exploration and experimentation. It is Unity-based.
This environment is provided through pre-packaged Docker containers.
This package consists of support code to run these Docker containers. You
interact with the task environment via a
dm_env
Python interface.
Please see the documentation for more detailed information on the available tasks, actions and observations.
dm_alchemy
requires Docker,
Python 3.6.1 or later and a x86-64 CPU with SSE4.2
support. We do not attempt to maintain a working version for Python 2.
Alchemy is intended to be run on Linux and is not officially supported on Mac and Windows. However, it can in principle be run on any platform (though installation may be more of a headache). In particular, on Windows, you will need to install and run Alchemy with WSL.
Note: We recommend using Python virtual environment to mitigate conflicts with your system's Python environment.
Download and install Docker:
- For Linux, install Docker-CE. Ensure that you can run Docker as a non-root user.
- Install Docker Desktop for OSX or Windows.
Ensure that docker is working correctly by running docker run -d gcr.io/deepmind-environments/alchemy:v1.0.0
.
You can install dm_alchemy
by cloning a local copy of our GitHub repository:
$ git clone https://github.com/deepmind/dm_alchemy.git
$ pip install wheel
$ pip install --upgrade setuptools
$ pip install ./dm_alchemy
To also install the dependencies for the examples/
, install with:
$ pip install ./dm_alchemy[examples]
Once dm_alchemy
is installed, to instantiate a dm_env
instance run the
following:
import dm_alchemy
LEVEL_NAME = ('alchemy/perceptual_mapping_'
'randomized_with_rotation_and_random_bottleneck')
settings = dm_alchemy.EnvironmentSettings(seed=123, level_name=LEVEL_NAME)
env = dm_alchemy.load_from_docker(settings)
For more details see the introductory colab.
If you use Alchemy in your work, please cite the accompanying technical report:
@article{wang2021alchemy,
title={Alchemy: A structured task distribution for meta-reinforcement learning},
author={Jane Wang and Michael King and Nicolas Porcel and Zeb Kurth-Nelson
and Tina Zhu and Charlie Deck and Peter Choy and Mary Cassin and
Malcolm Reynolds and Francis Song and Gavin Buttimore and David Reichert
and Neil Rabinowitz and Loic Matthey and Demis Hassabis and Alex Lerchner
and Matthew Botvinick},
year={2021},
journal={arXiv preprint arXiv:2102.02926},
url={https://arxiv.org/abs/2102.02926},
}
This is not an officially supported Google product.