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Potential Energy Surfaces on Graphs

Project description

graph-pes is a framework built to accelerate the development of machine-learned potential energy surface (PES) models that act on graph representations of atomic structures.

Links: Google Colab Quickstart - Documentation - PyPI

PyPI Conda-forge Tests codecov GitHub last commit

Features

Quickstart

pip install -q graph-pes
wget https://tinyurl.com/graph-pes-minimal-config -O config.yaml
graph-pes-train config.yaml

Alternatively, for a 0-install quickstart experience, please see this Google Colab, which you can also find in our documentation.

Contributing

Contributions are welcome! If you find any issues or have suggestions for new features, please open an issue or submit a pull request on the GitHub repository.

Citing graph-pes

We kindly ask that you cite graph-pes in your work if it has been useful to you. A manuscript is currently in preparation - in the meantime, please cite the Zenodo DOI found in the CITATION.cff file.

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