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A SEAMM plug-in for TorchANI

Project description

SEAMM TorchANI Plug-in

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A SEAMM plug-in for TorchANI

Features

  • Please edit this section!

Acknowledgements

This package was created with the molssi-seamm/cookiecutter-seamm-plugin tool, which is based on the excellent Cookiecutter.

Developed by the Molecular Sciences Software Institute (MolSSI), which receives funding from the National Science Foundation under award CHE-2136142.

History

2024.10.15 – Bugfix: error if used in a loop and previous directories deleted.
  • The code crashed if called with a loop in the flowchart, and the last directory of a previous loop iteration was deleted before running the next iteration.

2024.5.12.1 – Fixed problem with commandline in Docker
  • There was a problem in the commandline for running TorchANI in a Docker container.

2024.5.12 – Added support for Docker and for Energy Scan
  • Creating images for Docker automatically on release

  • Added the energy and gradients for output to JSON for e.g. Energy Scan

2023.2.28 – Initial version!
  • Handles energy and optimization.

  • ANI-1x, ANI-1ccx, and ANI-2x models

2023.1.17 (2023-01-17)
  • Plug-in created using the SEAMM plug-in cookiecutter.

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