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A SEAMM plug-in for Thermal Conductivity

Project description

SEAMM Thermal Conductivity Plug-in

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A SEAMM plug-in for Thermal Conductivity

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

2023.5.29 – Converged with general approach for trajectory analysis

2023.5.6 – Bugfix
  • Fixed an error handling Nan’s and Inf’s that caused a crash

  • Added the predictions from the derivatives of the Helfand moments to the output to give a better feel for the quality of the results.

2023.5.5 – Improved analysis
  • Considerable improvements to the analysis, results now seem solid

  • Fixed issues with fitting the linear portion of the Helfand moments

  • Added plot of the slope from the Helfand moments, which is similar to the Green-Kubo integral.

  • Cleaned up both the output and graphs.

2023.4.24 – Initial working version
  • Initial tests seem to work but needs more thorough testing.

  • Needs documentation!

2023.4.18 (2023-04-18)
  • Plug-in created using the SEAMM plug-in cookiecutter.

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