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A framework for random structure search using polynomial MLPs

Project description

A framework for random structure search (RSS) using polynomial MLPs

Citation of rsspolymlp

If you use rsspolymlp in your study, please cite the following articles.

“Efficient global crystal structure prediction using polynomial machine learning potential in the binary Al–Cu alloy system”, J. Ceram. Soc. Jpn. 131, 762 (2023)

@article{HayatoWakai202323053,
  title="{Efficient global crystal structure prediction using polynomial machine learning potential in the binary Al–Cu alloy system}",
  author={Hayato Wakai and Atsuto Seko and Isao Tanaka},
  journal={J. Ceram. Soc. Jpn.},
  volume={131},
  number={10},
  pages={762-766},
  year={2023},
  doi={10.2109/jcersj2.23053}
}

Installation

Required libraries and python modules

  • python >= 3.9
  • scikit-learn
  • joblib
  • pypolymlp
  • spglib
  • symfc

[Optional]

  • matplotlib (if plotting RSS results)
  • seaborn (if plotting RSS results)

How to install

  • Install from conda-forge
Name Downloads Version Platforms
Conda Recipe Conda Downloads Conda Version Conda Platforms
conda create -n rsspolymlp
conda activate rsspolymlp
conda install -c conda-forge rsspolymlp
  • Install from PyPI
conda create -n rsspolymlp
conda activate rsspolymlp
conda install -c conda-forge scikit-learn joblib pypolymlp spglib symfc
pip install rsspolymlp

How to use rsspolymlp

Project details


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