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This is the pypolymlp module.

Project description

A generator of polynomial machine learning potentials

pypolymlp is a Python code designed for the development of polynomial machine learning potentials (MLPs) based on datasets generated from density functional theory (DFT) calculations. The code provides functionalities for fitting polynomial models to energy, force, and stress data, enabling the construction of accurate and computationally efficient interatomic potentials. In addition to potential development, pypolymlp allows users to compute various physical properties and perform atomistic simulations using the trained MLPs.

Polynomial machine learning potentials

A polynomial MLP represents the potential energy as a polynomial function of linearly independent polynomial invariants of the O(3) group. Developed polynomial MLPs are available in Polynomial Machine Learning Potential Repository.

Citation of pypolymlp

“Tutorial: Systematic development of polynomial machine learning potentials for elemental and alloy systems”, A. Seko, J. Appl. Phys. 133, 011101 (2023)

@article{pypolymlp,
    author = {Seko, Atsuto},
    title = "{"Tutorial: Systematic development of polynomial machine learning potentials for elemental and alloy systems"}",
    journal = {J. Appl. Phys.},
    volume = {133},
    number = {1},
    pages = {011101},
    year = {2023},
    month = {01},
}

Required libraries and python modules

  • python >= 3.9
  • numpy != 2.0.*
  • scipy
  • pyyaml
  • setuptools
  • eigen3
  • pybind11
  • openmp (recommended)

[Optional]

  • phonopy
  • phono3py
  • symfc
  • sparse_dot_mkl
  • spglib
  • pymatgen
  • ase
  • joblib

How to install pypolymlp

  • Install from conda-forge
Version Last Update Downloads Platform License
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conda create -n pypolymlp-env
conda activate pypolymlp-env
conda install -c conda-forge pypolymlp
  • Install from PyPI
conda create -n pypolymlp-env
conda activate pypolymlp-env
conda install -c conda-forge numpy scipy pybind11 eigen cmake cxx-compiler
pip install pypolymlp

Building C++ codes in pypolymlp may require a significant amount of time.

  • Install from GitHub
git clone https://github.com/sekocha/pypolymlp.git
cd pypolymlp
conda create -n pypolymlp-env
conda activate pypolymlp-env
conda install -c conda-forge numpy scipy pybind11 eigen cmake cxx-compiler
pip install . -vvv

Building C++ codes in pypolymlp may require a significant amount of time.

How to use pypolymlp

Polynomial MLP development

Calculations using polynomial MLP

In version 0.8.0 or earlier, polymlp files are generated in a plain text format as polymlp.lammps. Starting from version 0.9.0, the files are generated in YAML format as polymlp.yaml. Both formats are supported by the following command-line interface and the Python API.

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