maml (MAterials Machine Learning) is a Python package that aims to provide useful high-level interfaces that make ML for materials science as easy as possible.
The goal of maml is not to duplicate functionality already available in other packages. maml relies on well-established packages such as scikit-learn and tensorflow for implementations of ML algorithms, as well as other materials science packages such as pymatgen and matminer for crystal/molecule manipulation and feature generation.
Official documentation at https://materialsvirtuallab.github.io/maml/
- Convert materials (crystals and molecules) into features. In addition to common compositional, site and structural features, we provide the following fine-grain local environment features.
a) Bispectrum coefficients b) Behler Parrinello symmetry functions c) Smooth Overlap of Atom Position (SOAP) d) Graph network features (composition, site and structure)
-
Use ML to learn relationship between features and targets. Currently, the
maml
supportssklearn
andkeras
models. -
Applications:
a) pes
for modelling the potential energy surface, constructing surrogate models for property prediction.
i) Neural Network Potential (NNP) ii) Gaussian approximation potential (GAP) with SOAP features iii) Spectral neighbor analysis potential (SNAP) iv) Moment Tensor Potential (MTP)
b) rfxas
for random forest models in predicting atomic local environments from X-ray absorption spectroscopy.
c) bowsr
for rapid structural relaxation with bayesian optimization and surrogate energy model.
Pip install via PyPI:
pip install maml
To run the potential energy surface (pes), lammps installation is required you can install from source or from conda
::
conda install -c conda-forge/label/cf202003 lammps
The SNAP potential comes with this lammps installation. The GAP package for GAP and MLIP package for MTP are needed to run the corresponding potentials. For fitting NNP potential, the n2p2
package is needed.
Install all the libraries from requirement.txt file::
pip install -r requirements.txt
For all the requirements above:
pip install -r requirements-ci.txt
pip install -r requirements-optional.txt
pip install -r requirements-dl.txt
pip install -r requirements.txt
Many Jupyter notebooks are available on usage. See notebooks. We also have a tool and tutorial lecture at nanoHUB.
See API docs.
@misc{
maml,
author = {Chen, Chi and Zuo, Yunxing, Ye, Weike, Ji, Qi and Ong, Shyue Ping},
title = {{Maml - materials machine learning package}},
year = {2020},
publisher = {GitHub},
journal = {GitHub repository},
howpublished = {\url{https://github.com/materialsvirtuallab/maml}},
}
For the ML-IAP package (maml.pes
), please cite::
Zuo, Y.; Chen, C.; Li, X.; Deng, Z.; Chen, Y.; Behler, J.; Csányi, G.; Shapeev, A. V.; Thompson, A. P.;
Wood, M. A.; Ong, S. P. Performance and Cost Assessment of Machine Learning Interatomic Potentials.
J. Phys. Chem. A 2020, 124 (4), 731–745. https://doi.org/10.1021/acs.jpca.9b08723.
For the BOWSR package (maml.bowsr
), please cite::
Zuo, Y.; Qin, M.; Chen, C.; Ye, W.; Li, X.; Luo, J.; Ong, S. P. Accelerating Materials Discovery with Bayesian
Optimization and Graph Deep Learning. Materials Today 2021, 51, 126–135.
https://doi.org/10.1016/j.mattod.2021.08.012.
For the AtomSets model (maml.models.AtomSets
), please cite::
Chen, C.; Ong, S. P. AtomSets as a hierarchical transfer learning framework for small and large materials
datasets. Npj Comput. Mater. 2021, 7, 173. https://doi.org/10.1038/s41524-021-00639-w