| Official site | https://github.com/uw-cmg/MAST-ML |
|---|---|
| Openness | ★★★ |
| License |
MIT License |
| Core Developers |
Developers: University of Wisconsin–Madison Computational Materials Group, led by Prof. Dane Morgan, with contributors listed in the project README and documentation. |
| Related Papers |
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| Other |
Description: MAST-ML emphasizes configurable, reproducible supervised-learning studies. It supports scikit‑learn model workflows, integrates feature engineering and selection, and provides documentation/tutorials for data import, model comparison, error analysis, uncertainty quantification, and domain‑of‑applicability checks. |
MAST-ML
MAST-ML (Materials Simulation Toolkit for Machine Learning) is an open-source Python toolkit focused on supervised learning workflows for materials research. It provides a configurable pipeline for data preprocessing, feature generation/selection, model training, and evaluation, with tutorials and examples to accelerate end‑to‑end studies.
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