XenonPy
Materials library
A Python library implementing machine learning tools and pre-trained models for materials informatics.
XenonPy is a Python Software for Materials Informatics
139 stars
11 watching
61 forks
Language: Jupyter Notebook
last commit: 4 months ago
Linked from 1 awesome list
machine-learningmaterialmaterial-developmentpython-library
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