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maml is a machine learning library for materials science.

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Maml, acronym for MAterials Machine Learning and pronounced mammal, is a machine learning library for materials science. It builds on top of pymatgen (Python Materials Genomics) materials analysis library and well-known machine learning/deep learning libraries like scikit-learn, Keras and Tensorflow. The aim is to link the power of both kinds of libraries for rapid experimentation and learning of materials data.

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