LeonardoSaccotelli/Crystal-Structures-Parameters-Prediction-with-Multi-Output-Regression-Neural-Network
Preliminary investigation of machine learning techniques to perform parameters estimation for different crystal structure: hexagonal, monoclinic, orthorhombic, tetragonal, triclinic, trigonal.
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