Decoding diffraction and spectroscopy data with machine learning: A tutorial

D Vizoso and R Dingreville, JOURNAL OF APPLIED PHYSICS, 137, 131101 (2025).

DOI: 10.1063/5.0255593

This Tutorial provides a step-by-step guide on how to apply supervised machine-learning techniques to analyze diffraction and spectroscopy data. This Tutorial details four models-a reconstruction-focused model, a regression-focused model, a hybrid reconstruction/regression model, and a multimodal model-that use x-ray diffraction profiles and vibrational density of states spectra to predict various microstructural descriptors. In this Tutorial, we cover data pre-processing steps, constructions of the models via dimensionality reduction and regression, training, and analysis of these models. Comparisons of the model's performance are provided, highlighting the strength and weakness of the various approaches utilized.

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