MatSciML: A Broad, Multi-Task Benchmark for Solid-State Materials Modeling
Kin Long Kelvin Lee, Carmelo Gonzales, Marcel Nassar, Matthew, Spellings, Mikhail Galkin, Santiago Miret

TL;DR
MatSci ML is a comprehensive benchmark that integrates diverse datasets and tasks for evaluating machine learning models in solid-state materials science, promoting the development of more generalizable algorithms.
Contribution
This paper introduces MatSci ML, a new benchmark combining multiple datasets and properties to facilitate multi-task and multi-dataset learning in solid-state materials modeling.
Findings
Graph neural networks perform well on benchmark tasks.
Multi-task learning improves prediction accuracy.
Multi-dataset approaches enable joint property prediction.
Abstract
We propose MatSci ML, a novel benchmark for modeling MATerials SCIence using Machine Learning (MatSci ML) methods focused on solid-state materials with periodic crystal structures. Applying machine learning methods to solid-state materials is a nascent field with substantial fragmentation largely driven by the great variety of datasets used to develop machine learning models. This fragmentation makes comparing the performance and generalizability of different methods difficult, thereby hindering overall research progress in the field. Building on top of open-source datasets, including large-scale datasets like the OpenCatalyst, OQMD, NOMAD, the Carolina Materials Database, and Materials Project, the MatSci ML benchmark provides a diverse set of materials systems and properties data for model training and evaluation, including simulated energies, atomic forces, material bandgaps, as well…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Electron and X-Ray Spectroscopy Techniques
MethodsFragmentation
