MP-ALOE: An r2SCAN dataset for universal machine learning interatomic potentials
Kuner, Matthew C., Kaplan, Aaron D., Persson, Kristin A., Asta, Mark, Chrzan, Daryl C.
–arXiv.org Artificial Intelligence
Covering 89 elements, MP-ALOE was created using active learning and primarily consists of off-equilibrium structures. We benchmark a machine learning interatomic potential trained on MP-ALOE, and evaluate its performance on a series of benchmarks, including predicting the thermochemical properties of equilibrium structures; predicting forces of far-from-equilibrium structures; maintaining physical soundness under static extreme deformations; and molecular dynamic stability under extreme temperatures and pressures. MP-ALOE shows strong performance on all of these benchmarks, and is made public for the broader community to utilize.
arXiv.org Artificial Intelligence
Jul-9-2025
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