Data-efficient fine-tuning of foundational models for first-principles quality sublimation enthalpies

Abstract

Calculating sublimation enthalpies of molecular crystal polymorphs is relevant to a wide range of technological applications. However, predicting these quantities at first-principles accuracy – even with the aid of machine learning potentials – is a challenge that requires sub-kJ/mol accuracy in the potential energy surface and finite-temperature sampling. We present an accurate and data- efficient protocol for training machine learning interatomic potentials by fine-tuning the foundational MACE-MP-0 model and showcase its capabilities on sublimation enthalpies and physical properties of ice polymorphs. Our approach requires only a few tens of training structures to achieve sub-kJ/mol accuracy in the sublimation enthalpies and sub-1 % error in densities at finite temperature and pressure. Exploiting this data efficiency, we perform preliminary N P T simulations of hexagonal ice at the random phase approximation level and demonstrate a good agreement with experiments. Our results shows promise for finite-temperature modelling of molecular crystals with the accuracy of correlated electronic structure theory methods.

Article information

Article type
Paper
Submitted
22 Thg5 2024
Accepted
09 Thg8 2024
First published
09 Thg8 2024
This article is Open Access
Creative Commons BY-NC license

Faraday Discuss., 2024, Accepted Manuscript

Data-efficient fine-tuning of foundational models for first-principles quality sublimation enthalpies

H. Kaur, F. Della Pia, I. Batatia, X. R. Advincula, B. X. Shi, J. Lan, G. Csányi, A. Michaelides and V. Kapil, Faraday Discuss., 2024, Accepted Manuscript , DOI: 10.1039/D4FD00107A

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