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Antonius Freiherr von Strachwitz

Graduate Student

Research theme

  • Lasers and high energy density science

Sub department

  • Atomic and Laser Physics

Research groups

  • 91探花 Centre for High Energy Density Science (OxCHEDS)
  • Quantum high energy density physics
antonius.strachwitz@physics.ox.ac.uk
Clarendon Laboratory, room Simon Room
  • About
  • Publications

Data-efficient learning of exchange-correlation functionals with differentiable DFT

Machine Learning: Science and Technology IOP Publishing 7:2 (2026) 025001-025001

Authors:

Antonius von Strachwitz, Karim K Alaa El-Din, Ana CC Dutra, Sam M Vinko

Abstract:

Abstract Machine learning (ML) density functional approximations (DFAs) have seen a lot of interest in recent years, often being touted as the replacement for well-established non-empirical DFAs, which still dominate the field. Although highly accurate, ML-DFAs typically rely on large amounts of data, are computationally expensive, and fail to generalize beyond their training domain. In this work we show that differentiable DFT with Kohn鈥揝ham regularization can be used to accurately capture the behavior of known local density approximations from small sets of synthetic data without using localized density information. At the same time our analysis shows a strong dependence of the learning on both the amount and type of data as well as on model initialization. By enabling accurate learning from sparse energy data, this approach paves the way towards the development of custom ML-DFAs trained directly on limited experimental or high-level quantum chemistry datasets.

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