Electronic Structure Prediction of Multi-million Atom Systems Through Uncertainty Quantification Enabled Transfer Learning
The ground state electron density -- obtainable using Kohn-Sham Density Functional Theory (KS-DFT) simulations -- contains a wealth of material information, making its prediction via machine learning (ML) models attractive. However, the computational expense of KS-DFT scales cubically with system si...
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Zusammenfassung: | The ground state electron density -- obtainable using Kohn-Sham Density
Functional Theory (KS-DFT) simulations -- contains a wealth of material
information, making its prediction via machine learning (ML) models attractive.
However, the computational expense of KS-DFT scales cubically with system size
which tends to stymie training data generation, making it difficult to develop
quantifiably accurate ML models that are applicable across many scales and
system configurations. Here, we address this fundamental challenge by employing
transfer learning to leverage the multi-scale nature of the training data,
while comprehensively sampling system configurations using thermalization. Our
ML models are less reliant on heuristics, and being based on Bayesian neural
networks, enable uncertainty quantification. We show that our models incur
significantly lower data generation costs while allowing confident -- and when
verifiable, accurate -- predictions for a wide variety of bulk systems well
beyond training, including systems with defects, different alloy compositions,
and at unprecedented, multi-million-atom scales. Moreover, such predictions can
be carried out using only modest computational resources. |
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DOI: | 10.48550/arxiv.2308.13096 |