Towards a transferable fermionic neural wavefunction for molecules

Michael Scherbela, Leon Gerard, Philipp Grohs (Corresponding author)

Publications: Contribution to journalArticlePeer Reviewed

Abstract

Deep neural networks have become a highly accurate and powerful wavefunction ansatz in combination with variational Monte Carlo methods for solving the electronic Schrödinger equation. However, despite their success and favorable scaling, these methods are still computationally too costly for wide adoption. A significant obstacle is the requirement to optimize the wavefunction from scratch for each new system, thus requiring long optimization. In this work, we propose a neural network ansatz, which effectively maps uncorrelated, computationally cheap Hartree-Fock orbitals, to correlated, high-accuracy neural network orbitals. This ansatz is inherently capable of learning a single wavefunction across multiple compounds and geometries, as we demonstrate by successfully transferring a wavefunction model pre-trained on smaller fragments to larger compounds. Furthermore, we provide ample experimental evidence to support the idea that extensive pre-training of such a generalized wavefunction model across different compounds and geometries could lead to a foundation wavefunction model. Such a model could yield high-accuracy ab-initio energies using only minimal computational effort for fine-tuning and evaluation of observables.

Original languageEnglish
Article number120
Number of pages12
JournalNature Communications
Volume15
Issue number1
DOIs
Publication statusE-pub ahead of print - 2 Jan 2024

Austrian Fields of Science 2012

  • 104027 Computational chemistry
  • 102019 Machine learning

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