Towards Diffusion Monte Carlo accuracy across chemical space with scalable Δ-QML
ORAL · Invited
Abstract
In the past decade, quantum diffusion Monte Carlo (DMC) has been demonstrated to successfully predict the energetics and properties of a wide range of molecules and solids by numerically solving the electronic many-body Schr ¨odinger equation. We show that when coupled with quantum machine learning (QML) based surrogate methods the computational burden can be alleviated such that QMC shows clear potential to undergird the formation of high quality descriptions across chemical space. We discuss three crucial approximations necessary to accomplish this: The fixed node approximation, universal and accurate references for chemical bond dissociation energies, and scalable minimal amons set based QML (AQML) models. Numerical evidence presented includes converged DMC results for over one thousand small organic molecules with up to 5 heavy atoms used as amons, and 50 medium sized organic molecules with 9 heavy atoms to validate the AQML predictions. Numerical evidence collected for Δ-AQML models suggests that already modestly sized QMC training data sets of amons suffice to predict total energies with near chemical accuracy throughout chemical space
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Publication: https://doi.org/10.48550/arXiv.2210.06430
Presenters
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Anouar Benali
Argonne National Laboratory
Authors
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Anouar Benali
Argonne National Laboratory
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O. Von Lilienfeld
University of Basel
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Bing Huang
University of Vienna, Faculty of Physics
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Jaron T Krogel
Oak Ridge National Lab