Physics-informed active learning for accelerating quantum chemical simulations
- URL: http://arxiv.org/abs/2404.11811v2
- Date: Tue, 16 Jul 2024 07:16:46 GMT
- Title: Physics-informed active learning for accelerating quantum chemical simulations
- Authors: Yi-Fan Hou, Lina Zhang, Quanhao Zhang, Fuchun Ge, Pavlo O. Dral,
- Abstract summary: We introduce the end-to-end AL for constructing robust data-efficient potentials in quantum chemical simulations.
Our protocol is based on the physics-informed sampling of training points, automatic selection of initial data, uncertainty quantification, and convergence monitoring.
These investigations took us days instead of weeks of pure quantum chemical calculations on a high-performance computing cluster.
- Score: 10.56535364437456
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum chemical simulations can be greatly accelerated by constructing machine learning potentials, which is often done using active learning (AL). The usefulness of the constructed potentials is often limited by the high effort required and their insufficient robustness in the simulations. Here we introduce the end-to-end AL for constructing robust data-efficient potentials with affordable investment of time and resources and minimum human interference. Our AL protocol is based on the physics-informed sampling of training points, automatic selection of initial data, uncertainty quantification, and convergence monitoring. The versatility of this protocol is shown in our implementation of quasi-classical molecular dynamics for simulating vibrational spectra, conformer search of a key biochemical molecule, and time-resolved mechanism of the Diels-Alder reactions. These investigations took us days instead of weeks of pure quantum chemical calculations on a high-performance computing cluster. The code in MLatom and tutorials are available at https://github.com/dralgroup/mlatom.
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