TurboGenius: Python suite for high-throughput calculations of ab initio quantum Monte Carlo methods
Kousuke Nakano, Oto Kohul\'ak, Abhishek Raghav, Michele Casula, and, Sandro Sorella

TL;DR
TurboGenius is an open-source Python package that streamlines high-throughput ab initio quantum Monte Carlo calculations, validated through benchmarks and consistency checks with other quantum chemistry tools.
Contribution
The paper introduces TurboGenius and TurboWorkflows, enabling automated high-throughput QMC calculations and validation workflows, enhancing reliability and efficiency in computational quantum chemistry.
Findings
Validated consistency between TurboRVB and other quantum chemistry packages.
Benchmarked DMC calculations for various molecular and crystal datasets.
Found DMC with LDA nodal surface yields satisfactory results.
Abstract
TurboGenius is an open-source Python package designed to fully control ab initio quantum Monte Carlo (QMC) jobs using a Python script, which allows one to perform high-throughput calculations combined with TurboRVB [K. Nakano et al. J. Phys. Chem. 152, 204121 (2020)]. This paper provides an overview of the TurboGenius package and showcases several results obtained in a high-throughput mode. For the purpose of performing high-throughput calculations with TurboGenius, we implemented another open-source Python package, TurboWorkflows, that enables one to construct simple workflows using TurboGenius. We demonstrate its effectiveness by performing (1) validations of density functional theory (DFT) and QMC drivers as implemented in the TurboRVB package and (2) benchmarks of Diffusion Monte Carlo (DMC) calculations for several data sets. For (1), we checked inter-package consistencies between…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Chemical Physics Studies · Inorganic Fluorides and Related Compounds
