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Good Practices in Database Generation for Benchmarking Density Functional Theory

Version 2 2025-01-22, 04:38
Version 1 2024-12-05, 04:01
journal contribution
posted on 2025-01-22, 04:38 authored by Amir Karton, Marcelo T de Oliveira
ABSTRACTThe hundreds of density functional theory (DFT) methods developed over the past three decades are often referred to as the “zoo” of DFT approximations. In line with this terminology, the numerous DFT benchmark studies might be considered the “safari” of DFT evaluation efforts, reflecting their abundance, diversity, and wide range of application and methodological aspects. These benchmarks have played a critical role in establishing DFT as the dominant approach in quantum chemical applications and remain essential for selecting an appropriate DFT method for specific chemical properties (e.g., reaction energy, barrier height, or noncovalent interaction energy) and systems (e.g., organic, inorganic, or organometallic). DFT benchmark studies are a vital tool for both DFT users in method selection and DFT developers in method design and parameterization. This review provides best‐practice guidance on key methodological aspects of DFT benchmarking, such as the quality of benchmark reference values, dataset size, reference geometries, basis sets, statistical analysis, and electronic availability of the benchmark data. Additionally, we present a flowchart to assist users in systematically choosing these methodological aspects, thereby enhancing the reliability and reproducibility of DFT benchmarking studies.

History

Journal

WIREs Computational Molecular Science

Volume

15

Article number

e1737

Location

Chichester, Eng.

Open access

  • No

ISSN

1759-0876

eISSN

1759-0884

Language

Eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

1

Publisher

Wiley

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