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QMCkl: A kernel library for quantum Monte Carlo applications

  • Emiel Slootman
  • , Vijay Gopal Chilkuri
  • , Aurelien Delval
  • , Max Hoffer
  • , Tommaso Gorni
  • , François Coppens
  • , Joris van de Nes
  • , Ramón L. Panadés-Barrueta
  • , Evgeny Posenitskiy
  • , Abdallah Ammar
  • , Edgar Josué Landinez Borda
  • , Kevin Camus
  • , Oto Kohulàk
  • , Emmanuel Giner
  • , Pablo de Oliveira Castro
  • , Cedric Valensi
  • , William Jalby
  • , Claudia Filippi
  • , Anthony Scemama*
  • *Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

Quantum Monte Carlo (QMC) methods deliver highly accurate electronic structure calculations but are computationally intensive. The quantum Monte Carlo kernel library (QMCkl) provides a modular, portable collection of high-performance kernels implementing the core building blocks of QMC calculations. It offers a C-compatible application programming interface, supports the TREXIO standard for input, and covers essential QMC kernels including atomic and molecular orbitals, cusp corrections, the Jastrow factor, and the necessary derivatives also to perform variational and structural optimization. QMCkl separates algorithmic development from hardware-specific tuning by combining human-readable reference implementations with performance-optimized kernels that produce identical numerical results. The library enables consistent, efficient, and reproducible simulations across different QMC codes and architectures and achieves substantial speedups in the evaluation of the energy and its derivatives. Beyond QMC, QMCkl can accelerate deterministic quantum chemistry workflows and visualization tools, promoting cross-code interoperability and simplifying high-performance scientific software development.

Original languageEnglish
Article number112501
Number of pages14
JournalJournal of Chemical Physics
Volume164
Issue number11
Early online date18 Mar 2026
DOIs
Publication statusPublished - 21 Mar 2026

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