Abinit 2025: New capabilities for the predictive modeling of solids and nanomaterials

Publication date

2025-10-28

Authors

Verstraete, Matthieu J.ORCID 0000-0001-6921-5163ISNI 0000000449908861
Abreu, Joao
Allemand, Guillaume E.
Amadon, Bernard
Antonius, Gabriel
Azizi, Maryam
Baguet, Lucas
Barat, Clémentine
Bastogne, Louis
Béjaud, Romuald

Editors

Advisors

Supervisors

Document Type

Article
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License

taverne

Abstract

Abinit is a widely used scientific software package implementing density functional theory and many related functionalities for excited states and response properties. This paper presents the novel features and capabilities, both technical and scientific, which have been implemented over the past 5 years. This evolution occurred in the context of evolving hardware platforms, high-throughput calculation campaigns, and the growing use of machine learning to predict properties based on databases of first-principle results. We present new methodologies for ground states with constrained charge, spin, or temperature; for density functional perturbation theory extensions to flexoelectricity and polarons; and for excited states in many-body frameworks including GW, dynamical mean field theory, and coupled cluster. Technical advances have extended Abinit high-performance execution to graphical processing units and intensive parallelism. Second-principles methods build effective models on top of first-principle results to scale up in length and time scales. Finally, workflows have been developed in different community frameworks to automate Abinit calculations and enable users to simulate hundreds or thousands of materials in controlled and reproducible conditions.

Keywords

Taverne, General Physics and Astronomy, Physical and Theoretical Chemistry

Citation

Verstraete, M J, Abreu, J, Allemand, G E, Amadon, B, Antonius, G, Azizi, M, Baguet, L, Barat, C, Bastogne, L, Béjaud, R, Beuken, J M, Bieder, J, Blanchet, A, Bottin, F, Bouchet, J, Bouquiaux, J, Bousquet, E, Boust, J, Brieuc, F, Brousseau-Couture, V, Brouwer, N, Bruneval, F, Castellano, A, Castiel, E, Charraud, J B, Clérouin, J, Côté, M, Duval, C, Gallo, A, Gendron, F, Geneste, G, Ghosez, P, Giantomassi, M, Gingras, O, Gómez-Ortiz, F, Gonze, X, Goudreault, F A, Grüneis, A, Gupta, R, Guster, B, Hamann, D R, He, X, Hellman, O, Holzwarth, N, Jollet, F, Kestener, P, Lygatsika, I M, Nadeau, O, MacEnulty, L, Marazzi, E, Mignolet, M, O’Regan, D D, Outerovitch, R, Paillard, C, Petretto, G, Poncé, S, Ricci, F, Rignanese, G M, Rodriguez-Mayorga, M, Romero, A H, Rostami, S, Royo, M, Sarraute, M, Sasani, A, Soubiran, F, Stengel, M, Tantardini, C, Torrent, M, Trinquet, V, Vasilchenko, V, Waroquiers, D, Zabalo, A, Zadoks, A, Zhang, H & Zwanziger, J 2025, 'Abinit 2025 : New capabilities for the predictive modeling of solids and nanomaterials', Journal of Chemical Physics, vol. 163, no. 16, 164126. https://doi.org/10.1063/5.0288278