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J Thorben Frank

Showing results (1-10 of 5) with videos related to

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The Journal of Chemical Physics|November 3, 2023
Stress and heat flux via automatic differentiationMarcel F Langer, J Thorben Frank, Florian Knoop
Nature Communications|August 6, 2024
A Euclidean transformer for fast and stable machine learned force fieldsJ Thorben Frank, Oliver T Unke, Klaus-Robert Müller, et al.
Journal of the American Chemical Society|August 31, 2025
Molecular Simulations with a Pretrained Neural Network and Universal Pairwise Force FieldsAdil Kabylda, J Thorben Frank, Sergio Suárez-Dou, et al.
Chemical Science|February 6, 2025
Crash testing machine learning force fields for molecules, materials, and interfaces: molecular dynamics in the TEA challenge 2023Igor Poltavsky, Mirela Puleva, Anton Charkin-Gorbulin, et al.
Chemical Science|February 12, 2025
Crash testing machine learning force fields for molecules, materials, and interfaces: model analysis in the TEA Challenge 2023Igor Poltavsky, Anton Charkin-Gorbulin, Mirela Puleva, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
The Journal of Chemical Physics|November 3, 2023
Stress and heat flux via automatic differentiationMarcel F Langer, J Thorben Frank, Florian Knoop
Nature Communications|August 6, 2024
A Euclidean transformer for fast and stable machine learned force fieldsJ Thorben Frank, Oliver T Unke, Klaus-Robert Müller, et al.
Journal of the American Chemical Society|August 31, 2025
Molecular Simulations with a Pretrained Neural Network and Universal Pairwise Force FieldsAdil Kabylda, J Thorben Frank, Sergio Suárez-Dou, et al.
Chemical Science|February 6, 2025
Crash testing machine learning force fields for molecules, materials, and interfaces: molecular dynamics in the TEA challenge 2023Igor Poltavsky, Mirela Puleva, Anton Charkin-Gorbulin, et al.
Chemical Science|February 12, 2025
Crash testing machine learning force fields for molecules, materials, and interfaces: model analysis in the TEA Challenge 2023Igor Poltavsky, Anton Charkin-Gorbulin, Mirela Puleva, et al.
Pageof 1