Nawaf Alampara, Anagha Aneesh, Martiño Ríos-García, Adrian Mirza, Mara Schilling-Wilhelmi, Ali Asghar Aghajani, Meiling Sun, Gordan Prastalo, Kevin Maik Jablonka
Published
July 15, 2025
General purpose models for the chemical sciences
Abstract
Data-driven techniques have a large potential to transform and accelerate the chemical sciences. However, chemical sciences also pose the unique challenge of very diverse, small, fuzzy datasets that are difficult to leverage in conventional machine learning approaches completely. A new class of models, general-purpose models (GPMs) such as large language models, have shown the ability to solve tasks they have not been directly trained on, and to flexibly operate with low amounts of data in different formats. In this review, we discuss fundamental building principles of GPMs and review recent applications of those models in the chemical sciences across the entire scientific process. While many of these applications are still in the prototype phase, we expect that the increasing interest in GPMs will make many of them mature in the coming years.
Acknowledgments
This work was supported by the Carl-Zeiss Foundation.
A.A. acknowledges financial support for this research by the Fulbright U.S. Student Program, which is sponsored by the U.S. Department of State and the German-American Fulbright Commission. Its contents are solely the responsibility of the author and do not necessarily represent the official views of the Fulbright Program, the Government of the United States, or the German-American Fulbright Commission.
M. S.-W. was supported by Intel and Merck via the AWASES research center.
A.M.’s work was funded by the SOL-AI project, funded as part of the Helmholtz Foundation Model Initiative of the Helmholtz Association.
G.P.’s work was supported by the HPC Gateway measure of the Helmholtz Association.
K.M.J. is part of the NFDI consortium FAIRmat funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) - project 460197019.
We thank Mimi Lavin and Maximilian Greiner for their feedback on a draft of this article.
K.M.J. initiated and led the project. K.M.J. edited all sections.
Conflicts of Interest
K.M.J. has been a paid contractor for OpenAI as part of the Red-Teaming Network.
Citation
If you find this work useful, please cite it using:
@article{alampara2025general,title = {General purpose models for the chemical sciences},author = {Nawaf Alampara and Anagha Aneesh and Martiño Ríos-García and Adrian Mirza and Mara Schilling-Wilhelmi and Ali Asghar Aghajani and Meiling Sun and Gordan Prastalo and Kevin Maik Jablonka},year = {2025},journal = {arXiv preprint arXiv: 2507.07456}}