Roadmap for transforming heterogeneous catalysis with artificial intelligence

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Access status: Embargo until 2026-08-01 , s41929-026-01479-x.pdf (1.06 MB)

Publication date

2026-02

Authors

Xin, Hongliang
Kitchin, John R.
López, Núria
Schweitzer, Neil M.
Artrith, NongnuchISNI 0000000400079337
Che, Fanglin
Grabow, Lars C.
Gunasooriya, G. T.Kasun Kalhara
Kulik, Heather J.
Laino, Teodoro

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Document Type

Article

License

taverne

Abstract

Artificial intelligence (AI) is poised to transform heterogeneous catalysis, opening avenues for catalytic materials discovery. By uncovering intricate patterns in high-dimensional data, AI has been reshaping our pursuit of sustainable catalytic processes across the energy, environmental and chemical sectors. This promise, however, hinges on overcoming fundamental barriers, including limitations in data availability and quality, challenges in the generalizability and interpretability of data-augmented decisions, and the persistent gap between in silico predictions and experiments. Here we outline a forward-looking roadmap for deeply integrating AI into heterogeneous catalysis with an AI-ready data ecosystem, multimodal foundation models, and ultimately autonomous laboratories to accelerate the development of next-generation catalytic technologies via AI-empowered human–machine collaboration. (Figure presented.)

Keywords

Taverne, Catalysis, Bioengineering, Biochemistry, Process Chemistry and Technology

Citation

Xin, H, Kitchin, J R, López, N, Schweitzer, N M, Artrith, N, Che, F, Grabow, L C, Gunasooriya, G T K K, Kulik, H J, Laino, T, Li, H, Linic, S, Medford, A J, Meyer, R J, Peng, J, Phillips, C, Qian, J, Qi, L, Shaw, W J, Ulissi, Z W, Wang, S & Wang, X 2026, 'Roadmap for transforming heterogeneous catalysis with artificial intelligence', Nature Catalysis, vol. 9, no. 2, pp. 102-111. https://doi.org/10.1038/s41929-026-01479-x