Catalysis is essential to modern chemical manufacturing and environmental sustainability. Yet, traditional catalyst discovery remains slow, resource-intensive and constrained by human-centred trial-and-error workflows. The integration of artificial intelligence (AI), robotics and high-throughput experimentation into self-driving laboratories (SDLs) presents a transformative approach for accelerating catalyst discovery and optimization. SDLs combine automated synthesis and testing platforms, data infrastructures and AI-guided decision-making to enable information-rich experimentation and the fast-tracked generation of scientific knowledge. However, in our view, realizing the full potential of SDLs requires sustained human oversight to ensure rigorous data curation, validate machine-generated hypotheses and establish benchmarks to mitigate AI-related errors. This Perspective outlines core SDL components, including hardware, computational modelling and AI-guided decision-making. We discuss challenges in data availability, integration of computational and experimental workflows and scalable platforms. Finally, we outline immediate opportunities to broaden the adoption of autonomous experimentation in catalysis.
English
54 - Chemistry. Crystallography. Mineralogy
Química
22 p.
Springer Nature
National Science Foundation under Award No. 2409631, through the Division of Chemical, Bioengineering, Environmental, and Transport Systems (CBET) and the Division of Chemistry (CHE), for the Artificial Intelligence for Multidisciplinary Exploration and Discovery in Heterogeneous Catalysis (AIMED) Workshop
National Science Foundation (Awards #1940959 and #2420490) and the University of North Carolina Research Opportunities Initiative (UNC-ROI) program.
L.Q. was supported by the U.S. Department of Energy, Office of Science, Office of Basic Energy Sciences, Chemical Sciences, Geosciences, and Biosciences Division, Catalysis Science program
Ames National Laboratory is operated for the U.S. Department of Energy by Iowa State University under Contract No. DEAC02-07CH11358.
Papers [1240]