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Science acceleration and accessibility with self-driving labs

Richard B. Canty,J. A. Bennett,10 Autores,M. Abolhasani

2025 · DOI: 10.1038/s41467-025-59231-1
Nature Communications · 22 citas

TLDR

This perspective explores improving access to SDLs via centralized facilities and distributed networks and identifies the key challenges to the dual cultivation of centralised self-driving user facilities and networks of self-driving labs.

Resumen

In the evolving landscape of scientific research, the complexity of global challenges demands innovative approaches to experimental planning and execution. Self-Driving Laboratories (SDLs) automate experimental tasks in chemical and materials sciences and the design and selection of experiments to optimize research processes and reduce material usage. This perspective explores improving access to SDLs via centralized facilities and distributed networks. We discuss the technical and collaborative challenges in realizing SDLs’ potential to enhance human–machine and human–human collaboration, ultimately fostering a more inclusive research community and facilitating previously untenable research projects. Collaborative self-diving research is crucial to research acceleration amidst ever more complex problems. Here, authors identify the key challenges to the dual cultivation of centralised self-driving user facilities and networks of self-driving labs.