Bridging Innovation and Efficiency: The Promises and Challenges of Self-Driving Labs as Sustainable Drivers for Chemistry
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Date
2025-09-10
Publication Type
Journal Article
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yes
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Abstract
Self-driving laboratories (SDLs) are reshaping scientific discovery by combining robotics, artificial intelligence (AI), and data science to automate the full Design-Make-Test-Analyze (DMTA) cycle. This review highlights how SDLs address the inefficiencies of traditional trial-and-error methods through intelligent, autonomous experimentation. We explore key advances in AI, automation, and data infrastructure, as well as the remaining technical challenges. Applications across organic synthesis, materials science, and biotechnology (e.g. such as catalytic reaction optimization, solid-state synthesis, and protein engineering) demonstrate their transformative potential. A recurring theme is the role of SDLs in promoting sustainability by miniaturizing reactions and maximizing sample efficiency through AI and machine learning. Finally, we discuss the requirements for broader adoption, including robust hardware, interoperable software, and high-quality datasets, positioning SDLs as essential tools for next-generation sustainable research.
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published
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Journal / series
Volume
79 (9)
Pages / Article No.
600 - 605
Publisher
Swiss Chemical Society
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Edition / version
Methods
Software
Geographic location
Date collected
Date created
Subject
Artificial intelligence; DMTA cycles; Self-driving labs; Sustainability
