AI Article Synopsis

  • The text discusses the growing importance of big data, machine learning, and artificial intelligence in the field of chemical sciences, highlighting their potential for driving new discoveries.
  • It covers both computational and experimental aspects of these technologies, including topics like natural language processing, machine-learned potentials, and automation in laboratories.
  • The author offers insights into the history of this field and presents three future challenges that researchers may face as these technologies evolve.

Article Abstract

This was the first to focus on the increasingly central role of big data, machine learning, and artificial intelligence in the chemical sciences. The aim was to critically discuss these topics, and to explore the question of how data can enable new discoveries in chemistry, both now and in the future. The programme spanned computational and experimental work, and encompassed emerging topics such as natural language processing, machine-learned potentials, optimization strategies, and robotics and self-driving laboratories. Here I provide some brief introductory comments on the history of this field, along with some personal views on the discussion topics covered, concluding with three future challenges for this area.

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Source
http://dx.doi.org/10.1039/d4fd00174eDOI Listing

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