4.7 Article

Machine learning in experimental materials chemistry

Journal

CATALYSIS TODAY
Volume 371, Issue -, Pages 77-84

Publisher

ELSEVIER
DOI: 10.1016/j.cattod.2020.07.074

Keywords

Machine learning; Catalysis; Materials Chemsitry

Funding

  1. National Science Foundation [DGE-1633213]

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The development of advanced materials is crucial, and utilizing Machine Learning in materials chemistry shows potential in accelerating the discovery process. Despite challenges, leveraging advancements in ML and advanced robotics can lead to automated optimization in material discovery.
The development of advanced materials is an important aspect of modern life. However, the discovery of novel materials involves searching the vast chemical space to find materials with desired properties. Recent developments in the applications of Machine Learning (ML) in materials chemistry show promise to accelerate the material discovery process. In this perspective article, we highlight the importance of ML in materials chemistry. We discuss few examples of ML applications in synthesis, characterization, and predicting activities of materials. Finally, we discuss the challenges in this field and how the progress in ML in chemistry is leveraged together with advanced robotics to perform automated optimization of material discovery.

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