article Materials Informatics

Discovery of Crystallizable Organic Semiconductors with Machine Learning

Holly M. Johnson, Filipp Gusev, Jordan T. Dull, Yejoon Seo, Rodney D. Priestley, Olexandr Isayev, Barry P. Rand

J. Am. Chem. Soc. Vol. 146 (31) pp. 21583–21590 2024 16 citations

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Discovery of Crystallizable Organic Semiconductors with Machine Learning.

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@article{Johnson2024,
  author = {Johnson, Holly M. and Gusev, Filipp and Dull, Jordan T. and Seo, Yejoon and Priestley, Rodney D. and Isayev, Olexandr and Rand, Barry P.},
  title = {Discovery of Crystallizable Organic Semiconductors with Machine Learning},
  year = {2024},
  journal = {J. Am. Chem. Soc.},
  volume = {146},
  number = {31},
  pages = {21583--21590},
  doi = {10.1021/jacs.4c05245},
  keywords = {machine learning, organic semiconductors, materials discovery},
  researchAreas = {materials-informatics},
  researchArea = {ml-potentials},
  featured = {true},
  highlight = {Discovery of Crystallizable Organic Semiconductors with Machine Learning.},
  citations = {16}
}

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