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Gianmarco Terrones

Low-cost machine learning approach to the prediction of transition metal phosphor excited state properties

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Sep 18, 2022
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Rapid Exploration of a 32.5M Compound Chemical Space with Active Learning to Discover Density Functional Approximation Insensitive and Synthetically Accessible Transitional Metal Chromophores

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Aug 10, 2022
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