2022
DOI: 10.26434/chemrxiv-2022-qtncw
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Machine learning for yield prediction for chemical reactions using in situ sensors

Abstract: Machine learning models were developed to predict product formation from time-series reaction data for ten Buchwald-Hartwig coupling reactions. The data was provided by DeepMatter and was collected in their DigitalGlassware cloud platform. The reaction probe has 12 sensors to measure properties of interest, including temperature, pressure, and colour. Colour was a good predictor of product formation for this reaction and machine learning models were able to learn which of the properties were important. Predict… Show more

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