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A machine-learning tool to predict substrate-adaptive conditions for Pd-catalyzed C-N couplings.

N Ian RinehartRakesh K SaunthwalJoël WellauerAndrew F ZahrtLukas SchlemperAlexander S ShvedRaphael BiglerSerena M FantasiaScott E Denmark
Published in: Science (New York, N.Y.) (2023)
Machine-learning methods have great potential to accelerate the identification of reaction conditions for chemical transformations. A tool that gives substrate-adaptive conditions for palladium (Pd)-catalyzed carbon-nitrogen (C-N) couplings is presented. The design and construction of this tool required the generation of an experimental dataset that explores a diverse network of reactant pairings across a set of reaction conditions. A large scope of C-N couplings was actively learned by neural network models by using a systematic process to design experiments. The models showed good performance in experimental validation: Ten products were isolated in more than 85% yield from a range of couplings with out-of-sample reactants designed to challenge the models. Importantly, the developed workflow continually improves the prediction capability of the tool as the corpus of data grows.
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