Press Release

Augmenting Adaptive Machine Learning with Kinetic Modeling for Reaction Optimization

Augmenting Adaptive Machine Learning with Kinetic Modeling for Reaction Optimization

Abstract

We combine random sampling and active machine learning (ML) to optimize the synthesis of isomacroin, executing only 3% of all possible Friedländer reactions. Employing kinetic modeling, we augment machine intuition by extracting mechanistic knowledge and verify that a global optimum was obtained with ML. Our study contributes evidence on the potential of multiscale approaches to expedite the access to chemical matter, further democratizing organic chemistry in a data-motivated fashion.

https://pubs.acs.org/doi/10.1021/acs.joc.1c01038