Digital Pareto-front mapping of homogeneous catalytic reactions†
Abstract
We report a digital framework for accelerated exploration and optimization of transition metal-based homogeneous catalytic reactions through autonomous experimentation and Bayesian optimization (BO). Specifically, we utilize a machine learning model constructed with deep neural networks for a rhodium-catalyzed hydroformylation reaction to investigate the role of BO hyperparameters, including the acquisition function and sampling size, on the efficiency of reaction Pareto-front mapping.
- This article is part of the themed collections: In Celebration of Klavs Jensen’s 70th Birthday and Emerging Investigator Series