Active Learning Exploration of Transition Metal Complexes to Discover Method-Insensitive and Synthetically Accessible Chromophores
Chenru Duan, Aditya Nandy, Gianmarco Terrones, David W. Kastner, and, Heather J. Kulik

TL;DR
This study employs active learning and consensus among multiple density functional approximations to efficiently discover earth-abundant transition metal chromophores with desired visible absorption properties, significantly accelerating the discovery process.
Contribution
It introduces a multi-approximation consensus approach combined with global optimization and active learning to identify promising chromophores in a vast chemical space, improving discovery efficiency.
Findings
Identified candidate chromophores with >10 ext{ } probability of validation.
Achieved 1,000-fold acceleration in discovery process.
Verified 2/3 of candidates have desired optical properties.
Abstract
Transition metal chromophores with earth-abundant transition metals are an important design target for their applications in lighting and non-toxic bioimaging, but their design is challenged by the scarcity of complexes that simultaneously have optimal target absorption energies in the visible region as well as well-defined ground states. Machine learning (ML) accelerated discovery could overcome such challenges by enabling screening of a larger space, but is limited by the fidelity of the data used in ML model training, which is typically from a single approximate density functional. To address this limitation, we search for consensus in predictions among 23 density functional approximations across multiple rungs of Jacobs ladder. To accelerate the discovery of complexes with absorption energies in the visible region while minimizing MR character, we use 2D efficient global…
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Taxonomy
TopicsMachine Learning in Materials Science · Computational Drug Discovery Methods · Nanocluster Synthesis and Applications
