A review of molecular representation in the age of machine learning
DS Wigh, JM Goodman… - Wiley Interdisciplinary …, 2022 - Wiley Online Library
Research in chemistry increasingly requires interdisciplinary work prompted by, among
other things, advances in computing, machine learning, and artificial intelligence. Everyone …
other things, advances in computing, machine learning, and artificial intelligence. Everyone …
SELFIES and the future of molecular string representations
Artificial intelligence (AI) and machine learning (ML) are expanding in popularity for broad
applications to challenging tasks in chemistry and materials science. Examples include the …
applications to challenging tasks in chemistry and materials science. Examples include the …
Extending machine learning beyond interatomic potentials for predicting molecular properties
Abstract Machine learning (ML) is becoming a method of choice for modelling complex
chemical processes and materials. ML provides a surrogate model trained on a reference …
chemical processes and materials. ML provides a surrogate model trained on a reference …
Predictive chemistry: machine learning for reaction deployment, reaction development, and reaction discovery
The field of predictive chemistry relates to the development of models able to describe how
molecules interact and react. It encompasses the long-standing task of computer-aided …
molecules interact and react. It encompasses the long-standing task of computer-aided …
Data-driven multi-objective optimization tactics for catalytic asymmetric reactions using bisphosphine ligands
JJ Dotson, L van Dijk, JC Timmerman… - Journal of the …, 2022 - ACS Publications
Optimization of the catalyst structure to simultaneously improve multiple reaction objectives
(eg, yield, enantioselectivity, and regioselectivity) remains a formidable challenge. Herein …
(eg, yield, enantioselectivity, and regioselectivity) remains a formidable challenge. Herein …
Dataset design for building models of chemical reactivity
Models can codify our understanding of chemical reactivity and serve a useful purpose in
the development of new synthetic processes via, for example, evaluating hypothetical …
the development of new synthetic processes via, for example, evaluating hypothetical …
Rapid planning and analysis of high-throughput experiment arrays for reaction discovery
High-throughput experimentation (HTE) is an increasingly important tool in reaction
discovery. While the hardware for running HTE in the chemical laboratory has evolved …
discovery. While the hardware for running HTE in the chemical laboratory has evolved …
Real-time prediction of 1 H and 13 C chemical shifts with DFT accuracy using a 3D graph neural network
Nuclear magnetic resonance (NMR) is one of the primary techniques used to elucidate the
chemical structure, bonding, stereochemistry, and conformation of organic compounds. The …
chemical structure, bonding, stereochemistry, and conformation of organic compounds. The …
Multi-objective goal-directed optimization of de novo stable organic radicals for aqueous redox flow batteries
Advances in the field of goal-directed molecular optimization offer the promise of finding
feasible candidates for even the most challenging molecular design applications. One …
feasible candidates for even the most challenging molecular design applications. One …
When machine learning meets molecular synthesis
The recent synergy of machine learning (ML) with molecular synthesis has emerged as an
increasingly powerful platform in organic synthesis and catalysis. This merger has set the …
increasingly powerful platform in organic synthesis and catalysis. This merger has set the …