1 results match your criteria: "The University of Manchester Oxford Road Manchester M13 9PL UK christopher.williams@manchester.ac.uk richard.bryce@manchester.ac.uk.[Affiliation]"

Computational simulation methods based on machine learned potentials (MLPs) promise to revolutionise shape prediction of flexible molecules in solution, but their widespread adoption has been limited by the way in which training data is generated. Here, we present an approach which allows the key conformational degrees of freedom to be properly represented in reference molecular datasets. MLPs trained on these datasets using a global descriptor scheme are generalisable in conformational space, providing quantum chemical accuracy for all conformers.

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