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Machine learning of free energies in chemical compound space using ensemble representations: Reaching experimental uncertainty for solvation
2021
Free energies govern the behavior of soft and liquid matter, and improving their predictions could have a large impact on the development of drugs, electrolytes, or homogeneous catalysts. Unfortunately, it is challenging to devise an accurate description of effects governing solvation such as hydrogen-bonding, van der Waals interactions, or conformational sampling. We present a Free energy Machine Learning (FML) model applicable throughout chemical compound space and based on a representation
doi:10.5451/unibas-ep87400
fatcat:6hpjj5bxlbfofntoqaiqs3ixay