SPICE, A Dataset of Drug-like Molecules and Peptides for Training Machine Learning Potentials
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Benjamin P. Pritchard | David L. Dotson | John E. Herr | Joshua T. Horton | J. Chodera | G. D. Fabritiis | P. Eastman | G. de Fabritiis | Raimondas Galvelis | Yuezhi Mao | Yuanqing Wang | P. Behara | T. Markland
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