Exploring the frontiers of condensed-phase chemistry with a general reactive machine learning potential
Shuhao Zhang(Soochow University), Justin S. Smith(Los Alamos National Laboratory), Nicholas Lubbers(Los Alamos National Laboratory), Richard A. Messerly(Los Alamos National Laboratory), Kipton Barros(Los Alamos National Laboratory), Sergei Tretiak(Los Alamos National Laboratory), Ryan B. Jadrich(Los Alamos National Laboratory), Małgorzata Z. Makoś(Los Alamos National Laboratory), Benjamin Nebgen(Los Alamos National Laboratory), Elfi Kraka(Southern Methodist University), Olexandr Isayev(Carnegie Mellon University)
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