doi.org
June 2021 • Yuliana Zamora, Logan Ward, Ganesh Sivaraman, Ian Foster, Henry Hoffmann
Atomistic-scale simulations are prominent scientific applications that require the repetitive execution of a computationally expensive routine to calculate a system's potential energy. Prior work shows that these expensive routines can be replaced with a machine-learned surrogate approximation to accelerate the simulation at the expense of the overall accuracy. The exact balance of speed and accuracy depends on the specific configuration of the surrogate-modeling workflow and the science itself, and prior work lea…