Computational quantum mechanics based molecular and materials design campaigns consume increasingly more high-performance computer resources, making improved job scheduling efficiency desirable in order to reduce carbon footprint or wasteful spending.Weintroduce quantum machine learning (QML) models of the computational cost of common quantum chemistry tasks. For 2D nonlinear toy systems, single point, geometry optimization, and transition state calculations the out of sample prediction error ofQMLmodels of wall times decays systematically with training set size.We present numerical evidence for a toy system containing two functions and three commonly used optimizer and for thousands of organic molecular systems including closed and open shell equilibrium structures, as well as transition states. Levels of electronic structure theory considered include B3LYP/def2-TZVP, MP2/6-311G(d), local CCSD(T)/VTZ-F12, CASSCF/VDZ-F12, and MRCISD+Q-F12/VDZ-F12. In comparison to conventional indiscriminate job treatment,QML based wall time predictions significantly improve job scheduling efficiency for all tasks after training on just thousands of molecules. Resulting reductions in CPUtime overhead range from 10% to 90%.
CITATION STYLE
Heinen, S., Schwilk, M., Von Rudorff, G. F., & Von Lilienfeld, O. A. (2020). Machine learning the computational cost of quantum chemistry. Machine Learning: Science and Technology, 1(2). https://doi.org/10.1088/2632-2153/ab6ac4
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