Issue 42, 2022

nablaDFT: Large-Scale Conformational Energy and Hamiltonian Prediction benchmark and dataset

Abstract

Electronic wave function calculation is a fundamental task of computational quantum chemistry. Knowledge of the wave function parameters allows one to compute physical and chemical properties of molecules and materials. Unfortunately, it is infeasible to compute the wave functions analytically even for simple molecules. Classical quantum chemistry approaches such as the Hartree–Fock method or density functional theory (DFT) allow to compute an approximation of the wave function but are very computationally expensive. One way to lower the computational complexity is to use machine learning models that can provide sufficiently good approximations at a much lower computational cost. In this work we: (1) introduce a new curated large-scale dataset of electron structures of drug-like molecules, (2) establish a novel benchmark for the estimation of molecular properties in the multi-molecule setting, and (3) evaluate a wide range of methods with this benchmark. We show that the accuracy of recently developed machine learning models deteriorates significantly when switching from the single-molecule to the multi-molecule setting. We also show that these models lack generalization over different chemistry classes. In addition, we provide experimental evidence that larger datasets lead to better ML models in the field of quantum chemistry.

Graphical abstract: nablaDFT: Large-Scale Conformational Energy and Hamiltonian Prediction benchmark and dataset

Article information

Article type
Paper
Submitted
26 Там. 2022
Accepted
12 Қаз. 2022
First published
24 Қаз. 2022

Phys. Chem. Chem. Phys., 2022,24, 25853-25863

nablaDFT: Large-Scale Conformational Energy and Hamiltonian Prediction benchmark and dataset

K. Khrabrov, I. Shenbin, A. Ryabov, A. Tsypin, A. Telepov, A. Alekseev, A. Grishin, P. Strashnov, P. Zhilyaev, S. Nikolenko and A. Kadurin, Phys. Chem. Chem. Phys., 2022, 24, 25853 DOI: 10.1039/D2CP03966D

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