Nature Communications (Oct 2020)
Quantum chemical accuracy from density functional approximations via machine learning
Abstract
High-level ab initio quantum chemical methods carry a high computational burden, thus limiting their applicability. Here, the authors employ machine learning to generate coupled-cluster energies and forces at chemical accuracy for geometry optimization and molecular dynamics from DFT densities.