E Weinan

2papers

2 Papers

COMP-PHAug 1, 2020
DeePKS: a comprehensive data-driven approach towards chemically accurate density functional theory

Yixiao Chen, Linfeng Zhang, Han Wang et al.

We propose a general machine learning-based framework for building an accurate and widely-applicable energy functional within the framework of generalized Kohn-Sham density functional theory. To this end, we develop a way of training self-consistent models that are capable of taking large datasets from different systems and different kinds of labels. We demonstrate that the functional that results from this training procedure gives chemically accurate predictions on energy, force, dipole, and electron density for a large class of molecules. It can be continuously improved when more and more data are available.

NAJun 7, 2009
Pole-based approximation of Fermi-Dirac function

Lin Lin, Jianfeng Lu, Lexing Ying et al.

Two approaches for the efficient rational approximation of the Fermi-Dirac function are discussed: one uses the contour integral representation and conformal mapping and the other is based on a version of the multipole representation of the Fermi-Dirac function that uses only simple poles. Both representations have logarithmic computational complexity. They are of great interest for electronic structure calculations.