Deep neural networks to accelerate and reproduce DFT

ORAL

Abstract

Databases such as the Open Quantum Materials Database and the Materials Project contain the results of density functional theory (DFT) calculations for hundreds of thousands of materials structures. Data at this scale allows us to leverage machine learning models to accelerate DFT computations, or to completely replace them. In this talk we present our recent progress in deep neural network models that can accelerate or reproduce DFT predictions, including energies, band gaps, and electron densities. When training for multiple targets, these networks also generate reduced-dimensional latent space representations that may act as materials fingerprints.

Presenters

  • Linda Hung

    Toyota Research Institute

Authors

  • Linda Hung

    Toyota Research Institute

  • Brian Rohr

    Chemical Engineering, Stanford University

  • Kristopher S Brown

    Chemical Engineering, Stanford University

  • Michael Statt

    Chemical Engineering, Stanford University

  • Patrick Herring

    Toyota Research Institute

  • Arjun Bhargava

    Toyota Research Institute

  • Ha-Kyung Kwon

    Toyota Research Institute

  • Santosh Suram

    Toyota Research Institute

  • Muratahan Aykol

    Toyota Research Institute

  • Jens Hummelshøj

    Toyota Research Institute