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Predicting Quasiparticle and Excitonic properties of materials using Machine Learning

ORAL

Abstract

In the recent years, GW-BSE has been proven to be extremely successful in studying the quasiparticle bandstructures and excitonic effects in the optical properties of materials. However, the massive computational cost associated with such calculations restricts their applicability in high-throughput material discovery studies aimed to unearth future generations of promising photocatalysts, photovoltaics, and many more diverse photoabsorption-related applications. Here, we have completed GW-BSE calculation of ~1000 materials using a high-throughput workflow implemented in our pyGWBSE python-package. These materials were selected from the Materials Project database and have up to 4 atoms per unit cell. Multiple supervised machine learning methods were then employed on this dataset to investigate the applicability of the methods in predicting the quasiparticle and excitonic properties of the ~1000 materials. We also explore the viability of using DFT computed properties as a training dataset together with transfer learning methods to overcome the problem of the unavailability of a larger GW-BSE dataset.

Presenters

  • Tathagata Biswas

    Arizona State University

Authors

  • Tathagata Biswas

    Arizona State University

  • Sydney N Olson

    Arizona State University

  • Arunima K Singh

    Arizona State University, ASU