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Machine Learning Analysis of high-dimensional ARPES Data for Nd<sub>1-x</sub>Sr<sub>x</sub>NiO<sub>3</sub>

ORAL

Abstract

Angle-resolved photoemission spectroscopy (ARPES) is a powerful technique for probing the electronic properties of quantum materials, providing unique insights into the high-dimensional electronic structure in momentum and energy space. However, traditional methods for extracting material parameters from ARPES data face significant challenges, due to a complex material parameter dependence, the vast momentum-energy configurational space, and inherent experimental noise etc. In this talk, I will present our recent advancements in leveraging high-throughput simulations and cutting-edge AI tools, specifically neural implicit representations, to effectively extract material parameters from high-resolution ARPES spectra on perovskite nickelates. Our work opens a new direction in applying AI to bridge the gap between theory and high-dimensional ARPES measurement, enhancing the investigation of emergent properties in quantum materials.

Presenters

  • Yu Zhang

    University of Florida

Authors

  • Yu Zhang

    University of Florida

  • Yong Zhong

    Stanford University

  • Nhat Huy Mai Tran

    University of Florida

  • Shuyi Li

    University of Florida

  • Kyuho Lee

    Stanford University, Massachusetts Institute of Technology

  • Harold Y Hwang

    Stanford University

  • Zhi-Xun Shen

    Stanford University

  • Chunjing Jia

    University of Florida