npj Computational Materials (Jun 2025)

Uncovering multiscale structure-property correlations via active learning in scanning tunneling microscopy

  • Ganesh Narasimha,
  • Dejia Kong,
  • Paras Regmi,
  • Rongying Jin,
  • Zheng Gai,
  • Rama Vasudevan,
  • Maxim Ziatdinov

DOI
https://doi.org/10.1038/s41524-025-01642-1
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 10

Abstract

Read online

Abstract Atomic arrangements and local sub-structures fundamentally influence emergent material functionalities. These structures are conventionally probed using spatially resolved studies and the property correlations are deciphered by a researcher based on sequential explorations, thereby limiting the efficiency and scope. Here we demonstrate a multi-scale Bayesian deep-learning based framework that automatically correlates material structure with its electronic properties using scanning tunneling microscopy (STM) measurements in real-time. Its predictions are used to autonomously direct exploration toward regions of the sample that optimize a given material property. This method is deployed on a low-temperature ultra-high vacuum STM to understand the structure-property relationship in a europium-based semimetal, EuZn2As2, a promising candidate relevant to magnetism-driven topological phenomena. The framework employs a sparse-sampling approach to efficiently construct the scalar-property space using minimal measurements, about 1–10% of the data required in standard hyperspectral methods. Moreover, we formulate the problem hierarchically across length scales, implementing autonomous workflow to locate mesoscopic and atomic structures that correspond to a target material property. This framework offers the choice to design scalar-property from the spectroscopic data to steer sample exploration. Our findings reveal correlations of the electronic properties unique to surface terminations, local defect density, and point defects.