A dynamic Bayesian optimized active recommender system for curiosity-driven partially Human-in-the-loop automated experiments

Arpan Biswas, Yongtao Liu, Nicole Creange, Yu Chen Liu, Stephen Jesse, Jan Chi Yang, Sergei V. Kalinin, Maxim A. Ziatdinov, Rama K. Vasudevan

Research output: Contribution to journalArticlepeer-review

9 Scopus citations

Abstract

Optimization of experimental materials synthesis and characterization through active learning methods has been growing over the last decade, with examples ranging from measurements of diffraction on combinatorial alloys at synchrotrons, to searches through chemical space with automated synthesis robots for perovskites. In virtually all cases, the target property of interest for optimization is defined a priori with the ability to shift the trajectory of the optimization based on human-identified findings during the experiment is lacking. Thus, to highlight the best of both human operators and AI-driven experiments, here we present the development of a human–AI collaborated experimental workflow, via a Bayesian optimized active recommender system (BOARS), to shape targets on the fly with human real-time feedback. Here, the human guidance overpowers AI at early iteration when prior knowledge (uncertainty) is minimal (higher), while the AI overpowers the human during later iterations to accelerate the process with the human-assessed goal. We showcase examples of this framework applied to pre-acquired piezoresponse force spectroscopy of a ferroelectric thin film, and in real-time on an atomic force microscope, with human assessment to find symmetric hysteresis loops. It is found that such features appear more affected by subsurface defects than the local domain structure. This work shows the utility of human–AI approaches for curiosity driven exploration of systems across experimental domains.

Original languageEnglish
Journalnpj Computational Materials
Volume10
Issue number1
DOIs
StatePublished - Dec 2024

Funding

The experiments, autonomous workflows, and deep kernel learning were supported by the Center for Nanophase Materials Sciences (CNMS), which is a US Department of Energy, Office of Science User Facility at Oak Ridge National Laboratory. Algorithmic development was supported by the US Department of Energy, Office of Science, Office of Basic Energy Sciences, MLExchange Project, award number 107514; and supported by the center for 3D Ferroelectric Microelectronics (3DFeM), an Energy Frontier Research Center funded by the U.S. Department of Energy (DOE), Office of Science, Basic Energy Sciences under Award Number DE-SC0021118. J.-C.Y. and Y.-C.L. acknowledge support from the National Science and Technology Council (NSTC), Taiwan, under grant no. NSTC-111-2628-M-006-005.

FundersFunder number
Center for Nanophase Materials Sciences
center for 3D Ferroelectric Microelectronics
U.S. Department of Energy
Office of Science
Basic Energy SciencesDE-SC0021118, 107514
Oak Ridge National Laboratory
National Science and Technology CouncilNSTC-111-2628-M-006-005

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