AI and ML integration for beamline optimization and virtual assistance at the SOLARIS synchrotron

WEMR002
24 Sept 2025, 15:03
3m
Red Lacquer Room (Palmer House Hilton Chicago)

Red Lacquer Room

Palmer House Hilton Chicago

17 East Monroe Street Chicago, IL 60603, United States of America
Poster Presentation with Mini Oral MC13: Artificial Intelligence & Machine Learning WEMR Mini-Orals (MC13, MC14, MC15)

Speaker

Magdalena Szczepanik (SOLARIS National Synchrotron Radiation Centre)

Description

The future of synchrotron beamline operations is poised for a transformative leap with advancements in artificial intelligence (AI) and machine learning (ML). While SOLARIS National Synchrotron Radiation Centre* has yet to integrate these technologies, their potential to revolutionize experiments, data analysis, and user interactions is immense. AI-driven automation promises real-time assistance in optimizing beamline experiments, minimizing manual intervention while enhancing precision. Machine learning algorithms will unlock deeper insights from complex datasets, facilitating faster, more accurate interpretations. Additionally, intelligent virtual agents could redefine how researchers interact with beamline controls, offering predictive guidance and adaptive optimization. As SOLARIS expands its capabilities, embracing AI and ML will position it at the forefront of scientific innovation, ensuring seamless, efficient, and accessible synchrotron research for future generations.

Funding Agency

Polish Ministry and Higher Education project "Support for research and development with the use of research infra-structure of the National Synchrotron Radiation Centre SOLARIS” under contract no 1/SO

Footnotes

  • https://synchrotron.uj.edu.pl/

Author

Magdalena Szczepanik (SOLARIS National Synchrotron Radiation Centre)

Co-authors

Michal Piekarski (SOLARIS National Synchrotron Radiation Centre) Mr Michał Fałowski (SOLARIS National Synchrotron Radiation Centre)

Presentation materials

There are no materials yet.