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Geoff: The Generic Optimization Framework & Frontend for Particle Accelerator Controls

4 June 2025
Penelope Madysa
Sabrina Appel
Verena Kain
Michael Schenk
ArXiv (abs)PDFHTML
Main:12 Pages
5 Figures
Bibliography:6 Pages
1 Tables
Abstract

Geoff is a collection of Python packages that form a framework for automation of particle accelerator controls. With particle accelerator laboratories around the world researching machine learning techniques to improve accelerator performance and uptime, a multitude of approaches and algorithms have emerged. The purpose of Geoff is to harmonize these approaches and to minimize friction when comparing or migrating between them. It provides standardized interfaces for optimization problems, utility functions to speed up development, and a reference GUI application that ties everything together. Geoff is an open-source library developed at CERN and maintained and updated in collaboration between CERN and GSI as part of the EURO-LABS project. This paper gives an overview over Geoff's design, features, and current usage.

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@article{madysa2025_2506.03796,
  title={ Geoff: The Generic Optimization Framework & Frontend for Particle Accelerator Controls },
  author={ Penelope Madysa and Sabrina Appel and Verena Kain and Michael Schenk },
  journal={arXiv preprint arXiv:2506.03796},
  year={ 2025 }
}
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