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Towards Unlocking Insights from Logbooks Using AI

Authors :
Sulc, Antonin
Bien, Alex
Eichler, Annika
Ratner, Daniel
Rehm, Florian
Mayet, Frank
Hartmann, Gregor
Hoschouer, Hayden
Tuennermann, Henrik
Kaiser, Jan
John, Jason St.
Maldonado, Jennefer
Hazelwood, Kyle
Kammering, Raimund
Hellert, Thorsten
Wilksen, Tim
Kain, Verena
Hu, Wan-Lin
Publication Year :
2024

Abstract

Electronic logbooks contain valuable information about activities and events concerning their associated particle accelerator facilities. However, the highly technical nature of logbook entries can hinder their usability and automation. As natural language processing (NLP) continues advancing, it offers opportunities to address various challenges that logbooks present. This work explores jointly testing a tailored Retrieval Augmented Generation (RAG) model for enhancing the usability of particle accelerator logbooks at institutes like DESY, BESSY, Fermilab, BNL, SLAC, LBNL, and CERN. The RAG model uses a corpus built on logbook contributions and aims to unlock insights from these logbooks by leveraging retrieval over facility datasets, including discussion about potential multimodal sources. Our goals are to increase the FAIR-ness (findability, accessibility, interoperability, and reusability) of logbooks by exploiting their information content to streamline everyday use, enable macro-analysis for root cause analysis, and facilitate problem-solving automation.<br />Comment: 5 pages, 1 figure, 15th International Particle Accelerator Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.12881
Document Type :
Working Paper