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Les Houches guide to reusable ML models in LHC analyses

Authors :
Araz, Jack Y.
Buckley, Andy
Kasieczka, Gregor
Kieseler, Jan
Kraml, Sabine
Kvellestad, Anders
Lessa, Andre
Procter, Tomasz
Raklev, Are
Reyes-Gonzalez, Humberto
Rolbiecki, Krzysztof
Sekmen, Sezen
Unel, Gokhan
Publication Year :
2023

Abstract

With the increasing usage of machine-learning in high-energy physics analyses, the publication of the trained models in a reusable form has become a crucial question for analysis preservation and reuse. The complexity of these models creates practical issues for both reporting them accurately and for ensuring the stability of their behaviours in different environments and over extended timescales. In this note we discuss the current state of affairs, highlighting specific practical issues and focusing on the most promising technical and strategic approaches to ensure trustworthy analysis-preservation. This material originated from discussions in the LHC Reinterpretation Forum and the 2023 PhysTeV workshop at Les Houches.<br />Comment: 12 pages; v2: added funding acknowledgement; v3 update in response to referee comments

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.14575
Document Type :
Working Paper