17–21 Jul 2023
Monash University
Australia/Melbourne timezone

Improving ATLAS Hadronic Object Performance with in situ techniques and ML/AI Algorithms

P27
17 Jul 2023, 17:44
1m
Monash University

Monash University

Poster Detectors and facilities Reception and poster presentation

Speaker

Albert Kong (University of Adelaide (AU))

Description

Experimental uncertainties related to hadronic object reconstruction can limit the precision of physics analyses at the LHC, and so improvements in performance have the potential to broadly increase the impact of results. Hadronic object reconstruction is also one of the most promising settings for cutting-edge machine learning and artificial intelligence algorithms at the LHC. Recent refinements to reconstruction and calibration procedures for ATLAS jets and MET result in reduced uncertainties, improved pileup stability and other performance gains. In this contribution, selected highlights of these developments will be presented.

Primary author

Albert Kong (University of Adelaide (AU))

Presentation materials