Setup design plays a pivotal role in experiment development, particularly in high-energy physics, where vast temporal and spatial scales dictate the course of research for decades. Our research, embedded in the MODE Collaboration, aims to generalize Machine Learning tools for creating a differentiable pipeline capable of suggesting optimal configurations for the Muon Collider Electromagnetic Calorimeter geometry. In our presentation we outline the structure of our pipeline, emphasizing the methods employed to ensure full code differentiability. Our primary focus lies in maximizing the reconstruction efficiency of photons amidst Beam-Induced background from muon decays. The approach relies on three core blocks: (I) Signal Event Generator: Responsible for generating signal events; (II) Background Generator: Focused on simulating background events; (III) Reconstruction Algorithm: Adapting the DeepJetCore Object Condensation framework. The thesis includes a showcase of performance tests for each core block, shedding light on their efficacy. Additionally, we provide a proof of concept derived from a first implementation of the developed modules into a full pipeline.

Towards End-to-end optimization of experimental design with automatic differentiation

NARDI, FEDERICO
2025

Abstract

Setup design plays a pivotal role in experiment development, particularly in high-energy physics, where vast temporal and spatial scales dictate the course of research for decades. Our research, embedded in the MODE Collaboration, aims to generalize Machine Learning tools for creating a differentiable pipeline capable of suggesting optimal configurations for the Muon Collider Electromagnetic Calorimeter geometry. In our presentation we outline the structure of our pipeline, emphasizing the methods employed to ensure full code differentiability. Our primary focus lies in maximizing the reconstruction efficiency of photons amidst Beam-Induced background from muon decays. The approach relies on three core blocks: (I) Signal Event Generator: Responsible for generating signal events; (II) Background Generator: Focused on simulating background events; (III) Reconstruction Algorithm: Adapting the DeepJetCore Object Condensation framework. The thesis includes a showcase of performance tests for each core block, shedding light on their efficacy. Additionally, we provide a proof of concept derived from a first implementation of the developed modules into a full pipeline.
17-set-2025
Inglese
DONINI, JULIEN
DORIGO, TOMMASO
Università degli studi di Padova
File in questo prodotto:
File Dimensione Formato  
Thesis_final_Federico_Nardi.pdf

accesso aperto

Licenza: Tutti i diritti riservati
Dimensione 21.59 MB
Formato Adobe PDF
21.59 MB Adobe PDF Visualizza/Apri

I documenti in UNITESI sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14242/366134
Il codice NBN di questa tesi è URN:NBN:IT:UNIPD-366134