Cargando…

Hands on MadMiner

<!--HTML-->I will review the MadMiner tool, which implements approaches to approximate the fully differential likelihood (or likelihood ratio) including showering and detector effects with machine learning. The techniques are described in three publications “Constraining Effective Field Theori...

Descripción completa

Detalles Bibliográficos
Autor principal: Cranmer, Kyle Stuart
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2752551
_version_ 1780969286310821888
author Cranmer, Kyle Stuart
author_facet Cranmer, Kyle Stuart
author_sort Cranmer, Kyle Stuart
collection CERN
description <!--HTML-->I will review the MadMiner tool, which implements approaches to approximate the fully differential likelihood (or likelihood ratio) including showering and detector effects with machine learning. The techniques are described in three publications “Constraining Effective Field Theories With Machine Learning”, “A Guide to Constraining Effective Field Theories With Machine Learning”, and “Mining gold from implicit models to improve likelihood-free inference” and MadMiner: Machine-learning-based inference for particle physics describes the tool itself. The hour will be based on this on-line tutorial: http://theoryandpractice.org/madminer-tutorial/ I will also describe recent work to deploy MadMiner workflows at scale using REANA. In order to get the most out of our time in the MadMiner tutorial, I would like to ask that you first complete some preliminary steps, which involves installing Docker on your laptop and pulling the Docker images for the tutorial. The MadMiner tool has many software dependencies (MadGraph, Pythia, Delphes, pytorch, etc.). The full software environment is already setup in these docker images. There is a webpage for the tutorial. I would ask that you complete the setup described in the preliminaries page: http://theoryandpractice.org/madminer-tutorial/preliminaries.html Thank you and see you Thursday! Kyle
id cern-2752551
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-27525512022-11-02T22:36:00Zhttp://cds.cern.ch/record/2752551engCranmer, Kyle StuartHands on MadMiner(Re)interpreting the results of new physics searches at the LHCLPCC Workshops<!--HTML-->I will review the MadMiner tool, which implements approaches to approximate the fully differential likelihood (or likelihood ratio) including showering and detector effects with machine learning. The techniques are described in three publications “Constraining Effective Field Theories With Machine Learning”, “A Guide to Constraining Effective Field Theories With Machine Learning”, and “Mining gold from implicit models to improve likelihood-free inference” and MadMiner: Machine-learning-based inference for particle physics describes the tool itself. The hour will be based on this on-line tutorial: http://theoryandpractice.org/madminer-tutorial/ I will also describe recent work to deploy MadMiner workflows at scale using REANA. In order to get the most out of our time in the MadMiner tutorial, I would like to ask that you first complete some preliminary steps, which involves installing Docker on your laptop and pulling the Docker images for the tutorial. The MadMiner tool has many software dependencies (MadGraph, Pythia, Delphes, pytorch, etc.). The full software environment is already setup in these docker images. There is a webpage for the tutorial. I would ask that you complete the setup described in the preliminaries page: http://theoryandpractice.org/madminer-tutorial/preliminaries.html Thank you and see you Thursday! Kyleoai:cds.cern.ch:27525512021
spellingShingle LPCC Workshops
Cranmer, Kyle Stuart
Hands on MadMiner
title Hands on MadMiner
title_full Hands on MadMiner
title_fullStr Hands on MadMiner
title_full_unstemmed Hands on MadMiner
title_short Hands on MadMiner
title_sort hands on madminer
topic LPCC Workshops
url http://cds.cern.ch/record/2752551
work_keys_str_mv AT cranmerkylestuart handsonmadminer
AT cranmerkylestuart reinterpretingtheresultsofnewphysicssearchesatthelhc