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Main Authors: Ørsøe, Rasmus F., Rosted, Aske, Team, GraphNeT
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.03817
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author Ørsøe, Rasmus F.
Rosted, Aske
Team, GraphNeT
author_facet Ørsøe, Rasmus F.
Rosted, Aske
Team, GraphNeT
contents Neutrino telescopes, an extension of traditional multiwavelength astronomy, provide a complementary view of the universe using neutrinos. Differences in detector geometry and detection medium mean that improvements to reconstruction techniques made at one experiment are not readily applicable to another. Recently, deep learning has been shown to improve prediction speed and accuracy and offer indifference to detector geometry and detection medium, providing a unique opportunity for collaboration. This work introduces GraphNeT 2.0, an open-source, detector-agnostic deep learning library for neutrino telescopes and related experiments. GraphNeT enables inter-experimental collaboration on the use and development of advanced methods based on major deep learning paradigms like transformers, normalizing flows, graph neural networks, and more.
format Preprint
id arxiv_https___arxiv_org_abs_2501_03817
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GraphNeT 2.0 -- A Deep Learning Library for Neutrino Telescopes
Ørsøe, Rasmus F.
Rosted, Aske
Team, GraphNeT
High Energy Physics - Experiment
Neutrino telescopes, an extension of traditional multiwavelength astronomy, provide a complementary view of the universe using neutrinos. Differences in detector geometry and detection medium mean that improvements to reconstruction techniques made at one experiment are not readily applicable to another. Recently, deep learning has been shown to improve prediction speed and accuracy and offer indifference to detector geometry and detection medium, providing a unique opportunity for collaboration. This work introduces GraphNeT 2.0, an open-source, detector-agnostic deep learning library for neutrino telescopes and related experiments. GraphNeT enables inter-experimental collaboration on the use and development of advanced methods based on major deep learning paradigms like transformers, normalizing flows, graph neural networks, and more.
title GraphNeT 2.0 -- A Deep Learning Library for Neutrino Telescopes
topic High Energy Physics - Experiment
url https://arxiv.org/abs/2501.03817