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Fast inference on FPGA for the ATLAS Muon Trigger

Track finding in high-density environments is a key challenge for experiments at modern accelerators. In this presentation we describe the performance obtained running machine learning models studied for the ATLAS Muon High Level Trigger. These mod- els are designed for hit position reconstruction a...

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Autor principal: Carnesale, Maria
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2873583
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author Carnesale, Maria
author_facet Carnesale, Maria
author_sort Carnesale, Maria
collection CERN
description Track finding in high-density environments is a key challenge for experiments at modern accelerators. In this presentation we describe the performance obtained running machine learning models studied for the ATLAS Muon High Level Trigger. These mod- els are designed for hit position reconstruction and track pattern recognition with a tracking detector, on a commercially available Xilinx Alveo U50 and Alveo U250. We compare the inference times obtained on a CPU, on a GPU and on the Alveo cards. These tests are done using TensorFlow libraries as well as the TensorRT framework, and software frameworks for AI-based applications acceleration. The inference times obtained are compared to the needs of present and future experiments at LHC.
id cern-2873583
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28735832023-10-03T21:22:43Zhttp://cds.cern.ch/record/2873583engCarnesale, MariaFast inference on FPGA for the ATLAS Muon TriggerParticle Physics - ExperimentTrack finding in high-density environments is a key challenge for experiments at modern accelerators. In this presentation we describe the performance obtained running machine learning models studied for the ATLAS Muon High Level Trigger. These mod- els are designed for hit position reconstruction and track pattern recognition with a tracking detector, on a commercially available Xilinx Alveo U50 and Alveo U250. We compare the inference times obtained on a CPU, on a GPU and on the Alveo cards. These tests are done using TensorFlow libraries as well as the TensorRT framework, and software frameworks for AI-based applications acceleration. The inference times obtained are compared to the needs of present and future experiments at LHC.ATL-DAQ-SLIDE-2023-532oai:cds.cern.ch:28735832023-10-03
spellingShingle Particle Physics - Experiment
Carnesale, Maria
Fast inference on FPGA for the ATLAS Muon Trigger
title Fast inference on FPGA for the ATLAS Muon Trigger
title_full Fast inference on FPGA for the ATLAS Muon Trigger
title_fullStr Fast inference on FPGA for the ATLAS Muon Trigger
title_full_unstemmed Fast inference on FPGA for the ATLAS Muon Trigger
title_short Fast inference on FPGA for the ATLAS Muon Trigger
title_sort fast inference on fpga for the atlas muon trigger
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2873583
work_keys_str_mv AT carnesalemaria fastinferenceonfpgafortheatlasmuontrigger