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Jet flavor tagging with Deep Learning using Python

<!--HTML-->Object tagging, e.g. jet flavor tagging is seen as a classification problem from a Machine Learning point of view. Deep neural networks with multidimensional output provide one way of approaching this problem. Besides the part that implements the resulting deep neural net in the ATL...

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Autor principal: Lanfermann, Marie
Lenguaje:eng
Publicado: 2016
Materias:
Acceso en línea:http://cds.cern.ch/record/2157566
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author Lanfermann, Marie
author_facet Lanfermann, Marie
author_sort Lanfermann, Marie
collection CERN
description <!--HTML-->Object tagging, e.g. jet flavor tagging is seen as a classification problem from a Machine Learning point of view. Deep neural networks with multidimensional output provide one way of approaching this problem. Besides the part that implements the resulting deep neural net in the ATLAS C++ software framework, a Python framework has been developed to connect HEP data to standard Data Science Python based libraries for Machine Learning. It makes use of HDF5, JSON and Pickle as intermediate data storage format, pandas and numpy for data handling and calculations, Keras for neural net construction and training as well as testing and matplotlib for plotting. It can be seen as an example of taking advantage of outside-HEP software developments without relying on the HEP standard ROOT.
id cern-2157566
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2016
record_format invenio
spelling cern-21575662022-11-02T22:10:26Zhttp://cds.cern.ch/record/2157566engLanfermann, MarieJet flavor tagging with Deep Learning using Python2nd Developers@CERN ForumDevelopers@CERN Forum<!--HTML-->Object tagging, e.g. jet flavor tagging is seen as a classification problem from a Machine Learning point of view. Deep neural networks with multidimensional output provide one way of approaching this problem. Besides the part that implements the resulting deep neural net in the ATLAS C++ software framework, a Python framework has been developed to connect HEP data to standard Data Science Python based libraries for Machine Learning. It makes use of HDF5, JSON and Pickle as intermediate data storage format, pandas and numpy for data handling and calculations, Keras for neural net construction and training as well as testing and matplotlib for plotting. It can be seen as an example of taking advantage of outside-HEP software developments without relying on the HEP standard ROOT.oai:cds.cern.ch:21575662016
spellingShingle Developers@CERN Forum
Lanfermann, Marie
Jet flavor tagging with Deep Learning using Python
title Jet flavor tagging with Deep Learning using Python
title_full Jet flavor tagging with Deep Learning using Python
title_fullStr Jet flavor tagging with Deep Learning using Python
title_full_unstemmed Jet flavor tagging with Deep Learning using Python
title_short Jet flavor tagging with Deep Learning using Python
title_sort jet flavor tagging with deep learning using python
topic Developers@CERN Forum
url http://cds.cern.ch/record/2157566
work_keys_str_mv AT lanfermannmarie jetflavortaggingwithdeeplearningusingpython
AT lanfermannmarie 2nddeveloperscernforum