Cargando…

Reproducible Experiment Platform

Data analysis in fundamental sciences nowadays is an essential process that pushes frontiers of our knowledge and leads to new discoveries. At the same time we can see that complexity of those analyses increases fast due to a)~enormous volumes of datasets being analyzed, b)~variety of techniques and...

Descripción completa

Detalles Bibliográficos
Autores principales: Likhomanenko, Tatiana, Rogozhnikov, Alex, Baranov, Alexander, Khairullin, Egor, Ustyuzhanin, Andrey
Lenguaje:eng
Publicado: 2015
Materias:
Acceso en línea:https://dx.doi.org/10.1088/1742-6596/664/5/052022
http://cds.cern.ch/record/2057086
_version_ 1780948352233373696
author Likhomanenko, Tatiana
Rogozhnikov, Alex
Baranov, Alexander
Khairullin, Egor
Ustyuzhanin, Andrey
author_facet Likhomanenko, Tatiana
Rogozhnikov, Alex
Baranov, Alexander
Khairullin, Egor
Ustyuzhanin, Andrey
author_sort Likhomanenko, Tatiana
collection CERN
description Data analysis in fundamental sciences nowadays is an essential process that pushes frontiers of our knowledge and leads to new discoveries. At the same time we can see that complexity of those analyses increases fast due to a)~enormous volumes of datasets being analyzed, b)~variety of techniques and algorithms one have to check inside a single analysis, c)~distributed nature of research teams that requires special communication media for knowledge and information exchange between individual researchers. There is a lot of resemblance between techniques and problems arising in the areas of industrial information retrieval and particle physics. To address those problems we propose Reproducible Experiment Platform (REP), a software infrastructure to support collaborative ecosystem for computational science. It is a Python based solution for research teams that allows running computational experiments on shared datasets, obtaining repeatable results, and consistent comparisons of the obtained results. We present some key features of REP based on case studies which include trigger optimization and physics analysis studies at the LHCb experiment.
id cern-2057086
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2015
record_format invenio
spelling cern-20570862023-06-29T03:32:47Zdoi:10.1088/1742-6596/664/5/052022http://cds.cern.ch/record/2057086engLikhomanenko, TatianaRogozhnikov, AlexBaranov, AlexanderKhairullin, EgorUstyuzhanin, AndreyReproducible Experiment Platformphysics.data-anData analysis in fundamental sciences nowadays is an essential process that pushes frontiers of our knowledge and leads to new discoveries. At the same time we can see that complexity of those analyses increases fast due to a)~enormous volumes of datasets being analyzed, b)~variety of techniques and algorithms one have to check inside a single analysis, c)~distributed nature of research teams that requires special communication media for knowledge and information exchange between individual researchers. There is a lot of resemblance between techniques and problems arising in the areas of industrial information retrieval and particle physics. To address those problems we propose Reproducible Experiment Platform (REP), a software infrastructure to support collaborative ecosystem for computational science. It is a Python based solution for research teams that allows running computational experiments on shared datasets, obtaining repeatable results, and consistent comparisons of the obtained results. We present some key features of REP based on case studies which include trigger optimization and physics analysis studies at the LHCb experiment.Data analysis in fundamental sciences nowadays is an essential process that pushes frontiers of our knowledge and leads to new discoveries. At the same time we can see that complexity of those analyses increases fast due to a) enormous volumes of datasets being analyzed, b) variety of techniques and algorithms one have to check inside a single analysis, c) distributed nature of research teams that requires special communication media for knowledge and information exchange between individual researchers. There is a lot of resemblance between techniques and problems arising in the areas of industrial information retrieval and particle physics. To address those problems we propose Reproducible Experiment Platform (REP), a software infrastructure to support collaborative ecosystem for computational science. It is a Python based solution for research teams that allows running computational experiments on shared datasets, obtaining repeatable results, and consistent comparisons of the obtained results. We present some key features of REP based on case studies which include trigger optimization and physics analysis studies at the LHCb experiment.Data analysis in fundamental sciences nowadays is an essential process that pushes frontiers of our knowledge and leads to new discoveries. At the same time we can see that complexity of those analyses increases fast due to a)~enormous volumes of datasets being analyzed, b)~variety of techniques and algorithms one have to check inside a single analysis, c)~distributed nature of research teams that requires special communication media for knowledge and information exchange between individual researchers. There is a lot of resemblance between techniques and problems arising in the areas of industrial information retrieval and particle physics. To address those problems we propose Reproducible Experiment Platform (REP), a software infrastructure to support collaborative ecosystem for computational science. It is a Python based solution for research teams that allows running computational experiments on shared datasets, obtaining repeatable results, and consistent comparisons of the obtained results. We present some key features of REP based on case studies which include trigger optimization and physics analysis studies at the LHCb experiment.arXiv:1510.00624oai:cds.cern.ch:20570862015-10-01
spellingShingle physics.data-an
Likhomanenko, Tatiana
Rogozhnikov, Alex
Baranov, Alexander
Khairullin, Egor
Ustyuzhanin, Andrey
Reproducible Experiment Platform
title Reproducible Experiment Platform
title_full Reproducible Experiment Platform
title_fullStr Reproducible Experiment Platform
title_full_unstemmed Reproducible Experiment Platform
title_short Reproducible Experiment Platform
title_sort reproducible experiment platform
topic physics.data-an
url https://dx.doi.org/10.1088/1742-6596/664/5/052022
http://cds.cern.ch/record/2057086
work_keys_str_mv AT likhomanenkotatiana reproducibleexperimentplatform
AT rogozhnikovalex reproducibleexperimentplatform
AT baranovalexander reproducibleexperimentplatform
AT khairullinegor reproducibleexperimentplatform
AT ustyuzhaninandrey reproducibleexperimentplatform