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Data grids: a new computational infrastructure for data-intensive science

Twenty-first-century scientific and engineering enterprises are increasingly characterized by their geographic dispersion and their reliance on large data archives. These characteristics bring with them unique challenges. First, the increasing size and complexity of modern data collections require s...

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Autor principal: Avery, P
Lenguaje:eng
Publicado: 2002
Materias:
Acceso en línea:https://dx.doi.org/10.1098/rsta.2002.0988
http://cds.cern.ch/record/590855
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author Avery, P
author_facet Avery, P
author_sort Avery, P
collection CERN
description Twenty-first-century scientific and engineering enterprises are increasingly characterized by their geographic dispersion and their reliance on large data archives. These characteristics bring with them unique challenges. First, the increasing size and complexity of modern data collections require significant investments in information technologies to store, retrieve and analyse them. Second, the increased distribution of people and resources in these projects has made resource sharing and collaboration across significant geographic and organizational boundaries critical to their success. In this paper I explore how computing infrastructures based on data grids offer data-intensive enterprises a comprehensive, scalable framework for collaboration and resource sharing. A detailed example of a data grid framework is presented for a Large Hadron Collider experiment, where a hierarchical set of laboratory and university resources comprising petaflops of processing power and a multi- petabyte data archive must be efficiently used by a global collaboration. (14 refs).
id cern-590855
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2002
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spelling cern-5908552019-09-30T06:29:59Zdoi:10.1098/rsta.2002.0988http://cds.cern.ch/record/590855engAvery, PData grids: a new computational infrastructure for data-intensive scienceInformation Transfer and ManagementTwenty-first-century scientific and engineering enterprises are increasingly characterized by their geographic dispersion and their reliance on large data archives. These characteristics bring with them unique challenges. First, the increasing size and complexity of modern data collections require significant investments in information technologies to store, retrieve and analyse them. Second, the increased distribution of people and resources in these projects has made resource sharing and collaboration across significant geographic and organizational boundaries critical to their success. In this paper I explore how computing infrastructures based on data grids offer data-intensive enterprises a comprehensive, scalable framework for collaboration and resource sharing. A detailed example of a data grid framework is presented for a Large Hadron Collider experiment, where a hierarchical set of laboratory and university resources comprising petaflops of processing power and a multi- petabyte data archive must be efficiently used by a global collaboration. (14 refs).oai:cds.cern.ch:5908552002
spellingShingle Information Transfer and Management
Avery, P
Data grids: a new computational infrastructure for data-intensive science
title Data grids: a new computational infrastructure for data-intensive science
title_full Data grids: a new computational infrastructure for data-intensive science
title_fullStr Data grids: a new computational infrastructure for data-intensive science
title_full_unstemmed Data grids: a new computational infrastructure for data-intensive science
title_short Data grids: a new computational infrastructure for data-intensive science
title_sort data grids: a new computational infrastructure for data-intensive science
topic Information Transfer and Management
url https://dx.doi.org/10.1098/rsta.2002.0988
http://cds.cern.ch/record/590855
work_keys_str_mv AT averyp datagridsanewcomputationalinfrastructurefordataintensivescience