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GRID
2008
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Distributed And Parallel Com...
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Integrating the common information model with MDS4
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Iván Díaz, G. Fernandez, Marí
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09 Nov 2010
Updated
09 Nov 2010
Type
Conference
Year
2008
Where
GRID
Authors
Iván Díaz, G. Fernandez, María J. Martín, Patricia González, Juan Touriño
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Distributed And Parallel Computing Study Group
Computer Vision