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Title: "Geoprocessing Optimization
in Grid Systems"
When:
December 17, 2004 10:00am-12:00 noon
Where: 1st Floor Conference Room, IS
Building
Who:
Shuo Liu
Committee:
Dr. Hassan Karimi (chair), DIST
Dr. Michael Lewis, DIST
Dr. Vladimir Zadorozhny, DIST
Dr. Ralph Z. Roskies, Pittsburgh Supercomputing Center
Dr. M. Talat Odman, School of Civil and Environmental Engineering,
Georgia Institute of Technology
Abstract:
Geoprocessing is typically data-intensive and/or compute-intensive which demands
high computing power and data storage from computing environments. As the amount
of geospatial data increases, such requirements become crucial and may even go
beyond the computing capacity a single site can provide currently. As an emerging
new computing technology, grid computing offers a novel way to integrate distributed
computing resources and support collaboration across networks, which makes it
a perfect candidate as the backbone-technology for geoprocessing. Although there
have been a few research efforts on applying grid computing to the geospatial
domain, none offers a general optimization mechanism for geoprocessing.
In this proposal, a novel optimization technique for
geoprocessing in grid systems, GOG (Geoprocessing Optimization
in Grids), which improves the system response time, is
proposed. GOG tackles the optimization problem from three
perspectives: resource selection, parallelism utilization,
and dynamic adaptation. Three modules, one for each perspective,
will be developed accordingly and will be validated through
a proof-of-concept. |
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