Comparative Study a Performance and Capability Scheduling Techniques in Grid Computing
Journal Title: International Journal on Computer Science and Engineering - Year 2010, Vol 2, Issue 2
Abstract
This paper shows the comparative study about existing scheduling technique in grid computing. This paper also shows the performance and capability for each scheduling technique. Four existing scheduling technique are AppLeS, Condor-G, Nimrod/G and GrADS have been studied and analyzed. Several experiments have been done for each technique by using simulation and tested in real grid. The results shows a performance and capability for each scheduling technique and was analyzed in summary table.
Authors and Affiliations
Mohd Kamir Yusof , Muhamad Azhar Stapa
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