Abstract
The P-GRADE job execution mode will be demonstrated on a small Grid containing 3 clusters from Budapest and London. The first demonstration illustrates the Grid execution of a parallel meteorology application. The parallel program will be on-line monitored remotely in the Grid and locally visualized on the submitting machine. The second demonstration will use a parallel traffic simulation program developed in P-GRADE to show the usage of the P-GRADE job mode for Grid execution. The parallel program will be check-pointed and migrated to another cluster of the Grid. On-line job and execution monitoring will be demonstrated.
This work was partially supported by the following grants: EU DataGrid IST-2000-25182, EU GridLab IST-2001-32133, Hungarian Scientific Research Fund (OTKA) no. T032226, Hungarian OMFB-02307/2000, and Hungarian IKTA-00075/2001.
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Kacsuk, P.: Visual Parallel Programming on SGI Machines. In: Proc. of the SGI Users’ Conference, Krakow, Poland, pp. 37–56 (2000) (Invited paper)
Lovas, R., et al.: Application of P-GRADE Development Environment in Meteorology. In: Proc. of DAPSYS 2002, Linz, pp. 30–37 (2002)
Gourgoulis, A., et al.: Using Clusters for Traffic Simulation. In: Proc. of Mipro 2003, Opatija (2003)
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Kacsuk, P. et al. (2003). Demonstration of P-GRADE Job-Mode for the Grid. In: Kosch, H., Böszörményi, L., Hellwagner, H. (eds) Euro-Par 2003 Parallel Processing. Euro-Par 2003. Lecture Notes in Computer Science, vol 2790. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-540-45209-6_173
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DOI: https://doi.org/10.1007/978-3-540-45209-6_173
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