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Short Paper: Data Mining-based Fault Prediction and Detection on the Grid
Paris June 19-June 23
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/HPDC.2006.16521622006 15th IEEE International Conferen ...
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R. Duan, Inst. of Comput. Sci., Innsbruck Univ.
R. Prodan, Inst. of Comput. Sci., Innsbruck Univ.
T. Fahringer, Inst. of Comput. Sci., Innsbruck Univ.
This paper describes a novel approach to fault detection and prediction on the grid based on data mining techniques. Data mining techniques are here applied as a mean to effectively process the significant amount of captured data from grid sites, services, workflows and activities. The paper provides a first approach of proposed techniques in terms of its ability of utilizing relevant information and the fault tolerance requirements. Such approach is one intelligent, distributed framework of fault detection and prediction for anomaly and failed activity by using resource- and workflow-based information. We use fault predictions to improve the performance of the workflow execution by avoiding potential faults of activities
Index Terms:
resource-workflow-based information, grid based data mining, fault prediction, fault detection, fault tolerance requirement
Citation:
R. Duan, R. Prodan, T. Fahringer, "Short Paper: Data Mining-based Fault Prediction and Detection on the Grid," hpdc, pp.305-308, 2006 15th IEEE International Conference on High Performance Distributed Computing, 2006
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