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CCGRID
2010
IEEE

Discovering Piecewise Linear Models of Grid Workload

14 years 20 days ago
Discovering Piecewise Linear Models of Grid Workload
—Despite extensive research focused on enabling QoS for grid users through economic and intelligent resource provisioning, no consensus has emerged on the most promising strategies. On top of intrinsically challenging problems, the complexity and size of data has so far drastically limited the number of comparative experiments. An alternative to experimenting on real, large, and complex data, is to look for well-founded and parsimonious representations. This study is based on exhaustive information about the gLite-monitored jobs from the EGEE grid, representative of a significant fraction of e-science computing activity in Europe. Our main contributions are twofold. First we found that workload models for this grid can consistently be discovered from the real data, and that limiting the range of models to piecewise linear time series models is sufficiently powerful. Second, we present a bootstrapping strategy for building more robust models from the limited samples at hand.
Tamás Éltetö, Cécile Ger
Added 05 Dec 2010
Updated 05 Dec 2010
Type Conference
Year 2010
Where CCGRID
Authors Tamás Éltetö, Cécile Germain-Renaud, Pascal Bondon, Michèle Sebag
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