On/off-line prediction applied to job scheduling on non-dedicated NOWs

Author

Hanzich, Mauricio

Hernández Budé, Porfidio

Giné, Francesc

Solsona Tehàs, Francesc

Lérida Monsó, Josep Lluís

Publication date

2015-10-27T10:04:15Z

2025-01-01

2011



Abstract

This paper proposes a prediction engine designed for non-dedicated clusters, which is able to estimate the turnaround time for parallel applications, even in the presence of serial workload of the workstation owner. The prediction engine can be configured to work with three different estimation kernels: a Historical kernel, a Simulation kernel based on analytical models and an integration of both, named Hybrid kernel. These estimation proposals were integrated into a scheduling system, named CISNE, which can be executed in an on-line or off-line mode. The accuracy of the proposed estimation methods was evaluated in relation to different job scheduling policies in a real and a simulated cluster environment. In both environments, we observed that the Hybrid system gives the best results because it combines the ability of a simulation engine to capture the dynamism of a non-dedicated environment together with the accuracy of the historical methods to estimate the application runtime considering the state of the resources.

Document Type

article
publishedVersion

Language

English

Subjects and keywords

Prediction method; Non-dedicated cluster; Cluster computing; Computació en núvol; Cluster, Anàlisi de

Publisher

Springer Verlag

Related items

Reproducció del document publicat a https://doi.org/10.1007/s11390-011-9418-5

Journal of Computer Science and Technology, 2011, vol. 26, núm.1, p. 99-116

Rights

(c) Springer Verlag, 2011

This item appears in the following Collection(s)