Adaptive parallel job scheduling with resource admissible allocation on two-level hierarchical grids

2012 | journal article; research paper. A publication with affiliation to the University of Göttingen.

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Quezada-Pina A, Tchernykh A, González-García JL, Hirales-Carbajal A, Ramírez-Alcaraz JM, Schwiegelshohn U, et al. ​Adaptive parallel job scheduling with resource admissible allocation on two-level hierarchical grids​. ​​Future Generation Computer Systems. ​2012;​28​(7):​​965​-976​. ​doi:10.1016/j.future.2012.02.004. 

Documents & Media

License

GRO License GRO License

Details

Authors
Quezada-Pina, Ariel; Tchernykh, Andrei; González-García, José Luis ; Hirales-Carbajal, Adán; Ramírez-Alcaraz, Juan Manuel; Schwiegelshohn, Uwe; Yahyapour, Ramin ; Miranda-López, Vanessa
Abstract
We evaluate job scheduling algorithms that integrate both tasks of Grid scheduling: job allocation to Grid sites and local scheduling at the sites. We propose and analyze an adaptive job allocation scheme named admissible allocation. The main idea of this scheme is to set job allocation constraints, and dynamically adapt them to cope with different workloads and Grid properties. We present 3-approximation and 5-competitive algorithms named MLB a + PS and MCT a + PS for the case that all jobs fit to the smallest machine, while we derive an approximation factor of 9 and a competitive factor of 11 for the general case. To show practical applicability of our methods, we perform a comprehensive study of the practical performance of the proposed strategies and their derivatives using simulation. To this end, we use real workload traces and corresponding Grid configurations. We analyze nine scheduling strategies that require a different amount of information on three Grid scenarios. We demonstrate that our strategies perform well across ten metrics that reflect both user-and system-specific goals.
Issue Date
2012
Journal
Future Generation Computer Systems 
Organization
Gesellschaft für wissenschaftliche Datenverarbeitung 
eISSN
0167-739X
Language
English

Reference

Citations


Social Media