Evaluating per-user Fairness of Goal-Oriented Parallel Computer Job Scheduling Policies
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32797
Evaluating per-user Fairness of Goal-Oriented Parallel Computer Job Scheduling Policies

Authors: Sangsuree Vasupongayya

Abstract:

Fair share objective has been included into the goaloriented parallel computer job scheduling policy recently. However, the previous work only presented the overall scheduling performance. Thus, the per-user performance of the policy is still lacking. In this work, the details of per-user fair share performance under the Tradeoff-fs(Tx:avgX) policy will be further evaluated. A basic fair share priority backfill policy namely RelShare(1d) is also studied. The performance of all policies is collected using an event-driven simulator with three real job traces as input. The experimental results show that the high demand users are usually benefited under most policies because their jobs are large or they have a lot of jobs. In the large job case, one job executed may result in over-share during that period. In the other case, the jobs may be backfilled for performances. However, the users with a mixture of jobs may suffer because if the smaller jobs are executing the priority of the remaining jobs from the same user will be lower. Further analysis does not show any significant impact of users with a lot of jobs or users with a large runtime approximation error.

Keywords: deviation, fair share, discrepancy search, priority scheduling.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1327456

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1301

References:


[1] S. Vasupongayya, "Achieving fair share objectives via goal-oriented parallel computer job scheduling policies", Proc. WASET ICCSE'09, Bangkok, Thailand, December 25-27, 2009.
[2] S.-H. Chiang, A. Arpaci-Dusseau and M. Vernon. "The impact of more accurate request runtimes on production job scheduling performance". In Lecture Notes in Computer Science (2537):103-127, 2002.
[3] S. Vasupongayya, "Impact of User Runtime Estimates on Achieving Fair Share Objectives", Proc. TISD, Nong Khai, Thailand, March 4-6, 2010.
[4] S. Vasupongayya, "Impact of Workloads on Fair Share Policies", Proc. ANSCSE14, Chiang Rai, Thailand, March 23-26, 2010.
[5] S.-H. Chiang and C. Fu. "Benefit of limited time-sharing in the presence of very large parallel jobs". In proceedings of the IEEE International Parallel and Distributed Processing Symposium, 2005.
[6] S.-H. Chiang and M. Vernon. "Production job scheduling for parallel shared memory systems". In proceeding of the IEEE International Parallel and Distributed Processing Symposium, 2001.
[7] D. Talby and D. Feitelson, "Supporting priorities and improving utilization of the IBM SP2 scheduler using slack-based backfilling". In proceeding of the International Parallel Processing Symposium, 1999.
[8] OpenPBS, http://www.nas.nasa.gov/Software/PBS/
[9] PBS pro, http://www.pbspro.com
[10] LSF, http://www.platform.com/product/ lsffamily.
[11] D. Jackson, Q. Snell & M. Clement. "Core algorithms of the MAUI scheduler". In proceeding of the Workshop on Job Scheduling Strategies for Parallel Processing, 2001.
[12] Maui scheduler, http://www.supercluster.org/maui
[13] Moab scheduler, http://www.clusterresources.com/products/mwm/ docs/moabadminguide450.pdf
[14] S. Vasupongayya, S.-H Chiang and B. Massey, "Search-based job scheduling for parallel computer workloads", In proceeding of the IEEE Cluster, Boston, MA, 2005.
[15] S.-H. Chiang and S. Vasupongayya, "Design and potential performance of goal-oriented job scheduling policies for parallel computer workloads". In the IEEE Transaction on Parallel and Distributed Systems. 19(12):1642-1656, 2009.
[16] A. Prasitsupparote & S. Vasupongayya, "Impact of Multi-partition Systems on Goal-oriented Parallel Computer Job Scheduling Policies" JCSSE2010, Bangkok, Thailand, 2010.
[17] T. Walsh, "Depth-bounded discrepancy search" Proc. Of International joint conference in Artificial Intelligence, 1997.
[18] S. Vasupongayya and S.-H. Chiang. "Multi-objective models for scheduling jobs on parallel computer systems". In proceeding of IEEE Cluster, Barcelona, Spain, 2006.
[19] Parallel workload archieve, available at http://www.cs.huji.ac.il/labs/ parallel/workload.
[20] S. Vasupongayya, "Impact of fair share and its configurations on parallel job scheduling algorithms". (to appear). In proceeding of the 2009 WASET International Conference on High Performance Computing, Venice, Italy, October 2009.
[21] D.Lifka, "The ANL/IBM SP Scheduling System", Proc. First Job Scheduling Strategies for Parallel Processing (JSSP-95), 1995.