DocumentCode
3205044
Title
Exploiting concurrency among tasks in partitionable parallel processing systems
Author
Nation, Wayne G. ; Maciejewski, Anthony A. ; Siegel, Howard Jay
Author_Institution
Endicott Eng. Lab., IBM Corp., NY, USA
fYear
1992
fDate
23-26 Mar 1992
Firstpage
30
Lastpage
38
Abstract
One benefit of partitionable parallel processing systems is their ability to execute multiple, independent tasks simultaneously. Previous work has identified conditions such that, when there are k tasks to be processed, partitioning the system such that all k tasks are processed simultaneously results in a minimum overall execution time. An alternate condition is developed that provides additional insight into the effects of parallelism on execution time. This result, and previous results, however, assume that execution times are data independent. It is shown that data-dependent tasks do not necessarily execute faster when processed simultaneously even if the condition is met. A model is developed that provides for the possible variability of a task´s execution time and is used in a new framework to study the problem of finding an optimal mapping for identical, independent data-dependent execution time tasks onto partitionable systems. Extension of this framework to situations where the k tasks are non-identical is discussed
Keywords
computational complexity; concurrency control; parallel algorithms; parallel architectures; concurrency; data-dependent tasks; execution time; parallel processing; partitionable systems; Computational modeling; Concurrent computing; Histograms; Laboratories; Large-scale systems; Oceans; Parallel processing; Satellites; Signal processing; Signal processing algorithms;
fLanguage
English
Publisher
ieee
Conference_Titel
Parallel Processing Symposium, 1992. Proceedings., Sixth International
Conference_Location
Beverly Hills, CA
Print_ISBN
0-8186-2672-0
Type
conf
DOI
10.1109/IPPS.1992.223076
Filename
223076
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