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Publication: ScoPred—Scalable User-Directed Performance Prediction Using Complexity Modeling and Historical Data

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Title ScoPred—Scalable User-Directed Performance Prediction Using Complexity Modeling and Historical Data
Authors/Editors* Benjamin Lafreniere, Angela C. Sodan
Where published* Workshop on Job Scheduling Strategies for Parallel Processing (JSSPP), Cambridge
How published* Proceedings
Year* 2005
Volume 3834
Number -1
Pages 62-90
Publisher Springer
Keywords scalability, performance prediction, historical data, prediction, linear regression
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Abstract
Using historical information to predict future runs of parallel jobs has shown to be valuable in job scheduling. Trends toward more flexible job-scheduling techniques such as adaptive resource allocation, and toward the expansion of scheduling to grids, make runtime predictions even more important. We present a technique of employing both a user
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