Performance prediction on multi-core processors

No Thumbnail Available
Date
2010-12-01
Authors
Rai, Jitendra Kumar
Negi, Atul
Wankar, Rajeev
Nayak, K. D.
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Contention for shared resources between co-running programs on a multi-core processor causes degradation of performance. Previous research work made efforts to characterize and classify memory behavior of programs to predict their performance. Such knowledge may be used to design workloads for performance studies on multi-core processors. It could also be utilized to formulate policies that alleviate contention for shared resources at a system level. In this work we apply machine learning techniques to predict the performance on multi-core processors. The main contribution of the study is enumeration of solo-run program attributes, which can be used to predict paired-run performance. The paired run involves the contention for shared resources between co-running programs. We observed that machine learning techniques could be utilized to predict the paired run performance with reasonable accuracy. © 2010 IEEE.
Description
Keywords
Hardware performance counters, Machine learning techniques, Multi-core processors, Performance prediction, Shared resource contention
Citation
Proceedings - 2010 International Conference on Computational Intelligence and Communication Networks, CICN 2010