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Kojak: Difference between revisions
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{{Infobox software | |||
|logo = [[Image:kojak-logo.gif]] | |||
| description = '''KOJAK''' is a performance-analysis tool for parallel applications supporting the programming models MPI, OpenMP, SHMEM, and combinations thereof. Its functionality addresses the entire analysis process including instrumentation, post-processing of performance data, and result presentation. It is based on the idea of automatically searching event traces of parallel applications for execution patterns indicating inefficient behavior. The patterns are classified by category and their significance is quantified for every program phase and system resource involved. The results are made available to the user in a flexible graphical user interface, where they can be investigated on varying levels of granularity. | |||
| developer = Jülich Supercomputing Centre, Innovative Computing Laboratory | |||
| available on = | |||
| category = [[:Category:Performance Analyzer | Performance Analyzer]] | |||
| license = Proprietary | |||
| website = [http://icl.cs.utk.edu/kojak/ KOJAK homepage] | |||
}} | |||
== See also == | |||
* [[Software Development Tools, Compilers & Libraries]] | |||
== External links == | == External links == | ||
* [http://icl.cs.utk.edu/kojak/ KOJAK homepage] | * [http://icl.cs.utk.edu/kojak/ KOJAK homepage] | ||
[[Category:Performance Analyzer]] |
Latest revision as of 12:39, 19 August 2011
KOJAK is a performance-analysis tool for parallel applications supporting the programming models MPI, OpenMP, SHMEM, and combinations thereof. Its functionality addresses the entire analysis process including instrumentation, post-processing of performance data, and result presentation. It is based on the idea of automatically searching event traces of parallel applications for execution patterns indicating inefficient behavior. The patterns are classified by category and their significance is quantified for every program phase and system resource involved. The results are made available to the user in a flexible graphical user interface, where they can be investigated on varying levels of granularity. |
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