Národní úložiště šedé literatury Nalezeno 2 záznamů.  Hledání trvalo 0.00 vteřin. 
Efficient Techniques for Program Performance Analysis
Pavela, Jiří ; Fiedor, Jan (oponent) ; Rogalewicz, Adam (vedoucí práce)
In this work, we propose optimization techniques focused on the data collection process of program performance analysis and profiling within the Perun framework.   We enhance Perun (and especially its Tracer module) by extending their architecture and  implementing novel optimization techniques that allow Perun to scale well even for large projects and test scenarios.   In particular, we focus on improving the data collection precision, scaling down the amount of injected instrumentation, limiting the time overhead of the collection and profiling processes, reducing the volume of raw performance data and the size of the resulting profile.   To achieve such optimization, we utilized statistical methods, several static and dynamic analysis approaches (as well as their combination) and exploited the advanced features and capabilities of SystemTap and eBPF frameworks.   Based on the evaluation performed on two selected projects and numerous experiment cases, we were able to conclude that we successfully achieved significant levels of optimization for nearly all of the identified metrics and criteria.
Efficient Techniques for Program Performance Analysis
Pavela, Jiří ; Fiedor, Jan (oponent) ; Rogalewicz, Adam (vedoucí práce)
In this work, we propose optimization techniques focused on the data collection process of program performance analysis and profiling within the Perun framework.   We enhance Perun (and especially its Tracer module) by extending their architecture and  implementing novel optimization techniques that allow Perun to scale well even for large projects and test scenarios.   In particular, we focus on improving the data collection precision, scaling down the amount of injected instrumentation, limiting the time overhead of the collection and profiling processes, reducing the volume of raw performance data and the size of the resulting profile.   To achieve such optimization, we utilized statistical methods, several static and dynamic analysis approaches (as well as their combination) and exploited the advanced features and capabilities of SystemTap and eBPF frameworks.   Based on the evaluation performed on two selected projects and numerous experiment cases, we were able to conclude that we successfully achieved significant levels of optimization for nearly all of the identified metrics and criteria.

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