Finding and understanding correlated performance behaviour of the individual functions of massively parallel high-performance computing (HPC) applications is a time-consuming task. In this poster, we propose filtered correlation analysis for automatically locating interdependencies in call-path performance profiles. Transforming the data into the frequency domain splits a performance phenomenon into sub-phenomena to be correlate
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Scalable performance analysis is a challenge for parallel development tools. The potential size of d...
In modern embedded systems, data streams are often par-titioned into separate sub-streams which are ...
Performance metrics and their measurements are the basis of identifying and addressing computer perf...
This work introduces a method for instrumenting applications. producing execution traces. and visual...
High-performance computing systems have become increasingly dynamic, complex, and unpredictable. To ...
Understanding the performance behaviour of massively parallel high-performance computing (HPC) appli...
This work is motivated by the growing intricacy of high performance computing infrastructures. For e...
Efficient system management requires continuous knowledge about the state of system and application ...
The integration of scalable performance analysis in parallel development tools is difficult. The pot...
Often parallel scientific applications are instrumented and traces are collected and analyzed to ide...
International audienceFor the design of real-time embedded systems, analysis of performance and reso...
With rising complexity of high performance computing systems and their parallel software, performanc...
This thesis presents a contribution to the field of performance analysis for Input/Output (I/O) rela...
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Scalable performance analysis is a challenge for parallel development tools. The potential size of d...
In modern embedded systems, data streams are often par-titioned into separate sub-streams which are ...
Performance metrics and their measurements are the basis of identifying and addressing computer perf...
This work introduces a method for instrumenting applications. producing execution traces. and visual...
High-performance computing systems have become increasingly dynamic, complex, and unpredictable. To ...
Understanding the performance behaviour of massively parallel high-performance computing (HPC) appli...
This work is motivated by the growing intricacy of high performance computing infrastructures. For e...
Efficient system management requires continuous knowledge about the state of system and application ...
The integration of scalable performance analysis in parallel development tools is difficult. The pot...
Often parallel scientific applications are instrumented and traces are collected and analyzed to ide...
International audienceFor the design of real-time embedded systems, analysis of performance and reso...
With rising complexity of high performance computing systems and their parallel software, performanc...
This thesis presents a contribution to the field of performance analysis for Input/Output (I/O) rela...
High Performance Computing and Supercomputing is the high end area of the computing science that stu...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Scalable performance analysis is a challenge for parallel development tools. The potential size of d...