Title :
Parallel performance prediction using lost cycles analysis
Author :
Crovella, Mark E. ; LeBlanc, Thomas J.
Author_Institution :
Dept. of Comput. Sci., Rochester Univ., NY, USA
Abstract :
Most performance debugging and tuning of parallel programs is based on the “measure-modify” approach, which is heavily dependent on detailed measurements of programs during execution. This approach is extremely time consuming and does not lend itself to predicting performance under varying conditions. Analytic modeling and scalability analysis provide predictive power, but are not widely used in practice, due primarily to their emphasis on asymptotic behavior and the difficulty of developing accurate models that work for real world programs. We describe a set of tools for performance tuning of parallel programs that bridges this gap between measurement and modeling. The approach is based on lost cycles analysis, which involves measurement and modeling of all sources of overhead in a parallel program. We first describe a tool for measuring overheads in parallel programs that we have incorporated onto the runtime environment for Fortran programs on the Kendall Square KSR1. We then describe a tool that fits these overhead measurements to analytic forms. We illustrate the use of these tools by analyzing the performance tradeoffs among parallel implementations of 2D FFT. These examples show how our tools enable programmers to develop accurate performance models of parallel applications without requiring extensive performance modeling expertise
Keywords :
fast Fourier transforms; parallel programming; program debugging; software performance evaluation; 2D FFT; Fortran programs; Kendall Square KSR1; analytic modeling; asymptotic behavior; lost cycles analysis; measure-modify approach; parallel performance prediction; parallel programs; performance debugging; performance tuning; predictive power; runtime environment; scalability analysis; Bridges; Computer science; Debugging; High performance computing; Loss measurement; Performance analysis; Predictive models; Programming profession; Scalability; Time measurement;
Conference_Titel :
Supercomputing '94., Proceedings
Conference_Location :
Washington, DC
Print_ISBN :
0-8186-6605-6
DOI :
10.1109/SUPERC.1994.344324