Sciweavers

HIPEAC
2007
Springer

MiDataSets: Creating the Conditions for a More Realistic Evaluation of Iterative Optimization

13 years 10 months ago
MiDataSets: Creating the Conditions for a More Realistic Evaluation of Iterative Optimization
Abstract. Iterative optimization has become a popular technique to obtain improvements over the default settings in a compiler for performance-critical applications, such as embedded applications. An implicit assumption, however, is that the best configuration found for any arbitrary data set will work well with other data sets that a program uses. In this article, we evaluate that assumption based on 20 data sets per benchmark of the MiBench suite. We find that, though a majority of programs exhibit stable performance across data sets, the variability can significantly increase with many optimizations. However, for the best optimization configurations, we find that this variability is in fact small. Furthermore, we show that it is possible to find a compromise optimization configuration across data sets which is often within 5% of the best possible configuration for most data sets, and that the iterative process can converge in less than 20 iterations (for a population of 200 ...
Grigori Fursin, John Cavazos, Michael F. P. O'Boyl
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where HIPEAC
Authors Grigori Fursin, John Cavazos, Michael F. P. O'Boyle, Olivier Temam
Comments (0)