Probabilistic communication optimizations and parallelization for distributed-memory systems

Probabilistic communication optimizations and parallelization for distributed-memory systems

Abstract

In high-performance systems execution time is of crucial importance justifying advanced optimization techniques. Traditionally, optimization is based on static program analysis. The quality of program optimizations, however, can be substantially improved by utilizing runtime information. Probabilistic data-flow frameworks compute the probability with what data-flow facts may hold at some program point based on representative profile runs. Advanced optimizations can use this information in order to produce highly efficient code. In this paper we introduce a novel optimization technique in the context of High Performance Fortran (HPF) that is based on probabilistic data-flow information. We consider statically undefined attributes which play an important role for parallelization and compute for those attributes the probabilities to hold some specific value during runtime. For the most probable attribute values highly-optimized, specialized code is generated. In this way significantly better performance results can be achieved. The implementation of our optimization is done in the context of VFC, a source-to-source parallelizing compiler for HPF/F90.

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Authors
  • Mehofer, Eduard
  • Scholz, B.
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Shortfacts
Category
Technical Report (Technical Report)
Divisions
Scientific Computing
Publisher
Institute for Software Science, University of Vienna
Date
November 2000
Official URL
http://www.par.univie.ac.at/publications/download/...
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