Automatic parallelization with OSCAR API Analyzer: a cross-platform performance evaluation
スポンサーリンク
概要
- 論文の詳細を見る
To satisfy the demands of auto parallelizing compilers in the diverse industry of multicores, we have developed the OSCAR API Analyzer. It allows programs automatically parallelized by the OSCAR compiler with OSCAR API directives to target many different platforms using just sequential compilers. We have evaluated the execution performance of the parallelization of Fortran SPEC benchmarks (tomcatv, swim2000, mgrid2000) and media C benchmarks (AAC encoder, Optical flow, MPEG2 encoder, MPEG2 decoder, Face detect) on five HPC servers and four embedded multicores. Speedups on servers were up to 18x for 32 cores (swim2000 on Hitachi SR16000), whereas on embedded systems, AAC encoder speedup was up to 47x on TilePro64, for 64 homogeneous cores, and up to 32.65x for the optical flow on the heterogeneous multicore RP-X, using 8 cores and 4 accelerators.
- 2012-12-06
著者
-
Keiji Kimura
Waseda University
-
Akihiro Hayashi
Waseda University
-
Hiroki Mikami
Waseda University
-
Hironori Kasahara
Waseda University
-
Youhei Kanehagi
Waseda University
-
Kosei Takemoto
Waseda University
-
Yohei Kishimoto
Waseda University
-
Kohei Muto
Waseda University
-
Keiji Kimura
Department of Computer Science and Engineering, Waseda University
関連論文
- Opportunities and Challenges of Application-Power Control in the Age of Dark Silicon
- Automatic parallelization with OSCAR API Analyzer: a cross-platform performance evaluation
- Opportunities and Challenges of Application-Power Control in the Age of Dark Silicon
- Automatic parallelization with OSCAR API Analyzer: a cross-platform performance evaluation
- Enhancing the Performance of a Multiplayer Game by Using a Parallelizing Compiler
- Enhancing the Performance of a Multiplayer Game by Using a Parallelizing Compiler
- Android Demonstration System of Automatic Parallelization and Power Optimization by OSCAR Compiler