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Towards a holistic approach to auto-parallelization: integrating profile-driven parallelism detection and machine-learning based mapping

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Towards a holistic approach to auto-parallelization: integrating profile-driven parallelism detection and machine-learning based mapping. / Tournavitis, Georgios; Wang, Zheng; Franke, Björn et al.
In: ACM SIGPLAN Notices, Vol. 44, No. 6, 06.2009, p. 177-187.

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Tournavitis G, Wang Z, Franke B, O'Boyle MFP. Towards a holistic approach to auto-parallelization: integrating profile-driven parallelism detection and machine-learning based mapping. ACM SIGPLAN Notices. 2009 Jun;44(6):177-187. doi: 10.1145/1543135.1542496

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Tournavitis, Georgios ; Wang, Zheng ; Franke, Björn et al. / Towards a holistic approach to auto-parallelization : integrating profile-driven parallelism detection and machine-learning based mapping. In: ACM SIGPLAN Notices. 2009 ; Vol. 44, No. 6. pp. 177-187.

Bibtex

@article{692a5821c13f4b77a4b0507ef081432b,
title = "Towards a holistic approach to auto-parallelization: integrating profile-driven parallelism detection and machine-learning based mapping",
abstract = "Compiler-based auto-parallelization is a much studied area, yet has still not found wide-spread application. This is largely due to the poor exploitation of application parallelism, subsequently resulting in performance levels far below those which a skilled expert programmer could achieve. We have identified two weaknesses in traditional parallelizing compilers and propose a novel, integrated approach, resulting in significant performance improvements of the generated parallel code. Using profile-driven parallelism detection we overcome the limitations of static analysis, enabling us to identify more application parallelism and only rely on the user for final approval. In addition, we replace the traditional target-specific and inflexible mapping heuristics with a machine-learning based prediction mechanism, resulting in better mapping decisions while providing more scope for adaptation to different target architectures. We have evaluated our parallelization strategy against the NAS and SPEC OMP benchmarks and two different multi-core platforms (dual quad-core Intel Xeon SMP and dual-socket QS20 Cell blade). We demonstrate that our approach not only yields significant improvements when compared with state-of-the-art parallelizing compilers, but comes close to and sometimes exceeds the performance of manually parallelized codes. On average, our methodology achieves 96% of the performance of the hand-tuned OpenMP NAS and SPEC parallel benchmarks on the Intel Xeon platform and gains a significant speedup for the IBM Cell platform, demonstrating the potential of profile-guided and machine-learning based parallelization for complex multi-core platforms.",
keywords = "auto-parallelization, machine-learning based parallelism mapping, openmp, profile-driven parallelism detection",
author = "Georgios Tournavitis and Zheng Wang and Bj{\"o}rn Franke and O'Boyle, {Michael F.P.}",
year = "2009",
month = jun,
doi = "10.1145/1543135.1542496",
language = "English",
volume = "44",
pages = "177--187",
journal = "ACM SIGPLAN Notices",
issn = "0362-1340",
publisher = "Association for Computing Machinery (ACM)",
number = "6",

}

RIS

TY - JOUR

T1 - Towards a holistic approach to auto-parallelization

T2 - integrating profile-driven parallelism detection and machine-learning based mapping

AU - Tournavitis, Georgios

AU - Wang, Zheng

AU - Franke, Björn

AU - O'Boyle, Michael F.P.

PY - 2009/6

Y1 - 2009/6

N2 - Compiler-based auto-parallelization is a much studied area, yet has still not found wide-spread application. This is largely due to the poor exploitation of application parallelism, subsequently resulting in performance levels far below those which a skilled expert programmer could achieve. We have identified two weaknesses in traditional parallelizing compilers and propose a novel, integrated approach, resulting in significant performance improvements of the generated parallel code. Using profile-driven parallelism detection we overcome the limitations of static analysis, enabling us to identify more application parallelism and only rely on the user for final approval. In addition, we replace the traditional target-specific and inflexible mapping heuristics with a machine-learning based prediction mechanism, resulting in better mapping decisions while providing more scope for adaptation to different target architectures. We have evaluated our parallelization strategy against the NAS and SPEC OMP benchmarks and two different multi-core platforms (dual quad-core Intel Xeon SMP and dual-socket QS20 Cell blade). We demonstrate that our approach not only yields significant improvements when compared with state-of-the-art parallelizing compilers, but comes close to and sometimes exceeds the performance of manually parallelized codes. On average, our methodology achieves 96% of the performance of the hand-tuned OpenMP NAS and SPEC parallel benchmarks on the Intel Xeon platform and gains a significant speedup for the IBM Cell platform, demonstrating the potential of profile-guided and machine-learning based parallelization for complex multi-core platforms.

AB - Compiler-based auto-parallelization is a much studied area, yet has still not found wide-spread application. This is largely due to the poor exploitation of application parallelism, subsequently resulting in performance levels far below those which a skilled expert programmer could achieve. We have identified two weaknesses in traditional parallelizing compilers and propose a novel, integrated approach, resulting in significant performance improvements of the generated parallel code. Using profile-driven parallelism detection we overcome the limitations of static analysis, enabling us to identify more application parallelism and only rely on the user for final approval. In addition, we replace the traditional target-specific and inflexible mapping heuristics with a machine-learning based prediction mechanism, resulting in better mapping decisions while providing more scope for adaptation to different target architectures. We have evaluated our parallelization strategy against the NAS and SPEC OMP benchmarks and two different multi-core platforms (dual quad-core Intel Xeon SMP and dual-socket QS20 Cell blade). We demonstrate that our approach not only yields significant improvements when compared with state-of-the-art parallelizing compilers, but comes close to and sometimes exceeds the performance of manually parallelized codes. On average, our methodology achieves 96% of the performance of the hand-tuned OpenMP NAS and SPEC parallel benchmarks on the Intel Xeon platform and gains a significant speedup for the IBM Cell platform, demonstrating the potential of profile-guided and machine-learning based parallelization for complex multi-core platforms.

KW - auto-parallelization, machine-learning based parallelism mapping, openmp, profile-driven parallelism detection

U2 - 10.1145/1543135.1542496

DO - 10.1145/1543135.1542496

M3 - Journal article

VL - 44

SP - 177

EP - 187

JO - ACM SIGPLAN Notices

JF - ACM SIGPLAN Notices

SN - 0362-1340

IS - 6

ER -