From cTuning.org
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* Adaptive Virtualization | * Adaptive Virtualization | ||
* Performance Modeling | * Performance Modeling | ||
- | * Performance | + | * Performance Portability |
* Adaptive Processor and System Architecture | * Adaptive Processor and System Architecture | ||
* Architecture Simulation and Design Space Exploration | * Architecture Simulation and Design Space Exploration |
Revision as of 04:39, 23 July 2009
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4th Workshop on Statistical and Machine learning approaches to ARchitecture and compilaTion |
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Program Chair:
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The rapid rate of architectural change and the large diversity of architecture features has made it increasingly difficult for compiler writers to keep pace with microprocessor evolution. This problem has been compounded by the introduction of multicores. Thus, compiler writers have an intractably complex problem to solve. A similar situation arises in processor design where new approaches are needed to help computer architects make the best use of new underlying technologies and to design systems well adapted to futureapplication domains. Recent studies have shown the great potential of statistical machine learning and search strategies for compilation and machine design. The purpose of this workshop is to help consolidate and advance the state of the art in this emerging area of research. The workshop is a forum for the presentation of recent developments in compiler techniques and machine design methodologies based on space exploration and statistical machine learning approaches with the objective of improving performance, parallelism, scalability, and adaptability. Topics of interest include (but are not limited to):
Paper Submission Guidelines:
Important Dates:
Previous Workshops: |