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* [[CTools:CCC:Projects|CCC]]
* [[CTools:CCC:Projects|CCC]]
* [[CTools:ICI:Usage|ICI]]
* [[CTools:ICI:Usage|ICI]]
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In 2012, we are trying to consolidate all the past developments in the new coherent framework. We would like to do the following:
 +
 +
* Move away from MySQL repository (for optimization cases) to directory/file-based repository with JSON format (easy integration with Java, Python, PhP, Google services) - it's much easier to extend and we can also sstore applications, datasets, modules inside.
 +
 +
* Convert CCC framework to fully modular infrastructure using Python and support for other languages such as Java, C, C++, Fortran, etc. Users should be able to expose choices ("tuning parameters") and multiple characteristics to tune. Python is very portable and can simplify system operations at the same time. We should provide a core module to communicate with the repository
 +
 +
* Convert CCC plugins written in C or PHP for auto-tuning to Python-based modules that tune objects based on their JSON description (add "choices" and "characteristics").
 +
 +
* Convert CCC PHP plugins for data mining to Python based modules and use standard Python machine learning modules as a start (KNN, SVM).
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 +
* Convert CCC PHP plugins for data visualization to Python/Java based modules and combine with Google web services.
 +
 +
* Convert CCC benchmarks and datasets to the new format (JSON).
 +
 +
* Implement cTuning CC as a Python module.
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 +
* Add Android support to start collecting various performance/power characteristics from multiple users.
 +
 +
* Evaluate various machine learning (classification and predictive modeling techniques) that effectively explain behavior of computer systems or predict optimizations and hardware designs that improve performance and save power.
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* Improve statistical ranking mechanism to favor better optimizations and hardware designs or find representative benchmarks and data sets.

Revision as of 16:03, 9 March 2012

Ideas for GSOC 2012

Intro

In the past 3 years, we collected considerable feedback from users about possible improvements in cTuning tools and repository for application and architecture auto-tuning and data-mining:

In 2012, we are trying to consolidate all the past developments in the new coherent framework. We would like to do the following:

  • Move away from MySQL repository (for optimization cases) to directory/file-based repository with JSON format (easy integration with Java, Python, PhP, Google services) - it's much easier to extend and we can also sstore applications, datasets, modules inside.
  • Convert CCC framework to fully modular infrastructure using Python and support for other languages such as Java, C, C++, Fortran, etc. Users should be able to expose choices ("tuning parameters") and multiple characteristics to tune. Python is very portable and can simplify system operations at the same time. We should provide a core module to communicate with the repository
  • Convert CCC plugins written in C or PHP for auto-tuning to Python-based modules that tune objects based on their JSON description (add "choices" and "characteristics").
  • Convert CCC PHP plugins for data mining to Python based modules and use standard Python machine learning modules as a start (KNN, SVM).
  • Convert CCC PHP plugins for data visualization to Python/Java based modules and combine with Google web services.
  • Convert CCC benchmarks and datasets to the new format (JSON).
  • Implement cTuning CC as a Python module.
  • Add Android support to start collecting various performance/power characteristics from multiple users.
  • Evaluate various machine learning (classification and predictive modeling techniques) that effectively explain behavior of computer systems or predict optimizations and hardware designs that improve performance and save power.
  • Improve statistical ranking mechanism to favor better optimizations and hardware designs or find representative benchmarks and data sets.
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