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April 3, 2011

Shogun – Google Summer of Code 2011

Filed under: Hidden Markov Model,Kernel Methods,Machine Learning,Vectors — Patrick Durusau @ 6:38 pm

Shogun – Google Summer of Code 2011

Students! Here is your change to work on a cutting edge software library for machine learning!

Posted ideas, or submit your own.

From the website:

SHOGUN is a machine learning toolbox, which is designed for unified large-scale learning for a broad range of feature types and learning settings. It offers a considerable number of machine learning models such as support vector machines for classification and regression, hidden Markov models, multiple kernel learning, linear discriminant analysis, linear programming machines, and perceptrons. Most of the specific algorithms are able to deal with several different data classes, including dense and sparse vectors and sequences using floating point or discrete data types. We have used this toolbox in several applications from computational biology, some of them coming with no less than 10 million training examples and others with 7 billion test examples. With more than a thousand installations worldwide, SHOGUN is already widely adopted in the machine learning community and beyond.

SHOGUN is implemented in C++ and interfaces to MATLAB, R, Octave, Python, and has a stand-alone command line interface. The source code is freely available under the GNU General Public License, Version 3 at http://www.shogun-toolbox.org.

This summer we are looking to extend the library in four different ways: Improving interfaces to other machine learning libraries or integrating them when appropriate, improved i/o support, framework improvements and new machine algorithms. Here is listed a set of suggestions for projects.

A prior post on Shogun.

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