Mercurial > pylearn
view doc/v2_planning/existing_python_ml_libraries.txt @ 1035:6da3747c4c1f
+Monte
author | Dumitru Erhan <dumitru.erhan@gmail.com> |
---|---|
date | Tue, 07 Sep 2010 11:04:04 -0400 |
parents | 564c069134c2 |
children | 730c00950957 |
line wrap: on
line source
Committee members: GD, DWF, IG, DE This committee will investigate the possibility of interfacing and/or borrowing from other Python machine learning libraries that exist out there. Some questions that we need to answer: * How much should we try to interface with other libraries? * What parts can we and should we implement ourselves and what should we leave to the other libraries? Preliminary list of libraries to look at: * Pybrain * MDP * Orange (http://www.ailab.si/orange/) * PyML (http://pyml.sourceforge.net/) * mlpy (https://mlpy.fbk.eu/) * APGL (http://packages.python.org/apgl/) * MontePython (http://montepython.sourceforge.net/) * Shogun python bindings * libsvm python bindings * scikits.learn Also check out http://scipy.org/Topical_Software#head-fc5493250d285f5c634e51be7ba0f80d5f4d6443 - scipy.org's ``topical software'' section on Artificial Intelligence and Machine Learning