MDP – Modular toolkit for Data Processing

author: Tiziano Zito, Bernstein Center for Computational Neuroscience Berlin, Humboldt University of Berlin
published: Dec. 20, 2008,   recorded: December 2008,   views: 4767
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Description

Modular toolkit for Data Processing (MDP) is a Python data processing framework. From the user’s per- spective, MDP is a collection of supervised and unsupervised learning algorithms and other data processing units that can be combined into data processing sequences and more complex feed-forward network archi- tectures. From the scientific developer’s perspective, MDP is a modular framework, which can easily be expanded.

The implementation of new algorithms is easy and intuitive. The new implemented units are then automatically integrated with the rest of the library. The base of available algorithms is steadily in- creasing and includes, to name but the most common, Principal Component Analysis (PCA and NIPALS), several Independent Component Analysis algorithms (CuBICA, FastICA, TDSEP, and JADE), Slow Feature Analysis, Gaussian Classifiers, Restricted Boltzmann Machine, and Locally Linear Embedding.

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Download slides icon Download slides: mloss08_zito_mdp_01.pdf (718.3 KB)


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