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Pylearn2: a machine learning research library

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 نشر من قبل Ian Goodfellow
 تاريخ النشر 2013
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Pylearn2 is a machine learning research library. This does not just mean that it is a collection of machine learning algorithms that share a common API; it means that it has been designed for flexibility and extensibility in order to facilitate research projects that involve new or unusual use cases. In this paper we give a brief history of the library, an overview of its basic philosophy, a summary of the librarys architecture, and a description of how the Pylearn2 community functions socially.



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