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A library for creating and using probabilistic graphical models. *Unofficial update to support python 3*.

Project description

This library provides tools for modeling large systems with Bayesian networks. Using these tools allows for efficient statistical analysis on large data sets. Original project homepage: http://www.cyberpointllc.com. Original author: CyberPoint International, LLC. Original author email: mraugas@cyberpointllc.com

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libpgm3-1.3.6.tar.gz (33.4 kB view details)

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