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<title>pkgsrc/textproc/py-Reverend, branch pkgsrc_2004Q4</title>
<subtitle>[no description]</subtitle>
<id>https://git.osdyson.ru/mirror/pkgsrc/atom?h=pkgsrc_2004Q4</id>
<link rel='self' href='https://git.osdyson.ru/mirror/pkgsrc/atom?h=pkgsrc_2004Q4'/>
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<updated>2004-07-22T09:15:59Z</updated>
<entry>
<title>add python as category</title>
<updated>2004-07-22T09:15:59Z</updated>
<author>
<name>recht</name>
<email>recht</email>
</author>
<published>2004-07-22T09:15:59Z</published>
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<id>urn:sha1:7e0557702b6d438187125c40c0516561917b79d2</id>
<content type='text'>
ok'd a while back at pkgsrcCon by agc and wiz
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</entry>
<entry>
<title>PKGREVISION bump after openssl-security-fix-update to 0.9.6m.</title>
<updated>2004-03-26T02:27:34Z</updated>
<author>
<name>wiz</name>
<email>wiz</email>
</author>
<published>2004-03-26T02:27:34Z</published>
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<id>urn:sha1:f1c1f779e018f5392a5ca82138751c50dddcfb51</id>
<content type='text'>
Buildlink files: RECOMMENDED version changed to current version.
</content>
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<entry>
<title>Import py-Reverend-0.2.4 from pkgsrc-wip.  Packaged by Michal</title>
<updated>2004-02-27T02:26:47Z</updated>
<author>
<name>minskim</name>
<email>minskim</email>
</author>
<published>2004-02-27T02:26:47Z</published>
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<id>urn:sha1:693c11c50537f1d887add2b5f0c6c70152e8e2fb</id>
<content type='text'>
Pasternak, and modified by me.

Reverend is a general purpose Bayesian classifier, named after
Rev. Thomas Bayes.  Use the Reverend to quickly add Bayesian smarts to
your app.  To use it in your own application, you either subclass
Bayes or pass it a tokenizing function. Bayesian fun has never been so
quick and easy.
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