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	<title>Comment Feed for Channel 9 - Reverend Bayes, meet Countess Lovelace: Probabilistic Programming for Machine Learning</title>
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		<title>Channel 9 - Reverend Bayes, meet Countess Lovelace: Probabilistic Programming for Machine Learning</title>
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	<description>We propose a marriage of probabilistic functional programming with Bayesian reasoning.&amp;nbsp; Infer.NET Fun turns the simple succinct syntax of F# into an executable modeling language – you can code up the conditional probability distributions of Bayes&#39; rule using F# array comprehensions with constraints. Write your model in F#. Run it directly to synthesize test datasets and to debug models. Or compile it with Infer.NET for efficient statistical inference.&amp;nbsp; Hence, efficient algorithms for a range of regression, classification, and specialist learning tasks derive by probabilistic functional programming. </description>
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	<pubDate>Tue, 21 May 2013 06:04:36 GMT</pubDate>
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		<title>Re: Reverend Bayes, meet Countess Lovelace: Probabilistic Programming for Machine Learning</title>
		<description>
			<![CDATA[<p>Hi, you can download the zipfile with the machine learning software I'll talk about, here:</p><p><a href="http://research.microsoft.com/en-us/projects/fun/">http://research.microsoft.com/en-us/projects/fun/</a></p><p>Cheers, Andy</p><p>posted by AndyGordon</p>]]>
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		<link>http://channel9.msdn.com/Events/Lang-NEXT/Lang-NEXT-2012/Reverend-Bayes-meet-Countess-Lovelace-Probabilistic-Programming-for-Machine-Learning#c634689961951912420</link>
		<pubDate>Mon, 02 Apr 2012 20:43:15 GMT</pubDate>
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		<dc:creator>AndyGordon</dc:creator>
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		<title>Re: Reverend Bayes, meet Countess Lovelace: Probabilistic Programming for Machine Learning</title>
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			<![CDATA[No doubt that Infer.NET and Infer.NET Fun are great tools, but they are currently distributed under a very restrictive license. Andy mentions Kaggle competitions, but many of them do require that all software used are unencumbered &#40;either OSS or commercially available software&#41;. Even the fact that competitions have rewards may be a violation of the Infer.NET license.<p>posted by Francois Rouaix</p>]]>
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		<link>http://channel9.msdn.com/Events/Lang-NEXT/Lang-NEXT-2012/Reverend-Bayes-meet-Countess-Lovelace-Probabilistic-Programming-for-Machine-Learning#c634702017645229644</link>
		<pubDate>Mon, 16 Apr 2012 19:36:04 GMT</pubDate>
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		<dc:creator>Francois Rouaix</dc:creator>
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		<title>Re: Reverend Bayes, meet Countess Lovelace: Probabilistic Programming for Machine Learning</title>
		<description>
			<![CDATA[Please, please, please release this with a commercially usable license&#33;  It would make .NET a viable platform for machine learning. <p>posted by Rick Minerich</p>]]>
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		<link>http://channel9.msdn.com/Events/Lang-NEXT/Lang-NEXT-2012/Reverend-Bayes-meet-Countess-Lovelace-Probabilistic-Programming-for-Machine-Learning#c634910366157197610</link>
		<pubDate>Thu, 13 Dec 2012 23:03:35 GMT</pubDate>
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		<dc:creator>Rick Minerich</dc:creator>
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		<title>Re: Reverend Bayes, meet Countess Lovelace: Probabilistic Programming for Machine Learning</title>
		<description>
			<![CDATA[&#43;1 for a commercial Infer.NET license.<p>posted by Jack Fox</p>]]>
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		<link>http://channel9.msdn.com/Events/Lang-NEXT/Lang-NEXT-2012/Reverend-Bayes-meet-Countess-Lovelace-Probabilistic-Programming-for-Machine-Learning#c634910417689763345</link>
		<pubDate>Fri, 14 Dec 2012 00:29:28 GMT</pubDate>
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		<dc:creator>Jack Fox</dc:creator>
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