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    <title>pskomoroch's dataset Bookmarks on Delicious</title>
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<item rdf:about="http://www.examville.com/examville/Intelligent%20Ruby%20and%20Machine%20Learning%20%20%20what,%20why,%20the%20trends,%20and%20the%20toolkit-ID7500">
    <title>Intelligent Ruby and Machine Learning what, why, the trends, and the toolkit | Intelligent Ruby and Machine Learning what, why, the trends, and the toolkit Online | Download Intelligent Ruby and Machine Learning what, why, the trends, and the toolkit « P</title>
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    <title>Clustering in Ruby - Colin Drake - colinfdrake.com</title>
    <dc:date>2011-05-28T16:38:15+00:00</dc:date>
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<item rdf:about="http://www.kdnuggets.com/data_mining_course/">
    <title>Data Mining Course</title>
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    <link>http://www.kdnuggets.com/data_mining_course/</link>
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    <title>U.S. 'Connects The Dots' To Catch Roadside Bombers : NPR</title>
    <dc:date>2010-12-03T18:14:34+00:00</dc:date>
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    <dc:date>2010-05-04T08:21:00+00:00</dc:date>
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    <title>The Democrats Are Doomed, or How A ‘Big Tent’ Can Be Too Big « OkTrends</title>
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    <title>The New York Times &gt; Business &gt; Your Money &gt; What Wal-Mart Knows About Customers' Habits</title>
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    <title>Project ‘Gaydar’: An MIT experiment raises new questions about online privacy - The Boston Globe</title>
    <dc:date>2009-09-21T09:23:57+00:00</dc:date>
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