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    <title>scikit-learn on A Tinkerer&#39;s Canvas</title>
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    <description>Recent content in scikit-learn on A Tinkerer&#39;s Canvas</description>
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      <title>Machine learning and the Pythonic buzz</title>
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      <description>&amp;ldquo;Predicting the future isn&amp;rsquo;t magic, it&amp;rsquo;s artificial intelligence&amp;rdquo; ~Dave Waters
Yes, and machine learning is one of the most fascinating aspects of Artificial Intelligence.
So what is machine learning? Machine learning leverages the power of statistical modelling to learn patterns in data that can be leveraged to predict outcomes from previously unseen data.
Sounds too jargon-y? Let me break it up for you:
Imagine a situation, where you are one of the decision makers in a business, and you want to increase the company profits for the next quarter, based on various products of your company.</description>
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