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      <title>Supervised and Unsupervised Learning Machine by Asma Fatima</title>
      <link>https://padlet.com/asma26/a3zwuetnwn7nmive</link>
      <description></description>
      <language>en-us</language>
      <pubDate>2023-09-23 08:33:02 UTC</pubDate>
      <lastBuildDate>2023-09-23 08:45:30 UTC</lastBuildDate>
      <webMaster>hello@padlet.com</webMaster>
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         <title>Challenge 1</title>
         <author>asma26</author>
         <link>https://padlet.com/asma26/a3zwuetnwn7nmive/wish/2717145948</link>
         <description><![CDATA[<div><strong>Assume that a machine has to predict whether a customer will buy a specific product let’s say ‘Antivirus’ software this year or not. Write how machine learning work in this situation.</strong></div>]]></description>
         <enclosure url="" />
         <pubDate>2023-09-23 08:39:56 UTC</pubDate>
         <guid>https://padlet.com/asma26/a3zwuetnwn7nmive/wish/2717145948</guid>
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         <title>Challenge 2</title>
         <author>asma26</author>
         <link>https://padlet.com/asma26/a3zwuetnwn7nmive/wish/2717146116</link>
         <description><![CDATA[<div><strong>Amman have a random data of 1000 Dog images .He wish to understand some pattern out of it, so he would feed this data into which learning model&nbsp; and would train the machine on it. Why?</strong></div>]]></description>
         <enclosure url="" />
         <pubDate>2023-09-23 08:40:23 UTC</pubDate>
         <guid>https://padlet.com/asma26/a3zwuetnwn7nmive/wish/2717146116</guid>
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      <item>
         <title>Challenge 3</title>
         <author>asma26</author>
         <link>https://padlet.com/asma26/a3zwuetnwn7nmive/wish/2717146397</link>
         <description><![CDATA[<div><strong>Data about the houses such as square footage, number of rooms, features, whether a house has a garden or not, and the prices of these houses, i.e., the corresponding labels are fed into an AI machine. By leveraging data coming from thousands of houses, their features and prices, we can now train the model to predict a new house’s price. This is an example of _____.</strong></div>]]></description>
         <enclosure url="" />
         <pubDate>2023-09-23 08:41:02 UTC</pubDate>
         <guid>https://padlet.com/asma26/a3zwuetnwn7nmive/wish/2717146397</guid>
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