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    <title>ML Workflow on Sabhrant&#39;s Blog</title>
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      <title>Machine Learning Execution Workflow</title>
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      <description>In the last blog we tried to understand what is Machine learning. Today we will look at how a typical workflow in applied AI/ML looks like. A typical workflow in applied Machine Learning can be broken down into following high-level steps:&#xA;Problem Statement Data Collection Data Pre-processing Data Analysis &amp;amp; Modelling Evaluation Let&amp;rsquo;s look at each workflow item in a bit more detail.&#xA;Problem Statement Definition of a clear and concise problem statement is essential to ensure solution is focused towards solving the identified problem.</description>
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