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    <title>Machine Learning on Daman Arora</title>
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      <title>AWS Machine Learning Services: What Each One Does</title>
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      <pubDate>Mon, 18 May 2026 14:00:00 +0000</pubDate>
      
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      <description>AWS offers a family of ready-made machine learning services that handle a single, well-defined task each: recognize faces, transcribe speech, translate text, recommend products, and so on. You call an API and get a result — no model training, no GPUs, no data science required. SageMaker sits alongside them for the cases where you do want to build your own model.
This is a tour of what each service is, what it is for, and when to reach for it.</description>
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