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    <title>Search on Alexander Junge&#39;s website</title>
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      <title>Experimenting with ML-powered search in Amazon Kendra</title>
      <link>https://www.alexanderjunge.net/blog/kendra-test-cfn/</link>
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      <description>Amazon Kendra is a managed search service offered by AWS. Using machine learning/natural language processing, Kendra is able to &amp;ldquo;understand&amp;rdquo; both search queries and the documents searched to answer questions directly or to perform a keyword-based search.
Kendra is fully-managed by AWS which means that, as a developer, I do not need to worry about managing infrastructure, as, for example, required by open source alternatives like Jina for neural search or Haystack for Question-Answering.</description>
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