What is Semantic Search?

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  • Опубліковано 2 чер 2024
  • This video is part of LLM University
    docs.cohere.com/docs/what-is-...
    Semantic search is a very effective way to search documents with a query. In this article, you’ll learn how to use embeddings and similarity in order to build a semantic search model.
    Bio:
    Luis Serrano is the lead of developer relations at Co:here. Previously he has been a research scientist and an educator in machine learning and quantum computing. Luis did his PhD in mathematics at the University of Michigan, before embarking to Silicon Valley to work at several companies like Google and Apple. Luis is the author of the Amazon best-seller "Grokking Machine Learning", where he explains machine learning in a clear and concise way, and he is the creator of the educational UA-cam channel "Serrano.Academy", with over 100K subscribers and 5M views.
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    Resources:
    Blog post: txt.cohere.com/what-is-semant...
    Learn more: / luisserrano
  • Наука та технологія

КОМЕНТАРІ • 11

  • @rajivraghu9857
    @rajivraghu9857 10 місяців тому +3

    One of the best explanations I have seen . Very clearly explained ! Thank you ❤

  • @rashmitrathod6873
    @rashmitrathod6873 5 місяців тому

    very precise and nicely demonstrated with easy examples.. appreciate for such a wonderful explanation!

  • @s.s.1930
    @s.s.1930 Рік тому +2

    clear, understandable explanation. Thank you very much

  • @PRATAPSINGHSHEKHAWAT
    @PRATAPSINGHSHEKHAWAT 9 місяців тому

    Explained very well.

  • @pankajkulkarni3189
    @pankajkulkarni3189 10 місяців тому

    Excellent explanation

  • @birolyildiz
    @birolyildiz 7 місяців тому

    Very clear explanation ❤

  • @KhoaNguyen-ls8im
    @KhoaNguyen-ls8im Рік тому +1

    What sort of models should be used for the reranking technique?

  • @BizzInnovate
    @BizzInnovate 4 місяці тому

    Excellent Video

  • @sivalokesh3997
    @sivalokesh3997 3 місяці тому

    Thank you very much.

  • @cat-asd
    @cat-asd 4 місяці тому

    Thank you!