Approximate Vector Search with KMeans and Azure SQL | Data Exposed

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  • Опубликовано: 13 май 2024
  • In this episode, we'll see how to calculate KMeans clusters for vector data so that then it can be used to do Approximate Similarity Search. We'll offload resource intensive processing to calculate KMeans using SciKit-Learn to a container and then we'll do cell probing in pure T-SQL.
    Chapters:
    00:00 - Introduction
    02:15 - Vector in SQL
    04:00 - Indexing
    08:40 - KMeans
    11:25 - Demo
    ✔️Resources:
    Intelligent applications with Azure SQL Database: aka.ms/sqlai
    Azure SQL Devs’ Corner: devblogs.microsoft.com/azure-...
    Vector Search Optimization via KMeans, Voronoi Cells and Inverted File Index (aka “Cell-Probing”): devblogs.microsoft.com/azure-...
    📌 Let's connect:
    Twitter - Anna Hoffman, / analyticanna
    Twitter - AzureSQL, aka.ms/azuresqltw
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Комментарии • 1

  • @AzaB2C
    @AzaB2C 19 дней назад

    Great topic. Please include accurate subtitles.