Can You Tell Me How Agents Get Access To Internet Data: Deep Dive Into Tavily

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  • เผยแพร่เมื่อ 3 ก.ค. 2024
  • Connecting the LLMs to the data of websites, and exposing the data from the API/ IOT data as context to the LLMs opens up new ways of automating the Agents.
    Chapter Navigation:
    0:00 Intro
    0:25 Idea of Giving LLMs Internet Access
    1:00 Tavily Data Access
    1:43 Tavily & Langchain
    2:15 Code Walkthrough Scraper
    4:55 Demo of TavilyClient Methods
    10:50 Should you use Tavily
    11:10 Demo of Langchain Tavily
    17:45 Pushing Search Results to Embedding DB
    18:30 Purpose of Search Results Connecting To LLMs
    19:15 Recap
    20:10 Outro
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ความคิดเห็น • 1

  • @timtensor6994
    @timtensor6994 19 วันที่ผ่านมา

    can you actually put mutlilple questions in a sing tavily search . So perhaps
    a) I want to find X
    b) Where is X located
    c) What does it work on
    d) What is the USP of X ?