This LangChain course looks at how LangChain can simplify and enhance working with a Large Language Model. This also includes a project to use Qdrant vector database search and a Strreamlit app with chat history. I used OpenAI ChatGPT as it's currently the most widely used and easy to use when you only have a regular laptop computer. See below for link to all of the LangChain code used on GitHub.
🟢 This video is split into the same chapters as the official LangChain documentation. It demonstrates the Python code to use LangChain Models, Prompts, Chains, Memory, Indexes, Agents and Tools.
🟢 The video also demonstrates using Qdrant as a vector database to enable retrieval of embedded vectors along with tips on how to debug LangChain and how to set up a project from scratch.
🟢 As well as the regular examples you my find on the LangChain documentation pages I also show how to create a video suggestion chatbot and in the 'indexes' chapter I show you how to create a full project to query your documents, 'upserting' data from a text document and then querying it.
-Chapters -
00:58 why we need LangChain
02:37 register with openai
04:13 models
10:37 prompts
24:58 chains
28:35 memory
32:53 indexes
52:01 tools and agents
⛓️🦜 LangChain 🦜⛓️ Playlist : • OpenAI & LangChain & chatGPT
Thumbs up yeah? (cos Algos..)
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🟢 LangChain Beginner's Guide - Step-by-Step Tutorial | How to use LangChain
#langchain #aitutorialforbeginners #LearnLangChain
Watch video Learn LangChain - full tutorial | ChatGPT online without registration, duration hours minute second in high quality. This video was added by user Python 360 01 January 1970, don't forget to share it with your friends and acquaintances, it has been viewed on our site 1,09 once and liked it 2 people.