Udemy

Master LLMs with LangChain

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  • 1,611 Students
  • Updated 7/2025
4.7
(168 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
8 Hour(s) 14 Minute(s)
Language
English
Taught by
Jones Granatyr, Gabriel Alves, AI Expert Academy
Rating
4.7
(168 Ratings)

Course Overview

Master LLMs with LangChain

Modern Generative AI and NLP Solutions! Build real-world projects using advanced LLMs like ChatGPT, Llama and Phi

In this course, you will dive deep into the world of Generative AI with LLMs (Large Language Models), exploring the potential of combining LangChain with Python. You will implement proprietary solutions (like ChatGPT) and modern open-source models like Llama and Phi. Through practical, real-world projects, you'll develop innovative applications, including a custom virtual assistant and a chatbot that interacts with documents and videos. We'll explore advanced techniques such as RAG and agents, and use tools like Streamlit to create intuitive interfaces. You'll learn how to use these technologies for free in Google Colab and also how to run projects locally.

In the introduction, you’ll be introduced to the theory of Large Language Models (LLMs) and their fundamental concepts. Additionally, we’ll explore the Hugging Face ecosystem, which offers modern solutions for Natural Language Processing (NLP). You'll learn to implement LLMs using both the Hugging Face pipeline and the LangChain library, understanding the advantages of each approach.

The second part is focused on mastering LangChain. You'll learn to access open-source models, like Meta's Llama and Microsoft’s Phi, as well as proprietary LLMs, like OpenAI's ChatGPT. We'll explain model quantization to enhance performance and scalability. Key LangChain components, such as chains, templates, and tools, will be presented, along with how to use them to develop robust NLP solutions. Prompt engineering techniques will be covered to help you achieve more accurate results. The concept of RAG (Retrieval-Augmented Generation) will be explored, including information storage and retrieval processes. You’ll learn to implement vector stores and understand the importance of embeddings and how to use them effectively. We’ll also demonstrate how to use RAG to interact with PDF documents and web pages. Additionally, you'll have the opportunity to explore integrating agents and tools, like using LLMs to perform web searches and retrieve recent information. Solutions will be implemented locally, enabling access to open-source models even without an internet connection.

In the project development phase, you’ll learn to create a custom chatbot with an interface and memory for Q&A. You’ll also learn to develop interactive applications using Streamlit, making it easy to build intuitive interfaces. One project involves developing an advanced application using RAG to interact with multiple documents and extract relevant information through a chat interface. Another project will focus on building an application that automatically summarizes videos and answers related questions, resulting in a powerful tool for instant, automated video comprehension.

Course Content

  • 9 section(s)
  • 72 lecture(s)
  • Section 1 Introduction
  • Section 2 LLM using Hugging Face
  • Section 3 LLM using LangChain
  • Section 4 LangChain - RAG
  • Section 5 LangChain - Agents and Tools
  • Section 6 Project 1: Video transcription
  • Section 7 Project 2: Chatbot with memory and interface
  • Section 8 Project 3: Talk to your documents
  • Section 9 Final remarks

What You’ll Learn

  • Understand the theory behind LLMs and key concepts from LangChain and Hugging Face
  • Integrate proprietary LLMs (like OpenAI’s ChatGPT) and open-source models such as Meta's Llama and Microsoft’s Phi
  • Learn about LangChain components, including chains, templates, RAG modules, agents, and tools
  • Explore RAG step-by-step for storage and retrieval using vector stores, with access to documents and web pages
  • Implement agents and tools to add features like conducting internet searches and retrieving up-to-date information
  • Deploy solutions in a local environment, enabling the use of open-source models without internet connection
  • Build an application that automatically summarizes videos and responds to questions about them
  • Develop a complete custom chatbot with memory and create a user-friendly interface using Streamlit
  • Create an advanced RAG application to interact with documents and extract relevant information using a chat interface


Reviews

  • R
    Roopesh Nagaraj
    4.5

    The course was very good and usefull to understand the concepts

  • R
    Roengrut Rujanakraikarn
    4.5

    The project sections are awesome. I enjoy learning this course very much. Recommended for practical use.

  • J
    Jake
    5.0

    Solid content in the course. Helped me feel confident and ready to tackle bigger AI based projects. Code needs to be updated and tested, ran into various version issues and model related bugs throughout the course. I believe he is using a paid tier for colab compute resources because I usually could not use llama 8B instruct due to memory constraints. Creator makes up for it by being quick to respond to questions if you run into issues. Would still highly recommend this course as its a great entry point for learning how to utilize open source and proprietary models for integration and is relatively easy to overcome the bugs throughout.

  • S
    Ssteinberg
    3.0

    Hard to understand speaker and material drags. Many sections just have the presenter reading what is on a slide. This is worsened by showing a cursor that points to the word being read. And reading typed-in Python code out loud is likewise annoying. Such portions are inferior to a book. But the course turns out to have a lot of useful material.

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