Udemy - LangChain- Develop AI Agents with LangChain & LangGraph

Udemy - LangChain- Develop AI Agents with LangChain & LangGraph

What you'll learn

  • Become proficient in LangChain
  • Have end to end working LangChain based generative AI agents
  • Prompt Engineering Theory: Chain of Thought, ReAct, Few Shot prompting and understand how LangChain is build under the hood
  • Context Engineering
  • Understand how to navigate inside the LangChain opensource codebase
  • Large Language Models theory for software engineers
  • LangChain: Lots of chains Chains, Agents, DocumentLoader, TextSplitter, OutputParser, Memory
  • RAG, Vectorestores/ Vector Databases (Pinecone, FAISS)
  • Model Context Protocol (MCP)
  • LangGraph

Requirements

  • This is not a beginner course. Basic software engineering concepts are needed
  • I assume students will be familiar software engineering subjects such as: git, python, pipenv, environment variables, classes, testing and debugging
  • No Machine Learning experience is needed.

Description

This course contains the use of artificial intelligence :)

COURSE WAS RE-RECORDED and supports- LangChain Version 1.0+

**Ideal students are software developers / data scientists / AI/ML Engineers**

Welcome to the AI Agents with LangChain and LangGraph Udemy course - Unleashing the Power of Agentic AI!
This course is designed to teach you how to QUICKLY harness AI Engineering, Agent Engineering with the power the LangChain & LangGraph libraries for LLM applications and Agentic AI.
This course will equip you with the skills and knowledge necessary to develop cutting-edge LLM solutions for a diverse range of topics.

Please note that this is not a course for beginners. This course assumes that you have a background in software engineering and are proficient in Python. I will be using Pycharm IDE but you can use any editor you'd like since we only use basic feature of the IDE like debugging and running scripts .

What You’ll Build: No fluff. No toy examples. You’ll build:

  • Search Agent
  • Documentation Helper – A chatbot over Python package docs (and any data you choose), using advanced retrieval and RAG.
  • Slim ChatGPT Code Interpreter – A lightweight code execution assistant.
  • Prompt Engineering Theory
  • Context Engineering Theory
  • Introduction to LangGraph
  • Model Context Protocol (MCP)


The topics covered in this course include:

  • AI Agents
  • Agentic AI
  • AI Engineering
  • LangChain, LangGraph
  • LLM + GenAI History
  • Prompt Engineering: Few shots prompting, Chain of Thought, ReAct prompting
  • Context Engineering
  • Chat Models
  • Open Source Models
  • Prompts, PromptTemplates, langchainub
  • Output Parsers, Pydantic Output Parsers
  • Chains: create_retrieval_chain, create_stuff_documents_chain
  • Agents, Custom Agents, Python Agents, CSV Agents, Agent Routers
  • OpenAI Functions, Tool Calling
  • Tools, Toolkits
  • Memory
  • Vectorstores (Pinecone, FAISS, Chroma)
  • RAG (Retrieval Augmentation Generation)
  • DocumentLoaders, TextSplitters
  • Streamlit (for UI), Copilotkit
  • LCEL
  • Agent tracing with LangSmith
  • Cursor IDE
  • MCP - Model Context Protocol & LangChain Ecosystem
  • Introduction To LangGraph

Throughout the course, you will work on hands-on exercises and real-world projects to reinforce your understanding of the concepts and techniques covered. By the end of the course, you will be proficient in using LangChain to create powerful, efficient, and versatile LLM applications for a wide array of usages.

Why This Course?

  • Up-to-date: Covers LangChain V.1+ and the latest LangGraph ecosystem.
  • Practical: Real projects, real APIs, real-world skills.
  • Career-boosting: Stay ahead in the LLM and GenAI job market.
  • Step-by-step guidance: Clear, concise, no wasted time.
  • Flexible: Use any Python IDE (Pycharm shown, but not required).

DISCLAIMERS

  1. Please note that this is not a course for beginners. This course assumes that you have a background in software engineering and are proficient in Python.
    I will be using Pycharm IDE but you can use any editor you'd like since we only use basic feature of the IDE like debugging and running scripts.

Who this course is for:

  • Software Engineers that want to learn how to build Generative AI based applications with LangChain and LangGraph
  • Developers that want to learn how to build Generative AI based applications with LangChain and LangGraph
  • Engineers that want to learn how to build Generative AI based applications with LangChain and LangGraph
🔗 Original course link

📚 Course Version : 2026-2

✏️ Last Modified: Feb 14, 2026

DOWNLOAD HERE

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