Complete LangGraph Course for Beginners | Build AI Agents with Python
Welcome to the Complete LangGraph Course for Beginners! π In this comprehensive course, youβll learn how to build real-world AI applications using LangGraph, LangChain, and Python β starting from the fundamentals and gradually moving toward advanced, production-ready AI systems. π Whether youβre a Python developer, AI enthusiast, or someone looking to build LLM-powered applications, this course will give you a strong foundation in modern AI orchestration, agentic workflows, graph-based systems, and intelligent applications using LangGraph. π GitHub Repository All Code Examples π https://github.com/yashjaincodex/langgraph-youtube π― What Youβll Learn in This Course π° LangGraph Fundamentals β Basic Graph β Understand nodes, edges, and state in LangGraph β Sequential Graph β Build graphs where nodes execute one after another β Conditional Graph β Route execution dynamically based on state β Looping Graph β Create graph cycles and iterative workflows β Parallel Graph β Run multiple nodes in parallel using fan-out and fan-in patterns β Reducers in Graph β Manage and merge complex state updates π€ Working with LLMs in LangGraph β LLM in Graph β Use a language model as a graph node β LLM with Conditional Graph β Route graph execution based on LLM output β Multi-Turn Chatbot β Build conversational apps with state management β Stream Response in Graph β Stream real-time LLM responses inside LangGraph π§° Tools, Memory & Human Interaction β Tool Node in Graph β Connect LangGraph with external tools and APIs β Tool Node with LLM β Combine LLM reasoning with tool execution β Persistence & Checkpoint Memory β Save and restore graph state β Human-in-the-Loop β Pause execution for human review, approval, or correction π§ Advanced LangGraph Concepts β Subgraph in LangGraph β Build reusable and modular graph components β Send API in Graph β Dynamically dispatch messages to nodes β Multi-Agent in Graph β Orchestrate multiple AI agents together β Agentic RAG in Graph β Combine vector search, LLM reasoning, and graph workflows With hands-on coding, real-world projects, and production-focused workflows, this course will help you confidently build: β AI Agents β Multi-Agent Systems β Chatbots β RAG Applications β AI Workflows β Human-in-the-Loop Systems β Tool-Calling Agents β Streaming AI Apps β Production-Ready LangGraph Pipelines using LangGraph, LangChain, Python, and LLMs. π LangChain Course: https://youtu.be/kAf0en1XT6U π¬ Donβt forget to Like, Comment, and Subscribe if you found this course helpful β your support keeps these AI coding lessons coming! β¨ Before you sleep, make sure youβve learned something new. β¨ #LangGraph #LangGraphCourse #LangChain #AIAgents #MultiAgentSystems #RAG #PythonAI #LLM #AIDevelopment #LearnAI #GenerativeAI #AgenticAI #PythonCourse #AIForBeginners #CodeBeforeYouSleep #YashJain
Download
0 formatsNo download links available.