![]() |
|
LangGraph for Developers From Zero to Hero - Printable Version +- Nice1 Community Forum (https://talk.nice1.org) +-- Forum: Nice1 Community (https://talk.nice1.org/forumdisplay.php?fid=3) +--- Forum: Media (https://talk.nice1.org/forumdisplay.php?fid=9) +--- Thread: LangGraph for Developers From Zero to Hero (/showthread.php?tid=4207) |
LangGraph for Developers From Zero to Hero - Courses2025 - 02-23-2026 ![]() Free Download LangGraph for Developers From Zero to Hero Published 2/2026 Created by Arnab Das MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch Level: Intermediate | Genre: eLearning | Language: English | Duration: 33 Lectures ( 6h 16m ) | Size: 3.52 GB Build Production-Ready Agentic AI Systems using LangGraph, LLMs, MCP & FastAPI [h2]What you'll learn[/h2] ✓ Understand agentic systems and clearly differentiate them from traditional LLM applications. ✓ Design AI agent architectures using modern agentic patterns, memory, and tool based reasoning. ✓ Build production AI agents with LangGraph, MCP pipelines, and multi-agent collaboration. ✓ Secure, evaluate, and monitor AI agents using guardrails, Langfuse, observability, authentication, and performance metrics. ✓ Deploy scalable agentic systems to the cloud using Docker, FastAPI, and real world production workflows. ✓ Architect end-to-end AI Agent APIs, from LLM integration and tool orchestration to backend connectivity and real-world system deployment. [h2]Requirements[/h2] ● Basic Python programming knowledge (functions, classes, virtual environments) ● Familiarity with REST APIs and JSON ● Fundamental understanding of LLMs or prior experience using ChatGPT or similar tools ● A laptop or desktop with internet access ● Willingness to install Python, VS Code, Pycharm and required libraries [h2]Description[/h2] Master LangGraph, Agentic AI, Stateful Workflows & Production-Ready AI Systems In this comprehensive LangGraph course, you will learn how to design, build, and deploy production-ready Agentic AI systems using LangGraph, Large Language Models (LLMs), MCP, and FastAPI. This course is built specifically for developers who want to master graph-based LLM orchestration and move beyond simple chatbot demos. What You'll Learn By the end of this course, you will be able to • Build stateful AI agents using LangGraph • Design graph-based LLM workflows with nodes, edges, and reducers • Work with OpenAI and other LLM providers • Implement control flow and conditional routing • Add memory, persistence, and interrupt handling • Use streaming and tool-calling capabilities • Design Agentic AI architectures • Implement Model Context Protocol (MCP) • Build MCP-enabled tool discovery systems • Develop and deploy AI Agent APIs using FastAPI Core Topics Covered • LangGraph Fundamentals • State, Nodes, Edges & Reducers • Control Flow & Conditional Execution • Tool Calling & Streaming • Persistence & Time Travel Debugging • Memory & Sub-Graphs • Agentic Design Patterns • LangChain vs LangGraph Architecture • Model Context Protocol (MCP) • MCP Server Integration • Production API Development • FastAPI Integration If you want to become an Agentic AI Developer and build real-world, production-ready AI systems using LangGraph, this course will take you from beginner to advanced, step by step. [h2]Who this course is for[/h2] ■ Software developers and backend engineers who want to build real world AI agents and agentic systems ■ Full-stack developers looking to add production-grade AI agent skills to their toolkit ■ AI/ML practitioners who want hands-on experience with LangGraph, MCP, and multi-agent architectures ■ Technical architects interested in designing scalable, secure agentic systems ■ Developers moving beyond basic LLM apps and chatbots into autonomous AI systems ■ Professionals preparing for advanced AI engineering or agent architecture roles [h2]Homepage[/h2] Code: https://www.udemy.com/course/langgraph-for-developers-from-zero-to-heroRecommend Download Link Hight Speed | Please Say Thanks Keep Topic Live | FileHost -> Rapidgator | DDownload bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part1.rar bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part3.rar bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part2.rar bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part4.rar Rapidgator Recommend Download Link bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part4.rar.html bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part2.rar.html bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part1.rar.html bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part3.rar.html AlfaFile https://alfafile.net/file/AdJs7/bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part4.rar https://alfafile.net/file/AdJs9/bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part2.rar https://alfafile.net/file/AdJsb/bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part3.rar https://alfafile.net/file/AdJsx/bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part1.rar FreeDL bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part3.rar.html bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part1.rar.html bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part2.rar.html bwsya.LangGraph.for.Developers.From.Zero.to.Hero.part4.rar.html No Password - Links are Interchangeable |