返回博客ai-architectureBuild a Multi-Agent AI System with LangGraph + MCP + A2A: Beginner-Friendly End-to-End Tutorial (2026)May 13, 202640 min read langgraph mcp a2a multi-agent ai agents beginner tutorial gemini groq openai langfuse deepeval langchain human in the loop checkpointing agent supervisor agent card tool use ai architecture 2026Frequently Asked QuestionsWhat exactly is an "AI agent" in this tutorial, and how is it different from just calling an LLM API?Why this combination of LangGraph, MCP and A2A specifically — what does each one give me that the others do not?Why does this tutorial use a free Gemini key by default rather than running a local LLM with Ollama?What is human-in-the-loop in LangGraph, and how does the `interrupt()` primitive actually work?What does LangGraph checkpointing actually buy me, and when should I move from SQLite to Postgres?What is the agent card in A2A and why does it matter to make my agent discoverable that way?How do I add a fifth agent to this system — what is the recipe, and what should I avoid?What are the most common beginner mistakes when wiring LangGraph + MCP + A2A together for the first time?Should I use LangGraph for everything, or are there cases where the framework is overkill?What should I read or build next once this tutorial works on my laptop? 分享这篇文章 Twitter LinkedIn WhatsApp复制链接Download as PDFSatyam人工智能和云架构师。帮助团队构建可扩展到数百万的系统。Comments Leave a commentPost Comment