This program introduces Building Stateful & Multi-Agent Systems with LangGraph for developers and AI engineers who want to move beyond single-prompt agents and build reliable, production-ready workflows. You’ll begin by learning how LangGraph executes agent workflows and why state management is critical for correctness, debuggability, and long-running tasks.

Multi-Agent Systems with LangGraph

Multi-Agent Systems with LangGraph
This course is part of Agentic AI Engineering Specialization

Instructor: Edureka
Included with
Recommended experience
What you'll learn
Explain how LangGraph executes workflows and manages state using reducers, typed state, and checkpoints.
Implement stateful agent pipelines with conditional routing, parallel execution, and recovery mechanisms.
Analyze agent behavior using execution logs, snapshots, and time-travel debugging techniques.
Design human-in-the-loop and multi-agent systems using supervision, planning, and consensus reasoning.
Details to know

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February 2026
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There are 4 modules in this course
Explore the core execution model behind LangGraph and learn how state enables reliable, controllable agent workflows. This module builds a strong foundation in reducer-based state design, typed state objects, and deterministic state updates across graph executions. You’ll gain hands-on experience implementing persistent checkpoints, restoring execution from failures, and managing multi-branch workflows.
What's included
14 videos5 readings4 assignments
Learn how to design agent workflows that balance automation with human oversight. This module focuses on human-in-the-loop (HITL) patterns, approval workflows, and controlled interruptions using LangGraph’s execution hooks. You’ll explore time-travel debugging, execution logs, and snapshot-based branch analysis to inspect and resume complex pipelines. Through hands-on demonstrations, you’ll build planner–executor workflows and multi-stage task chains, gaining the skills to debug, audit, and govern agent behavior
What's included
13 videos4 readings4 assignments
Dive into advanced multi-agent system design using LangGraph’s orchestration capabilities. This module explores supervisor–worker architectures, inter-agent communication, and message-passing models for distributed reasoning. You’ll design debate agents that reach consensus, build modular multi-agent subgraphs, and coordinate complex workflows across specialized agents.
What's included
11 videos4 readings4 assignments
This final section is designed to assess your mastery of building stateful and multi-agent systems with LangGraph. You’ll apply everything you’ve learned in a comprehensive practice project, designing a multi-agent research assistant that integrates state management, human-in-the-loop controls, debugging, and orchestration patterns.
What's included
1 video1 reading2 assignments1 discussion prompt
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Frequently asked questions
This course is designed for AI engineers, backend developers, and system architects who want to build stateful and multi-agent systems using LangGraph. Learners with Python experience and basic knowledge of LLMs or agent concepts will benefit most.
You will learn how to design stateful agent workflows, manage execution state, implement checkpointing and recovery, debug long-running pipelines, and orchestrate multi-agent systems using LangGraph.
The course uses LangGraph, Python, modern LLM APIs, and agent orchestration patterns. You’ll work with typed state objects, reducers, checkpoints, and multi-agent communication models.
More questions
Financial aid available,
¹ Some assignments in this course are AI-graded. For these assignments, your data will be used in accordance with Coursera's Privacy Notice.




