


Agentic AI Fundamentals with LangChain and LangGraph
This course is part of IBM RAG and Agentic AI Professional Certificate

Instructor: Rachael
Included with
Recommended experience
What you'll learn
Master the fundamentals of LangGraph for building stateful, intelligent AI agents
Design and implement self-improving agents using Reflection Agents, Reflexion Agents, and ReACT Agents
Build and orchestrate multi-agent systems using Agentic RAG architectures
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Frequently asked questions
By mastering agentic architectures and tools like LangGraph and LangChain, you’ll be equipped for roles such as AI Engineer, Automation Architect, Data Product Manager, or Conversational AI Developer. These roles involve designing intelligent systems that go beyond static responses—capable of reasoning, self-correcting, and collaborating with other agents to solve real-world business problems.
No prior machine learning experience is required. If you're comfortable with Python and understand how APIs work, you're ready to go. This course focuses on building practical AI systems using LLMs, with hands-on projects that use LangGraph and LangChain to design agents that reflect, improve, and act—no complex ML theory necessary.
Traditional development builds static applications, and prompt engineering fine-tunes LLM responses. But agentic AI development focuses on designing autonomous, stateful systems that can evaluate their outputs, manage memory, and interact intelligently over time. You'll learn how to architect systems that think, adapt, and collaborate, using tools like LangGraph to build workflows with cycles, conditionals, and inter-agent communication.
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Financial aid available,