Agentic orchestration with LangGraph
This exercise is part of the course
Multi-Agent Systems with LangGraph
Exercise instructions
Make sure to first run the cell to install the libraries
- Construct a
State
class to create a message history where new messages are appended to it, and use it to create a graph state. - Define a
gpt-4o-mini
LLM using theChatOpenAI
class, and a function calledllm_node()
to invoke it on state messages and store the result. - Construct and compile a graph that routes the input into an LLM node, which calls
llm_node
, and returns the result. - Run the code provided to visualize the graph and talk to your agent!
Note: If you’re running DataLab in Restricted Mode, this exercise isn’t supported yet. We’re actively working on making it available in the future.
Hands-on interactive exercise
Turn theory into action with one of our interactive exercises
