Chaining, Graph RAG style!
Now to bring everything together to create a Graph RAG QA chain! You've been provided with the same graph
you've worked with throughout this chapter (with some potential variation in the specific nodes and relationships), and you'll connect this with another LLM to generate the Cypher query and return the natural language response.
This exercise is part of the course
Retrieval Augmented Generation (RAG) with LangChain
Exercise instructions
- Create a Graph Cypher QA chain using an OpenAI chat model and the
graph
you've created previously. - Invoke the chain with the input provided.
- Extract and print the result text from the
result
.
Hands-on interactive exercise
Have a go at this exercise by completing this sample code.
# Create the Graph Cypher QA chain
graph_qa_chain = ____.____(
____=ChatOpenAI(api_key="", temperature=0), ____, verbose=True
)
# Invoke the chain with the input provided
result = ____({"query": "Who discovered the element Radium?"})
# Print the result text
print(f"Final answer: {result['____']}")