eval-rag-full (Rag Full)
You can run this example with:
npx promptfoo@latest init --example eval-rag-full
cd eval-rag-full
Usage
This RAG example allows you to ask questions over a number of public company SEC filings. It uses LangChain, but the flow is representative of any RAG solution.
There are 3 parts:
-
ingest.py: Chunks and loads PDFs into a vector database (PDFs are pulled from a public Google Cloud bucket) -
retrieve.py: Promptfoo-compatible provider that answers RAG questions using the database. -
promptfooconfig.yaml: Test inputs and requirements.
To get started:
-
Set the OPENAI_API_KEY environment variable.
-
Create a python virtual environment:
python3 -m venv venv -
Enter the environment:
source venv/bin/activate -
Install python dependencies:
pip install -r requirements.txt -
Run
ingest.pyto create the vector database:python ingest.py
Now we're ready to go.
- Edit
promptfooconfig.yamlto your liking to configure the questions you'd like to ask in your tests. Then run: - Edit
retrieve.pyto control how context is loaded and questions are answered.
npx promptfoo@latest eval
Promptfoo is a Node.js CLI, but the file://retrieve.py provider runs inside Python. Keep the virtual environment active when running the eval, or set PROMPTFOO_PYTHON=./venv/bin/python so Promptfoo can import the packages from requirements.txt.
Afterwards, you can view the results by running npx promptfoo@latest view
See promptfooconfig.with-asserts.yaml for a more complete example that compares the performance of two RAG configurations. The smaller retrieval configuration is intentionally expected to miss a couple of details so the comparison view demonstrates failures as well as passes.