# Dataroom Q&A ## Goal Answer grounded financial questions over a synthetic 10-K packet. The packet uses synthetic company data, but the documents are shaped like annual report excerpts: MD&A text uses 10-K `Part II, Item 7`, while statement PDFs and footnote text use `Part II, Item 8`. ## Why this is valuable This demo shows a retrieval-first agent pattern over a bounded financial corpus where each metric and explanation should stay tied to source files. ## Setup Run the fixture generator and then the Unix-local example from the repository root. Set `OPENAI_API_KEY` in your shell environment before running the example. ```bash uv run python examples/sandbox/tutorials/data/dataroom/setup.py uv run python examples/sandbox/tutorials/dataroom_qa/main.py ``` After the initial answer, the demo keeps the sandbox session open for Rich-rendered follow-up prompts. Pass `--no-interactive` for a one-shot run. To run the same manifest in Docker, build the shared tutorial image once and pass `--docker`: ```bash docker build --tag sandbox-tutorials:latest examples/sandbox/tutorials uv run python examples/sandbox/tutorials/dataroom_qa/main.py --docker ``` ## Expected artifacts - A direct cited answer in the streamed agent response. - Citations use `[n](data/source-file.txt:line:14)` for text excerpts and `[n](data/source-file.pdf:page:1)` for the one-page synthetic PDFs. ## Demo shape - Inputs: 5 synthetic filing text docs and 3 simple filing PDFs from `examples/sandbox/tutorials/data/dataroom/`. - Runtime primitives: sandbox-local bash/file search. ## How instructions are loaded At startup, the wrapper loads this folder's `AGENTS.md` into the agent instructions and builds a hard-coded manifest that maps the shared SEC packet from `examples/sandbox/tutorials/data/dataroom/` into the sandbox as `data/...`.