Research Town is a multi-agent platform designed for studying community-level automatic research. To achieve community-based simulation, it defines:
- 🤖 Researcher: LLM research agents capable of skills such as reading papers, writing papers, discussing ideas, rebutting arguments, and writing reviews.
- 🎩 Environments: Multi-agent environments, similar to virtual study rooms, where research agents collaborate on tasks like idea discussion, rebuttal writing, or paper writing.
- ⚙️ Engines: Finite-state machines that manage agent involvement in environments and determine the next steps after task completion. For instance, engines guide agents coming out of idea discussion environment to paper writing environment and help select suitable agents to work together.
You can install research-town
from pypi
to use it as a package:
pip install research-town
Use a virtual environment, e.g. with anaconda3:
conda create -n research-town python=3.10
conda activate research-town
curl -sSL https://install.python-poetry.org | python3
To run examples provided in the examples
:
poetry install
cd examples
python research_town_demo.py
OpenAI key is required to run the code. Please set the environment variable OPENAI_API_KEY
to your key. The recommend way is to add the key to the conda environment:
export OPENAI_API_KEY=<your_key>
# or if you want to make sure your key is auto-set each time you enter the environment
conda env config vars set OPENAI_API_KEY=<your_key>
To develop the demo (both frontend and backend):
cd frontend
npm install
npm start
poetry install -E backend
cd backend
uvicorn main:app --reload
Follow the installation instruction above and then, instead of running python -m pip install -e .
, run the following commands:
python -m pip install -e ".[dev]"
mypy --install-types --non-interactive research_town
python -m pip install pre-commit
pre-commit install
The installation of pre-commit would avoid formatting error and large file injects into github commits.
git checkout -b feature/feature-name
and PR to main
branch.
Run poetry run pytest
to make sure all tests pass (this will ensure dynamic typing passed with beartype) and poetry run mypy --config-file pyproject.toml .
to check static typing. (You can also run pre-commit run --all-files
to run all checks)
Check the github action result to make sure all tests pass. If not, fix the errors and push again.