# Dify Backend API ## Usage 1. Start the docker-compose stack The backend require some middleware, including PostgreSQL, Redis, and Weaviate, which can be started together using `docker-compose`. ```bash cd ../docker docker-compose -f docker-compose.middleware.yaml -p dify up -d cd ../api ``` 2. Copy `.env.example` to `.env` 3. Generate a `SECRET_KEY` in the `.env` file. ```bash sed -i "/^SECRET_KEY=/c\SECRET_KEY=$(openssl rand -base64 42)" .env ``` 4. If you use Anaconda, create a new environment and activate it ```bash conda create --name dify python=3.10 conda activate dify ``` 5. Install dependencies ```bash pip install -r requirements.txt ``` 6. Run migrate Before the first launch, migrate the database to the latest version. ```bash flask db upgrade ``` ⚠️ If you encounter problems with jieba, for example ``` > flask db upgrade Error: While importing 'app', an ImportError was raised: ``` Please run the following command instead. ``` pip install -r requirements.txt --upgrade --force-reinstall ``` 7. Start backend: ```bash flask run --host 0.0.0.0 --port=5001 --debug ``` 8. Setup your application by visiting http://localhost:5001/console/api/setup or other apis... 9. If you need to debug local async processing, please start the worker service by running `celery -A app.celery worker -P gevent -c 1 --loglevel INFO -Q dataset,generation,mail`. The started celery app handles the async tasks, e.g. dataset importing and documents indexing. ## Testing 1. Install dependencies for both the backend and the test environment ```bash pip install -r requirements.txt -r requirements-dev.txt ``` 2. Run the tests locally with mocked system environment variables in `tool.pytest_env` section in `pyproject.toml` ```bash dev/pytest/pytest_all_tests.sh ```