# csv_to_postgres This is a [Dagster](https://dagster.io/) project scaffolded with [`dagster project scaffold`](https://docs.dagster.io/guides/build/projects/creating-a-new-project). ## Getting started First, install your Dagster code location as a Python package. By using the --editable flag, pip will install your Python package in ["editable mode"](https://pip.pypa.io/en/latest/topics/local-project-installs/#editable-installs) so that as you develop, local code changes will automatically apply. ```bash pip install -e ".[dev]" ``` Then, start the Dagster UI web server: ```bash dagster dev ``` Open http://localhost:3000 with your browser to see the project. You can start writing assets in `csv_to_postgres/assets.py`. The assets are automatically loaded into the Dagster code location as you define them. ## Development ### Adding new Python dependencies You can specify new Python dependencies in `setup.py`. ### Unit testing Tests are in the `csv_to_postgres_tests` directory and you can run tests using `pytest`: ```bash pytest csv_to_postgres_tests ``` ### Schedules and sensors If you want to enable Dagster [Schedules](https://docs.dagster.io/guides/automate/schedules/) or [Sensors](https://docs.dagster.io/guides/automate/sensors/) for your jobs, the [Dagster Daemon](https://docs.dagster.io/guides/deploy/execution/dagster-daemon) process must be running. This is done automatically when you run `dagster dev`. Once your Dagster Daemon is running, you can start turning on schedules and sensors for your jobs. ## Deploy on Dagster+ The easiest way to deploy your Dagster project is to use Dagster+. Check out the [Dagster+ documentation](https://docs.dagster.io/dagster-plus/) to learn more.