Take advantage of our installation script to easily run Lightdash locally. Check the documentation page for more details.
git clone https://github.com/lightdash/lightdash
cd lightdash
./install.sh
# when prompted, select "fast" setup (option 1)
- type: github
- personal access token: (follow the docs instructions to get one)
- repository: lightdash/jaffle_shop
- branch: main
- project directory path: /
First follow these instructions to run a postgres database for this jaffle shop project.
- type: postgres
- host: host.docker.internal
- user: postgres
- password: password
- database: postgres
- schema: jaffle
- port: 5432
- ssl: disable
jaffle_shop
is a fictional ecommerce store. This dbt project transforms raw data from an app database into a customers and orders model ready for analytics.
What this repo is:
- A self-contained playground dbt project, useful for testing out scripts, and communicating some of the core dbt concepts.
What this repo is not:
- A tutorial — check out the Getting Started Tutorial for that. Notably, this repo contains some anti-patterns to make it self-contained, namely the use of seeds instead of sources.
- A demonstration of best practices — check out the dbt Learn Demo repo instead. We want to keep this project as simple as possible. As such, we chose not to implement:
- our standard file naming patterns (which make more sense on larger projects, rather than this five-model project)
- a pull request flow
- CI/CD integrations
- A demonstration of using dbt for a high-complex project, or a demo of advanced features (e.g. macros, packages, hooks, operations) — we're just trying to keep things simple here!
This repo contains seeds that includes some (fake) raw data from a fictional app.
The raw data consists of customers, orders, and payments, with the following entity-relationship diagram:
To get up and running with this project:
-
Install dbt using these instructions.
-
Clone this repository.
-
Change into the
jaffle_shop
directory from the command line:
$ cd jaffle_shop
-
Set up a profile called
jaffle_shop
to connect to a data warehouse by following these instructions. If you have access to a data warehouse, you can use those credentials – we recommend setting your target schema to be a new schema (dbt will create the schema for you, as long as you have the right privileges). If you don't have access to an existing data warehouse, you can also setup a local postgres database and connect to it in your profile. -
Ensure your profile is setup correctly from the command line:
$ dbt debug
- Load the CSVs with the demo data set. This materializes the CSVs as tables in your target schema. Note that a typical dbt project does not require this step since dbt assumes your raw data is already in your warehouse.
$ dbt seed
- Run the models:
$ dbt run
NOTE: If this steps fails, it might mean that you need to make small changes to the SQL in the models folder to adjust for the flavor of SQL of your target database. Definitely consider this if you are using a community-contributed adapter.
- Test the output of the models:
$ dbt test
- Generate documentation for the project:
$ dbt docs generate
- View the documentation for the project:
$ dbt docs serve
A jaffle is a toasted sandwich with crimped, sealed edges. Invented in Bondi in 1949, the humble jaffle is an Australian classic. The sealed edges allow jaffle-eaters to enjoy liquid fillings inside the sandwich, which reach temperatures close to the core of the earth during cooking. Often consumed at home after a night out, the most classic filling is tinned spaghetti, while my personal favourite is leftover beef stew with melted cheese.
For more information on dbt:
- Read the introduction to dbt.
- Read the dbt viewpoint.
- Join the dbt community.