CLI tool for dbt users adopting analytics engineering best practices.
Project description
dbt-coves
What is dbt-coves?
dbt-coves is a CLI tool that automates certain tasks for dbt making life simpler for the dbt user.
dbt-coves generates dbt soruces and staging models and property(yml) files by analyzing information from the data warehouse and creating the necessary files (sql and yml).
Finally, dbt-coves includes functionality to bootstrap a dbt project and to extract and load configurations from Airbyte.
Supported dbt versions
Version | Status |
---|---|
< 1.0 | ❌ Not supported |
>= 1.0 | ✅ Tested |
Supported adapters
Feature | Snowflake | Redshift |
---|---|---|
dbt project setup | ✅ Tested | 🕥 In progress |
source model (sql) generation | ✅ Tested | 🕥 In progress |
model properties (yml) generation | ✅ Tested | 🕥 In progress |
NOTE: Other database adapters may work, we have just not tested them. Feed free to try them and let us know if you test them we can update the table above.
Here's the tool in action
Installation
pip install dbt-coves
We recommend using python virtualenvs and create one separate environment per project.
Command Reference
For a complete list of options, please run:
dbt-coves -h
dbt-coves <command> -h
Environment setup
Setting up your environment can be done in two different ways:
Runs a set of scripts in your local environment to configure your project components: ssh keys
, git
and dbt
dbt-coves setup all
You can configure individual components:
Set up git
repository of dbt-coves project
dbt-coves setup git
Setup dbt
within the project (delegates to dbt init)
dbt-coves setup dbt
Set up SSH Keys for dbt project. Supports the argument --open_ssl_public_key
which generates an extra Public Key in Open SSL format, useful for configuring certain providers (i.e. Snowflake authentication)
dbt-coves setup ssh
Models generation
dbt-coves generate <resource>
Where <resource> could be sources, properties or metadata.
dbt-coves generate sources
This command will generate the dbt source configuration as well as the initial dbt staging model(s). It will look in the database defined in your profiles.yml
file or you can pass the --database
argument or set up default configuration options (see below)
dbt-coves generate sources --database raw
Supports Jinja templates to adjust how the resources are generated. See below for examples.
Source Generation Arguments
dbt-coves can be used to create the initial staging models. It will do the following:
- Create / Update the source yml file
- Create the initial staging model(sql) file and offer to flatten VARIANT(JSON) fields
- Create the staging model's property(yml) file.
dbt-coves generate sources
supports the following args:
See full list in help
dbt-coves generate sources -h
--database
# Database to inspect
--schema
# Schema to inspect
--select-relations
# List of relations where raw data resides. The parameter must be enclosed in quotes. Accepts wildcards.
--exclude-relations
# Filter relation(s) to exclude from source file(s) generation. The parameter must be enclosed in quotes. Accepts wildcards.
--sources-destination
# Where sources yml files will be generated, default: 'models/staging/{{schema}}/sources.yml'
--models-destination
# Where models sql files will be generated, default: 'models/staging/{{schema}}/{{relation}}.sql'
--model-props-destination
# Where models yml files will be generated, default: 'models/staging/{{schema}}/{{relation}}.yml'
--update-strategy
# Action to perform when a property file already exists: 'update', 'recreate', 'fail', 'ask' (per file)
--templates-folder
# Folder with jinja templates that override default sources generation templates, i.e. 'templates'
--metadata
# Path to csv file containing metadata, i.e. 'metadata.csv'
Properties Generation Arguments
You can use dbt-coves to generate and update the properties(yml) file for a given dbt model(sql) file.
dbt-coves generate properties
supports the following args:
--destination
# Where models yml files will be generated, default: '{{model_folder_path}}/{{model_file_name}}.yml'
--update-strategy
# Action to perform when a property file already exists: 'update', 'recreate', 'fail', 'ask' (per file)
-s --select
# Filter model(s) to generate property file(s)
--exclude
# Filter model(s) to exclude from property file(s) generation
--selector
# Specify dbt selector for more complex model filtering
--templates-folder
# Folder with jinja templates that override default properties generation templates, i.e. 'templates'
--metadata
# Path to csv file containing metadata, i.e. 'metadata.csv'
Note: --select (or -s)
, --exclude
and --selector
work exactly as dbt ls
selectors do. For usage details, visit dbt list docs
Metadata Generation Arguments
You can use dbt-coves to generate the metadata file(s) containing the basic structure of the csv that can be used in the above dbt-coves generate sources/properties
commands.
Usage of these metadata files can be found in metadata below.
dbt-coves generate metadata
supports the following args:
--database
# Database to inspect
--schemas
# Comma separated list of schemas where raw data resides
--select-relations
# List of relations where raw data resides. The parameter must be enclosed in quotes. Accepts wildcards.
--exclude-relations
# Filter relation(s) to exclude from source file(s) generation. The parameter must be enclosed in quotes. Accepts wildcards.
--destination
# Where csv file(s) will be generated, default: 'metadata.csv'
# Supports using the Jinja tags `{{relation}}` and `{{schema}}`
# if creating one csv per relation/table in schema, i.e: "metadata/{{relation}}.csv"
Metadata
dbt-coves supports the argument --metadata
which allows users to specify a csv file containing field types and descriptions to be used when creating the staging models and property files.
dbt-coves generate sources --metadata metadata.csv
Metadata format: You can download a sample csv file as reference
database | schema | relation | column | key | type | description |
---|---|---|---|---|---|---|
raw | raw | _airbyte_raw_country_populations | _airbyte_data | Year | integer | Year of country population measurement |
raw | raw | _airbyte_raw_country_populations | _airbyte_data | variant | Airbyte data columns (VARIANT) in Snowflake | |
raw | raw | _airbyte_raw_country_populations | _airbyte_ab_id | varchar | Airbyte unique identifier used during data load |
Extract configuration from Airbyte
dbt-coves extract airbyte
Extracts the configuration from your Airbyte sources, connections and destinations (excluding credentials) and stores it in the specified folder. The main goal of this feature is to keep track of the configuration changes in your git repo, and rollback to a specific version when needed.
Full usage example:
dbt-coves extract airbyte --host http://airbyte-server --port 8001 --path /config/workspace/load/airbyte
Load configuration to Airbyte
dbt-coves load airbyte
Loads the Airbyte configuration generated with dbt-coves extract airbyte
on an Airbyte server. Secrets folder needs to be specified separately. You can use git-secret to encrypt secrets and make them part of your git repo.
Loading secrets
Secret credentials can be approached in two different ways: locally or remotely (through a provider/manager).
In order to load encrypted fields locally:
dbt-coves load airbyte --secrets-path /path/to/secret/directory
# This directory must have 'sources', 'destinations' and 'connections' folders nested inside, and inside them the respective JSON files with unencrypted fields.
# Naming convention: JSON unencrypted secret files must be named exactly as the extracted ones.
To load encrypted fields through a manager (in this case we are connecting to Datacoves' Service Credentials):
--secrets-manager datacoves
--secrets-url https://api.datacoves.localhost/service-credentials/airbyte
--secrets-token <secret token>
Full usage example:
dbt-coves load airbyte --host http://airbyte-server --port 8001 --path /config/workspace/load/airbyte --secrets-path /config/workspace/secrets
Extract configuration from Fivetran
dbt-coves extract fivetran
Extracts the configuration from your Fivetran destinations and connectors (excluding credentials) and stores it in the specified folder. The main goal of this feature is to keep track of the configuration changes in your git repo, and rollback to a specific version when needed.
Full usage example:
dbt-coves extract fivetran --credentials /config/workspace/secrets/fivetran/credentials.yml --path /config/workspace/load/fivetran
Load configuration to Fivetran
dbt-coves load fivetran
Loads the Fivetran configuration generated with dbt-coves extract fivetran
on a Fivetran instance. Secrets folder needs to be specified separately. You can use git-secret to encrypt secrets and make them part of your git repo.
Credentials
In order for extract/load fivetran to work properly, you need to provide an api key-secret pair (you can generate them here).
These credentials can be used with --api-key [key] --api-secret [secret]
, or specyfing a YML file with --credentials /path/to/credentials.yml
. The required structure of this file is the following:
account_name: # Any name, used by dbt-coves to ask which to use when more than one is found
api_key: [key]
api_secret: [secret]
account_name_2:
api_key: [key]
api_secret: [secret]
This YML file approach allows you to both work with multiple Fivetran accounts, and treat this credentials file as a secret.
:warning: Warning: --api-key/secret and --credentials flags are mutually exclusive, don't use them together.
Loading secrets
Secret credentials can be approached via --secrets-path
flag
dbt-coves load fivetran --secrets-path /path/to/secret/directory
Field naming convention
Although secret files can have any name, unencrypted JSON files must follow a simple structure:
- Keys should match their corresponding Fivetran destination ID: two words automatically generated by Fivetran, which can be found in previously extracted data.
- Inside those keys, a nested dictionary of which fields should be overwritten
For example:
{
"extract_muscle": {
// Internal ID that Fivetran gave to a Snowflake warehouse Destination
"password": "[PASSWORD]" // Field:Value pair
},
"centre_straighten": {
"password": "[PASSWORD]"
}
}
Run dbt commands
dbt-coves dbt <arguments> -- <command>
Run dbt commands on special environments such as Airflow, or CI workers, with the possibility of changing dbt project location and activating a specific virtual environment in which running commands.
Arguments
dbt-coves dbt
supports the following arguments
--project-dir
# Path of the dbt project where command will be executed, i.e.: /opt/user/dbt_project
--virtualenv
# Virtual environment path. i.e.: /opt/user/virtualenvs/airflow
Sample usage
dbt-coves dbt --project-dir /opt/user/dbt_project --virtualenv /opt/user/virtualenvs/airflow -- run -s model --vars \"{key: value}\"
# Make sure to escape special characters such as quotation marks
# Double dash (--) between <arguments> and <command> are mandatory
Settings
dbt-coves will read settings from .dbt_coves/config.yml
. A standard settings files could look like
this:
generate:
sources:
database: "RAW" # Database where to look for source tables
schemas: # List of schema names where to look for source tables
- RAW
select_relations: # list of relations where raw data resides
- TABLE_1
- TABLE_2
exclude_relations: # Filter relation(s) to exclude from source file(s) generation
- TABLE_1
- TABLE_2
sources_destination: "models/staging/{{schema}}/{{schema}}.yml" # Where sources yml files will be generated
models_destination: "models/staging/{{schema}}/{{relation}}.sql" # Where models sql files will be generated
model_props_destination: "models/staging/{{schema}}/{{relation}}.yml" # Where models yml files will be generated
update_strategy: ask # Action to perform when a property file already exists. Options: update, recreate, fail, ask (per file)
templates_folder: ".dbt_coves/templates" # Folder where source generation jinja templates are located. Override default templates creating source_props.yml, source_model_props.yml, and source_model.sql under this folder
metadata: "metadata.csv" # Path to csv file containing metadata
properties:
destination: "{{model_folder_path}}/{{model_file_name}}.yml" # Where models yml files will be generated
# You can specify a different path by declaring it explicitly, i.e.: "models/staging/{{model_file_name}}.yml"
update-strategy: ask # Action to perform when a property file already exists. Options: update, recreate, fail, ask (per file)
select: "models/staging/bays" # Filter model(s) to generate property file(s)
exclude: "models/staging/bays/test_bay" # Filter model(s) to generate property file(s)
selector: "selectors/bay_selector.yml" # Specify dbt selector for more complex model filtering
templates_folder: ".dbt_coves/templates" # Folder where source generation jinja templates are located. Override default template creating model_props.yml under this folder
metadata: "metadata.csv" # Path to csv file containing metadata
metadata:
database: RAW # Database where to look for source tables
schemas: # List of schema names where to look for source tables
- RAW
select_relations: # list of relations where raw data resides
- TABLE_1
- TABLE_2
exclude_relations: # Filter relation(s) to exclude from source file(s) generation
- TABLE_1
- TABLE_2
destination: # Where metadata file will be generated, default: 'metadata.csv'
extract:
airbyte:
path: /config/workspace/load/airbyte # Where json files will be generated
host: http://airbyte-server # Airbyte's API hostname
port: 8001 # Airbyte's API port
fivetran:
path: /config/workspace/load/fivetran # Where Fivetran export will be generated
api_key: [KEY] # Fivetran API Key
api_secret: [SECRET] # Fivetran API Secret
credentials: /opt/fivetran_credentials.yml # Fivetran set of key:secret pairs
# 'api_key' + 'api_secret' are mutually exclusive with 'credentials', use one or the other
load:
airbyte:
path: /config/workspace/load
host: http://airbyte-server
port: 8001
secrets_manager: datacoves # (optional) Secret credentials provider (secrets_path OR secrets_manager should be used, can't load secrets locally and remotely at the same time)
secrets_path: /config/workspace/secrets # (optional) Secret files location if secrets_manager was not specified
secrets_url: https://api.datacoves.localhost/service-credentials/airbyte # Secrets url if secrets_manager is datacoves
secrets_token: <TOKEN> # Secrets auth token if secrets_manager is datacoves
fivetran:
path: /config/workspace/load/fivetran # Where previous Fivetran export resides, subject of import
api_key: [KEY] # Fivetran API Key
api_secret: [SECRET] # Fivetran API Secret
secrets_path: /config/workspace/secrets/fivetran # Fivetran secret fields
credentials: /opt/fivetran_credentials.yml # Fivetran set of key:secret pairs
# 'api_key' + 'api_secret' are mutually exclusive with 'credentials', use one or the other
Override generation templates
Customizing generated models and model properties requires placing
template files under the .dbt-coves/templates
folder.
There are different variables available in the templates:
adapter_name
refers to the Adapter's class name being used by the target, e.g.SnowflakeAdapter
when using Snowflake.columns
contains the list of relation columns that don't contain nested (JSON) data, it's type isList[Item]
.nested
contains a dict of nested columns, grouped by column name, it's type isDict[column_name, Dict[nested_key, Item]]
.
Item
is a dict
with the keys id
, name
, type
, and description
, where id
contains an slugified id generated from name
.
dbt-coves generate sources
Source property file (.yml) template
This file is used to create the sources yml file
Staging model file (.sql) template
This file is used to create the staging model (sql) files.
Staging model property file (.yml) template
This file is used to create the model properties (yml) file
dbt-coves generate properties
This file is used to create the properties (yml) files for models
Thanks
The project main structure was inspired by dbt-sugar. Special thanks to Bastien Boutonnet for the great work done.
Authors
- Sebastian Sassi @sebasuy -- Datacoves
- Noel Gomez @noel_g -- Datacoves
- Bruno Antonellini -- Datacoves
About
Learn more about Datacoves.
⚠️ dbt-coves is still in development, make sure to test it for your dbt project version and DW before using in production and please submit any issues you find. We also welcome any contributions from the community
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