Skip to content

A Singer target / Meltano loader for CrateDB, built with the Meltano SDK, and based on the Meltano PostgreSQL target.

License

Notifications You must be signed in to change notification settings

crate-workbench/meltano-target-cratedb

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

27 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Singer target / Meltano loader for CrateDB

Tests Test coverage Python versions

License Status PyPI Downloads

About

A Singer target for CrateDB, built with the Meltano SDK for custom extractors and loaders, and based on the Meltano PostgreSQL target.

In order to learn more about Singer, Meltano, and friends, navigate to the Singer Intro.

Install

Usually, you will not install this package directly, but rather on behalf of a Meltano project. A corresponding snippet is outlined in the next section.

After adding it to your meltano.yml project definition file, you can install all defined components and their dependencies with a single command.

meltano install

Usage

You can run the CrateDB Singer target target-cratedb by itself, or in a pipeline using Meltano.

Meltano

Using the meltano add subcommand, you can add the plugin to your Meltano project.

meltano add loader target-cratedb

NB: It will only work like this when released and registered on Meltano Hub. In the meanwhile, please add the configuration snippet manually.

CrateDB Cloud

In order to connect to CrateDB Cloud, configure the sqlalchemy_url setting within your meltano.yml configuration file like this.

- name: target-cratedb
  namespace: cratedb
  variant: cratedb
  pip_url: meltano-target-cratedb
  config:
    sqlalchemy_url: "crate://admin:K4IgMXNvQBJM3CiElOiPHuSp6CiXPCiQYhB4I9dLccVHGvvvitPSYr1vTpt4@example.aks1.westeurope.azure.cratedb.net:4200?ssl=true"}
    add_record_metadata: true

On localhost

In order to connect to a standalone or on-premise instance of CrateDB, configure the sqlalchemy_url setting within your meltano.yml configuration file like this.

- name: target-cratedb
  namespace: cratedb
  variant: cratedb
  pip_url: meltano-target-cratedb
  config:
    sqlalchemy_url: crate://crate@localhost/
    add_record_metadata: true

Then, invoke the pipeline by using meltano run, similar like this.

meltano run tap-xyz target-cratedb

Standalone

You can also invoke it standalone by using the target-cratedb program. This example demonstrates how to load a file into the database.

First, acquire an example file in Singer format, including the list of countries of the world.

wget https://github.com/MeltanoLabs/target-postgres/raw/v0.0.9/target_postgres/tests/data_files/tap_countries.singer

Now, define the database connection string including credentials in SQLAlchemy format.

echo '{"sqlalchemy_url": "crate://crate@localhost/"}' > settings.json

By using Unix pipes, load the data file into the database, referencing the path to the configuration file.

cat tap_countries.singer | target-cratedb --config=settings.json

Using the interactive terminal program, crash, you can run SQL statements on CrateDB.

pip install crash
crash --hosts localhost:4200

Now, you can verify that the data has been loaded correctly.

SELECT
    "code", "name", "capital", "emoji", "languages[1]"
FROM
    "melty"."countries"
ORDER BY
    "name"
LIMIT
    42;

Write Strategy

Meltano's target-postgres uses a temporary table to receive data first, and then update the effective target table with information from that.

CrateDB's target-cratedb offers the possibility to also write directly into the target table, yielding speed improvements, which may be important in certain situations.

The environment variable MELTANO_CRATEDB_STRATEGY_DIRECT controls the behavior.

  • MELTANO_CRATEDB_STRATEGY_DIRECT=true: Directly write to the target table.
  • MELTANO_CRATEDB_STRATEGY_DIRECT=false: Use a temporary table to stage updates.

Note: The current default value is true, effectively short-cutting the native way of how Meltano handles database updates. The reason is that the vanilla way does not satisfy all test cases, yet.

Vector Store Support

In order to support CrateDB's vector store feature, i.e. its FLOAT_VECTOR data type, you will need to install numpy. It has been added to an "extra" of the Python package, called vector.

When installing the package using pip, this would apply:

pip install 'meltano-target-cratedb[vector]'

When installing the package using the Meltano's project definition, this would probably be the right way to write it down, but it hasn't been verified yet.

- name: target-cratedb
  variant: cratedb
  pip_url: meltano-target-cratedb[vector]

Development

In order to work on this adapter dialect on behalf of a real pipeline definition, link your sandbox to a development installation of meltano-target-cratedb, and configure the pip_url of the component to point to a different location than the vanilla package on PyPI.

Use this URL to directly point to a specific Git repository reference.

pip_url: git+https://github.com/crate-workbench/meltano-target-cratedb.git@main

Use a pip-like notation to link the CrateDB Singer target in development mode, so you can work on it at the same time while running the pipeline, and iterating on its definition.

pip_url: --editable=/path/to/sources/meltano-target-cratedb

About

A Singer target / Meltano loader for CrateDB, built with the Meltano SDK, and based on the Meltano PostgreSQL target.

Resources

License

Stars

Watchers

Forks

Languages