Skip to main content

A Harlequin adapter for Databricks.

Project description

harlequin-databricks

PyPI Conda Python Version Code Quality Checks Ruff License: MIT Downloads

A Harlequin adapter for Databricks. Supports connecting to Databricks SQL warehouses or Databricks Runtime (DBR) interactive clusters.

harlequin-databricks

Installation

harlequin-databricks depends on harlequin, so installing this package using any of the methods below will also install harlequin.

Using uv

The recommended way to install harlequin-databricks is using uv:

uv tool install harlequin --with harlequin-databricks

This command will install harlequin with the databricks adapter into an isolated environment and add it to your PATH so you can easily run the executable.

Alternative installation methods

Alternatively, if you know what you're doing, after installing Python 3.9 or above, install harlequin-databricks using pip, pipx, poetry, or any other program that can install Python packages from PyPI. For example:

pip install harlequin-databricks

Connecting to Databricks

To connect to Databricks you are going to need to provide as CLI arguments:

  • server-hostname
  • http-path
  • credentials for one of the following authentication methods:
    • a personal access token (PAT)
    • a username and password
    • an OAuth U2M type
    • a service principle client ID and secret for OAuth M2M

Personal Access Token (PAT) authentication:

harlequin -a databricks --server-hostname ***.cloud.databricks.com --http-path /sql/1.0/endpoints/*** --access-token dabpi***

Username and password (basic) authentication:

harlequin -a databricks --server-hostname ***.cloud.databricks.com --http-path /sql/1.0/endpoints/*** --username *** --password ***

OAuth U2M authentication:

For OAuth user-to-machine (U2M) authentication supply either databricks-oauth or azure-oauth to the --auth-type CLI argument:

harlequin -a databricks --server-hostname ***.cloud.databricks.com --http-path /sql/1.0/endpoints/*** --auth-type databricks-oauth

OAuth M2M authentication:

For OAuth machine-to-machine (M2M) authentication you need to pip install databricks-sdk as an additional dependency (databricks-sdk is an optional dependency of harlequin-databricks) and supply --client-id and --client-secret CLI arguments:

harlequin -a databricks --server-hostname ***.cloud.databricks.com --http-path /sql/1.0/endpoints/*** --client-id *** --client-secret ***

Store an alias for your connection string

We recommend you include an alias for your connection string in your .bash_profile/.zprofile so you can launch harlequin-databricks with a short command like hdb each time.

Run this command (once) to create the alias:

echo 'alias hdb="harlequin -a databricks --server-hostname ***.cloud.databricks.com --http-path /sql/1.0/endpoints/*** --access-token dabpi***"' >> .bash_profile    

Using Unity Catalog and want fast Data Catalog indexing?

Supply the --skip-legacy-indexing command line flag if you do not care about legacy metastores (e.g. hive_metastore) being indexed in Harlequin's Data Catalog pane.

This flag will skip indexing of old non-Unity Catalog metastores (i.e. they won't appear in the Data Catalog pane with this flag).

Because of the way legacy Databricks metastores works, a separate SQL query is required to fetch the metadata of each table in a legacy metastore. This means indexing them for Harlequin's Data Catalog pane is slow.

Databricks's Unity Catalog upgrade brought Information Schema, which allows harlequin-databricks to fetch metadata for all Unity Catalog assets with only two SQL queries.

So if your Databricks instance is running Unity Catalog, and you no longer care about the legacy metastores, setting the --skip-legacy-indexing CLI flag is recommended as it will mean much faster indexing & refreshing of the assets in the Data Catalog pane.

Initialization Scripts

Each time you start Harlequin, it will execute SQL commands from a Databricks initialization script. For example:

USE CATALOG my_catalog;
SET TIME ZONE 'Asia/Tokyo';
DECLARE yesterday DATE DEFAULT CURRENT_DATE - INTERVAL '1' DAY;

Multi-line SQL is allowed, but must be terminated by a semicolon.

Configuring the Script Location

By default, Harlequin will execute the script found at ~/.databricksrc. However, you can provide a different path using the --init-path option (aliased to -i or -init):

harlequin -a databricks --init-path /path/to/my/script.sql

Disabling Initialization

If you would like to open Harlequin without running the script you have at ~/.databricksrc, you can either pass a nonexistent path (or /dev/null) to the option above, or start Harlequin with the --no-init option:

harlequin -a databricks --no-init

Other CLI options:

For more details on other command line options, run:

harlequin --help

For more information, see the harlequin-databricks Docs.

Issues, Contributions and Feature Requests

Please report bugs/issues with this adapter via the GitHub issues page. You are welcome to attempt fixes yourself by forking this repo then opening a PR.

For feature suggestions, please post in the discussions.

Special thanks to...

Ted Conbeer, Josh Temple & Tyler Hillery.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

harlequin_databricks-0.6.1.tar.gz (23.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

harlequin_databricks-0.6.1-py3-none-any.whl (24.9 kB view details)

Uploaded Python 3

File details

Details for the file harlequin_databricks-0.6.1.tar.gz.

File metadata

File hashes

Hashes for harlequin_databricks-0.6.1.tar.gz
Algorithm Hash digest
SHA256 9551c33a107a3c862b433626f3e67c61694f2448aecc2e1c9fcd1de82fbcb53b
MD5 4ddacfe9be9a67cd588a6ad978f74ef1
BLAKE2b-256 8652a4c136c4867924ba23dc63d40a67288ab70d558bdb76354d7c54332d67f7

See more details on using hashes here.

File details

Details for the file harlequin_databricks-0.6.1-py3-none-any.whl.

File metadata

File hashes

Hashes for harlequin_databricks-0.6.1-py3-none-any.whl
Algorithm Hash digest
SHA256 7ce02afc5b35bf3e4ed9bb90dd653d8c41009670ae40c7620a2e878e5a140fd4
MD5 83a91860e939efc298fc81917758a89c
BLAKE2b-256 0ece45e7d44ee29471d72368dddbb855e2fd0824cb3676e1b1222c46a150d33f

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page