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dbt-spark

This plugin ports dbt functionality to Spark. It supports running dbt against Spark clusters that are hosted via Databricks (AWS + Azure), Amazon EMR, or Docker.

We have not tested extensively against older versions of Apache Spark. The plugin uses syntax that requires version 2.2.0 or newer. Some features require Spark 3.0 and/or Delta Lake.

Documentation

For more information on using Spark with dbt, consult the dbt documentation:

Installation

This plugin can be installed via pip. Depending on your connection method, you need to specify an extra requirement.

If connecting to Databricks via ODBC driver, it requires pyodbc. Depending on your system1, you can install it seperately or via pip:

# Install dbt-spark from PyPi for odbc connections:
$ pip install "dbt-spark[ODBC]"

If connecting to a Spark cluster via the generic thrift or http methods, it requires PyHive:

# Install dbt-spark from PyPi for thrift or http connections:
$ pip install "dbt-spark[PyHive]"

1See the pyodbc wiki for OS-specific installation details.

Configuring your profile

Connection Method

Connections can be made to Spark in three different modes:

  • odbc is the preferred mode when connecting to Databricks. It supports connecting to a SQL Endpoint or an all-purpose interactive cluster.
  • http is a more generic mode for connecting to a managed service that provides an HTTP endpoint. Currently, this includes connections to a Databricks interactive cluster.
  • thrift connects directly to the lead node of a cluster, either locally hosted / on premise or in the cloud (e.g. Amazon EMR).

A dbt profile for Spark connections support the following configurations:

Key:

  • ✅ Required
  • ❌ Not used
  • ❔ Optional (followed by default value in parentheses)
Option Description ODBC Thrift HTTP Example
method Specify the connection method (odbc or thrift or http) odbc
schema Specify the schema (database) to build models into analytics
host The hostname to connect to yourorg.sparkhost.com
port The port to connect to the host on ❔ (443) ❔ (443) ❔ (10001) 443
token The token to use for authenticating to the cluster abc123
auth The value of hive.server2.authentication KERBEROS
kerberos_service_name Use with auth='KERBEROS' hive
organization Azure Databricks workspace ID (see note) 1234567891234567
cluster The name of the cluster to connect to ✅ (unless endpoint) 01234-23423-coffeetime
endpoint The ID of the SQL endpoint to connect to ✅ (unless cluster) 1234567891234a
driver Path of ODBC driver installed or name of the ODBC driver configured /opt/simba/spark/lib/64/libsparkodbc_sb64.so
user The username to use to connect to the cluster hadoop
connect_timeout The number of seconds to wait before retrying to connect to a Pending Spark cluster ❔ (10) ❔ (10) 60
connect_retries The number of times to try connecting to a Pending Spark cluster before giving up ❔ (0) ❔ (0) 5

Databricks connections differ based on the cloud provider:

  • Organization: To connect to an Azure Databricks cluster, you will need to obtain your organization ID, which is a unique ID Azure Databricks generates for each customer workspace. To find the organization ID, see https://docs.microsoft.com/en-us/azure/databricks/dev-tools/databricks-connect#step-2-configure-connection-properties. This is a string field; if there is a leading zero, be sure to include it.

  • Host: The host field for Databricks can be found at the start of your workspace or cluster url: region.azuredatabricks.net for Azure, or account.cloud.databricks.com for AWS. Do not include https://.

Amazon EMR: To connect to Spark running on an Amazon EMR cluster, you will need to run sudo /usr/lib/spark/sbin/start-thriftserver.sh on the master node of the cluster to start the Thrift server (see https://aws.amazon.com/premiumsupport/knowledge-center/jdbc-connection-emr/ for further context). You will also need to connect to port 10001, which will connect to the Spark backend Thrift server; port 10000 will instead connect to a Hive backend, which will not work correctly with dbt.

Example profiles.yml entries:

ODBC

your_profile_name:
  target: dev
  outputs:
    dev:
      type: spark
      method: odbc
      driver: path/to/driver
      host: yourorg.databricks.com
      organization: 1234567891234567    # Azure Databricks only
      port: 443                         # default
      token: abc123
      schema: analytics

      # one of:
      cluster: 01234-23423-coffeetime
      endpoint: coffee01234time

Thrift

your_profile_name:
  target: dev
  outputs:
    dev:
      type: spark
      method: thrift
      host: 127.0.0.1
      port: 10001                         # default
      schema: analytics
      
      # optional
      user: hadoop
      auth: KERBEROS
      kerberos_service_name: hive
      connect_retries: 5
      connect_timeout: 60

HTTP

your_profile_name:
  target: dev
  outputs:
    dev:
      type: spark
      method: http
      host: yourorg.sparkhost.com
      organization: 1234567891234567    # Azure Databricks only
      port: 443                         # default
      token: abc123
      schema: analytics
      cluster: 01234-23423-coffeetime

      # optional
      connect_retries: 5
      connect_timeout: 60

Usage Notes

Model Configuration

The following configurations can be supplied to models run with the dbt-spark plugin:

Option Description Required? Example
file_format The file format to use when creating tables (parquet, delta, csv, json, text, jdbc, orc, hive or libsvm). Optional parquet
location_root The created table uses the specified directory to store its data. The table alias is appended to it. Optional /mnt/root
partition_by Partition the created table by the specified columns. A directory is created for each partition. Optional partition_1
clustered_by Each partition in the created table will be split into a fixed number of buckets by the specified columns. Optional cluster_1
buckets The number of buckets to create while clustering Required if clustered_by is specified 8
incremental_strategy The strategy to use for incremental models (append, insert_overwrite, or merge). Optional (default: append) merge
persist_docs Whether dbt should include the model description as a table comment Optional {'relation': true}

Incremental Models

dbt has a number of ways to build models incrementally, called "incremental strategies." Some strategies depend on certain file formats, connection types, and other model configurations:

  • append (default): Insert new records without updating or overwriting any existing data.
  • insert_overwrite: If partition_by is specified, overwrite partitions in the table with new data. (Be sure to re-select all of the relevant data for a partition.) If no partition_by is specified, overwrite the entire table with new data. [Cannot be used with file_format: delta or when connectinng via Databricks SQL Endpoints. For dynamic partition replacement with method: odbc + Databricks cluster, you must you must include set spark.sql.sources.partitionOverwriteMode DYNAMIC in the cluster SparkConfig. For atomic replacement of Delta tables, use the table materialization instead.]
  • merge: Match records based on a unique_key; update old records, insert new ones. (If no unique_key is specified, all new data is inserted, similar to append.) [Requires file_format: delta. Available only on Databricks Runtime.]

Examples:

{{ config(
    materialized='incremental',
    incremental_strategy='append',
) }}


--  All rows returned by this query will be appended to the existing table

select * from {{ ref('events') }}
{% if is_incremental() %}
  where event_ts > (select max(event_ts) from {{ this }})
{% endif %}
{{ config(
    materialized='incremental',
    incremental_strategy='merge',
    partition_by=['date_day'],
    file_format='parquet'
) }}

-- Every partition returned by this query will overwrite existing partitions

select
    date_day,
    count(*) as users

from {{ ref('events') }}
{% if is_incremental() %}
  where date_day > (select max(date_day) from {{ this }})
{% endif %}
group by 1
{{ config(
    materialized='incremental',
    incremental_strategy='merge',
    unique_key='event_id',
    file_format='delta'
) }}

-- Existing events, matched on `event_id`, will be updated
-- New events will be appended

select * from {{ ref('events') }}
{% if is_incremental() %}
  where date_day > (select max(date_day) from {{ this }})
{% endif %}

Running locally

A docker-compose environment starts a Spark Thrift server and a Postgres database as a Hive Metastore backend.

docker-compose up

Create a profile like this one:

spark-testing:
  target: local
  outputs:
    local:
      type: spark
      method: thrift
      host: 127.0.0.1
      port: 10000
      user: dbt
      schema: analytics
      connect_retries: 5
      connect_timeout: 60

Connecting to the local spark instance:

  • The Spark UI should be available at http://localhost:4040/sqlserver/
  • The endpoint for SQL-based testing is at http://localhost:10000 and can be referenced with the Hive or Spark JDBC drivers using connection string jdbc:hive2://localhost:10000 and default credentials dbt:dbt

Note that the Hive metastore data is persisted under ./.hive-metastore/, and the Spark-produced data under ./.spark-warehouse/. To completely reset you environment run the following:

docker-compose down
rm -rf ./.hive-metastore/
rm -rf ./.spark-warehouse/

Reporting bugs and contributing code

  • Want to report a bug or request a feature? Let us know on Slack, or open an issue.

Code of Conduct

Everyone interacting in the dbt project's codebases, issue trackers, chat rooms, and mailing lists is expected to follow the PyPA Code of Conduct.

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