Skip to main content

Databricks Configuration Framework

Project description

dbxconfig

Configuration framework for databricks pipelines. Define configuration and table dependencies in yaml config then get the table mappings config model:

Define your tables.

landing:
  landing_dbx_patterns:
    customer_details_1: null
    customer_details_2: null

raw:
  raw_dbx_patterns:
    customers:
      ids: id
      depends_on:
        - landing.landing_dbx_patterns.customer_details_1
        - landing.landing_dbx_patterns.customer_details_2

base:
  base_dbx_patterns:
    customer_details_1:
      ids: id
      depends_on:
        - raw.raw_dbx_patterns.customers
    customer_details_2:
      ids: id
      depends_on:
        - raw.raw_dbx_patterns.customers

Define you load configuration:

tables: ./test/Config/tables.yaml

landing:
  trigger: customerdetailscomplete-{{filename_date_format}}*.flg
  trigger_type: file
  database: landing_dbx_patterns
  table: "{{table}}"
  container: datalake
  root: "/mnt/{{container}}/data/landing/dbx_patterns/{{table}}/{{path_date_format}}"
  filename: "{{table}}-{{filename_date_format}}*.csv"
  filename_date_format: "%Y%m%d"
  path_date_format: "%Y%m%d"
  format: cloudFiles
  spark_schema: ./test/Schema/{{table.lower()}}.yaml
  options:
    # autoloader
    cloudFiles.format: csv
    cloudFiles.schemaLocation:  /mnt/{{container}}/checkpoint/{{checkpoint}}
    cloudFiles.useIncrementalListing: auto
    # schema
    inferSchema: false
    enforceSchema: true
    columnNameOfCorruptRecord: _corrupt_record
    # csv
    header: false
    mode: PERMISSIVE
    encoding: windows-1252
    delimiter: ","
    escape: '"'
    nullValue: ""
    quote: '"'
    emptyValue: ""
    

raw:
  database: raw_dbx_patterns
  table: "{{table}}"
  container: datalake
  root: /mnt/{{container}}/data/raw
  path: "{{database}}/{{table}}"
  options:
    checkpointLocation: /mnt/{{container}}/checkpoint/{{database}}_{{table}}
    mergeSchema: true

Import the config objects into you pipeline:

from dbxconfig import Config, Timeslice, StageType

# build path to configuration file
pattern = "auto_load_schema"
config_path = f"./Config/{pattern}.yaml"

# create a timeslice object for slice loading. Use * for all time (supports hrs, mins, seconds and sub-second).
timeslice = Timeslice(day="*", month="*", year="*")

# parse and create a config objects
config = Config(timeslice=timeslice, config_path=config_path)

# get the configuration for a table mapping to load.
table_mapping = config.get_table_mapping(
    timeslice=timeslice, 
    stage=StageType.raw, 
    table="customers"
)

Development Setup

pip install -r requirements.txt

Unit Tests

To run the unit tests with a coverage report.

pip install -e .
pytest test/unit --junitxml=junit/test-results.xml --cov=dbxconfig --cov-report=xml --cov-report=html

Build

python setup.py sdist bdist_wheel

Publish

twine upload dist/*

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

dbxconfig-2.0.3.tar.gz (10.7 kB view hashes)

Uploaded Source

Built Distribution

dbxconfig-2.0.3-py3-none-any.whl (13.4 kB view hashes)

Uploaded Python 3

Supported by

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