• Stars
    star
    1,736
  • Rank 25,918 (Top 0.6 %)
  • Language
    Python
  • License
    Apache License 2.0
  • Created over 3 years ago
  • Updated about 2 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

âš¡ Data quality testing for the modern data stack (SQL, Spark, and Pandas) https://www.soda.io

Soda Core

Data quality testing for SQL-, Spark-, and Pandas-accessible data.

License: Apache 2.0 Slack


✔ An open-source, CLI tool and Python library for data quality testing
✔ Compatible with the Soda Checks Language (SodaCL)
✔ Enables data quality testing both in and out of your data pipelines and development workflows
✔ Integrated to allow a Soda scan in a data pipeline, or programmatic scans on a time-based schedule

Soda Core is a free, open-source, command-line tool and Python library that enables you to use the Soda Checks Language to turn user-defined input into aggregated SQL queries.

When it runs a scan on a dataset, Soda Core executes the checks to find invalid, missing, or unexpected data. When your Soda Checks fail, they surface the data that you defined as bad-quality.

Soda Library

Consider using Soda Library, an extension of Soda Core that offers more features and functionality, and enables you to connect to a Soda Cloud account to collaborate with your team on data quality. Install Soda Library and get started with a 45-day free trial.


Get started

Soda Core currently supports connections to several data sources. See Compatibility for a complete list.

Requirements

  • Python 3.8 or greater
  • Pip 21.0 or greater

Install and run

  1. To get started, use the install command, replacing soda-core-postgres with the package that matches your data source. See Install Soda Core for a complete list.

    pip install soda-core-postgres
  2. Prepare a configuration.yml file to connect to your data source. Then, write data quality checks in a checks.yml file. See Configure Soda Core.

  3. Run a scan to review checks that passed, failed, or warned during a scan. See Run a Soda Core scan.

    soda scan -d your_datasource -c configuration.yml checks.yml

Example checks

# Checks for basic validations
checks for dim_customer:
  - row_count between 10 and 1000
  - missing_count(birth_date) = 0
  - invalid_percent(phone) < 1 %:
      valid format: phone number
  - invalid_count(number_cars_owned) = 0:
      valid min: 1
      valid max: 6
  - duplicate_count(phone) = 0

# Checks for schema changes
checks for dim_product:
  - schema:
      name: Find forbidden, missing, or wrong type
      warn:
        when required column missing: [dealer_price, list_price]
        when forbidden column present: [credit_card]
        when wrong column type:
          standard_cost: money
      fail:
        when forbidden column present: [pii*]
        when wrong column index:
          model_name: 22
# Check for freshness 
  - freshness(start_date) < 1d

# Check for referential integrity
checks for dim_department_group:
  - values in (department_group_name) must exist in dim_employee (department_name)

Documentation