⚡ Data quality testing for the modern data stack (SQL, Spark, and Pandas) https://www.soda.io
-
Updated
Oct 28, 2024 - Python
⚡ Data quality testing for the modern data stack (SQL, Spark, and Pandas) https://www.soda.io
re_data - fix data issues before your users & CEO would discover them 😊
Code review for data in dbt
Various files useful for manual testing and test automation etc.
Great Expectations Airflow operator
re_data - fix data issues before your users & CEO would discover them 😊
Soda Spark is a PySpark library that helps you with testing your data in Spark Dataframes
DataOps Data Quality TestGen is part of DataKitchen's Open Source Data Observability. DataOps TestGen delivers simple, fast data quality test generation and execution by data profiling, new dataset hygiene review, AI generation of data quality validation tests, ongoing testing of data refreshes, & continuous anomaly monitoring
Test data management tool for any data source, batch or real-time. Generate, validate and clean up data all in one tool.
⚡ Prevent downstream data quality issues by integrating the Soda Library into your CI/CD pipeline.
This library is inspired by the Great Expectations library. The library has made the various expectations found in Great Expectations available when using the inbuilt python unittest assertions.
Example API implementation for Data Caterer
Simple DB Fixtures for Sails.js v1 (fake data for testing).
data and pipeline testing with and for SQL
Software Testing in Open Source and Data Science: A talk delivered at the Data Umbrella speaker series
Data generation and validation tool for any data source
Example API implementation for Data Caterer
Documentation for Data Caterer
A sample repository showcasing, implementation of testing for ETL pipeline developed with Apache Spark
Develop a data science project using historical sales data to build a regression model that accurately predicts future sales. Preprocess the dataset, conduct exploratory analysis, select relevant features, and employ regression algorithms for model development. Evaluate model performance, optimize hyperparameters, and provide actionable insights.
Add a description, image, and links to the data-testing topic page so that developers can more easily learn about it.
To associate your repository with the data-testing topic, visit your repo's landing page and select "manage topics."