Skip to content

Instantly share code, notes, and snippets.

@eliasnogueira
Last active December 22, 2023 08:24
Show Gist options
  • Star 0 You must be signed in to star a gist
  • Fork 0 You must be signed in to fork a gist
  • Save eliasnogueira/9d960ce14fb38277750858358e45eb01 to your computer and use it in GitHub Desktop.
Save eliasnogueira/9d960ce14fb38277750858358e45eb01 to your computer and use it in GitHub Desktop.
DataFaker: the most powerful fake data generator library

Title

Datafaker: the most powerful fake data generator library

Description

Data generators in software testing play a critical role in creating realistic and diverse datasets for testing scenarios. However, they present challenges, such as ensuring data diversity, maintaining quality, facilitating validation, and ensuring long-term maintainability.

While many engineers are familiar with these challenges, they often resort to non-specialized tools like the RandomStringUtils class from Apache Commons or the Random class, concatenating fixed data with it. This approach lacks scalability and may not yield a valid dataset.

Thankfully we have DataFaker, a library for Java and Kotlin to generate fake data, based on generators, that can be very helpful when generating test data to fill a database, to generate data for a stress test, or to anonymize data from production services.

With practical examples, you will learn how to generate data based on:

  • different or multiple locales
  • random enum values
  • different generators like address, code (books), currency, date and time, finance, internet, measurement, money, name, time, and others
  • custom (data) providers
  • sequences (collections and stream)
  • date formats
  • expressions
  • transformations
  • unique values
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment