Open Source ChromeOS Visual Regression Testing Tools

Visual Regression Testing Tools for ChromeOS

Browse free open source Visual Regression Testing tools and projects for ChromeOS below. Use the toggles on the left to filter open source Visual Regression Testing tools by OS, license, language, programming language, and project status.

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  • 1
    SikuliX

    SikuliX

    SikuliX version 2.0.0+ (2019+)

    SikuliX automates anything you see on the screen of your desktop computer running Windows, Mac or some Linux/Unix. It uses image recognition powered by OpenCV to identify GUI components and can act on them with mouse and keyboard actions. This is handy in cases when there is no easy access to a GUI's internals or the source code of the application or web page you want to act on.
    Downloads: 131 This Week
    Last Update:
    See Project
  • 2
    Passmark

    Passmark

    The open-source Playwright library for AI browser regression testing

    The Passmark project is an open-source AI-powered regression testing framework built on top of Playwright that enables developers to write end-to-end browser tests using natural language instead of traditional scripting. It is designed to simplify and accelerate testing workflows by allowing AI models to interpret human-readable instructions and translate them into executable browser actions. One of its defining features is a cache-first execution model, where AI is used initially to discover how to perform actions, and those actions are then stored and replayed at native speed in future runs. This approach significantly reduces reliance on AI during repeated test executions, improving both performance and cost efficiency. The framework also incorporates multi-model validation, using multiple AI systems to verify assertions and reduce the risk of incorrect results.
    Downloads: 4 This Week
    Last Update:
    See Project
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