Showing 2 open source projects for "parallel"

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    Hermione

    Hermione

    Browser test runner based on mocha and wdio

    ...If you are familiar with WebdriverIO and Mocha, you can start writing and running tests in 5 minutes! You need to install Hermione via npm and add a tiny config to your project. When tests are run one by one, it takes a lot of time. Hermione can run tests in parallel sessions in different browsers out of the box. Running of too many tests in parallel can lead to the overloading of the main process CPU usage which causes degradation in test passing time, so Hermione runs all tests in subprocesses in order to solve this problem.
    Downloads: 5 This Week
    Last Update:
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    Frontend Regression Validator (FRED)

    Frontend Regression Validator (FRED)

    Visual regression tool used to compare baseline and updated instances

    ...The visual analysis computes the Normalized Mean Squared error and the Structural Similarity Index on the screenshots of the baseline and updated sites, while the visual AI looks at layout and content changes independently by applying image segmentation Machine Learning techniques to recognize high-level text and image visual structures. This reduces the impact of dynamic content yielding false positives. FRED is designed to be scalable. It has an internal queue and can process websites in parallel depending on the amount of RAM and CPUs (or GPUs) available.
    Downloads: 0 This Week
    Last Update:
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