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Relicx

Test generation from real user behavior sessions

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Relicx uses generative AI to conduct visual and functional testing based on real user behavior captured from production sessions. It prioritizes the user experience in testing rather than just code coverage, generating regression suites from actual user journeys to ensure that the flows real people use most frequently are always covered by automated tests.

Relicx captures real user sessions from production and transforms them into automated test suites using generative AI. Instead of guessing which user flows to test, the platform analyzes actual usage patterns to identify the most critical paths through the application. This ensures test coverage is weighted toward the functionality that matters most to real users rather than developer assumptions about importance.

Visual regression testing complements functional validation by comparing screenshots across releases to catch styling changes, layout shifts, and visual inconsistencies that functional tests miss. The AI filters out acceptable visual variations like dynamic content changes while flagging genuine visual regressions that affect user experience.

Relicx targets frontend-heavy applications where visual quality and user experience are primary concerns. The paid platform provides session recording integration, visual comparison dashboards, and CI/CD hooks for automated regression testing on every deployment.

Pricing

Paid; user-session based

Platforms

Web applications, visual regression, CI/CD

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