You just merged an AI-assisted feature branch, the code review looks clean, and the app works in your local smoke test. Now comes the real question: do you add another traditional browser test, let an AI tool generate the coverage, or spend the time improving the observability around the existing suite?

That decision is where a lot of teams get stuck. AI-assisted development changes more than coding speed. It changes the shape of bugs, the pace of UI churn, the expectations for review, and the amount of test maintenance you can tolerate. If you treat AI testing as a magic replacement for your current process, you will probably add noise. If you ignore it entirely, you miss a chance to reduce repetitive work and catch gaps earlier.

The real choice is not AI vs non-AI

The useful decision is usually this, should AI help create and maintain tests, should it assist human review, or should it stay out of the critical path and only support investigation?

That splits into three practical modes: