
The best AI requirements management software: 8 tools leading the shift in 2026
THE SO WHAT
AI-native requirements tools are moving spec writing from static documents to continuously-checked, test-linked artifacts. If you build complex systems, piloting one of these this quarter is a low-risk way to harden your engineering process before agents start generating more code than humans can manually review.
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