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next-ai-draw-io

December 14, 20259,6271,006

Summary

A Next.js web app that layers natural-language-driven AI editing on top of draw.io diagrams, letting you create and modify diagrams through prompts. Great if your team lives in diagrams and you want AI to help refactor system designs. ([github.com](https://github.com/trending?since=daily))

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