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Recap: In this Session, Timo Railo talked about what it really means to build AI-first engineering systems in production — and how teams can move from experimentation to reliable, structured implementation. This session is part of the AI-First Engineering in Production live 3-part webinar series. Here are the key highlights: First, documentation must be executable. It’s not enough to write things down — knowledge has to be structured so AI systems can index it, discover it, and verify it. If an AI agent can’t find or validate something, it effectively doesn’t exist. Second, proof artifacts matter more than intuition. The session walked through a real production codebase with passing tests and clearly visible policy failures. The message was simple: you can move fast when you can prove you didn’t break anything. Third, structure does the heavy lifting. Clean module boundaries, repository/service/router separation, explicit invariants, and single sources of truth make systems predictable. The takeaway was clear — reliability comes from architecture, not from better prompting. This was Session 2 of the live series, scheduled for February 3 (Tuesday) at 7:00 pm (GMT+2), hosted by AI Empowered Devs. A practical, real-world look at how AI-first engineering works in production.