Instead of banning AI, I made a classroom contract with my students
THE SO WHAT
Moving from AI bans to classroom contracts is an early template for negotiated AI norms in knowledge work. Leaders should expect similar bottom-up pressure from staff — co-designed guidelines often work better than top-down prohibitions that people quietly route around.
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