Higher education is being flooded with AI pitches. Agents. Automation. Efficiency at scale. But the question most demos skip is the one that determines whether any of it works: what is the agent actually acting on?
In this Signals audio edition, we explore why the gap between automation and outcomes isn't a product feature — it's an intelligence problem. Drawing on Lawrence Technological University's implementation experience and the emerging wave of AI-native platforms pitching directly to boards and presidents, this episode examines why the foundation underneath an agent matters more than the agent itself.
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