Meta AI Chief Sees Opportunity in Models’ Giving Health Advice
THE SO WHAT
Meta leaning into consumer health advice as a differentiator means AI health guidance is about to be mass-market, not niche. If you’re in healthcare, assume patients will show up having already consulted a model — your workflows, liability posture, and patient education need to account for that now, not after the first incident.
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