
The AI security paradox: Why are organizations trusting what they can’t fully see?
THE SO WHAT
AI is being treated like SaaS while behaving more like a black-box supply chain. If you’re shipping AI into production faster than you can map data flows, model lineage, and third-party dependencies, you’re building latent security debt that will surface as soon as regulators or attackers show up.
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