The Control Gap: Enterprise AI organizations have an ownership problem, not a technology problem — and most are governing it by hand
THE SO WHAT
If most enterprises can’t say who owns AI risk, can’t detect drift, and are governing by spreadsheet, the constraint on AI scale is org design, not model quality. This week’s move is to assign explicit ownership for AI portfolio governance and start instrumenting production systems—before regulators or incidents force the issue.
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