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News/Rethinking organizational design in the age of agentic AI
mit-tech-review
PublishedMay 26, 2026 at 2:54 PM
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Rethinking organizational design in the age of agentic AI

Rethinking organizational design in the age of agentic AI
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Amid rapidly growing adoption of enterprise-level AI agents, there’s a disconnect emerging between ambition and execution. Although 85% of organizations say they want to be agentic within the next three years, 76% say their current operations and infrastructure can’t support that change. They cite a

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