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News/What happens when companies become too AI-pilled?
techcrunch
PublishedMay 29, 2026 at 5:57 PM
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What happens when companies become too AI-pilled?

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The people deciding that AI can replace your job are also the ones least likely to understand what your job truly involves, according to Box founder Aaron Levie, who pointed to this as an example of “AI psychosis.” Indeed, ClickUp recently cut 22% of its workforce for AI agents, tech layoffs in 2026

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