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News/‘AI-pilled’ firms spend $7,500 per employee each month on AI
techcrunch
PublishedJune 10, 2026 at 5:07 PM
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‘AI-pilled’ firms spend $7,500 per employee each month on AI

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The most AI-obsessed firms are spending roughly $7,500 monthly per employee on AI, per Ramp AI Index. That's not more than an engineer's salary — yet.

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