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News/AI was supposed to kill engineering jobs, but new data suggests they’re the most resilient
techcrunch
PublishedJune 24, 2026 at 9:56 PM
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AI was supposed to kill engineering jobs, but new data suggests they’re the most resilient

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While AI dominates the layoff narrative, engineers are actually making up a larger share of new hires, according to SignalFire data.

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