Scale AI lays off 14% of staff, largely in data-labeling business

AI News - TechCrunch
Jul 16, 2025 19:26
Maxwell Zeff
1 views
aistartupstechnology

Summary

Scale AI is laying off 14% of its workforce, primarily in its data-labeling division, shortly after Meta invested $14.3 billion in the company and recruited its CEO. This move highlights shifting priorities and potential automation in the data-labeling sector, reflecting broader changes in the AI industry's workforce needs.

Scale AI is cutting 14% of the company just weeks after Meta invested $14.3 billion in the startup and hired away its CEO.

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