Microsoft establishes an organization with 6,000 staff specializing in engineering, corporate training, and management to support businesses with AI deployments
THE SO WHAT
Microsoft putting 6,000 people into a quasi-“frontier company” for embedded AI deployment help says the bottleneck has shifted from models to change management. If you’re an enterprise CIO, expect vendor-side pressure to standardize on their stack in exchange for hands-on help — and decide now where you want that dependency.
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