Your AI is ready. Your data foundation probably isn’t
Summary
Cushman & Wakefield successfully built its enterprise AI core by embedding technologists into business units under a product operating model, prioritizing trust and a co-created capital investment model over short-term AI pilots. Using Databricks and Genie, the company matured its operating model three times in four years and accelerated its idea-to-outcome timelines from months to days.
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