First, build with AI — start from yourself. Promote and advocate for AI internally.
Second, make your company AI Native. Find sustainable patterns where AI delivers predictably.
Third, optimize the processes for even greater outcomes. Do not optimize before that step. Make the AI motion grow first.
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