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Encourages Continuous Learning and Adaptation Provides a feedback loop for refining strategies. Get instant strategy processes Get expert tools & guidance Lead projects with confidence Learn More Getting Started with the Objectives & Key Results Template To develop an effective OKR strategy , follow these structured steps: 1.
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