Kotter's Change Framework: Accelerators 5-8

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Kotter's Change Framework: Accelerators 5-8

Coursera · Beginner ·📄 Research Papers Explained ·1mo ago
Complete your learning journey with the fourth and last course from Kotter, designed to provide the first steps into an understanding of the Science of Change. Explore Kotter’s effective strategies and tactics for leading complex change. Learn how you can apply Kotter’s 8 Accelerators to dramatically increase your chances of success as you lead change. Course Description: Build on your understanding by learning how to apply the key success factors behind each of the 8 Accelerators to your own work, including the importance of articulating a Big Opportunity and: 5. Enabling Action by Removing Barriers 6. Generating Short-Term Wins 7. Sustaining Acceleration 8. Instituting Change Join Kotter and take the first steps along your learning journey into the Science of Change, beginning with our understanding of human nature and our response to threats and opportunities and the limitations of traditional organizational structures. Based on 50 years of empirical research into the Science of Change and our latest insights from our firm’s consulting work, Kotter is making change leadership more accessible than ever before with four new courses introducing learners to our methodologies and tools for successful organizational transformations.
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