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Having a cross-functional machine learning team means juggling a variety of skills, backgrounds, and, inevitably, differing priorities. It's like being a conductor in an orchestra where each musician plays a different tune! Your role is to ensure that everyone plays in harmony towards a common goal. How do you handle it when the data scientists want to refine algorithms while the product managers push for a faster rollout? Or when engineers are focused on system scalability but marketers are demanding user-friendly features? Share your strategies for balancing these diverse priorities without missing a beat!

How would you navigate conflicting priorities within your cross-functional ML team?

How would you navigate conflicting priorities within your cross-functional ML team?

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