How do you deal with uncertainty and ambiguity in your data modeling and data visualization projects?
Data modeling and data visualization are essential skills for anyone who works with data. They help you understand, communicate, and make decisions based on your data. But data is often messy, incomplete, or uncertain. How do you deal with these challenges and create effective models and visuals that capture the reality and the possibilities of your data?