Your team is divided on data cleaning precision versus model complexity. How will you find the right balance?
In data science, finding the right balance between data cleaning precision and model complexity is a common dilemma. You might be facing a divided team, with some members advocating for meticulous data cleaning while others push for more complex models. The key is to strike a balance that maximizes predictive performance without overburdening the process. This balance ensures that the model is robust enough to handle real-world data while remaining computationally efficient.