Exploring experimentation process
Experimentation is a key process in data science, where you test and evaluate hypotheses systematically. It refines models, improves performance, and ensures results align with the problem statement.
Imagine developing a forecasting model for a retail company. You define the problem: predicting weekly sales to optimize inventory. Then, you set hypotheses about which models and features will work best, test them, and iterate based on results.
Which of these descriptions of the experimentation process is inaccurate?
This exercise is part of the course
Designing Forecasting Pipelines for Production
Hands-on interactive exercise
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