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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