Techniques for detecting and correcting data drift
In machine learning, it's essential to understand how to maintain a deployed model's performance over time. One familiar challenge practitioners face is data drift, which occurs when the distribution of input data changes. Data drift can lead to decreased model performance and inaccurate predictions.
What are the appropriate steps for detecting and correcting data drift in machine learning models? (Select all that apply).
This exercise is part of the course
End-to-End Machine Learning
Hands-on interactive exercise
Turn theory into action with one of our interactive exercises
