Covariate shift vs concept drift
When deploying a machine learning model in production, it can sometimes fail silently without any obvious indicators, even though the entire infrastructure may be functioning properly. This type of failure can be caused by either covariate shift or concept drift.
Can you recall the characteristics of these two problems?
This exercise is part of the course
Monitoring Machine Learning Concepts
Hands-on interactive exercise
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