Why models fail?
Monitoring machine learning models in production is a crucial step in the data science development cycle. It not only maximizes the business impact but also improves AI safety and reduces the risk of failure. In this video, you learned about the potential causes of model failure. Do you recall what they were?
This exercise is part of the course
Monitoring Machine Learning Concepts
Hands-on interactive exercise
Turn theory into action with one of our interactive exercises
