Welcome to the workshop!
Welcome to Detecting and responding to model drift in production

Today's icebreaker:
When the model drifts…
Imagine your shopping app drifts and starts making bizarre recommendations (for example, 50 cans of dog food when you don’t own a dog).
What other funny or weird recommendations might a ‘drifting’ shopping app give you?
Type your ideas in the chat.
Today's agenda:
- Review: Recap key concepts.
- **Practical exercise:**ShopSmart drift response plan.
- **Closing:**Wrap-up and reflection.
Today's learning objectives:
- Detect and classify different types of model drift in production ML systems.
- Design monitoring dashboards that link drift indicators to performance metrics and business outcomes.
- Propose maintenance and testing strategies to respond to drift and ensure safe deployment of model updates.