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Distribution Drift Detection for ML Monitoring
IntermediateMaster distribution drift detection for production ML monitoring. Learn PSI, KL divergence, Jensen-Shannon divergence, temporal decay weighting, and rolling window analysis to detect when models degrade.
75 min
Lab: notebook
5 objectives
4 evidence types
75
Minutes
5
Objectives
4
Evidence Types
4
Success Criteria
Case Narrative
Learning Objectives
1
Understand why drift detection is critical for ML in production
2
Compute and interpret Population Stability Index (PSI)
3
Apply KL and Jensen-Shannon divergence for distribution comparison
4
Implement temporal decay weighting for streaming analysis
5
Build rolling window drift monitoring systems
Required Evidence
Psi Computation
Not collected yet
Divergence Analysis
Not collected yet
Temporal Monitoring
Not collected yet
Alert Configuration
Not collected yet
Case Details
- Difficulty
- Intermediate
- Duration
- 75 min
- Lab Type
- notebook
- Slug
- distribution-drift-detection
Prerequisites
No prerequisites - open to all
Success Criteria
Alert Thresholds Configured
Required
Divergences Compared
Required
Psi Computed
Required
Rolling Monitor Built
Required