Your high-accuracy ML model performs beautifully on the test set but fails silently in production. This is model drift, the unspoken crisis where models trained on yesterday’s data are unprepared for today's reality. This course, Partition & Monitor AI Models Effectively, is for data scientists and ML engineers who know deployment is just the beginning. You will move beyond model building and into model reliability, creating robust AI systems that stand the test of time.

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Partition & Monitor AI Models Effectively
This course is part of Agentic AI Performance & Reliability Specialization

Instructor: LearningMate
Included with
Recommended experience
What you'll learn
Partition data fairly, monitor models for drift using PSI/KL divergence, and build automated retraining pipelines for reliable, production-grade AI.
Skills you'll gain
- Probability & Statistics
- Model Deployment
- Data Preprocessing
- Time Series Analysis and Forecasting
- Data Integrity
- Continuous Monitoring
- MLOps (Machine Learning Operations)
- Anomaly Detection
- Data Maintenance
- Artificial Intelligence and Machine Learning (AI/ML)
- Model Evaluation
- Artificial Intelligence
- Statistical Methods
- Machine Learning
Details to know

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There are 2 modules in this course
The course begins by immediately establishing the real-world stakes of model reliability. We want to capture the learner's interest by demonstrating that model maintenance is not just a technical task, but a critical business function that prevents costly and high-profile failures. This module addresses the foundational step of any reliable modeling workflow: creating fair and unbiased datasets. Learners will discover why standard random splits can be misleading, particularly in time-series contexts. They will learn to implement robust partitioning strategies that prevent data leakage and ensure that a model's performance during testing is a true indicator of its performance in the real world.
What's included
2 videos1 reading1 assignment1 ungraded lab
This module transitions from pre-deployment validation to post-deployment reality. Learners will explore why a model's performance naturally degrades over time due to "drift." They will learn to quantify this drift using statistical metrics like PSI and KL divergence and design an automated system that monitors model health and triggers retraining before performance issues impact the business.
What's included
2 videos1 reading2 assignments
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