Evaluate, Analyze, and Model Performance
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Evaluate, Analyze, and Model Performance
This course is part of Gradient to Production: MLOps & Model Serving Specialization
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March 2026
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There is 1 module in this course
In real-world machine learning work, building a model is only half the job. Knowing how to evaluate it, explain its weaknesses, and defend improvements is what makes your work trustworthy. In this course, you will learn how to evaluate regression and classification models using the right metrics, diagnose where models systematically fail, and determine whether performance differences actually matter.
You will practice selecting RMSE and MAE for reporting housing-price models, analyzing confusion matrices to uncover false-positive patterns in spam filters, and using bootstrapping to test whether AUC improvements are statistically significant. Through short videos, guided coaching conversations, hands-on activities, and an ungraded lab, you will build confidence in interpreting model performance the way it is done on real teams. By the end of the course, you will be able to justify your evaluation choices and make evidence-based model decisions.
In real-world machine learning work, building a model is only half the job. Knowing how to evaluate it, explain its weaknesses, and defend improvements is what makes your work trustworthy. In this course, you will learn how to evaluate regression and classification models using the right metrics, diagnose where models systematically fail, and determine whether performance differences actually matter. You will practice selecting RMSE and MAE for reporting housing-price models, analyzing confusion matrices to uncover false-positive patterns in spam filters, and using bootstrapping to test whether AUC improvements are statistically significant. Through short videos, guided coaching conversations, hands-on activities, and an ungraded lab, you will build confidence in interpreting model performance the way it is done on real teams. By the end of the course, you will be able to justify your evaluation choices and make evidence-based model decisions.
What's included
7 videos3 readings3 assignments1 ungraded lab
7 videosβ’Total 31 minutes
- Why Metrics Matter in Model Evaluation?β’4 minutes
- RMSE vs. MAE for Regression Modelsβ’6 minutes
- Looking Inside the Confusion Matrixβ’5 minutes
- Residual Plots for Regression Diagnosticsβ’4 minutes
- Why Statistical Significance Matters in Model Comparisonβ’4 minutes
- Bootstrapping Metrics Step by Stepβ’6 minutes
- Congratulations and Continuous Learning Journeyβ’3 minutes
3 readingsβ’Total 30 minutes
- Reflecting on Model Performance Metrics β’10 minutes
- Diagnosing Systematic Model Errors with Confusion Matrices and Residual Plots β’10 minutes
- Evaluating Statistical Significance in Automated Model Monitoring β’10 minutes
3 assignmentsβ’Total 50 minutes
- Hands-On Activity: Metric Matching Exerciseβ’15 minutes
- Hands-On Activity: Spam Filter Failure Analysisβ’15 minutes
- Graded Quiz: Interpreting Metrics and Model Improvementsβ’20 minutes
1 ungraded labβ’Total 60 minutes
- End-to-End Model Evaluation Practiceβ’60 minutes
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