Optimize AI: Build & Evaluate Predictive Models
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Optimize AI: Build & Evaluate Predictive Models
This course is part of Train, Tune, & Ship: End-to-End Machine Learning Engineering Specialization
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March 2026
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There is 1 module in this course
This short course helps you build and evaluate predictive models using supervised and unsupervised techniques. You will practice training algorithms with scikit-learn, explore how cross-validation affects model reliability, and analyze performance metrics like accuracy and F1 to make data-driven improvements. Instead of relying on guesswork, youβll learn how to iterate systematically so your models meet defined performance targets. Through hands-on labs and guided coaching, you will build logistic-regression and clustering models, apply 5-fold cross-validation, and refine features until your model performs at the level you need. By the end, you will be able to apply these workflows to real predictive modeling tasks in retail and credit-risk contexts.
This short course helps you build and evaluate predictive models using supervised and unsupervised techniques. You will practice training algorithms with scikit-learn, explore how cross-validation affects model reliability, and analyze performance metrics like accuracy and F1 to make data-driven improvements. Instead of relying on guesswork, youβll learn how to iterate systematically so your models meet defined performance targets. Through hands-on labs and guided coaching, you will build logistic-regression and clustering models, apply 5-fold cross-validation, and refine features until your model performs at the level you need. By the end, you will be able to apply these workflows to real predictive modeling tasks in retail and credit-risk contexts.
What's included
7 videos2 readings5 assignments
7 videosβ’Total 35 minutes
- Welcome and What Youβll Learnβ’4 minutes
- Supervised vs. Unsupervised Modeling: When to Use Eachβ’5 minutes
- Walkthrough: Training Logistic Regression and K-Means in scikit-learnβ’8 minutes
- Why Metrics Drive Better Modelingβ’4 minutes
- Interpreting Accuracy, Precision, Recall, and F1β’7 minutes
- Demo: Interaction Features Improve F1β’4 minutes
- Congratulations and Continuous Learning Journeyβ’3 minutes
2 readingsβ’Total 20 minutes
- How Cross-Validation Improves Model Reliabilityβ’10 minutes
- Feature Engineering Fundamentals: Transform, Combine, Improveβ’10 minutes
5 assignmentsβ’Total 64 minutes
- Graded Quiz: Build, Validate, and Improve a Predictive Modelβ’20 minutes
- Hands-On Activity: Train Two Models and Run 5-Fold CVβ’15 minutes
- Practice Quiz: Model Fit Checkβ’7 minutes
- Hands-On Activity: Improve a Modelβs F1 Score with New Featuresβ’15 minutes
- Practice Quiz: Fix the Modelβ’7 minutes
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