Engineer AI Models: Explain, Tune & Experiment prepares program and project managers to guide AI projects beyond “just working” toward being trusted, explainable, and reproducible. You’ll learn how feature engineering and hyperparameter tuning improve model performance, how explainability methods like SHAP and LIME build stakeholder confidence, and how structured experimentation ensures reliable results. Through real-world scenarios — from boosting fraud detection F1 scores, to presenting credit approval models to risk committees, to planning experiments in Jupyter — you’ll gain the skills to ask the right questions, guide technical teams, and translate complex model outputs into business impact. By the end, you’ll know how to move AI projects from black box to business-ready.

Engineer AI Models: Explain, Tune & Experiment

Engineer AI Models: Explain, Tune & Experiment
This course is part of Managing AI Projects That Ship and Scale Specialization

Instructor: ansrsource instructors
Access provided by IT Education Association
Recommended experience
Skills you'll gain
- Performance Tuning
- Program Management
- Project Management
- Fraud detection
- Technical Communication
- Test Engineering
- Responsible AI
- Model Evaluation
- Test Planning
- Business Analytics
- Research Design
- Performance Metric
- Credit Risk
- Feature Engineering
- Performance Improvement
- Machine Learning Methods
- Performance Analysis
- Jupyter
- Skills section collapsed. Showing 10 of 18 skills.
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December 2025
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There is 1 module in this course
Engineer AI Models: Explain, Tune & Experiment prepares program and project managers to guide AI projects beyond “just working” toward being trusted, explainable, and reproducible. You’ll learn how feature engineering and hyperparameter tuning improve model performance, how explainability methods like SHAP and LIME build stakeholder confidence, and how structured experimentation ensures reliable results. Through real-world scenarios — from boosting fraud detection F1 scores, to presenting credit approval models to risk committees, to planning experiments in Jupyter — you’ll gain the skills to ask the right questions, guide technical teams, and translate complex model outputs into business impact. By the end, you’ll know how to move AI projects from black box to business-ready.
What's included
5 videos3 readings4 assignments
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