ML: Build, Train, Justify Models gives learners a practical, end-to-end experience in turning real business problems into well-framed machine learning tasks, training multiple model families, and justifying model choices using bias–variance reasoning. Through short videos, hands-on exercises, and a Coursera Lab environment, learners practice reading product specifications, identifying the correct ML task, and building reproducible modeling workflows with APIs and experiment tracking. They train logistic regression, random forest, and gradient boosting models on tabular data, compare model behavior across repeated splits, and learn how to write clear, evidence-based recommendations. By the end, learners can confidently map business needs to ML tasks, train and evaluate diverse algorithms, and select models based on stability, interpretability, and performance rather than guesswork.
ML: Build, Train, Justify Models gives learners a practical, end-to-end experience in turning real business problems into well-framed machine learning tasks, training multiple model families, and justifying model choices using bias–variance reasoning. Through short videos, hands-on exercises, and a Coursera Lab environment, learners practice reading product specifications, identifying the correct ML task, and building reproducible modeling workflows with APIs and experiment tracking. They train logistic regression, random forest, and gradient boosting models on tabular data, compare model behavior across repeated splits, and learn how to write clear, evidence-based recommendations. By the end, learners can confidently map business needs to ML tasks, train and evaluate diverse algorithms, and select models based on stability, interpretability, and performance rather than guesswork.
涵盖的内容
8个视频4篇阅读材料4个作业1个非评分实验室
显示有关单元内容的信息
8个视频•总计38分钟
Welcome and Introduction•3分钟
How to Read a Product Spec Through an ML Lens•4分钟
ML Task Families Explained Simply•4分钟
Training Models Using Consistent APIs•5分钟
Demo: Train Logistic Regression, Random Forest, and Linear SVM•10分钟
Understanding the Bias–Variance Trade-Off•5分钟
Demo: Compare Random Forest vs. Gradient Boosting Across Splits•3分钟
Congratulations and Continuous Learning Journey•4分钟
4篇阅读材料•总计25分钟
From Business Problem to ML Task: A Framing Guide•6分钟
Why Machine Learning Projects Fail — and How to Make Sure They Don’t•6分钟
Data Leakage•6分钟
Single estimator versus bagging: bias-variance decomposition•7分钟
4个作业•总计67分钟
Hands-On Activity: Frame the ML Task for a Factory Productivity Monitoring Feature•20分钟
Hands-On Activity: Exploring Multiple ML Models for Worker Productivity with a Consistent Workflow •20分钟
Practice Quiz: Model Training Patterns and Evaluation•7分钟
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