Statistical Thinking & Predictive Modeling
Key Takeaways
Building predictive models using statistical thinking and data analysis
Original Description
Build the analytical skills that turn raw data into decisions leaders can act on. In this course, you will move through a complete decision-intelligence workflow — from exploring and summarizing data to running rigorous statistical tests, building production-ready predictive models, and communicating results to non-technical stakeholders.
You will learn to generate descriptive statistics and visual summaries that reveal data quality issues before they distort your analysis. You will design and execute hypothesis tests, interpret p-values in business terms, and balance Type I and Type II error trade-offs with confidence. In the modeling track, you will build and cross-validate classification models using scikit-learn, handle class imbalance with techniques like SMOTE and class weights, and apply feature-selection methods — including RFE and LASSO — to balance accuracy with interpretability.
The course culminates in an end-to-end customer lifetime value prediction project that integrates every skill into a portfolio-ready deliverable. Whether you are moving into a data analyst, business intelligence, or machine learning role, this course gives you the technical depth and communication skills to stand out.
Watch on External: Coursera ↗
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