Teaches the statistical methods that turn data into defensible business decisions. Covers A/B test design and analysis, hypothesis testing, confidence intervals, regression, and the communication of uncertainty. Emphasizes statistical rigor in practice — knowing when results are real, when they are noise, and how to communicate the difference to stakeholders who want certainty.
Levels: Remember · Understand · Apply · Analyze · Evaluate · Create — highest demands most original thinking.
A/B test setup, power analysis, sample size calculation, randomization, metric selection, and knowing when to stop a test.
Selecting and executing appropriate statistical tests, interpreting results correctly, avoiding common pitfalls.
Logistic regression, multicollinearity detection, coefficient interpretation, model validation, and knowing when not to use ML.
Building retention curves, segmenting by meaningful dimensions, detecting subgroup effects hidden in aggregate data.
Translating statistical results into business language with appropriate confidence levels, caveats, and visual representations (error bars, confidence bands, scenario ranges).
A/B Test Analysis Report — Student designs and analyzes a realistic A/B test: documents the experimental design (hypothesis, metric, MDE, power analysis, sample size), conducts the statistical analysis (appropriate test selection, confidence intervals, segment breakdowns), identifies at least one statistical pitfall in the data, and writes a stakeholder-facing summary that communicates results with appropriate uncertainty. Includes Python code (statsmodels/scipy) for all statistical computations and visualizations with error bars.
Statistical computing libraries for hypothesis testing, regression, confidence intervals, and power analysis.
Machine learning library for logistic regression, model validation, and predictive modeling workflows.
Data manipulation and numerical computation for preparing datasets and computing statistical measures.
Visualization libraries for creating charts with error bars, confidence bands, and statistical annotations.
Interactive environment for documenting statistical analyses with code, results, and narrative interpretation.
AI assistant for statistical concept tutoring, methodology review, and code generation with verification.
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