MITx: Fundamentals of Statistics course Syllabus
Full curriculum breakdown — modules, lessons, estimated time, and outcomes.
Overview: This course offers a rigorous, mathematically grounded introduction to statistics, designed to build strong analytical and data-driven decision-making skills. Organized into five core modules, it covers probability, statistical inference, regression, and advanced modeling concepts. With a total time commitment of approximately 12–20 weeks at 6–10 hours per week, learners engage with theoretical foundations and practical applications essential for data science and quantitative fields.
Module 1: Probability Foundations
Estimated time: 30 hours
- Random variables and sample spaces
- Discrete and continuous probability distributions
- Expected value, variance, and moments
- Binomial, geometric, and normal distributions
Module 2: Statistical Inference
Estimated time: 40 hours
- Sampling distributions and the Central Limit Theorem
- Confidence intervals for means and proportions
- Hypothesis testing and p-values
- Interpretation of statistical significance
Module 3: Regression and Data Modeling
Estimated time: 40 hours
- Simple linear regression and least squares
- Correlation and model fit
- Residual analysis and assumptions
- Interpretation of regression coefficients
Module 4: Advanced Statistical Concepts
Estimated time: 30 hours
- Maximum likelihood estimation
- Bias, variance, and trade-offs
- Model evaluation and selection
Module 5: Applications in Data-Driven Decision Making
Estimated time: 20 hours
- Statistical reasoning in research
- Decision-making under uncertainty
- Case studies in engineering, science, and business
Module 6: Final Project
Estimated time: 20 hours
- Analysis of a real-world dataset using inference methods
- Regression modeling and interpretation
- Written report on statistical conclusions and limitations
Prerequisites
- Algebra and functions
- Basic calculus (derivatives and integrals)
- Familiarity with mathematical reasoning and proofs
What You'll Be Able to Do After
- Apply probability theory to model uncertainty
- Construct and interpret confidence intervals
- Perform hypothesis tests and assess significance
- Build and evaluate linear regression models
- Use statistical reasoning for data-informed decisions