Welcome - Data 100: Principles and Techniques of Data Science

Course Notes

Contents


  1. Introduction
  2. Pandas
  3. Data Cleaning and EDA
  4. Regular Expressions
  5. Visualization
  6. Sampling
  7. Modeling & SLR (Simple Linear Regression)
  8. Constant Model, Loss, and Transformations
  9. Ordinary Least Squares
  10. sklearn and Gradient Descent
  11. Feature Engineering
  12. Cross Validation and Regularization
  13. Random Variables
  14. Estimators, Bias, and Variance
  15. Parameter Inference and Bootstrapping
  16. SQL
  17. Logistic Regression