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Course Schedule - Spring 2024

What we will discuss/do in class What to prepare (before class)
Week 1 Introduction and setting up the Python environment
Week 2 Pandas Data Frames and NumPy arrays From “Python for Data Analysis,” read Chapter 5, Section 4.1 and Appendix A.
Week 3 Describing Data and Feature Scaling/Plotting From “Python for Data Analysis,” read Sections 9.1 and 9.2
Week 4 Introduction to modeling overview: targets/features/regression vs classification; testing data versus training data; idea of hyperparameters, Ordinary Least Squares
Week 5 Model Validation and Regularization From “Python for Data Analysis,” read Sections 13.1
Week 6 Spring Break
Week 7 Q/A and Review for the Midterm
Week 8 Patterns in High Dimensional Data, Principal Component Analysis, and T-stochastic Neighbor Embeddings
Week 9 Classification Problems, Logistic Regression, Decision Trees and Random Forests
Week 10 Clustering Algorithms
Week 11 Q/A and Review

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