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Introduction to Programming for Data Science (201-0-20)

Instructors

Emre Besler

Meeting Info

Annenberg Hall G15: Mon, Wed, Fri 3:00PM - 3:50PM

Overview of class

This course covers essential programming concepts and best practices needed to implement Data Science and Statistical methods as effectively and efficiently as possible. Students will develop the ability to write codes in both Python and R languages.

Learning Objectives

Write, execute, debug and test code in Python and R
Use conditional statements and loops to implement various tasks
Create user-defined and recursive functions to create specialized code blocks
Incorporate the appropriate data structures of a programming language to handle data
Translate a problem from layman terms to a coding problem in Python and R
Incorporate best programming practices for writing efficient code in Python and R
Incorporate best practices for code reproducibility (version control, style guides, and commenting)

Teaching Method

There will be three 50-minute lectures per week. The lectures will mostly include in-class coding with explanatory notes as comments on the script; along with some diagrams to visualize some coding concepts better.

Evaluation Method

Students will be assessed on the learning objectives with:
1) Homework assignments: Students will have six homework assignments to practice and demonstrate the coding techniques taught during class hours.
2) Mid-term exam: Students will have a mid-term exam, where they will be assessed on their Python coding proficiency.
3) Final exam: Students will have a final exam, where they will be assessed on both their Python and R coding proficiencies.

Class Materials (Required)

A Practical Introduction to Python Programming by Brian Heinold

An Introduction to R by Alex Douglas

Class Attributes

Empirical and Deductive Reasoning Foundational Dis
Formal Studies Distro Area