Skip to content

remi-sudo/Classes

 
 

Repository files navigation

Class Schedule

This repository contains the folders with the content of each class. Please check them for the references of each meeting. The schedule goes as follows (always 10-12AM in room R42.3.103)

Session Date Discussant Topic References
Session 1 11/02/2020 Glenn Reproducible research, automation and introduction to the course Slides / Gentzkow and Shapiro
Session 2 18/02/2020 Fabrizio Jupyter (Anaconda), Git, GitHub, GitHub Desktop Slides / QuantEcon
Session 3 25/02/2020 Federico Variables, numbers, strings, lists, functions, tuples, sets, dictionaries, lists comprehension, for and while loops, if statements, other logical operators Udemy - Section 1:"Intro to Python" and Section 2:"Python fundamentals", QuantEcon - An Introductory Example and Python Essentials
Session 4 03/03/2020 Classes, handling errors (including try and except), files Udemy - Section 4:"Object-Oriented Programming with Python", Section 5:"Errors in Python", Section 6:"Files in Python", QuantEcon - OOP I, Building Classes and Debugging
Session 5 10/03/2020 Moritz APIs Udemy - Section 16:"Interacting with APIs with Python"
Session 6 17/03/2020 Charles Web Scraping, regular expressions, Selenium Udemy - Section 10:"Advanced Python Development", Section 11:"Web Scraping with Python", Section 12:"Browser Automation with Selenium"
Session 7 24/03/2020 Cristina & Remi Pandas QuantEcon - Pandas and QuantEcon- DataScience
Homework Easter Break
Session 8 21/04/2020 Discussion Easter homework
Session 9 28/04/2020 Numpy and Numba QuantEcon - Numpy and QuantEcon - Numba
Session 10 12/05/2020 Scipy QuantEcon - Scipy and Scipy.optimize
Session 11 19/05/2020 Visualisation (matplotlib) QuantEcon- Matplotlib
Session 12 26/05/2020 Intro to Machine Learning QuantEcon DataScience and TBD

About

This repository contains codes and materials of each meeting.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

  • Jupyter Notebook 99.9%
  • Stata 0.1%