Skip to content

kbauhausness/dat-sf-37

 
 

Repository files navigation

SF DS 37 Course Repository

Course materials for General Assembly's Data Science course in San Francisco

Team

Lead Instructor: Nathaniel Tucker

Office hours

  • Nate: Monday at 5pm

All will be held in the student center at GA, 225 Bush Street, SF.

Exit Tickets

Please fill this out at the end of each class!

Unit Projects

Overview

Final Project

Course Project Information

Course Project Examples

Tentative Schedule (dates are fixed, topics will likely change)

Class Topic Due
1 Intro to Data Science
2 Intro to git/pandas
3 Statistics Fundamentals I
4 Statistics Fundamentals II Unit Project 1
5 APIs and Getting Data
6 Linear Regression
7 Linear Regression and Model Fit, Part 2 Unit Project 2
8 k-Nearest Neighbors Final Project 1
9 Logistic Regression
10 Advanced Metrics and Communicating Results
11 Decision Trees and Random Forests Unit Project 3
12 Natural Language Processing Final Project 2
13 Latent Variables and NLP
14 Intro to Time Series Analysis Final Project 2
15 Time Series Modeling Final Project 3
16 Intro to Databases
17 Advancing in Data Science Unit Project 4
18 Wrapping Up and Next Steps Final Project 4
19 Final Project Presentations
20 Final Project Presentations, Part 2 Final Project 5

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%