Skip to content

Teaching repo for Applied Data Science @ Columbia, a project-based course for data science skills (statistical thinking, machine learning, data engineering, team work, presentation, endurance of frustration, etc).

Notifications You must be signed in to change notification settings

zzzaaannn/ADS_Teaching

 
 

Repository files navigation

Stat GR4243/5243 Applied Data Science

Fall 2019 - Teaching Materials (Syllabus)


Project cycle 1: (Individual) R notebook for exploratory data analysis

(starter codes)

Week 1 (Sep 4/5)

Week 2 (Sep 11/12)

Week 3 (Sep 18/19)

  • Project 1 presentations.

Project cycle 2: Shiny App Development

Week 3 (Sep 18/19)

Week 4 (Sep 25/26)

Week 5 (Oct 2/3)

Week 6 (Oct 9/10)

  • Project 2 presentations

Project cycle 3: Predictive Modeling

Week 6 (Oct 9/10)

Week 7 (Oct 16/17)

Week 8 (Oct 23/24)

Week 9 (Oct 30/Nov 1)

  • Project 3 submission and presentations

Project cycle 4: Algorithm implementation and evaluation

Week 9 (Oct 30/Nov 1)

Weeks 10 (Nov 6/7)

Weeks 11 (Nov 13/14)

Weeks 12 (Nov 20/21)

  • Project 4 presentations

Project cycle 5:

Weeks 12 (Nov 20/21)

  • Project 5 discussions

Thanksgiving Break

Week 13 (Dec 4/5)

  • Project 5 presentations

About

Teaching repo for Applied Data Science @ Columbia, a project-based course for data science skills (statistical thinking, machine learning, data engineering, team work, presentation, endurance of frustration, etc).

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • HTML 100.0%