/LEAPCourse-Climate-Pred-Challenges

A project-based learning course where teams of climate science and data science students collaborate to create machine learning predictive models for challenges inspired by LEAP's research

Primary LanguageJupyter NotebookGNU General Public License v3.0GPL-3.0

LEAP Education

Climate Prediction Challenges

Spring 2022 (Syllabus)

A project-based learning course where teams of climate science and data science students collaborate to create machine learning predictive models for challenges inspired by LEAP's research


Project cycle 1: Jupyter Notebook for Exploratory Data Analysis

(starter codes)

Week 1 (Jan 18)

Week 2 (Jan 25)

Week 3 (Feb 1)

  • Presentation and submission instruction (Zheng)
  • Team lightning shares
  • Discussion and Q&A

Week 4 (Feb 8)

  • Project 1 presentations

Shortcuts: Shortcuts: Project 1 | Project 3

Project cycle 2: Physics-Informed Machine Learning

(starter codes)

Week 4 (Feb 8)

  • Project 2 starts.
  • Introduction to Project 2 (McKinley and Zheng)

Week 5 (Feb 15)

Week 6 (Feb 22)

Week 7 (Mar 1)

  • Discussion and Q&A

Week 8 (Mar 8)

  • Project 2 presentations

Shortcuts: Project 1 | Project 2

Project cycle 3: Predictive Modeling

(starter codes)

Week 9 (Mar 22)

Week 10 (Mar 29)

Week 11 (Apr 5)

  • Q&A on starter codes (Xiaoshu Zhao)
  • Discussion of research ideas

Week 12 (Apr 12)

Week 13 (Apr 19)

  • Q&A

Week 14 (Apr 26)

  • Project 3 submission and presentations
Shortcuts: Shortcuts: Project 1 | Project 3