Artificial Intelligence for Earth System Science Summer School 2020
9:00 am – 5:00 pm MDT
The AI4ESS Summer School was held virtually June 22-26, 2020 by the National Center for Atmospheric Research (Boulder, Colorado, USA).
***Due to COVID-19 travel restrictions, the AI4ESS summer school was held virtually.***
Our schedule is in Mountain Daylight Time (Denver, Colorado, USA). Please use a time zone converter if you are unsure what time it equals to in your own time zone.
Follow Along with the Hackathon
If you are unable to participate in the hackathon, you may follow along with the problems on your own with the Google colab links in GitHub. Links to the completed team notebooks are available in GitHub.
Description
The AI4ESS Summer School is a week long interactive course covering essential and cutting edge topics in artificial intelligence, machine learning, and deep learning that are relevant for Earth System Science problems. Each morning, students will participate in lectures from leading researchers at the intersection of AI and ESS on AI fundamentals, ESS AI applications, and emerging methods. Afternoons will feature interactive breakout sessions where students will work in teams to solve challenge problems with real Earth System data and the AI techniques they have studied during the week. There will also be opportunities to network with the instructors and other students and present a poster about your research.
Goals
The goals of the summer school are as follows:
- Learn about the fundamentals of data processing, machine learning and deep learning algorithms, evaluation, and interpretation.
- See how machine learning systems have been developed for a range of Earth System Science applications.
- Develop hands-on experience with machine learning techniques covered in the course on real-world Earth System Science datasets.
- Investigate new and emerging methods for ESS machine learning.
- Network with fellow students and instructors.
Program
Here is the summer school agenda.
Links to slides and recordings are at the bottom of this page.
Recommended Resources
Please see this document for recommended reading before the summer school.
Please see this document for other resources, including events and books recommended by our speakers.
Confirmed Instructors
Amy McGovern, University of Oklahoma
Chaopeng Shen, Penn State
Claire Monteleoni, University of Colorado Boulder
David Hall, NVIDIA
David John Gagne, NCAR
Dorit Hammerling, Colorado School of Mines
Imme Ebert-Uphoff, Colorado State University/CIRA
Jebb Stewart, NOAA ESRL
Karthik Kashinath, Lawrence Berkeley National Laboratory
Katie Dagon, NCAR
Mike Pritchard, UC Irvine
Mustafa Mustafa, Lawrence Berkeley Lab
Pierre Gentine, Columbia University
Ryan Lagerquist, University of Oklahoma
Sue Ellen Haupt, NCAR
Certificate of Participation
If you would like a certificate of participation, please email taysia@ucar.edu. You must have registered for AI4ESS to receive a certificate, even if just for lectures.
Cost
There will be no registration fee for the summer school.
Summer School Program Coordinators
David John Gagne, NCAR
Karthik Kashinath, Lawrence Berkeley National Laboratory
Rich Loft, NCAR
Please direct questions about the program to David John Gagne (dgagne@ucar.edu)
Summer School Administrator
Taysia Peterson (taysia@ucar.edu)
Code of Conduct
UCAR and NCAR are committed to providing a safe, productive, and welcoming environment for all participants in any conference, workshop, field project or project hosted or managed by UCAR, no matter what role they play or their background. This includes respectful treatment of everyone regardless of gender, gender identity or expression, sexual orientation, disability, physical appearance, age, body size, race, religion, national origin, ethnicity, level of experience, political affiliation, veteran status, pregnancy, genetic information, as well as any other characteristic protected under state or federal law.
All participants (and guests) are required to abide by this Code of Conduct. This Code of Conduct is adapted from the one adopted by AGU, complies with the new directive from the National Science Foundation (NSF) and applies to all UCAR-related events, including those sponsored by organizations other than UCAR but held in conjunction with UCAR events, in any location throughout the world.
Here is the full Code of Conduct.
Sponsored by
Cloud Computing
Presentation Slides
If you re-use any of the follow material, you are agreeing to acknowledge the authors of the presentations.
Monday, June 22, 2020
Building a Strong Foundation: Defining ML Problems and Preprocessing - David John Gagne - NCAR
Machine Learning Fundamentals - Dorit Hammerling - Colorado School of Mines
Decision Trees and Ensembles - Ryan Lagerquist - University of Oklahoma
Hackathon Intro - David John Gagne - NCAR
Tuesday, June 23, 2020
Convolutional Neural Networks - Karthik Kashinath - Lawrence Berkeley National Laboratory
Recurrent Neural Networks and LSTMs - Chaopeng Shen - Penn State University
Deep Learning Architectures - David Hall - NVIDIA
Wednesday, June 24, 2020
ML in Weather Forecasting Systems - Sue Ellen Haupt - NCAR
ML for Segmentation of Atmospheric Phenomena - Jebb Stewart - NOAA ESRL
ML Emulators in Land Surface Models - Katie Dagon - NCAR
Thursday, June 25, 2020
Peering Inside the Black Box of Machine Learning for Earth Science - Part 1 - Amy McGovern - University of Oklahoma
Peering Inside the Black Box of Machine Learning for Earth Science - Part 2 - Imme Ebert-Uphoff - Colorado State University/CIRA
ML Parameterization - Mike Pritchard - UC Irvine
Friday, June 26, 2020
Generative Models - Mustafa Mustafa - Lawrence Berkeley National Laboratory
Physics-Guided ML - Pierre Gentine - Columbia University
Deep Unsupervised Learning for Climate Applications - Claire Monteleoni - University of Colorado Boulder
GOES - Team Slides
GECKO - Team Slides
ELNINO - Team Slides
HOLODEC - Team Slides
Presentation Recordings
When available, they will be posted individually below and added to this YouTube playlist.
Monday, June 22, 2020
AI4ESS Summer School Intro - Rich Loft, NCAR
Building a Strong Foundation: Defining ML Problems and Preprocessing - David John Gagne - NCAR
Machine Learning Fundamentals - Dorit Hammerling - Colorado School of Mines
Decision Trees and Ensembles - Ryan Lagerquist - University of Oklahoma
Hackathon Intro - David John Gagne - NCAR
Tuesday, June 23, 2020
Convolutional Neural Networks - Karthik Kashinath - Lawrence Berkeley National Laboratory
Recurrent Neural Networks and LSTMs - Chaopeng Shen - Penn State University
Deep Learning Architectures - David Hall - NVIDIA
Hackathon Update - David John Gagne - NCAR
Wednesday, June 24, 2020
ML in Weather Forecasting Systems - Sue Ellen Haupt - NCAR
ML for Segmentation of Atmospheric Phenomena - Jebb Stewart - NOAA ESRL
ML Emulators in Land Surface Models - Katie Dagon - NCAR
Hackathon Update - David John Gagne, NCAR
Thursday, June 25, 2020
Peering Inside the Black Box of Machine Learning for Earth Science - Part 1 - Amy McGovern - University of Oklahoma
Peering Inside the Black Box of Machine Learning for Earth Science - Part 2 - Imme Ebert-Uphoff - Colorado State University/CIRA
ML Parameterization - Mike Pritchard - UC Irvine
Hackathon Update - David John Gagne, NCAR
Friday, June 26, 2020
Generative Models - Mustafa Mustafa - Lawrence Berkeley National Laboratory
Physics-Guided ML - Pierre Gentine - Columbia University
Deep Unsupervised Learning for Climate Applications - Claire Monteleoni - University of Colorado Boulder
Hackathon Presentations - Ankur Mahesh (Lawrence Berkeley Lab), David John Gagne, Charlie Becker, Gabrielle Gantos (NCAR)
Summer School Application
Our summer school is in-session. You can watch lectures here: https://operations.ucar.edu/live-AI4ESS