Skip to content

Combined repository for final tutorial material from 2019 ICESat-2 HackWeek at the Univeristy of Washington

Notifications You must be signed in to change notification settings

cflorentine/ICESat2_hackweek_tutorials

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

9 Commits
 
 
 
 

Repository files navigation

ICESat-2 Hackweek Tutorials

Combined repository for final tutorials presented during the ICESat-2 HackWeek at the Univeristy of Washington on June 17-21, 2019

Background

The ICESat-2 Cryospheric Science Hackweek was a 5-day hackweek held at the University of Washington. Participants learned about technologies used to access and process ICESat-2 data with a focus on the cryosphere. Mornings consisted of interactive lectures/tutorials, and afternoon sessions involved facilitated exploration of datasets and hands-on software development.

The tutorials were largely developed by volunteer instructors. Each tutorial was prepared and distributed as a separate repository under the ICESat-2 Hackweek Github organization. At the beginning of each tutorial, participants cloned the repository and interactively worked through the material with the instructor.

This ICESat2_hackweek_tutorials repository was created to centralize the final content from individual tutorial repositories and to provide a snapshot "release" of the material presented during the hackweek with a DOI for distribution to the larger community. Some of these tutorials may continue to evolve in individual repositories (see links below).

Tutorials

01. Overview of the ICESat-2 mission (slides)

Tom Neumann, Ron Kwok, Ben Smith
https://github.com/ICESAT-2HackWeek/intro_ICESat2

02. Introduction to Open Science and Reproducible Research

Fernando Perez
https://github.com/ICESAT-2HackWeek/intro-jupyter-git

03. Access and Customize ICESat-2 Data via NSIDC API

Amy Steiker, Bruce Wallin
https://github.com/ICESAT-2HackWeek/data-access

04. Intro to HDF5 and ICESat-2 Data Files

Fernando Paolo
https://github.com/ICESAT-2HackWeek/intro-hdf5

05. Clouds and ICESat-2 Data Filtering

Ben Smith
https://github.com/ICESAT-2HackWeek/Clouds_and_data_filtering

06. Gridding and Filtering of ICESat/ICESat-2 Elevation Change Data

Johan Nilsson
https://github.com/ICESAT-2HackWeek/gridding

07. ICESat-2 for Sea Ice

Alek Petty
https://github.com/ICESAT-2HackWeek/sea-ice-tutorials

08. Geospatial Data Exploration, Analysis, and Visualization

David Shean
https://github.com/ICESAT-2HackWeek/geospatial-analysis

09. Correcting ICESat-2 data and related applications

Maya Becker, Susheel Adusumilli
https://github.com/ICESAT-2HackWeek/data-correction

10. Numerical Modeling

Daniel Shapero
https://gitlab.com/danshapero/icesat-2019-06-20

How to reproduce and run

These tutorials were deployed on a JupyterHub instance running in the cloud. For information how to reproduce on your own system, see the following.

00. Preliminary material

Anthony Arendt
https://icesat-2hackweek.github.io/preliminary/

11. JupyterHub Environment for Icesat-2 Hackweek

Scott Henderson
https://github.com/ICESAT-2HackWeek/jupyterhub-info.

Citation and License

Most of the tutorial content is original material prepared by volunteer instructors, all of whom have day jobs as scientists, engineers, and educators. While this material is not necessarily appropriate for a peer-reviewed journal article publication, we are releasing with a digital object identifier (DOI). If you find these tutorials useful, or you adapt some of the underlying source code, we request that you cite as:

[insert citation information after Zenodo release]

The content of this project is licensed under the Creative Commons Attribution 3.0 Unported license, and the underlying source code used to format and display that content is licensed under the MIT license.

About

Combined repository for final tutorial material from 2019 ICESat-2 HackWeek at the Univeristy of Washington

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 100.0%