Scalable and Computationally Reproducible Approaches to Arctic Research ...

This course curriculum is one of three that offered by the Arctic Data Center, covering fundamentals of open data sharing, reproducible research, ethical data use and reuse, and scalable computing for reusing large data sets. This 5-day in-person course provides researchers with an introduction to a...

Full description

Bibliographic Details
Main Authors: Clark, S. Jeanette, Jones, Matthew B., Csik, Samantha, García, Carmen Galaz, Mecum, Bryce, Haycock-Chavez, Natasha, Virlar-Knight, Daphne, Cohen, Juliet, Liljedahl, Anna
Format: Book
Language:unknown
Published: Arctic Data Center 2023
Subjects:
Online Access:https://dx.doi.org/10.18739/a2qf8jm2v
https://learning.nceas.ucsb.edu/2023-03-arctic/
Description
Summary:This course curriculum is one of three that offered by the Arctic Data Center, covering fundamentals of open data sharing, reproducible research, ethical data use and reuse, and scalable computing for reusing large data sets. This 5-day in-person course provides researchers with an introduction to advanced topics in computationally reproducible research in python, including software and techniques for working with very large datasets. This includes working in cloud computing environments, docker containers, and parallel processing using tools like parsl and dask. The workshop also covers concrete methods for documenting and uploading data to the Arctic Data Center, advanced approaches to tracking data provenance, responsible research and data management practices including data sovereignty and the CARE principles, and ethical concerns with data-intensive modeling and analysis. ...