Satellite data processing can be difficult.#

We’re here to help you climb out of that hole!#

This constantly updated collection of Jupyter notebooks is meant to help you get started accessing, visualizing, and analyzing OB.DAAC (Ocean Biology Distributed Archive Center) data products with Python. You can learn from these notebooks either by viewing the code and results on this webpage, or by downloading the notebook files and running them with JupyterLab. If you plan to run any of these notebooks but don’t know how to start, please continue to the next section for information about the Earthdata Cloud and environments in Python. If you are familiar with running our notebooks, feel free to explore the Help Hub’s different sections:

Help Hub Core#

Explore these themes to get essential skills to access, process and visualize data.

Data Basics

Data Access Learn fundamentals of accessing and processing data products.

Data Access and Processing Basics

Visualizations

visualizations Find out how to make visualizations with data from various instruments

Visualizations

Cloud & Atmosphere

Atmosphere Explore atmospheric and cloud data products including aerosol retrievals and trace gases.

Cloud and Atmosphere

Land Surface

Land Work with terrestrial data products for monitoring vegetation and land cover.

Land

Ocean

Ocean Dive deeper into ocean data products.

Ocean

SeaDAS - OCSSW Toolbox#

SeaDAS Videos

OCSSW

Learn how to use the official software of the OB.DAAC for analysis and visualization of remote sensing data with these videos.

SeaDAS GUI

SeaDAS-OCSSW Notebooks

SeaDAS

Use this series of Jupyter Notebooks to learn to use the SeaDAS-OCSSW tools.

About SeaDAS - OCSSW

Past trainings & events#

Find the tutorials from past trainings and events

Past Trainings and Events