back to home

opengeos / NASA-Earth-Data

A comprehensive list of NASA Earth science data products

View on GitHub
149 stars
18 forks
1 issues
Jupyter NotebookPython

AI Architecture Analysis

This repository is indexed by RepoMind. By analyzing opengeos/NASA-Earth-Data in our AI interface, you can instantly generate complete architecture diagrams, visualize control flows, and perform automated security audits across the entire codebase.

Our Agentic Context Augmented Generation (Agentic CAG) engine loads full source files into context on-demand, avoiding the fragmentation of traditional RAG systems. Ask questions about the architecture, dependencies, or specific features to see it in action.

Source files are only loaded when you start an analysis to optimize performance.

Embed this Badge

Showcase RepoMind's analysis directly in your repository's README.

[![Analyzed by RepoMind](https://img.shields.io/badge/Analyzed%20by-RepoMind-4F46E5?style=for-the-badge)](https://repomind.in/repo/opengeos/NASA-Earth-Data)
Preview:Analyzed by RepoMind

Repository Overview (README excerpt)

Crawler view

NASA-Earth-Data Introduction This repository provides a comprehensive list of NASA's Earth science data products available for research and analysis. The data is managed and maintained by NASA's Earth Science Data Systems (ESDS) Program, which ensures the accessibility and usability of the data. You can access the NASA Earth science data through the official Earthdata website at earthdata.nasa.gov. To download and access the data, you will need to create an Earthdata login. You can register for an account at urs.earthdata.nasa.gov. The repository includes a curated list of NASA Earth science data products compiled using the Python package called earthaccess. The list is available in two formats: Tab Separated Values (TSV) and JSON. Usage To access the list of NASA Earth data, you can use the following links: • nasa_earth_data.tsv: This is the TSV file format, suitable for reading data into Pandas DataFrame or other tabular data processing tools. • nasa_earth_data.json: This is the JSON file format, which provides a structured representation of the data. Here is an example of how to read the TSV file into a Pandas DataFrame using Python: Here is an example of how to read the TSV file into a DataFrame using R: There are over 9,000 NASA Earth science data products available. The list is being updated daily. Feel free to explore the data and utilize it for your research, analysis, and Earth science projects. Related Projects • A list of open datasets on AWS: aws-open-data • A list of open geospatial datasets on AWS: aws-open-data-geo • A list of open geospatial datasets on AWS with a STAC endpoint: aws-open-data-stac • A list of STAC endpoints from stacindex.org: stac-index-catalogs • A list of geospatial datasets on Microsoft Planetary Computer: Planetary-Computer-Catalog • A list of geospatial datasets on Google Earth Engine: Earth-Engine-Catalog • A list of geospatial datasets on NASA's Common Metadata Repository (CMR): NASA-CMR-STAC • A list of geospatial data catalogs: geospatial-data-catalogs