blackmarblepy

Nighttime Lights Processor

A Python package providing tools to work with NASA's global nighttime lights data from Black Marble project

Georeferenced Rasters and Statistics of Nightlights from NASA Black Marble

GitHub

32 stars
10 watching
7 forks
Language: Jupyter Notebook
last commit: 17 days ago
Linked from 1 awesome list

blackmarbledatapartnershipnasanasa-datanasa-earth-datanightlightsnighttime-lightsraster-dataviirsworldbankzonal-statistics

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
makepath/xarray-spatial A Python library for efficient raster analysis and processing of spatial data 843
nmileva/starfm4py A Python implementation of a spatiotemporal image fusion algorithm 131
nkarasiak/museotoolbox A Python library for simplifying raster processing and promoting spatial cross-validation in machine learning 35
blacktwin/jbops Custom Plex scripts and Tautulli integration for automating media playback and notification management. 1,710
jobovy/galpy Software for simulating and analyzing galactic dynamics using numerical methods. 228
mcdallas/wallstreet A Python library providing real-time stock and option data analysis tools 1,375
blaylockbk/synopticpy Converts Synoptic's Weather API data into Polars DataFrames for Python analysis. 50
arthur-e/unmixing Interactive tools for spectral mixture analysis of multispectral raster data 108
matrix-profile-foundation/matrixprofile A Python library implementing matrix profile algorithms for time series data mining tasks 362
bmabey/pyldavis Software for interactive visualization of topic models from text data 1,805
cgre-aachen/gemgis A Python-based library for simplifying access to spatial data processing for geological modeling and subsurface data analysis. 261
astropy/astroquery Tools to access online astronomical data from various web services 706
m3works/metloom Provides tools and methods for collecting, managing, and analyzing meteorological data from various sources 16
mmore500/teeplot Automates data visualization output with descriptive filenames. 11
coejoder/golem-parallel-matplotlib This project performs statistical analyses on circadian rhythm data using parallel processing to improve efficiency and speed 1