kerko
localtileserver
kerko | localtileserver | |
---|---|---|
1 | 1 | |
280 | 279 | |
2.5% | - | |
8.4 | 8.2 | |
16 days ago | about 1 month ago | |
Python | Python | |
GNU General Public License v3.0 only | MIT License |
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kerko
localtileserver
-
Rust Local Tile Server to display Geotiffs layer ?
We are currently using this project. I've been looking for someting similar in Rust but couldn't find anything on my own.
What are some alternatives?
RecoverPy - Interactively find and recover deleted or :point_right: overwritten :point_left: files from your terminal
Solara - A Pure Python, React-style Framework for Scaling Your Jupyter and Web Apps
Zappa - Serverless Python
martin - Blazing fast and lightweight PostGIS, MBtiles and PMtiles tile server, tile generation, and mbtiles tooling.
bibtex2style - bibtex2style is a script that takes .bib file as an input and produces an .xlsx file with entries processed by biblatex with an according style (like `gost`). It also respects bold an italics fonts!
google-maps-at-88-mph - Google Maps keeps old satellite imagery around for a while – this tool collects what's available for a user-specified region in the form of a GIF.
Pste - Just a simple file hosting application inspired by the likes of pomf.se and teknik.io.
automamtically-load-environment-variables-in-flask - This script automatically loads environment variables in flask.
felicette - Satellite imagery for dummies.
starlink-coverage - Calculating some statistics about Starlink satellites
awesome-spectral-indices - A ready-to-use curated list of Spectral Indices for Remote Sensing applications.
leafmap - A Python package for interactive mapping and geospatial analysis with minimal coding in a Jupyter environment