osmnx-examples
city-street-orientations
osmnx-examples | city-street-orientations | |
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3 | 1 | |
1,460 | 18 | |
- | - | |
7.8 | 0.0 | |
3 days ago | almost 4 years ago | |
Jupyter Notebook | Python | |
MIT License | - |
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osmnx-examples
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Second MYOG project
For the actual printing I used ripstop by the roll custom print service. To render the image to be printed I used an open source too, https://github.com/gboeing/osmnx
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Algorithms for efficiently, and accurately, computing distances on an ellipsoid
IIRC, it can generate graphs that are both unprojected and projected and convert between them, so it might be worth looking into the source code of it if you think that sounds like what you're looking for on the OSMNX GitHub repo
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Mapping the Hidden Patterns of Cities
Geoff Boeing, the original author, provided an iPython notebook so you can run this yourself, but this script a friend of mine wrote may make it a bit simpler to run, if you wanna give it a shot yourself.
city-street-orientations
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Mapping the Hidden Patterns of Cities
Geoff Boeing, the original author, provided an iPython notebook so you can run this yourself, but this script a friend of mine wrote may make it a bit simpler to run, if you wanna give it a shot yourself.
What are some alternatives?
osmnx - OSMnx is a Python package to easily download, model, analyze, and visualize street networks and other geospatial features from OpenStreetMap.
analisis-numerico-computo-cientifico - Análisis numérico y cómputo científico
ijava-binder - An IJava binder base for trying the Java Jupyter kernel on https://mybinder.org/
r5 - Developed to power Conveyal's web-based interface for scenario planning and land-use/transport accessibility analysis, R5 is our routing engine for multimodal (transit/bike/walk/car) networks with a particular focus on public transit
prettymaps - A small set of Python functions to draw pretty maps from OpenStreetMap data. Based on osmnx, matplotlib and shapely libraries.
ppde642 - USC urban data science course series with Python and Jupyter
bulgarian-city-coat-of-arms - Векторни файлове на емблеми и гербове на български градове
r - Using R with Jupyter / RStudio on Binder
landuse_without_buildings - OpenStreetMap: Find residential areas with too few buildings in them
geospatialdatascience - Course materials for: Geospatial Data Science
team-compass - A repository for team interaction, syncing, and handling meeting notes across the JupyterHub ecosystem.