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GDAL wheels for python and C/C++ projects (Linux only)
To use precompiled wheels:
1) go to releases (Files) and download tarball needed;
2) install it with command:
python3 -m pip install /path/to/wheel.whl
Or simply use URL in pip:
python3 -m pip install https://sourceforge.net/projects/gdal-wheels-for-linux/files/GDAL-3.1.4-cp37-cp37m-manylinux_2_5_x86_64.manylinux1_x86_64.whl/download
URL may be found under "View details" button (i)
To use GDAL in C/C++ project you need to link gdal lib AND all libs located at dir GDAL.libs (usually this folder resides inside python site-packages)
To compile your own wheels see information given at forefather project: https://github.com/youngpm/gdalmanylinux
Usually this is done via command `make wheels`
GDAL wheels for Windows are provided by Christoph Gohlke at https://www.lfd.uci.edu/~gohlke/pythonlibs/#gdal
Built with PROJ (proj.db is included), GEOS, EXPAT.
...
facilitating predictions of parameters using statistical models
streamline the DSM process in ArcGIS/Numpy/GDAL/Python using
Sampling, Statistical elaboration, Prediction
to allow the application of extended statistical models generated by the CUBIST (TM) or JMP (TM) software to a set of auxiliary input parameters, thereby bypassing the need to
i) manually calculate the equations using Raster calculator;
ii) use a grid-to-point conversion process prior to applying the prediction model in the statistical software itself and then a point-to-grid conversion process.
View and navigate on raster map with GPS. I want to use it in offroad expeditions. Import oziexplorer raster map. Use GDAL readable format, geotiff is preferred. Import/export data to GPX format. Using python scripts for core AI tasks.