![]() ![]() ![]() I've suggested installing from the conda-forge channel ( ) as they are very active in keeping their GDAL builds up to date and making sure they work against a lot of libraries. Installing into a new environment is recommended to avoid conflicts with other packages and make sure the environmental variables required are set. ![]() Then activating it as shown when the command finishes. ![]() Once set up GDAL can be installed into a new environment using: conda create -n gdal_env -c conda-forge gdal You can get the full Anaconda distribution from: which contains a lot of Python packages aimed at 'data science' or a minimal installation from Īs part of the installation it will prompt you to add to the main path (so it is available from any terminal). On the other hand if you want to use Python in combination with a number of open-source remote sensing and GIS packages (GRASS, QGIS etc.,) OSGeo4W is probably the better option. If you are going to be doing a lot of work using GDAL with other Python packages (scipy, pandas, scikit-learn etc.,) this might be a better option than OSGeo4W. Another option is to install the Anaconda Python distribution which has packages for GDAL. ![]()
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |