AS OF 2023-04-04, THIS REPOSITORY IS NO LONGER MAINTAINED. FROM NOW, THE C++ SOURCES OF GDALCUBES WILL BE FURTHER DEVELOPED AS PART OF THE R PACKAGE REPOSITORY.
gdalcubes is a library to represent collections of Earth Observation (EO) images as on demand data cubes (or multidimensional arrays). Users define data cubes by spatiotemporal extent, resolution, and spatial reference system and let gdalcubes read only relevant parts of the data and simultaneously apply reprojection, resampling, and cropping (using gdalwarp). Data cubes may be simply exported as NetCDF files or directly streamed chunk-wise into external software such as R or Python. The library furthermore implements simple operations to reduce data cubes over time, to apply pixel-wise arithmetic expressions, and to filter by space, time, and bands.
gdalcubes is not a database, i.e., it does not need to store additional copies of the imagery but instead
simply links to and indexes existing files / GDAL datasets. Using GDAL virtual file systems, it can directly access
data in cloud storage and run computations in distributed environments with gdalcubes_server
and Docker.
The library is written in C++ and includes a basic command line interface and an R package. A python package is planned for the future. gdalcubes is licensed under the MIT license.
- Create image collections that link to and index existing imagery from local files or cloud storage
- Read multitemporal, multispectral image collections as on demand data cubes with desired spatiotemporal resolution, extent, and map projection
- Abstract from complexities in the data like different map projections for adjacent images and different resolutions for different bands
- Stream chunks of data cubes to external programs (e.g. R, python)
- Scale computations on data cubes in distributed environments with
gdalcubes_server
and Docker (yet experimental)
gdalcubes uses CMake and can be compiled with a typical CMake workflow as listed below.
git clone https://github.com/appelmar/gdalcubes && cd gdalcubes
mkdir -p build
cd build
cmake -DCMAKE_BUILD_TYPE=Release ../ -DCMAKE_INSTALL_PREFIX=/usr
make
sudo make install
You might need to install a few libraries before compiling gdalcubes successfully. On Ubuntu apt install libgdal-dev libnetcdf-dev libcurl4-openssl-dev libsqlite3-dev
will install all libraries needed to compile
the core gdalcubes library. If you want to compile the command line interface, you will furthermore need apt install libboost-program-options-dev libboost-system-dev
and running gdalcubes as a server additionally requires apt install libcpprest-dev
.
This repository includes a Docker image which you can use either to run the gdalcubes command line interface interactively
or to run gdalcubes_server
as a service for distributed processing. The commands below demonstrate how to build the image and run a container.
Notice that the image builds GDAL from sources, which might take up to 30 minutes.
git clone https://github.com/appelmar/gdalcubes && cd gdalcubes
docker build -t appelmar/gdalcubes .
docker run -d -p 11111:1111 appelmar/gdalcubes # runs gdalcubes_server as a deamon
docker run appelmar/gdalcubes /bin/bash # get a command line where you can run gdalcubes
The gdalcubes R package is hosted on https://github.com/appelmar/gdalcubes_R. It includes a Dockerfile that runs RStudio Server with the gdalcubes R package.
More detailed information can be found at the documentation page under https://gdalcubes.github.io/.
The library is still in an early development version. Major changes are possible to make gdalcubes more user-friendly, more stable, faster, and more robust. The documentation is also preliminary and not yet complete.
gdalcubes uses the following open source libraries. Detailed licensing and copyright information can be found at https://gdalcubes.github.io/source/introduction/credits.html and in LICENSE_THIRDPARTY.
GDAL: A translator library for raster and vector geospatial data formats
SQLite: A self-contained, high-reliability, embedded, full-featured, public-domain, SQL database engine
CURL: Command line tool and library for transferring data with URLs
TinyExpr: A very small recursive descent parser and evaluation engine for math expressions
netCDF: The Unidata network Common Data Form C library
tiny-process-library: A small platform independent library making it simple to create and stop new processes in C++
Catch2: A modern, C++-native, header-only, test framework for unit-tests, TDD and BDD
Date: A date and time library based on the C++11/14/17 header