1.3.2
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Overview

gstlearn is the new cross-platform Geostatistics C++ library proposed by MINES Paris - PSL University. It offers to users all famous Geostatistical methodologies developed and/or invented by the Geostatistic Team of the Geosciences Research Center.

The name 'gstlearn' stands for several purposes:

  • GeoSTatistics & Machine Learning Library
  • Geostatistical Spatio-Temporal Learning
  • Learning Geosciences & Spatio-Temporal Models

gstlearn comes in various forms:

  • A C++ library
  • A Python package
  • A R package

If you only want to use Python or R packages, you should switch to corresponding README:

See https://gstlearn.org for more details.

References

The gstlearn C++ library is the successor of the Geoslib C/C++ library which was proposed through the RGeostats R package.

The gstlearn C++ library is developed by the Geostatistics Group of the Geosciences Center (MINES Paris - PSL University - France)

The gstlearn C++ library :

  • is a derivative work based on the swigex0 project.
  • depends on third-party libraries and source codes (see below).
  • comes with several data files that are used for our documentation (tutorials and courses).

See credits below.

How to cite

When using the gstlearn C++ Library, please, use the following to cite us in any publication or results for which gstlearn has been used:

--------------------------------------------------
gstlearn
Geostatistics and Machine Learning toolbox
Copyright © MINES Paris - PSL University
Free download from https://gstlearn.org
--------------------------------------------------

You may be interested in the citation file gstlearn.bib

Report a bug

To report a bug or contact us:

  • feel free to post an issue or
  • visit our Help page

Development

Requirements

This library has been successfully tested with Ubuntu 18/20/22 LTS, Windows 10 and MacOS 12/14 (see here). For compiling and installing gstlearn C++ library, the following tools must be available (See required tools installation instructions below):

  • Git client 2.30 or higher
  • CMake tool 3.20 or higher
  • A C++ compiler among:
    • Linux:
      • GCC 5.4 or higher
    • MacOS:
      • Clang (from llvm) or higher (not tested)
    • Windows:
      • Python users: Microsoft Visual Studio C++ 14 or higher
      • R users: MinGW 7 (RTools 4.2) or higher
  • Boost header files 1.65 or higher
  • Eigen3 header files 3.4 or higher
  • Doxygen [Optional] 1.8.3 or higher with LaTeX and Ghostscripts
  • HDF5 [Optional] C++ library and header files 1.8 or higher

See required tools installation instructions below

Get the sources

For getting the sources files, just clone the github repository:

git clone https://github.com/gstlearn/gstlearn.git
cd gstlearn

Next time, you will only need to pull the repository (If you have some local undesirable modifications, you have to revert them and execute the pull, otherwise do not execute git reset):

cd gstlearn
git reset --hard
git pull

C++ Library Compilation & Installation

For compiling and installing the gstlearn C++ shared library, execute the following instructions from the root directory of gstlearn. Please note that you can choose another destination folder (currently named build).

GCC, Clang, MinGW, ...

...or any other single configuration compiler:

cmake -Bbuild -S. -DCMAKE_BUILD_TYPE=Release
cmake --build build --target shared
cmake --build build --target install

or even faster:

make

Notes:

  • Under MacOS, if you experience "Could NOT find OpenMP_C" error message, you should use the appropriate clang compiler (see required tools installation instructions below)

Microsoft Visual Studio, ...

...or any other multiple configurations compiler:

cmake -Bbuild -S.
cmake --build build --target shared --config Release
cmake --build build --target install --config Release

Execute Non-regression Tests

The check* targets bring some required runtime customization, so do not use the standard ctest command for triggering the non-regression tests.

To build and launch non-regression tests, execute the following commands:

GCC, Clang, MinGW, ...

...or any other single configuration compiler:

cmake --build build --target build_tests
cmake --build build --target check_cpp
cmake --build build --target check_data

or even faster:

make check_cpp
make check_data

Microsoft Visual Studio, ...

...or any other multiple configurations compiler:

cmake --build build --target build_tests --config Release
cmake --build build --target check_cpp --config Release
cmake --build build --target check_data --config Release

Clean

To clean (partially) the build, execute the following command:

cmake --build build --target clean

Notes:

  • If you really want to clean all files generated by CMake, you can remove build directory content by hand. Linux, MacOS or MinGW users may use the clean_all target from the shortcut Makefile inside the top level directory:
make clean_all

Usage

Please, look at tests C++ code in order to learn how to use the gstlearn C++ library. You can generate the source code documentation using Doxygen.

Required Tools Installation

These tools are needed for compiling the gstlearn C++ library. Please note that HDF5 and Doxygen (and Latex) installation are optional.

If you modified your system, you must reinstall the requirements from scratch following next instructions. You must delete 'gstlearn' existing source folders (if so).

Note :

Linux (Ubuntu)

sudo apt install git
sudo apt install cmake
sudo apt install texlive-latex-recommended
sudo apt install texlive-science
sudo apt install doxygen
sudo apt install libboost-all-dev
sudo apt install libeigen3-dev
sudo apt install libhdf5-dev

MacOS

Install the dependencies:

brew install llvm
brew install git
brew install cmake
brew install texlive-latex-recommended
brew install texlive-science
brew install doxygen
brew install libboost-all-dev
brew install libeigen3-dev
brew install libhdf5-dev

Define environment variables for the appropriate clang compiler (adapt llvm installation path):

export CC=/usr/local/opt/llvm/bin/clang
export CXX=/usr/local/opt/llvm/bin/clang++

Notes:

  • These instructions for MacOS are currently not tested - above packages may not exist
  • Clang from llvm package is mandatory to support OpenMP
  • If you want to permanently define the CC and CXX environment variables, follow this guide

Windows - Microsoft Visual Studio

These requirements are also recommended to people who wants to compile gstlearn Python package. If you want to compile gstlearn R package under Windows, you should look at the next section.

Install all tools

Download and install the following tools using default options during installation:

  1. Git client from here (Setup program [exe])
  2. CMake tool from here (Windows Installer [msi], check the *'Add CMake to the system PATH for all users'* option during installation)
  3. Microsoft Visual Studio (Community) from here (VisualStudioSetup.exe - only select the Visual Studio Desktop C++ component)
  4. Boost library from here (Archive file [zip] to be extracted in a folder of your choice, but not in the gstlearn source folder - and remind that folder)
  5. HDF5 library (optional) from here (Pre-built binaries [zip] to be extracted, then, execute the installer [msi] - and remind the installation folder)
  6. Doxygen (optional) from here (Binary distribution [setup.exe] - remind the installation folder, we assume it is C:\Program Files\doxygen)
  7. LaTeX and Ghostscripts following instructions here
  8. Eigen3 library from here (Clone the repository in a folder of your choice and follow the instructions below)

Install Eigen3 headers using CMake

Assume that you have cloned the Eigen3 GitLab repository in the following folder: C:\Eigen_src\eigen. Open a command prompt by running cmd.exe and execute the following commands (adapt the Eigen source code path in the first command and the Eigen version in the INSTALL_PREFIX below):

cd C:\Eigen_src\eigen
mkdir build
cd build
cmake .. -DCMAKE_INSTALL_PREFIX=C:/eigen_3_4_0
cmake --build . --target install

Update the Path environment variable

The Path environment variable (System variables) must be updated to make doxygen.exe available in the batch command line:

  1. Follow this guide to add bin directory from the Doxygen installation folder in the Path System variable (i.e: C:\Program Files\doxygen\bin)
  2. Restart Windows

Windows - MinGW (via RTools):

These requirements are also recommended to people who wants to compile gstlearn R package. If you want to compile gstlearn Python package under Windows, you should look at the previous section. This is not the only way to install MinGW. But using MinGW provided with RTools permits us to also handle gstlearn R package compilation.

Install R and RTools

Remove all R and RTools previous installation and download and install the following tools using default options:

  1. R from here (Setup program [exe] - remind the installation folder, assume it is C:\Program Files\R\R-4.2.2)
  2. RTools from here (RTools Installer [exe] - remind the installation folder, assume it is C:\rtools42)

Notes:

  • Choose the corresponding RTools version according to the R version installed
  • Instructions in this section are valid since R v4.2 (for older versions please contact us)
  • RTools is not the unique way to install MinGW on Windows, but it is our preferred way as we can handle R packages compilation

Update the Path environment variable

The Path environment variable (System variables) must be updated to make R.exe available in the batch command line:

  1. Follow this guide to add bin directory from the R installation folder in the Path variable (ie: C:\Program Files\R\R-4.2.2\bin)
  2. Restart Windows

Add MSYS2 Required Packages

  1. Edit the etc/pacman.conf file in the RTools installation directory (ie: C:\rtools42) by changing the SigLevel variable to Never (otherwise, git cannot be installed using pacman):
SigLevel=Never
  1. Edit the mingw64.ini file in the RTools installation directory (ie: C:\rtools42) by un-commenting the following line (remove '#' character at the beginning):
MSYS2_PATH_TYPE=inherit
  1. Launch mingw64.exe in RTools installation directory (ie: C:\rtools42) and pin the icon to the task bar
  2. From the mingw64 shell command prompt, execute following instructions (HDF5 and Doxygen are optional):
pacman -Sy git
pacman -Sy mingw-w64-x86_64-cmake
pacman -Sy mingw-w64-x86_64-gcc
pacman -Sy mingw-w64-x86_64-boost
pacman -Sy mingw-w64-x86_64-eigen3
pacman -Sy mingw-w64-x86_64-hdf5
pacman -Sy mingw-w64-x86_64-texlive-latex-recommended
pacman -Sy mingw-w64-x86_64-texlive-science
pacman -Sy mingw-w64-x86_64-doxygen

Important Notes

  • If your system distribution repository doesn't provide minimum required versions, please install the tools manually (see provider website)
  • You may need to reconnect to your session after installing some requirements
  • If you plan to generate the documentation, add -DBUILD_DOXYGEN=ON to the first cmake command above.
  • If you don't know how to execute github commands or you experience a 'password authentication' problem, you may read this.
  • Currently, HDF5 is not supported when compiling gstlearn C++ library under Windows and MacOS. gstlearn won't link against HDF5 and GibbsMMulti::setFlagStoreInternal(false) feature won't be available.
  • The default installation directory named gstlearn_install is located in your Home. If you want to change it, you can add -DCMAKE_INSTALL_PREFIX="path/of/gstlearn/install/dir" to the first cmake command above.
  • If you want HDF5 support, add -DUSE_HDF5=ON to the first cmake command above. If you use the shortcut Makefile, you can use USE_HDF5=1 after the make command
  • Only the shared library (built by default) is installed when compiling gstlearn C++ library. If you want to compile the static version, you must replace shared by static target above.
  • Using MinGW on a Windows where another compiler is also installed may need to add -G "MSYS Makefiles" in the first cmake command above.
  • Using Visual Studio on a Windows where another compiler is also installed may need to add -G "Visual Studio 16 2019" in the first command (adapt version).
  • If you want to build and install the Debug version, you must replace Release by Debug above. If you use the shortcut Makefile, you can use DEBUG=1 after the make command
  • You may need to precise the location of Boost, Eigen3, HDF5 or Doxygen installation directory. In that case, add the following variables in the first cmake command above:
    • -DBoost_ROOT="path/to/boost"
    • -DEigen3_ROOT="path/to/eigen3"
    • -DHDF5_ROOT="path/to/hdf5"
    • -DDoxygen_ROOT="path/to/doxygen"

Uninstall the Library

To uninstall all the installed files (only the files, not the directories), execute this command:

cmake --build build --target uninstall

or faster:

make uninstall

Generate the Documentation

The Doxygen HTML documentation is optional (not included in the installation by default). If you want to generate it, execute the command:

cmake -Bbuild -S. -DBUILD_DOXYGEN=ON
cmake --build build --target doxygen

or faster (for Makefile user):

make doxygen

The documentation is then available by opening the following HTML file with your favorite web-browser:

firefox build/doxygen/html/index.html

Credits

Derivative work

The gstlearn C++ library is a derivative work based on the swigex0 project (see license in doc/licenses):

Name License URL Copyright
swigex0 MIT https://github.com/fabien-ors/swigex0 Copyright 2023, Fabien Ors

Third party libraries

The gstlearn C++ library depends on the following third-party source code, slightly modified and compiled in separate libraries (see [3rd-party](3rd-party) folder):

Name License URL Copyright
csparse LGPL v2.1 https://people.math.sc.edu/Burkardt/c_src/csparse/csparse.html Copyright 2006, Timothy A. Davis
stripack (GMT) LGPL v3 https://www.generic-mapping-tools.org Copyright(c) 2020, the GMT Team

Third party source code

The gstlearn C++ library includes external source codes (see licenses notices in doc/licenses):

Name License URL Copyright
clustering Python License http://bonsai.hgc.jp/~mdehoon/software/cluster Copyright (C) 2002 Michiel Jan Laurens de Hoon
fft see licenses https://netlib.org/go/fft-olesen.tar.gz Copyright(c)1995,97 Mark Olesen
ball MIT https://42.fr Copyright(c) 2017 Eung Bum Lee
sparseinv (SuiteSparse) BSD 3-clause http://www.suitesparse.com Copyright 2011, Timothy A. Davis
vtk (VisIt) BSD 3-clause https://visit.llnl.gov Copyright (c) 2000 - 2008, Lawrence Livermore National Security, LLC

The gstlearn C++ library also depends on the following third-party libraries (see licenses notices in doc/licenses):

Name License URL Copyright
Boost see licenses https://www.boost.org see Boost headers
Eigen3 MPL2 https://eigen.tuxfamily.org see Eigen headers
HDF5 see licenses https://www.hdfgroup.org Copyright 2006 by The HDF Group

Data files

The gstlearn C++ library comes with several data files that are used for our documentation (tutorials and courses).

Here are the credits and licenses for the different data files available in each directories of doc/data:

Name License URL Copyright
Alluvial Etalab v 2.0 https://infoterre.brgm.fr Copyright (C) Sept. 2021, BRGM
benchmark see (1) http://www.ai-geostats.org Copyright (C) 2003, Dubois, G., Malczewski, J. and De Cort, M.
boundaries N/A https://www.naturalearthdata.com Made with Natural Earth
BRGM see (2) https://brgm.fr Copyright (C) Sept. 2021, BRGM derived from Bardossy et al. 1999
Chamaya CC BY 4.0 https://gstlearn.org Copyright (C) 2010, Renard, D. & Beucher, H.
FKA CC BY 4.0 https://gstlearn.org Copyright (C) 1999, Renard, D.
halieutic CC BY 4.0 https://ices-library.figshare.com Copyright (C) 2017, ICES see (3)
Meshings CC0 1.0 Univ. https://www.cs.cmu.edu/~kmcrane Copyright (C) 2020, Crane, Keenan and Pinkall, Ulrich and Schröder, Peter
PluriGaussian CC BY 4.0 https://gstlearn.org Copyright (C) 1999, Renard, D.
Pollution CC BY 4.0 http://rgeostats.free.fr Copyright (C) 2000, Team RGeostats
Scotland CC BY 4.0 http://rgeostats.free.fr Copyright (C) 2000, Team RGeostats
Selectivity CC BY 4.0 https://gstlearn.org Copyright (C) 2010, Freulon, X.

(1) Reference: Dubois, G., Malczewski, J. and De Cort, M. (2003). Mapping radioactivity in the environment. Spatial Interpolation Comparison 1997 (Eds.). EUR 20667 EN, EC. 268 p.

(2) Bárdossy, A., H. Giese, J. Grimm-Strele, and K. Barufke (2003), SIMIK + GIS—Implementierte Interpolation von Grundwasserparametern mit Hilfe von Landnutzungs- und Geologiedaten. Hydrol. Wasserwirt., 47, 13–20.

(3) ICES. 2017. Handbook of Geostatistics in R for Fisheries and Marine Ecology. ICES COOPERATIVE RESEARCH REPORT. Vol. 338, 184 pp. https://doi.org/10.17895/ices.pub.3717


License

gstlearn C++ Library is distributed under the license:

BSD 3-clause

2024 Team gstlearn