This repository facilitates parallel development between the tudat (C++) and the
tudatpy (Python) library.
Specific indications for documenting tudat or tudapy are reported in the tudat-multidoc/README.md file.
The tudat-bundle comprises the following repositories:
tudat, where the tudat source code is located (this is a separate git repository);tudatpy, where the tudatpy binding code is located (this is a separate git repository);tudat-multidoc, where the documentation and the system to build the API is located (this is a separate git repository);cli, where the Python Command Line Interface scripts to build the API are located;
In addition, once the project is built, all the build output will be dumped in the cmake-build-debug directory, which
is not tracked by Git. If the API is also built, more untracked directories will appear, but this is explained in the
tudat-multidoc/README.md file.
- [Windows Users] Windows Subsystem for Linux (WSL)
- All procedures, including the following prerequisite, assume the use of WSL. Power users who wish to do otherwise, must do so at their own risk, with reduced support from the team.
- Note that WSL is a, partially separated, Ubuntu terminal environment for Windows. Anaconda/Miniconda, Python and any other dependencies you require while executing code from the
tudat-bundle, must be installed in its Linux version via the Ubuntu terminal. This does not apply to PyCharm/CLion however, which can be configured to compile and/or run Python code through the WSL. - Note that, to access files and folders of WSL directly in Windows explorer, one can type
\\wsl$orLinuxin the Windows explorer access bar, then press enter. - At the opposite, please follow this guide to access Windows file trough WSL.
- This guide from Microsoft contains more information on the possibilities given trough WSL.
- In the Ubuntu terminal environment under WSL, run the command
sudo apt-get install build-essentialto install the necessary compilation tools
- Anaconda/Miniconda installation (Installing Anaconda)
- CMake installation
- Inside the Ubuntu terminal, install CMake by calling
sudo apt install cmake.
- Inside the Ubuntu terminal, install CMake by calling
- Clone the repository and enter directory
git clone https://github.com/tudat-team/tudat-bundle
cd tudat-bundle
Note
Thetudat-bundlerepository uses git submodules, which "allow you to keep a Git repository as a subdirectory of another Git repository" (from the Git guide). In particular, in thetudat-bundlethere are four different subdirectories that are separate repositories:tudat,tudatpy,tudat-multidocandtudat-multidoc/multidoc. Each repository has its own branches and functions separately from the others. This is the reason why the following two steps are needed.
- Clone the
tudat&tudatpysubmodules
git submodule update --init --recursive
- Switch
tudat&tudatpyto their desired branches using
cd <tudat/tudatpy>
git checkout <branch-name>
Be advised that the branch from with the Conda packages are built, and that is being maintained the most, is develop (and you will likely want to use this one for both tudat and tudatpy).
See here for tudatpy develop branch, and here for tudat develop branch.
It is then recommended to switch to the develop branch using the commands above.
- Install the contained
environment.yamlfile to satisfy dependencies
It is possible that the creation of the environment will 'time out'. A likely reason for this is that the packages required cannot be found by the current channel, conda-forge. It is then advisable to add the channel anaconda to ensure a proper creation of the environment.
conda env create -f environment.yaml
There are two directions you can go from here: the command line or CLion.
- Activate the environment installed in step 4
conda activate tudat-bundle
- Build Tudat and TudatPy
bash setup buildIt is possible (but not needed) to modify the number of processors, the C++ version used by the compiler, the build type and some other parameters via flags. You can find more information by running
bash setup build --help- Install Tudat and TudatPy in your conda environment
bash setup installThis command will add your local installations of Tudat and TudatPy to your active conda environment, allowing you to use them as any other C++ or Python library. If you ever want to remove them from the environment, just execute
bash setup uninstallNote
[Windows Users ∩ CLion Users] In CLion, be sure to set WSL as your Toolchain in
File>Settings>Build, Execution, Deployment>Toolchains.[CLion Users] In CLion, the convention to set CMake arguments is to add them to
File>Settings>Build, Execution, Deployment>CMake Options.
- Open CLion, create a new project from
File > New Projectand select the directory that has been cloned under bullet point 1 (namedtudat-bundle).
Note
To avoid issues with CLion, the directory of the project should correspond exactly to the cloned directory namedtudat-bundle.
- Create a build profile in
File > Settings > Build, Execution, Deployment > CMake.
Note
The CMake configuration optionCMAKE_BUILD_TYPEwill be determined by the the build profile'sBuild typeentry. AReleaseconfiguration will suppress a significant amount of harmless warnings during compilation. Currently, with the move to a later version of boost, some warnings have cropped up that have either not been fixed in the source code, or have not been suppressed viatudat/cmake_modules/compiler.cmake.
- Add the CMake configuration to the
File > Settings > Build, Execution, Deployment > CMake > CMake optionstext box:
-DCMAKE_PREFIX_PATH=<CONDA_PREFIX>
-DCMAKE_CXX_STANDARD=14
-DBoost_NO_BOOST_CMAKE=ON
The CONDA_PREFIX may be determined by activating the environment installed in step 4 and printing its value:
conda activate tudat-bundle && echo $CONDA_PREFIX
The following line can also be edited if you wish to build tudatpy with its debug info (switching from Release to RelWithDebInfo; note that Debug is also available):
-DCMAKE_BUILD_TYPE=RelWithDebInfo
[Optional] Add -j<n> to File > Settings > Build, Execution, Deployment > CMake > Build options to use multiple
processors. It is likely that if you use all of your processors, your build will freeze your PC indefinitely. It is
recommended to start at -j2 and work your way up with further builds, ensuring no unsaved work in the background.
-
In the source tree on the left, right click the top level
CMakeLists.txtthenLoad/Reload CMake Project. -
Build > Build Project
- Enter the
tudatbuild directory
cd <build_directory>/tudat
- Run the tests using
ctest(packaged with CMake)
ctest
Desired result:
..
100% tests passed, 0 tests failed out of 224
Total Test time (real) = 490.77 sec
- Enter the
tudatpybuild directory
cd <build_directory>/tudatpy
- Run the tests using
pytest
pytest
Desired result:
=========================================== 6 passed in 1.78s ============================================