This repository contains the public portions of the analysis software developed by the SPT-3G collaboration. It includes the IO libraries, data acquisition code for McGill's DfMux readout boards, pipeline glue code, a binned map-maker, and a sky mock-observer, as well as defining all the APIs used by the project. For more detail on the intended processing architecture, please see the Quick Start chapter of the documentation.
Except where otherwise noted, all files are distributed under the 2-clause BSD license. Acknowledgments and patches are appreciated.
The main documentation for the software is in the docs folder. After building the software, you can build a pretty, searchable copy by running make docs
.
This depends on Boost and cmake, as well as the usual Python packages. Some additional packages (NetCDF, in particular) will activate optional components of the code if installed. You also need a C++11 compiler. This software is designed to run and work on a variety of operating systems (all Linuxes, Mac OS X, and FreeBSD) and architectures (at least 64-bit x86 and POWER).
Minimum versions:
- GCC >= 5.0 or clang >= 3.4
- Boost >= 1.63
- cmake >= 3.12
- Python >= 2.7 (although pre-Python-3 support is best-effort)
On Ubuntu/Debian, you can install the non-Python dependencies, including the optional ones, by doing:
apt-get install cmake libboost-all-dev libflac-dev libnetcdf-dev
On RHEL-type systems (SL, CentOS, etc.), do this:
yum install cmake netcdf-devel boost-devel flac-devel
If your system defaults to Python 2, but you wish to use Python 3, please do the following:
- Install Python 3 from the system package manager
- Make sure the python-3 version of the Boost library is installed (on Ubuntu, this is part of the standard boost-python package referenced above)
- When you run cmake below, pass
-DPython_EXECUTABLE=`which python3`
On any system, this software requires numpy and scipy (hard requirements), plus astropy and healpy (optional).
Note that on any RHEL6 system, you will need a newer compiler than ships with the OS. Please follow whatever directions apply at your site to achieve this. Alternately, if you have OASIS set up on your local system, run this before anything else (also works on several other operating systems, including RHEL7):
eval `/cvmfs/spt.opensciencegrid.org/py3-v4/setup.sh`
To build:
cd spt3g_software
mkdir build
cd build
cmake ..
make
This will collect all of the necessary python tools into the build/spt3g
directory, which can then be imported in python. To set the appropriate python environment without installing the python package, use the shell script in build/env_shell.sh
to run commands that know where to find the spt3g
package and libraries:
./env-shell.sh python my_script.py # to run a python script
./env-shell.sh ipython # to start an ipython session
Alternatively, for users that only use a single build environment, set the following environment variables (e.g. in your .bash_profile
file):
export SPT3G_SOFTWARE_BUILD_PATH=path/to/spt3g_software/build
export PYTHONPATH=$SPT3G_SOFTWARE_BUILD_PATH:$PYTHONPATH
export LD_LIBRARY_PATH=$SPT3G_SOFTWARE_BUILD_PATH/lib:$LD_LIBRARY_PATH
export PATH=$SPT3G_SOFTWARE_BUILD_PATH/bin:$PATH
To build the documentation in the build directory type:
make docs
This will construct an html version of the documentation. This builds the documentation in the build/docs folder. Open build/docs/index.html in your favorite web browser. You should at least read the quick start portion of the documentation before getting started.
For various reasons it may be useful to install the software after building, instead of continuing to use it out of the build directory. Several CMake variables control how the software is installed:
WITH_BZIP2
, which defaults toTRUE
, is used to control whether the core library is built with support for bzip2 compression of G3 files. Use-DWITH_BZIP2=FALSE
when callingcmake
to disable.CMAKE_INSTALL_PREFIX
, which defaults to/usr/local
is used as the root directory for installing all non-python components (header files, cmake export scripts, etc.). This variable is frequently useful when installing into a python virtual environment.CMAKE_BUILD_PARALLEL_LEVEL
is an environment variable (not a cmake option) used to control how many parallel processes are used to compile the shared libraries. This option provides the same behavior as runningmake
with the-j
flag (e.g.make -j4
).
An uninstall target is also provided, so running make uninstall
from the build directory should remove all files created by a previous make install
.
Use pip
to install the python package. Ensure that you use the appropriate options as necessary for your installation, e.g. --user
or --prefix
.
For pre-built wheels hosted on PyPI, available for most Linux x86_64, macOS x86_64 and macOS arm64 platforms, simply install the package without any additional options:
pip install spt3g
The hosted wheels will include the necessary libraries (Boost, etc) bundled with the package. Otherwise, ensure that the dependency libraries are installed as explained above, and processed to one of the following steps.
To install the package from the github repo, run pip
as usual (this may take a while, so consider setting the CMAKE_BUILD_PARALLEL_LEVEL
environment variable):
cd spt3g_software
CMAKE_BUILD_PARALLEL_LEVEL=4 pip install -v .
By default this will create a directory called build
in the repo and run the cmake
build from there. The build directory location can be changed by setting the BUILD_DIR
environment variable, but keep in mind that pip
requires that the build directory must be a path inside the repo file tree.
For development builds, use the --editable
option to assemble the python package from the appropriate compiled extensions and python directories:
cd spt3g_software
CMAKE_BUILD_PARALLEL_LEVEL=4 BUILD_DIR=build pip install -v --editable .
An editable build adds references to the python directories to your python path, so that edits to library python files are immediately reflected in a fresh python session.
To pass arguments to the cmake build system, use the CMAKE_ARGS
environment variable with arguments separated by spaces. For example:
cd spt3g_software
CMAKE_ARGS="-DCMAKE_INSTALL_PREFIX=/usr/local -DCMAKE_MODULE_PATH=/usr/local/share/cmake" pip install -v --prefix=/usr/local .
To run the test suite on the compiled package, you must have cmake
, and in particular the ctest
utility, available on your path. You must also know the location of the build directory where the cmake build was assembled (e.g. the value of $BUILD_DIR
above).
ctest --test-dir path/to/spt3g_software/build --output-on-failure
Use git tags to keep track of release versions. Tags should be of the form "v0.1.2" for release with major version 0, minor version 1 and patch version 2. If such a tag is defined, cmake will populate the following outputs:
- A
cmake/Spt3gConfigVersion.cmake
file that contains the version number to be checked when including the Spt3g libraries in another cmake project - A
spt3g/version.py
file containing VCS parameters for access in python and stored in PipelineInfo frames - Add a
SPT3G_VERSION
compiler definition for accessing the version string in C++ code
Use the git archive
command or the Python build
package to export the source tree to a standalone archive.
You can use two mechanisms to access the repository: git and SVN. The following is a brief overview of how to use these in a way that your collaborators will appreciate.
To initially check out the repository:
git clone https://[email protected]/CMB-S4/spt3g_software.git
To update your checkout (the --rebase is important, especially if you have local changes):
git pull --rebase
To send your changes back:
git diff files_to_commit <- Examine this
git commit files_to_commit
git push
To initially check out the repository:
svn co https://[email protected]/CMB-S4/spt3g_software/trunk spt3g_software
To update your checkout:
svn up
To send your changes back:
svn diff files_to_commit <- Examine this
svn ci files_to_commit