This is the Python wrapper around the GTSAM C++ library. We use Cython to generate the bindings to the underlying C++ code.
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If you want to build the GTSAM python library for a specific python version (eg 3.6), use the
-DGTSAM_PYTHON_VERSION=3.6
option when runningcmake
otherwise the default interpreter will be used. -
If the interpreter is inside an environment (such as an anaconda environment or virtualenv environment), then the environment should be active while building GTSAM.
-
This wrapper needs
Cython(>=0.25.2)
,backports_abc(>=0.5)
, andnumpy(>=1.11.0)
. These can be installed as follows:pip install -r <gtsam_folder>/cython/requirements.txt
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For compatibility with GTSAM's Eigen version, it contains its own cloned version of Eigency, named
gtsam_eigency
, to interface between C++'s Eigen and Python's numpy.
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Run cmake with the
GTSAM_INSTALL_CYTHON_TOOLBOX
cmake flag enabled to configure building the wrapper. The wrapped module will be built and copied to the directory defined byGTSAM_CYTHON_INSTALL_PATH
, which is by default<PROJECT_BINARY_DIR>/cython
in Release mode and<PROJECT_BINARY_DIR>/cython<CMAKE_BUILD_TYPE>
for other modes. -
Build GTSAM and the wrapper with
make
. -
To install, simply run
make python-install
.- The same command can be used to install into a virtual environment if it is active.
- NOTE: if you don't want GTSAM to install to a system directory such as
/usr/local
, pass-DCMAKE_INSTALL_PREFIX="./install"
to cmake to install GTSAM to a subdirectory of the build directory.
-
You can also directly run
make python-install
without runningmake
, and it will compile all the dependencies accordingly.
The Cython toolbox also has a small set of unit tests located in the test directory. To run them:
cd <GTSAM_CYTHON_INSTALL_PATH>
python -m unittest discover
TODO
TODO
See the tests for examples.
-
Vector/Matrix:
- GTSAM expects double-precision floating point vectors and matrices.
Hence, you should pass numpy matrices with
dtype=float
, orfloat64
. - Also, GTSAM expects column-major matrices, unlike the default storage scheme in numpy. Hence, you should pass column-major matrices to GTSAM using the flag order='F'. And you always get column-major matrices back. For more details, see this link.
- Passing row-major matrices of different dtype, e.g.
int
, will also work as the wrapper converts them to column-major and dtype float for you, using numpy.array.astype(float, order='F', copy=False). However, this will result a copy if your matrix is not in the expected type and storage order.
- GTSAM expects double-precision floating point vectors and matrices.
Hence, you should pass numpy matrices with
-
Inner namespace: Classes in inner namespace will be prefixed by _ in Python.
Examples:
noiseModel_Gaussian
,noiseModel_mEstimator_Tukey
-
Casting from a base class to a derive class must be done explicitly.
Examples:
noiseBase = factor.noiseModel() noiseGaussian = dynamic_cast_noiseModel_Gaussian_noiseModel_Base(noiseBase)
Please refer to the template project and the corresponding tutorial available here.
- Doesn't work with python3 installed from homebrew
- size-related issue: can only wrap up to a certain number of classes: up to mEstimator!
- Guess: 64 vs 32b? disutils Compiler flags?
- Bug with Cython 0.24: instantiated factor classes return FastVector<size_t> for keys(), which can't be casted to FastVector
- Upgrading to 0.25 solves the problem
- Need default constructor and default copy constructor for almost every classes... :(
- support these constructors by default and declare "delete" for special classes?
- allow duplication of parent' functions in child classes. Not allowed for now due to conflicts in Cython.
- a common header for boost shared_ptr? (Or wait until everything is switched to std::shared_ptr in GTSAM?)
- inner namespaces ==> inner packages?
- Wrap fixed-size Matrices/Vectors?
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Fix Python tests: don't use " import * ": Bad style!!! (18-03-17 19:50)
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Unit tests for cython wrappers @done (18-03-17 18:45) -- simply compare generated files
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Wrap unstable @done (18-03-17 15:30)
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Unify cython/GTSAM.h and the original GTSAM.h @done (18-03-17 15:30)
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18-03-17: manage to unify the two versions by removing std container stubs from the matlab version,and keeping KeyList/KeyVector/KeySet as in the matlab version. Probably Cython 0.25 fixes the casting problem.
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06-03-17: manage to remove the requirements for default and copy constructors
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25-11-16: Try to unify but failed. Main reasons are: Key/size_t, std containers, KeyVector/KeyList/KeySet. Matlab doesn't need to know about Key, but I can't make Cython to ignore Key as it couldn't cast KeyVector, i.e. FastVector, to FastVector<size_t>.
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Marginal and JointMarginal: revert changes @failed (17-03-17 11:00) -- Cython does need a default constructor! It produces cpp code like this:
GTSAM::JointMarginal __pyx_t_1;
Users don't have to wrap this constructor, however. -
Convert input numpy Matrix/Vector to float dtype and storage order 'F' automatically, cannot crash! @done (15-03-17 13:00)
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Remove requirements.txt - Frank: don't bother with only 2 packages and a special case for eigency! @done (08-03-17 10:30)
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CMake install script @done (25-11-16 02:30)
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[REFACTOR] better name for uninstantiateClass: very vague!! @cancelled (25-11-16 02:30) -- lazy
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forward declaration? @cancelled (23-11-16 13:00) - nothing to do, seem to work?
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wrap VariableIndex: why is it in inference? If need to, shouldn't have constructors to specific FactorGraphs @done (23-11-16 13:00)
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Global functions @done (22-11-16 21:00)
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[REFACTOR] typesEqual --> isSameSignature @done (22-11-16 21:00)
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Proper overloads (constructors, static methods, methods) @done (20-11-16 21:00)
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Allow overloading methods. The current solution is annoying!!! @done (20-11-16 21:00)
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Casting from parent and grandparents @done (16-11-16 17:00)
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Allow overloading constructors. The current solution is annoying!!! @done (16-11-16 17:00)
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Support "print obj" @done (16-11-16 17:00)
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methods for FastVector: at, [], ... @done (16-11-16 17:00)
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Cython: Key and size_t: traits<size_t> doesn't exist @done (16-09-12 18:34)
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KeyVector, KeyList, KeySet... @done (16-09-13 17:19)
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[Nice to have] parse typedef @done (16-09-13 17:19)
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ctypedef at correct places @done (16-09-12 18:34)
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expand template variable type in constructor/static methods? @done (16-09-12 18:34)
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NonlinearOptimizer: copy constructor deleted!!! @done (16-09-13 17:20)
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Value: no default constructor @done (16-09-13 17:20)
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ctypedef PriorFactor[Vector] PriorFactorVector @done (16-09-19 12:25)
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Delete duplicate methods in derived class @done (16-09-12 13:38)
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Fix return properly @done (16-09-11 17:14)
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handle pair @done (16-09-11 17:14)
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Eigency: ambiguous call: A(const T&) A(const Vector& v) and Eigency A(Map[Vector]& v) @done (16-09-11 07:59)
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Eigency: Constructor: ambiguous construct from Vector/Matrix @done (16-09-11 07:59)
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Eigency: Fix method template of Vector/Matrix: template argument is [Vector] while arugment is Map[Vector] @done (16-09-11 08:22)
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Robust noise: copy assignment operator is deleted because of shared_ptr of the abstract Base class @done (16-09-10 09:05)
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Cython: Constructor: generate default constructor? (hack: if it's serializable?) @cancelled (16-09-13 17:20)
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Eigency: Map[] to Block @created(16-09-10 07:59) @cancelled (16-09-11 08:28)
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inference before symbolic/linear
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what's the purpose of "virtual" ??