68 lines
		
	
	
		
			2.6 KiB
		
	
	
	
		
			Markdown
		
	
	
			
		
		
	
	
			68 lines
		
	
	
		
			2.6 KiB
		
	
	
	
		
			Markdown
		
	
	
| # README
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| 
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| # Python Wrapper
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| 
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| This is the Python wrapper around the GTSAM C++ library. We use our custom [wrap library](https://github.com/borglab/wrap) to generate the bindings to the underlying C++ code.
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| 
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| ## Requirements
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| 
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| - If you want to build the GTSAM python library for a specific python version (eg 3.6),
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|   use the `-DGTSAM_PYTHON_VERSION=3.6` option when running `cmake` otherwise the default interpreter will be used.
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| - If the interpreter is inside an environment (such as an anaconda environment or virtualenv environment),
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|   then the environment should be active while building GTSAM.
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| - This wrapper needs `pyparsing(>=2.4.2)`, and `numpy(>=1.11.0)`. These can be installed as follows:
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| 
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|   ```bash
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|   pip install -r <gtsam_folder>/python/requirements.txt
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|   ```
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| 
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| ## Install
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| 
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| - Run cmake with the `GTSAM_BUILD_PYTHON` cmake flag enabled to configure building the wrapper. The wrapped module will be built and copied to the directory `<PROJECT_BINARY_DIR>/python`. For example, if your local Python version is 3.6.10, then you should run:
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|   ```bash
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|   cmake .. -DGTSAM_BUILD_PYTHON=1 -DGTSAM_PYTHON_VERSION=3.6.10
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|   ```
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| - Build GTSAM and the wrapper with `make` (or `ninja` if you use `-GNinja`).
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| 
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| - To install, simply run `make python-install` (`ninja python-install`).
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|   - The same command can be used to install into a virtual environment if it is active.
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|   - **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.
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| 
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| - You can also directly run `make python-install` without running `make`, and it will compile all the dependencies accordingly.
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| 
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| ## Unit Tests
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| 
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| The Python toolbox also has a small set of unit tests located in the
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| test directory. To run them:
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| 
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|   ```bash
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|   cd <GTSAM_SOURCE_DIRECTORY>/python/gtsam/tests
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|   python -m unittest discover
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|   ```
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| 
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| ## Utils
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| 
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| TODO
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| 
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| ## Examples
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| 
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| TODO
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| 
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| ## Writing Your Own Scripts
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| 
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| See the tests for examples.
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| 
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| ### Some Important Notes:
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| 
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| - Vector/Matrix:
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| 
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|   - GTSAM expects double-precision floating point vectors and matrices.
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|     Hence, you should pass numpy matrices with `dtype=float`, or `float64`, to avoid any conversion needed.
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|   - Also, GTSAM expects _column-major_ matrices, unlike the default storage
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|     scheme in numpy. But this is only performance-related as `pybind11` should translate them when needed. However, this will result a copy if your matrix is not in the expected type
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|     and storage order.
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| 
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| ## Wrapping Custom GTSAM-based Project
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| 
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| Please refer to the template project and the corresponding tutorial available [here](https://github.com/borglab/GTSAM-project-python).
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