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				| .. _numpy: | |
|  | |
| NumPy | |
| ##### | |
|  | |
| Buffer protocol | |
| =============== | |
|  | |
| Python supports an extremely general and convenient approach for exchanging | |
| data between plugin libraries. Types can expose a buffer view [#f2]_, which | |
| provides fast direct access to the raw internal data representation. Suppose we | |
| want to bind the following simplistic Matrix class: | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     class Matrix { | |
|     public: | |
|         Matrix(size_t rows, size_t cols) : m_rows(rows), m_cols(cols) { | |
|             m_data = new float[rows*cols]; | |
|         } | |
|         float *data() { return m_data; } | |
|         size_t rows() const { return m_rows; } | |
|         size_t cols() const { return m_cols; } | |
|     private: | |
|         size_t m_rows, m_cols; | |
|         float *m_data; | |
|     }; | |
| 
 | |
| The following binding code exposes the ``Matrix`` contents as a buffer object, | |
| making it possible to cast Matrices into NumPy arrays. It is even possible to | |
| completely avoid copy operations with Python expressions like | |
| ``np.array(matrix_instance, copy = False)``. | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     py::class_<Matrix>(m, "Matrix") | |
|        .def_buffer([](Matrix &m) -> py::buffer_info { | |
|             return py::buffer_info( | |
|                 m.data(),                               /* Pointer to buffer */ | |
|                 sizeof(float),                          /* Size of one scalar */ | |
|                 py::format_descriptor<float>::format(), /* Python struct-style format descriptor */ | |
|                 2,                                      /* Number of dimensions */ | |
|                 { m.rows(), m.cols() },                 /* Buffer dimensions */ | |
|                 { sizeof(float) * m.rows(),             /* Strides (in bytes) for each index */ | |
|                   sizeof(float) } | |
|             ); | |
|         }); | |
| 
 | |
| The snippet above binds a lambda function, which can create ``py::buffer_info`` | |
| description records on demand describing a given matrix. The contents of | |
| ``py::buffer_info`` mirror the Python buffer protocol specification. | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     struct buffer_info { | |
|         void *ptr; | |
|         size_t itemsize; | |
|         std::string format; | |
|         int ndim; | |
|         std::vector<size_t> shape; | |
|         std::vector<size_t> strides; | |
|     }; | |
| 
 | |
| To create a C++ function that can take a Python buffer object as an argument, | |
| simply use the type ``py::buffer`` as one of its arguments. Buffers can exist | |
| in a great variety of configurations, hence some safety checks are usually | |
| necessary in the function body. Below, you can see an basic example on how to | |
| define a custom constructor for the Eigen double precision matrix | |
| (``Eigen::MatrixXd``) type, which supports initialization from compatible | |
| buffer objects (e.g. a NumPy matrix). | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     /* Bind MatrixXd (or some other Eigen type) to Python */ | |
|     typedef Eigen::MatrixXd Matrix; | |
| 
 | |
|     typedef Matrix::Scalar Scalar; | |
|     constexpr bool rowMajor = Matrix::Flags & Eigen::RowMajorBit; | |
| 
 | |
|     py::class_<Matrix>(m, "Matrix") | |
|         .def("__init__", [](Matrix &m, py::buffer b) { | |
|             typedef Eigen::Stride<Eigen::Dynamic, Eigen::Dynamic> Strides; | |
| 
 | |
|             /* Request a buffer descriptor from Python */ | |
|             py::buffer_info info = b.request(); | |
| 
 | |
|             /* Some sanity checks ... */ | |
|             if (info.format != py::format_descriptor<Scalar>::format()) | |
|                 throw std::runtime_error("Incompatible format: expected a double array!"); | |
| 
 | |
|             if (info.ndim != 2) | |
|                 throw std::runtime_error("Incompatible buffer dimension!"); | |
| 
 | |
|             auto strides = Strides( | |
|                 info.strides[rowMajor ? 0 : 1] / sizeof(Scalar), | |
|                 info.strides[rowMajor ? 1 : 0] / sizeof(Scalar)); | |
| 
 | |
|             auto map = Eigen::Map<Matrix, 0, Strides>( | |
|                 static_cat<Scalar *>(info.ptr), info.shape[0], info.shape[1], strides); | |
| 
 | |
|             new (&m) Matrix(map); | |
|         }); | |
| 
 | |
| For reference, the ``def_buffer()`` call for this Eigen data type should look | |
| as follows: | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     .def_buffer([](Matrix &m) -> py::buffer_info { | |
|         return py::buffer_info( | |
|             m.data(),                /* Pointer to buffer */ | |
|             sizeof(Scalar),          /* Size of one scalar */ | |
|             /* Python struct-style format descriptor */ | |
|             py::format_descriptor<Scalar>::format(), | |
|             /* Number of dimensions */ | |
|             2, | |
|             /* Buffer dimensions */ | |
|             { (size_t) m.rows(), | |
|               (size_t) m.cols() }, | |
|             /* Strides (in bytes) for each index */ | |
|             { sizeof(Scalar) * (rowMajor ? m.cols() : 1), | |
|               sizeof(Scalar) * (rowMajor ? 1 : m.rows()) } | |
|         ); | |
|      }) | |
| 
 | |
| For a much easier approach of binding Eigen types (although with some | |
| limitations), refer to the section on :doc:`/advanced/cast/eigen`. | |
|  | |
| .. seealso:: | |
|  | |
|     The file :file:`tests/test_buffers.cpp` contains a complete example | |
|     that demonstrates using the buffer protocol with pybind11 in more detail. | |
|  | |
| .. [#f2] http://docs.python.org/3/c-api/buffer.html | |
|  | |
| Arrays | |
| ====== | |
|  | |
| By exchanging ``py::buffer`` with ``py::array`` in the above snippet, we can | |
| restrict the function so that it only accepts NumPy arrays (rather than any | |
| type of Python object satisfying the buffer protocol). | |
|  | |
| In many situations, we want to define a function which only accepts a NumPy | |
| array of a certain data type. This is possible via the ``py::array_t<T>`` | |
| template. For instance, the following function requires the argument to be a | |
| NumPy array containing double precision values. | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     void f(py::array_t<double> array); | |
| 
 | |
| When it is invoked with a different type (e.g. an integer or a list of | |
| integers), the binding code will attempt to cast the input into a NumPy array | |
| of the requested type. Note that this feature requires the | |
| :file:``pybind11/numpy.h`` header to be included. | |
|  | |
| Data in NumPy arrays is not guaranteed to packed in a dense manner; | |
| furthermore, entries can be separated by arbitrary column and row strides. | |
| Sometimes, it can be useful to require a function to only accept dense arrays | |
| using either the C (row-major) or Fortran (column-major) ordering. This can be | |
| accomplished via a second template argument with values ``py::array::c_style`` | |
| or ``py::array::f_style``. | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     void f(py::array_t<double, py::array::c_style | py::array::forcecast> array); | |
| 
 | |
| The ``py::array::forcecast`` argument is the default value of the second | |
| template parameter, and it ensures that non-conforming arguments are converted | |
| into an array satisfying the specified requirements instead of trying the next | |
| function overload. | |
|  | |
| Structured types | |
| ================ | |
|  | |
| In order for ``py::array_t`` to work with structured (record) types, we first need | |
| to register the memory layout of the type. This can be done via ``PYBIND11_NUMPY_DTYPE`` | |
| macro which expects the type followed by field names: | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     struct A { | |
|         int x; | |
|         double y; | |
|     }; | |
| 
 | |
|     struct B { | |
|         int z; | |
|         A a; | |
|     }; | |
| 
 | |
|     PYBIND11_NUMPY_DTYPE(A, x, y); | |
|     PYBIND11_NUMPY_DTYPE(B, z, a); | |
| 
 | |
|     /* now both A and B can be used as template arguments to py::array_t */ | |
| 
 | |
| Vectorizing functions | |
| ===================== | |
|  | |
| Suppose we want to bind a function with the following signature to Python so | |
| that it can process arbitrary NumPy array arguments (vectors, matrices, general | |
| N-D arrays) in addition to its normal arguments: | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     double my_func(int x, float y, double z); | |
| 
 | |
| After including the ``pybind11/numpy.h`` header, this is extremely simple: | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     m.def("vectorized_func", py::vectorize(my_func)); | |
| 
 | |
| Invoking the function like below causes 4 calls to be made to ``my_func`` with | |
| each of the array elements. The significant advantage of this compared to | |
| solutions like ``numpy.vectorize()`` is that the loop over the elements runs | |
| entirely on the C++ side and can be crunched down into a tight, optimized loop | |
| by the compiler. The result is returned as a NumPy array of type | |
| ``numpy.dtype.float64``. | |
|  | |
| .. code-block:: pycon | |
| 
 | |
|     >>> x = np.array([[1, 3],[5, 7]]) | |
|     >>> y = np.array([[2, 4],[6, 8]]) | |
|     >>> z = 3 | |
|     >>> result = vectorized_func(x, y, z) | |
|  | |
| The scalar argument ``z`` is transparently replicated 4 times.  The input | |
| arrays ``x`` and ``y`` are automatically converted into the right types (they | |
| are of type  ``numpy.dtype.int64`` but need to be ``numpy.dtype.int32`` and | |
| ``numpy.dtype.float32``, respectively) | |
|  | |
| Sometimes we might want to explicitly exclude an argument from the vectorization | |
| because it makes little sense to wrap it in a NumPy array. For instance, | |
| suppose the function signature was | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     double my_func(int x, float y, my_custom_type *z); | |
| 
 | |
| This can be done with a stateful Lambda closure: | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     // Vectorize a lambda function with a capture object (e.g. to exclude some arguments from the vectorization) | |
|     m.def("vectorized_func", | |
|         [](py::array_t<int> x, py::array_t<float> y, my_custom_type *z) { | |
|             auto stateful_closure = [z](int x, float y) { return my_func(x, y, z); }; | |
|             return py::vectorize(stateful_closure)(x, y); | |
|         } | |
|     ); | |
| 
 | |
| In cases where the computation is too complicated to be reduced to | |
| ``vectorize``, it will be necessary to create and access the buffer contents | |
| manually. The following snippet contains a complete example that shows how this | |
| works (the code is somewhat contrived, since it could have been done more | |
| simply using ``vectorize``). | |
|  | |
| .. code-block:: cpp | |
| 
 | |
|     #include <pybind11/pybind11.h> | |
|     #include <pybind11/numpy.h> | |
|  | |
|     namespace py = pybind11; | |
| 
 | |
|     py::array_t<double> add_arrays(py::array_t<double> input1, py::array_t<double> input2) { | |
|         auto buf1 = input1.request(), buf2 = input2.request(); | |
| 
 | |
|         if (buf1.ndim != 1 || buf2.ndim != 1) | |
|             throw std::runtime_error("Number of dimensions must be one"); | |
| 
 | |
|         if (buf1.size != buf2.size) | |
|             throw std::runtime_error("Input shapes must match"); | |
| 
 | |
|         /* No pointer is passed, so NumPy will allocate the buffer */ | |
|         auto result = py::array_t<double>(buf1.size); | |
| 
 | |
|         auto buf3 = result.request(); | |
| 
 | |
|         double *ptr1 = (double *) buf1.ptr, | |
|                *ptr2 = (double *) buf2.ptr, | |
|                *ptr3 = (double *) buf3.ptr; | |
| 
 | |
|         for (size_t idx = 0; idx < buf1.shape[0]; idx++) | |
|             ptr3[idx] = ptr1[idx] + ptr2[idx]; | |
| 
 | |
|         return result; | |
|     } | |
| 
 | |
|     PYBIND11_PLUGIN(test) { | |
|         py::module m("test"); | |
|         m.def("add_arrays", &add_arrays, "Add two NumPy arrays"); | |
|         return m.ptr(); | |
|     } | |
| 
 | |
| .. seealso:: | |
|  | |
|     The file :file:`tests/test_numpy_vectorize.cpp` contains a complete | |
|     example that demonstrates using :func:`vectorize` in more detail.
 |