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0116906189
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311 lines
14 KiB
ReStructuredText
311 lines
14 KiB
ReStructuredText
Eigen
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#####
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`Eigen <http://eigen.tuxfamily.org>`_ is C++ header-based library for dense and
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sparse linear algebra. Due to its popularity and widespread adoption, pybind11
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provides transparent conversion and limited mapping support between Eigen and
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Scientific Python linear algebra data types.
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To enable the built-in Eigen support you must include the optional header file
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:file:`pybind11/eigen.h`.
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Pass-by-value
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=============
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When binding a function with ordinary Eigen dense object arguments (for
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example, ``Eigen::MatrixXd``), pybind11 will accept any input value that is
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already (or convertible to) a ``numpy.ndarray`` with dimensions compatible with
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the Eigen type, copy its values into a temporary Eigen variable of the
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appropriate type, then call the function with this temporary variable.
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Sparse matrices are similarly copied to or from
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``scipy.sparse.csr_matrix``/``scipy.sparse.csc_matrix`` objects.
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Pass-by-reference
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=================
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One major limitation of the above is that every data conversion implicitly
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involves a copy, which can be both expensive (for large matrices) and disallows
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binding functions that change their (Matrix) arguments. Pybind11 allows you to
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work around this by using Eigen's ``Eigen::Ref<MatrixType>`` class much as you
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would when writing a function taking a generic type in Eigen itself (subject to
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some limitations discussed below).
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When calling a bound function accepting a ``Eigen::Ref<const MatrixType>``
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type, pybind11 will attempt to avoid copying by using an ``Eigen::Map`` object
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that maps into the source ``numpy.ndarray`` data: this requires both that the
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data types are the same (e.g. ``dtype='float64'`` and ``MatrixType::Scalar`` is
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``double``); and that the storage is layout compatible. The latter limitation
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is discussed in detail in the section below, and requires careful
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consideration: by default, numpy matrices and Eigen matrices are *not* storage
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compatible.
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If the numpy matrix cannot be used as is (either because its types differ, e.g.
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passing an array of integers to an Eigen parameter requiring doubles, or
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because the storage is incompatible), pybind11 makes a temporary copy and
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passes the copy instead.
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When a bound function parameter is instead ``Eigen::Ref<MatrixType>`` (note the
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lack of ``const``), pybind11 will only allow the function to be called if it
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can be mapped *and* if the numpy array is writeable (that is
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``a.flags.writeable`` is true). Any access (including modification) made to
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the passed variable will be transparently carried out directly on the
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``numpy.ndarray``.
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This means you can write code such as the following and have it work as
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expected:
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.. code-block:: cpp
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void scale_by_2(Eigen::Ref<Eigen::VectorXd> v) {
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v *= 2;
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}
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Note, however, that you will likely run into limitations due to numpy and
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Eigen's difference default storage order for data; see the below section on
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:ref:`storage_orders` for details on how to bind code that won't run into such
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limitations.
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.. note::
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Passing by reference is not supported for sparse types.
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Returning values to Python
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==========================
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When returning an ordinary dense Eigen matrix type to numpy (e.g.
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``Eigen::MatrixXd`` or ``Eigen::RowVectorXf``) pybind11 keeps the matrix and
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returns a numpy array that directly references the Eigen matrix: no copy of the
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data is performed. The numpy array will have ``array.flags.owndata`` set to
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``False`` to indicate that it does not own the data, and the lifetime of the
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stored Eigen matrix will be tied to the returned ``array``.
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If you bind a function with a non-reference, ``const`` return type (e.g.
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``const Eigen::MatrixXd``), the same thing happens except that pybind11 also
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sets the numpy array's ``writeable`` flag to false.
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If you return an lvalue reference or pointer, the usual pybind11 rules apply,
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as dictated by the binding function's return value policy (see the
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documentation on :ref:`return_value_policies` for full details). That means,
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without an explicit return value policy, lvalue references will be copied and
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pointers will be managed by pybind11. In order to avoid copying, you should
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explicitly specify an appropriate return value policy, as in the following
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example:
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.. code-block:: cpp
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class MyClass {
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Eigen::MatrixXd big_mat = Eigen::MatrixXd::Zero(10000, 10000);
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public:
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Eigen::MatrixXd &getMatrix() { return big_mat; }
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const Eigen::MatrixXd &viewMatrix() { return big_mat; }
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};
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// Later, in binding code:
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py::class_<MyClass>(m, "MyClass")
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.def(py::init<>())
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.def("copy_matrix", &MyClass::getMatrix) // Makes a copy!
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.def("get_matrix", &MyClass::getMatrix, py::return_value_policy::reference_internal)
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.def("view_matrix", &MyClass::viewMatrix, py::return_value_policy::reference_internal)
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;
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.. code-block:: python
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a = MyClass()
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m = a.get_matrix() # flags.writeable = True, flags.owndata = False
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v = a.view_matrix() # flags.writeable = False, flags.owndata = False
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c = a.copy_matrix() # flags.writeable = True, flags.owndata = True
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# m[5,6] and v[5,6] refer to the same element, c[5,6] does not.
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Note in this example that ``py::return_value_policy::reference_internal`` is
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used to tie the life of the MyClass object to the life of the returned arrays.
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You may also return an ``Eigen::Ref``, ``Eigen::Map`` or other map-like Eigen
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object (for example, the return value of ``matrix.block()`` and related
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methods) that map into a dense Eigen type. When doing so, the default
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behaviour of pybind11 is to simply reference the returned data: you must take
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care to ensure that this data remains valid! You may ask pybind11 to
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explicitly *copy* such a return value by using the
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``py::return_value_policy::copy`` policy when binding the function. You may
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also use ``py::return_value_policy::reference_internal`` or a
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``py::keep_alive`` to ensure the data stays valid as long as the returned numpy
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array does.
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When returning such a reference of map, pybind11 additionally respects the
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readonly-status of the returned value, marking the numpy array as non-writeable
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if the reference or map was itself read-only.
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.. note::
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Sparse types are always copied when returned.
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.. _storage_orders:
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Storage orders
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==============
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Passing arguments via ``Eigen::Ref`` has some limitations that you must be
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aware of in order to effectively pass matrices by reference. First and
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foremost is that the default ``Eigen::Ref<MatrixType>`` class requires
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contiguous storage along columns (for column-major types, the default in Eigen)
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or rows if ``MatrixType`` is specifically an ``Eigen::RowMajor`` storage type.
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The former, Eigen's default, is incompatible with ``numpy``'s default row-major
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storage, and so you will not be able to pass numpy arrays to Eigen by reference
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without making one of two changes.
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(Note that this does not apply to vectors (or column or row matrices): for such
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types the "row-major" and "column-major" distinction is meaningless).
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The first approach is to change the use of ``Eigen::Ref<MatrixType>`` to the
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more general ``Eigen::Ref<MatrixType, 0, Eigen::Stride<Eigen::Dynamic,
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Eigen::Dynamic>>`` (or similar type with a fully dynamic stride type in the
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third template argument). Since this is a rather cumbersome type, pybind11
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provides a ``py::EigenDRef<MatrixType>`` type alias for your convenience (along
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with EigenDMap for the equivalent Map, and EigenDStride for just the stride
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type).
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This type allows Eigen to map into any arbitrary storage order. This is not
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the default in Eigen for performance reasons: contiguous storage allows
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vectorization that cannot be done when storage is not known to be contiguous at
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compile time. The default ``Eigen::Ref`` stride type allows non-contiguous
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storage along the outer dimension (that is, the rows of a column-major matrix
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or columns of a row-major matrix), but not along the inner dimension.
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This type, however, has the added benefit of also being able to map numpy array
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slices. For example, the following (contrived) example uses Eigen with a numpy
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slice to multiply by 2 all coefficients that are both on even rows (0, 2, 4,
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...) and in columns 2, 5, or 8:
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.. code-block:: cpp
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m.def("scale", [](py::EigenDRef<Eigen::MatrixXd> m, double c) { m *= c; });
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.. code-block:: python
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# a = np.array(...)
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scale_by_2(myarray[0::2, 2:9:3])
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The second approach to avoid copying is more intrusive: rearranging the
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underlying data types to not run into the non-contiguous storage problem in the
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first place. In particular, that means using matrices with ``Eigen::RowMajor``
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storage, where appropriate, such as:
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.. code-block:: cpp
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using RowMatrixXd = Eigen::Matrix<double, Eigen::Dynamic, Eigen::Dynamic, Eigen::RowMajor>;
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// Use RowMatrixXd instead of MatrixXd
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Now bound functions accepting ``Eigen::Ref<RowMatrixXd>`` arguments will be
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callable with numpy's (default) arrays without involving a copying.
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You can, alternatively, change the storage order that numpy arrays use by
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adding the ``order='F'`` option when creating an array:
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.. code-block:: python
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myarray = np.array(source, order="F")
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Such an object will be passable to a bound function accepting an
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``Eigen::Ref<MatrixXd>`` (or similar column-major Eigen type).
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One major caveat with this approach, however, is that it is not entirely as
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easy as simply flipping all Eigen or numpy usage from one to the other: some
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operations may alter the storage order of a numpy array. For example, ``a2 =
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array.transpose()`` results in ``a2`` being a view of ``array`` that references
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the same data, but in the opposite storage order!
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While this approach allows fully optimized vectorized calculations in Eigen, it
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cannot be used with array slices, unlike the first approach.
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When *returning* a matrix to Python (either a regular matrix, a reference via
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``Eigen::Ref<>``, or a map/block into a matrix), no special storage
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consideration is required: the created numpy array will have the required
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stride that allows numpy to properly interpret the array, whatever its storage
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order.
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Failing rather than copying
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===========================
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The default behaviour when binding ``Eigen::Ref<const MatrixType>`` Eigen
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references is to copy matrix values when passed a numpy array that does not
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conform to the element type of ``MatrixType`` or does not have a compatible
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stride layout. If you want to explicitly avoid copying in such a case, you
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should bind arguments using the ``py::arg().noconvert()`` annotation (as
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described in the :ref:`nonconverting_arguments` documentation).
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The following example shows an example of arguments that don't allow data
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copying to take place:
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.. code-block:: cpp
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// The method and function to be bound:
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class MyClass {
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// ...
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double some_method(const Eigen::Ref<const MatrixXd> &matrix) { /* ... */ }
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};
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float some_function(const Eigen::Ref<const MatrixXf> &big,
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const Eigen::Ref<const MatrixXf> &small) {
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// ...
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}
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// The associated binding code:
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using namespace pybind11::literals; // for "arg"_a
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py::class_<MyClass>(m, "MyClass")
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// ... other class definitions
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.def("some_method", &MyClass::some_method, py::arg().noconvert());
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m.def("some_function", &some_function,
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"big"_a.noconvert(), // <- Don't allow copying for this arg
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"small"_a // <- This one can be copied if needed
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);
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With the above binding code, attempting to call the ``some_method(m)``
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method on a ``MyClass`` object, or attempting to call ``some_function(m, m2)``
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will raise a ``RuntimeError`` rather than making a temporary copy of the array.
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It will, however, allow the ``m2`` argument to be copied into a temporary if
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necessary.
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Note that explicitly specifying ``.noconvert()`` is not required for *mutable*
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Eigen references (e.g. ``Eigen::Ref<MatrixXd>`` without ``const`` on the
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``MatrixXd``): mutable references will never be called with a temporary copy.
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Vectors versus column/row matrices
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==================================
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Eigen and numpy have fundamentally different notions of a vector. In Eigen, a
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vector is simply a matrix with the number of columns or rows set to 1 at
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compile time (for a column vector or row vector, respectively). NumPy, in
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contrast, has comparable 2-dimensional 1xN and Nx1 arrays, but *also* has
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1-dimensional arrays of size N.
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When passing a 2-dimensional 1xN or Nx1 array to Eigen, the Eigen type must
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have matching dimensions: That is, you cannot pass a 2-dimensional Nx1 numpy
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array to an Eigen value expecting a row vector, or a 1xN numpy array as a
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column vector argument.
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On the other hand, pybind11 allows you to pass 1-dimensional arrays of length N
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as Eigen parameters. If the Eigen type can hold a column vector of length N it
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will be passed as such a column vector. If not, but the Eigen type constraints
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will accept a row vector, it will be passed as a row vector. (The column
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vector takes precedence when both are supported, for example, when passing a
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1D numpy array to a MatrixXd argument). Note that the type need not be
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explicitly a vector: it is permitted to pass a 1D numpy array of size 5 to an
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Eigen ``Matrix<double, Dynamic, 5>``: you would end up with a 1x5 Eigen matrix.
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Passing the same to an ``Eigen::MatrixXd`` would result in a 5x1 Eigen matrix.
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When returning an Eigen vector to numpy, the conversion is ambiguous: a row
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vector of length 4 could be returned as either a 1D array of length 4, or as a
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2D array of size 1x4. When encountering such a situation, pybind11 compromises
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by considering the returned Eigen type: if it is a compile-time vector--that
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is, the type has either the number of rows or columns set to 1 at compile
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time--pybind11 converts to a 1D numpy array when returning the value. For
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instances that are a vector only at run-time (e.g. ``MatrixXd``,
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``Matrix<float, Dynamic, 4>``), pybind11 returns the vector as a 2D array to
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numpy. If this isn't want you want, you can use ``array.reshape(...)`` to get
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a view of the same data in the desired dimensions.
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.. seealso::
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The file :file:`tests/test_eigen.cpp` contains a complete example that
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shows how to pass Eigen sparse and dense data types in more detail.
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