1Eigen 2##### 3 4`Eigen <http://eigen.tuxfamily.org>`_ is C++ header-based library for dense and 5sparse linear algebra. Due to its popularity and widespread adoption, pybind11 6provides transparent conversion and limited mapping support between Eigen and 7Scientific Python linear algebra data types. 8 9To enable the built-in Eigen support you must include the optional header file 10:file:`pybind11/eigen.h`. 11 12Pass-by-value 13============= 14 15When binding a function with ordinary Eigen dense object arguments (for 16example, ``Eigen::MatrixXd``), pybind11 will accept any input value that is 17already (or convertible to) a ``numpy.ndarray`` with dimensions compatible with 18the Eigen type, copy its values into a temporary Eigen variable of the 19appropriate type, then call the function with this temporary variable. 20 21Sparse matrices are similarly copied to or from 22``scipy.sparse.csr_matrix``/``scipy.sparse.csc_matrix`` objects. 23 24Pass-by-reference 25================= 26 27One major limitation of the above is that every data conversion implicitly 28involves a copy, which can be both expensive (for large matrices) and disallows 29binding functions that change their (Matrix) arguments. Pybind11 allows you to 30work around this by using Eigen's ``Eigen::Ref<MatrixType>`` class much as you 31would when writing a function taking a generic type in Eigen itself (subject to 32some limitations discussed below). 33 34When calling a bound function accepting a ``Eigen::Ref<const MatrixType>`` 35type, pybind11 will attempt to avoid copying by using an ``Eigen::Map`` object 36that maps into the source ``numpy.ndarray`` data: this requires both that the 37data types are the same (e.g. ``dtype='float64'`` and ``MatrixType::Scalar`` is 38``double``); and that the storage is layout compatible. The latter limitation 39is discussed in detail in the section below, and requires careful 40consideration: by default, numpy matrices and Eigen matrices are *not* storage 41compatible. 42 43If the numpy matrix cannot be used as is (either because its types differ, e.g. 44passing an array of integers to an Eigen parameter requiring doubles, or 45because the storage is incompatible), pybind11 makes a temporary copy and 46passes the copy instead. 47 48When a bound function parameter is instead ``Eigen::Ref<MatrixType>`` (note the 49lack of ``const``), pybind11 will only allow the function to be called if it 50can be mapped *and* if the numpy array is writeable (that is 51``a.flags.writeable`` is true). Any access (including modification) made to 52the passed variable will be transparently carried out directly on the 53``numpy.ndarray``. 54 55This means you can can write code such as the following and have it work as 56expected: 57 58.. code-block:: cpp 59 60 void scale_by_2(Eigen::Ref<Eigen::VectorXd> v) { 61 v *= 2; 62 } 63 64Note, however, that you will likely run into limitations due to numpy and 65Eigen's difference default storage order for data; see the below section on 66:ref:`storage_orders` for details on how to bind code that won't run into such 67limitations. 68 69.. note:: 70 71 Passing by reference is not supported for sparse types. 72 73Returning values to Python 74========================== 75 76When returning an ordinary dense Eigen matrix type to numpy (e.g. 77``Eigen::MatrixXd`` or ``Eigen::RowVectorXf``) pybind11 keeps the matrix and 78returns a numpy array that directly references the Eigen matrix: no copy of the 79data is performed. The numpy array will have ``array.flags.owndata`` set to 80``False`` to indicate that it does not own the data, and the lifetime of the 81stored Eigen matrix will be tied to the returned ``array``. 82 83If you bind a function with a non-reference, ``const`` return type (e.g. 84``const Eigen::MatrixXd``), the same thing happens except that pybind11 also 85sets the numpy array's ``writeable`` flag to false. 86 87If you return an lvalue reference or pointer, the usual pybind11 rules apply, 88as dictated by the binding function's return value policy (see the 89documentation on :ref:`return_value_policies` for full details). That means, 90without an explicit return value policy, lvalue references will be copied and 91pointers will be managed by pybind11. In order to avoid copying, you should 92explicitly specify an appropriate return value policy, as in the following 93example: 94 95.. code-block:: cpp 96 97 class MyClass { 98 Eigen::MatrixXd big_mat = Eigen::MatrixXd::Zero(10000, 10000); 99 public: 100 Eigen::MatrixXd &getMatrix() { return big_mat; } 101 const Eigen::MatrixXd &viewMatrix() { return big_mat; } 102 }; 103 104 // Later, in binding code: 105 py::class_<MyClass>(m, "MyClass") 106 .def(py::init<>()) 107 .def("copy_matrix", &MyClass::getMatrix) // Makes a copy! 108 .def("get_matrix", &MyClass::getMatrix, py::return_value_policy::reference_internal) 109 .def("view_matrix", &MyClass::viewMatrix, py::return_value_policy::reference_internal) 110 ; 111 112.. code-block:: python 113 114 a = MyClass() 115 m = a.get_matrix() # flags.writeable = True, flags.owndata = False 116 v = a.view_matrix() # flags.writeable = False, flags.owndata = False 117 c = a.copy_matrix() # flags.writeable = True, flags.owndata = True 118 # m[5,6] and v[5,6] refer to the same element, c[5,6] does not. 119 120Note in this example that ``py::return_value_policy::reference_internal`` is 121used to tie the life of the MyClass object to the life of the returned arrays. 122 123You may also return an ``Eigen::Ref``, ``Eigen::Map`` or other map-like Eigen 124object (for example, the return value of ``matrix.block()`` and related 125methods) that map into a dense Eigen type. When doing so, the default 126behaviour of pybind11 is to simply reference the returned data: you must take 127care to ensure that this data remains valid! You may ask pybind11 to 128explicitly *copy* such a return value by using the 129``py::return_value_policy::copy`` policy when binding the function. You may 130also use ``py::return_value_policy::reference_internal`` or a 131``py::keep_alive`` to ensure the data stays valid as long as the returned numpy 132array does. 133 134When returning such a reference of map, pybind11 additionally respects the 135readonly-status of the returned value, marking the numpy array as non-writeable 136if the reference or map was itself read-only. 137 138.. note:: 139 140 Sparse types are always copied when returned. 141 142.. _storage_orders: 143 144Storage orders 145============== 146 147Passing arguments via ``Eigen::Ref`` has some limitations that you must be 148aware of in order to effectively pass matrices by reference. First and 149foremost is that the default ``Eigen::Ref<MatrixType>`` class requires 150contiguous storage along columns (for column-major types, the default in Eigen) 151or rows if ``MatrixType`` is specifically an ``Eigen::RowMajor`` storage type. 152The former, Eigen's default, is incompatible with ``numpy``'s default row-major 153storage, and so you will not be able to pass numpy arrays to Eigen by reference 154without making one of two changes. 155 156(Note that this does not apply to vectors (or column or row matrices): for such 157types the "row-major" and "column-major" distinction is meaningless). 158 159The first approach is to change the use of ``Eigen::Ref<MatrixType>`` to the 160more general ``Eigen::Ref<MatrixType, 0, Eigen::Stride<Eigen::Dynamic, 161Eigen::Dynamic>>`` (or similar type with a fully dynamic stride type in the 162third template argument). Since this is a rather cumbersome type, pybind11 163provides a ``py::EigenDRef<MatrixType>`` type alias for your convenience (along 164with EigenDMap for the equivalent Map, and EigenDStride for just the stride 165type). 166 167This type allows Eigen to map into any arbitrary storage order. This is not 168the default in Eigen for performance reasons: contiguous storage allows 169vectorization that cannot be done when storage is not known to be contiguous at 170compile time. The default ``Eigen::Ref`` stride type allows non-contiguous 171storage along the outer dimension (that is, the rows of a column-major matrix 172or columns of a row-major matrix), but not along the inner dimension. 173 174This type, however, has the added benefit of also being able to map numpy array 175slices. For example, the following (contrived) example uses Eigen with a numpy 176slice to multiply by 2 all coefficients that are both on even rows (0, 2, 4, 177...) and in columns 2, 5, or 8: 178 179.. code-block:: cpp 180 181 m.def("scale", [](py::EigenDRef<Eigen::MatrixXd> m, double c) { m *= c; }); 182 183.. code-block:: python 184 185 # a = np.array(...) 186 scale_by_2(myarray[0::2, 2:9:3]) 187 188The second approach to avoid copying is more intrusive: rearranging the 189underlying data types to not run into the non-contiguous storage problem in the 190first place. In particular, that means using matrices with ``Eigen::RowMajor`` 191storage, where appropriate, such as: 192 193.. code-block:: cpp 194 195 using RowMatrixXd = Eigen::Matrix<double, Eigen::Dynamic, Eigen::Dynamic, Eigen::RowMajor>; 196 // Use RowMatrixXd instead of MatrixXd 197 198Now bound functions accepting ``Eigen::Ref<RowMatrixXd>`` arguments will be 199callable with numpy's (default) arrays without involving a copying. 200 201You can, alternatively, change the storage order that numpy arrays use by 202adding the ``order='F'`` option when creating an array: 203 204.. code-block:: python 205 206 myarray = np.array(source, order='F') 207 208Such an object will be passable to a bound function accepting an 209``Eigen::Ref<MatrixXd>`` (or similar column-major Eigen type). 210 211One major caveat with this approach, however, is that it is not entirely as 212easy as simply flipping all Eigen or numpy usage from one to the other: some 213operations may alter the storage order of a numpy array. For example, ``a2 = 214array.transpose()`` results in ``a2`` being a view of ``array`` that references 215the same data, but in the opposite storage order! 216 217While this approach allows fully optimized vectorized calculations in Eigen, it 218cannot be used with array slices, unlike the first approach. 219 220When *returning* a matrix to Python (either a regular matrix, a reference via 221``Eigen::Ref<>``, or a map/block into a matrix), no special storage 222consideration is required: the created numpy array will have the required 223stride that allows numpy to properly interpret the array, whatever its storage 224order. 225 226Failing rather than copying 227=========================== 228 229The default behaviour when binding ``Eigen::Ref<const MatrixType>`` Eigen 230references is to copy matrix values when passed a numpy array that does not 231conform to the element type of ``MatrixType`` or does not have a compatible 232stride layout. If you want to explicitly avoid copying in such a case, you 233should bind arguments using the ``py::arg().noconvert()`` annotation (as 234described in the :ref:`nonconverting_arguments` documentation). 235 236The following example shows an example of arguments that don't allow data 237copying to take place: 238 239.. code-block:: cpp 240 241 // The method and function to be bound: 242 class MyClass { 243 // ... 244 double some_method(const Eigen::Ref<const MatrixXd> &matrix) { /* ... */ } 245 }; 246 float some_function(const Eigen::Ref<const MatrixXf> &big, 247 const Eigen::Ref<const MatrixXf> &small) { 248 // ... 249 } 250 251 // The associated binding code: 252 using namespace pybind11::literals; // for "arg"_a 253 py::class_<MyClass>(m, "MyClass") 254 // ... other class definitions 255 .def("some_method", &MyClass::some_method, py::arg().noconvert()); 256 257 m.def("some_function", &some_function, 258 "big"_a.noconvert(), // <- Don't allow copying for this arg 259 "small"_a // <- This one can be copied if needed 260 ); 261 262With the above binding code, attempting to call the the ``some_method(m)`` 263method on a ``MyClass`` object, or attempting to call ``some_function(m, m2)`` 264will raise a ``RuntimeError`` rather than making a temporary copy of the array. 265It will, however, allow the ``m2`` argument to be copied into a temporary if 266necessary. 267 268Note that explicitly specifying ``.noconvert()`` is not required for *mutable* 269Eigen references (e.g. ``Eigen::Ref<MatrixXd>`` without ``const`` on the 270``MatrixXd``): mutable references will never be called with a temporary copy. 271 272Vectors versus column/row matrices 273================================== 274 275Eigen and numpy have fundamentally different notions of a vector. In Eigen, a 276vector is simply a matrix with the number of columns or rows set to 1 at 277compile time (for a column vector or row vector, respectively). Numpy, in 278contrast, has comparable 2-dimensional 1xN and Nx1 arrays, but *also* has 2791-dimensional arrays of size N. 280 281When passing a 2-dimensional 1xN or Nx1 array to Eigen, the Eigen type must 282have matching dimensions: That is, you cannot pass a 2-dimensional Nx1 numpy 283array to an Eigen value expecting a row vector, or a 1xN numpy array as a 284column vector argument. 285 286On the other hand, pybind11 allows you to pass 1-dimensional arrays of length N 287as Eigen parameters. If the Eigen type can hold a column vector of length N it 288will be passed as such a column vector. If not, but the Eigen type constraints 289will accept a row vector, it will be passed as a row vector. (The column 290vector takes precedence when both are supported, for example, when passing a 2911D numpy array to a MatrixXd argument). Note that the type need not be 292explicitly a vector: it is permitted to pass a 1D numpy array of size 5 to an 293Eigen ``Matrix<double, Dynamic, 5>``: you would end up with a 1x5 Eigen matrix. 294Passing the same to an ``Eigen::MatrixXd`` would result in a 5x1 Eigen matrix. 295 296When returning an Eigen vector to numpy, the conversion is ambiguous: a row 297vector of length 4 could be returned as either a 1D array of length 4, or as a 2982D array of size 1x4. When encountering such a situation, pybind11 compromises 299by considering the returned Eigen type: if it is a compile-time vector--that 300is, the type has either the number of rows or columns set to 1 at compile 301time--pybind11 converts to a 1D numpy array when returning the value. For 302instances that are a vector only at run-time (e.g. ``MatrixXd``, 303``Matrix<float, Dynamic, 4>``), pybind11 returns the vector as a 2D array to 304numpy. If this isn't want you want, you can use ``array.reshape(...)`` to get 305a view of the same data in the desired dimensions. 306 307.. seealso:: 308 309 The file :file:`tests/test_eigen.cpp` contains a complete example that 310 shows how to pass Eigen sparse and dense data types in more detail. 311