| .. _advanced: |
| |
| Advanced topics |
| ############### |
| |
| For brevity, the rest of this chapter assumes that the following two lines are |
| present: |
| |
| .. code-block:: cpp |
| |
| #include <pybind11/pybind11.h> |
| |
| namespace py = pybind11; |
| |
| Exporting constants and mutable objects |
| ======================================= |
| |
| To expose a C++ constant, use the ``attr`` function to register it in a module |
| as shown below. The ``int_`` class is one of many small wrapper objects defined |
| in ``pybind11/pytypes.h``. General objects (including integers) can also be |
| converted using the function ``cast``. |
| |
| .. code-block:: cpp |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example", "pybind11 example plugin"); |
| m.attr("MY_CONSTANT") = py::int_(123); |
| m.attr("MY_CONSTANT_2") = py::cast(new MyObject()); |
| } |
| |
| Operator overloading |
| ==================== |
| |
| Suppose that we're given the following ``Vector2`` class with a vector addition |
| and scalar multiplication operation, all implemented using overloaded operators |
| in C++. |
| |
| .. code-block:: cpp |
| |
| class Vector2 { |
| public: |
| Vector2(float x, float y) : x(x), y(y) { } |
| |
| Vector2 operator+(const Vector2 &v) const { return Vector2(x + v.x, y + v.y); } |
| Vector2 operator*(float value) const { return Vector2(x * value, y * value); } |
| Vector2& operator+=(const Vector2 &v) { x += v.x; y += v.y; return *this; } |
| Vector2& operator*=(float v) { x *= v; y *= v; return *this; } |
| |
| friend Vector2 operator*(float f, const Vector2 &v) { |
| return Vector2(f * v.x, f * v.y); |
| } |
| |
| std::string toString() const { |
| return "[" + std::to_string(x) + ", " + std::to_string(y) + "]"; |
| } |
| private: |
| float x, y; |
| }; |
| |
| The following snippet shows how the above operators can be conveniently exposed |
| to Python. |
| |
| .. code-block:: cpp |
| |
| #include <pybind11/operators.h> |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example", "pybind11 example plugin"); |
| |
| py::class_<Vector2>(m, "Vector2") |
| .def(py::init<float, float>()) |
| .def(py::self + py::self) |
| .def(py::self += py::self) |
| .def(py::self *= float()) |
| .def(float() * py::self) |
| .def("__repr__", &Vector2::toString); |
| |
| return m.ptr(); |
| } |
| |
| Note that a line like |
| |
| .. code-block:: cpp |
| |
| .def(py::self * float()) |
| |
| is really just short hand notation for |
| |
| .. code-block:: cpp |
| |
| .def("__mul__", [](const Vector2 &a, float b) { |
| return a * b; |
| }) |
| |
| This can be useful for exposing additional operators that don't exist on the |
| C++ side, or to perform other types of customization. |
| |
| .. note:: |
| |
| To use the more convenient ``py::self`` notation, the additional |
| header file :file:`pybind11/operators.h` must be included. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-operator-overloading.cpp` contains a |
| complete example that demonstrates how to work with overloaded operators in |
| more detail. |
| |
| Callbacks and passing anonymous functions |
| ========================================= |
| |
| The C++11 standard brought lambda functions and the generic polymorphic |
| function wrapper ``std::function<>`` to the C++ programming language, which |
| enable powerful new ways of working with functions. Lambda functions come in |
| two flavors: stateless lambda function resemble classic function pointers that |
| link to an anonymous piece of code, while stateful lambda functions |
| additionally depend on captured variables that are stored in an anonymous |
| *lambda closure object*. |
| |
| Here is a simple example of a C++ function that takes an arbitrary function |
| (stateful or stateless) with signature ``int -> int`` as an argument and runs |
| it with the value 10. |
| |
| .. code-block:: cpp |
| |
| int func_arg(const std::function<int(int)> &f) { |
| return f(10); |
| } |
| |
| The example below is more involved: it takes a function of signature ``int -> int`` |
| and returns another function of the same kind. The return value is a stateful |
| lambda function, which stores the value ``f`` in the capture object and adds 1 to |
| its return value upon execution. |
| |
| .. code-block:: cpp |
| |
| std::function<int(int)> func_ret(const std::function<int(int)> &f) { |
| return [f](int i) { |
| return f(i) + 1; |
| }; |
| } |
| |
| This example demonstrates using python named parameters in C++ callbacks which |
| requires using ``py::cpp_function`` as a wrapper. Usage is similar to defining |
| methods of classes: |
| |
| .. code-block:: cpp |
| |
| py::cpp_function func_cpp() { |
| return py::cpp_function([](int i) { return i+1; }, |
| py::arg("number")); |
| } |
| |
| After including the extra header file :file:`pybind11/functional.h`, it is almost |
| trivial to generate binding code for all of these functions. |
| |
| .. code-block:: cpp |
| |
| #include <pybind11/functional.h> |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example", "pybind11 example plugin"); |
| |
| m.def("func_arg", &func_arg); |
| m.def("func_ret", &func_ret); |
| m.def("func_cpp", &func_cpp); |
| |
| return m.ptr(); |
| } |
| |
| The following interactive session shows how to call them from Python. |
| |
| .. code-block:: pycon |
| |
| $ python |
| >>> import example |
| >>> def square(i): |
| ... return i * i |
| ... |
| >>> example.func_arg(square) |
| 100L |
| >>> square_plus_1 = example.func_ret(square) |
| >>> square_plus_1(4) |
| 17L |
| >>> plus_1 = func_cpp() |
| >>> plus_1(number=43) |
| 44L |
| |
| .. warning:: |
| |
| Keep in mind that passing a function from C++ to Python (or vice versa) |
| will instantiate a piece of wrapper code that translates function |
| invocations between the two languages. Naturally, this translation |
| increases the computational cost of each function call somewhat. A |
| problematic situation can arise when a function is copied back and forth |
| between Python and C++ many times in a row, in which case the underlying |
| wrappers will accumulate correspondingly. The resulting long sequence of |
| C++ -> Python -> C++ -> ... roundtrips can significantly decrease |
| performance. |
| |
| There is one exception: pybind11 detects case where a stateless function |
| (i.e. a function pointer or a lambda function without captured variables) |
| is passed as an argument to another C++ function exposed in Python. In this |
| case, there is no overhead. Pybind11 will extract the underlying C++ |
| function pointer from the wrapped function to sidestep a potential C++ -> |
| Python -> C++ roundtrip. This is demonstrated in Example 5. |
| |
| .. note:: |
| |
| This functionality is very useful when generating bindings for callbacks in |
| C++ libraries (e.g. GUI libraries, asynchronous networking libraries, etc.). |
| |
| The file :file:`example/example-callbacks.cpp` contains a complete example |
| that demonstrates how to work with callbacks and anonymous functions in |
| more detail. |
| |
| Overriding virtual functions in Python |
| ====================================== |
| |
| Suppose that a C++ class or interface has a virtual function that we'd like to |
| to override from within Python (we'll focus on the class ``Animal``; ``Dog`` is |
| given as a specific example of how one would do this with traditional C++ |
| code). |
| |
| .. code-block:: cpp |
| |
| class Animal { |
| public: |
| virtual ~Animal() { } |
| virtual std::string go(int n_times) = 0; |
| }; |
| |
| class Dog : public Animal { |
| public: |
| std::string go(int n_times) override { |
| std::string result; |
| for (int i=0; i<n_times; ++i) |
| result += "woof! "; |
| return result; |
| } |
| }; |
| |
| Let's also suppose that we are given a plain function which calls the |
| function ``go()`` on an arbitrary ``Animal`` instance. |
| |
| .. code-block:: cpp |
| |
| std::string call_go(Animal *animal) { |
| return animal->go(3); |
| } |
| |
| Normally, the binding code for these classes would look as follows: |
| |
| .. code-block:: cpp |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example", "pybind11 example plugin"); |
| |
| py::class_<Animal> animal(m, "Animal"); |
| animal |
| .def("go", &Animal::go); |
| |
| py::class_<Dog>(m, "Dog", animal) |
| .def(py::init<>()); |
| |
| m.def("call_go", &call_go); |
| |
| return m.ptr(); |
| } |
| |
| However, these bindings are impossible to extend: ``Animal`` is not |
| constructible, and we clearly require some kind of "trampoline" that |
| redirects virtual calls back to Python. |
| |
| Defining a new type of ``Animal`` from within Python is possible but requires a |
| helper class that is defined as follows: |
| |
| .. code-block:: cpp |
| |
| class PyAnimal : public Animal { |
| public: |
| /* Inherit the constructors */ |
| using Animal::Animal; |
| |
| /* Trampoline (need one for each virtual function) */ |
| std::string go(int n_times) override { |
| PYBIND11_OVERLOAD_PURE( |
| std::string, /* Return type */ |
| Animal, /* Parent class */ |
| go, /* Name of function */ |
| n_times /* Argument(s) */ |
| ); |
| } |
| }; |
| |
| The macro :func:`PYBIND11_OVERLOAD_PURE` should be used for pure virtual |
| functions, and :func:`PYBIND11_OVERLOAD` should be used for functions which have |
| a default implementation. |
| |
| There are also two alternate macros :func:`PYBIND11_OVERLOAD_PURE_NAME` and |
| :func:`PYBIND11_OVERLOAD_NAME` which take a string-valued name argument |
| after the *Name of the function* slot. This is useful when the C++ and Python |
| versions of the function have different names, e.g. ``operator()`` vs ``__call__``. |
| |
| The binding code also needs a few minor adaptations (highlighted): |
| |
| .. code-block:: cpp |
| :emphasize-lines: 4,6,7 |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example", "pybind11 example plugin"); |
| |
| py::class_<Animal, std::unique_ptr<Animal>, PyAnimal /* <--- trampoline*/> animal(m, "Animal"); |
| animal |
| .def(py::init<>()) |
| .def("go", &Animal::go); |
| |
| py::class_<Dog>(m, "Dog", animal) |
| .def(py::init<>()); |
| |
| m.def("call_go", &call_go); |
| |
| return m.ptr(); |
| } |
| |
| Importantly, pybind11 is made aware of the trampoline trampoline helper class |
| by specifying it as the *third* template argument to :class:`class_`. The |
| second argument with the unique pointer is simply the default holder type used |
| by pybind11. Following this, we are able to define a constructor as usual. |
| |
| Note, however, that the above is sufficient for allowing python classes to |
| extend ``Animal``, but not ``Dog``: see ref:`virtual_and_inheritance` for the |
| necessary steps required to providing proper overload support for inherited |
| classes. |
| |
| The Python session below shows how to override ``Animal::go`` and invoke it via |
| a virtual method call. |
| |
| .. code-block:: pycon |
| |
| >>> from example import * |
| >>> d = Dog() |
| >>> call_go(d) |
| u'woof! woof! woof! ' |
| >>> class Cat(Animal): |
| ... def go(self, n_times): |
| ... return "meow! " * n_times |
| ... |
| >>> c = Cat() |
| >>> call_go(c) |
| u'meow! meow! meow! ' |
| |
| Please take a look at the :ref:`macro_notes` before using this feature. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-virtual-functions.cpp` contains a complete |
| example that demonstrates how to override virtual functions using pybind11 |
| in more detail. |
| |
| .. _virtual_and_inheritance: |
| |
| Combining virtual functions and inheritance |
| =========================================== |
| |
| When combining virtual methods with inheritance, you need to be sure to provide |
| an override for each method for which you want to allow overrides from derived |
| python classes. For example, suppose we extend the above ``Animal``/``Dog`` |
| example as follows: |
| |
| .. code-block:: cpp |
| class Animal { |
| public: |
| virtual std::string go(int n_times) = 0; |
| virtual std::string name() { return "unknown"; } |
| }; |
| class Dog : public class Animal { |
| public: |
| std::string go(int n_times) override { |
| std::string result; |
| for (int i=0; i<n_times; ++i) |
| result += bark() + " "; |
| return result; |
| } |
| virtual std::string bark() { return "woof!"; } |
| }; |
| |
| then the trampoline class for ``Animal`` must, as described in the previous |
| section, override ``go()`` and ``name()``, but in order to allow python code to |
| inherit properly from ``Dog``, we also need a trampoline class for ``Dog`` that |
| overrides both the added ``bark()`` method *and* the ``go()`` and ``name()`` |
| methods inherited from ``Animal`` (even though ``Dog`` doesn't directly |
| override the ``name()`` method): |
| |
| .. code-block:: cpp |
| class PyAnimal : public Animal { |
| public: |
| using Animal::Animal; // Inherit constructors |
| std::string go(int n_times) override { PYBIND11_OVERLOAD_PURE(std::string, Animal, go, n_times); } |
| std::string name() override { PYBIND11_OVERLOAD(std::string, Animal, name, ); } |
| }; |
| class PyDog : public Dog { |
| public: |
| using Dog::Dog; // Inherit constructors |
| std::string go(int n_times) override { PYBIND11_OVERLOAD_PURE(std::string, Dog, go, n_times); } |
| std::string name() override { PYBIND11_OVERLOAD(std::string, Dog, name, ); } |
| std::string bark() override { PYBIND11_OVERLOAD(std::string, Dog, bark, ); } |
| }; |
| |
| A registered class derived from a pybind11-registered class with virtual |
| methods requires a similar trampoline class, *even if* it doesn't explicitly |
| declare or override any virtual methods itself: |
| |
| .. code-block:: cpp |
| class Husky : public Dog {}; |
| class PyHusky : public Husky { |
| using Dog::Dog; // Inherit constructors |
| std::string go(int n_times) override { PYBIND11_OVERLOAD_PURE(std::string, Husky, go, n_times); } |
| std::string name() override { PYBIND11_OVERLOAD(std::string, Husky, name, ); } |
| std::string bark() override { PYBIND11_OVERLOAD(std::string, Husky, bark, ); } |
| }; |
| |
| There is, however, a technique that can be used to avoid this duplication |
| (which can be especially helpful for a base class with several virtual |
| methods). The technique involves using template trampoline classes, as |
| follows: |
| |
| .. code-block:: cpp |
| template <class AnimalBase = Animal> class PyAnimal : public AnimalBase { |
| using AnimalBase::AnimalBase; // Inherit constructors |
| std::string go(int n_times) override { PYBIND11_OVERLOAD_PURE(std::string, AnimalBase, go, n_times); } |
| std::string name() override { PYBIND11_OVERLOAD(std::string, AnimalBase, name, ); } |
| }; |
| template <class DogBase = Dog> class PyDog : public PyAnimal<DogBase> { |
| using PyAnimal<DogBase>::PyAnimal; // Inherit constructors |
| // Override PyAnimal's pure virtual go() with a non-pure one: |
| std::string go(int n_times) override { PYBIND11_OVERLOAD(std::string, DogBase, go, n_times); } |
| std::string bark() override { PYBIND11_OVERLOAD(std::string, DogBase, bark, ); } |
| }; |
| |
| This technique has the advantage of requiring just one trampoline method to be |
| declared per virtual method and pure virtual method override. It does, |
| however, require the compiler to generate at least as many methods (and |
| possibly more, if both pure virtual and overridden pure virtual methods are |
| exposed, as above). |
| |
| The classes are then registered with pybind11 using: |
| |
| .. code-block:: cpp |
| py::class_<Animal, std::unique_ptr<Animal>, PyAnimal<>> animal(m, "Animal"); |
| py::class_<Dog, std::unique_ptr<Dog>, PyDog<>> dog(m, "Dog"); |
| py::class_<Husky, std::unique_ptr<Husky>, PyDog<Husky>> husky(m, "Husky"); |
| // ... add animal, dog, husky definitions |
| |
| Note that ``Husky`` did not require a dedicated trampoline template class at |
| all, since it neither declares any new virtual methods nor provides any pure |
| virtual method implementations. |
| |
| With either the repeated-virtuals or templated trampoline methods in place, you |
| can now create a python class that inherits from ``Dog``: |
| |
| .. code-block:: python |
| |
| class ShihTzu(Dog): |
| def bark(self): |
| return "yip!" |
| |
| .. seealso:: |
| |
| See the file :file:`example-virtual-functions.cpp` for complete examples |
| using both the duplication and templated trampoline approaches. |
| |
| .. _macro_notes: |
| |
| General notes regarding convenience macros |
| ========================================== |
| |
| pybind11 provides a few convenience macros such as |
| :func:`PYBIND11_MAKE_OPAQUE` and :func:`PYBIND11_DECLARE_HOLDER_TYPE`, and |
| ``PYBIND11_OVERLOAD_*``. Since these are "just" macros that are evaluated |
| in the preprocessor (which has no concept of types), they *will* get confused |
| by commas in a template argument such as ``PYBIND11_OVERLOAD(MyReturnValue<T1, |
| T2>, myFunc)``. In this case, the preprocessor assumes that the comma indicates |
| the beginnning of the next parameter. Use a ``typedef`` to bind the template to |
| another name and use it in the macro to avoid this problem. |
| |
| |
| Global Interpreter Lock (GIL) |
| ============================= |
| |
| The classes :class:`gil_scoped_release` and :class:`gil_scoped_acquire` can be |
| used to acquire and release the global interpreter lock in the body of a C++ |
| function call. In this way, long-running C++ code can be parallelized using |
| multiple Python threads. Taking the previous section as an example, this could |
| be realized as follows (important changes highlighted): |
| |
| .. code-block:: cpp |
| :emphasize-lines: 8,9,33,34 |
| |
| class PyAnimal : public Animal { |
| public: |
| /* Inherit the constructors */ |
| using Animal::Animal; |
| |
| /* Trampoline (need one for each virtual function) */ |
| std::string go(int n_times) { |
| /* Acquire GIL before calling Python code */ |
| py::gil_scoped_acquire acquire; |
| |
| PYBIND11_OVERLOAD_PURE( |
| std::string, /* Return type */ |
| Animal, /* Parent class */ |
| go, /* Name of function */ |
| n_times /* Argument(s) */ |
| ); |
| } |
| }; |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example", "pybind11 example plugin"); |
| |
| py::class_<Animal, std::unique_ptr<Animal>, PyAnimal> animal(m, "Animal"); |
| animal |
| .def(py::init<>()) |
| .def("go", &Animal::go); |
| |
| py::class_<Dog>(m, "Dog", animal) |
| .def(py::init<>()); |
| |
| m.def("call_go", [](Animal *animal) -> std::string { |
| /* Release GIL before calling into (potentially long-running) C++ code */ |
| py::gil_scoped_release release; |
| return call_go(animal); |
| }); |
| |
| return m.ptr(); |
| } |
| |
| Passing STL data structures |
| =========================== |
| |
| When including the additional header file :file:`pybind11/stl.h`, conversions |
| between ``std::vector<>``, ``std::list<>``, ``std::set<>``, and ``std::map<>`` |
| and the Python ``list``, ``set`` and ``dict`` data structures are automatically |
| enabled. The types ``std::pair<>`` and ``std::tuple<>`` are already supported |
| out of the box with just the core :file:`pybind11/pybind11.h` header. |
| |
| .. note:: |
| |
| Arbitrary nesting of any of these types is supported. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-python-types.cpp` contains a complete |
| example that demonstrates how to pass STL data types in more detail. |
| |
| Binding sequence data types, iterators, the slicing protocol, etc. |
| ================================================================== |
| |
| Please refer to the supplemental example for details. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-sequences-and-iterators.cpp` contains a |
| complete example that shows how to bind a sequence data type, including |
| length queries (``__len__``), iterators (``__iter__``), the slicing |
| protocol and other kinds of useful operations. |
| |
| Return value policies |
| ===================== |
| |
| Python and C++ use wildly different ways of managing the memory and lifetime of |
| objects managed by them. This can lead to issues when creating bindings for |
| functions that return a non-trivial type. Just by looking at the type |
| information, it is not clear whether Python should take charge of the returned |
| value and eventually free its resources, or if this is handled on the C++ side. |
| For this reason, pybind11 provides a several `return value policy` annotations |
| that can be passed to the :func:`module::def` and :func:`class_::def` |
| functions. The default policy is :enum:`return_value_policy::automatic`. |
| |
| .. tabularcolumns:: |p{0.5\textwidth}|p{0.45\textwidth}| |
| |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | Return value policy | Description | |
| +==================================================+============================================================================+ |
| | :enum:`return_value_policy::automatic` | This is the default return value policy, which falls back to the policy | |
| | | :enum:`return_value_policy::take_ownership` when the return value is a | |
| | | pointer. Otherwise, it uses :enum:`return_value::move` or | |
| | | :enum:`return_value::copy` for rvalue and lvalue references, respectively. | |
| | | See below for a description of what all of these different policies do. | |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | :enum:`return_value_policy::automatic_reference` | As above, but use policy :enum:`return_value_policy::reference` when the | |
| | | return value is a pointer. This is the default conversion policy for | |
| | | function arguments when calling Python functions manually from C++ code | |
| | | (i.e. via handle::operator()). You probably won't need to use this. | |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | :enum:`return_value_policy::take_ownership` | Reference an existing object (i.e. do not create a new copy) and take | |
| | | ownership. Python will call the destructor and delete operator when the | |
| | | object's reference count reaches zero. Undefined behavior ensues when the | |
| | | C++ side does the same. | |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | :enum:`return_value_policy::copy` | Create a new copy of the returned object, which will be owned by Python. | |
| | | This policy is comparably safe because the lifetimes of the two instances | |
| | | are decoupled. | |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | :enum:`return_value_policy::move` | Use ``std::move`` to move the return value contents into a new instance | |
| | | that will be owned by Python. This policy is comparably safe because the | |
| | | lifetimes of the two instances (move source and destination) are decoupled.| |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | :enum:`return_value_policy::reference` | Reference an existing object, but do not take ownership. The C++ side is | |
| | | responsible for managing the object's lifetime and deallocating it when | |
| | | it is no longer used. Warning: undefined behavior will ensue when the C++ | |
| | | side deletes an object that is still referenced and used by Python. | |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| | :enum:`return_value_policy::reference_internal` | Like :enum:`return_value_policy::reference` but additionally applies a | |
| | | :class:`keep_alive<0,1>()` call policy (described next) that keeps the | |
| | | ``this`` argument of the function or property from being garbage collected | |
| | | as long as the return value remains referenced. See the | |
| | | :class:`keep_alive` call policy (described next) for details. | |
| +--------------------------------------------------+----------------------------------------------------------------------------+ |
| |
| .. warning:: |
| |
| Code with invalid return value policies might access unitialized memory or |
| free data structures multiple times, which can lead to hard-to-debug |
| non-determinism and segmentation faults, hence it is worth spending the |
| time to understand all the different options in the table above. |
| |
| One important aspect of the above policies is that they only apply to instances |
| which pybind11 has *not* seen before, in which case the policy clarifies |
| essential questions about the return value's lifetime and ownership. When |
| pybind11 knows the instance already (as identified by its type and address in |
| memory), it will return the existing Python object wrapper rather than creating |
| a copy. |
| |
| .. note:: |
| |
| The next section on :ref:`call_policies` discusses *call policies* that can be |
| specified *in addition* to a return value policy from the list above. Call |
| policies indicate reference relationships that can involve both return values |
| and parameters of functions. |
| |
| .. note:: |
| |
| As an alternative to elaborate call policies and lifetime management logic, |
| consider using smart pointers (see the section on :ref:`smart_pointers` for |
| details). Smart pointers can tell whether an object is still referenced from |
| C++ or Python, which generally eliminates the kinds of inconsistencies that |
| can lead to crashes or undefined behavior. For functions returning smart |
| pointers, it is not necessary to specify a return value policy. |
| |
| .. _call_policies: |
| |
| Additional call policies |
| ======================== |
| |
| In addition to the above return value policies, further `call policies` can be |
| specified to indicate dependencies between parameters. There is currently just |
| one policy named ``keep_alive<Nurse, Patient>``, which indicates that the |
| argument with index ``Patient`` should be kept alive at least until the |
| argument with index ``Nurse`` is freed by the garbage collector; argument |
| indices start at one, while zero refers to the return value. For methods, index |
| one refers to the implicit ``this`` pointer, while regular arguments begin at |
| index two. Arbitrarily many call policies can be specified. |
| |
| Consider the following example: the binding code for a list append operation |
| that ties the lifetime of the newly added element to the underlying container |
| might be declared as follows: |
| |
| .. code-block:: cpp |
| |
| py::class_<List>(m, "List") |
| .def("append", &List::append, py::keep_alive<1, 2>()); |
| |
| .. note:: |
| |
| ``keep_alive`` is analogous to the ``with_custodian_and_ward`` (if Nurse, |
| Patient != 0) and ``with_custodian_and_ward_postcall`` (if Nurse/Patient == |
| 0) policies from Boost.Python. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-keep-alive.cpp` contains a complete example |
| that demonstrates using :class:`keep_alive` in more detail. |
| |
| Implicit type conversions |
| ========================= |
| |
| Suppose that instances of two types ``A`` and ``B`` are used in a project, and |
| that an ``A`` can easily be converted into an instance of type ``B`` (examples of this |
| could be a fixed and an arbitrary precision number type). |
| |
| .. code-block:: cpp |
| |
| py::class_<A>(m, "A") |
| /// ... members ... |
| |
| py::class_<B>(m, "B") |
| .def(py::init<A>()) |
| /// ... members ... |
| |
| m.def("func", |
| [](const B &) { /* .... */ } |
| ); |
| |
| To invoke the function ``func`` using a variable ``a`` containing an ``A`` |
| instance, we'd have to write ``func(B(a))`` in Python. On the other hand, C++ |
| will automatically apply an implicit type conversion, which makes it possible |
| to directly write ``func(a)``. |
| |
| In this situation (i.e. where ``B`` has a constructor that converts from |
| ``A``), the following statement enables similar implicit conversions on the |
| Python side: |
| |
| .. code-block:: cpp |
| |
| py::implicitly_convertible<A, B>(); |
| |
| .. note:: |
| |
| Implicit conversions from ``A`` to ``B`` only work when ``B`` is a custom |
| data type that is exposed to Python via pybind11. |
| |
| .. _static_properties: |
| |
| Static properties |
| ================= |
| |
| The section on :ref:`properties` discussed the creation of instance properties |
| that are implemented in terms of C++ getters and setters. |
| |
| Static properties can also be created in a similar way to expose getters and |
| setters of static class attributes. It is important to note that the implicit |
| ``self`` argument also exists in this case and is used to pass the Python |
| ``type`` subclass instance. This parameter will often not be needed by the C++ |
| side, and the following example illustrates how to instantiate a lambda getter |
| function that ignores it: |
| |
| .. code-block:: cpp |
| |
| py::class_<Foo>(m, "Foo") |
| .def_property_readonly_static("foo", [](py::object /* self */) { return Foo(); }); |
| |
| Unique pointers |
| =============== |
| |
| Given a class ``Example`` with Python bindings, it's possible to return |
| instances wrapped in C++11 unique pointers, like so |
| |
| .. code-block:: cpp |
| |
| std::unique_ptr<Example> create_example() { return std::unique_ptr<Example>(new Example()); } |
| |
| .. code-block:: cpp |
| |
| m.def("create_example", &create_example); |
| |
| In other words, there is nothing special that needs to be done. While returning |
| unique pointers in this way is allowed, it is *illegal* to use them as function |
| arguments. For instance, the following function signature cannot be processed |
| by pybind11. |
| |
| .. code-block:: cpp |
| |
| void do_something_with_example(std::unique_ptr<Example> ex) { ... } |
| |
| The above signature would imply that Python needs to give up ownership of an |
| object that is passed to this function, which is generally not possible (for |
| instance, the object might be referenced elsewhere). |
| |
| .. _smart_pointers: |
| |
| Smart pointers |
| ============== |
| |
| This section explains how to pass values that are wrapped in "smart" pointer |
| types with internal reference counting. For the simpler C++11 unique pointers, |
| refer to the previous section. |
| |
| The binding generator for classes, :class:`class_`, takes an optional second |
| template type, which denotes a special *holder* type that is used to manage |
| references to the object. When wrapping a type named ``Type``, the default |
| value of this template parameter is ``std::unique_ptr<Type>``, which means that |
| the object is deallocated when Python's reference count goes to zero. |
| |
| It is possible to switch to other types of reference counting wrappers or smart |
| pointers, which is useful in codebases that rely on them. For instance, the |
| following snippet causes ``std::shared_ptr`` to be used instead. |
| |
| .. code-block:: cpp |
| |
| py::class_<Example, std::shared_ptr<Example> /* <- holder type */> obj(m, "Example"); |
| |
| Note that any particular class can only be associated with a single holder type. |
| |
| To enable transparent conversions for functions that take shared pointers as an |
| argument or that return them, a macro invocation similar to the following must |
| be declared at the top level before any binding code: |
| |
| .. code-block:: cpp |
| |
| PYBIND11_DECLARE_HOLDER_TYPE(T, std::shared_ptr<T>); |
| |
| .. note:: |
| |
| The first argument of :func:`PYBIND11_DECLARE_HOLDER_TYPE` should be a |
| placeholder name that is used as a template parameter of the second |
| argument. Thus, feel free to use any identifier, but use it consistently on |
| both sides; also, don't use the name of a type that already exists in your |
| codebase. |
| |
| One potential stumbling block when using holder types is that they need to be |
| applied consistently. Can you guess what's broken about the following binding |
| code? |
| |
| .. code-block:: cpp |
| |
| class Child { }; |
| |
| class Parent { |
| public: |
| Parent() : child(std::make_shared<Child>()) { } |
| Child *get_child() { return child.get(); } /* Hint: ** DON'T DO THIS ** */ |
| private: |
| std::shared_ptr<Child> child; |
| }; |
| |
| PYBIND11_PLUGIN(example) { |
| py::module m("example"); |
| |
| py::class_<Child, std::shared_ptr<Child>>(m, "Child"); |
| |
| py::class_<Parent, std::shared_ptr<Parent>>(m, "Parent") |
| .def(py::init<>()) |
| .def("get_child", &Parent::get_child); |
| |
| return m.ptr(); |
| } |
| |
| The following Python code will cause undefined behavior (and likely a |
| segmentation fault). |
| |
| .. code-block:: python |
| |
| from example import Parent |
| print(Parent().get_child()) |
| |
| The problem is that ``Parent::get_child()`` returns a pointer to an instance of |
| ``Child``, but the fact that this instance is already managed by |
| ``std::shared_ptr<...>`` is lost when passing raw pointers. In this case, |
| pybind11 will create a second independent ``std::shared_ptr<...>`` that also |
| claims ownership of the pointer. In the end, the object will be freed **twice** |
| since these shared pointers have no way of knowing about each other. |
| |
| There are two ways to resolve this issue: |
| |
| 1. For types that are managed by a smart pointer class, never use raw pointers |
| in function arguments or return values. In other words: always consistently |
| wrap pointers into their designated holder types (such as |
| ``std::shared_ptr<...>``). In this case, the signature of ``get_child()`` |
| should be modified as follows: |
| |
| .. code-block:: cpp |
| |
| std::shared_ptr<Child> get_child() { return child; } |
| |
| 2. Adjust the definition of ``Child`` by specifying |
| ``std::enable_shared_from_this<T>`` (see cppreference_ for details) as a |
| base class. This adds a small bit of information to ``Child`` that allows |
| pybind11 to realize that there is already an existing |
| ``std::shared_ptr<...>`` and communicate with it. In this case, the |
| declaration of ``Child`` should look as follows: |
| |
| .. _cppreference: http://en.cppreference.com/w/cpp/memory/enable_shared_from_this |
| |
| .. code-block:: cpp |
| |
| class Child : public std::enable_shared_from_this<Child> { }; |
| |
| |
| Please take a look at the :ref:`macro_notes` before using this feature. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-smart-ptr.cpp` contains a complete example |
| that demonstrates how to work with custom reference-counting holder types |
| in more detail. |
| |
| .. _custom_constructors: |
| |
| Custom constructors |
| =================== |
| |
| The syntax for binding constructors was previously introduced, but it only |
| works when a constructor with the given parameters actually exists on the C++ |
| side. To extend this to more general cases, let's take a look at what actually |
| happens under the hood: the following statement |
| |
| .. code-block:: cpp |
| |
| py::class_<Example>(m, "Example") |
| .def(py::init<int>()); |
| |
| is short hand notation for |
| |
| .. code-block:: cpp |
| |
| py::class_<Example>(m, "Example") |
| .def("__init__", |
| [](Example &instance, int arg) { |
| new (&instance) Example(arg); |
| } |
| ); |
| |
| In other words, :func:`init` creates an anonymous function that invokes an |
| in-place constructor. Memory allocation etc. is already take care of beforehand |
| within pybind11. |
| |
| .. _catching_and_throwing_exceptions: |
| |
| Catching and throwing exceptions |
| ================================ |
| |
| When C++ code invoked from Python throws an ``std::exception``, it is |
| automatically converted into a Python ``Exception``. pybind11 defines multiple |
| special exception classes that will map to different types of Python |
| exceptions: |
| |
| .. tabularcolumns:: |p{0.5\textwidth}|p{0.45\textwidth}| |
| |
| +--------------------------------------+------------------------------+ |
| | C++ exception type | Python exception type | |
| +======================================+==============================+ |
| | :class:`std::exception` | ``RuntimeError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`std::bad_alloc` | ``MemoryError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`std::domain_error` | ``ValueError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`std::invalid_argument` | ``ValueError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`std::length_error` | ``ValueError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`std::out_of_range` | ``ValueError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`std::range_error` | ``ValueError`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`pybind11::stop_iteration` | ``StopIteration`` (used to | |
| | | implement custom iterators) | |
| +--------------------------------------+------------------------------+ |
| | :class:`pybind11::index_error` | ``IndexError`` (used to | |
| | | indicate out of bounds | |
| | | accesses in ``__getitem__``, | |
| | | ``__setitem__``, etc.) | |
| +--------------------------------------+------------------------------+ |
| | :class:`pybind11::value_error` | ``ValueError`` (used to | |
| | | indicate wrong value passed | |
| | | in ``container.remove(...)`` | |
| +--------------------------------------+------------------------------+ |
| | :class:`pybind11::key_error` | ``KeyError`` (used to | |
| | | indicate out of bounds | |
| | | accesses in ``__getitem__``, | |
| | | ``__setitem__`` in dict-like | |
| | | objects, etc.) | |
| +--------------------------------------+------------------------------+ |
| | :class:`pybind11::error_already_set` | Indicates that the Python | |
| | | exception flag has already | |
| | | been initialized | |
| +--------------------------------------+------------------------------+ |
| |
| When a Python function invoked from C++ throws an exception, it is converted |
| into a C++ exception of type :class:`error_already_set` whose string payload |
| contains a textual summary. |
| |
| There is also a special exception :class:`cast_error` that is thrown by |
| :func:`handle::call` when the input arguments cannot be converted to Python |
| objects. |
| |
| Registering custom exception translators |
| ======================================== |
| |
| If the default exception conversion policy described |
| :ref:`above <catching_and_throwing_exceptions>` |
| is insufficient, pybind11 also provides support for registering custom |
| exception translators. |
| |
| The function ``register_exception_translator(translator)`` takes a stateless |
| callable (e.g. a function pointer or a lambda function without captured |
| variables) with the following call signature: ``void(std::exception_ptr)``. |
| |
| When a C++ exception is thrown, registered exception translators are tried |
| in reverse order of registration (i.e. the last registered translator gets |
| a first shot at handling the exception). |
| |
| Inside the translator, ``std::rethrow_exception`` should be used within |
| a try block to re-throw the exception. A catch clause can then use |
| ``PyErr_SetString`` to set a Python exception as demonstrated |
| in :file:`example-custom-exceptions.cpp``. |
| |
| This example also demonstrates how to create custom exception types |
| with ``py::exception``. |
| |
| The following example demonstrates this for a hypothetical exception class |
| ``MyCustomException``: |
| |
| .. code-block:: cpp |
| |
| py::register_exception_translator([](std::exception_ptr p) { |
| try { |
| if (p) std::rethrow_exception(p); |
| } catch (const MyCustomException &e) { |
| PyErr_SetString(PyExc_RuntimeError, e.what()); |
| } |
| }); |
| |
| Multiple exceptions can be handled by a single translator. If the exception is |
| not caught by the current translator, the previously registered one gets a |
| chance. |
| |
| If none of the registered exception translators is able to handle the |
| exception, it is handled by the default converter as described in the previous |
| section. |
| |
| .. note:: |
| |
| You must either call ``PyErr_SetString`` for every exception caught in a |
| custom exception translator. Failure to do so will cause Python to crash |
| with ``SystemError: error return without exception set``. |
| |
| Exceptions that you do not plan to handle should simply not be caught. |
| |
| You may also choose to explicity (re-)throw the exception to delegate it to |
| the other existing exception translators. |
| |
| The ``py::exception`` wrapper for creating custom exceptions cannot (yet) |
| be used as a ``py::base``. |
| |
| .. _opaque: |
| |
| Treating STL data structures as opaque objects |
| ============================================== |
| |
| pybind11 heavily relies on a template matching mechanism to convert parameters |
| and return values that are constructed from STL data types such as vectors, |
| linked lists, hash tables, etc. This even works in a recursive manner, for |
| instance to deal with lists of hash maps of pairs of elementary and custom |
| types, etc. |
| |
| However, a fundamental limitation of this approach is that internal conversions |
| between Python and C++ types involve a copy operation that prevents |
| pass-by-reference semantics. What does this mean? |
| |
| Suppose we bind the following function |
| |
| .. code-block:: cpp |
| |
| void append_1(std::vector<int> &v) { |
| v.push_back(1); |
| } |
| |
| and call it from Python, the following happens: |
| |
| .. code-block:: pycon |
| |
| >>> v = [5, 6] |
| >>> append_1(v) |
| >>> print(v) |
| [5, 6] |
| |
| As you can see, when passing STL data structures by reference, modifications |
| are not propagated back the Python side. A similar situation arises when |
| exposing STL data structures using the ``def_readwrite`` or ``def_readonly`` |
| functions: |
| |
| .. code-block:: cpp |
| |
| /* ... definition ... */ |
| |
| class MyClass { |
| std::vector<int> contents; |
| }; |
| |
| /* ... binding code ... */ |
| |
| py::class_<MyClass>(m, "MyClass") |
| .def(py::init<>) |
| .def_readwrite("contents", &MyClass::contents); |
| |
| In this case, properties can be read and written in their entirety. However, an |
| ``append`` operaton involving such a list type has no effect: |
| |
| .. code-block:: pycon |
| |
| >>> m = MyClass() |
| >>> m.contents = [5, 6] |
| >>> print(m.contents) |
| [5, 6] |
| >>> m.contents.append(7) |
| >>> print(m.contents) |
| [5, 6] |
| |
| To deal with both of the above situations, pybind11 provides a macro named |
| ``PYBIND11_MAKE_OPAQUE(T)`` that disables the template-based conversion |
| machinery of types, thus rendering them *opaque*. The contents of opaque |
| objects are never inspected or extracted, hence they can be passed by |
| reference. For instance, to turn ``std::vector<int>`` into an opaque type, add |
| the declaration |
| |
| .. code-block:: cpp |
| |
| PYBIND11_MAKE_OPAQUE(std::vector<int>); |
| |
| before any binding code (e.g. invocations to ``class_::def()``, etc.). This |
| macro must be specified at the top level, since instantiates a partial template |
| overload. If your binding code consists of multiple compilation units, it must |
| be present in every file preceding any usage of ``std::vector<int>``. Opaque |
| types must also have a corresponding ``class_`` declaration to associate them |
| with a name in Python, and to define a set of available operations: |
| |
| .. code-block:: cpp |
| |
| py::class_<std::vector<int>>(m, "IntVector") |
| .def(py::init<>()) |
| .def("clear", &std::vector<int>::clear) |
| .def("pop_back", &std::vector<int>::pop_back) |
| .def("__len__", [](const std::vector<int> &v) { return v.size(); }) |
| .def("__iter__", [](std::vector<int> &v) { |
| return py::make_iterator(v.begin(), v.end()); |
| }, py::keep_alive<0, 1>()) /* Keep vector alive while iterator is used */ |
| // .... |
| |
| Please take a look at the :ref:`macro_notes` before using this feature. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-opaque-types.cpp` contains a complete |
| example that demonstrates how to create and expose opaque types using |
| pybind11 in more detail. |
| |
| .. _eigen: |
| |
| Transparent conversion of dense and sparse Eigen data types |
| =========================================================== |
| |
| Eigen [#f1]_ is C++ header-based library for dense and sparse linear algebra. Due to |
| its popularity and widespread adoption, pybind11 provides transparent |
| conversion support between Eigen and Scientific Python linear algebra data types. |
| |
| Specifically, when including the optional header file :file:`pybind11/eigen.h`, |
| pybind11 will automatically and transparently convert |
| |
| 1. Static and dynamic Eigen dense vectors and matrices to instances of |
| ``numpy.ndarray`` (and vice versa). |
| |
| 2. Returned matrix expressions such as blocks (including columns or rows) and |
| diagonals will be converted to ``numpy.ndarray`` of the expression |
| values. |
| |
| 3. Returned matrix-like objects such as Eigen::DiagonalMatrix or |
| Eigen::SelfAdjointView will be converted to ``numpy.ndarray`` containing the |
| expressed value. |
| |
| 4. Eigen sparse vectors and matrices to instances of |
| ``scipy.sparse.csr_matrix``/``scipy.sparse.csc_matrix`` (and vice versa). |
| |
| This makes it possible to bind most kinds of functions that rely on these types. |
| One major caveat are functions that take Eigen matrices *by reference* and modify |
| them somehow, in which case the information won't be propagated to the caller. |
| |
| .. code-block:: cpp |
| |
| /* The Python bindings of these functions won't replicate |
| the intended effect of modifying the function arguments */ |
| void scale_by_2(Eigen::Vector3f &v) { |
| v *= 2; |
| } |
| void scale_by_2(Eigen::Ref<Eigen::MatrixXd> &v) { |
| v *= 2; |
| } |
| |
| To see why this is, refer to the section on :ref:`opaque` (although that |
| section specifically covers STL data types, the underlying issue is the same). |
| The next two sections discuss an efficient alternative for exposing the |
| underlying native Eigen types as opaque objects in a way that still integrates |
| with NumPy and SciPy. |
| |
| .. [#f1] http://eigen.tuxfamily.org |
| |
| .. seealso:: |
| |
| The file :file:`example/eigen.cpp` contains a complete example that |
| shows how to pass Eigen sparse and dense data types in more detail. |
| |
| 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 :ref:`eigen`. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-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 |
| |
| NumPy support |
| ============= |
| |
| 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 paramenter, and it ensures that non-conforming arguments are converted |
| into an array satisfying the specified requirements instead of trying the next |
| function overload. |
| |
| NumPy 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.shape[0] != buf2.shape[0]) |
| throw std::runtime_error("Input shapes must match"); |
| |
| auto result = py::array(py::buffer_info( |
| nullptr, /* Pointer to data (nullptr -> ask NumPy to allocate!) */ |
| sizeof(double), /* Size of one item */ |
| py::format_descriptor<double>::format(), /* Buffer format */ |
| buf1.ndim, /* How many dimensions? */ |
| { buf1.shape[0] }, /* Number of elements for each dimension */ |
| { sizeof(double) } /* Strides for each dimension */ |
| )); |
| |
| 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:`example/example-numpy-vectorize.cpp` contains a complete |
| example that demonstrates using :func:`vectorize` in more detail. |
| |
| Functions taking Python objects as arguments |
| ============================================ |
| |
| pybind11 exposes all major Python types using thin C++ wrapper classes. These |
| wrapper classes can also be used as parameters of functions in bindings, which |
| makes it possible to directly work with native Python types on the C++ side. |
| For instance, the following statement iterates over a Python ``dict``: |
| |
| .. code-block:: cpp |
| |
| void print_dict(py::dict dict) { |
| /* Easily interact with Python types */ |
| for (auto item : dict) |
| std::cout << "key=" << item.first << ", " |
| << "value=" << item.second << std::endl; |
| } |
| |
| Available types include :class:`handle`, :class:`object`, :class:`bool_`, |
| :class:`int_`, :class:`float_`, :class:`str`, :class:`bytes`, :class:`tuple`, |
| :class:`list`, :class:`dict`, :class:`slice`, :class:`none`, :class:`capsule`, |
| :class:`iterable`, :class:`iterator`, :class:`function`, :class:`buffer`, |
| :class:`array`, and :class:`array_t`. |
| |
| In this kind of mixed code, it is often necessary to convert arbitrary C++ |
| types to Python, which can be done using :func:`cast`: |
| |
| .. code-block:: cpp |
| |
| MyClass *cls = ..; |
| py::object obj = py::cast(cls); |
| |
| The reverse direction uses the following syntax: |
| |
| .. code-block:: cpp |
| |
| py::object obj = ...; |
| MyClass *cls = obj.cast<MyClass *>(); |
| |
| When conversion fails, both directions throw the exception :class:`cast_error`. |
| It is also possible to call python functions via ``operator()``. |
| |
| .. code-block:: cpp |
| |
| py::function f = <...>; |
| py::object result_py = f(1234, "hello", some_instance); |
| MyClass &result = result_py.cast<MyClass>(); |
| |
| The special ``f(*args)`` and ``f(*args, **kwargs)`` syntax is also supported to |
| supply arbitrary argument and keyword lists, although these cannot be mixed |
| with other parameters. |
| |
| .. code-block:: cpp |
| |
| py::function f = <...>; |
| py::tuple args = py::make_tuple(1234); |
| py::dict kwargs; |
| kwargs["y"] = py::cast(5678); |
| py::object result = f(*args, **kwargs); |
| |
| .. seealso:: |
| |
| The file :file:`example/example-python-types.cpp` contains a complete |
| example that demonstrates passing native Python types in more detail. The |
| file :file:`example/example-arg-keywords-and-defaults.cpp` discusses usage |
| of ``args`` and ``kwargs``. |
| |
| Default arguments revisited |
| =========================== |
| |
| The section on :ref:`default_args` previously discussed basic usage of default |
| arguments using pybind11. One noteworthy aspect of their implementation is that |
| default arguments are converted to Python objects right at declaration time. |
| Consider the following example: |
| |
| .. code-block:: cpp |
| |
| py::class_<MyClass>("MyClass") |
| .def("myFunction", py::arg("arg") = SomeType(123)); |
| |
| In this case, pybind11 must already be set up to deal with values of the type |
| ``SomeType`` (via a prior instantiation of ``py::class_<SomeType>``), or an |
| exception will be thrown. |
| |
| Another aspect worth highlighting is that the "preview" of the default argument |
| in the function signature is generated using the object's ``__repr__`` method. |
| If not available, the signature may not be very helpful, e.g.: |
| |
| .. code-block:: pycon |
| |
| FUNCTIONS |
| ... |
| | myFunction(...) |
| | Signature : (MyClass, arg : SomeType = <SomeType object at 0x101b7b080>) -> NoneType |
| ... |
| |
| The first way of addressing this is by defining ``SomeType.__repr__``. |
| Alternatively, it is possible to specify the human-readable preview of the |
| default argument manually using the ``arg_t`` notation: |
| |
| .. code-block:: cpp |
| |
| py::class_<MyClass>("MyClass") |
| .def("myFunction", py::arg_t<SomeType>("arg", SomeType(123), "SomeType(123)")); |
| |
| Sometimes it may be necessary to pass a null pointer value as a default |
| argument. In this case, remember to cast it to the underlying type in question, |
| like so: |
| |
| .. code-block:: cpp |
| |
| py::class_<MyClass>("MyClass") |
| .def("myFunction", py::arg("arg") = (SomeType *) nullptr); |
| |
| Binding functions that accept arbitrary numbers of arguments and keywords arguments |
| =================================================================================== |
| |
| Python provides a useful mechanism to define functions that accept arbitrary |
| numbers of arguments and keyword arguments: |
| |
| .. code-block:: cpp |
| |
| def generic(*args, **kwargs): |
| # .. do something with args and kwargs |
| |
| Such functions can also be created using pybind11: |
| |
| .. code-block:: cpp |
| |
| void generic(py::args args, py::kwargs kwargs) { |
| /// .. do something with args |
| if (kwargs) |
| /// .. do something with kwargs |
| } |
| |
| /// Binding code |
| m.def("generic", &generic); |
| |
| (See ``example/example-arg-keywords-and-defaults.cpp``). The class ``py::args`` |
| derives from ``py::list`` and ``py::kwargs`` derives from ``py::dict`` Note |
| that the ``kwargs`` argument is invalid if no keyword arguments were actually |
| provided. Please refer to the other examples for details on how to iterate |
| over these, and on how to cast their entries into C++ objects. |
| |
| .. warning:: |
| |
| Unlike Python, pybind11 does not allow combining normal parameters with the |
| ``args`` / ``kwargs`` special parameters. |
| |
| Partitioning code over multiple extension modules |
| ================================================= |
| |
| It's straightforward to split binding code over multiple extension modules, |
| while referencing types that are declared elsewhere. Everything "just" works |
| without any special precautions. One exception to this rule occurs when |
| extending a type declared in another extension module. Recall the basic example |
| from Section :ref:`inheritance`. |
| |
| .. code-block:: cpp |
| |
| py::class_<Pet> pet(m, "Pet"); |
| pet.def(py::init<const std::string &>()) |
| .def_readwrite("name", &Pet::name); |
| |
| py::class_<Dog>(m, "Dog", pet /* <- specify parent */) |
| .def(py::init<const std::string &>()) |
| .def("bark", &Dog::bark); |
| |
| Suppose now that ``Pet`` bindings are defined in a module named ``basic``, |
| whereas the ``Dog`` bindings are defined somewhere else. The challenge is of |
| course that the variable ``pet`` is not available anymore though it is needed |
| to indicate the inheritance relationship to the constructor of ``class_<Dog>``. |
| However, it can be acquired as follows: |
| |
| .. code-block:: cpp |
| |
| py::object pet = (py::object) py::module::import("basic").attr("Pet"); |
| |
| py::class_<Dog>(m, "Dog", pet) |
| .def(py::init<const std::string &>()) |
| .def("bark", &Dog::bark); |
| |
| Alternatively, we can rely on the ``base`` tag, which performs an automated |
| lookup of the corresponding Python type. However, this also requires invoking |
| the ``import`` function once to ensure that the pybind11 binding code of the |
| module ``basic`` has been executed. |
| |
| .. code-block:: cpp |
| |
| py::module::import("basic"); |
| |
| py::class_<Dog>(m, "Dog", py::base<Pet>()) |
| .def(py::init<const std::string &>()) |
| .def("bark", &Dog::bark); |
| |
| Naturally, both methods will fail when there are cyclic dependencies. |
| |
| Note that compiling code which has its default symbol visibility set to |
| *hidden* (e.g. via the command line flag ``-fvisibility=hidden`` on GCC/Clang) can interfere with the |
| ability to access types defined in another extension module. Workarounds |
| include changing the global symbol visibility (not recommended, because it will |
| lead unnecessarily large binaries) or manually exporting types that are |
| accessed by multiple extension modules: |
| |
| .. code-block:: cpp |
| |
| #ifdef _WIN32 |
| # define EXPORT_TYPE __declspec(dllexport) |
| #else |
| # define EXPORT_TYPE __attribute__ ((visibility("default"))) |
| #endif |
| |
| class EXPORT_TYPE Dog : public Animal { |
| ... |
| }; |
| |
| |
| Pickling support |
| ================ |
| |
| Python's ``pickle`` module provides a powerful facility to serialize and |
| de-serialize a Python object graph into a binary data stream. To pickle and |
| unpickle C++ classes using pybind11, two additional functions must be provided. |
| Suppose the class in question has the following signature: |
| |
| .. code-block:: cpp |
| |
| class Pickleable { |
| public: |
| Pickleable(const std::string &value) : m_value(value) { } |
| const std::string &value() const { return m_value; } |
| |
| void setExtra(int extra) { m_extra = extra; } |
| int extra() const { return m_extra; } |
| private: |
| std::string m_value; |
| int m_extra = 0; |
| }; |
| |
| The binding code including the requisite ``__setstate__`` and ``__getstate__`` methods [#f3]_ |
| looks as follows: |
| |
| .. code-block:: cpp |
| |
| py::class_<Pickleable>(m, "Pickleable") |
| .def(py::init<std::string>()) |
| .def("value", &Pickleable::value) |
| .def("extra", &Pickleable::extra) |
| .def("setExtra", &Pickleable::setExtra) |
| .def("__getstate__", [](const Pickleable &p) { |
| /* Return a tuple that fully encodes the state of the object */ |
| return py::make_tuple(p.value(), p.extra()); |
| }) |
| .def("__setstate__", [](Pickleable &p, py::tuple t) { |
| if (t.size() != 2) |
| throw std::runtime_error("Invalid state!"); |
| |
| /* Invoke the in-place constructor. Note that this is needed even |
| when the object just has a trivial default constructor */ |
| new (&p) Pickleable(t[0].cast<std::string>()); |
| |
| /* Assign any additional state */ |
| p.setExtra(t[1].cast<int>()); |
| }); |
| |
| An instance can now be pickled as follows: |
| |
| .. code-block:: python |
| |
| try: |
| import cPickle as pickle # Use cPickle on Python 2.7 |
| except ImportError: |
| import pickle |
| |
| p = Pickleable("test_value") |
| p.setExtra(15) |
| data = pickle.dumps(p, 2) |
| |
| Note that only the cPickle module is supported on Python 2.7. The second |
| argument to ``dumps`` is also crucial: it selects the pickle protocol version |
| 2, since the older version 1 is not supported. Newer versions are also fineāfor |
| instance, specify ``-1`` to always use the latest available version. Beware: |
| failure to follow these instructions will cause important pybind11 memory |
| allocation routines to be skipped during unpickling, which will likely lead to |
| memory corruption and/or segmentation faults. |
| |
| .. seealso:: |
| |
| The file :file:`example/example-pickling.cpp` contains a complete example |
| that demonstrates how to pickle and unpickle types using pybind11 in more |
| detail. |
| |
| .. [#f3] http://docs.python.org/3/library/pickle.html#pickling-class-instances |
| |
| Generating documentation using Sphinx |
| ===================================== |
| |
| Sphinx [#f4]_ has the ability to inspect the signatures and documentation |
| strings in pybind11-based extension modules to automatically generate beautiful |
| documentation in a variety formats. The python_example repository [#f5]_ contains a |
| simple example repository which uses this approach. |
| |
| There are two potential gotchas when using this approach: first, make sure that |
| the resulting strings do not contain any :kbd:`TAB` characters, which break the |
| docstring parsing routines. You may want to use C++11 raw string literals, |
| which are convenient for multi-line comments. Conveniently, any excess |
| indentation will be automatically be removed by Sphinx. However, for this to |
| work, it is important that all lines are indented consistently, i.e.: |
| |
| .. code-block:: cpp |
| |
| // ok |
| m.def("foo", &foo, R"mydelimiter( |
| The foo function |
| |
| Parameters |
| ---------- |
| )mydelimiter"); |
| |
| // *not ok* |
| m.def("foo", &foo, R"mydelimiter(The foo function |
| |
| Parameters |
| ---------- |
| )mydelimiter"); |
| |
| .. [#f4] http://www.sphinx-doc.org |
| .. [#f5] http://github.com/pybind/python_example |
| |
| Evaluating Python expressions from strings and files |
| ==================================================== |
| |
| pybind11 provides the :func:`eval` and :func:`eval_file` functions to evaluate |
| Python expressions and statements. The following example illustrates how they |
| can be used. |
| |
| Both functions accept a template parameter that describes how the argument |
| should be interpreted. Possible choices include ``eval_expr`` (isolated |
| expression), ``eval_single_statement`` (a single statement, return value is |
| always ``none``), and ``eval_statements`` (sequence of statements, return value |
| is always ``none``). |
| |
| .. code-block:: cpp |
| |
| // At beginning of file |
| #include <pybind11/eval.h> |
| |
| ... |
| |
| // Evaluate in scope of main module |
| py::object scope = py::module::import("__main__").attr("__dict__"); |
| |
| // Evaluate an isolated expression |
| int result = py::eval("my_variable + 10", scope).cast<int>(); |
| |
| // Evaluate a sequence of statements |
| py::eval<py::eval_statements>( |
| "print('Hello')\n" |
| "print('world!');", |
| scope); |
| |
| // Evaluate the statements in an separate Python file on disk |
| py::eval_file("script.py", scope); |