.. _advanced: Advanced topics ############### For brevity, the rest of this chapter assumes that the following two lines are present: .. code-block:: cpp #include 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_PLUGIN(example) { py::module m("example", "pybind11 example plugin"); py::class_(m, "Vector2") .def(py::init()) .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:`tests/test_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 &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 func_ret(const std::function &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_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 :file:`tests/test_callbacks.cpp`. .. 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:`tests/test_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; igo(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(m, "Animal"); animal .def("go", &Animal::go); py::class_(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_, PyAnimal /* <--- trampoline*/> animal(m, "Animal"); animal .def(py::init<>()) .def("go", &Animal::go); py::class_(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:`tests/test_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 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 PyDog : public PyAnimal { using PyAnimal::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_, PyAnimal<>> animal(m, "Animal"); py::class_, PyDog<>> dog(m, "Dog"); py::class_, PyDog> 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:`tests/test_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, 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_, PyAnimal> animal(m, "Animal"); animal .def(py::init<>()) .def("go", &Animal::go); py::class_(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:`tests/test_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:`tests/test_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 | | | ``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``, 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 ``1`` refers to the implicit ``this`` pointer, while regular arguments begin at index ``2``. Arbitrarily many call policies can be specified. When a ``Nurse`` with value ``None`` is detected at runtime, the call policy does nothing. This feature internally relies on the ability to create a *weak reference* to the nurse object, which is permitted by all classes exposed via pybind11. When the nurse object does not support weak references, an exception will be thrown. Consider the following example: here, the binding code for a list append operation ties the lifetime of the newly added element to the underlying container: .. code-block:: cpp py::class_(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:`tests/test_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_(m, "A") /// ... members ... py::class_(m, "B") .def(py::init()) /// ... 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(); .. 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_(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 create_example() { return std::unique_ptr(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 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``, 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_ /* <- 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); .. 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 *get_child() { return child.get(); } /* Hint: ** DON'T DO THIS ** */ private: std::shared_ptr child; }; PYBIND11_PLUGIN(example) { py::module m("example"); py::class_>(m, "Child"); py::class_>(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 get_child() { return child; } 2. Adjust the definition of ``Child`` by specifying ``std::enable_shared_from_this`` (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 { }; Please take a look at the :ref:`macro_notes` before using this feature. .. seealso:: The file :file:`tests/test_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_(m, "Example") .def(py::init()); is short hand notation for .. code-block:: cpp py::class_(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 ` 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:`tests/test_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 &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 contents; }; /* ... binding code ... */ py::class_(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`` into an opaque type, add the declaration .. code-block:: cpp PYBIND11_MAKE_OPAQUE(std::vector); 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``. 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_>(m, "IntVector") .def(py::init<>()) .def("clear", &std::vector::clear) .def("pop_back", &std::vector::pop_back) .def("__len__", [](const std::vector &v) { return v.size(); }) .def("__iter__", [](std::vector &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:`tests/test_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 &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:`tests/test_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_(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::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 shape; std::vector 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_(m, "Matrix") .def("__init__", [](Matrix &m, py::buffer b) { typedef Eigen::Stride Strides; /* Request a buffer descriptor from Python */ py::buffer_info info = b.request(); /* Some sanity checks ... */ if (info.format != py::format_descriptor::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( static_cat(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::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:`tests/test_buffers.cpp` contains a complete example that demonstrates using the buffer protocol with pybind11 in more detail. .. [#f2] http://docs.python.org/3/c-api/buffer.html 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`` 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 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 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 x, py::array_t 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 #include namespace py = pybind11; py::array_t add_arrays(py::array_t input1, py::array_t input2) { auto buf1 = input1.request(), buf2 = input2.request(); if (buf1.ndim != 1 || buf2.ndim != 1) throw std::runtime_error("Number of dimensions must be one"); if (buf1.size != buf2.size) throw std::runtime_error("Input shapes must match"); /* No pointer is passed, so NumPy will allocate the buffer */ auto result = py::array_t(buf1.size); auto buf3 = result.request(); double *ptr1 = (double *) buf1.ptr, *ptr2 = (double *) buf2.ptr, *ptr3 = (double *) buf3.ptr; for (size_t idx = 0; idx < buf1.shape[0]; idx++) ptr3[idx] = ptr1[idx] + ptr2[idx]; return result; } PYBIND11_PLUGIN(test) { py::module m("test"); m.def("add_arrays", &add_arrays, "Add two NumPy arrays"); return m.ptr(); } .. seealso:: The file :file:`tests/test_numpy_vectorize.cpp` contains a complete example that demonstrates using :func:`vectorize` in more detail. 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(); 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(); 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:`tests/test_python_types.cpp` contains a complete example that demonstrates passing native Python types in more detail. The file :file:`tests/test_kwargs_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") .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_``), 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 = ) -> 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") .def("myFunction", py::arg_t("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") .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 ``tests/test_kwargs_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(m, "Pet"); pet.def(py::init()) .def_readwrite("name", &Pet::name); py::class_(m, "Dog", pet /* <- specify parent */) .def(py::init()) .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_``. However, it can be acquired as follows: .. code-block:: cpp py::object pet = (py::object) py::module::import("basic").attr("Pet"); py::class_(m, "Dog", pet) .def(py::init()) .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_(m, "Dog", py::base()) .def(py::init()) .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_(m, "Pickleable") .def(py::init()) .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()); /* Assign any additional state */ p.setExtra(t[1].cast()); }); 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 fineā€”for 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:`tests/test_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 ... // 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(); // Evaluate a sequence of statements py::eval( "print('Hello')\n" "print('world!');", scope); // Evaluate the statements in an separate Python file on disk py::eval_file("script.py", scope);