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| .. _embedding: | |
| Embedding the interpreter | |
| ######################### | |
| While pybind11 is mainly focused on extending Python using C++, it's also | |
| possible to do the reverse: embed the Python interpreter into a C++ program. | |
| All of the other documentation pages still apply here, so refer to them for | |
| general pybind11 usage. This section will cover a few extra things required | |
| for embedding. | |
| Getting started | |
| =============== | |
| A basic executable with an embedded interpreter can be created with just a few | |
| lines of CMake and the ``pybind11::embed`` target, as shown below. For more | |
| information, see :doc:`/compiling`. | |
| .. code-block:: cmake | |
| cmake_minimum_required(VERSION 3.4) | |
| project(example) | |
| find_package(pybind11 REQUIRED) # or `add_subdirectory(pybind11)` | |
| add_executable(example main.cpp) | |
| target_link_libraries(example PRIVATE pybind11::embed) | |
| The essential structure of the ``main.cpp`` file looks like this: | |
| .. code-block:: cpp | |
| #include <pybind11/embed.h> // everything needed for embedding | |
| namespace py = pybind11; | |
| int main() { | |
| py::scoped_interpreter guard{}; // start the interpreter and keep it alive | |
| py::print("Hello, World!"); // use the Python API | |
| } | |
| The interpreter must be initialized before using any Python API, which includes | |
| all the functions and classes in pybind11. The RAII guard class ``scoped_interpreter`` | |
| takes care of the interpreter lifetime. After the guard is destroyed, the interpreter | |
| shuts down and clears its memory. No Python functions can be called after this. | |
| Executing Python code | |
| ===================== | |
| There are a few different ways to run Python code. One option is to use ``eval``, | |
| ``exec`` or ``eval_file``, as explained in :ref:`eval`. Here is a quick example in | |
| the context of an executable with an embedded interpreter: | |
| .. code-block:: cpp | |
| #include <pybind11/embed.h> | |
| namespace py = pybind11; | |
| int main() { | |
| py::scoped_interpreter guard{}; | |
| py::exec(R"( | |
| kwargs = dict(name="World", number=42) | |
| message = "Hello, {name}! The answer is {number}".format(**kwargs) | |
| print(message) | |
| )"); | |
| } | |
| Alternatively, similar results can be achieved using pybind11's API (see | |
| :doc:`/advanced/pycpp/index` for more details). | |
| .. code-block:: cpp | |
| #include <pybind11/embed.h> | |
| namespace py = pybind11; | |
| using namespace py::literals; | |
| int main() { | |
| py::scoped_interpreter guard{}; | |
| auto kwargs = py::dict("name"_a="World", "number"_a=42); | |
| auto message = "Hello, {name}! The answer is {number}"_s.format(**kwargs); | |
| py::print(message); | |
| } | |
| The two approaches can also be combined: | |
| .. code-block:: cpp | |
| #include <pybind11/embed.h> | |
| #include <iostream> | |
| namespace py = pybind11; | |
| using namespace py::literals; | |
| int main() { | |
| py::scoped_interpreter guard{}; | |
| auto locals = py::dict("name"_a="World", "number"_a=42); | |
| py::exec(R"( | |
| message = "Hello, {name}! The answer is {number}".format(**locals()) | |
| )", py::globals(), locals); | |
| auto message = locals["message"].cast<std::string>(); | |
| std::cout << message; | |
| } | |
| Importing modules | |
| ================= | |
| Python modules can be imported using ``module_::import()``: | |
| .. code-block:: cpp | |
| py::module_ sys = py::module_::import("sys"); | |
| py::print(sys.attr("path")); | |
| For convenience, the current working directory is included in ``sys.path`` when | |
| embedding the interpreter. This makes it easy to import local Python files: | |
| .. code-block:: python | |
| """calc.py located in the working directory""" | |
| def add(i, j): | |
| return i + j | |
| .. code-block:: cpp | |
| py::module_ calc = py::module_::import("calc"); | |
| py::object result = calc.attr("add")(1, 2); | |
| int n = result.cast<int>(); | |
| assert(n == 3); | |
| Modules can be reloaded using ``module_::reload()`` if the source is modified e.g. | |
| by an external process. This can be useful in scenarios where the application | |
| imports a user defined data processing script which needs to be updated after | |
| changes by the user. Note that this function does not reload modules recursively. | |
| .. _embedding_modules: | |
| Adding embedded modules | |
| ======================= | |
| Embedded binary modules can be added using the ``PYBIND11_EMBEDDED_MODULE`` macro. | |
| Note that the definition must be placed at global scope. They can be imported | |
| like any other module. | |
| .. code-block:: cpp | |
| #include <pybind11/embed.h> | |
| namespace py = pybind11; | |
| PYBIND11_EMBEDDED_MODULE(fast_calc, m) { | |
| // `m` is a `py::module_` which is used to bind functions and classes | |
| m.def("add", [](int i, int j) { | |
| return i + j; | |
| }); | |
| } | |
| int main() { | |
| py::scoped_interpreter guard{}; | |
| auto fast_calc = py::module_::import("fast_calc"); | |
| auto result = fast_calc.attr("add")(1, 2).cast<int>(); | |
| assert(result == 3); | |
| } | |
| Unlike extension modules where only a single binary module can be created, on | |
| the embedded side an unlimited number of modules can be added using multiple | |
| ``PYBIND11_EMBEDDED_MODULE`` definitions (as long as they have unique names). | |
| These modules are added to Python's list of builtins, so they can also be | |
| imported in pure Python files loaded by the interpreter. Everything interacts | |
| naturally: | |
| .. code-block:: python | |
| """py_module.py located in the working directory""" | |
| import cpp_module | |
| a = cpp_module.a | |
| b = a + 1 | |
| .. code-block:: cpp | |
| #include <pybind11/embed.h> | |
| namespace py = pybind11; | |
| PYBIND11_EMBEDDED_MODULE(cpp_module, m) { | |
| m.attr("a") = 1; | |
| } | |
| int main() { | |
| py::scoped_interpreter guard{}; | |
| auto py_module = py::module_::import("py_module"); | |
| auto locals = py::dict("fmt"_a="{} + {} = {}", **py_module.attr("__dict__")); | |
| assert(locals["a"].cast<int>() == 1); | |
| assert(locals["b"].cast<int>() == 2); | |
| py::exec(R"( | |
| c = a + b | |
| message = fmt.format(a, b, c) | |
| )", py::globals(), locals); | |
| assert(locals["c"].cast<int>() == 3); | |
| assert(locals["message"].cast<std::string>() == "1 + 2 = 3"); | |
| } | |
| Interpreter lifetime | |
| ==================== | |
| The Python interpreter shuts down when ``scoped_interpreter`` is destroyed. After | |
| this, creating a new instance will restart the interpreter. Alternatively, the | |
| ``initialize_interpreter`` / ``finalize_interpreter`` pair of functions can be used | |
| to directly set the state at any time. | |
| Modules created with pybind11 can be safely re-initialized after the interpreter | |
| has been restarted. However, this may not apply to third-party extension modules. | |
| The issue is that Python itself cannot completely unload extension modules and | |
| there are several caveats with regard to interpreter restarting. In short, not | |
| all memory may be freed, either due to Python reference cycles or user-created | |
| global data. All the details can be found in the CPython documentation. | |
| .. warning:: | |
| Creating two concurrent ``scoped_interpreter`` guards is a fatal error. So is | |
| calling ``initialize_interpreter`` for a second time after the interpreter | |
| has already been initialized. | |
| Do not use the raw CPython API functions ``Py_Initialize`` and | |
| ``Py_Finalize`` as these do not properly handle the lifetime of | |
| pybind11's internal data. | |
| Sub-interpreter support | |
| ======================= | |
| Creating multiple copies of ``scoped_interpreter`` is not possible because it | |
| represents the main Python interpreter. Sub-interpreters are something different | |
| and they do permit the existence of multiple interpreters. This is an advanced | |
| feature of the CPython API and should be handled with care. pybind11 does not | |
| currently offer a C++ interface for sub-interpreters, so refer to the CPython | |
| documentation for all the details regarding this feature. | |
| We'll just mention a couple of caveats the sub-interpreters support in pybind11: | |
| 1. Sub-interpreters will not receive independent copies of embedded modules. | |
| Instead, these are shared and modifications in one interpreter may be | |
| reflected in another. | |
| 2. Managing multiple threads, multiple interpreters and the GIL can be | |
| challenging and there are several caveats here, even within the pure | |
| CPython API (please refer to the Python docs for details). As for | |
| pybind11, keep in mind that ``gil_scoped_release`` and ``gil_scoped_acquire`` | |
| do not take sub-interpreters into account. | |