Frequently asked questions ########################## "ImportError: dynamic module does not define init function" =========================================================== 1. Make sure that the name specified in ``pybind::module`` and ``PYBIND11_PLUGIN`` is consistent and identical to the filename of the extension library. The latter should not contain any extra prefixes (e.g. ``test.so`` instead of ``libtest.so``). 2. If the above did not fix your issue, then you are likely using an incompatible version of Python (for instance, the extension library was compiled against Python 2, while the interpreter is running on top of some version of Python 3, or vice versa) "Symbol not found: ``__Py_ZeroStruct`` / ``_PyInstanceMethod_Type``" ======================================================================== See item 2 of the first answer. "SystemError: dynamic module not initialized properly" ====================================================== See item 2 of the first answer. The Python interpreter immediately crashes when importing my module =================================================================== See item 2 of the first answer. CMake doesn't detect the right Python version ============================================= The CMake-based build system will try to automatically detect the installed version of Python and link against that. When this fails, or when there are multiple versions of Python and it finds the wrong one, delete ``CMakeCache.txt`` and then invoke CMake as follows: .. code-block:: bash cmake -DPYTHON_EXECUTABLE:FILEPATH= . Limitations involving reference arguments ========================================= In C++, it's fairly common to pass arguments using mutable references or mutable pointers, which allows both read and write access to the value supplied by the caller. This is sometimes done for efficiency reasons, or to realize functions that have multiple return values. Here are two very basic examples: .. code-block:: cpp void increment(int &i) { i++; } void increment_ptr(int *i) { (*i)++; } In Python, all arguments are passed by reference, so there is no general issue in binding such code from Python. However, certain basic Python types (like ``str``, ``int``, ``bool``, ``float``, etc.) are **immutable**. This means that the following attempt to port the function to Python doesn't have the same effect on the value provided by the caller -- in fact, it does nothing at all. .. code-block:: python def increment(i): i += 1 # nope.. pybind11 is also affected by such language-level conventions, which means that binding ``increment`` or ``increment_ptr`` will also create Python functions that don't modify their arguments. Although inconvenient, one workaround is to encapsulate the immutable types in a custom type that does allow modifications. An other alternative involves binding a small wrapper lambda function that returns a tuple with all output arguments (see the remainder of the documentation for examples on binding lambda functions). An example: .. code-block:: cpp int foo(int &i) { i++; return 123; } and the binding code .. code-block:: cpp m.def("foo", [](int i) { int rv = foo(i); return std::make_tuple(rv, i); }); How can I reduce the build time? ================================ It's good practice to split binding code over multiple files, as is done in the included file :file:`example/example.cpp`. .. code-block:: cpp void init_ex1(py::module &); void init_ex2(py::module &); /* ... */ PYBIND11_PLUGIN(example) { py::module m("example", "pybind example plugin"); init_ex1(m); init_ex2(m); /* ... */ return m.ptr(); } The various ``init_ex`` functions should be contained in separate files that can be compiled independently from another. Following this approach will 1. reduce memory requirements per compilation unit. 2. enable parallel builds (if desired). 3. allow for faster incremental builds. For instance, when a single class definition is changed, only a subset of the binding code will generally need to be recompiled. How can I create smaller binaries? ================================== To do its job, pybind11 extensively relies on a programming technique known as *template metaprogramming*, which is a way of performing computation at compile time using type information. Template metaprogamming usually instantiates code involving significant numbers of deeply nested types that are either completely removed or reduced to just a few instructions during the compiler's optimization phase. However, due to the nested nature of these types, the resulting symbol names in the compiled extension library can be extremely long. For instance, the included test suite contains the following symbol: .. only:: html .. code-block:: none _​_​Z​N​8​p​y​b​i​n​d​1​1​1​2​c​p​p​_​f​u​n​c​t​i​o​n​C​1​I​v​8​E​x​a​m​p​l​e​2​J​R​N​S​t​3​_​_​1​6​v​e​c​t​o​r​I​N​S​3​_​1​2​b​a​s​i​c​_​s​t​r​i​n​g​I​w​N​S​3​_​1​1​c​h​a​r​_​t​r​a​i​t​s​I​w​E​E​N​S​3​_​9​a​l​l​o​c​a​t​o​r​I​w​E​E​E​E​N​S​8​_​I​S​A​_​E​E​E​E​E​J​N​S​_​4​n​a​m​e​E​N​S​_​7​s​i​b​l​i​n​g​E​N​S​_​9​i​s​_​m​e​t​h​o​d​E​A​2​8​_​c​E​E​E​M​T​0​_​F​T​_​D​p​T​1​_​E​D​p​R​K​T​2​_ .. only:: not html .. code-block:: cpp __ZN8pybind1112cpp_functionC1Iv8Example2JRNSt3__16vectorINS3_12basic_stringIwNS3_11char_traitsIwEENS3_9allocatorIwEEEENS8_ISA_EEEEEJNS_4nameENS_7siblingENS_9is_methodEA28_cEEEMT0_FT_DpT1_EDpRKT2_ which is the mangled form of the following function type: .. code-block:: cpp pybind11::cpp_function::cpp_function, std::__1::allocator >, std::__1::allocator, std::__1::allocator > > >&, pybind11::name, pybind11::sibling, pybind11::is_method, char [28]>(void (Example2::*)(std::__1::vector, std::__1::allocator >, std::__1::allocator, std::__1::allocator > > >&), pybind11::name const&, pybind11::sibling const&, pybind11::is_method const&, char const (&) [28]) The memory needed to store just the mangled name of this function (196 bytes) is larger than the actual piece of code (111 bytes) it represents! On the other hand, it's silly to even give this function a name -- after all, it's just a tiny cog in a bigger piece of machinery that is not exposed to the outside world. So we'll generally only want to export symbols for those functions which are actually called from the outside. This can be achieved by specifying the parameter ``-fvisibility=hidden`` to GCC and Clang, which sets the default symbol visibility to *hidden*. It's best to do this only for release builds, since the symbol names can be helpful in debugging sessions. On Visual Studio, symbols are already hidden by default, so nothing needs to be done there. Needless to say, this has a tremendous impact on the final binary size of the resulting extension library. Another aspect that can require a fair bit of code are function signature descriptions. pybind11 automatically generates human-readable function signatures for docstrings, e.g.: .. code-block:: none | __init__(...) | __init__(*args, **kwargs) | Overloaded function. | | 1. __init__(example.Example1) -> NoneType | | Docstring for overload #1 goes here | | 2. __init__(example.Example1, int) -> NoneType | | Docstring for overload #2 goes here | | 3. __init__(example.Example1, example.Example1) -> NoneType | | Docstring for overload #3 goes here In C++11 mode, these are generated at run time using string concatenation, which can amount to 10-20% of the size of the resulting binary. If you can, enable C++14 language features (using ``-std=c++14`` for GCC/Clang), in which case signatures are efficiently pre-generated at compile time. Unfortunately, Visual Studio's C++14 support (``constexpr``) is not good enough as of April 2016, so it always uses the more expensive run-time approach. Working with ancient Visual Studio 2009 builds on Windows ========================================================= The official Windows distributions of Python are compiled using truly ancient versions of Visual Studio that lack good C++11 support. Some users implicitly assume that it would be impossible to load a plugin built with Visual Studio 2015 into a Python distribution that was compiled using Visual Studio 2009. However, no such issue exists: it's perfectly legitimate to interface DLLs that are built with different compilers and/or C libraries. Common gotchas to watch out for involve not ``free()``-ing memory region that that were ``malloc()``-ed in another shared library, using data structures with incompatible ABIs, and so on. pybind11 is very careful not to make these types of mistakes.