[section Pickle support] [section Introduction] Pickle is a Python module for object serialization, also known as persistence, marshalling, or flattening. It is often necessary to save and restore the contents of an object to a file. One approach to this problem is to write a pair of functions that read and write data from a file in a special format. A powerful alternative approach is to use Python's pickle module. Exploiting Python's ability for introspection, the pickle module recursively converts nearly arbitrary Python objects into a stream of bytes that can be written to a file. The Boost Python Library supports the pickle module through the interface as described in detail in the [@https://docs.python.org/2/library/pickle.html Python Library Reference for pickle]. This interface involves the special methods `__getinitargs__`, `__getstate__` and `__setstate__` as described in the following. Note that `Boost.Python` is also fully compatible with Python's cPickle module. [endsect] [section The Pickle Interface] At the user level, the Boost.Python pickle interface involves three special methods: [variablelist [[__getinitargs__][When an instance of a Boost.Python extension class is pickled, the pickler tests if the instance has a `__getinitargs__` method. This method must return a Python `tuple` (it is most convenient to use a [link object_wrappers.boost_python_tuple_hpp.class_tuple `boost::python::tuple`]). When the instance is restored by the unpickler, the contents of this tuple are used as the arguments for the class constructor. If `__getinitargs__` is not defined, `pickle.load` will call the constructor (`__init__`) without arguments; i.e., the object must be default-constructible.]] [[__getstate__][When an instance of a `Boost.Python` extension class is pickled, the pickler tests if the instance has a `__getstate__` method. This method should return a Python object representing the state of the instance.]] [[__setstate__][When an instance of a `Boost.Python` extension class is restored by the unpickler (`pickle.load`), it is first constructed using the result of `__getinitargs__` as arguments (see above). Subsequently the unpickler tests if the new instance has a `__setstate__` method. If so, this method is called with the result of `__getstate__` (a Python object) as the argument.]] ] The three special methods described above may be `.def()`\ 'ed individually by the user. However, `Boost.Python` provides an easy to use high-level interface via the `boost::python::pickle_suite` class that also enforces consistency: `__getstate__` and `__setstate__` must be defined as pairs. Use of this interface is demonstrated by the following examples. [endsect] [section Example] There are three files in `python/test` that show how to provide pickle support. [section pickle1.cpp] The C++ class in this example can be fully restored by passing the appropriate argument to the constructor. Therefore it is sufficient to define the pickle interface method `__getinitargs__`. This is done in the following way: Definition of the C++ pickle function: `` struct world_pickle_suite : boost::python::pickle_suite { static boost::python::tuple getinitargs(world const& w) { return boost::python::make_tuple(w.get_country()); } }; `` Establishing the Python binding: `` class_("world", args()) // ... .def_pickle(world_pickle_suite()) // ... `` [endsect] [section pickle2.cpp] The C++ class in this example contains member data that cannot be restored by any of the constructors. Therefore it is necessary to provide the `__getstate__`/`__setstate__` pair of pickle interface methods: Definition of the C++ pickle functions: `` struct world_pickle_suite : boost::python::pickle_suite { static boost::python::tuple getinitargs(const world& w) { // ... } static boost::python::tuple getstate(const world& w) { // ... } static void setstate(world& w, boost::python::tuple state) { // ... } }; `` Establishing the Python bindings for the entire suite: `` class_("world", args()) // ... .def_pickle(world_pickle_suite()) // ... `` For simplicity, the `__dict__` is not included in the result of `__getstate__`. This is not generally recommended, but a valid approach if it is anticipated that the object's `__dict__` will always be empty. Note that the safety guard described below will catch the cases where this assumption is violated. [endsect] [section pickle3.cpp] This example is similar to pickle2.cpp. However, the object's `__dict__` is included in the result of `__getstate__`. This requires a little more code but is unavoidable if the object's `__dict__` is not always empty. [endsect] [endsect] [section Pitfall and Safety Guard] The pickle protocol described above has an important pitfall that the end user of a Boost.Python extension module might not be aware of: [*`__getstate__` is defined and the instance's `__dict__` is not empty.] The author of a `Boost.Python` extension class might provide a `__getstate__` method without considering the possibilities that: * his class is used in Python as a base class. Most likely the `__dict__` of instances of the derived class needs to be pickled in order to restore the instances correctly. * the user adds items to the instance's `__dict__` directly. Again, the `__dict__` of the instance then needs to be pickled. To alert the user to this highly unobvious problem, a safety guard is provided. If `__getstate__` is defined and the instance's `__dict__` is not empty, `Boost.Python` tests if the class has an attribute `__getstate_manages_dict__`. An exception is raised if this attribute is not defined: `` RuntimeError: Incomplete pickle support (__getstate_manages_dict__ not set) `` To resolve this problem, it should first be established that the `__getstate__` and `__setstate__` methods manage the instances's `__dict__` correctly. Note that this can be done either at the C++ or the Python level. Finally, the safety guard should intentionally be overridden. E.g. in C++ (from pickle3.cpp): `` struct world_pickle_suite : boost::python::pickle_suite { // ... static bool getstate_manages_dict() { return true; } }; `` Alternatively in Python: `` import your_bpl_module class your_class(your_bpl_module.your_class): __getstate_manages_dict__ = 1 def __getstate__(self): # your code here def __setstate__(self, state): # your code here `` [endsect] [section Practical Advice] * In `Boost.Python` extension modules with many extension classes, providing complete pickle support for all classes would be a significant overhead. In general complete pickle support should only be implemented for extension classes that will eventually be pickled. * Avoid using `__getstate__` if the instance can also be reconstructed by way of `__getinitargs__`. This automatically avoids the pitfall described above. * If `__getstate__` is required, include the instance's `__dict__` in the Python object that is returned. [endsect] [section Light-weight alternative: pickle support implemented in Python] The pickle4.cpp example demonstrates an alternative technique for implementing pickle support. First we direct Boost.Python via the class_::enable_pickling() member function to define only the basic attributes required for pickling: `` class_("world", args()) // ... .enable_pickling() // ... `` This enables the standard Python pickle interface as described in the Python documentation. By "injecting" a `__getinitargs__` method into the definition of the wrapped class we make all instances pickleable: `` # import the wrapped world class from pickle4_ext import world # definition of __getinitargs__ def world_getinitargs(self): return (self.get_country(),) # now inject __getinitargs__ (Python is a dynamic language!) world.__getinitargs__ = world_getinitargs `` See also the tutorial section on injecting additional methods from Python. [endsect] [endsect]