Exceptions
Contents
Exceptions#
Built-in C++ to Python exception translation#
When Python calls C++ code through pybind11, pybind11 provides a C++ exception handler that will trap C++ exceptions, translate them to the corresponding Python exception, and raise them so that Python code can handle them.
pybind11 defines translations for std::exception
and its standard
subclasses, and several special exception classes that translate to specific
Python exceptions. Note that these are not actually Python exceptions, so they
cannot be examined using the Python C API. Instead, they are pure C++ objects
that pybind11 will translate the corresponding Python exception when they arrive
at its exception handler.
Exception thrown by C++ |
Translated to Python exception type |
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Any other exception |
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Exception translation is not bidirectional. That is, catching the C++
exceptions defined above will not trap exceptions that originate from
Python. For that, catch pybind11::error_already_set
. See below for further details.
There is also a special exception cast_error
that is thrown by
handle::call()
when the input arguments cannot be converted to Python
objects.
Registering custom translators#
If the default exception conversion policy described above is insufficient,
pybind11 also provides support for registering custom exception translators.
Similar to pybind11 classes, exception translators can be local to the module
they are defined in or global to the entire python session. To register a simple
exception conversion that translates a C++ exception into a new Python exception
using the C++ exception’s what()
method, a helper function is available:
py::register_exception<CppExp>(module, "PyExp");
This call creates a Python exception class with the name PyExp
in the given
module and automatically converts any encountered exceptions of type CppExp
into Python exceptions of type PyExp
.
A matching function is available for registering a local exception translator:
py::register_local_exception<CppExp>(module, "PyExp");
It is possible to specify base class for the exception using the third
parameter, a handle
:
py::register_exception<CppExp>(module, "PyExp", PyExc_RuntimeError);
py::register_local_exception<CppExp>(module, "PyExp", PyExc_RuntimeError);
Then PyExp
can be caught both as PyExp
and RuntimeError
.
The class objects of the built-in Python exceptions are listed in the Python
documentation on Standard Exceptions.
The default base class is PyExc_Exception
.
When more advanced exception translation is needed, the functions
py::register_exception_translator(translator)
and
py::register_local_exception_translator(translator)
can be used to register
functions that can translate arbitrary exception types (and which may include
additional logic to do so). The functions takes a stateless callable (e.g. a
function pointer or a lambda function without captured variables) with the call
signature void(std::exception_ptr)
.
When a C++ exception is thrown, the registered exception translators are tried in reverse order of registration (i.e. the last registered translator gets the first shot at handling the exception). All local translators will be tried before a global translator is tried.
Inside the translator, std::rethrow_exception
should be used within
a try block to re-throw the exception. One or more catch clauses to catch
the appropriate exceptions should then be used with each clause using
PyErr_SetString
to set a Python exception or ex(string)
to set
the python exception to a custom exception type (see below).
To declare a custom Python exception type, declare a py::exception
variable
and use this in the associated exception translator (note: it is often useful
to make this a static declaration when using it inside a lambda expression
without requiring capturing).
The following example demonstrates this for a hypothetical exception classes
MyCustomException
and OtherException
: the first is translated to a
custom python exception MyCustomError
, while the second is translated to a
standard python RuntimeError:
static py::exception<MyCustomException> exc(m, "MyCustomError");
py::register_exception_translator([](std::exception_ptr p) {
try {
if (p) std::rethrow_exception(p);
} catch (const MyCustomException &e) {
exc(e.what());
} catch (const OtherException &e) {
PyErr_SetString(PyExc_RuntimeError, e.what());
}
});
Multiple exceptions can be handled by a single translator, as shown in the example above. 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.
参见
The file tests/test_exceptions.cpp
contains examples
of various custom exception translators and custom exception types.
备注
Call either PyErr_SetString
or a custom exception’s call
operator (exc(string)
) 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, or may be explicitly (re-)thrown to delegate it to the other, previously-declared existing exception translators.
Note that libc++
and libstdc++
behave differently under macOS
with -fvisibility=hidden
. Therefore exceptions that are used across ABI
boundaries need to be explicitly exported, as exercised in
tests/test_exceptions.h
. See also:
“Problems with C++ exceptions” under GCC Wiki.
Local vs Global Exception Translators#
When a global exception translator is registered, it will be applied across all modules in the reverse order of registration. This can create behavior where the order of module import influences how exceptions are translated.
If module1 has the following translator:
py::register_exception_translator([](std::exception_ptr p) {
try {
if (p) std::rethrow_exception(p);
} catch (const std::invalid_argument &e) {
PyErr_SetString("module1 handled this")
}
}
and module2 has the following similar translator:
py::register_exception_translator([](std::exception_ptr p) {
try {
if (p) std::rethrow_exception(p);
} catch (const std::invalid_argument &e) {
PyErr_SetString("module2 handled this")
}
}
then which translator handles the invalid_argument will be determined by the order that module1 and module2 are imported. Since exception translators are applied in the reverse order of registration, which ever module was imported last will “win” and that translator will be applied.
If there are multiple pybind11 modules that share exception types (either standard built-in or custom) loaded into a single python instance and consistent error handling behavior is needed, then local translators should be used.
Changing the previous example to use register_local_exception_translator
would mean that when invalid_argument is thrown in the module2 code, the
module2 translator will always handle it, while in module1, the module1
translator will do the same.
Handling exceptions from Python in C++#
When C++ calls Python functions, such as in a callback function or when
manipulating Python objects, and Python raises an Exception
, pybind11
converts the Python exception into a C++ exception of type
pybind11::error_already_set
whose payload contains a C++ string textual
summary and the actual Python exception. error_already_set
is used to
propagate Python exception back to Python (or possibly, handle them in C++).
Exception raised in Python |
Thrown as C++ exception type |
---|---|
Any Python |
|
For example:
try {
// open("missing.txt", "r")
auto file = py::module_::import("io").attr("open")("missing.txt", "r");
auto text = file.attr("read")();
file.attr("close")();
} catch (py::error_already_set &e) {
if (e.matches(PyExc_FileNotFoundError)) {
py::print("missing.txt not found");
} else if (e.matches(PyExc_PermissionError)) {
py::print("missing.txt found but not accessible");
} else {
throw;
}
}
Note that C++ to Python exception translation does not apply here, since that is
a method for translating C++ exceptions to Python, not vice versa. The error raised
from Python is always error_already_set
.
This example illustrates this behavior:
try {
py::eval("raise ValueError('The Ring')");
} catch (py::value_error &boromir) {
// Boromir never gets the ring
assert(false);
} catch (py::error_already_set &frodo) {
// Frodo gets the ring
py::print("I will take the ring");
}
try {
// py::value_error is a request for pybind11 to raise a Python exception
throw py::value_error("The ball");
} catch (py::error_already_set &cat) {
// cat won't catch the ball since
// py::value_error is not a Python exception
assert(false);
} catch (py::value_error &dog) {
// dog will catch the ball
py::print("Run Spot run");
throw; // Throw it again (pybind11 will raise ValueError)
}
Handling errors from the Python C API#
Where possible, use pybind11 wrappers instead of calling the Python C API directly. When calling the Python C API directly, in addition to manually managing reference counts, one must follow the pybind11 error protocol, which is outlined here.
After calling the Python C API, if Python returns an error,
throw py::error_already_set();
, which allows pybind11 to deal with the
exception and pass it back to the Python interpreter. This includes calls to
the error setting functions such as PyErr_SetString
.
PyErr_SetString(PyExc_TypeError, "C API type error demo");
throw py::error_already_set();
// But it would be easier to simply...
throw py::type_error("pybind11 wrapper type error");
Alternately, to ignore the error, call PyErr_Clear.
Any Python error must be thrown or cleared, or Python/pybind11 will be left in an invalid state.
Chaining exceptions (‘raise from’)#
Python has a mechanism for indicating that exceptions were caused by other exceptions:
try:
print(1 / 0)
except Exception as exc:
raise RuntimeError("could not divide by zero") from exc
To do a similar thing in pybind11, you can use the py::raise_from
function. It
sets the current python error indicator, so to continue propagating the exception
you should throw py::error_already_set()
.
try {
py::eval("print(1 / 0"));
} catch (py::error_already_set &e) {
py::raise_from(e, PyExc_RuntimeError, "could not divide by zero");
throw py::error_already_set();
}
2.8 新版功能.
Handling unraisable exceptions#
If a Python function invoked from a C++ destructor or any function marked
noexcept(true)
(collectively, “noexcept functions”) throws an exception, there
is no way to propagate the exception, as such functions may not throw.
Should they throw or fail to catch any exceptions in their call graph,
the C++ runtime calls std::terminate()
to abort immediately.
Similarly, Python exceptions raised in a class’s __del__
method do not
propagate, but are logged by Python as an unraisable error. In Python 3.8+, a
system hook is triggered
and an auditing event is logged.
Any noexcept function should have a try-catch block that traps
class:error_already_set
(or any other exception that can occur). Note that
pybind11 wrappers around Python exceptions such as
pybind11::value_error
are not Python exceptions; they are C++
exceptions that pybind11 catches and converts to Python exceptions. Noexcept
functions cannot propagate these exceptions either. A useful approach is to
convert them to Python exceptions and then discard_as_unraisable
as shown
below.
void nonthrowing_func() noexcept(true) {
try {
// ...
} catch (py::error_already_set &eas) {
// Discard the Python error using Python APIs, using the C++ magic
// variable __func__. Python already knows the type and value and of the
// exception object.
eas.discard_as_unraisable(__func__);
} catch (const std::exception &e) {
// Log and discard C++ exceptions.
third_party::log(e);
}
}
2.6 新版功能.