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Exceptions.cpp
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Exceptions.cpp
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#include <torch/csrc/Exceptions.h>
#include <torch/csrc/python_headers.h>
#include <array>
#include <cstdarg>
#include <exception>
#include <utility>
#include <fmt/format.h>
#include <torch/csrc/THP.h>
#include <c10/util/StringUtil.h>
PyObject *THPException_FatalError, *THPException_LinAlgError,
*THPException_OutOfMemoryError, *THPException_DistError,
*THPException_DistBackendError, *THPException_DistNetworkError,
*THPException_DistStoreError;
#define ASSERT_TRUE(cond) \
if (!(cond)) \
return false
bool THPException_init(PyObject* module) {
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_FatalError =
PyErr_NewException("torch.FatalError", nullptr, nullptr));
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
PyModule_AddObject(module, "FatalError", THPException_FatalError) == 0);
// Set the doc string here since _add_docstr throws malloc errors if tp_doc is
// modified for an error class.
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_LinAlgError = PyErr_NewExceptionWithDoc(
"torch._C._LinAlgError",
"Error raised by torch.linalg function when the cause of error is a numerical inconsistency in the data.\n \
For example, you can the torch.linalg.inv function will raise torch.linalg.LinAlgError when it finds that \
a matrix is not invertible.\n \
\n\
Example:\n \
>>> # xdoctest: +REQUIRES(env:TORCH_DOCKTEST_LAPACK)\n \
>>> matrix = torch.eye(3, 3)\n \
>>> matrix[-1, -1] = 0\n \
>>> matrix\n \
tensor([[1., 0., 0.],\n \
[0., 1., 0.],\n \
[0., 0., 0.]])\n \
>>> torch.linalg.inv(matrix)\n \
Traceback (most recent call last):\n \
File \"<stdin>\", line 1, in <module>\n \
torch._C._LinAlgError: torch.linalg.inv: The diagonal element 3 is zero, the inversion\n \
could not be completed because the input matrix is singular.",
PyExc_RuntimeError,
nullptr));
ASSERT_TRUE(
PyModule_AddObject(module, "_LinAlgError", THPException_LinAlgError) ==
0);
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_OutOfMemoryError = PyErr_NewExceptionWithDoc(
"torch.OutOfMemoryError",
"Exception raised when device is out of memory",
PyExc_RuntimeError,
nullptr));
PyTypeObject* type = (PyTypeObject*)THPException_OutOfMemoryError;
type->tp_name = "torch.OutOfMemoryError";
ASSERT_TRUE(
PyModule_AddObject(
module, "OutOfMemoryError", THPException_OutOfMemoryError) == 0);
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_DistError = PyErr_NewExceptionWithDoc(
"torch.distributed.DistError",
"Exception raised when an error occurs in the distributed library",
PyExc_RuntimeError,
nullptr));
ASSERT_TRUE(
PyModule_AddObject(module, "_DistError", THPException_DistError) == 0);
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_DistBackendError = PyErr_NewExceptionWithDoc(
"torch.distributed.DistBackendError",
"Exception raised when a backend error occurs in distributed",
THPException_DistError,
nullptr));
ASSERT_TRUE(
PyModule_AddObject(
module, "_DistBackendError", THPException_DistBackendError) == 0);
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_DistNetworkError = PyErr_NewExceptionWithDoc(
"torch.distributed.DistNetworkError",
"Exception raised when a network error occurs in distributed",
THPException_DistError,
nullptr));
ASSERT_TRUE(
PyModule_AddObject(
module, "_DistNetworkError", THPException_DistNetworkError) == 0);
// NOLINTNEXTLINE(bugprone-assignment-in-if-condition)
ASSERT_TRUE(
THPException_DistStoreError = PyErr_NewExceptionWithDoc(
"torch.distributed.DistStoreError",
"Exception raised when an error occurs in the distributed store",
THPException_DistError,
nullptr));
ASSERT_TRUE(
PyModule_AddObject(
module, "_DistStoreError", THPException_DistStoreError) == 0);
return true;
}
namespace torch {
void processErrorMsgInplace(std::string& str) {
// Translate Aten types to their respective pytorch ones
constexpr std::array<std::pair<c10::string_view, c10::string_view>, 64>
changes{{
// TODO: remove torch.(cuda.|)sparse.*Tensor items?
{"Variable[SparseCUDAByteType]", "torch.cuda.sparse.ByteTensor"},
{"Variable[SparseCUDACharType]", "torch.cuda.sparse.CharTensor"},
{"Variable[SparseCUDADoubleType]", "torch.cuda.sparse.DoubleTensor"},
{"Variable[SparseCUDAFloatType]", "torch.cuda.sparse.FloatTensor"},
{"Variable[SparseCUDAIntType]", "torch.cuda.sparse.IntTensor"},
{"Variable[SparseCUDALongType]", "torch.cuda.sparse.LongTensor"},
{"Variable[SparseCUDAShortType]", "torch.cuda.sparse.ShortTensor"},
{"Variable[SparseCUDAHalfType]", "torch.cuda.sparse.HalfTensor"},
{"Variable[SparseCPUByteType]", "torch.sparse.ByteTensor"},
{"Variable[SparseCPUCharType]", "torch.sparse.CharTensor"},
{"Variable[SparseCPUDoubleType]", "torch.sparse.DoubleTensor"},
{"Variable[SparseCPUFloatType]", "torch.sparse.FloatTensor"},
{"Variable[SparseCPUIntType]", "torch.sparse.IntTensor"},
{"Variable[SparseCPULongType]", "torch.sparse.LongTensor"},
{"Variable[SparseCPUShortType]", "torch.sparse.ShortTensor"},
{"Variable[SparseCPUHalfType]", "torch.sparse.HalfTensor"},
{"Variable[CUDAByteType]", "torch.cuda.ByteTensor"},
{"Variable[CUDACharType]", "torch.cuda.CharTensor"},
{"Variable[CUDADoubleType]", "torch.cuda.DoubleTensor"},
{"Variable[CUDAFloatType]", "torch.cuda.FloatTensor"},
{"Variable[CUDAIntType]", "torch.cuda.IntTensor"},
{"Variable[CUDALongType]", "torch.cuda.LongTensor"},
{"Variable[CUDAShortType]", "torch.cuda.ShortTensor"},
{"Variable[CUDAHalfType]", "torch.cuda.HalfTensor"},
{"Variable[CPUByteType]", "torch.ByteTensor"},
{"Variable[CPUCharType]", "torch.CharTensor"},
{"Variable[CPUDoubleType]", "torch.DoubleTensor"},
{"Variable[CPUFloatType]", "torch.FloatTensor"},
{"Variable[CPUIntType]", "torch.IntTensor"},
{"Variable[CPULongType]", "torch.LongTensor"},
{"Variable[CPUShortType]", "torch.ShortTensor"},
{"Variable[CPUHalfType]", "torch.HalfTensor"},
{"SparseCUDAByteType", "torch.cuda.sparse.ByteTensor"},
{"SparseCUDACharType", "torch.cuda.sparse.CharTensor"},
{"SparseCUDADoubleType", "torch.cuda.sparse.DoubleTensor"},
{"SparseCUDAFloatType", "torch.cuda.sparse.FloatTensor"},
{"SparseCUDAIntType", "torch.cuda.sparse.IntTensor"},
{"SparseCUDALongType", "torch.cuda.sparse.LongTensor"},
{"SparseCUDAShortType", "torch.cuda.sparse.ShortTensor"},
{"SparseCUDAHalfType", "torch.cuda.sparse.HalfTensor"},
{"SparseCPUByteType", "torch.sparse.ByteTensor"},
{"SparseCPUCharType", "torch.sparse.CharTensor"},
{"SparseCPUDoubleType", "torch.sparse.DoubleTensor"},
{"SparseCPUFloatType", "torch.sparse.FloatTensor"},
{"SparseCPUIntType", "torch.sparse.IntTensor"},
{"SparseCPULongType", "torch.sparse.LongTensor"},
{"SparseCPUShortType", "torch.sparse.ShortTensor"},
{"SparseCPUHalfType", "torch.sparse.HalfTensor"},
{"CUDAByteType", "torch.cuda.ByteTensor"},
{"CUDACharType", "torch.cuda.CharTensor"},
{"CUDADoubleType", "torch.cuda.DoubleTensor"},
{"CUDAFloatType", "torch.cuda.FloatTensor"},
{"CUDAIntType", "torch.cuda.IntTensor"},
{"CUDALongType", "torch.cuda.LongTensor"},
{"CUDAShortType", "torch.cuda.ShortTensor"},
{"CUDAHalfType", "torch.cuda.HalfTensor"},
{"CPUByteType", "torch.ByteTensor"},
{"CPUCharType", "torch.CharTensor"},
{"CPUDoubleType", "torch.DoubleTensor"},
{"CPUFloatType", "torch.FloatTensor"},
{"CPUIntType", "torch.IntTensor"},
{"CPULongType", "torch.LongTensor"},
{"CPUShortType", "torch.ShortTensor"},
{"CPUHalfType", "torch.HalfTensor"},
}};
// Avoid doing any work if no types need translated
if (str.find("Type") == str.npos) {
return;
}
for (const auto& it : changes) {
c10::ReplaceAll(str, it.first, it.second);
}
}
std::string processErrorMsg(std::string str) {
processErrorMsgInplace(str);
return str;
}
static std::string formatMessage(const char* format, va_list fmt_args) {
static const size_t ERROR_BUF_SIZE = 1024;
// NOLINTNEXTLINE(modernize-avoid-c-arrays,cppcoreguidelines-avoid-c-arrays)
char error_buf[ERROR_BUF_SIZE];
vsnprintf(error_buf, ERROR_BUF_SIZE, format, fmt_args);
// Ensure that the string is null terminated
error_buf[sizeof(error_buf) / sizeof(*error_buf) - 1] = 0;
return std::string(error_buf);
}
void translate_exception_to_python(const std::exception_ptr& e_ptr) {
try {
TORCH_INTERNAL_ASSERT(
e_ptr,
"translate_exception_to_python "
"called with invalid exception pointer");
std::rethrow_exception(e_ptr);
}
CATCH_ALL_ERRORS(return)
}
TypeError::TypeError(const char* format, ...) {
va_list fmt_args{};
va_start(fmt_args, format);
msg = formatMessage(format, fmt_args);
va_end(fmt_args);
}
AttributeError::AttributeError(const char* format, ...) {
va_list fmt_args{};
va_start(fmt_args, format);
msg = formatMessage(format, fmt_args);
va_end(fmt_args);
}
void PyWarningHandler::InternalHandler::process(const c10::Warning& warning) {
warning_buffer_.push_back(warning);
}
PyWarningHandler::PyWarningHandler() noexcept(true)
: prev_handler_(c10::WarningUtils::get_warning_handler()),
in_exception_(false) {
c10::WarningUtils::set_warning_handler(&internal_handler_);
}
// Get the Python warning type for a warning
PyObject* map_warning_to_python_type(const c10::Warning& warning) {
struct Visitor {
PyObject* operator()(const c10::UserWarning&) const {
return PyExc_UserWarning;
}
PyObject* operator()(const c10::DeprecationWarning&) const {
return PyExc_DeprecationWarning;
}
};
return std::visit(Visitor(), warning.type());
}
/// See NOTE [ Conversion Cpp Python Warning ] for noexcept justification
/// NOLINTNEXTLINE(bugprone-exception-escape)
PyWarningHandler::~PyWarningHandler() noexcept(false) {
c10::WarningUtils::set_warning_handler(prev_handler_);
auto& warning_buffer = internal_handler_.warning_buffer_;
if (!warning_buffer.empty()) {
PyObject *type = nullptr, *value = nullptr, *traceback = nullptr;
pybind11::gil_scoped_acquire gil;
auto result = 0;
if (in_exception_) {
// This (combined with PyErr_Restore below) also works when no python
// error has been set yet
PyErr_Fetch(&type, &value, &traceback);
}
for (const auto& warning : warning_buffer) {
auto source_location = warning.source_location();
auto msg = warning.msg();
processErrorMsgInplace(msg);
if (source_location.file == nullptr) {
result =
PyErr_WarnEx(map_warning_to_python_type(warning), msg.c_str(), 1);
} else if (warning.verbatim()) {
// Sets the source location from the warning
// Note: PyErr_WarnExplicit will disregard Python's warning filter
// and always appear. This is in contrast to PyErr_WarnEx,
// which respects the warning filter.
result = PyErr_WarnExplicit(
/*category=*/map_warning_to_python_type(warning),
/*message=*/msg.c_str(),
/*filename=*/source_location.file,
/*lineno=*/static_cast<int>(source_location.line),
/*module=*/nullptr,
/*registry=*/nullptr);
} else {
// Lets Python set the source location and puts the C++ warning
// location into the message.
auto buf = fmt::format(
"{} (Triggered internally at {}:{}.)",
msg,
source_location.file,
source_location.line);
result =
PyErr_WarnEx(map_warning_to_python_type(warning), buf.c_str(), 1);
}
if (result < 0) {
if (in_exception_) {
// PyErr_Print prints the traceback to sys.stderr and
// clears the error indicator
PyErr_Print();
} else {
break;
}
}
}
warning_buffer.clear();
if ((result < 0) && (!in_exception_)) {
/// A warning raised an error, we need to force the parent
/// function to return an error code.
throw python_error();
}
if (in_exception_) {
PyErr_Restore(type, value, traceback);
}
}
}
} // namespace torch