Shortcuts

Source code for torch


r"""
The torch package contains data structures for multi-dimensional
tensors and defines mathematical operations over these tensors.
Additionally, it provides many utilities for efficient serialization of
Tensors and arbitrary types, and other useful utilities.

It has a CUDA counterpart, that enables you to run your tensor computations
on an NVIDIA GPU with compute capability >= 3.0.
"""

import math
import os
import sys
import platform
import textwrap
import ctypes
import inspect
if sys.version_info < (3,):
    raise Exception("Python 2 has reached end-of-life and is no longer supported by PyTorch.")

from ._utils import _import_dotted_name, classproperty
from ._utils_internal import get_file_path, prepare_multiprocessing_environment, \
    USE_RTLD_GLOBAL_WITH_LIBTORCH, USE_GLOBAL_DEPS
# TODO(torch_deploy) figure out how to freeze version.py in fbcode build
if sys.executable == 'torch_deploy':
    __version__ = "torch-deploy-1.8"
else:
    from .torch_version import __version__ as __version__

from typing import Any, Callable, Dict, Optional, Set, Type, TYPE_CHECKING, Union
import builtins

__all__ = [
    'typename', 'is_tensor', 'is_storage', 'set_default_tensor_type',
    'set_default_device',
    'set_rng_state', 'get_rng_state', 'manual_seed', 'initial_seed', 'seed',
    'save', 'load', 'set_printoptions', 'chunk', 'split', 'stack', 'matmul',
    'no_grad', 'enable_grad', 'rand', 'randn', 'inference_mode',
    'DoubleStorage', 'FloatStorage', 'LongStorage', 'IntStorage',
    'ShortStorage', 'CharStorage', 'ByteStorage', 'BoolStorage',
    'TypedStorage', 'UntypedStorage',
    'DoubleTensor', 'FloatTensor', 'LongTensor', 'IntTensor',
    'ShortTensor', 'CharTensor', 'ByteTensor', 'BoolTensor', 'Tensor',
    'lobpcg', 'use_deterministic_algorithms',
    'are_deterministic_algorithms_enabled',
    'is_deterministic_algorithms_warn_only_enabled',
    'set_deterministic_debug_mode', 'get_deterministic_debug_mode',
    'set_float32_matmul_precision', 'get_float32_matmul_precision',
    'set_warn_always', 'is_warn_always_enabled', 'SymInt', 'SymFloat',
    'SymBool', 'sym_not',
    'sym_int', 'sym_float', 'sym_max', 'sym_min', 'compile', 'vmap'
]

################################################################################
# Load the extension module
################################################################################

if sys.platform == 'win32':
    pfiles_path = os.getenv('ProgramFiles', 'C:\\Program Files')
    py_dll_path = os.path.join(sys.exec_prefix, 'Library', 'bin')
    th_dll_path = os.path.join(os.path.dirname(__file__), 'lib')

    # When users create a virtualenv that inherits the base environment,
    # we will need to add the corresponding library directory into
    # DLL search directories. Otherwise, it will rely on `PATH` which
    # is dependent on user settings.
    if sys.exec_prefix != sys.base_exec_prefix:
        base_py_dll_path = os.path.join(sys.base_exec_prefix, 'Library', 'bin')
    else:
        base_py_dll_path = ''

    dll_paths = list(filter(os.path.exists, [th_dll_path, py_dll_path, base_py_dll_path]))

    if all([not os.path.exists(os.path.join(p, 'nvToolsExt64_1.dll')) for p in dll_paths]):
        nvtoolsext_dll_path = os.path.join(
            os.getenv('NVTOOLSEXT_PATH', os.path.join(pfiles_path, 'NVIDIA Corporation', 'NvToolsExt')), 'bin', 'x64')
    else:
        nvtoolsext_dll_path = ''

    from .version import cuda as cuda_version
    import glob
    if cuda_version and all([not glob.glob(os.path.join(p, 'cudart64*.dll')) for p in dll_paths]):
        cuda_version_1 = cuda_version.replace('.', '_')
        cuda_path_var = 'CUDA_PATH_V' + cuda_version_1
        default_path = os.path.join(pfiles_path, 'NVIDIA GPU Computing Toolkit', 'CUDA', 'v' + cuda_version)
        cuda_path = os.path.join(os.getenv(cuda_path_var, default_path), 'bin')
    else:
        cuda_path = ''

    dll_paths.extend(filter(os.path.exists, [nvtoolsext_dll_path, cuda_path]))

    kernel32 = ctypes.WinDLL('kernel32.dll', use_last_error=True)
    with_load_library_flags = hasattr(kernel32, 'AddDllDirectory')
    prev_error_mode = kernel32.SetErrorMode(0x0001)

    kernel32.LoadLibraryW.restype = ctypes.c_void_p
    if with_load_library_flags:
        kernel32.LoadLibraryExW.restype = ctypes.c_void_p

    for dll_path in dll_paths:
        os.add_dll_directory(dll_path)

    try:
        ctypes.CDLL('vcruntime140.dll')
        ctypes.CDLL('msvcp140.dll')
        ctypes.CDLL('vcruntime140_1.dll')
    except OSError:
        print('''Microsoft Visual C++ Redistributable is not installed, this may lead to the DLL load failure.
                 It can be downloaded at https://aka.ms/vs/16/release/vc_redist.x64.exe''')

    dlls = glob.glob(os.path.join(th_dll_path, '*.dll'))
    path_patched = False
    for dll in dlls:
        is_loaded = False
        if with_load_library_flags:
            res = kernel32.LoadLibraryExW(dll, None, 0x00001100)
            last_error = ctypes.get_last_error()
            if res is None and last_error != 126:
                err = ctypes.WinError(last_error)
                err.strerror += f' Error loading "{dll}" or one of its dependencies.'
                raise err
            elif res is not None:
                is_loaded = True
        if not is_loaded:
            if not path_patched:
                os.environ['PATH'] = ';'.join(dll_paths + [os.environ['PATH']])
                path_patched = True
            res = kernel32.LoadLibraryW(dll)
            if res is None:
                err = ctypes.WinError(ctypes.get_last_error())
                err.strerror += f' Error loading "{dll}" or one of its dependencies.'
                raise err

    kernel32.SetErrorMode(prev_error_mode)


def _preload_cuda_deps(lib_folder, lib_name):
    """Preloads cuda deps if they could not be found otherwise."""
    # Should only be called on Linux if default path resolution have failed
    assert platform.system() == 'Linux', 'Should only be called on Linux'
    import glob
    lib_path = None
    for path in sys.path:
        nvidia_path = os.path.join(path, 'nvidia')
        if not os.path.exists(nvidia_path):
            continue
        candidate_lib_paths = glob.glob(os.path.join(nvidia_path, lib_folder, 'lib', lib_name))
        if candidate_lib_paths and not lib_path:
            lib_path = candidate_lib_paths[0]
        if lib_path:
            break
    if not lib_path:
        raise ValueError(f"{lib_name} not found in the system path {sys.path}")
    ctypes.CDLL(lib_path)


# See Note [Global dependencies]
def _load_global_deps():
    if sys.executable == 'torch_deploy' or platform.system() == 'Windows':
        return

    lib_name = 'libtorch_global_deps' + ('.dylib' if platform.system() == 'Darwin' else '.so')
    here = os.path.abspath(__file__)
    lib_path = os.path.join(os.path.dirname(here), 'lib', lib_name)

    try:
        ctypes.CDLL(lib_path, mode=ctypes.RTLD_GLOBAL)
    except OSError as err:
        # Can only happen for wheel with cuda libs as PYPI deps
        # As PyTorch is not purelib, but nvidia-*-cu11 is
        cuda_libs: Dict[str, str] = {
            'cublas': 'libcublas.so.*[0-9]',
            'cudnn': 'libcudnn.so.*[0-9]',
            'cuda_nvrtc': 'libnvrtc.so.*[0-9].*[0-9]',
            'cuda_runtime': 'libcudart.so.*[0-9].*[0-9]',
            'cuda_cupti': 'libcupti.so.*[0-9].*[0-9]',
            'cufft': 'libcufft.so.*[0-9]',
            'curand': 'libcurand.so.*[0-9]',
            'cusolver': 'libcusolver.so.*[0-9]',
            'cusparse': 'libcusparse.so.*[0-9]',
            'nccl': 'libnccl.so.*[0-9]',
            'nvtx': 'libnvToolsExt.so.*[0-9]',
        }
        is_cuda_lib_err = [lib for lib in cuda_libs.values() if(lib.split('.')[0] in err.args[0])]
        if not is_cuda_lib_err:
            raise err
        for lib_folder, lib_name in cuda_libs.items():
            _preload_cuda_deps(lib_folder, lib_name)
        ctypes.CDLL(lib_path, mode=ctypes.RTLD_GLOBAL)


if (USE_RTLD_GLOBAL_WITH_LIBTORCH or os.getenv('TORCH_USE_RTLD_GLOBAL')) and \
        (sys.executable == "torch_deploy" or platform.system() != 'Windows'):
    # Do it the hard way.  You might want to load libtorch with RTLD_GLOBAL in a
    # few circumstances:
    #
    #   1. You're in a build environment (e.g., fbcode) where
    #      libtorch_global_deps is not available, but you still need
    #      to get mkl to link in with RTLD_GLOBAL or it will just
    #      not work.
    #
    #   2. You're trying to run PyTorch under UBSAN and you need
    #      to ensure that only one copy of libtorch is loaded, so
    #      vptr checks work properly
    #
    # If you're using this setting, you must verify that all the libraries
    # you load consistently use the same libstdc++, or you may have
    # mysterious segfaults.
    #
    old_flags = sys.getdlopenflags()
    sys.setdlopenflags(os.RTLD_GLOBAL | os.RTLD_LAZY)
    from torch._C import *  # noqa: F403
    sys.setdlopenflags(old_flags)
    del old_flags

else:
    # Easy way.  You want this most of the time, because it will prevent
    # C++ symbols from libtorch clobbering C++ symbols from other
    # libraries, leading to mysterious segfaults.
    #
    # If building in an environment where libtorch_global_deps isn't available
    # like parts of fbsource, but where RTLD_GLOBAL causes segfaults, you will
    # want USE_RTLD_GLOBAL_WITH_LIBTORCH = False and USE_GLOBAL_DEPS = False
    #
    # See Note [Global dependencies]
    if USE_GLOBAL_DEPS:
        _load_global_deps()
    from torch._C import *  # noqa: F403

# Appease the type checker; ordinarily this binding is inserted by the
# torch._C module initialization code in C
if TYPE_CHECKING:
    import torch._C as _C

[docs]class SymInt: """ Like an int (including magic methods), but redirects all operations on the wrapped node. This is used in particular to symbolically record operations in the symbolic shape workflow. """ def __init__(self, node): # This field MUST be named node; C++ binding code assumes that this # class has a field named node that stores SymNode self.node = node def __bool__(self): return self.node.bool_() def __int__(self): return self.node.int_() # Magic methods installed by torch.fx.experimental.symbolic_shapes def __eq__(self, other: object) -> builtins.bool: raise AssertionError("type stub not overridden") def __lt__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __gt__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __le__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __ge__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __sym_max__(self, other): raise AssertionError("type stub not overridden") def __sym_min__(self, other): raise AssertionError("type stub not overridden") def __sym_float__(self): raise AssertionError("type stub not overridden") def __repr__(self): return str(self.node)
[docs]class SymFloat: """ Like an float (including magic methods), but redirects all operations on the wrapped node. This is used in particular to symbolically record operations in the symbolic shape workflow. """ def __init__(self, node): from torch.fx.experimental.symbolic_shapes import SymNode assert isinstance(node, SymNode) # This field MUST be named node; C++ binding code assumes that this # class has a field named node that stores SymNode self.node = node def __bool__(self): return self.node.bool_() # Magic methods installed by torch.fx.experimental.symbolic_shapes def __eq__(self, other: object) -> builtins.bool: raise AssertionError("type stub not overridden") def __lt__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __gt__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __le__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __ge__(self, other) -> builtins.bool: raise AssertionError("type stub not overridden") def __sym_max__(self, other): raise AssertionError("type stub not overridden") def __sym_min__(self, other): raise AssertionError("type stub not overridden") def __sym_int__(self): raise AssertionError("type stub not overridden") def __repr__(self): return self.node.str()
[docs]class SymBool: """ Like an bool (including magic methods), but redirects all operations on the wrapped node. This is used in particular to symbolically record operations in the symbolic shape workflow. Unlike regular bools, regular boolean operators will force extra guards instead of symbolically evaluate. Use the bitwise operators instead to handle this. """ def __init__(self, node): from torch.fx.experimental.symbolic_shapes import SymNode assert isinstance(node, SymNode) # This field MUST be named node; C++ binding code assumes that this # class has a field named node that stores SymNode self.node = node def __bool__(self): return self.node.bool_() # Magic methods installed by torch.fx.experimental.symbolic_shapes def __and__(self, other) -> "SymBool": raise AssertionError("type stub not overridden") def __or__(self, other) -> "SymBool": raise AssertionError("type stub not overridden") # We very carefully define __sym_not__, and not a number of other # plausible alternatives: # # - We do not override __not__ because this is not a real magic # method; you cannot override the meaning of the not builtin in # Python. We use the name 'sym_not' to clarify that in user code you # cannot use the builtin not or operator.not_ or operator.__not__ and # hit this magic method; you must use our custom sym_not operator. # # - We do not override the __invert__ method because SymBool is # meant to be usable in situations where bool is expected. However, # bitwise negation ~a does the wrong thing with booleans (because # bool is a subclass of int, so ~1 = -2 which is not falseish.) # This would be a giant footgun, so we get around it by defining # our own operator. Note that bitwise and/or do the right thing, # so we reuse the conventional operators there for readability. # def __sym_not__(self) -> "SymBool": raise AssertionError("type stub not overridden") def __repr__(self): return self.node.str()
[docs]def sym_not(a): r""" SymInt-aware utility for logical negation. Args: a (SymBool or bool): Object to negate """ if hasattr(a, '__sym_not__'): return a.__sym_not__() return not a
[docs]def sym_float(a): r""" SymInt-aware utility for float casting. Args: a (SymInt, SymFloat, or object): Object to cast """ if isinstance(a, SymFloat): return a elif hasattr(a, '__sym_float__'): return a.__sym_float__() return py_float(a) # type: ignore[operator]
[docs]def sym_int(a): r""" SymInt-aware utility for int casting. Args: a (SymInt, SymFloat, or object): Object to cast """ if isinstance(a, SymInt): return a elif isinstance(a, SymFloat): return math.floor(a) if a >= 0 else math.ceil(a) # type: ignore[arg-type] return py_int(a) # type: ignore[operator]
[docs]def sym_max(a, b): """ SymInt-aware utility for max().""" if isinstance(a, (SymInt, SymFloat)): return a.__sym_max__(b) elif isinstance(b, (SymInt, SymFloat)): # NB: If you actually care about preserving output type exactly # if you do something like max(0, 0.0), it is NOT sound to treat # min/max as commutative return b.__sym_max__(a) return builtins.max(a, b) # type: ignore[operator]
[docs]def sym_min(a, b): """ SymInt-aware utility for max().""" if isinstance(a, (SymInt, SymFloat)): return a.__sym_min__(b) elif isinstance(b, (SymInt, SymFloat)): return b.__sym_min__(a) return builtins.min(a, b) # type: ignore[operator]
# Check to see if we can load C extensions, and if not provide some guidance # on what the problem might be. try: # _initExtension is chosen (arbitrarily) as a sentinel. from torch._C import _initExtension except ImportError: import torch._C as _C_for_compiled_check # The __file__ check only works for Python 3.7 and above. if _C_for_compiled_check.__file__ is None: raise ImportError(textwrap.dedent(''' Failed to load PyTorch C extensions: It appears that PyTorch has loaded the `torch/_C` folder of the PyTorch repository rather than the C extensions which are expected in the `torch._C` namespace. This can occur when using the `install` workflow. e.g. $ python setup.py install && python -c "import torch" This error can generally be solved using the `develop` workflow $ python setup.py develop && python -c "import torch" # This should succeed or by running Python from a different directory. ''').strip()) from None raise # If __file__ is not None the cause is unknown, so just re-raise. for name in dir(_C): if name[0] != '_' and not name.endswith('Base'): __all__.append(name) obj = getattr(_C, name) if (isinstance(obj, Callable) or inspect.isclass(obj)): # type: ignore[arg-type] if (obj.__module__ != 'torch'): # TODO: fix their module from C++ side if name not in ['DisableTorchFunctionSubclass', 'DisableTorchFunction', 'Generator']: obj.__module__ = 'torch' if not TYPE_CHECKING: # issue 38137 and python issue 43367. Submodules of a C extension are # non-standard, and attributes of those submodules cannot be pickled since # pickle expect to be able to import them as "from _C.sub import attr" # which fails with "_C is not a package for attr in dir(_C): candidate = getattr(_C, attr) if type(candidate) is type(_C): # submodule if f'torch._C.{attr}' not in sys.modules: sys.modules[f'torch._C.{attr}'] = candidate ################################################################################ # Define basic utilities ################################################################################ def typename(o): if isinstance(o, torch.Tensor): return o.type() module = '' class_name = '' if hasattr(o, '__module__') and o.__module__ != 'builtins' \ and o.__module__ != '__builtin__' and o.__module__ is not None: module = o.__module__ + '.' if hasattr(o, '__qualname__'): class_name = o.__qualname__ elif hasattr(o, '__name__'): class_name = o.__name__ else: class_name = o.__class__.__name__ return module + class_name
[docs]def is_tensor(obj): r"""Returns True if `obj` is a PyTorch tensor. Note that this function is simply doing ``isinstance(obj, Tensor)``. Using that ``isinstance`` check is better for typechecking with mypy, and more explicit - so it's recommended to use that instead of ``is_tensor``. Args: obj (Object): Object to test Example:: >>> x = torch.tensor([1, 2, 3]) >>> torch.is_tensor(x) True """ return isinstance(obj, torch.Tensor)
[docs]def is_storage(obj): r"""Returns True if `obj` is a PyTorch storage object. Args: obj (Object): Object to test """ return type(obj) in _storage_classes
_GLOBAL_DEVICE_CONTEXT = None
[docs]def set_default_device(device): """Sets the default ``torch.Tensor`` to be allocated on ``device``. This does not affect factory function calls which are called with an explicit ``device`` argument. Factory calls will be performed as if they were passed ``device`` as an argument. To only temporarily change the default device instead of setting it globally, use ``with torch.device(device):`` instead. The default device is initially ``cpu``. If you set the default tensor device to another device (e.g., ``cuda``) without a device index, tensors will be allocated on whatever the current device for the device type, even after :func:`torch.cuda.set_device` is called. .. warning:: This function imposes a slight performance cost on every Python call to the torch API (not just factory functions). If this is causing problems for you, please comment on https://github.com/pytorch/pytorch/issues/92701 Args: device (device or string): the device to set as default Example:: >>> # xdoctest: +SKIP("requires cuda, changes global state") >>> torch.tensor([1.2, 3]).device device(type='cpu') >>> torch.set_default_device('cuda') # current device is 0 >>> torch.tensor([1.2, 3]).device device(type='cuda', index=0) >>> torch.set_default_device('cuda:1') >>> torch.tensor([1.2, 3]).device device(type='cuda', index=1) """ global _GLOBAL_DEVICE_CONTEXT if _GLOBAL_DEVICE_CONTEXT is not None: _GLOBAL_DEVICE_CONTEXT.__exit__(None, None, None) if device is None: _GLOBAL_DEVICE_CONTEXT = None return from torch.utils._device import DeviceContext _GLOBAL_DEVICE_CONTEXT = DeviceContext(device) _GLOBAL_DEVICE_CONTEXT.__enter__()
[docs]def set_default_tensor_type(t): r"""Sets the default ``torch.Tensor`` type to floating point tensor type ``t``. This type will also be used as default floating point type for type inference in :func:`torch.tensor`. The default floating point tensor type is initially ``torch.FloatTensor``. Args: t (type or string): the floating point tensor type or its name Example:: >>> # xdoctest: +SKIP("Other tests may have changed the default type. Can we reset it?") >>> torch.tensor([1.2, 3]).dtype # initial default for floating point is torch.float32 torch.float32 >>> torch.set_default_tensor_type(torch.DoubleTensor) >>> torch.tensor([1.2, 3]).dtype # a new floating point tensor torch.float64 """ if isinstance(t, str): t = _import_dotted_name(t) _C._set_default_tensor_type(t)
[docs]def set_default_dtype(d): r""" Sets the default floating point dtype to :attr:`d`. Supports torch.float32 and torch.float64 as inputs. Other dtypes may be accepted without complaint but are not supported and are unlikely to work as expected. When PyTorch is initialized its default floating point dtype is torch.float32, and the intent of set_default_dtype(torch.float64) is to facilitate NumPy-like type inference. The default floating point dtype is used to: 1. Implicitly determine the default complex dtype. When the default floating point type is float32 the default complex dtype is complex64, and when the default floating point type is float64 the default complex type is complex128. 2. Infer the dtype for tensors constructed using Python floats or complex Python numbers. See examples below. 3. Determine the result of type promotion between bool and integer tensors and Python floats and complex Python numbers. Args: d (:class:`torch.dtype`): the floating point dtype to make the default. Either torch.float32 or torch.float64. Example: >>> # xdoctest: +SKIP("Other tests may have changed the default type. Can we reset it?") >>> # initial default for floating point is torch.float32 >>> # Python floats are interpreted as float32 >>> torch.tensor([1.2, 3]).dtype torch.float32 >>> # initial default for floating point is torch.complex64 >>> # Complex Python numbers are interpreted as complex64 >>> torch.tensor([1.2, 3j]).dtype torch.complex64 >>> torch.set_default_dtype(torch.float64) >>> # Python floats are now interpreted as float64 >>> torch.tensor([1.2, 3]).dtype # a new floating point tensor torch.float64 >>> # Complex Python numbers are now interpreted as complex128 >>> torch.tensor([1.2, 3j]).dtype # a new complex tensor torch.complex128 """ _C._set_default_dtype(d)
[docs]def use_deterministic_algorithms(mode, *, warn_only=False): r""" Sets whether PyTorch operations must use "deterministic" algorithms. That is, algorithms which, given the same input, and when run on the same software and hardware, always produce the same output. When enabled, operations will use deterministic algorithms when available, and if only nondeterministic algorithms are available they will throw a :class:`RuntimeError` when called. .. note:: This setting alone is not always enough to make an application reproducible. Refer to :ref:`reproducibility` for more information. .. note:: :func:`torch.set_deterministic_debug_mode` offers an alternative interface for this feature. The following normally-nondeterministic operations will act deterministically when ``mode=True``: * :class:`torch.nn.Conv1d` when called on CUDA tensor * :class:`torch.nn.Conv2d` when called on CUDA tensor * :class:`torch.nn.Conv3d` when called on CUDA tensor * :class:`torch.nn.ConvTranspose1d` when called on CUDA tensor * :class:`torch.nn.ConvTranspose2d` when called on CUDA tensor * :class:`torch.nn.ConvTranspose3d` when called on CUDA tensor * :func:`torch.bmm` when called on sparse-dense CUDA tensors * :func:`torch.Tensor.__getitem__` when attempting to differentiate a CPU tensor and the index is a list of tensors * :func:`torch.Tensor.index_put` with ``accumulate=False`` * :func:`torch.Tensor.index_put` with ``accumulate=True`` when called on a CPU tensor * :func:`torch.Tensor.put_` with ``accumulate=True`` when called on a CPU tensor * :func:`torch.Tensor.scatter_add_` when called on a CUDA tensor * :func:`torch.gather` when called on a CUDA tensor that requires grad * :func:`torch.index_add` when called on CUDA tensor * :func:`torch.index_select` when attempting to differentiate a CUDA tensor * :func:`torch.repeat_interleave` when attempting to differentiate a CUDA tensor * :func:`torch.Tensor.index_copy` when called on a CPU or CUDA tensor The following normally-nondeterministic operations will throw a :class:`RuntimeError` when ``mode=True``: * :class:`torch.nn.AvgPool3d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.AdaptiveAvgPool2d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.AdaptiveAvgPool3d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.MaxPool3d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.AdaptiveMaxPool2d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.FractionalMaxPool2d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.FractionalMaxPool3d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.MaxUnpool1d` * :class:`torch.nn.MaxUnpool2d` * :class:`torch.nn.MaxUnpool3d` * :func:`torch.nn.functional.interpolate` when attempting to differentiate a CUDA tensor and one of the following modes is used: - ``linear`` - ``bilinear`` - ``bicubic`` - ``trilinear`` * :class:`torch.nn.ReflectionPad1d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.ReflectionPad2d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.ReflectionPad3d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.ReplicationPad1d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.ReplicationPad2d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.ReplicationPad3d` when attempting to differentiate a CUDA tensor * :class:`torch.nn.NLLLoss` when called on a CUDA tensor * :class:`torch.nn.CTCLoss` when attempting to differentiate a CUDA tensor * :class:`torch.nn.EmbeddingBag` when attempting to differentiate a CUDA tensor when ``mode='max'`` * :func:`torch.Tensor.put_` when ``accumulate=False`` * :func:`torch.Tensor.put_` when ``accumulate=True`` and called on a CUDA tensor * :func:`torch.histc` when called on a CUDA tensor * :func:`torch.bincount` when called on a CUDA tensor * :func:`torch.kthvalue` with called on a CUDA tensor * :func:`torch.median` with indices output when called on a CUDA tensor * :func:`torch.nn.functional.grid_sample` when attempting to differentiate a CUDA tensor * :func:`torch.cumsum` when called on a CUDA tensor when dtype is floating point or complex A handful of CUDA operations are nondeterministic if the CUDA version is 10.2 or greater, unless the environment variable ``CUBLAS_WORKSPACE_CONFIG=:4096:8`` or ``CUBLAS_WORKSPACE_CONFIG=:16:8`` is set. See the CUDA documentation for more details: `<https://docs.nvidia.com/cuda/cublas/index.html#cublasApi_reproducibility>`_ If one of these environment variable configurations is not set, a :class:`RuntimeError` will be raised from these operations when called with CUDA tensors: * :func:`torch.mm` * :func:`torch.mv` * :func:`torch.bmm` Note that deterministic operations tend to have worse performance than nondeterministic operations. .. note:: This flag does not detect or prevent nondeterministic behavior caused by calling an inplace operation on a tensor with an internal memory overlap or by giving such a tensor as the :attr:`out` argument for an operation. In these cases, multiple writes of different data may target a single memory location, and the order of writes is not guaranteed. Args: mode (:class:`bool`): If True, makes potentially nondeterministic operations switch to a deterministic algorithm or throw a runtime error. If False, allows nondeterministic operations. Keyword args: warn_only (:class:`bool`, optional): If True, operations that do not have a deterministic implementation will throw a warning instead of an error. Default: ``False`` Example:: >>> # xdoctest: +SKIP >>> torch.use_deterministic_algorithms(True) # Forward mode nondeterministic error >>> torch.randn(10, device='cuda').kthvalue(0) ... RuntimeError: kthvalue CUDA does not have a deterministic implementation... # Backward mode nondeterministic error >>> torch.nn.AvgPool3d(1)(torch.randn(3, 4, 5, 6, requires_grad=True).cuda()).sum().backward() ... RuntimeError: avg_pool3d_backward_cuda does not have a deterministic implementation... """ _C._set_deterministic_algorithms(mode, warn_only=warn_only)
[docs]def are_deterministic_algorithms_enabled(): r"""Returns True if the global deterministic flag is turned on. Refer to :func:`torch.use_deterministic_algorithms` documentation for more details. """ return _C._get_deterministic_algorithms()
[docs]def is_deterministic_algorithms_warn_only_enabled(): r"""Returns True if the global deterministic flag is set to warn only. Refer to :func:`torch.use_deterministic_algorithms` documentation for more details. """ return _C._get_deterministic_algorithms_warn_only()
[docs]def set_deterministic_debug_mode(debug_mode: Union[builtins.int, str]) -> None: r"""Sets the debug mode for deterministic operations. .. note:: This is an alternative interface for :func:`torch.use_deterministic_algorithms`. Refer to that function's documentation for details about affected operations. Args: debug_mode(str or int): If "default" or 0, don't error or warn on nondeterministic operations. If "warn" or 1, warn on nondeterministic operations. If "error" or 2, error on nondeterministic operations. """ # NOTE: builtins.int is used here because int in this scope resolves # to torch.int if not isinstance(debug_mode, (builtins.int, str)): raise TypeError(f'debug_mode must be str or int, but got {type(debug_mode)}') if isinstance(debug_mode, str): if debug_mode == 'default': debug_mode = 0 elif debug_mode == 'warn': debug_mode = 1 elif debug_mode == 'error': debug_mode = 2 else: raise RuntimeError( 'invalid value of debug_mode, expected one of `default`, ' f'`warn`, `error`, but got {debug_mode}') if debug_mode == 0: _C._set_deterministic_algorithms(False) elif debug_mode == 1: _C._set_deterministic_algorithms(True, warn_only=True) elif debug_mode == 2: _C._set_deterministic_algorithms(True) else: raise RuntimeError( 'invalid value of debug_mode, expected 0, 1, or 2, ' f'but got {debug_mode}')
[docs]def get_deterministic_debug_mode() -> builtins.int: r"""Returns the current value of the debug mode for deterministic operations. Refer to :func:`torch.set_deterministic_debug_mode` documentation for more details. """ if _C._get_deterministic_algorithms(): if _C._get_deterministic_algorithms_warn_only(): return 1 else: return 2 else: return 0
[docs]def get_float32_matmul_precision() -> builtins.str: r"""Returns the current value of float32 matrix multiplication precision. Refer to :func:`torch.set_float32_matmul_precision` documentation for more details. """ return _C._get_float32_matmul_precision()
[docs]def set_float32_matmul_precision(precision): r"""Sets the internal precision of float32 matrix multiplications. Running float32 matrix multiplications in lower precision may significantly increase performance, and in some programs the loss of precision has a negligible impact. Supports three settings: * "highest", float32 matrix multiplications use the float32 datatype for internal computations. * "high", float32 matrix multiplications use the TensorFloat32 or bfloat16_3x datatypes for internal computations, if fast matrix multiplication algorithms using those datatypes internally are available. Otherwise float32 matrix multiplications are computed as if the precision is "highest". * "medium", float32 matrix multiplications use the bfloat16 datatype for internal computations, if a fast matrix multiplication algorithm using that datatype internally is available. Otherwise float32 matrix multiplications are computed as if the precision is "high". .. note:: This does not change the output dtype of float32 matrix multiplications, it controls how the internal computation of the matrix multiplication is performed. .. note:: This does not change the precision of convolution operations. Other flags, like `torch.backends.cudnn.allow_tf32`, may control the precision of convolution operations. .. note:: This flag currently only affects one native device type: CUDA. If "high" or "medium" are set then the TensorFloat32 datatype will be used when computing float32 matrix multiplications, equivalent to setting `torch.backends.cuda.matmul.allow_tf32 = True`. When "highest" (the default) is set then the float32 datatype is used for internal computations, equivalent to setting `torch.backends.cuda.matmul.allow_tf32 = False`. Args: precision(str): can be set to "highest" (default), "high", or "medium" (see above). """ _C._set_float32_matmul_precision(precision)
[docs]def set_warn_always(b): r"""When this flag is False (default) then some PyTorch warnings may only appear once per process. This helps avoid excessive warning information. Setting it to True causes these warnings to always appear, which may be helpful when debugging. Args: b (:class:`bool`): If True, force warnings to always be emitted If False, set to the default behaviour """ _C._set_warnAlways(b)
[docs]def is_warn_always_enabled(): r"""Returns True if the global warn_always flag is turned on. Refer to :func:`torch.set_warn_always` documentation for more details. """ return _C._get_warnAlways()
################################################################################ # Define numeric constants ################################################################################ # For Python Array API (https://data-apis.org/array-api/latest/API_specification/constants.html) and # NumPy consistency (https://numpy.org/devdocs/reference/constants.html) from math import e , nan , inf , pi __all__.extend(['e', 'pi', 'nan', 'inf']) ################################################################################ # Define Storage and Tensor classes ################################################################################ from ._tensor import Tensor from .storage import _StorageBase, TypedStorage, _LegacyStorage, UntypedStorage, _warn_typed_storage_removal # NOTE: New <type>Storage classes should never be added. When adding a new # dtype, use torch.storage.TypedStorage directly.
[docs]class ByteStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.uint8
[docs]class DoubleStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.double
[docs]class FloatStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.float
[docs]class HalfStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.half
[docs]class LongStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.long
[docs]class IntStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.int
[docs]class ShortStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.short
[docs]class CharStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.int8
[docs]class BoolStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.bool
[docs]class BFloat16Storage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.bfloat16
[docs]class ComplexDoubleStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.cdouble
[docs]class ComplexFloatStorage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.cfloat
[docs]class QUInt8Storage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.quint8
[docs]class QInt8Storage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.qint8
[docs]class QInt32Storage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.qint32
[docs]class QUInt4x2Storage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.quint4x2
[docs]class QUInt2x4Storage(_LegacyStorage):
[docs] @classproperty def dtype(self): _warn_typed_storage_removal() return self._dtype
@classproperty def _dtype(self): return torch.quint2x4
_storage_classes = { UntypedStorage, DoubleStorage, FloatStorage, LongStorage, IntStorage, ShortStorage, CharStorage, ByteStorage, HalfStorage, BoolStorage, QUInt8Storage, QInt8Storage, QInt32Storage, BFloat16Storage, ComplexFloatStorage, ComplexDoubleStorage, QUInt4x2Storage, QUInt2x4Storage, TypedStorage } # The _tensor_classes set is initialized by the call to _C._initialize_tensor_type_bindings() _tensor_classes: Set[Type] = set() # If you edit these imports, please update torch/__init__.py.in as well from .random import set_rng_state, get_rng_state, manual_seed, initial_seed, seed from .serialization import save, load from ._tensor_str import set_printoptions ################################################################################ # Initialize extension ################################################################################ def manager_path(): if sys.executable == 'torch_deploy' or platform.system() == 'Windows': return b"" path = get_file_path('torch', 'bin', 'torch_shm_manager') prepare_multiprocessing_environment(get_file_path('torch')) if not os.path.exists(path): raise RuntimeError("Unable to find torch_shm_manager at " + path) return path.encode('utf-8') from torch.amp import autocast # Initializing the extension shadows the built-in python float / int classes; # store them for later use by SymInt / SymFloat. py_float = float py_int = int # Shared memory manager needs to know the exact location of manager executable _C._initExtension(manager_path()) del manager_path # Appease the type checker: it can't deal with direct setting of globals(). # Note that we will see "too many" functions when reexporting this way; there # is not a good way to fix this problem. Perhaps, try to redesign VariableFunctions # so that this import is good enough if TYPE_CHECKING: # Some type signatures pulled in from _VariableFunctions here clash with # signatures already imported. For now these clashes are ignored; see # PR #43339 for details. from torch._C._VariableFunctions import * # type: ignore[misc] # noqa: F403 # Fixup segment_reduce visibility _segment_reduce = segment_reduce del segment_reduce # Ops not to be exposed in `torch` namespace, # mostly helper ops. PRIVATE_OPS = ( 'unique_dim', ) for name in dir(_C._VariableFunctions): if name.startswith('__') or name in PRIVATE_OPS: continue obj = getattr(_C._VariableFunctions, name) obj.__module__ = 'torch' # Hide some APIs that should not be public if name == "segment_reduce": # TODO: Once the undocumented FC window is passed, remove the line bellow globals()[name] = obj name = "_" + name globals()[name] = obj if not name.startswith("_"): __all__.append(name) ################################################################################ # Import interface functions defined in Python ################################################################################ # needs to be after the above ATen bindings so we can overwrite from Python side from .functional import * # noqa: F403 ################################################################################ # Remove unnecessary members ################################################################################ del _StorageBase del _LegacyStorage ################################################################################ # Define _assert ################################################################################ # needs to be before the submodule imports to avoid circular dependencies
[docs]def _assert(condition, message): r"""A wrapper around Python's assert which is symbolically traceable. """ from .overrides import has_torch_function, handle_torch_function if type(condition) is not torch.Tensor and has_torch_function((condition,)): return handle_torch_function(_assert, (condition,), condition, message) assert condition, message
################################################################################ # Import most common subpackages ################################################################################ # Use the redundant form so that type checkers know that these are a part of # the public API. The "regular" import lines are there solely for the runtime # side effect of adding to the imported module's members for other users. from torch import cuda as cuda from torch import cpu as cpu from torch import autograd as autograd from torch.autograd import ( no_grad as no_grad, enable_grad as enable_grad, set_grad_enabled as set_grad_enabled, inference_mode as inference_mode, ) from torch import fft as fft from torch import futures as futures from torch import _awaits as _awaits from torch import nested as nested from torch import nn as nn from torch.signal import windows as windows from torch import optim as optim import torch.optim._multi_tensor from torch import multiprocessing as multiprocessing from torch import sparse as sparse from torch import special as special import torch.utils.backcompat from torch import onnx as onnx from torch import jit as jit from torch import linalg as linalg from torch import hub as hub from torch import random as random from torch import distributions as distributions from torch import testing as testing import torch.backends.cuda import torch.backends.mps import torch.backends.cudnn import torch.backends.mkl import torch.backends.mkldnn import torch.backends.openmp import torch.backends.quantized import torch.utils.data from torch import __config__ as __config__ from torch import __future__ as __future__ from torch import profiler as profiler # Quantized, sparse, AO, etc. should be last to get imported, as nothing # is expected to depend on them. from torch import ao as ao # nn.quant* depends on ao -- so should be after those. import torch.nn.quantizable import torch.nn.quantized import torch.nn.qat import torch.nn.intrinsic _C._init_names(list(torch._storage_classes)) # attach docstrings to torch and tensor functions from . import _torch_docs, _tensor_docs, _storage_docs del _torch_docs, _tensor_docs, _storage_docs
[docs]def compiled_with_cxx11_abi(): r"""Returns whether PyTorch was built with _GLIBCXX_USE_CXX11_ABI=1""" return _C._GLIBCXX_USE_CXX11_ABI
# Import the ops "namespace" from torch._ops import ops from torch._classes import classes # quantization depends on torch.fx # Import quantization from torch import quantization as quantization # Import the quasi random sampler from torch import quasirandom as quasirandom # If you are seeing this, it means that this call site was not checked if # the memory format could be preserved, and it was switched to old default # behaviour of contiguous legacy_contiguous_format = contiguous_format # Register fork handler to initialize OpenMP in child processes (see gh-28389) from torch.multiprocessing._atfork import register_after_fork register_after_fork(torch.get_num_threads) del register_after_fork # Import tools that require fully imported torch (for applying # torch.jit.script as a decorator, for instance): from ._lobpcg import lobpcg as lobpcg # These were previously defined in native_functions.yaml and appeared on the # `torch` namespace, but we moved them to c10 dispatch to facilitate custom # class usage. We add these lines here to preserve backward compatibility. quantized_lstm = torch.ops.aten.quantized_lstm quantized_gru = torch.ops.aten.quantized_gru from torch.utils.dlpack import from_dlpack, to_dlpack # Import experimental masked operations support. See # [RFC-0016](https://github.com/pytorch/rfcs/pull/27) for more # information. from . import masked # Import removed ops with error message about removal from ._linalg_utils import ( # type: ignore[misc] matrix_rank, eig, solve, lstsq, ) from ._linalg_utils import _symeig as symeig # type: ignore[misc] class _TorchCompileInductorWrapper: compiler_name = "inductor" def __init__(self, mode, options, dynamic): self.config = dict() self.dynamic = dynamic self.apply_mode(mode) self.apply_options(options) if dynamic: # cudagraphs conflicts with dynamic shapes self.config["triton.cudagraphs"] = False assert "triton.cudagraphs" not in ( options or () ), "triton.cudagraphs does not support dynamic shapes" def __eq__(self, other): return (isinstance(other, _TorchCompileInductorWrapper) and self.config == other.config and self.dynamic == other.dynamic) def apply_mode(self, mode: Optional[str]): if mode is None or mode == "default": pass elif mode == "reduce-overhead": self.apply_options({ "triton.cudagraphs": True, "size_asserts": False, }) elif mode == "max-autotune": self.apply_options({ "epilogue_fusion": True, "max_autotune": True, "triton.cudagraphs": True, }) else: raise RuntimeError( f"Unrecognized mode={mode}, should be one of: default, reduce-overhead, max-autotune" ) def apply_options(self, options: Optional[Dict[str, Any]]): if not options: return from torch._inductor import config current_config: Dict[str, Any] = config.to_dict() # type: ignore[attr-defined] for key, val in options.items(): attr_name = key.replace("-", "_") if attr_name not in current_config: raise RuntimeError( f"Unexpected optimization option {key}, known options are {list(current_config.keys())}" ) if type(val) is not type(current_config[attr_name]): val_type_str = type(val).__name__ expected_type_str = type(current_config[attr_name]).__name__ raise RuntimeError( f"Unexpected type of attr {key}, got {val_type_str} should be {expected_type_str}" ) self.config[attr_name] = val def __call__(self, model_, inputs_): from torch._inductor.compile_fx import compile_fx return compile_fx(model_, inputs_, config_patches=self.config)
[docs]def compile(model: Optional[Callable] = None, *, fullgraph: builtins.bool = False, dynamic: builtins.bool = False, backend: Union[str, Callable] = "inductor", mode: Union[str, None] = None, options: Optional[Dict[str, Union[str, builtins.int, builtins.bool]]] = None, disable: builtins.bool = False) -> Callable: """ Optimizes given model/function using TorchDynamo and specified backend. Args: model (Callable): Module/function to optimize fullgraph (bool): Whether it is ok to break model into several subgraphs dynamic (bool): Use dynamic shape tracing backend (str or Callable): backend to be used mode (str): Can be either "default", "reduce-overhead" or "max-autotune" options (dict): A dictionary of options to pass to the backend. disable (bool): Turn torch.compile() into a no-op for testing Example:: @torch.compile(options={"matmul-padding": True}, fullgraph=True) def foo(x): return torch.sin(x) + torch.cos(x) """ _C._log_api_usage_once("torch.compile") # Decorator mode if model is None: def fn(model: Callable): if model is None: raise RuntimeError("Model can't be None") return compile(model, fullgraph=fullgraph, dynamic=dynamic, backend=backend, mode=mode, options=options, disable=disable) return fn import torch._dynamo if mode is not None and options is not None: raise RuntimeError("Either mode or options can be specified, but both can't be specified at the same time.") if mode is None and options is None: mode = "default" if backend == "inductor": backend = _TorchCompileInductorWrapper(mode, options, dynamic) return torch._dynamo.optimize(backend=backend, nopython=fullgraph, dynamic=dynamic, disable=disable)(model)
def _register_device_module(device_type, module): r"""Register an external runtime module of the specific :attr:`device_type` supported by torch. After the :attr:`module` is registered correctly, the user can refer the external runtime module as part of torch with attribute torch.xxx. """ # Make sure the device_type represent a supported device type for torch. device_type = torch.device(device_type).type m = sys.modules[__name__] if hasattr(m, device_type): raise RuntimeError("The runtime module of '{}' has already " "been registered with '{}'".format(device_type, getattr(m, device_type))) setattr(m, device_type, module) torch_module_name = '.'.join([__name__, device_type]) sys.modules[torch_module_name] = module # expose return_types from . import return_types from . import library if not TYPE_CHECKING: from . import _meta_registrations # Enable CUDA Sanitizer if 'TORCH_CUDA_SANITIZER' in os.environ: import torch.cuda._sanitizer as csan csan.enable_cuda_sanitizer() # Populate magic methods on SymInt and SymFloat import torch.fx.experimental.symbolic_shapes from torch import func as func from torch.func import vmap # The function _sparse_coo_tensor_unsafe is removed from PyTorch # Python API (v. 1.13), here we temporarily provide its replacement # with a deprecation warning. # TODO: remove the function for PyTorch v 1.15. def _sparse_coo_tensor_unsafe(*args, **kwargs): import warnings warnings.warn('torch._sparse_coo_tensor_unsafe is deprecated, ' 'use torch.sparse_coo_tensor(..., check_invariants=False) instead.') kwargs['check_invariants'] = False return torch.sparse_coo_tensor(*args, **kwargs)

Docs

Access comprehensive developer documentation for PyTorch

View Docs

Tutorials

Get in-depth tutorials for beginners and advanced developers

View Tutorials

Resources

Find development resources and get your questions answered

View Resources