Source code for torch.utils.dlpack
from typing import Any
import torch
import enum
from torch._C import _from_dlpack
from torch._C import _to_dlpack as to_dlpack
class DLDeviceType(enum.IntEnum):
# Enums as in DLPack specification (aten/src/ATen/dlpack.h)
kDLCPU = 1,
kDLGPU = 2,
kDLCPUPinned = 3,
kDLOpenCL = 4,
kDLVulkan = 7,
kDLMetal = 8,
kDLVPI = 9,
kDLROCM = 10,
kDLExtDev = 12,
torch._C._add_docstr(to_dlpack, r"""to_dlpack(tensor) -> PyCapsule
Returns an opaque object (a "DLPack capsule") representing the tensor.
.. note::
``to_dlpack`` is a legacy DLPack interface. The capsule it returns
cannot be used for anything in Python other than use it as input to
``from_dlpack``. The more idiomatic use of DLPack is to call
``from_dlpack`` directly on the tensor object - this works when that
object has a ``__dlpack__`` method, which PyTorch and most other
libraries indeed have now.
.. warning::
Only call ``from_dlpack`` once per capsule produced with ``to_dlpack``.
Behavior when a capsule is consumed multiple times is undefined.
Args:
tensor: a tensor to be exported
The DLPack capsule shares the tensor's memory.
""")
# TODO: add a typing.Protocol to be able to tell Mypy that only objects with
# __dlpack__ and __dlpack_device__ methods are accepted.
[docs]def from_dlpack(ext_tensor: Any) -> torch.Tensor:
"""from_dlpack(ext_tensor) -> Tensor
Converts a tensor from an external library into a ``torch.Tensor``.
The returned PyTorch tensor will share the memory with the input tensor
(which may have come from another library). Note that in-place operations
will therefore also affect the data of the input tensor. This may lead to
unexpected issues (e.g., other libraries may have read-only flags or
immutable data structures), so the user should only do this if they know
for sure that this is fine.
Args:
ext_tensor (object with ``__dlpack__`` attribute, or a DLPack capsule):
The tensor or DLPack capsule to convert.
If ``ext_tensor`` is a tensor (or ndarray) object, it must support
the ``__dlpack__`` protocol (i.e., have a ``ext_tensor.__dlpack__``
method). Otherwise ``ext_tensor`` may be a DLPack capsule, which is
an opaque ``PyCapsule`` instance, typically produced by a
``to_dlpack`` function or method.
Examples::
>>> import torch.utils.dlpack
>>> t = torch.arange(4)
# Convert a tensor directly (supported in PyTorch >= 1.10)
>>> t2 = torch.from_dlpack(t)
>>> t2[:2] = -1 # show that memory is shared
>>> t2
tensor([-1, -1, 2, 3])
>>> t
tensor([-1, -1, 2, 3])
# The old-style DLPack usage, with an intermediate capsule object
>>> capsule = torch.utils.dlpack.to_dlpack(t)
>>> capsule
<capsule object "dltensor" at ...>
>>> t3 = torch.from_dlpack(capsule)
>>> t3
tensor([-1, -1, 2, 3])
>>> t3[0] = -9 # now we're sharing memory between 3 tensors
>>> t3
tensor([-9, -1, 2, 3])
>>> t2
tensor([-9, -1, 2, 3])
>>> t
tensor([-9, -1, 2, 3])
"""
if hasattr(ext_tensor, '__dlpack__'):
device = ext_tensor.__dlpack_device__()
# device is either CUDA or ROCm, we need to pass the current
# stream
if device[0] in (DLDeviceType.kDLGPU, DLDeviceType.kDLROCM):
stream = torch.cuda.current_stream('cuda:{}'.format(device[1]))
# cuda_stream is the pointer to the stream and it is a public
# attribute, but it is not documented
# The array API specify that the default legacy stream must be passed
# with a value of 1 for CUDA
# https://data-apis.org/array-api/latest/API_specification/array_object.html?dlpack-self-stream-none#dlpack-self-stream-none # NOQA
is_cuda = device[0] == DLDeviceType.kDLGPU
# Since pytorch is not using PTDS by default, lets directly pass
# the legacy stream
stream_ptr = 1 if is_cuda and stream.cuda_stream == 0 else stream.cuda_stream
dlpack = ext_tensor.__dlpack__(stream=stream_ptr)
else:
dlpack = ext_tensor.__dlpack__()
else:
# Old versions just call the converter
dlpack = ext_tensor
return _from_dlpack(dlpack)