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242 lines
8.1 KiB
242 lines
8.1 KiB
import ctypes
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import torch
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from torch._streambase import _EventBase, _StreamBase
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from .._utils import _dummy_type
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if not hasattr(torch._C, "_CudaStreamBase"):
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# Define dummy base classes
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torch._C.__dict__["_CudaStreamBase"] = _dummy_type("_CudaStreamBase")
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torch._C.__dict__["_CudaEventBase"] = _dummy_type("_CudaEventBase")
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class Stream(torch._C._CudaStreamBase, _StreamBase):
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r"""Wrapper around a CUDA stream.
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A CUDA stream is a linear sequence of execution that belongs to a specific
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device, independent from other streams. See :ref:`cuda-semantics` for
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details.
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Args:
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device(torch.device or int, optional): a device on which to allocate
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the stream. If :attr:`device` is ``None`` (default) or a negative
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integer, this will use the current device.
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priority(int, optional): priority of the stream, should be 0 or
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negative, where negative numbers indicate higher priority. By default,
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streams have priority 0.
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"""
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def __new__(cls, device=None, priority=0, **kwargs):
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# setting device manager is expensive, so we avoid it unless necessary
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if device is None or ("stream_id" in kwargs and "device_index" in kwargs):
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return super().__new__(cls, priority=priority, **kwargs)
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else:
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with torch.cuda.device(device):
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return super().__new__(cls, priority=priority, **kwargs)
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def wait_event(self, event):
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r"""Make all future work submitted to the stream wait for an event.
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Args:
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event (torch.cuda.Event): an event to wait for.
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.. note:: This is a wrapper around ``cudaStreamWaitEvent()``: see
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`CUDA Stream documentation`_ for more info.
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This function returns without waiting for :attr:`event`: only future
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operations are affected.
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.. _CUDA Stream documentation:
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https://docs.nvidia.com/cuda/cuda-runtime-api/group__CUDART__STREAM.html
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"""
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event.wait(self)
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def wait_stream(self, stream):
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r"""Synchronize with another stream.
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All future work submitted to this stream will wait until all kernels
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submitted to a given stream at the time of call complete.
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Args:
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stream (Stream): a stream to synchronize.
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.. note:: This function returns without waiting for currently enqueued
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kernels in :attr:`stream`: only future operations are affected.
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"""
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self.wait_event(stream.record_event())
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def record_event(self, event=None):
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r"""Record an event.
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Args:
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event (torch.cuda.Event, optional): event to record. If not given, a new one
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will be allocated.
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Returns:
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Recorded event.
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"""
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if event is None:
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event = Event()
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event.record(self)
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return event
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def query(self):
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r"""Check if all the work submitted has been completed.
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Returns:
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A boolean indicating if all kernels in this stream are completed.
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"""
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return super().query()
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def synchronize(self):
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r"""Wait for all the kernels in this stream to complete.
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.. note:: This is a wrapper around ``cudaStreamSynchronize()``: see
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`CUDA Stream documentation`_ for more info.
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"""
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super().synchronize()
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@property
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def _as_parameter_(self):
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return ctypes.c_void_p(self.cuda_stream)
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def __eq__(self, o):
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if isinstance(o, Stream):
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return super().__eq__(o)
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return False
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def __hash__(self):
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return hash((self.cuda_stream, self.device))
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def __repr__(self):
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return f"<torch.cuda.Stream device={self.device} cuda_stream={self.cuda_stream:#x}>"
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class ExternalStream(Stream):
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r"""Wrapper around an externally allocated CUDA stream.
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This class is used to wrap streams allocated in other libraries in order
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to facilitate data exchange and multi-library interactions.
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.. note:: This class doesn't manage the stream life-cycle, it is the user
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responsibility to keep the referenced stream alive while this class is
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being used.
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Args:
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stream_ptr(int): Integer representation of the `cudaStream_t` value.
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allocated externally.
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device(torch.device or int, optional): the device where the stream
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was originally allocated. if device is specified incorrectly,
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subsequent launches using this stream may fail.
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"""
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def __new__(cls, stream_ptr, device=None, **kwargs):
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with torch.cuda.device(device):
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return super().__new__(cls, stream_ptr=stream_ptr, **kwargs)
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class Event(torch._C._CudaEventBase, _EventBase):
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r"""Wrapper around a CUDA event.
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CUDA events are synchronization markers that can be used to monitor the
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device's progress, to accurately measure timing, and to synchronize CUDA
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streams.
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The underlying CUDA events are lazily initialized when the event is first
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recorded or exported to another process. After creation, only streams on the
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same device may record the event. However, streams on any device can wait on
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the event.
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Args:
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enable_timing (bool, optional): indicates if the event should measure time
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(default: ``False``)
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blocking (bool, optional): if ``True``, :meth:`wait` will be blocking (default: ``False``)
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interprocess (bool): if ``True``, the event can be shared between processes
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(default: ``False``)
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.. _CUDA Event Documentation:
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https://docs.nvidia.com/cuda/cuda-runtime-api/group__CUDART__EVENT.html
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"""
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def __new__(cls, enable_timing=False, blocking=False, interprocess=False):
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return super().__new__(
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cls,
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enable_timing=enable_timing,
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blocking=blocking,
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interprocess=interprocess,
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)
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@classmethod
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def from_ipc_handle(cls, device, handle):
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r"""Reconstruct an event from an IPC handle on the given device."""
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return super().from_ipc_handle(device, handle)
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def record(self, stream=None):
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r"""Record the event in a given stream.
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Uses ``torch.cuda.current_stream()`` if no stream is specified. The
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stream's device must match the event's device.
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"""
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if stream is None:
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stream = torch.cuda.current_stream()
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super().record(stream)
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def wait(self, stream=None):
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r"""Make all future work submitted to the given stream wait for this event.
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Use ``torch.cuda.current_stream()`` if no stream is specified.
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.. note:: This is a wrapper around ``cudaStreamWaitEvent()``: see
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`CUDA Event documentation`_ for more info.
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"""
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if stream is None:
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stream = torch.cuda.current_stream()
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super().wait(stream)
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def query(self):
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r"""Check if all work currently captured by event has completed.
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Returns:
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A boolean indicating if all work currently captured by event has
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completed.
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"""
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return super().query()
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def elapsed_time(self, end_event):
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r"""Return the time elapsed.
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Time reported in milliseconds after the event was recorded and
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before the end_event was recorded.
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"""
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return super().elapsed_time(end_event)
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def synchronize(self):
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r"""Wait for the event to complete.
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Waits until the completion of all work currently captured in this event.
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This prevents the CPU thread from proceeding until the event completes.
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.. note:: This is a wrapper around ``cudaEventSynchronize()``: see
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`CUDA Event documentation`_ for more info.
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"""
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super().synchronize()
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def ipc_handle(self):
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r"""Return an IPC handle of this event.
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If not recorded yet, the event will use the current device.
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"""
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return super().ipc_handle()
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@property
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def _as_parameter_(self):
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return ctypes.c_void_p(self.cuda_event)
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def __repr__(self):
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if self.cuda_event:
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return f"<torch.cuda.Event {self._as_parameter_.value:#x}>"
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else:
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return "<torch.cuda.Event uninitialized>"
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