Source code for torch.mtia
# mypy: allow-untyped-defs
r"""
This package enables an interface for accessing MTIA backend in python
"""
import threading
from typing import Any, Callable, Dict, List, Optional, Tuple, Union
import torch
from torch.types import Device
from .. import device as _device, Tensor
from .._utils import _dummy_type, _LazySeedTracker, classproperty
from ._utils import _get_device_index
_device_t = Union[_device, str, int, None]
# torch.mtia.Event/Stream is alias of torch.Event/Stream
Event = torch.Event
Stream = torch.Stream
_initialized = False
_queued_calls: List[
Tuple[Callable[[], None], List[str]]
] = [] # don't invoke these until initialization occurs
_tls = threading.local()
_initialization_lock = threading.Lock()
_lazy_seed_tracker = _LazySeedTracker()
[docs]def is_initialized():
r"""Return whether PyTorch's MTIA state has been initialized."""
return _initialized and not _is_in_bad_fork()
def _is_in_bad_fork() -> bool:
return torch._C._mtia_isInBadFork()
def _lazy_init() -> None:
global _initialized, _queued_calls
if is_initialized() or hasattr(_tls, "is_initializing"):
return
with _initialization_lock:
# We be double-checked locking, boys! This is OK because
# the above test was GIL protected anyway. The inner test
# is for when a thread blocked on some other thread which was
# doing the initialization; when they get the lock, they will
# find there is nothing left to do.
if is_initialized():
return
# It is important to prevent other threads from entering _lazy_init
# immediately, while we are still guaranteed to have the GIL, because some
# of the C calls we make below will release the GIL
if _is_in_bad_fork():
raise RuntimeError(
"Cannot re-initialize MTIA in forked subprocess. To use MTIA with "
"multiprocessing, you must use the 'spawn' start method"
)
if not _is_compiled():
raise AssertionError("Torch not compiled with MTIA enabled")
torch._C._mtia_init()
# Some of the queued calls may reentrantly call _lazy_init();
# we need to just return without initializing in that case.
# However, we must not let any *other* threads in!
_tls.is_initializing = True
for calls in _lazy_seed_tracker.get_calls():
if calls:
_queued_calls.append(calls)
try:
for queued_call, orig_traceback in _queued_calls:
try:
queued_call()
except Exception as e:
msg = (
f"MTIA call failed lazily at initialization with error: {str(e)}\n\n"
f"MTIA call was originally invoked at:\n\n{''.join(orig_traceback)}"
)
raise DeferredMtiaCallError(msg) from e
finally:
delattr(_tls, "is_initializing")
_initialized = True
def _is_compiled() -> bool:
r"""Return true if compiled with MTIA support."""
return torch._C._mtia_isBuilt()
[docs]def is_available() -> bool:
r"""Return true if MTIA device is available"""
if not _is_compiled():
return False
# MTIA has to init devices first to know if there is any devices available.
return device_count() > 0
[docs]def synchronize() -> None:
r"""Waits for all jobs in all streams on a MTIA device to complete."""
return torch._C._mtia_deviceSynchronize()
[docs]def device_count() -> int:
r"""Return the number of MTIA devices available."""
return torch._C._accelerator_hooks_device_count()
[docs]def current_device() -> int:
r"""Return the index of a currently selected device."""
return torch._C._accelerator_hooks_get_current_device()
[docs]def current_stream(device: Optional[_device_t] = None) -> Stream:
r"""Return the currently selected :class:`Stream` for a given device.
Args:
device (torch.device or int, optional): selected device. Returns
the currently selected :class:`Stream` for the current device, given
by :func:`~torch.mtia.current_device`, if :attr:`device` is ``None``
(default).
"""
return torch._C._mtia_getCurrentStream(_get_device_index(device, optional=True))
[docs]def default_stream(device: Optional[_device_t] = None) -> Stream:
r"""Return the default :class:`Stream` for a given device.
Args:
device (torch.device or int, optional): selected device. Returns
the default :class:`Stream` for the current device, given by
:func:`~torch.mtia.current_device`, if :attr:`device` is ``None``
(default).
"""
return torch._C._mtia_getDefaultStream(_get_device_index(device, optional=True))
[docs]def set_stream(stream: Stream):
r"""Set the current stream.This is a wrapper API to set the stream.
Usage of this function is discouraged in favor of the ``stream``
context manager.
Args:
stream (Stream): selected stream. This function is a no-op
if this argument is ``None``.
"""
if stream is None:
return
torch._C._mtia_setCurrentStream(stream)
[docs]class device:
r"""Context-manager that changes the selected device.
Args:
device (torch.device or int): device index to select. It's a no-op if
this argument is a negative integer or ``None``.
"""
def __init__(self, device: Any):
self.idx = _get_device_index(device, optional=True)
self.prev_idx = -1
def __enter__(self):
self.prev_idx = torch._C._accelerator_hooks_maybe_exchange_device(self.idx)
def __exit__(self, type: Any, value: Any, traceback: Any):
self.idx = torch._C._accelerator_hooks_maybe_exchange_device(self.prev_idx)
return False
[docs]class StreamContext:
r"""Context-manager that selects a given stream.
All MTIA kernels queued within its context will be enqueued on a selected
stream.
Args:
Stream (Stream): selected stream. This manager is a no-op if it's
``None``.
.. note:: Streams are per-device.
"""
cur_stream: Optional["torch.mtia.Stream"]
def __init__(self, stream: Optional["torch.mtia.Stream"]):
self.stream = stream
self.idx = _get_device_index(None, True)
if not torch.jit.is_scripting():
if self.idx is None:
self.idx = -1
self.src_prev_stream = (
None if not torch.jit.is_scripting() else torch.mtia.default_stream(None)
)
self.dst_prev_stream = (
None if not torch.jit.is_scripting() else torch.mtia.default_stream(None)
)
def __enter__(self):
# Local cur_stream variable for type refinement
cur_stream = self.stream
# Return if stream is None or MTIA device not available
if cur_stream is None or self.idx == -1:
return
self.src_prev_stream = torch.mtia.current_stream(None)
# If the stream is not on the current device, then
# set the current stream on the device
if self.src_prev_stream.device != cur_stream.device:
with device(cur_stream.device):
self.dst_prev_stream = torch.mtia.current_stream(cur_stream.device)
torch.mtia.set_stream(cur_stream)
def __exit__(self, type: Any, value: Any, traceback: Any):
# Local cur_stream variable for type refinement
cur_stream = self.stream
# If stream is None or no MTIA device available, return
if cur_stream is None or self.idx == -1:
return
# Reset the stream on the original device
# and destination device
if self.src_prev_stream.device != cur_stream.device: # type: ignore[union-attr]
torch.mtia.set_stream(self.dst_prev_stream) # type: ignore[arg-type]
torch.mtia.set_stream(self.src_prev_stream) # type: ignore[arg-type]
[docs]def stream(stream: Optional["torch.mtia.Stream"]) -> StreamContext:
r"""Wrap around the Context-manager StreamContext that selects a given stream.
Arguments:
stream (Stream): selected stream. This manager is a no-op if it's
``None``.
..Note:: In eager mode stream is of type Stream class while in JIT it doesn't support torch.mtia.stream
"""
return StreamContext(stream)
__all__ = [
"init",
"is_available",
"is_initialized",
"synchronize",
"device_count",
"current_device",
"current_stream",
"default_stream",
"set_stream",
"stream",
"device",
]