Source code for torch.backends.mps
import torch
from functools import lru_cache as _lru_cache
__all__ = ["is_built", "is_available", "is_macos13_or_newer"]
[docs]def is_built() -> bool:
r"""Returns whether PyTorch is built with MPS support. Note that this
doesn't necessarily mean MPS is available; just that if this PyTorch
binary were run a machine with working MPS drivers and devices, we
would be able to use it."""
return torch._C.has_mps
[docs]@_lru_cache()
def is_available() -> bool:
r"""Returns a bool indicating if MPS is currently available."""
return torch._C._mps_is_available()
@_lru_cache()
def is_macos13_or_newer(minor: int = 0) -> bool:
r"""Returns a bool indicating whether MPS is running on MacOS 13 or newer."""
return torch._C._mps_is_on_macos_13_or_newer(minor)
# Register prims as implementation of var_mean and group_norm
if is_built():
from ...library import Library as _Library
from ..._refs import var_mean as _var_mean, native_group_norm as _native_group_norm
from ..._decomp.decompositions import native_group_norm_backward as _native_group_norm_backward
_lib = _Library("aten", "IMPL")
_lib.impl("var_mean.correction", _var_mean, "MPS")
_lib.impl("native_group_norm", _native_group_norm, "MPS")
_lib.impl("native_group_norm_backward", _native_group_norm_backward, "MPS")