Files
dmlc--dgl/python/dgl/utils/pin_memory.py
T
2026-07-13 13:35:51 +08:00

78 lines
2.2 KiB
Python

"""Utility functions related to pinned memory tensors."""
from .. import backend as F
from .._ffi.function import _init_api
from ..base import DGLError
def pin_memory_inplace(tensor):
"""Register the tensor into pinned memory in-place (i.e. without copying).
Users are required to save the returned dgl.ndarray object to avoid being unpinned.
Parameters
----------
tensor : Tensor
The tensor to be pinned.
Returns
-------
dgl.ndarray
The dgl.ndarray object that holds the pinning status and shares the same
underlying data with the tensor.
"""
if F.backend_name in ["mxnet", "tensorflow"]:
raise DGLError(
"The {} backend does not support pinning "
"tensors in-place.".format(F.backend_name)
)
# needs to be writable to allow in-place modification
try:
nd_array = F.zerocopy_to_dgl_ndarray_for_write(tensor)
nd_array.pin_memory_()
return nd_array
except Exception as e:
raise DGLError("Failed to pin memory in-place due to: {}".format(e))
def gather_pinned_tensor_rows(tensor, rows):
"""Directly gather rows from a CPU tensor given an indices array on CUDA devices,
and returns the result on the same CUDA device without copying.
Parameters
----------
tensor : Tensor
The tensor. Must be in pinned memory.
rows : Tensor
The rows to gather. Must be a CUDA tensor.
Returns
-------
Tensor
The result with the same device as :attr:`rows`.
"""
return F.from_dgl_nd(
_CAPI_DGLIndexSelectCPUFromGPU(F.to_dgl_nd(tensor), F.to_dgl_nd(rows))
)
def scatter_pinned_tensor_rows(dest, rows, source):
"""Directly scatter rows from a GPU tensor given an indices array on CUDA devices,
to a pinned tensor on the CPU.
Parameters
----------
dest : Tensor
The tensor on the CPU to scatter rows to. Must be in pinned memory.
rows : Tensor
The rows to scatter. Must be a CUDA tensor with unique entries.
source : Tensor
The tensor on the GPU to scatter rows from.
"""
_CAPI_DGLIndexScatterGPUToCPU(
F.to_dgl_nd(dest), F.to_dgl_nd(rows), F.to_dgl_nd(source)
)
_init_api("dgl.ndarray.uvm", __name__)