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

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Python

"""Checking and logging utilities."""
# pylint: disable=invalid-name
from __future__ import absolute_import, division
from collections.abc import Mapping
from .. import backend as F
from .._ffi.function import _init_api
from ..base import DGLError
def prepare_tensor(g, data, name):
"""Convert the data to ID tensor and check its ID type and context.
If the data is already in tensor type, raise error if its ID type
and context does not match the graph's.
Otherwise, convert it to tensor type of the graph's ID type and
ctx and return.
Parameters
----------
g : DGLGraph
Graph.
data : int, iterable of int, tensor
Data.
name : str
Name of the data.
Returns
-------
Tensor
Data in tensor object.
"""
if F.is_tensor(data):
if F.dtype(data) != g.idtype:
raise DGLError(
f'Expect argument "{name}" to have data type {g.idtype}. '
f"But got {F.dtype(data)}."
)
if F.context(data) != g.device and not g.is_pinned():
raise DGLError(
f'Expect argument "{name}" to have device {g.device}. '
f"But got {F.context(data)}."
)
ret = data
else:
data = F.tensor(data)
if not (
F.ndim(data) > 0 and F.shape(data)[0] == 0
) and F.dtype( # empty tensor
data
) not in (
F.int32,
F.int64,
):
raise DGLError(
'Expect argument "{}" to have data type int32 or int64,'
" but got {}.".format(name, F.dtype(data))
)
ret = F.copy_to(F.astype(data, g.idtype), g.device)
if F.ndim(ret) == 0:
ret = F.unsqueeze(ret, 0)
if F.ndim(ret) > 1:
raise DGLError(
'Expect a 1-D tensor for argument "{}". But got {}.'.format(
name, ret
)
)
return ret
def prepare_tensor_dict(g, data, name):
"""Convert a dictionary of data to a dictionary of ID tensors.
Calls ``prepare_tensor`` on each key-value pair.
Parameters
----------
g : DGLGraph
Graph.
data : dict[str, (int, iterable of int, tensor)]
Data dict.
name : str
Name of the data.
Returns
-------
dict[str, tensor]
"""
return {
key: prepare_tensor(g, val, '{}["{}"]'.format(name, key))
for key, val in data.items()
}
def prepare_tensor_or_dict(g, data, name):
"""Convert data to either a tensor or a dictionary depending on input type.
Parameters
----------
g : DGLGraph
Graph.
data : dict[str, (int, iterable of int, tensor)]
Data dict.
name : str
Name of the data.
Returns
-------
tensor or dict[str, tensor]
"""
return (
prepare_tensor_dict(g, data, name)
if isinstance(data, Mapping)
else prepare_tensor(g, data, name)
)
def parse_edges_arg_to_eid(g, edges, etid, argname="edges"):
"""Parse the :attr:`edges` argument and return an edge ID tensor.
The resulting edge ID tensor has the same ID type and device of :attr:`g`.
Parameters
----------
g : DGLGraph
Graph
edges : pair of Tensor, Tensor, iterable[int]
Argument for specifying edges.
etid : int
Edge type ID.
argname : str, optional
Argument name.
Returns
-------
Tensor
Edge ID tensor
"""
if isinstance(edges, tuple):
u, v = edges
u = prepare_tensor(g, u, "{}[0]".format(argname))
v = prepare_tensor(g, v, "{}[1]".format(argname))
eid = g.edge_ids(u, v, etype=g.canonical_etypes[etid])
else:
eid = prepare_tensor(g, edges, argname)
return eid
def check_all_same_idtype(glist, name):
"""Check all the graphs have the same idtype."""
if len(glist) == 0:
return
idtype = glist[0].idtype
for i, g in enumerate(glist):
if g.idtype != idtype:
raise DGLError(
"Expect {}[{}] to have {} type ID, but got {}.".format(
name, i, idtype, g.idtype
)
)
def check_device(data, device):
"""Check if data is on the target device.
Parameters
----------
data : Tensor or dict[str, Tensor]
device: Backend device.
Returns
-------
Bool: True if the data is on the target device.
"""
if isinstance(data, dict):
for v in data.values():
if v.device != device:
return False
elif data.device != device:
return False
return True
def check_all_same_device(glist, name):
"""Check all the graphs have the same device."""
if len(glist) == 0:
return
device = glist[0].device
for i, g in enumerate(glist):
if g.device != device:
raise DGLError(
"Expect {}[{}] to be on device {}, but got {}.".format(
name, i, device, g.device
)
)
def check_all_same_schema(schemas, name):
"""Check the list of schemas are the same."""
if len(schemas) == 0:
return
for i, schema in enumerate(schemas):
if schema != schemas[0]:
raise DGLError(
"Expect all graphs to have the same schema on {}, "
"but graph {} got\n\t{}\nwhich is different from\n\t{}.".format(
name, i, schema, schemas[0]
)
)
def check_all_same_schema_for_keys(schemas, keys, name):
"""Check the list of schemas are the same on the given keys."""
if len(schemas) == 0:
return
head = None
keys = set(keys)
for i, schema in enumerate(schemas):
if not keys.issubset(schema.keys()):
raise DGLError(
"Expect all graphs to have keys {} on {}, "
"but graph {} got keys {}.".format(keys, name, i, schema.keys())
)
if head is None:
head = {k: schema[k] for k in keys}
else:
target = {k: schema[k] for k in keys}
if target != head:
raise DGLError(
"Expect all graphs to have the same schema for keys {} on {}, "
"but graph {} got \n\t{}\n which is different from\n\t{}.".format(
keys, name, i, target, head
)
)
def check_valid_idtype(idtype):
"""Check whether the value of the idtype argument is valid (int32/int64)
Parameters
----------
idtype : data type
The framework object of a data type.
"""
if idtype not in [None, F.int32, F.int64]:
raise DGLError(
"Expect idtype to be a framework object of int32/int64, "
"got {}".format(idtype)
)
def is_sorted_srcdst(src, dst, num_src=None, num_dst=None):
"""Checks whether an edge list is in ascending src-major order (e.g., first
sorted by ``src`` and then by ``dst``).
Parameters
----------
src : IdArray
The tensor of source nodes for each edge.
dst : IdArray
The tensor of destination nodes for each edge.
num_src : int, optional
The number of source nodes.
num_dst : int, optional
The number of destination nodes.
Returns
-------
bool, bool
Whether ``src`` is in ascending order, and whether ``dst`` is
in ascending order with respect to ``src``.
"""
# for some versions of MXNET and TensorFlow, num_src and num_dst get
# incorrectly marked as floats, so force them as integers here
if num_src is None:
num_src = int(F.as_scalar(F.max(src, dim=0) + 1))
if num_dst is None:
num_dst = int(F.as_scalar(F.max(dst, dim=0) + 1))
src = F.zerocopy_to_dgl_ndarray(src)
dst = F.zerocopy_to_dgl_ndarray(dst)
sorted_status = _CAPI_DGLCOOIsSorted(src, dst, num_src, num_dst)
row_sorted = sorted_status > 0
col_sorted = sorted_status > 1
return row_sorted, col_sorted
_init_api("dgl.utils.checks")