ai-content-maker/.venv/Lib/site-packages/torch/masked/_ops.py

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import warnings
# A workaround to support both TorchScript and MyPy:
from typing import Any, List, Optional, Tuple, TYPE_CHECKING, Union
import torch
from torch import Tensor
from torch.masked import as_masked_tensor, is_masked_tensor, MaskedTensor
from . import _docs
from torch._prims_common import corresponding_real_dtype
from torch import sym_float
if TYPE_CHECKING:
from torch.types import _dtype as DType
DimOrDims = Optional[Union[int, Tuple[int], List[int]]]
else:
# The JIT doesn't understand Union, nor torch.dtype here
DType = int
DimOrDims = Optional[Tuple[int]]
__all__: List[str] = []
# All masked reduction/normalization operations have the same
# signatures. Here we introduce docstring templates that are applied
# to docstrings of reduction/normalization functions via
# _apply_docstring_templates decorator.
def _apply_docstring_templates(func):
"""Decorator that applies docstring templates to function docstring
and returns the function instance.
"""
doc_string = getattr(_docs, f"{func.__name__}_docstring", None)
if doc_string is None:
warnings.warn(
f"No documentation string available for {func.__name__}."
" PyTorch team should run `python tools/update_masked_docs.py`"
" to generate the missing docstrings."
)
else:
func.__doc__ = doc_string
# Expose function as public symbol
__all__.append(func.__name__)
return func
def _generate_docstring(func):
"""A utility function called from tools/update_masked_docs.py
script to update the module torch.masked._docs.py
"""
docstring_templates = dict(
reduction_signature="""\
{function_name}(input, {operation_args}, *, {operation_kwargs}) -> Tensor""",
reduction_descr="""\
Returns {operation name} of all the elements in the :attr:`input`
tensor along the given dimension(s) :attr:`dim` while the :attr:`input`
elements are masked out according to the boolean tensor
:attr:`mask`.""",
reduction_args="""\
If :attr:`keepdim` is ``True``, the output tensor is of the same size
as :attr:`input` except in the dimension(s) :attr:`dim` where it is of
size 1. Otherwise, :attr:`dim` is squeezed (see
:func:`torch.squeeze`), resulting in the output tensor having 1 (or
``len(dim)``) fewer dimension(s).
The boolean tensor :attr:`mask` defines the "validity" of
:attr:`input` tensor elements: if :attr:`mask` element is True
then the corresponding element in :attr:`input` tensor will be
included in {operation name} computation, otherwise the element is
ignored.
When all elements of :attr:`input` along the given dimension
:attr:`dim` are ignored (fully masked-out), the corresponding element
of the output tensor will have undefined value: it may or may not
correspond to the identity value of {operation name} operation; the
choice may correspond to the value that leads to the most efficient
storage of :attr:`output` tensor.
The mask of the output tensor can be computed as
``torch.any(torch.broadcast_to(mask, input.shape), dim, keepdim=keepdim,
dtype=torch.bool)``.
The shapes of the :attr:`mask` tensor and the :attr:`input` tensor
don't need to match, but they must be :ref:`broadcastable
<broadcasting-semantics>` and the dimensionality of the :attr:`mask`
tensor must not be greater than of the :attr:`input` tensor.
Args:
input (Tensor): the input tensor
{args_declarations}
Keyword args:
{kwargs_declarations}""",
reduction_example="""\
Example::
>>> input = {example_input}
>>> input
{indent_example_input}
>>> mask = {example_mask}
>>> mask
{indent_example_mask}
>>> {full_function_name}(input, {example_args}, mask=mask)
{indent_example_output}
""",
reduction_identity="""\
The identity value of {operation name} operation, which is used to start the reduction, is ``{identity_int32}``.""",
reduction_identity_dtype="""\
The identity value of {operation name} operation, which is used to start the
reduction, depends on input dtype. For instance, for float32, uint8,
and int32 dtypes, the identity values are ``{identity_float32}``, ``{identity_uint8}``, and ``{identity_int32}``, respectively.""",
normalization_signature="""\
{function_name}(input, {operation_args}, *, {operation_kwargs}) -> Tensor""",
normalization_descr="""\
Returns {operation name} of all the slices in the :attr:`input` tensor
along :attr:`dim` while the :attr:`input` elements are masked out
according to the boolean tensor :attr:`mask`.
{definition}""",
normalization_args="""\
The boolean tensor :attr:`mask` defines the "validity" of
:attr:`input` tensor elements: if :attr:`mask` element is True then
the corresponding element in :attr:`input` tensor will be included in
{operation name} computation, otherwise the element is ignored.
The values of masked-out elements of the output tensor have undefined
value: it may or may not be set to zero or nan; the choice may correspond to
the value that leads to the most efficient storage of :attr:`output`
tensor.
The mask of the {operation name} output tensor can be computed as
``torch.broadcast_to(mask, input.shape)``.
The shapes of the :attr:`mask` tensor and the :attr:`input` tensor
don't need to match, but they must be :ref:`broadcastable
<broadcasting-semantics>` and the dimensionality of the :attr:`mask`
tensor must not be greater than of the :attr:`input` tensor.
Args:
input (Tensor): the input tensor
{args_declarations}
Keyword args:
{kwargs_declarations}""",
normalization_example="""\
Example::
>>> input = {example_input}
>>> input
{indent_example_input}
>>> mask = {example_mask}
>>> mask
{indent_example_mask}
>>> {full_function_name}(input, {example_args}, mask=mask)
{indent_example_output}
""",
)
args_and_kwargs = dict(
# argument name sufficies separated by double underscore will
# be removed in the final documentation string.
sum=(("dim",), ("keepdim=False", "dtype=None", "mask=None")),
prod=(("dim",), ("keepdim=False", "dtype=None", "mask=None")),
cumsum=(("dim__as_int",), ("dtype=None", "mask=None")),
cumprod=(("dim__as_int",), ("dtype=None", "mask=None")),
amin=(("dim",), ("keepdim=False", "dtype=None", "mask=None")),
amax=(("dim",), ("keepdim=False", "dtype=None", "mask=None")),
argmin=(("dim__as_int",), ("keepdim=False", "dtype=None", "mask=None")),
argmax=(("dim__as_int",), ("keepdim=False", "dtype=None", "mask=None")),
mean=(("dim",), ("keepdim=False", "dtype=None", "mask=None")),
median=(("dim__as_int",), ("keepdim=False", "dtype=None", "mask=None")),
norm=(
(
"ord",
"dim",
),
("keepdim=False", "dtype=None", "mask=None"),
),
var=(("dim", "unbiased"), ("keepdim=False", "dtype=None", "mask=None")),
std=(("dim", "unbiased"), ("keepdim=False", "dtype=None", "mask=None")),
logsumexp=(("dim",), ("keepdim=False", "dtype=None", "mask=None")),
softmax=(("dim__as_int",), ("dtype=None", "mask=None")),
log_softmax=(("dim__as_int",), ("dtype=None", "mask=None")),
softmin=(("dim__as_int",), ("dtype=None", "mask=None")),
normalize=(
(
"ord__required",
"dim__as_int",
),
("eps=1e-12", "dtype=None", "mask=None"),
),
)
argument_declarations = dict(
dim="""\
dim (int or tuple of ints, optional): the dimension or dimensions to reduce.
Default: None that is equivalent to ``tuple(range(input.ndim))``.""",
dim__as_int="""\
dim (int): the dimension along which {operation name} is computed.""",
ord="""\
ord (int, float, optional): the order of vector norm. Default: 2.
See :func:`torch.linalg.vector_norm` for a list of supported norms.""",
ord__required="""\
ord (int, float): the order of vector norm. Default: 2.
See :func:`torch.linalg.vector_norm` for a list of supported norms.""",
unbiased="""\
unbiased (bool): when True, use Bessels correction, otherwise, compute
the uncorrected sample variance.""",
eps="""\
eps (float, optional): small value to avoid division by zero. Default: {default}.""",
keepdim="""\
keepdim (bool, optional): whether the output tensor has
:attr:`dim` retained or not. Default: {default}.""",
dtype="""\
dtype (:class:`torch.dtype`, optional): the desired data type
of returned tensor. If specified, the input tensor is
casted to :attr:`dtype` before the operation is
performed. Default: {default}.""",
mask="""\
mask (:class:`torch.Tensor`, optional): the boolean tensor
containing the binary mask of validity of input tensor
elements.
Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``.""",
)
definitions = dict(
softmax="""\
Let ``x`` be a sequence of unmasked elements of one-dimensional slice
of the :attr:`input` tensor. Softmax of i-th element in ``x`` is
defined as ``exp(x[i])/sum(exp(x))``.""",
log_softmax="""\
Let ``x`` be a sequence of unmasked elements of one-dimensional slice
of the :attr:`input` tensor. LogSoftmax of i-th element in ``x`` is
defined as ``log(exp(x[i])/sum(exp(x)))``.""",
softmin="""\
Let ``x`` be a sequence of unmasked elements of one-dimensional slice
of the :attr:`input` tensor. Softmin of i-th element in ``x`` is
defined as ``exp(-x[i])/sum(exp(-x))``.""",
normalize="""\
Let ``x`` be a sequence of unmasked elements of one-dimensional slice
of the :attr:`input` tensor. Normalize of i-th element in ``x`` is
defined as ``x[i]/max(norm(x, p), eps)``.""",
cumsum="""\
Let ``x`` be a sequence of unmasked elements of one-dimensional slice
of the :attr:`input` tensor. Cumsum of i-th element in ``x`` is
defined as ``sum(x[:i])``.""",
cumprod="""\
Let ``x`` be a sequence of unmasked elements of one-dimensional slice
of the :attr:`input` tensor. Cumsum of i-th element in ``x`` is
defined as ``prod(x[:i])``.""",
)
reduction_names = dict(
sum="sum",
prod="product",
amax="maximum",
amin="minimum",
argmax="argmax",
argmin="argmin",
mean="mean",
median="median",
norm="norm",
var="variance",
std="standard_deviation",
logsumexp="logsumexp",
)
normalization_names = dict(
softmax="softmax",
log_softmax="log_softmax",
softmin="softmin",
normalize="normalize",
cumsum="cumulative_sum",
cumprod="cumulative_prod",
)
operation_names = {}
operation_names.update(reduction_names)
operation_names.update(normalization_names)
# Default example data:
example_dim = 1
example_input = torch.tensor([[-3, -2, -1], [0, 1, 2]])
example_mask = torch.tensor([[True, False, True], [False, False, False]])
example_args: Tuple[Any, ...]
if func.__name__ in {"norm", "normalize"}:
example_args = (2.0, example_dim)
example_input = example_input.to(dtype=torch.float32)
elif func.__name__ in {"var", "std"}:
example_args = (example_dim, False)
elif func.__name__ == "median":
example_args = (example_dim,)
example_input = example_input.to(dtype=torch.float32)
else:
example_args = (example_dim,)
operation_args: Tuple[str, ...]
operation_kwargs: Tuple[str, ...]
operation_args, operation_kwargs = args_and_kwargs[func.__name__]
arg_declarations = [
"\n ".join(
argument_declarations.get(a, f'{a.split("__", 1)[0]}: TBD.').splitlines()
)
for a in operation_args
]
kwarg_declarations = [
"\n ".join(
argument_declarations.get(
a.split("=", 1)[0], f'{a.split("__", 1)[0]}: TBD.'
)
.format(default=a.split("=", 1)[1])
.splitlines()
)
for a in operation_kwargs
]
if func.__name__ in reduction_names:
op_kind = "reduction"
doc_sections = ["signature", "descr", "identity", "args", "example"]
elif func.__name__ in normalization_names:
op_kind = "normalization"
doc_sections = ["signature", "descr", "args", "example"]
example_input = example_input.to(dtype=torch.float32)
else:
assert 0 # add function name to operation names dictionaries
example_output = func(example_input, *example_args, mask=example_mask)
template_data = {
"function_name": func.__name__,
"full_function_name": func.__module__ + "." + func.__name__,
"operation name": operation_names[func.__name__],
"operation_args": ", ".join(a.split("__", 1)[0] for a in operation_args),
"operation_kwargs": ", ".join(a.split("__", 1)[0] for a in operation_kwargs),
# one-line representation of a tensor:
"example_input": " ".join(str(example_input).split()),
"example_args": ", ".join(map(str, example_args)),
"example_mask": " ".join(str(example_mask).split()),
# multi-line representation of a tensor with indent
"indent_example_input": ("\n ").join(str(example_input).splitlines()),
"indent_example_mask": ("\n ").join(str(example_mask).splitlines()),
"indent_example_output": ("\n ").join(str(example_output).splitlines()),
}
if func.__name__ in reduction_names:
template_data.update(
identity_uint8=_reduction_identity(
func.__name__, torch.tensor(0, dtype=torch.uint8)
),
identity_int32=_reduction_identity(
func.__name__, torch.tensor(0, dtype=torch.int32)
),
identity_float32=_reduction_identity(
func.__name__, torch.tensor(0, dtype=torch.float32)
),
)
if func.__name__ == "norm":
template_data.update(
identity_ord_ninf=_reduction_identity(
func.__name__, torch.tensor(0, dtype=torch.float32), float("-inf")
)
)
elif func.__name__ in normalization_names:
template_data.update(definition=definitions[func.__name__])
else:
assert 0 # add function name to operation names dictionaries
template_data.update(
args_declarations=("\n ".join(arg_declarations)).format_map(template_data)
)
template_data.update(
kwargs_declarations=("\n ".join(kwarg_declarations)).format_map(
template_data
)
)
# Apply function name info to docstring templates:
templates = {
k: v.format_map(template_data)
for k, v in docstring_templates.items()
if k.startswith(op_kind)
}
templates.update(
(k, v.format_map(template_data) if isinstance(v, str) else v)
for k, v in template_data.items()
)
# Apply docstring templates to function doctring:
if func.__doc__ is None:
doc_template = "\n\n".join([f"{{{op_kind}_{sec}}}" for sec in doc_sections])
else:
doc_template = func.__doc__
return doc_template.format_map(templates)
def _reduction_identity(op_name: str, input: Tensor, *args):
"""Return identity value as scalar tensor of a reduction operation on
given input, or None, if the identity value cannot be uniquely
defined for the given input.
The identity value of the operation is defined as the initial
value to reduction operation that has a property ``op(op_identity,
value) == value`` for any value in the domain of the operation.
Or put it another way, including or excluding the identity value in
a list of operands will not change the reduction result.
See https://github.com/pytorch/rfcs/pull/27 for more information.
"""
dtype: DType = input.dtype
device = input.device
op_name = op_name.rsplit(".", 1)[-1] # lstrip module name when present
if op_name in {"sum", "cumsum"}:
return torch.tensor(0, dtype=dtype, device=device)
elif op_name in {"prod", "cumprod"}:
return torch.tensor(1, dtype=dtype, device=device)
elif op_name in {"amax", "argmax", "logsumexp"}:
if torch.is_floating_point(input):
return torch.tensor(-torch.inf, dtype=dtype, device=device)
elif torch.is_signed(input) or dtype == torch.uint8:
return torch.tensor(torch.iinfo(dtype).min, dtype=dtype, device=device)
elif op_name in {"amin", "argmin"}:
if torch.is_floating_point(input):
return torch.tensor(torch.inf, dtype=dtype, device=device)
elif torch.is_signed(input) or dtype == torch.uint8:
return torch.tensor(torch.iinfo(dtype).max, dtype=dtype, device=device)
elif op_name == "mean":
# Strictly speaking, the identity value of the mean operation
# is the mean of the input. Since the mean value depends on
# the dim argument and it may be a non-scalar tensor, we
# consider the identity value of the mean operation ambiguous.
# Moreover, the mean value of empty input is undefined.
return None
elif op_name == "norm":
ord = args[0] if args else 2
if ord == float("-inf"):
assert torch.is_floating_point(input), input.dtype
return torch.tensor(torch.inf, dtype=dtype, device=device)
return torch.tensor(0, dtype=dtype, device=device)
elif op_name == "median":
# We use NaN for now because the implementation is currently using torch.nanmedian
# and NaN is the identity for that function since it gets ignored
dtype = input.dtype if torch.is_floating_point(input) else torch.float
return torch.tensor(torch.nan, dtype=dtype, device=device)
elif op_name in {"var", "std"}:
return None
raise NotImplementedError(f"identity of {op_name} on {dtype} input")
def _canonical_dim(dim: DimOrDims, ndim: int) -> Tuple[int, ...]:
"""Return dim argument as a tuple of sorted dim values."""
dims: List[int] = []
if dim == ():
# Currently, `dim=()` in reductions operations means "reduce
# over all dimensions" while in future, it will read "no
# reduce". See https://github.com/pytorch/pytorch/issues/29137
# When gh-29137 is resolved, this if-block must be deleted.
dim = None
if dim is None:
return tuple(range(ndim))
ndim = max(ndim, 1)
dim_ = (dim,) if isinstance(dim, (int, torch.SymInt)) else dim
for d in dim_:
if d in dims:
raise RuntimeError(f"dim={d} appears multiple times in the list of dims")
if d >= ndim or d < -ndim:
raise IndexError(
f"Dimension out of range (expected to be in range of [{-ndim}, {ndim-1}], but got {d})"
)
dims.append(d % ndim)
return tuple(sorted(dims))
def _sparse_coo_flatten_indices(indices: Tensor, shape: tuple):
# Flatted N-D indices to 1-D indices
flat_indices = indices.new_zeros(indices.size(1))
for d, sz in enumerate(shape):
flat_indices.mul_(sz)
flat_indices.add_(indices[d])
return flat_indices
def _any(input: Tensor, dim: tuple, keepdim: bool):
# Support torch.any with tuple dim argument.
# Workaround of https://github.com/pytorch/pytorch/issues/56586
r = input
for d in reversed(dim):
r = r.any(dim=d, keepdim=keepdim)
return r
def _sparse_coo_where(mask: Tensor, input: Tensor, fill_value: Tensor) -> Tensor:
"""Sparse variant of torch.where. Supports sparse COO and hybrid sparse COO tensors.
_sparse_coo_where implements the following invariant:
_sparse_coo_where(mask, input, fill_value).to_dense(fill_value) ==
torch.where(mask.to_dense(), input.to_dense(), torch.full(input.shape, fill_value))
where `a == b` means `assertEqual(a, b)`, mask is boolean sparse
tensor, and `to_dense(fill_value)` is like `to_dense()` except
that the unspecified elements are mapped to `fill_value` rather
than to `0`.
Returns a sparse COO tensor with the following features:
- all specified elements correspond to masked-in elements that
have the values of the input tensor. If there exists a masked-in
element (as specified by mask) that is not specified in the
input, in the result tensor, the corresponding element has value
0. In the dense part of the sparse tensor, the masked-out
elements are replaced with fill_value.
- all unspecified elements correspond to masked-out elements.
"""
assert input.layout == torch.sparse_coo
assert mask.layout == input.layout
assert mask.shape == input.shape
assert mask.dense_dim() == input.dense_dim() # TODO: eliminate this restriction
input = input.coalesce()
# For set operations on sparse tensor indices, we'll convert
# multi-dimensional indices to 1-D indices for efficiency.
input_flat_indices = _sparse_coo_flatten_indices(
input.indices(), input.shape[: input.sparse_dim()]
)
mask_flat_indices = _sparse_coo_flatten_indices(
mask.indices(), mask.shape[: mask.sparse_dim()]
)
# the set of mask flat indices that define masked-in elements:
if mask.dense_dim() > 0:
mask_values = _any(
mask.values(), tuple(range(1, input.sparse_dim() + 1)), False
)
else:
mask_values = mask.values()
maskin_flat_indices = mask_flat_indices[mask_values.nonzero()[:, 0]]
def intersection(i1, i2):
union, counts = torch.cat([i1, i2]).unique(return_counts=True)
return union, torch.where(counts.gt(1))
def minus(i1, i2):
union, counts = torch.cat([i1, i2]).unique(return_counts=True)
return intersection(union[torch.where(counts.eq(1))], i1)
def _apply(a):
obj, w = a
return obj[w]
# the set of input flat indices of specified and masked-in elements:
maskin_input_flat_indices = _apply(
intersection(maskin_flat_indices, input_flat_indices)
)
_, w = intersection(input_flat_indices, maskin_input_flat_indices)
# the indices and values of masked-in elements
where_input_indices = input.indices()[(slice(None),) + w]
where_input_values = input.values()[w]
if mask.dense_dim() > 0:
# apply mask to the dense part of the input values:
_, w1 = intersection(mask_flat_indices, maskin_input_flat_indices)
where_mask_values = mask.values()[w1]
where_input_values = torch.where(
where_mask_values, where_input_values, fill_value
)
# the set of flat indices of unspecified input and masked-in elements:
maskin_zero_flat_indices = _apply(
minus(maskin_flat_indices, maskin_input_flat_indices)
)
# the indices of masked-in zero elements
_, w = intersection(mask_flat_indices, maskin_zero_flat_indices)
where_zero_indices = mask.indices()[(slice(None),) + w]
# construct result
n = where_zero_indices.size(1)
if n == 0:
# the input is coalesced, hence input_flat_indices are ordered
# and the result is guaranteed to be coalesced:
result = torch.sparse_coo_tensor(
where_input_indices, where_input_values, input.shape
)
return result._coalesced_(True)
where_indices = torch.cat([where_input_indices, where_zero_indices], dim=1)
where_values = torch.cat(
[
where_input_values,
where_input_values.new_zeros((n,) + where_input_values.shape[1:]),
]
)
result = torch.sparse_coo_tensor(where_indices, where_values, input.shape)
# appending zero elements leads to uncoalesced sparse tensor
return result.coalesce()
def _sparse_coo_scatter_reduction_helper(
op,
mask_input: Tensor,
dims: Tuple[int, ...],
keepdim: bool,
dtype: Optional[DType] = None,
) -> Tensor:
reduce = op.__name__
valid_reductions = ["sum", "prod", "amax", "amin"]
if reduce not in valid_reductions:
raise ValueError(
f"op must be one of {' '.join(valid_reductions)}, but got {reduce} instead"
)
output_dtype = dtype
values, indices = mask_input._values(), mask_input._indices()
input_dims = mask_input.dim()
num_sparse_dims = mask_input.sparse_dim()
reduced_sparse_dims = []
retained_sparse_dims = []
reduced_dense_dims = []
# promote dtype if specified
if values.dtype != output_dtype:
values = values.to(output_dtype)
if keepdim:
output_shape = tuple(
1 if i in dims else si for (i, si) in enumerate(mask_input.shape)
)
else:
output_shape = tuple(
si for (i, si) in enumerate(mask_input.shape) if i not in dims
)
for d in dims:
if d >= input_dims:
continue
if d < num_sparse_dims:
reduced_sparse_dims.append(d)
else:
reduced_dense_dims.append(d + 1 - num_sparse_dims)
# Reduce dense dimensions
if len(reduced_dense_dims) > 0:
if reduce == "sum":
new_values = values
new_values = op(new_values, dim=reduced_dense_dims, keepdim=bool(keepdim))
else:
# FIXME: Implement reductions for dense dimensions for ops with non-zero reduction identities
return NotImplemented
else:
new_values = values.clone()
# Reduce sparse dimensions
if len(reduced_sparse_dims) == num_sparse_dims:
if reduce in {"amax", "amin"} and new_values.size(0) == 0:
# IndexError: amax(): Expected reduction dim 0 to have non-zero size.
# sum()/prod() return the reduction identity when dim has size 0 but amax()/amin() do not
# See https://github.com/pytorch/pytorch/issues/61901
new_values = _reduction_identity(reduce, new_values)
else:
new_values = op(new_values, dim=0)
if keepdim:
for _ in range(num_sparse_dims):
new_values = new_values.unsqueeze(0)
return new_values.to(dtype=output_dtype).to_sparse()
else:
new_indices = indices.clone()
if keepdim:
# zero out reduced sparse dimensions if keepdim = True
# ensures that the call to torch.unique folds duplicated indices together while preserving the dimension
new_indices[reduced_sparse_dims, :] = 0
else:
# remove reduced sparse dimensions if keepdim = False
if len(reduced_sparse_dims) > 0:
retained_sparse_dims = [
i
for i in range(num_sparse_dims)
if i not in set(reduced_sparse_dims)
]
new_indices = new_indices.index_select(
0, torch.tensor(retained_sparse_dims).to(mask_input.device)
)
# Use scatter_reduce to reduce items in the new_values tensor that correspond to the same indices in new_indices
if new_indices.numel() > 0:
# lexsort indices and get index tensor for scatter reduction
new_indices, inverse_indices = torch.unique(
new_indices, return_inverse=True, dim=1
)
out_shape = list(new_values.shape)
out_shape[0] = new_indices.shape[1]
for _ in range(new_values.ndim - 1):
inverse_indices = inverse_indices.unsqueeze(-1)
scatter_indices = inverse_indices.expand(new_values.shape)
# FIXME: temporary workaround for issue with bfloat16/float16 remove when acctype is implemented for scatter_reduce
if output_dtype in {torch.bfloat16, torch.float16}:
new_values = new_values.to(torch.float)
out = new_values.new_empty(out_shape)
new_values = out.scatter_reduce_(
0, scatter_indices, new_values, reduce=reduce, include_self=False
)
new_values = new_values.to(dtype=output_dtype)
else:
out = new_values.new_empty(out_shape)
new_values = out.scatter_reduce_(
0, scatter_indices, new_values, reduce=reduce, include_self=False
)
return torch.sparse_coo_tensor(
new_indices,
new_values,
output_shape,
dtype=output_dtype,
device=mask_input.device,
)
def _sparse_csr_segment_reduction_helper(
op,
mask_input: Tensor,
dims: Tuple[int, ...],
keepdim: bool,
dtype: Optional[DType] = None,
) -> Tensor:
# Currently, while sparse CSR is always 2D with no dense dimensions keepdim must be True
# FIXME: when dense dimensions are implemented for CSR tensors
assert (
keepdim
), "reduction operations on CSR tensors with keepdim=False is unsupported"
reduce = op.__name__
valid_reductions = ["sum", "prod", "mean", "amax", "amin"]
if reduce not in valid_reductions:
raise ValueError(
f"op must be one of {' '.join(valid_reductions)}, but got {reduce} instead"
)
device = mask_input.device
output_dtype = dtype
values, crow_indices, col_indices = (
mask_input.values(),
mask_input.crow_indices(),
mask_input.col_indices(),
)
# promote dtype if specified
if values.dtype != output_dtype:
values = values.to(output_dtype)
if len(dims) == 0:
return mask_input
if len(dims) == 1:
if dims[0] == 0:
new_col_indices, scatter_indices = torch.unique(
col_indices, return_inverse=True
)
new_nnz = new_col_indices.shape[0]
new_crow_indices = torch.tensor([0, new_nnz])
new_values = values.new_empty(new_col_indices.shape)
new_values.scatter_reduce_(
0, scatter_indices, values, reduce, include_self=False
)
new_shape = [1, mask_input.size(1)]
else:
assert (
dims[0] == 1
), "Sparse CSR tensors are 2D and only support reduction along dim 0 or 1."
# all intervals new_crow_indices[i] - new_crow_indices[i-1] are 1
# except for where crow_indices[i] == crow_indices[i-1] where the interval remains as 0
new_crow_indices = torch.cat(
(
crow_indices.new_zeros(1),
torch.cumsum(torch.diff(crow_indices) != 0, 0),
),
0,
)
new_nnz = new_crow_indices[-1]
new_col_indices = col_indices.new_zeros(new_nnz)
new_values = torch._segment_reduce(values, reduce, offsets=crow_indices) # type: ignore[attr-defined]
new_shape = [mask_input.size(0), 1]
else:
assert len(dims) == 2
nnz = min(1, values.numel())
if nnz == 1:
op_kwargs = {"keepdim": True, "dtype": output_dtype}
# amax and amin do not support dtype kwarg
if reduce in ["amax", "amin"]:
del op_kwargs["dtype"]
new_values = op(values, 0, **op_kwargs)
else:
new_values = torch.empty(0, dtype=output_dtype)
new_col_indices = col_indices.new_zeros(nnz)
new_crow_indices = torch.tensor([0, nnz])
new_shape = [1, nnz]
return torch.sparse_csr_tensor(
new_crow_indices,
new_col_indices,
new_values,
new_shape,
dtype=output_dtype,
device=device,
)
def _sparse_csr_where(mask: Tensor, input: Tensor, fill_value: Tensor) -> Tensor:
"""Sparse variant of torch.where. Supports sparse CSR tensors."""
# TODO: implement sparse CSR specific where operator for efficiency
return _sparse_coo_where(
mask.to_sparse_coo(), input.to_sparse_coo(), fill_value
).to_sparse_csr()
def _where(mask: Tensor, input: Tensor, fill_value: Tensor) -> Tensor:
"""torch.where with sparse inputs support.
_where implements the following invariant:
_where(mask, input, fill_value).to_dense(fill_value) ==
torch.where(mask.to_dense(), input.to_dense(), torch.full(input.shape, fill_value))
where `a == b` means `assertEqual(a, b)`, mask is boolean sparse
tensor, and `to_dense(fill_value)` is like `to_dense()` except
that the unspecified elements are mapped to `fill_value` rather
than to `0`.
Returns a sparse tensor with the following features:
- all specified elements correspond to masked-in elements that
have the values of the input tensor. If there exists a masked-in
element (as specified by mask) that is not specified in the
input, in the result tensor, the corresponding element has value
0. In the dense part of the sparse tensor, the masked-out
elements are replaced with fill_value.
- all unspecified elements correspond to masked-out elements.
"""
if mask.layout == torch.strided:
return torch.where(mask, input, fill_value)
elif mask.layout == torch.sparse_coo:
return _sparse_coo_where(mask, input, fill_value)
elif mask.layout == torch.sparse_csr:
return _sparse_csr_where(mask, input, fill_value)
else:
raise ValueError(
f"_where expects strided or sparse COO or sparse CSR tensor but got {mask.layout}"
)
def _input_mask(input: Union[Tensor, MaskedTensor], *args, **kwargs) -> Tensor:
"""Return canonical input mask.
A canonical input mask is defined as a boolean mask tensor that
shape and layout matches with the shape and the layout of the
input.
The canonical input mask is computed from the :attr:`mask` tensor
content to meet the following criteria:
1. The shape of the canonical input mask is the same as the shape
of :attr:`input` tensor. If the mask tensor has a smaller shape
than the shape of the :attr:`input`, broadcasting rules will be
applied. Downcasting of mask is not supported.
2. The layout of the canonical input mask is the same as the
layout of the :attr:`input` tensor. If the mask has different
layout, it will be converted to the expected layout. In the
case of sparse COO layout, the canonical input mask will be
coalesced.
3. The dtype of the canonical input mask is torch.bool. If the
mask dtype is not bool then it will be converted to bool dtype
using `.to(dtype=bool)` method call.
4. The elements of the canonical input mask have boolean values
copied from the content of the :attr:`mask` tensor (after
possible broadcasting and dtype conversion transforms). In
general, the sparsity pattern of the sparse canonical input
mask need not to be the same as the sparsity pattern of the
sparse :attr:`input` tensor.
"""
if input.layout not in {torch.strided, torch.sparse_coo, torch.sparse_csr}:
raise ValueError(
f"_input_mask expects strided or sparse COO or sparse CSR tensor but got {input.layout}"
)
mask = kwargs.get("mask")
# default mask
if mask is None:
raise ValueError("_input_mask requires explicit mask")
# mask shape must match with input shape
if mask.shape != input.shape:
if mask.ndim > input.ndim:
raise IndexError(
"_input_mask expected broadcastable mask (got mask dimensionality higher than of the input)"
)
if mask.layout == torch.strided:
mask = torch.broadcast_to(mask.clone(), input.shape).to(dtype=torch.bool)
elif mask.layout == torch.sparse_coo:
mask = torch._sparse_broadcast_to(mask, input.shape)
else:
assert mask.layout == torch.sparse_csr
# Broadcasting of CSR tensors is not implemented. Working
# around by using COO layout.
mask = torch._sparse_broadcast_to(
mask.to_sparse(), input.shape
).to_sparse_csr()
# mask layout must match with input layout
if mask.layout != input.layout:
if input.layout == torch.strided:
mask = mask.to_dense()
elif input.layout == torch.sparse_coo:
if mask.layout == torch.strided:
mask = mask.to_sparse(input.sparse_dim())
else:
mask = mask.to_sparse()
else:
assert input.layout == torch.sparse_csr
mask = mask.to_sparse_csr()
# sparse mask must be coalesced
if mask.layout == torch.sparse_coo:
mask = mask.coalesce()
# mask is a boolean tensor
mask = mask.to(dtype=torch.bool)
return mask
def _output_mask(op, input: Tensor, *args, **kwargs) -> Tensor:
"""Return output mask of masked operation applied to given arguments."""
if callable(op):
is_reduction = op.__name__ in {
"sum",
"prod",
"amax",
"amin",
"argmax",
"argmin",
"mean",
"median",
"norm",
"var",
"std",
"logsumexp",
}
is_normalization = op.__name__ in {
"softmax",
"log_softmax",
"softmin",
"normalize",
"cumsum",
"cumprod",
}
if is_reduction:
if op.__name__ == "norm":
if args:
args = args[1:] # lstrip ord argument
dim = args[0] if args else kwargs.get("dim")
outmask = _input_mask(input, *args, **kwargs)
keepdim = kwargs.get("keepdim", False)
dim_ = _canonical_dim(dim, input.ndim)
return _any(outmask, dim_, bool(keepdim))
elif is_normalization:
return _input_mask(input, *args, **kwargs)
else:
raise ValueError(
f"_output_mask expected masked operation (got callable {op.__module__}.{op.__name__})"
)
else:
raise ValueError(
f"_output_mask expected masked operation (got {type(op).__name__} object)"
)
def _combine_input_and_mask(
op, input: Union[MaskedTensor, Tensor], mask, *args
) -> Tensor:
def helper(input, mask):
if mask is None:
return input
canonical_mask = _input_mask(input, mask=mask)
if callable(op):
fill_value = _reduction_identity(op.__name__, input, *args)
return _where(canonical_mask, input, fill_value)
else:
raise ValueError(
f"_combine_input_and_mask expected masked operation (got {type(op).__name__} object)"
)
class Combine(torch.autograd.Function):
@staticmethod
def forward(ctx, input, mask):
"""Return input with masked-out elements eliminated for the given operations."""
ctx.save_for_backward(mask)
if mask is not None:
ctx.mark_non_differentiable(mask)
return helper(input, mask)
@staticmethod
def backward(ctx, grad_output):
(mask,) = ctx.saved_tensors
grad_data = (
grad_output.get_data() if is_masked_tensor(grad_output) else grad_output
)
result = as_masked_tensor(grad_data, mask)
return result, None
return (
Combine.apply(input.get_data(), input.get_mask()) # type: ignore[union-attr]
if is_masked_tensor(input)
else helper(input, mask)
)
@_apply_docstring_templates
def sum(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
# __doc__ is generated by _apply_docstring_templates decorator
if dtype is None:
# promote integer types to int64 when output dtype is not specified
if input.layout == torch.sparse_csr:
if input.dtype in {
torch.uint8,
torch.bool,
torch.int8,
torch.int16,
torch.int32,
}:
# csr.to(dtype=torch.int64) is not implemented, so
# using coo.to on input to ensure the promoted dtype
input = input.to_sparse_coo().to(dtype=torch.int64).to_sparse_csr()
else:
dtype = input.dtype
else:
dtype = input.dtype
if input.dtype in {
torch.uint8,
torch.bool,
torch.int8,
torch.int16,
torch.int32,
}:
dtype = torch.int64
dim_ = _canonical_dim(dim, input.ndim)
mask_input = _combine_input_and_mask(sum, input, mask)
if mask_input.layout == torch.strided:
return torch.sum(mask_input, dim_, bool(keepdim), dtype=dtype)
elif mask_input.layout == torch.sparse_coo:
return _sparse_coo_scatter_reduction_helper(
torch.sum, mask_input, dim_, bool(keepdim), dtype
)
elif mask_input.layout == torch.sparse_csr:
return torch._sparse_csr_sum(
mask_input, dim=list(dim_), keepdim=bool(keepdim), dtype=dtype
)
else:
raise ValueError(
f"masked sum expects strided, sparse_coo or sparse_csr tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def prod(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
# __doc__ is generated by _apply_docstring_templates decorator
if dtype is None:
# promote integer types to int64 when output dtype is not specified
if input.layout == torch.sparse_csr:
if input.dtype in {
torch.uint8,
torch.bool,
torch.int8,
torch.int16,
torch.int32,
}:
# csr.to(dtype=torch.int64) is not implemented, so
# using coo.to on input to ensure the promoted dtype
input = input.to_sparse_coo().to(dtype=torch.int64).to_sparse_csr()
else:
dtype = input.dtype
else:
dtype = input.dtype
if input.dtype in {
torch.uint8,
torch.bool,
torch.int8,
torch.int16,
torch.int32,
}:
dtype = torch.int64
dim_ = _canonical_dim(dim, input.ndim)
mask_input = _combine_input_and_mask(prod, input, mask)
if mask_input.layout == torch.strided:
# Workaround https://github.com/pytorch/pytorch/issues/56586
result = mask_input
result = result.to(dtype=dtype)
for d in reversed(dim_):
result = result.prod(dim=d, keepdim=bool(keepdim))
return result
elif mask_input.layout == torch.sparse_coo:
if mask is None:
# See comment in the sparse_csr branch, the same issue arises for sparse_coo tensors
raise ValueError(
"masked prod expects explicit mask for sparse_coo tensor input"
)
return _sparse_coo_scatter_reduction_helper(
torch.prod, mask_input, dim_, bool(keepdim), dtype
)
elif mask_input.layout == torch.sparse_csr:
if mask is None:
# mask is None corresponds to all-True mask. The
# unspecified elements in the CSR tensor correspond to
# zero values. Hence, the prod reduction result is
# automatically zero unless all elements are specified.
# A semi-optimal way to take this into account is to use:
#
# masked_prod(csr, ..., mask=None) == torch._sparse_csr_prod(csr, ...) * all(csr.nonzero(), ...)
#
# but that requires implementing `all` and `nonzero`
# support for sparse csr tensors.
raise ValueError(
"masked prod expects explicit mask for sparse_csr tensor input"
)
return torch._sparse_csr_prod(
mask_input, dim=list(dim_), keepdim=bool(keepdim), dtype=dtype
)
else:
raise ValueError(
f"masked prod expects strided, sparse_coo or sparse_csr tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def cumsum(
input: Tensor,
dim: int,
*,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
mask_input = _combine_input_and_mask(sum, input, mask)
if mask_input.layout == torch.strided:
return torch.cumsum(mask_input, dim_, dtype=dtype).to(dtype=dtype)
else:
raise ValueError(
f"masked cumsum expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def cumprod(
input: Tensor,
dim: int,
*,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
mask_input = _combine_input_and_mask(prod, input, mask)
if mask_input.layout == torch.strided:
return torch.cumprod(mask_input, dim_, dtype=dtype).to(dtype=dtype)
else:
raise ValueError(
f"masked cumprod expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def amax(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
{reduction_identity_dtype}
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
mask_input = _combine_input_and_mask(amax, input, mask)
dim_ = _canonical_dim(dim, mask_input.ndim)
if mask_input.layout == torch.strided:
return torch.amax(mask_input, dim_, bool(keepdim)).to(dtype=dtype)
elif mask_input.layout == torch.sparse_coo:
if mask is None:
# See comment in the sparse_csr branch of prod, a similar issue arises here
# where unspecified elements along a dimension may need to be reduced with the result
raise ValueError(
"masked amax expects explicit mask for sparse_coo tensor input"
)
return _sparse_coo_scatter_reduction_helper(
torch.amax, mask_input, dim_, bool(keepdim), dtype
)
elif mask_input.layout == torch.sparse_csr:
if mask is None:
raise ValueError(
"masked amax expects explicit mask for sparse_csr tensor input"
)
return _sparse_csr_segment_reduction_helper(
torch.amax, mask_input, dim_, bool(keepdim), dtype
)
else:
raise ValueError(
f"masked amax expects strided, sparse_coo or sparse_csr tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def amin(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
{reduction_identity_dtype}
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
mask_input = _combine_input_and_mask(amin, input, mask)
dim_ = _canonical_dim(dim, mask_input.ndim)
if mask_input.layout == torch.strided:
return torch.amin(mask_input, dim_, bool(keepdim)).to(dtype=dtype)
elif mask_input.layout == torch.sparse_coo:
if mask is None:
# See comment in the sparse_csr branch of prod, a similar issue arises here
# where unspecified elements along a dimension may need to be reduced with the result
raise ValueError(
"masked amax expects explicit mask for sparse_coo tensor input"
)
return _sparse_coo_scatter_reduction_helper(
torch.amin, mask_input, dim_, bool(keepdim), dtype
)
elif mask_input.layout == torch.sparse_csr:
if mask is None:
raise ValueError(
"masked amin expects explicit mask for sparse_csr tensor input"
)
return _sparse_csr_segment_reduction_helper(
torch.amin, mask_input, dim_, bool(keepdim), dtype
)
else:
raise ValueError(
f"masked amin expects strided, sparse_coo or sparse_csr tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def argmax(
input: Union[Tensor, MaskedTensor],
dim: Optional[int] = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
{reduction_identity_dtype}
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
mask_input = _combine_input_and_mask(argmax, input, mask)
if mask_input.layout == torch.strided:
return torch.argmax(mask_input, dim, bool(keepdim)).to(dtype=dtype)
else:
raise ValueError(
f"masked argmax expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def argmin(
input: Union[Tensor, MaskedTensor],
dim: Optional[int] = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
{reduction_identity_dtype}
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
mask_input = _combine_input_and_mask(argmin, input, mask)
if mask_input.layout == torch.strided:
return torch.argmin(mask_input, dim, bool(keepdim)).to(dtype=dtype)
else:
raise ValueError(
f"masked argmin expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def mean(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
By definition, the identity value of a mean operation is the mean
value of the tensor. If all elements of the input tensor along given
dimension(s) :attr:`dim` are masked-out, the identity value of the
mean is undefined. Due to this ambiguity, the elements of output
tensor with strided layout, that correspond to fully masked-out
elements, have ``nan`` values.
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
if input.layout == torch.strided:
if mask is None:
# TODO: compute count analytically
count = sum(
torch.ones(input.shape, dtype=torch.int64, device=input.device),
dim,
keepdim=keepdim,
)
total = sum(input, dim, keepdim=keepdim, dtype=dtype)
else:
inmask = _input_mask(input, mask=mask)
count = sum(
inmask.new_ones(input.shape, dtype=torch.int64),
dim,
keepdim=keepdim,
mask=inmask,
)
total = sum(input, dim, keepdim=keepdim, dtype=dtype, mask=inmask)
return total / count
elif input.layout == torch.sparse_csr:
mask_input = _combine_input_and_mask(mean, input, mask)
dim_ = _canonical_dim(dim, mask_input.ndim)
if mask is None:
raise ValueError(
"masked mean expects explicit mask for sparse_csr tensor input"
)
return _sparse_csr_segment_reduction_helper(
torch.mean, mask_input, dim_, bool(keepdim), dtype
)
else:
raise ValueError(
f"masked mean expects strided or sparse_csr tensor (got {input.layout} tensor)"
)
@_apply_docstring_templates
def median(
input: Union[Tensor, MaskedTensor],
dim: int = -1,
*,
keepdim: bool = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
By definition, the identity value of a median operation is the median
value of the tensor. If all elements of the input tensor along given
dimension(s) :attr:`dim` are masked-out, the identity value of the
median is undefined. Due to this ambiguity, the elements of output
tensor with strided layout, that correspond to fully masked-out
elements, have ``nan`` values.
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
is_float = torch.is_floating_point(input)
if not is_float:
input = input.to(dtype=torch.float)
mask_input = _combine_input_and_mask(median, input, mask)
if mask_input.layout == torch.strided:
output = torch.nanmedian(mask_input, dim_, keepdim).values
if is_float:
return output
elif not is_float and not torch.isnan(output).any():
return output.to(dtype=dtype)
else:
raise ValueError(
"masked median expects no fully masked out rows if dtype is not floating point"
)
else:
raise ValueError(
f"masked median expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def logsumexp(
input: Tensor,
dim: DimOrDims = None,
*,
keepdim: bool = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)
mask_input = _combine_input_and_mask(logsumexp, input, mask)
if mask_input.layout == torch.strided:
return torch.logsumexp(mask_input, dim_, keepdim=keepdim).to(dtype=dtype)
else:
raise ValueError(
f"masked logsumexp expects strided tensor (got {mask_input.layout} tensor)"
)
# Cannot use _apply_docstring_templates as it is only set up for reductions and normalizations
def logaddexp(
input: Union[Tensor, MaskedTensor],
other: Union[Tensor, MaskedTensor],
*,
dtype: Optional[DType] = None,
input_mask: Optional[Tensor] = None,
other_mask: Optional[Tensor] = None,
) -> Tensor:
"""logaddexp(input, other, *, dtype=None, input_mask=None, other_mask=None) -> Tensor
Returns logaddexp of all the elements in the :attr:`input` and the :attr:`other`
tensor. The :attr:`input` elements are masked out according to the boolean tensor
:attr:`input_mask` and the attr:`other` elements are masked out according to the boolean tensor
:attr:`other_mask`.
The shapes of a mask tensor and the tensor to be masked
don't need to match, but they must be :ref:`broadcastable
<broadcasting-semantics>` and the dimensionality of the mask
tensor must not be greater than of the tensor to be masked.
Args:
input (Tensor): the input tensor
other (Tensor): the second input tensor
Keyword args:
dtype (:class:`torch.dtype`, optional): the desired data type
of returned tensor. If specified, the output tensor is
casted to :attr:`dtype` after the operation is
performed. Default: None.
input_mask (:class:`torch.Tensor`, optional): the boolean tensor
containing the binary mask of validity of :attr:`input` tensor elements.
Default: None that is equivalent to ``torch.ones(input.shape, dtype=torch.bool)``.
other_mask (:class:`torch.Tensor`, optional): the boolean tensor
containing the binary mask of validity of :attr:`other` tensor elements.
Default: None that is equivalent to ``torch.ones(other.shape, dtype=torch.bool)``.
Example::
>>> input = torch.tensor([-100.0, -200, -300])
>>> input
tensor([-100., -200., -300.])
>>> other = torch.tensor([-1.0, -2, -3])
>>> other
tensor([-1., -2., -3.])
>>> mask = torch.tensor([True, False, True])
>>> mask
tensor([ True, False, True])
>>> torch.masked._ops.logaddexp(input, other, input_mask=mask, other_mask=mask)
tensor([-1., -inf, -3.])
"""
if dtype is None:
dtype = input.dtype
if input.layout == torch.strided and other.layout == torch.strided:
mask_input = _combine_input_and_mask(logsumexp, input, input_mask)
mask_other = _combine_input_and_mask(logsumexp, other, other_mask)
return torch.logaddexp(mask_input, mask_other).to(dtype=dtype)
else:
raise ValueError(
f"masked logaddexp expects strided tensors (got {input.layout} tensor for input, {other.layout} for other)"
)
@_apply_docstring_templates
def norm(
input: Union[Tensor, MaskedTensor],
ord: Optional[float] = 2.0,
dim: DimOrDims = None,
*,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
The identity value of norm operation, which is used to start the
reduction, is ``{identity_float32}``, except for ``ord=-inf`` it is
``{identity_ord_ninf}``.
{reduction_args}
{reduction_example}"""
if dtype is None:
dtype = input.dtype
mask_input = _combine_input_and_mask(norm, input, mask, ord)
if mask_input.layout == torch.strided:
dim_ = _canonical_dim(dim, input.ndim)
return torch.linalg.vector_norm(
mask_input, ord, dim_, bool(keepdim), dtype=dtype
)
else:
raise ValueError(
f"masked norm expects strided tensor (got {mask_input.layout} tensor)"
)
def _std_var(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims,
unbiased: Optional[bool],
*,
correction_opt: Optional[Union[int, float]],
keepdim: Optional[bool],
dtype: Optional[DType],
mask: Optional[Tensor],
take_sqrt: Optional[bool],
) -> Tensor:
assert (unbiased is None or correction_opt is None), "Only one of unbiased and correction may be given"
correction = 1.0
if unbiased is not None:
correction = 1.0 if unbiased else 0.0
if correction_opt is not None:
correction = sym_float(correction_opt)
if dtype is None:
dtype = input.dtype
if not (dtype.is_floating_point or dtype.is_complex):
dtype = torch.float32
compute_dtype = dtype
if not (compute_dtype.is_floating_point or compute_dtype.is_complex):
compute_dtype = torch.float32
if input.layout == torch.strided:
if mask is None:
# TODO: compute count analytically
count = sum(
torch.ones(input.shape, dtype=torch.int64, device=input.device),
dim,
keepdim=True,
)
sample_total = sum(input, dim, keepdim=True, dtype=dtype)
else:
inmask = _input_mask(input, mask=mask)
count = sum(
inmask.new_ones(input.shape, dtype=torch.int64),
dim,
keepdim=True,
mask=inmask,
)
sample_total = sum(input, dim, keepdim=True, dtype=dtype, mask=inmask)
# TODO: replace torch.subtract/divide/square/maximum with
# masked subtract/divide/square/maximum when these will be
# available.
sample_mean = torch.divide(sample_total, count)
x = torch.subtract(input, sample_mean)
if mask is None:
total = sum(x * x.conj(), dim, keepdim=keepdim, dtype=compute_dtype)
else:
total = sum(
x * x.conj(), dim, keepdim=keepdim, dtype=compute_dtype, mask=inmask # type: ignore[possibly-undefined]
)
if not keepdim:
count = count.reshape(total.shape)
if correction != 0:
real_dtype = (corresponding_real_dtype(compute_dtype)
if compute_dtype.is_complex else compute_dtype)
count = count.to(real_dtype)
count = torch.subtract(count, correction)
count = torch.maximum(count, count.new_zeros([]))
output = torch.divide(total, count).to(dtype=dtype)
if take_sqrt:
output = torch.sqrt(output)
return output
else:
raise ValueError(
f"masked std/var expects strided tensor (got {input.layout} tensor)"
)
@_apply_docstring_templates
def var(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
unbiased: Optional[bool] = None,
*,
correction: Optional[Union[int, float]] = None,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
The identity value of sample variance operation is undefined. The
elements of output tensor with strided layout, that correspond to
fully masked-out elements, have ``nan`` values.
{reduction_args}
{reduction_example}"""
return _std_var(
input=input,
dim=dim,
unbiased=unbiased,
correction_opt=correction,
keepdim=keepdim,
dtype=dtype,
mask=mask,
take_sqrt=False,
)
@_apply_docstring_templates
def std(
input: Union[Tensor, MaskedTensor],
dim: DimOrDims = None,
unbiased: Optional[bool] = None,
*,
correction: Optional[int] = None,
keepdim: Optional[bool] = False,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
"""\
{reduction_signature}
{reduction_descr}
The identity value of sample standard deviation operation is undefined. The
elements of output tensor with strided layout, that correspond to
fully masked-out elements, have ``nan`` values.
{reduction_args}
{reduction_example}"""
return _std_var(
input=input,
dim=dim,
unbiased=unbiased,
correction_opt=correction,
keepdim=keepdim,
dtype=dtype,
mask=mask,
take_sqrt=True,
)
@_apply_docstring_templates
def softmax(
input: Union[Tensor, MaskedTensor],
dim: int,
*,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
mask_input = _combine_input_and_mask(amax, input, mask)
if mask_input.layout == torch.strided:
return torch.nn.functional.softmax(mask_input, dim_, dtype=dtype)
else:
raise ValueError(
f"masked softmax expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def log_softmax(
input: Union[Tensor, MaskedTensor],
dim: int,
*,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
mask_input = _combine_input_and_mask(amax, input, mask)
if mask_input.layout == torch.strided:
return torch.nn.functional.log_softmax(mask_input, dim_, dtype=dtype)
else:
raise ValueError(
f"masked log_softmax expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def softmin(
input: Union[Tensor, MaskedTensor],
dim: int,
*,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
mask_input = _combine_input_and_mask(amin, input, mask)
if mask_input.layout == torch.strided:
return torch.nn.functional.softmin(mask_input, dim_, dtype=dtype)
else:
raise ValueError(
f"masked softmin expects strided tensor (got {mask_input.layout} tensor)"
)
@_apply_docstring_templates
def normalize(
input: Union[Tensor, MaskedTensor],
ord: float,
dim: int,
*,
eps: float = 1e-12,
dtype: Optional[DType] = None,
mask: Optional[Tensor] = None,
) -> Tensor:
if dtype is None:
dtype = input.dtype
dim_ = _canonical_dim(dim, input.ndim)[0]
# TODO: eliminate mask_input as unnecessary when using masked divide.
mask_input = _combine_input_and_mask(sum, input, mask)
if mask_input.layout == torch.strided:
nrm_ = norm(input, ord, dim, keepdim=True, dtype=dtype, mask=mask)
# TODO: replace torch.maximum with masked maximum when available.
denom = torch.maximum(nrm_, nrm_.new_full([], eps))
# TODO: replace torch.divide with masked divide when available.
return torch.divide(mask_input, denom)
else:
raise ValueError(
f"masked normalize expects strided tensor (got {mask_input.layout} tensor)"
)