blob: 77d46bb15a245f384406e0f77a7933c88e9511ae [file] [log] [blame]
"""This file exports ONNX ops for opset 16.
Note [ONNX Operators that are added/updated in opset 16]
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
https://github.com/onnx/onnx/blob/main/docs/Changelog.md#version-16-of-the-default-onnx-operator-set
New operators:
GridSample https://github.com/onnx/onnx/pull/3557
Updated operators:
Identity
If
LeakyRelu
Loop
PRelu
RoiAlign
Scan
ScatterElemenets
ScatterND
Where
GreaterOrEqual
LessOrEqual
"""
# EDITING THIS FILE? READ THIS FIRST!
# see Note [Edit Symbolic Files] in README.md
import functools
from torch.nn.functional import (
GRID_SAMPLE_INTERPOLATION_MODES,
GRID_SAMPLE_PADDING_MODES,
)
from torch.onnx import _type_utils, symbolic_helper
from torch.onnx._internal import _beartype, jit_utils, registration
_onnx_symbolic = functools.partial(registration.onnx_symbolic, opset=16)
# note (mkozuki): Why `grid_sampler` instead of `grid_sample`?
# Because `torch.nn.functional.grid_sample` calls `torch.grid_sampler`.
@_onnx_symbolic("aten::grid_sampler")
@symbolic_helper.parse_args("v", "v", "i", "i", "b")
@_beartype.beartype
def grid_sampler(
g: jit_utils.GraphContext,
input,
grid,
mode_enum,
padding_mode_enum,
align_corners,
):
mode_s = {v: k for k, v in GRID_SAMPLE_INTERPOLATION_MODES.items()}[mode_enum] # type: ignore[call-arg]
padding_mode_s = {v: k for k, v in GRID_SAMPLE_PADDING_MODES.items()}[padding_mode_enum] # type: ignore[call-arg]
return g.op(
"GridSample",
input,
grid,
align_corners_i=int(align_corners),
mode_s=mode_s,
padding_mode_s=padding_mode_s,
)
@_onnx_symbolic("aten::scatter_add")
@symbolic_helper.parse_args("v", "i", "v", "v")
@_beartype.beartype
def scatter_add(g: jit_utils.GraphContext, self, dim, index, src):
if symbolic_helper.is_caffe2_aten_fallback():
return g.at("scatter", self, dim, index, src, overload_name="src")
src_type = src.type().scalarType()
src_sizes = symbolic_helper._get_tensor_sizes(src)
index_sizes = symbolic_helper._get_tensor_sizes(index)
if src_sizes != index_sizes:
return symbolic_helper._unimplemented(
"scatter_add",
f"`index` ({index_sizes}) should have the same dimensionality as `src` ({src_sizes})",
)
src = symbolic_helper._maybe_get_scalar(src)
if symbolic_helper._is_value(src):
return g.op("ScatterElements", self, index, src, axis_i=dim, reduction_s="add")
else:
# Check if scalar "src" has same type as self (PyTorch allows different
# type for scalar src (but not when src is tensor)). If not, insert Cast node.
if self.type().scalarType() != src_type:
src = g.op(
"Cast",
src,
to_i=_type_utils.JitScalarType.from_name(
self.type().scalarType()
).onnx_type(),
)
return g.op(
"ScatterElements",
self,
index,
src,
axis_i=dim,
reduction_s="add",
)