"""This file exports ONNX ops for opset 15. Note [ONNX operators that are added/updated in opset 15] ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ https://github.com/onnx/onnx/blob/master/docs/Changelog.md#version-15-of-the-default-onnx-operator-set New operators: Bernoulli CastLike Optional OptionalGetElement OptionalHasElement Updated operators: BatchNormalization https://github.com/onnx/onnx/pull/3545 Backwards compatible TODO: test coverage for mixed types inputs. Pow https://github.com/onnx/onnx/pull/3412 Backwards compatible TODO: bfloat16 support. Shape https://github.com/onnx/onnx/pull/3580 Backwards compatible TODO: optional start/end attribute. """ # EDITING THIS FILE? READ THIS FIRST! # see Note [Edit Symbolic Files] in symbolic_helper.py import torch from torch import _C from torch.onnx import symbolic_helper from torch.onnx import symbolic_opset9 as opset9 def __is_(g, self, other): if symbolic_helper._is_none(other): if isinstance(self.type(), _C.OptionalType): none = g.op("OptionalHasElement", self) return g.op("Not", none) else: return g.op("Constant", value_t=torch.BoolTensor([0])) return opset9.eq(g, self, other) @opset9.wrap_logical_op_with_negation def __isnot_(g, self, other): return __is_(g, self, other) class Prim: domain = "prim" @staticmethod def unchecked_cast(g, self): # exists to refine the type of the Value # if x is Optional[Tensor], unchecked_cast will cast # x to Tensor, so the rest of the graph knows that x is a Tensor. if isinstance(self.type(), _C.OptionalType): return g.op("OptionalGetElement", self) return self