from onnx.onnx_pb import ( AttributeProto, SparseTensorProto, TensorProto, TensorShapeProto, TypeProto, ) class InferenceError(Exception): ... class GraphInferencer: def do_inferencing( self, input_types: list[TypeProto], input_data: list[TensorProto | None] ) -> list[TypeProto]: ... class InferenceContext: def get_attribute(self, name: str) -> AttributeProto: ... def get_num_inputs(self) -> int: ... def get_input_type(self, idx: int) -> TypeProto: ... def has_input(self, idx: int) -> bool: ... def get_input_data(self, idx: int) -> TensorProto: ... def get_num_outputs(self) -> int: ... def get_output_type(self, idx: int) -> TypeProto: ... def set_output_type(self, idx: int, type_proto: TypeProto) -> bool: ... def has_output(self, idx: int) -> bool: ... def get_graph_attribute_inferencer(self, attr_name: str) -> GraphInferencer: ... def get_input_sparse_data(self, idx: int) -> SparseTensorProto: ... def get_symbolic_input(self, idx: int) -> TensorShapeProto: ... def get_display_name(self) -> str: ... def infer_shapes( b: bytes, check_type: bool, strict_mode: bool, data_prop: bool ) -> bytes: ... def infer_shapes_path( model_path: str, output_path: str, check_type: bool, strict_mode: bool, data_prop: bool, ) -> None: ... def infer_function_output_types( b: bytes, input_types: list[bytes], attributes: list[bytes], ) -> list[bytes]: ...