import numpy as np import tensorflow as tf from onnx_tf.handlers.backend_handler import BackendHandler from onnx_tf.handlers.handler import onnx_op from onnx_tf.common import data_type from onnx import mapping @onnx_op("SequenceEmpty") class SequenceEmpty(BackendHandler): @classmethod def version_11(cls, node, **kwargs): default_dtype = mapping.NP_TYPE_TO_TENSOR_TYPE[np.dtype('float32')] dtype = data_type.onnx2tf(node.attrs.get("dtype", default_dtype)) ragged = tf.RaggedTensor.from_row_lengths(values=[], row_lengths=[]) sparse = tf.cast(ragged.to_sparse(), dtype) return [tf.RaggedTensor.from_sparse(sparse)]