# Copyright 2016 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== """SavedModel utility functions implementation.""" from __future__ import absolute_import from __future__ import division from __future__ import print_function import os from tensorflow.core.protobuf import meta_graph_pb2 from tensorflow.python.framework import dtypes from tensorflow.python.framework import ops from tensorflow.python.framework import sparse_tensor from tensorflow.python.lib.io import file_io from tensorflow.python.saved_model import constants from tensorflow.python.util import compat from tensorflow.python.util import deprecation from tensorflow.python.util.tf_export import tf_export # TensorInfo helpers. @tf_export("saved_model.build_tensor_info", "saved_model.utils.build_tensor_info") @deprecation.deprecated_endpoints("saved_model.utils.build_tensor_info") def build_tensor_info(tensor): """Utility function to build TensorInfo proto. Args: tensor: Tensor or SparseTensor whose name, dtype and shape are used to build the TensorInfo. For SparseTensors, the names of the three constitutent Tensors are used. Returns: A TensorInfo protocol buffer constructed based on the supplied argument. """ tensor_info = meta_graph_pb2.TensorInfo( dtype=dtypes.as_dtype(tensor.dtype).as_datatype_enum, tensor_shape=tensor.get_shape().as_proto()) if isinstance(tensor, sparse_tensor.SparseTensor): tensor_info.coo_sparse.values_tensor_name = tensor.values.name tensor_info.coo_sparse.indices_tensor_name = tensor.indices.name tensor_info.coo_sparse.dense_shape_tensor_name = tensor.dense_shape.name else: tensor_info.name = tensor.name return tensor_info @tf_export("saved_model.get_tensor_from_tensor_info", "saved_model.utils.get_tensor_from_tensor_info") @deprecation.deprecated_endpoints( "saved_model.utils.get_tensor_from_tensor_info") def get_tensor_from_tensor_info(tensor_info, graph=None, import_scope=None): """Returns the Tensor or SparseTensor described by a TensorInfo proto. Args: tensor_info: A TensorInfo proto describing a Tensor or SparseTensor. graph: The tf.Graph in which tensors are looked up. If None, the current default graph is used. import_scope: If not None, names in `tensor_info` are prefixed with this string before lookup. Returns: The Tensor or SparseTensor in `graph` described by `tensor_info`. Raises: KeyError: If `tensor_info` does not correspond to a tensor in `graph`. ValueError: If `tensor_info` is malformed. """ graph = graph or ops.get_default_graph() def _get_tensor(name): return graph.get_tensor_by_name( ops.prepend_name_scope(name, import_scope=import_scope)) encoding = tensor_info.WhichOneof("encoding") if encoding == "name": return _get_tensor(tensor_info.name) elif encoding == "coo_sparse": return sparse_tensor.SparseTensor( _get_tensor(tensor_info.coo_sparse.indices_tensor_name), _get_tensor(tensor_info.coo_sparse.values_tensor_name), _get_tensor(tensor_info.coo_sparse.dense_shape_tensor_name)) else: raise ValueError("Invalid TensorInfo.encoding: %s" % encoding) # Path helpers. def get_or_create_variables_dir(export_dir): """Return variables sub-directory, or create one if it doesn't exist.""" variables_dir = get_variables_dir(export_dir) if not file_io.file_exists(variables_dir): file_io.recursive_create_dir(variables_dir) return variables_dir def get_variables_dir(export_dir): """Return variables sub-directory in the SavedModel.""" return os.path.join( compat.as_text(export_dir), compat.as_text(constants.VARIABLES_DIRECTORY)) def get_variables_path(export_dir): """Return the variables path, used as the prefix for checkpoint files.""" return os.path.join( compat.as_text(get_variables_dir(export_dir)), compat.as_text(constants.VARIABLES_FILENAME)) def get_or_create_assets_dir(export_dir): """Return assets sub-directory, or create one if it doesn't exist.""" assets_destination_dir = get_assets_dir(export_dir) if not file_io.file_exists(assets_destination_dir): file_io.recursive_create_dir(assets_destination_dir) return assets_destination_dir def get_assets_dir(export_dir): """Return path to asset directory in the SavedModel.""" return os.path.join( compat.as_text(export_dir), compat.as_text(constants.ASSETS_DIRECTORY))