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# Copyright 2017 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.
# ==============================================================================
"""TensorFlow Lite tooling helper functionality."""

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import warnings
import enum
from six import PY3

from google.protobuf import text_format as _text_format
from google.protobuf.message import DecodeError
from tensorflow.core.framework import graph_pb2 as _graph_pb2
from tensorflow.lite.experimental.examples.lstm.rnn import dynamic_rnn  # pylint: disable=unused-import
from tensorflow.lite.experimental.examples.lstm.rnn_cell import TFLiteLSTMCell  # pylint: disable=unused-import
from tensorflow.lite.experimental.examples.lstm.rnn_cell import TfLiteRNNCell  # pylint: disable=unused-import
from tensorflow.lite.experimental.tensorboard.ops_util import get_potentially_supported_ops  # pylint: disable=unused-import
from tensorflow.lite.python import lite_constants as constants
from tensorflow.lite.python.convert import build_toco_convert_protos  # pylint: disable=unused-import
from tensorflow.lite.python.convert import ConverterError  # pylint: disable=unused-import
from tensorflow.lite.python.convert import OpsSet
from tensorflow.lite.python.convert import toco_convert  # pylint: disable=unused-import
from tensorflow.lite.python.convert import toco_convert_graph_def as _toco_convert_graph_def
from tensorflow.lite.python.convert import toco_convert_impl as _toco_convert_impl
from tensorflow.lite.python.convert import toco_convert_protos  # pylint: disable=unused-import
from tensorflow.lite.python.convert_saved_model import freeze_saved_model as _freeze_saved_model
from tensorflow.lite.python.interpreter import Interpreter  # pylint: disable=unused-import
from tensorflow.lite.python.op_hint import convert_op_hints_to_stubs  # pylint: disable=unused-import
from tensorflow.lite.python.op_hint import OpHint  # pylint: disable=unused-import
from tensorflow.lite.python.optimize import calibrator as _calibrator
from tensorflow.lite.python.util import freeze_graph as _freeze_graph
from tensorflow.lite.python.util import get_grappler_config as _get_grappler_config
from tensorflow.lite.python.util import get_tensor_name as _get_tensor_name
from tensorflow.lite.python.util import get_tensors_from_tensor_names as _get_tensors_from_tensor_names
from tensorflow.lite.python.util import is_frozen_graph as _is_frozen_graph
from tensorflow.lite.python.util import run_graph_optimizations as _run_graph_optimizations
from tensorflow.lite.python.util import set_tensor_shapes as _set_tensor_shapes
from tensorflow.python import keras as _keras
from tensorflow.python.client import session as _session
from tensorflow.python.eager import context
from tensorflow.python.eager import def_function as _def_function
from tensorflow.python.eager import function as _function
from tensorflow.python.framework import convert_to_constants as _convert_to_constants
from tensorflow.python.framework import dtypes as _dtypes
from tensorflow.python.framework import ops as _ops
from tensorflow.python.framework.errors_impl import NotFoundError as _NotFoundError
from tensorflow.python.framework.importer import import_graph_def as _import_graph_def
from tensorflow.python.keras.saving import saving_utils as _saving_utils
from tensorflow.python.lib.io import file_io as _file_io
from tensorflow.python.saved_model import signature_constants as _signature_constants
from tensorflow.python.saved_model import tag_constants as _tag_constants
from tensorflow.python.saved_model.load import load as _load
from tensorflow.python.util import deprecation as _deprecation
from tensorflow.python.util.tf_export import tf_export as _tf_export


@_tf_export("lite.Optimize")
class Optimize(enum.Enum):
  """Enum defining the optimizations to apply when generating tflite graphs.

  Some optimizations may come at the cost of accuracy.
  """

  # Default optimization strategy.
  #
  # Converter will do its best to improve size and latency based on the
  # information provided.
  # Enhanced optimizations can be gained by providing a representative_dataset.
  # This is recommended, and is currently equivalent to the modes below.
  # Currently, weights will be quantized and if representative_dataset is
  # provided, activations for quantizable operations will also be quantized.
  DEFAULT = "DEFAULT"

  # Optimize for size.
  #
  # Optimizations that reduce the size of the model.
  # The model size will be reduced.
  # Currently, weights will be quantized and if representative_dataset is
  # provided, activations for quantizable operations will also be quantized.
  OPTIMIZE_FOR_SIZE = "OPTIMIZE_FOR_SIZE"

  # Optimize for latency.
  #
  # Optimizations that reduce the latency of the model.
  # Currently, weights will be quantized and if representative_dataset is
  # provided, activations for quantizable operations will also be quantized.
  OPTIMIZE_FOR_LATENCY = "OPTIMIZE_FOR_LATENCY"

  def __str__(self):
    return self.value


@_tf_export("lite.RepresentativeDataset")
class RepresentativeDataset(object):
  """Representative dataset to evaluate optimizations.

  A representative dataset that can be used to evaluate optimizations by the
  converter. E.g. converter can use these examples to estimate (min, max) ranges
  by calibrating the model on inputs. This can allow converter to quantize a
  converted floating point model.
  """

  def __init__(self, input_gen):
    """Creates a representative dataset.

    Args:
      input_gen: an input generator that can be used to generate input samples
        for the model. This must be a callable object that returns an object
        that supports the `iter()` protocol (e.g. a generator function). The
        elements generated must have same type and shape as inputs to the model.
    """
    self.input_gen = input_gen


@_tf_export("lite.TargetSpec")
class TargetSpec(object):
  """Specification of target device.

  Details about target device. Converter optimizes the generated model for
  specific device.

  Attributes:
    supported_ops: Experimental flag, subject to change. Set of OpsSet options
      supported by the device. (default set([OpsSet.TFLITE_BUILTINS]))
  """

  def __init__(self, supported_ops=None):
    if supported_ops is None:
      supported_ops = set([OpsSet.TFLITE_BUILTINS])
    self.supported_ops = supported_ops


class TFLiteConverterBase(object):
  """Converter subclass to share functionality between V1 and V2 converters."""

  def __init__(self):
    self.representative_dataset = None
    self.optimizations = []
    self._target_ops = set([OpsSet.TFLITE_BUILTINS])

  def _grappler_config(self):
    is_only_flex_enabled = set([OpsSet.SELECT_TF_OPS]) == set(self._target_ops)
    optimizers = ["constfold"]
    if is_only_flex_enabled:
      # The layout optimizer turns NHCW to NCHW. This provides performance
      # optimizations when Flex mode is enabled. However, this is not compatible
      # with builtin ops.
      optimizers.append("layout")
    return _get_grappler_config(optimizers)

  def _validate_representative_dataset(self):
    if self.representative_dataset:
      if not isinstance(self.representative_dataset, RepresentativeDataset):
        self.representative_dataset = RepresentativeDataset(
            self.representative_dataset)
      if self.representative_dataset.input_gen is None:
        raise ValueError(
            "Provide an input generator for representative_dataset")
    elif self._int8_target_required():
      raise ValueError("representative_dataset is required when specifying "
                       "TFLITE_BUILTINS_INT8 target.")

  def _int8_target_required(self):
    return set([OpsSet.TFLITE_BUILTINS_INT8]) == set(self._target_ops)

  def _is_post_training_optimize(self):
    return (self._int8_target_required() or bool(
        set(self.optimizations).intersection([
            Optimize.OPTIMIZE_FOR_LATENCY, Optimize.OPTIMIZE_FOR_SIZE,
            Optimize.DEFAULT
        ])))

  def _is_weight_only_quantize(self):
    return (self._is_post_training_optimize() and
            (self.representative_dataset is None))

  def _is_calibration_quantize(self):
    return self._is_post_training_optimize() and self.representative_dataset

  def _calibrate_quantize_model(self, result, inference_input_type,
                                inference_output_type):
    allow_float = not self._int8_target_required()
    calibrate_quantize = _calibrator.Calibrator(result)
    return calibrate_quantize.calibrate_and_quantize(
        self.representative_dataset.input_gen, inference_input_type,
        inference_output_type, allow_float)


@_tf_export("lite.TFLiteConverter", v1=[])
class TFLiteConverterV2(TFLiteConverterBase):
  """Converts a TensorFlow model into TensorFlow Lite model.

  Attributes:
    allow_custom_ops: Boolean indicating whether to allow custom operations.
      When false any unknown operation is an error. When true, custom ops are
      created for any op that is unknown. The developer will need to provide
      these to the TensorFlow Lite runtime with a custom resolver.
      (default False)
    target_spec: Experimental flag, subject to change. Specification of target
      device.
    optimizations: Experimental flag, subject to change. A list of optimizations
      to apply when converting the model. E.g. `[Optimize.DEFAULT]
    representative_dataset: A representative dataset that can be used to
      generate input and output samples for the model. The converter can use the
      dataset to evaluate different optimizations.

  Example usage:

    ```python
    # Converting a SavedModel to a TensorFlow Lite model.
    converter = lite.TFLiteConverter.from_saved_model(saved_model_dir)
    tflite_model = converter.convert()

    # Converting a tf.Keras model to a TensorFlow Lite model.
    converter = lite.TFLiteConverter.from_keras_model(model)
    tflite_model = converter.convert()

    # Converting ConcreteFunctions to a TensorFlow Lite model.
    converter = lite.TFLiteConverter.from_concrete_functions([func])
    tflite_model = converter.convert()
    ```
  """

  def __init__(self, funcs, trackable_obj=None):
    """Constructor for TFLiteConverter.

    Args:
      funcs: List of TensorFlow ConcreteFunctions. The list should not contain
        duplicate elements.
      trackable_obj: tf.AutoTrackable object associated with `funcs`. A
        reference to this object needs to be maintained so that Variables do not
        get garbage collected since functions have a weak reference to
        Variables. This is only required when the tf.AutoTrackable object is not
        maintained by the user (e.g. `from_saved_model`).
    """
    super(TFLiteConverterV2, self).__init__()
    self._funcs = funcs
    self._trackable_obj = trackable_obj
    self.allow_custom_ops = False
    self.target_spec = TargetSpec()

  @classmethod
  def from_concrete_functions(cls, funcs):
    """Creates a TFLiteConverter object from ConcreteFunctions.

    Args:
      funcs: List of TensorFlow ConcreteFunctions. The list should not contain
        duplicate elements.

    Returns:
      TFLiteConverter object.

    Raises:
      Invalid input type.
    """
    for func in funcs:
      if not isinstance(func, _function.ConcreteFunction):
        message = "This function takes in a list of ConcreteFunction."
        if isinstance(func, _def_function.Function):
          message += (" To get the ConcreteFunction from a Function,"
                      " call from_concrete_function.")
        raise ValueError(message)
    return cls(funcs)

  @classmethod
  def from_saved_model(cls, saved_model_dir, signature_keys=None, tags=None):
    """Creates a TFLiteConverter object from a SavedModel directory.

    Args:
      saved_model_dir: SavedModel directory to convert.
      signature_keys: List of keys identifying SignatureDef containing inputs
        and outputs. Elements should not be duplicated. By default the
        `signatures` attribute of the MetaGraphdef is used. (default
        saved_model.signatures)
      tags: Set of tags identifying the MetaGraphDef within the SavedModel to
        analyze. All tags in the tag set must be present. (default set(SERVING))

    Returns:
      TFLiteConverter object.

    Raises:
      Invalid signature keys.
    """
    # Ensures any graphs created in Eager mode are able to run. This is required
    # in order to create a tf.estimator.Exporter that exports a TFLite model.
    with context.eager_mode():
      saved_model = _load(saved_model_dir, tags)
    if not signature_keys:
      signature_keys = saved_model.signatures

    funcs = []
    for key in signature_keys:
      if key not in saved_model.signatures:
        raise ValueError("Invalid signature key '{}' found. Valid keys are "
                         "'{}'.".format(key, ",".join(saved_model.signatures)))
      funcs.append(saved_model.signatures[key])

    return cls(funcs, saved_model)

  @classmethod
  def from_keras_model(cls, model):
    """Creates a TFLiteConverter object from a Keras model.

    Args:
      model: tf.Keras.Model

    Returns:
      TFLiteConverter object.
    """
    func = _saving_utils.trace_model_call(model)
    concrete_func = func.get_concrete_function()
    return cls([concrete_func])

  def convert(self):
    """Converts a TensorFlow GraphDef based on instance variables.

    Returns:
      The converted data in serialized format.

    Raises:
      ValueError:
        Multiple concrete functions are specified.
        Input shape is not specified.
        Invalid quantization parameters.
    """
    # TODO(b/130297984): Add support for converting multiple function.
    self._target_ops = self.target_spec.supported_ops
    if len(self._funcs) != 1:
      raise ValueError("This converter can only convert a single "
                       "ConcreteFunction. Converting multiple functions is "
                       "under development.")

    frozen_func = _convert_to_constants.convert_variables_to_constants_v2(
        self._funcs[0])
    input_tensors = [
        tensor for tensor in frozen_func.inputs
        if tensor.dtype != _dtypes.resource
    ]
    output_tensors = frozen_func.outputs

    # Run a Grappler pass.
    graph_def = frozen_func.graph.as_graph_def()
    graph_def = _run_graph_optimizations(
        graph_def,
        input_tensors,
        output_tensors,
        config=self._grappler_config(),
        graph=frozen_func.graph)

    # Checks dimensions in input tensor.
    for tensor in input_tensors:
      # Note that shape_list might be empty for scalar shapes.
      shape_list = tensor.shape.as_list()
      if None in shape_list[1:]:
        raise ValueError(
            "None is only supported in the 1st dimension. Tensor '{0}' has "
            "invalid shape '{1}'.".format(_get_tensor_name(tensor), shape_list))
      elif shape_list and shape_list[0] is None:
        # Set the batch size to 1 if undefined.
        shape = tensor.shape.as_list()
        shape[0] = 1
        tensor.set_shape(shape)

    self._validate_representative_dataset()

    converter_kwargs = {
        "input_format": constants.TENSORFLOW_GRAPHDEF,
        "allow_custom_ops": self.allow_custom_ops,
        "post_training_quantize": self._is_weight_only_quantize(),
        "target_ops": self.target_spec.supported_ops,
    }

    # Converts model.
    result = _toco_convert_impl(
        input_data=graph_def,
        input_tensors=input_tensors,
        output_tensors=output_tensors,
        **converter_kwargs)

    if self._is_calibration_quantize():
      result = self._calibrate_quantize_model(result, constants.FLOAT,
                                              constants.FLOAT)

    return result


@_tf_export(v1=["lite.TFLiteConverter"])
class TFLiteConverter(TFLiteConverterBase):
  """Convert a TensorFlow model into `output_format`.

  This is used to convert from a TensorFlow GraphDef or SavedModel into either a
  TFLite FlatBuffer or graph visualization.

  Attributes:
    inference_type: Target data type of real-number arrays in the output file.
      Must be `{tf.float32, tf.uint8}`. If `optimzations` are provided, this
      parameter is ignored. (default tf.float32)
    inference_input_type: Target data type of real-number input arrays. Allows
      for a different type for input arrays.
      If an integer type is provided and `optimizations` are not used,
      `quantized_inputs_stats` must be provided.
      If `inference_type` is tf.uint8, signaling conversion to a fully quantized
      model from a quantization-aware trained input model, then
      `inference_input_type` defaults to tf.uint8.
      In all other cases, `inference_input_type` defaults to tf.float32.
      Must be `{tf.float32, tf.uint8, tf.int8}`
    inference_output_type: Target data type of real-number output arrays. Allows
      for a different type for output arrays.
      If `inference_type` is tf.uint8, signaling conversion to a fully quantized
      model from a quantization-aware trained output model, then
      `inference_output_type` defaults to tf.uint8.
      In all other cases, `inference_output_type` must be tf.float32, an error
      will be thrown otherwise.
      Must be `{tf.float32, tf.uint8, tf.int8}`
    output_format: Output file format. Currently must be `{TFLITE,
      GRAPHVIZ_DOT}`. (default TFLITE)
    quantized_input_stats: Dict of strings representing input tensor names
      mapped to tuple of floats representing the mean and standard deviation
      of the training data (e.g., {"foo" : (0., 1.)}). Only need if
      `inference_input_type` is `QUANTIZED_UINT8`.
      real_input_value = (quantized_input_value - mean_value) / std_dev_value.
      (default {})
    default_ranges_stats: Tuple of integers representing (min, max) range values
      for all arrays without a specified range. Intended for experimenting with
      quantization via "dummy quantization". (default None)
    drop_control_dependency: Boolean indicating whether to drop control
      dependencies silently. This is due to TFLite not supporting control
      dependencies. (default True)
    reorder_across_fake_quant: Boolean indicating whether to reorder FakeQuant
      nodes in unexpected locations. Used when the location of the FakeQuant
      nodes is preventing graph transformations necessary to convert the graph.
      Results in a graph that differs from the quantized training graph,
      potentially causing differing arithmetic behavior. (default False)
    change_concat_input_ranges: Boolean to change behavior of min/max ranges for
      inputs and outputs of the concat operator for quantized models. Changes
      the ranges of concat operator overlap when true. (default False)
    allow_custom_ops: Boolean indicating whether to allow custom operations.
      When false any unknown operation is an error. When true, custom ops are
      created for any op that is unknown. The developer will need to provide
      these to the TensorFlow Lite runtime with a custom resolver.
      (default False)
    post_training_quantize: deprecated, please specify
     `[Optimize.DEFAULT]` for `optimizations` instead. Boolean
     indicating whether to quantize the weights of the converted float model.
     Model size will be reduced and there will be latency improvements
     (at the cost of accuracy). (default False)
    dump_graphviz_dir: Full filepath of folder to dump the graphs at various
      stages of processing GraphViz .dot files. Preferred over
      --output_format=GRAPHVIZ_DOT in order to keep the requirements of the
      output file. (default None)
    dump_graphviz_video: Boolean indicating whether to dump the graph after
      every graph transformation. (default False)
    target_ops: Experimental flag, subject to change. Set of OpsSet
      options indicating which converter to use.
      (default set([OpsSet.TFLITE_BUILTINS]))
    optimizations: Experimental flag, subject to change. A list of optimizations
      to apply when converting the model. E.g. `[Optimize.DEFAULT]`
    representative_dataset: A representative dataset that can be used to
      generate input and output samples for the model. The converter can use
      the dataset to evaluate different optimizations.

  Example usage:

    ```python
    # Converting a GraphDef from session.
    converter = lite.TFLiteConverter.from_session(sess, in_tensors, out_tensors)
    tflite_model = converter.convert()
    open("converted_model.tflite", "wb").write(tflite_model)

    # Converting a GraphDef from file.
    converter = lite.TFLiteConverter.from_frozen_graph(
      graph_def_file, input_arrays, output_arrays)
    tflite_model = converter.convert()
    open("converted_model.tflite", "wb").write(tflite_model)

    # Converting a SavedModel.
    converter = lite.TFLiteConverter.from_saved_model(saved_model_dir)
    tflite_model = converter.convert()

    # Converting a tf.keras model.
    converter = lite.TFLiteConverter.from_keras_model_file(keras_model)
    tflite_model = converter.convert()
    ```
  """

  def __init__(self,
               graph_def,
               input_tensors,
               output_tensors,
               input_arrays_with_shape=None,
               output_arrays=None):
    """Constructor for TFLiteConverter.

    Args:
      graph_def: Frozen TensorFlow GraphDef.
      input_tensors: List of input tensors. Type and shape are computed using
        `foo.shape` and `foo.dtype`.
      output_tensors: List of output tensors (only .name is used from this).
      input_arrays_with_shape: Tuple of strings representing input tensor names
        and list of integers representing input shapes
        (e.g., [("foo" : [1, 16, 16, 3])]). Use only when graph cannot be loaded
          into TensorFlow and when `input_tensors` and `output_tensors` are
          None. (default None)
      output_arrays: List of output tensors to freeze graph with. Use only when
        graph cannot be loaded into TensorFlow and when `input_tensors` and
        `output_tensors` are None. (default None)

    Raises:
      ValueError: Invalid arguments.
    """
    super(TFLiteConverter, self).__init__()
    self._graph_def = graph_def
    self._input_tensors = input_tensors
    self._output_tensors = output_tensors
    self.inference_type = constants.FLOAT
    self.inference_input_type = None
    self.inference_output_type = None
    self.output_format = constants.TFLITE
    self.quantized_input_stats = {}
    self.default_ranges_stats = None
    self.drop_control_dependency = True
    self.reorder_across_fake_quant = False
    self.change_concat_input_ranges = False
    self.allow_custom_ops = False
    self._post_training_quantize = False
    self.dump_graphviz_dir = None
    self.dump_graphviz_video = False
    self.target_ops = set([OpsSet.TFLITE_BUILTINS])

    # Attributes are used by models that cannot be loaded into TensorFlow.
    if not self._has_valid_tensors():
      if not input_arrays_with_shape or not output_arrays:
        raise ValueError(
            "If input_tensors and output_tensors are None, both "
            "input_arrays_with_shape and output_arrays must be defined.")
      self._input_arrays_with_shape = input_arrays_with_shape
      self._output_arrays = output_arrays

  @classmethod
  def from_session(cls, sess, input_tensors, output_tensors):
    """Creates a TFLiteConverter class from a TensorFlow Session.

    Args:
      sess: TensorFlow Session.
      input_tensors: List of input tensors. Type and shape are computed using
        `foo.shape` and `foo.dtype`.
      output_tensors: List of output tensors (only .name is used from this).

    Returns:
      TFLiteConverter class.
    """
    graph_def = _freeze_graph(sess, input_tensors, output_tensors)
    return cls(graph_def, input_tensors, output_tensors)

  @classmethod
  def from_frozen_graph(cls,
                        graph_def_file,
                        input_arrays,
                        output_arrays,
                        input_shapes=None):
    """Creates a TFLiteConverter class from a file containing a frozen GraphDef.

    Args:
      graph_def_file: Full filepath of file containing frozen GraphDef.
      input_arrays: List of input tensors to freeze graph with.
      output_arrays: List of output tensors to freeze graph with.
      input_shapes: Dict of strings representing input tensor names to list of
        integers representing input shapes (e.g., {"foo" : [1, 16, 16, 3]}).
        Automatically determined when input shapes is None (e.g., {"foo" :
          None}). (default None)

    Returns:
      TFLiteConverter class.

    Raises:
      IOError:
        File not found.
        Unable to parse input file.
      ValueError:
        The graph is not frozen.
        input_arrays or output_arrays contains an invalid tensor name.
        input_shapes is not correctly defined when required
    """
    with _ops.Graph().as_default():
      with _session.Session() as sess:
        # Read GraphDef from file.
        if not _file_io.file_exists(graph_def_file):
          raise IOError("File '{0}' does not exist.".format(graph_def_file))
        with _file_io.FileIO(graph_def_file, "rb") as f:
          file_content = f.read()

        try:
          graph_def = _graph_pb2.GraphDef()
          graph_def.ParseFromString(file_content)
        except (_text_format.ParseError, DecodeError):
          try:
            print("Ignore 'tcmalloc: large alloc' warnings.")

            if not isinstance(file_content, str):
              if PY3:
                file_content = file_content.decode("utf-8")
              else:
                file_content = file_content.encode("utf-8")
            graph_def = _graph_pb2.GraphDef()
            _text_format.Merge(file_content, graph_def)
          except (_text_format.ParseError, DecodeError):
            raise IOError(
                "Unable to parse input file '{}'.".format(graph_def_file))

        # Handles models with custom TFLite ops that cannot be resolved in
        # TensorFlow.
        load_model_in_session = True
        try:
          _import_graph_def(graph_def, name="")
        except _NotFoundError:
          load_model_in_session = False

        if load_model_in_session:
          # Check if graph is frozen.
          if not _is_frozen_graph(sess):
            raise ValueError("Please freeze the graph using freeze_graph.py.")

          # Get input and output tensors.
          input_tensors = _get_tensors_from_tensor_names(
              sess.graph, input_arrays)
          output_tensors = _get_tensors_from_tensor_names(
              sess.graph, output_arrays)
          _set_tensor_shapes(input_tensors, input_shapes)

          return cls(sess.graph_def, input_tensors, output_tensors)
        else:
          if not input_shapes:
            raise ValueError("input_shapes must be defined for this model.")
          if set(input_arrays) != set(input_shapes.keys()):
            raise ValueError("input_shapes must contain a value for each item "
                             "in input_array.")

          input_arrays_with_shape = [
              (name, input_shapes[name]) for name in input_arrays
          ]
          return cls(
              graph_def,
              input_tensors=None,
              output_tensors=None,
              input_arrays_with_shape=input_arrays_with_shape,
              output_arrays=output_arrays)

  @classmethod
  def from_saved_model(cls,
                       saved_model_dir,
                       input_arrays=None,
                       input_shapes=None,
                       output_arrays=None,
                       tag_set=None,
                       signature_key=None):
    """Creates a TFLiteConverter class from a SavedModel.

    Args:
      saved_model_dir: SavedModel directory to convert.
      input_arrays: List of input tensors to freeze graph with. Uses input
        arrays from SignatureDef when none are provided. (default None)
      input_shapes: Dict of strings representing input tensor names to list of
        integers representing input shapes (e.g., {"foo" : [1, 16, 16, 3]}).
        Automatically determined when input shapes is None (e.g., {"foo" :
          None}). (default None)
      output_arrays: List of output tensors to freeze graph with. Uses output
        arrays from SignatureDef when none are provided. (default None)
      tag_set: Set of tags identifying the MetaGraphDef within the SavedModel to
        analyze. All tags in the tag set must be present. (default set("serve"))
      signature_key: Key identifying SignatureDef containing inputs and outputs.
        (default DEFAULT_SERVING_SIGNATURE_DEF_KEY)

    Returns:
      TFLiteConverter class.
    """
    if tag_set is None:
      tag_set = set([_tag_constants.SERVING])
    if signature_key is None:
      signature_key = _signature_constants.DEFAULT_SERVING_SIGNATURE_DEF_KEY

    result = _freeze_saved_model(saved_model_dir, input_arrays, input_shapes,
                                 output_arrays, tag_set, signature_key)
    return cls(
        graph_def=result[0], input_tensors=result[1], output_tensors=result[2])

  @classmethod
  def from_keras_model_file(cls,
                            model_file,
                            input_arrays=None,
                            input_shapes=None,
                            output_arrays=None,
                            custom_objects=None):
    """Creates a TFLiteConverter class from a tf.keras model file.

    Args:
      model_file: Full filepath of HDF5 file containing the tf.keras model.
      input_arrays: List of input tensors to freeze graph with. Uses input
        arrays from SignatureDef when none are provided. (default None)
      input_shapes: Dict of strings representing input tensor names to list of
        integers representing input shapes (e.g., {"foo" : [1, 16, 16, 3]}).
        Automatically determined when input shapes is None (e.g., {"foo" :
          None}). (default None)
      output_arrays: List of output tensors to freeze graph with. Uses output
        arrays from SignatureDef when none are provided. (default None)
      custom_objects: Dict mapping names (strings) to custom classes or
        functions to be considered during model deserialization. (default None)

    Returns:
      TFLiteConverter class.
    """
    # Handles Keras when Eager mode is enabled.
    if context.executing_eagerly():
      if input_arrays or output_arrays:
        raise ValueError("`input_arrays` and `output_arrays` are unsupported "
                         "with Eager mode. If your model requires any of these "
                         "parameters, please use disable_eager_execution().")

      _keras.backend.set_learning_phase(False)
      keras_model = _keras.models.load_model(model_file, custom_objects)

      function = _saving_utils.trace_model_call(keras_model)
      concrete_func = function.get_concrete_function()

      frozen_func = _convert_to_constants.convert_variables_to_constants_v2(
          concrete_func)
      _set_tensor_shapes(frozen_func.inputs, input_shapes)
      return cls(frozen_func.graph.as_graph_def(), frozen_func.inputs,
                 frozen_func.outputs)

    # Handles Keras when Eager mode is disabled.
    _keras.backend.clear_session()
    _keras.backend.set_learning_phase(False)
    keras_model = _keras.models.load_model(model_file, custom_objects)
    sess = _keras.backend.get_session()

    # Get input and output tensors.
    if input_arrays:
      input_tensors = _get_tensors_from_tensor_names(sess.graph, input_arrays)
    else:
      input_tensors = keras_model.inputs

    if output_arrays:
      output_tensors = _get_tensors_from_tensor_names(sess.graph, output_arrays)
    else:
      output_tensors = keras_model.outputs
    _set_tensor_shapes(input_tensors, input_shapes)

    graph_def = _freeze_graph(sess, input_tensors, output_tensors)
    return cls(graph_def, input_tensors, output_tensors)

  def __setattr__(self, name, value):
    if name == "post_training_quantize":
      warnings.warn("Property %s is deprecated, "
                    "please use optimizations=[Optimize.DEFAULT]"
                    " instead." % name)
      if value:
        self.optimizations = [Optimize.DEFAULT]
      else:
        self.optimizations = []
      return
    object.__setattr__(self, name, value)

  def __getattribute__(self, name):
    if name == "post_training_quantize":
      warnings.warn("Property %s is deprecated, "
                    "please use optimizations=[Optimize.DEFAULT]"
                    " instead." % name)
      return Optimize.DEFAULT in set(self.optimizations)
    return object.__getattribute__(self, name)

  def convert(self):
    """Converts a TensorFlow GraphDef based on instance variables.

    Returns:
      The converted data in serialized format. Either a TFLite Flatbuffer or a
      Graphviz graph depending on value in `output_format`.

    Raises:
      ValueError:
        Input shape is not specified.
        None value for dimension in input_tensor.
    """
    self._target_ops = self.target_ops
    # Checks dimensions in input tensor.
    if self._has_valid_tensors():
      for tensor in self._input_tensors:
        shape = tensor.shape
        if not shape:
          raise ValueError("Provide an input shape for input array "
                           "'{0}'.".format(_get_tensor_name(tensor)))
        # Note that shape_list might be empty for scalar shapes.
        shape_list = shape.as_list()
        if None in shape_list[1:]:
          raise ValueError(
              "None is only supported in the 1st dimension. Tensor '{0}' has "
              "invalid shape '{1}'.".format(
                  _get_tensor_name(tensor), shape_list))
        elif shape_list and shape_list[0] is None:
          self._set_batch_size(batch_size=1)

    # Get quantization stats. Ensures there is one stat per name if the stats
    # are specified.
    if self.quantized_input_stats:
      quantized_stats = []
      invalid_stats = []
      for name in self.get_input_arrays():
        if name in self.quantized_input_stats:
          quantized_stats.append(self.quantized_input_stats[name])
        else:
          invalid_stats.append(name)

      if invalid_stats:
        raise ValueError("Quantization input stats are not available for input "
                         "tensors '{0}'.".format(",".join(invalid_stats)))
    else:
      quantized_stats = None

    self._validate_representative_dataset()

    toco_inference_input_type = self.inference_input_type
    inference_input_type = self.inference_input_type
    inference_output_type = self.inference_output_type
    post_training_optimize = self._is_post_training_optimize()
    if post_training_optimize:
      # Post training optimizations require that TOCO outputs a float model.
      if self.inference_type != constants.FLOAT:
        raise ValueError(
            "`optimizations` require that `inference_type` is set to float.")
      toco_inference_input_type = constants.FLOAT
      # Set up default values.
      if inference_input_type is None:
        inference_input_type = constants.FLOAT
      if inference_output_type is None:
        inference_output_type = constants.FLOAT

    weight_only_quantize = self._is_weight_only_quantize()
    if weight_only_quantize:
      # Currently, weight only quantization requires float inputs and outputs.
      if (inference_input_type != constants.FLOAT or
          inference_output_type != constants.FLOAT):
        raise ValueError(
            "Provide an inference_input_type and inference_output_type of type "
            "tf.float32.")

    if not post_training_optimize and self.inference_output_type is not None:
      raise ValueError(
          "inference_output_type is currently not supported if optimizations "
          "are not enabled.")

    converter_kwargs = {
        "inference_type": self.inference_type,
        "inference_input_type": toco_inference_input_type,
        "input_format": constants.TENSORFLOW_GRAPHDEF,
        "output_format": self.output_format,
        "quantized_input_stats": quantized_stats,
        "default_ranges_stats": self.default_ranges_stats,
        "drop_control_dependency": self.drop_control_dependency,
        "reorder_across_fake_quant": self.reorder_across_fake_quant,
        "change_concat_input_ranges": self.change_concat_input_ranges,
        "allow_custom_ops": self.allow_custom_ops,
        "post_training_quantize": weight_only_quantize,
        "target_ops": self.target_ops,
        "dump_graphviz_dir": self.dump_graphviz_dir,
        "dump_graphviz_video": self.dump_graphviz_video
    }

    optimized_graph = self._graph_def
    if self.inference_type != constants.QUANTIZED_UINT8:
      try:
        optimized_graph = _run_graph_optimizations(
            self._graph_def,
            self._input_tensors,
            self._output_tensors,
            config=self._grappler_config())
      except Exception:
        optimized_graph = self._graph_def

    # Converts model.
    if self._has_valid_tensors():
      result = _toco_convert_impl(
          input_data=optimized_graph,
          input_tensors=self._input_tensors,
          output_tensors=self._output_tensors,
          **converter_kwargs)
    else:
      result = _toco_convert_graph_def(
          input_data=optimized_graph,
          input_arrays_with_shape=self._input_arrays_with_shape,
          output_arrays=self._output_arrays,
          **converter_kwargs)

    if self._is_calibration_quantize():
      result = self._calibrate_quantize_model(result, inference_input_type,
                                              inference_output_type)

    return result

  def get_input_arrays(self):
    """Returns a list of the names of the input tensors.

    Returns:
      List of strings.
    """
    if self._has_valid_tensors():
      return [_get_tensor_name(tensor) for tensor in self._input_tensors]
    else:
      return [name for name, _ in self._input_arrays_with_shape]

  def _has_valid_tensors(self):
    """Checks if the input and output tensors have been initialized.

    Returns:
      Bool.
    """
    return self._input_tensors and self._output_tensors

  def _set_batch_size(self, batch_size):
    """Sets the first dimension of the input tensor to `batch_size`.

    Args:
      batch_size: Batch size for the model. Replaces the first dimension of an
        input size array if undefined. (default 1)

    Raises:
      ValueError: input_tensor is not defined.
    """
    if not self._has_valid_tensors():
      raise ValueError("The batch size cannot be set for this model. Please "
                       "use input_shapes parameter.")

    for tensor in self._input_tensors:
      shape = tensor.shape.as_list()
      shape[0] = batch_size
      tensor.set_shape(shape)


@_tf_export(v1=["lite.TocoConverter"])
class TocoConverter(object):
  """Convert a TensorFlow model into `output_format` using TOCO.

  This class has been deprecated. Please use `lite.TFLiteConverter` instead.
  """

  @classmethod
  @_deprecation.deprecated(None,
                           "Use `lite.TFLiteConverter.from_session` instead.")
  def from_session(cls, sess, input_tensors, output_tensors):
    """Creates a TocoConverter class from a TensorFlow Session."""
    return TFLiteConverter.from_session(sess, input_tensors, output_tensors)

  @classmethod
  @_deprecation.deprecated(
      None, "Use `lite.TFLiteConverter.from_frozen_graph` instead.")
  def from_frozen_graph(cls,
                        graph_def_file,
                        input_arrays,
                        output_arrays,
                        input_shapes=None):
    """Creates a TocoConverter class from a file containing a frozen graph."""
    return TFLiteConverter.from_frozen_graph(graph_def_file, input_arrays,
                                             output_arrays, input_shapes)

  @classmethod
  @_deprecation.deprecated(
      None, "Use `lite.TFLiteConverter.from_saved_model` instead.")
  def from_saved_model(cls,
                       saved_model_dir,
                       input_arrays=None,
                       input_shapes=None,
                       output_arrays=None,
                       tag_set=None,
                       signature_key=None):
    """Creates a TocoConverter class from a SavedModel."""
    return TFLiteConverter.from_saved_model(saved_model_dir, input_arrays,
                                            input_shapes, output_arrays,
                                            tag_set, signature_key)

  @classmethod
  @_deprecation.deprecated(
      None, "Use `lite.TFLiteConverter.from_keras_model_file` instead.")
  def from_keras_model_file(cls,
                            model_file,
                            input_arrays=None,
                            input_shapes=None,
                            output_arrays=None):
    """Creates a TocoConverter class from a tf.keras model file."""
    return TFLiteConverter.from_keras_model_file(model_file, input_arrays,
                                                 input_shapes, output_arrays)