Beispiel #1
0
def build_estimator(tf_transform_dir, config, hidden_units=None):
  """Build an estimator for predicting the tipping behavior of taxi riders.

  Args:
    tf_transform_dir: directory in which the tf-transform model was written
      during the preprocessing step.
    config: tf.contrib.learn.RunConfig defining the runtime environment for the
      estimator (including model_dir).
    hidden_units: [int], the layer sizes of the DNN (input layer first)

  Returns:
    Resulting DNNLinearCombinedClassifier.
  """
  metadata_dir = os.path.join(tf_transform_dir,
                              transform_fn_io.TRANSFORMED_METADATA_DIR)
  transformed_metadata = metadata_io.read_metadata(metadata_dir)
  transformed_feature_spec = transformed_metadata.schema.as_feature_spec()

  transformed_feature_spec.pop(taxi.transformed_name(taxi.LABEL_KEY))

  real_valued_columns = [
      tf.feature_column.numeric_column(key, shape=())
      for key in taxi.transformed_names(taxi.DENSE_FLOAT_FEATURE_KEYS)
  ]
  categorical_columns = [
      tf.feature_column.categorical_column_with_identity(
          key, num_buckets=taxi.VOCAB_SIZE + taxi.OOV_SIZE, default_value=0)
      for key in taxi.transformed_names(taxi.VOCAB_FEATURE_KEYS)
  ]
  categorical_columns += [
      tf.feature_column.categorical_column_with_identity(
          key, num_buckets=taxi.FEATURE_BUCKET_COUNT, default_value=0)
      for key in taxi.transformed_names(taxi.BUCKET_FEATURE_KEYS)
  ]
  categorical_columns += [
      tf.feature_column.categorical_column_with_identity(
          key, num_buckets=num_buckets, default_value=0)
      for key, num_buckets in zip(
          taxi.transformed_names(taxi.CATEGORICAL_FEATURE_KEYS),  #
          taxi.MAX_CATEGORICAL_FEATURE_VALUES)
  ]
  return tf.estimator.DNNLinearCombinedClassifier(
      config=config,
      linear_feature_columns=categorical_columns,
      dnn_feature_columns=real_valued_columns,
      dnn_hidden_units=hidden_units or [100, 70, 50, 25])
Beispiel #2
0
def build_estimator(tf_transform_output, config, hidden_units=None):
  """Build an estimator for predicting the tipping behavior of taxi riders.

  Args:
    tf_transform_output: A TFTransformOutput.
    config: tf.contrib.learn.RunConfig defining the runtime environment for the
      estimator (including model_dir).
    hidden_units: [int], the layer sizes of the DNN (input layer first)

  Returns:
    Resulting DNNLinearCombinedClassifier.
  """
  transformed_feature_spec = (
      tf_transform_output.transformed_feature_spec().copy())

  transformed_feature_spec.pop(taxi.transformed_name(taxi.LABEL_KEY))

  real_valued_columns = [
      tf.feature_column.numeric_column(key, shape=())
      for key in taxi.transformed_names(taxi.DENSE_FLOAT_FEATURE_KEYS)
  ]
  categorical_columns = [
      tf.feature_column.categorical_column_with_identity(
          key, num_buckets=taxi.VOCAB_SIZE + taxi.OOV_SIZE, default_value=0)
      for key in taxi.transformed_names(taxi.VOCAB_FEATURE_KEYS)
  ]
  categorical_columns += [
      tf.feature_column.categorical_column_with_identity(
          key, num_buckets=taxi.FEATURE_BUCKET_COUNT, default_value=0)
      for key in taxi.transformed_names(taxi.BUCKET_FEATURE_KEYS)
  ]
  categorical_columns += [
      tf.feature_column.categorical_column_with_identity(
          key, num_buckets=num_buckets, default_value=0)
      for key, num_buckets in zip(
          taxi.transformed_names(taxi.CATEGORICAL_FEATURE_KEYS),  #
          taxi.MAX_CATEGORICAL_FEATURE_VALUES)
  ]
  return tf.estimator.DNNLinearCombinedClassifier(
      config=config,
      linear_feature_columns=categorical_columns,
      dnn_feature_columns=real_valued_columns,
      dnn_hidden_units=hidden_units or [100, 70, 50, 25])