(已解决)Tensorflow联合| tff.learning.from_keras_model(),带有带有DenseFeature层和多个输入的模型

问题描述 投票:0回答:1

我正在尝试联合具有多个输入的keras模型。这些输入中的一些是分类的,其中一些是数字的,因此我有一些DenseFeature层可以嵌入值。

问题是使用tff.learning.from_keras_model()期望只有2个元素(x,y)的字典作为input_spec,但是我有多个输入,然后我必须在模型中进行区分才能执行正确嵌入feature_columns函数和DenseFeature图层。

如果模型仅接受“ x”作为输入而没有正确的列名,该如何处理单个要素列?

谢谢

这里是代码和错误:

def create_keras_model():
  l = tf.keras.layers

  # handling numerical columns 
  for header in numerical_column_names:
    feature_columns.append(feature_column.numeric_column(header))

  # handling the categorical feature  
  pickup = feature_column.categorical_column_with_vocabulary_list(
      'pickup_location_id', [i for i in range(number_of_locations)])
  #pickup_one_hot = feature_column.indicator_column(pickup)
  #feature_columns.append(pickup_one_hot)

  pickup_embedding = feature_column.embedding_column(pickup, dimension=64)
  #feature_columns.append(pickup_embedding)


  feature_inputs = {
    'pickup_week_day_sin': tf.keras.Input((1,), name='pickup_week_day_sin'),
    'pickup_week_day_cos': tf.keras.Input((1,), name='pickup_week_day_cos'),
    'pickup_hour_sin': tf.keras.Input((1,), name='pickup_hour_sin'),
    'pickup_hour_cos': tf.keras.Input((1,), name='pickup_hour_cos'),
    'pickup_month_sin': tf.keras.Input((1,), name='pickup_month_sin'),
    'pickup_month_cos': tf.keras.Input((1,), name='pickup_month_cos'),
  }
  numerical_features = l.DenseFeatures(feature_columns)(feature_inputs)#{'x': a}

  location_input = {
      'pickup_location_id': tf.keras.Input((1,), dtype=tf.dtypes.int32, name='pickup_location_id'),
  }
  categorical_features = l.DenseFeatures(pickup_embedding)(location_input)#{'x': a}
  #i = l.Input(shape=(64+6,))

  #embedded_lookup_feature = tf.feature_column.numeric_column('x', shape=(784))
  conca = l.Concatenate()([categorical_features, numerical_features])

  dense = l.Dense(128, activation='relu')(conca)
  dense_1 = l.Dense(128, activation='relu')(dense)
  dense_2 = layers.Dense(number_of_locations, kernel_initializer='zeros')(dense_1)
  output = l.Softmax()(dense_2)

  inputs = list(feature_inputs.values()) + list(location_input.values())
  return tf.keras.Model(inputs=inputs, outputs=output)

input_spec = preprocessed_example_dataset.element_spec
def model_fn():
  # We _must_ create a new model here, and _not_ capture it from an external
  # scope. TFF will call this within different graph contexts.
  keras_model = create_keras_model()
  return tff.learning.from_keras_model(
      keras_model,
      input_spec=input_spec,
      loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
      metrics=[tf.keras.metrics.SparseCategoricalAccuracy()]
      )

调用时出错:

ValueError: The top-level structure in `dummy_batch` or `input_spec` must contain exactly two elements, as it must contain type information for both inputs to and predictions from the model.

preprocessed_example_dataset.element_spec:

OrderedDict([('pickup_location_id',
              TensorSpec(shape=(None,), dtype=tf.int32, name=None)),
             ('pickup_hour_sin',
              TensorSpec(shape=(None,), dtype=tf.float32, name=None)),
             ('pickup_hour_cos',
              TensorSpec(shape=(None,), dtype=tf.float32, name=None)),
             ('pickup_week_day_sin',
              TensorSpec(shape=(None,), dtype=tf.float32, name=None)),
             ('pickup_week_day_cos',
              TensorSpec(shape=(None,), dtype=tf.float32, name=None)),
             ('pickup_month_sin',
              TensorSpec(shape=(None,), dtype=tf.float32, name=None)),
             ('pickup_month_cos',
              TensorSpec(shape=(None,), dtype=tf.float32, name=None)),
             ('y', TensorSpec(shape=(None,), dtype=tf.int32, name=None))])
python tensorflow keras tensorflow2.0 tensorflow-federated
1个回答
0
投票
方法是使用我们要作为输入的列的名称作为键,使orderedDict的'x'值成为orderedDict本身。

此处给出一个具体示例:https://github.com/tensorflow/federated/blob/3b5a551c46e7eab61e40c943390868fca6422e21/tensorflow_federated/python/learning/keras_utils_test.py#L283

定义输入规范的位置:

input_spec = collections.OrderedDict( x=collections.OrderedDict( a=tf.TensorSpec(shape=[None, 1], dtype=tf.float32), b=tf.TensorSpec(shape=[1, 1], dtype=tf.float32)), y=tf.TensorSpec(shape=[None, 1], dtype=tf.float32)) model = model_examples.build_multiple_inputs_keras_model()

将在模型中定义为:
def build_multiple_inputs_keras_model(): """Builds a test model with two inputs.""" l = tf.keras.layers a = l.Input((1,), name='a') b = l.Input((1,), name='b') # Each input has a single, independent dense layer, which are combined into # a final dense layer. output = l.Dense(1)( l.concatenate([ l.Dense(1)(a), l.Dense(1)(b), ])) return tf.keras.Model(inputs={'a': a, 'b': b}, outputs=[output])
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