tf.feature_column.input_layer
Returns a dense Tensor
as input layer based on given feature_columns
.
tf.feature_column.input_layer( features, feature_columns, weight_collections=None, trainable=True, cols_to_vars=None, cols_to_output_tensors=None )
Generally a single example in training data is described with FeatureColumns. At the first layer of the model, this column oriented data should be converted to a single Tensor
.
Example:
price = numeric_column('price') keywords_embedded = embedding_column( categorical_column_with_hash_bucket("keywords", 10K), dimensions=16) columns = [price, keywords_embedded, ...] features = tf.io.parse_example(..., features=make_parse_example_spec(columns)) dense_tensor = input_layer(features, columns) for units in [128, 64, 32]: dense_tensor = tf.compat.v1.layers.dense(dense_tensor, units, tf.nn.relu) prediction = tf.compat.v1.layers.dense(dense_tensor, 1)
Args | |
---|---|
features | A mapping from key to tensors. _FeatureColumn s look up via these keys. For example numeric_column('price') will look at 'price' key in this dict. Values can be a SparseTensor or a Tensor depends on corresponding _FeatureColumn . |
feature_columns | An iterable containing the FeatureColumns to use as inputs to your model. All items should be instances of classes derived from _DenseColumn such as numeric_column , embedding_column , bucketized_column , indicator_column . If you have categorical features, you can wrap them with an embedding_column or indicator_column . |
weight_collections | A list of collection names to which the Variable will be added. Note that variables will also be added to collections tf.GraphKeys.GLOBAL_VARIABLES and ops.GraphKeys.MODEL_VARIABLES . |
trainable | If True also add the variable to the graph collection GraphKeys.TRAINABLE_VARIABLES (see tf.Variable ). |
cols_to_vars | If not None , must be a dictionary that will be filled with a mapping from _FeatureColumn to list of Variable s. For example, after the call, we might have cols_to_vars = {_EmbeddingColumn( categorical_column=_HashedCategoricalColumn( key='sparse_feature', hash_bucket_size=5, dtype=tf.string), dimension=10): [ |
cols_to_output_tensors | If not None , must be a dictionary that will be filled with a mapping from '_FeatureColumn' to the associated output Tensor s. |
Returns | |
---|---|
A Tensor which represents input layer of a model. Its shape is (batch_size, first_layer_dimension) and its dtype is float32 . first_layer_dimension is determined based on given feature_columns . |
Raises | |
---|---|
ValueError | if an item in feature_columns is not a _DenseColumn . |
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Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r1.15/api_docs/python/tf/feature_column/input_layer