Tensorflow's feature_columns API is quite useful for non-numerical feature processing. However, the current API doc is more about using feature_columns with tensorflow Estimator. Is there a possible way to use feature_columns for categorical features representation and then build a model based on tf.keras?

The only reference I found is the following tutorial. It shows how to feed feature columns to a Keras Sequential model: Link

The code snippet is as follows:

from tensorflow.python.feature_column import feature_column_v2 as fc

feature_columns = [fc.embedding_column(ccv, dimension=3), ...]
feature_layer = fc.FeatureLayer(feature_columns)
model = tf.keras.Sequential([
    tf.keras.layers.Dense(128, activation=tf.nn.relu),
    tf.keras.layers.Dense(64, activation=tf.nn.relu),
    tf.keras.layers.Dense(1, activation=tf.nn.sigmoid)
model.fit(dataset, steps_per_epoch=8) # dataset is created from tensorflow Dataset API

The question is how to use a customed model with keras functional model API. I tried the following, but it did not work (tensorflow version 1.12)

feature_layer = fc.FeatureLayer(feature_columns)
dense_features = feature_layer(features) # features is a dict of ndarrays in dataset
layer1 = tf.keras.layers.Dense(128, activation=tf.nn.relu)(dense_features)
layer2 = tf.keras.layers.Dense(64, activation=tf.nn.relu)(layer1)
output = tf.keras.layers.Dense(1, activation=tf.nn.sigmoid)(layer2)
model = Model(inputs=dense_features, outputs=output)

The error log:

ValueError: Input tensors to a Model must come from `tf.layers.Input`. Received: Tensor("feature_layer/concat:0", shape=(4, 3), dtype=float32) (missing previous layer metadata).

I don't kown how to transform feature columns to keras model's input.

4 Answers 4


The behavior you desire could be achieved and it's able to combine tf.feature_column and keras functional API. And, actually, is not mentioned in TF docs.

This works at least in TF 2.0.0-beta1, but may being changed or even simplified in further releases.

Please check out issue in TensorFlow github repository Unable to use FeatureColumn with Keras Functional API #27416. There you will find useful comments about tf.feature_column and Keras Functional API.

Because you ask about general approach I would just copy the snippet with example from the link above. update: the code below should work

from __future__ import absolute_import, division, print_function

import numpy as np
import pandas as pd

#!pip install tensorflow==2.0.0-alpha0
import tensorflow as tf

from tensorflow import feature_column
from tensorflow import keras
from tensorflow.keras import layers
from sklearn.model_selection import train_test_split

csv_file = tf.keras.utils.get_file('heart.csv', 'https://storage.googleapis.com/download.tensorflow.org/data/heart.csv')
dataframe = pd.read_csv(csv_file, nrows = 10000)

train, test = train_test_split(dataframe, test_size=0.2)
train, val = train_test_split(train, test_size=0.2)
print(len(train), 'train examples')
print(len(val), 'validation examples')
print(len(test), 'test examples')

# Define method to create tf.data dataset from Pandas Dataframe
# This worked with tf 2.0 but does not work with tf 2.2
def df_to_dataset_tf_2_0(dataframe, label_column, shuffle=True, batch_size=32):
    dataframe = dataframe.copy()
    #labels = dataframe.pop(label_column)
    labels = dataframe[label_column]

    ds = tf.data.Dataset.from_tensor_slices((dict(dataframe), labels))
    if shuffle:
        ds = ds.shuffle(buffer_size=len(dataframe))
    ds = ds.batch(batch_size)
    return ds

def df_to_dataset(dataframe, label_column, shuffle=True, batch_size=32):
    dataframe = dataframe.copy()
    labels = dataframe.pop(label_column)
    #labels = dataframe[label_column]

    ds = tf.data.Dataset.from_tensor_slices((dataframe.to_dict(orient='list'), labels))
    if shuffle:
        ds = ds.shuffle(buffer_size=len(dataframe))
    ds = ds.batch(batch_size)
    return ds

batch_size = 5 # A small batch sized is used for demonstration purposes
train_ds = df_to_dataset(train, label_column = 'target', batch_size=batch_size)
val_ds = df_to_dataset(val,label_column = 'target',  shuffle=False, batch_size=batch_size)
test_ds = df_to_dataset(test, label_column = 'target', shuffle=False, batch_size=batch_size)

age = feature_column.numeric_column("age")

feature_columns = []
feature_layer_inputs = {}

# numeric cols
for header in ['age', 'trestbps', 'chol', 'thalach', 'oldpeak', 'slope', 'ca']:
  feature_layer_inputs[header] = tf.keras.Input(shape=(1,), name=header)

# bucketized cols
age_buckets = feature_column.bucketized_column(age, boundaries=[18, 25, 30, 35])

# indicator cols
thal = feature_column.categorical_column_with_vocabulary_list(
      'thal', ['fixed', 'normal', 'reversible'])
thal_one_hot = feature_column.indicator_column(thal)
feature_layer_inputs['thal'] = tf.keras.Input(shape=(1,), name='thal', dtype=tf.string)

# embedding cols
thal_embedding = feature_column.embedding_column(thal, dimension=8)

# crossed cols
crossed_feature = feature_column.crossed_column([age_buckets, thal], hash_bucket_size=1000)
crossed_feature = feature_column.indicator_column(crossed_feature)

feature_layer = tf.keras.layers.DenseFeatures(feature_columns)
feature_layer_outputs = feature_layer(feature_layer_inputs)

x = layers.Dense(128, activation='relu')(feature_layer_outputs)
x = layers.Dense(64, activation='relu')(x)

baggage_pred = layers.Dense(1, activation='sigmoid')(x)

model = keras.Model(inputs=[v for v in feature_layer_inputs.values()], outputs=baggage_pred)


  • 1
    this should work for now. the trick is to set Inputs to list of input layers, as is shown here as [v for v in feature_layer_inputs.values()]. Commented Nov 8, 2019 at 9:24
  • Thanks for this! I was trying to prepend DenseFeatures to an existing Sequential model, but eventually it only worked by using both in a functional Model with inputs=feature_layer_inputs.
    – EliadL
    Commented Nov 25, 2019 at 16:18
  • Why is the Input shape=1 in this line: feature_layer_inputs['thal'] = tf.keras.Input(shape=(1,), name='thal', dtype=tf.string) Commented Jun 17, 2020 at 5:26
  • 1
    @HARSHNILESHPATHAK, the example for 'thal' column illustrates preprocessing of the string values. It means each record of input dataset contains just a one string value in 'thal' column, that is why we require shape=(1,) for the tf.keras.Input(). Then Input layer passes this string value to defined feature_columns in DenseFeatures(feature_columns) layer. Each feature_column extend the shape according to its own logic. Like for 'thal' here are shown thal_one_hot and thal_embedding. Commented Jun 17, 2020 at 10:00
  • 1
    @prog_guy, No, thal_one_hot and thal_embedding are just to separate examples of different types of feature_columns Commented Sep 26, 2020 at 19:28

If you use tensorflow dataset API, that code could do well.

featurlayer = keras.layers.DenseFeatures(feature_columns=feature_columns)
train_dataset = train_dataset.map(lambda x, y: (featurlayer(x), y))
test_dataset = test_dataset.map(lambda x, y: (featurlayer(x), y))

model.fit(train_dataset, epochs=, steps_per_epoch=, # all_data/batch_num = 
  • 1
    this is the correct answer, I tested it under TF 1.13. It should get more votes. But you need to use from tensorflow.python.feature_column import feature_column_v2 as fc dense_features = fc.DenseFeatures(columns)
    – Zhuo Tao
    Commented May 29, 2019 at 16:42

tf.feature_column.input_layer user this function, and this api doc has a sample . you can transform featur_columns into Tensor, and then use it into Mode()


I have been recently reading this document in TensorFlow 2.0 alpha version. It has examples using Keras together with the feature column API. Not sure if TF 2.0 is what you are going to use

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