I am attempting to write a simple deep machine learning model using TensorFlow. I'm using a toy dataset I made up in Excel just to get the model working and accepting data. My code is as follows:

import pandas as pd
import numpy as np
import tensorflow as tf

raw_data = np.genfromtxt('ai/mock-data.csv', delimiter=',', dtype=str)
my_data = np.delete(raw_data, (0), axis=0) #deletes the first row, axis=0 indicates row, axis=1 indicates column
my_data = np.delete(my_data, (0), axis=1) #deletes the first column

policy_state = tf.feature_column.categorical_column_with_vocabulary_list('policy_state', [
    'AL', 'CA', 'MI'

modern_classic_ind = tf.feature_column.categorical_column_with_vocabulary_list('modern_classic_ind', [
    '0', '1'

h_plus_ind = tf.feature_column.categorical_column_with_vocabulary_list('h_plus_ind', [
    '0', '1'

retention_ind = tf.feature_column.categorical_column_with_vocabulary_list('retention_ind', [
    '0', '1'

feature_columns = [
classifier = tf.estimator.DNNClassifier(feature_columns=feature_columns,
                                      hidden_units=[10, 20, 10],

train_input_fn = tf.estimator.inputs.numpy_input_fn(
x={"x": np.array(my_data[:, 0:3], dtype=str)},
y=np.array(np.array(my_data[:, 3], dtype=str)),

classifier.train(input_fn=train_input_fn, steps=2000)

Unfortunately, I am getting the following error. I have tried trimming the labels off the csv file versus leaving them, naming the feature columns different things, and changing the type of the numpy array. The error persists.

ValueError: Feature h_plus_ind is not in features dictionary.

If I remove h_plus_ind, it simply throws the error on a different column.


5 Answers 5


When using tf.feature_columns, the data you feed in your input_fn should have the same keys as the feature columns previously created. So, the x of your train_input_fn should be a dictionary, with keys named after the feature_columns.

A mock example :

x = {"policy_state": np.array(['AL','AL','AL','AL','AL']),
     "modern_classic_ind": np.array(['0','0','0','0','0']),
     "h_plus_ind": np.array(['0','0','0','0','0']),}

On the side :

This great article from the developers google blog could be a great read, as it introduces a new way to create input_fn directly from a csv file with the tf.Dataset API. It has a better memory management, and avoid loading all the dataset into memory.


I have the same problem but when i checked the names of my columns of database, there was a little mistake in the name of column. Check out your column's names.


I have faced the same problem.In my case, the target variable was also fed to the features dictionary.I removed it from features dictionary and it worked.


If you use your using an already existing dataset, it is advised to rename the columns.


If you've reached this page because of TF serving, another possibility is that the keys in the dictionary passed as serving_input_fn do not correspond to the ones in your model, just double-check the dict.

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