If I have a 2-d tensor with the first dimension being dynamic, how can I append a scalar value to the end of each row?

So if I feed [[1,2], [3,4]] to a tensor, I want to make it [[1,2,5], [3,4,5]].

Example (doesn't work):

a = tf.placeholder(tf.int32, shape=[None, 2])
b = tf.concat([tf.constant(5), a], axis=1)

This gives me: ValueError: Can't concatenate scalars (use tf.stack instead) for 'concat_3' (op: 'ConcatV2') with input shapes: [], [?,2], [].

I assume this needs some combination of tf.stack, tf.tile, and tf.shape, but I can't seem to get it right.

  • This answer, and especially the comments under it, could give you a hint.
    – Amadan
    Jul 4, 2018 at 5:59

3 Answers 3


IMO padding is the easiest way here:

a = tf.placeholder(tf.int32, shape=[None, 2])
b = tf.pad(a, [[0, 0], [0, 1]], constant_values=5)

will append a 5-column.

Documentation: tf.pad.


Here is one way to do it:

  • Expand the dimensions on the scalar tensor that you want to append to make it rank 2.
  • Use tf.tile to repeat the rows.
  • Concatenate both tensors along the last axis.

For example:

import tensorflow as tf

a = tf.placeholder(tf.int32, shape=[None, 2])
c = tf.constant(5)[None, None]  # Expand dims. Shape=(1, 1)
c = tf.tile(c, [tf.shape(a)[0], 1])  # Repeat rows. Shape=(tf.shape(a)[0], 1)
b = tf.concat([a, c], axis=1)

with tf.Session() as sess:
    print(sess.run(b, feed_dict={a: [[1, 2], [3, 4]]}))

Inspired by rvinas answer, I came up with a simpler solution :

constants = tf.fill((tf.shape(tensors)[0], 1), 5.0) # create the constant column vector
tensors = tf.keras.layers.Concatenate(axis=1)([tensors, constants])

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