# How to omit zeros in a 4-D tensor in tensorflow?

Say I have a tensor:

``````import tensorflow as tf
t = tf.Variable([[[[0., 235., 0., 0., 1006., 0., 0., 23., 42.], [77., 0., 0., 12., 0., 0., 33., 55., 0.]],
[[0., 132., 0., 0., 234., 0., 1., 24., 0.], [43., 0., 0., 124., 0., 0., 0., 52., 645]]]])
``````

I want to omit zeros and be left with a tensor of shape: (1, 2, 2, 4), with 4 being the number of non zero elements in my tensor like

``````t = tf.Variable([[[[235., 1006., 23., 42], [77., 12., 33., 55.]],
[[132., 234., 1., 24.], [43., 124., 52., 645]]]])
``````

I've used boolean mask to to do this on a 1-D tensor. How can I omit the zeros in a 4-D tensor. Can it be generalized for higher ranks?

Using TensorFlow 1.12:

``````import tensorflow as tf

def batch_of_vectors_nonzero_entries(batch_of_vectors):
"""Removes non-zero entries from batched vectors.

Requires that each vector have the same number of non-zero entries.

Args:
batch_of_vectors: A Tensor with length-N vectors, having shape [..., N].
Returns:
A Tensor with shape [..., M] where M is the number of non-zero entries in
each vector.
"""
nonzero_indices = tf.where(tf.not_equal(
batch_of_vectors, tf.zeros_like(batch_of_vectors)))
# gather_nd gives us a vector containing the non-zero entries of the
# original Tensor
nonzero_values = tf.gather_nd(batch_of_vectors, nonzero_indices)
# Next, reshape so that all but the last dimension is the same as the input
# Tensor. Note that this will fail unless each vector has the same number of
# non-zero values.
reshaped_nonzero_values = tf.reshape(
nonzero_values,
tf.concat([tf.shape(batch_of_vectors)[:-1], [-1]], axis=0))
return reshaped_nonzero_values

t = tf.Variable(
[[[[0., 235., 0., 0., 1006., 0., 0., 23., 42.],
[77., 0., 0., 12., 0., 0., 33., 55., 0.]],
[[0., 132., 0., 0., 234., 0., 1., 24., 0.],
[43., 0., 0., 124., 0., 0., 0., 52., 645]]]])
nonzero_t = batch_of_vectors_nonzero_entries(t)

with tf.Session():
tf.global_variables_initializer().run()
result_evaled = nonzero_t.eval()
print(result_evaled.shape, result_evaled)
``````

Prints:

``````(1, 2, 2, 4) [[[[  2.35000000e+02   1.00600000e+03   2.30000000e+01   4.20000000e+01]
[  7.70000000e+01   1.20000000e+01   3.30000000e+01   5.50000000e+01]]

[[  1.32000000e+02   2.34000000e+02   1.00000000e+00   2.40000000e+01]
[  4.30000000e+01   1.24000000e+02   5.20000000e+01   6.45000000e+02]]]]
``````

It may be useful to look into SparseTensors if the result ever ends up being ragged.

• at ` tf.concat(0, [tf.shape(batch_of_vectors)[:-1], [-1]]))` I get an error `ValueError: Dimension 0 in both shapes must be equal, but are 3 and 1. Shapes are [3] and [1]. From merging shape 0 with other shapes. for 'concat_2/concat_dim' (op: 'Pack') with input shapes: [3], [1].` – SantoshGupta7 Dec 29 '18 at 5:25
• Right you are, sorry about that. I've updated the example for TF 1.x compatibility (swapped concat parameters). – Allen Lavoie Jan 2 '19 at 22:17