Using Tensorflow, I need to calculate multiple grouped metrics (e.g. mean) from a tensor, based on groups that are given by a second tensor.

A a toy example, let's say I got:
values = tf.constant([[1], [1.5], [2], [2.5], [3], [3.5]])
groupings = tf.constant([1,3,2,1,2,3])

And want to calculate:
group_means = [1.75,2.5,2.5])

I know how to calculate the mean for one group, e.g.:
group = tf.boolean_mask(values, tf.equal(groupings, i))
mean = tf.math.reduce_mean(group,axis=0)
and could do that for every group in a for-loop.

What I can't figure out is how to do that in a vectorized manner without looping through each group. Maybe it is a very easy question with an obvious solution, but I appreaciate any help.

1 Answer 1


Try tf.math.unsorted_segment_mean:

import tensorflow as tf

values = tf.constant([[1], [1.5], [2], [2.5], [3], [3.5]])
groupings = tf.constant([1,3,2,1,2,3]) - 1
tf.math.unsorted_segment_mean(values, groupings, tf.shape(tf.unique_with_counts(groupings)[-1])[-1])
<tf.Tensor: shape=(3, 1), dtype=float32, numpy=
       [2.5 ],
       [2.5 ]], dtype=float32)>

Note that I subtract 1 from groupings, since it is easier when segment_ids start from 0.

  • Cool, I wasn't aware, that there exist an implementation of a grouped mean. Thank you. But I see correctly, that there's not general 'groupby'/segmentation functionality, that could be used for more complex metrics (e.g. other moments)?
    – Bobipuegi
    Oct 10, 2022 at 12:17
  • Not directly..but surely possible. Oct 10, 2022 at 12:19

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.