# reduce_sum by certain dimension

I have two embeddings tensor `A` and `B`, which looks like

``````[
[1,1,1],
[1,1,1]
]
``````

and

``````[
[0,0,0],
[1,1,1]
]
``````

what I want to do is calculate the L2 distance `d(A,B)` element-wise.

First I did a `tf.square(tf.sub(lhs, rhs))` to get

``````[
[1,1,1],
[0,0,0]
]
``````

and then I want to do an element-wise reduce which returns

``````[
3,
0
]
``````

but `tf.reduce_sum` does not allow my to reduce by row. Any inputs would be appreciated. Thanks.

## 2 Answers

Add the `reduction_indices` argument with a value of 1, eg.:

``````tf.reduce_sum( tf.square( tf.sub( lhs, rhs) ), 1 )
``````

That should produce the result you're looking for. Here is the documentation on `reduce_sum()`.

According to TensorFlow documentation, `reduce_sum` function which takes four arguments.

``````tf.reduce_sum(input_tensor, axis=None, keep_dims=False, name=None, reduction_indices=None).
``````

But `reduction_indices` has been deprecated. Better to use axis instead of. If the axis is not set, reduces all its dimensions.

As an example,this is taken from the documentation,

``````# 'x' is [[1, 1, 1]
#         [1, 1, 1]]
tf.reduce_sum(x) ==> 6
tf.reduce_sum(x, 0) ==> [2, 2, 2]
tf.reduce_sum(x, 1) ==> [3, 3]
tf.reduce_sum(x, 1, keep_dims=True) ==> [[3], [3]]
tf.reduce_sum(x, [0, 1]) ==> 6
``````

Above requirement can be written in this manner,

``````import numpy as np
import tensorflow as tf

a = np.array([[1,7,1],[1,1,1]])
b = np.array([[0,0,0],[1,1,1]])

xtr = tf.placeholder("float", [None, 3])
xte = tf.placeholder("float", [None, 3])

pred = tf.reduce_sum(tf.square(tf.subtract(xtr, xte)),1)

# Initializing the variables
init = tf.global_variables_initializer()

# Launch the graph
with tf.Session() as sess:
sess.run(init)
nn_index = sess.run(pred, feed_dict={xtr: a, xte: b})
print nn_index
``````