# Efficent way in TensorFlow to subtract mean and divide by standard deivation for each row

I have a tensor of shape `[x, y]` and I want to subtract the mean and divide by the standard deviation row-wise (i.e. I want to do it for each row). What is the most efficient way to do this in TensorFlow?

Of course I can loop through rows as follows:

``````new_tensor = [i - tf.reduce_mean(i) for i in old_tensor]
``````

...to subtract the mean and then do something similar to find the standard deviation and divide by it, but is this the best way to do it in TensorFlow?

The TensorFlow `tf.sub()` and `tf.div()` operators support broadcasting, so you don't need to iterate through every row. Let's consider the mean, and leave standard deviation as an exercise:

``````old_tensor = ...                                          # shape = (x, y)
mean = tf.reduce_mean(old_tensor, 1, keep_dims=True)      # shape = (x, 1)

stdev = ...                                               # shape = (x,)
stdev = tf.expand_dims(stdev, 1)                          # shape = (x, 1)

new_tensor = old_tensor - mean                            # shape = (x, y)
new_tensor = old_tensor / stdev                           # shape = (x, y)
``````

The subtraction and division operators implicitly broadcast a tensor of shape `(x, 1)` along the column dimension to match the shape of the other argument, `(x, y)`. For more details about how broadcasting works, see the NumPy documentation on the topic (TensorFlow implements NumPy broadcasting semantics).

1. calculate moments along axis 1 (y in your case) and keep dimensions, i.e. shape of mean and var is (len(x), 1)
2. subtract mean and divide by standard deviation (i.e. square root of variance)
``````mean, var = tf.nn.moments(old_tensor, [1], keep_dims=True)
new_tensor = tf.div(tf.subtract(old_tensor, mean), tf.sqrt(var))
``````