I have to perform a tensor operation where each slice of the tensor is divided by the corresponding element from a vector. For example, a tensor K of shape (4,80,50) have 4 slices of shape(80,50) along the axes-0. Each of the 4 slices have to be divided by elements of the vector P of shape (4,1) ie. K[0,:,:] /p[0] , K[1,:,:]/p[1] etc. Is there a keras function which can perform this ?

1

Since `K`

and `P`

have the same size of 0-axis, you need to expand dimension of `P`

at the end. In tf2.0, here is an example

```
K = tf.reshape(tf.range(24),(4,2,3))
#array([[[ 0, 1, 2],
# [ 3, 4, 5]],
#
# [[ 6, 7, 8],
# [ 9, 10, 11]],
#
# [[12, 13, 14],
# [15, 16, 17]],
#
# [[18, 19, 20],
# [21, 22, 23]]])
P = tf.reshape(tf.constant([1,2,4,8]),(4,1))
K / tf.expand_dims(P,axis=-1)
#array([[[0. , 1. , 2. ],
# [3. , 4. , 5. ]],
#
# [[3. , 3.5 , 4. ],
# [4.5 , 5. , 5.5 ]],
#
# [[3. , 3.25 , 3.5 ],
# [3.75 , 4. , 4.25 ]],
#
# [[2.25 , 2.375, 2.5 ],
# [2.625, 2.75 , 2.875]]])
```