# numpy array divide column by vector

I have a 3x3 numpy array and I want to divide each column of this with a vector 3x1. I know how to divide each row by elements of the vector, but am unable to find a solution to divide each column.

You can transpose your array to divide on each column

``````(arr_3x3.T/arr_3x1).T
``````

Let's try several things:

``````In : A=np.arange(9.).reshape(3,3)
In : A
Out:
array([[ 0.,  1.,  2.],
[ 3.,  4.,  5.],
[ 6.,  7.,  8.]])

In : x=10**np.arange(3).reshape(3,1)

In : A/x
Out:
array([[ 0.  ,  1.  ,  2.  ],
[ 0.3 ,  0.4 ,  0.5 ],
[ 0.06,  0.07,  0.08]])
``````

So this has divided each row by a different value

``````In : A/x.T
Out:
array([[ 0.  ,  0.1 ,  0.02],
[ 3.  ,  0.4 ,  0.05],
[ 6.  ,  0.7 ,  0.08]])
``````

And this has divided each column by a different value

`(3,3)` divided by `(3,1)` => replicates `x` across columns.

With the transpose `(1,3)` array is replicated across rows.

It's important that `x` be 2d when using `.T` (transpose). A `(3,)` array transposes to a `(3,)` array - that is, no change.

The simplest seems to be

``````A = np.arange(1,10).reshape(3,3)
b=np.arange(1,4)
A/b
``````

A will be

``````array([[1, 2, 3],
[4, 5, 6],
[7, 8, 9]])
``````

and b will be

``````array([1, 2, 3])
``````

and the division will produce

``````array([[1. , 1. , 1. ],
[4. , 2.5, 2. ],
[7. , 4. , 3. ]])
``````

The first column is divided by `1`, the second column by `2`, and the third by `3`. If I've misinterpreted your columns for rows, simply transform with .T - as C_Z_ answered above.