Say I have a numpy array

```
a = np.array([[a11 a12 a13],
[a21 a22 a23],
[a31 a32 a33]])
```

I want to return the following result:

```
np.array([[a11/a1 a12/a1 a13/a1],
[a21/a2 a22/a2 a23/a2],
[a31/a3 a32/a3 a33/a3]])
```

where:

```
a1 = np.sqrt(a11**2 + a12**2 + a13**2)
a2 = np.sqrt(a21**2 + a22**2 + a23**2)
a3 = np.sqrt(a31**2 + a32**2 + a33**2)
```

In other words, I want to divide each element of the array by the norm of the row it belongs to.

I have written some code which does this, but it is frankly horrible - I am looping through rows of the array, which I know is not what numpy as designed for. I have a feeling the same could be achieved by using two numpy library calls which I just don't know.

Another thing I thought of is:

```
a/np.reshape(np.linalg.norm(a,axis=1),(a.shape[0],1))
```

but I'm not sure if this is a particularly efficient way. Any advice?