Given a 2D `numpy`

array, I need to compute the dot product of every column with itself, and store the result in a 1D array. The following works:

```
In [45]: A = np.array([[1,2,3,4],[5,6,7,8]])
In [46]: np.array([np.dot(A[:,i], A[:,i]) for i in xrange(A.shape[1])])
Out[46]: array([26, 40, 58, 80])
```

Is there a simple way to avoid the Python loop? The above is hardly the end of the world, but if there's a `numpy`

primitive for this, I'd like to use it.

**edit** In practice the matrix has many rows and relatively few columns. I am therefore not overly keen on creating temporary arrays larger than `O(A.shape[1])`

. I also can't modify `A`

in place.