I'm trying to use numpy and i couldn't figure out how to properly define a `n by n`

matrix in numpy.
I've used the `numpy.zeros(n,n)`

... but I'm not really sure if it is ok.

is it correct to use numpy like this?
im trying to get `(matrix^T * vector) - vector`

.

```
matrix = np.zeros((n,n))
start = [(1/float(n)) for _ in range(n)]
vector = np.array(start)
newvector = np.dot(np.transpose(matrix) , vector)
ans= np.subtract(newvector , vector)
```

I'm asking this because im getting the wrong results and im not sure where is my problem

`ans`

has entries all equal to`-1/n`

, which would be consistent with the code you post. Please give the result of your code and what you expect it to be! – David Zwicker Apr 23 '13 at 12:58