You can always use the reshape command. A single column text file loads as a 1D array which in numpy's case is a row vector.

```
>>> a
array([ 2.76533441, 3.30956328])
>>> a[:,None]
array([[ 2.76533441],
[ 3.30956328]])
>>> b=np.arange(5)[:,None]
>>> b
array([[0],
[1],
[2],
[3],
[4]])
>>> np.savetxt('something.npz',b)
>>> np.loadtxt('something.npz')
array([ 0., 1., 2., 3., 4.])
>>> np.loadtxt('something.npz').reshape(-1,1) #Another way of doing it
array([[ 0.],
[ 1.],
[ 2.],
[ 3.],
[ 4.]])
```

You can check this using the number of dimensions.

```
data=np.loadtxt('data.npz')
if data.ndim==1: data=data[:,None]
```

Or

```
np.loadtxt('something.npz',ndmin=2) #Always gives at at least a 2D array.
```

Although its worth pointing out that if you always have a column of data numpy will always load it as a 1D array. This is more of a feature of numpy arrays rather then a bug I believe.