You can provide a custom conversion function for a specific column to `loadtxt`

.

Since you are only interested in the year I use a `lambda`

-function to split the date on `-`

and to convert the first part to an `int`

:

```
data = np.loadtxt('delnorte.dat',
usecols=(2,3),
converters={2: lambda s: int(s.split('-')[0])},
skiprows=27)
array([[ 2000., 190.],
[ 2000., 170.],
[ 2000., 160.],
...,
[ 2010., 185.],
[ 2010., 175.],
[ 2010., 165.]])
```

To filter then for the year `2005`

you can use logical indexing in numpy:

```
data_2005 = data[data[:,0] == 2005]
array([[ 2005., 210.],
[ 2005., 190.],
[ 2005., 190.],
[ 2005., 200.],
....])
```

`numpy.loadtxt('delnorte.dat', usecols=[2, 3], dtype=object)`

– mmgp Dec 31 '12 at 15:16