No, you can't, at least with current version of NumPy. A `nan`

is a special value for float arrays **only**.

There are talks about introducing a special bit that would allow non-float arrays to store what in practice would correspond to a `nan`

, but so far (2012/10), it's only talks.

In the meantime, you may want to consider the `numpy.ma`

package: instead of picking an invalid integer like -99999, you could use the special `numpy.ma.masked`

value to represent an invalid value.

```
a = np.ma.array([1,2,3,4,5], dtype=int)
a[1] = np.ma.masked
masked_array(data = [1 -- 3 4 5],
mask = [False True False False False],
fill_value = 999999)
```