You'll also reach another snag with `numpy`

when you hit 65 characters, but pandas works around this because each `str`

object is stored as an opaque pointer to a Python object, not a `numpy.string_`

type.

```
In [18]: from pandas.util.testing import rands
In [19]: s = Series([rands(120) for _ in range(10)])
In [20]: s
Out[20]:
0 LdeUwCKNFi4SWWfnAsKK3VIdDegy35lokoOr5DfCePoGn2...
1 xXmofyBFUfCiApbqNEDtJs6JhU0QAhIG8sQRCKkKMdTZuZ...
2 t3XcQFDQhg8BxAc9vFeo5Ky6beMxp9IGj54u3OzELR8lRf...
3 tWufKLo4OiW8lMpB8NiHzy0REAnAtAmLrDJyLzi1GBSRwS...
4 bysGao2rhiqxfmv54eDT6qcshlk0E7srrRLnuBDRRu7oVg...
5 AYIZFysXR9vispYQEfwqaZ20YYvR52pPkBtd2acOapK3Mv...
6 eLAwKopRuynrY75dn7vEfUnqhoSDLh5mGSBclFDaItwyxJ...
7 oj8ilX2EvhegAI4FvZQxJU0hTDR04aLySNdCXPmqOLa6CF...
8 5mEX5o23PMg5yWEE6bofk5tqzPCFNNCIn1v3ynYxicVXa8...
9 c2fS5Z1w7IxKq72x5KM8WhNChfrEJoFavdD1DQUJn4NCNP...
dtype: object
In [21]: s.astype(str).map(len)
Out[21]:
0 120
1 120
2 120
3 120
4 120
5 120
6 120
7 120
8 120
9 120
dtype: int64
In [22]: map(len, s.values.astype(str))
Out[22]: [64, 64, 64, 64, 64, 64, 64, 64, 64, 64]
```

To be fair to `numpy`

, this was fixed in pull request #3270 and is fixed in numpy 1.8.

**EDIT:** to address the initial issue (which was converting an `int`

array to a `str`

array), since you've tagged this as `pandas`

you can do

```
In [4]: s = Series([1, 22, 333, 4444])
In [5]: s
Out[5]:
0 1
1 22
2 333
3 4444
dtype: int64
In [6]: s.astype(str)
Out[6]:
0 1
1 22
2 333
3 4444
dtype: object
```

This will work in older-than-1.7 `numpy`

, but you'll have to upgrade to a later version of `pandas`

, one at or after `f0c1bd`

. Alternatively you can do

```
In [3]: s = Series([1, 22, 333, 4444])
In [4]: s.map(str)
Out[4]:
0 1
1 22
2 333
3 4444
dtype: object
```

which should work on any `pandas`

version that has the `map`

method on `Series`

objects and any numpy version that is supported by `pandas`

.