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I'm trying to use the .astype() function to convert from an int32 to string. I first noticed this when trying to use the conversion on a pandas series, but when I tested with numpy I saw the same behavior, so I'm assuming that numpy is the underlying cause.

In [0]: import numpy as np
In [1]: test = np.array([1, 22, 333, 4444])
In [2]: test.astype(str)
Out [2]: array(['1', '2', '3'],
              dtype='|S1')

Why is it defaulting to S1 and not S4, as I would expect in order to capture the full length? It seems simple, but maybe there's something I'm missing? When I explicitly specify S3 (or greater) it works fine:

In [3]: test.astype('S10')
Out [3]: array(['1', '22', '333', '4444'],
              dtype='|S10')

Based on the examples I've seen online, it doesn't seem like I should have to specify this way. I've got numpy 1.6.1 installed.

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2 Answers 2

up vote 1 down vote accepted

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.

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>>> np.array(['a'*500]) array([ 'aaa..*snip*..aaa'], dtype='|S500') Seems to work fine, can you elaborate? –  Ophion Aug 15 '13 at 0:44
    
You're not calling astype. The bug occurs with calls to astype, not when you construct the array explicitly. –  Phillip Cloud Aug 15 '13 at 0:49

In 1.7.1 it works correctly. It was probably a bug.

In [11]: test = np.array([1, 22, 333, 4444])
In [12]: test.astype(str)
Out[12]: array(['1', '22', '333', '4444'], dtype='|S24')
In [13]: np.version.version
Out[13]: '1.7.1'
share|improve this answer
    
Yeah, worked fine when I upgraded. I just assumed it was me, though, since I almost never encounter bugs in core numpy functions! –  user2543645 Aug 16 '13 at 20:00

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