Using object dtype to store string array is convenient sometimes, especially when one needs to modify the content of a large array without prior knowledge about the maximum length of the strings, e.g.,

```
>>> import numpy as np
>>> a = np.array([u'abc', u'12345'], dtype=object)
```

At some point, one might want to convert the dtype back to unicode or str. However, simple conversion will truncate the string at length 4 or 1 (why?), e.g.,

```
>>> b = np.array(a, dtype=unicode)
>>> b
array([u'abc', u'1234'], dtype='<U4')
>>> c = a.astype(unicode)
>>> c
array([u'a', u'1'], dtype='<U1')
```

Of course, one can always iterate over the entire array explicitly to determine the max length,

```
>>> d = np.array(a, dtype='<U{0}'.format(np.max([len(x) for x in a])))
array([u'abc', u'12345'], dtype='<U5')
```

Yet, this is a little bit awkward in my opinion.

Is there a better way to do this?

## Edit:

According to this closely related question,

```
>>> len(max(a, key=len))
```

is another way to find out the longest string length, and this step seems to be unavoidable...

## Edit II:

In lastest version of numpy (e.g., v1.8.1), this is no longer a issue. All the above mentioned methods work as excepted.

`max(len(x) for x in a)`

is probably faster than constructing a list and calling`np.max`

. – larsmans Apr 17 '13 at 15:21`max(a, key=len)`

is even faster. – herrlich10 Apr 17 '13 at 16:05