Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I'm playing with pandas and trying to apply string slicing on a Series of strings object. Instead of getting the strings sliced, the series gets sliced:

In [22]: s = p.Series(data=['abcdef']*20)
In [23]: s.apply(lambda x:x[:2])
0    abcdef
1    abcdef

On the other hand:

In [25]: s.apply(lambda x:x+'qwerty')
0     abcdefqwerty
1     abcdefqwerty
2     abcdefqwerty

I got it to work by using the map function instead, but I think I'm missing something about how it's supposed to work.

Would very much appreciate a clarification.

share|improve this question
I don't think you're missing anything. AFAIK, operations across the entire series are supposed to be numerical, not things like string slicing. Edit: actually, on re-reading the API docs, maybe not:… So I'm not sure. – AdamKG Jan 12 '12 at 20:58
slicing pandas? that's just mean! – juliomalegria Jan 12 '12 at 21:26
up vote 3 down vote accepted

apply first tries to apply the function to the whole series. Only if that fails it maps the given function to each element. [:2] is a valid function on a series, + 'qwerty' apparently isn't, that's why you do get the implicit mapping on the latter. If you always want to do the mapping you can use

apply's source code for reference:

        result = func(self)
        if not isinstance(result, Series):
            result = Series(result, index=self.index,
        return result
    except Exception:
        mapped = lib.map_infer(self.values, func)
        return Series(mapped, index=self.index,
share|improve this answer

You're on the right track:

In [3]: s = Series(data=['abcdef']*20)

In [4]: s
0     abcdef
1     abcdef
2     abcdef
3     abcdef
4     abcdef
5     abcdef
6     abcdef
7     abcdef
8     abcdef
9     abcdef
10    abcdef
11    abcdef
12    abcdef
13    abcdef
14    abcdef
15    abcdef
16    abcdef
17    abcdef
18    abcdef
19    abcdef

In [5]: x: x[:2])
0     ab
1     ab
2     ab
3     ab
4     ab
5     ab
6     ab
7     ab
8     ab
9     ab
10    ab
11    ab
12    ab
13    ab
14    ab
15    ab
16    ab
17    ab
18    ab
19    ab

I would really like to add a bunch of vectorized, NA-friendly string processing tools in pandas (See here). Always appreciate any development help also.

share|improve this answer

Wes McKinney's answer is a bit out of date, but he made good on his wish--pandas now has efficient string processing methods, including slicing:

In [2]: s = Series(data=['abcdef']*20)

In [3]: s.str[:2]
0     ab
1     ab
2     ab
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.