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I have a column of data that contains strings, and I want to create a new column that takes only the first two characters from the corresponding data string.

It seems logical to use the apply function for this, but it doesn't work like expected. It does not even seem to be consistent with other uses of apply. See below.

In [205]: dfrm_test = pandas.DataFrame({"A":np.repeat("the", 10)})

In [206]: dfrm_test
Out[206]:
     A
0  the
1  the
2  the
3  the
4  the
5  the
6  the
7  the
8  the
9  the

In [207]: dfrm_test["A"].apply(lambda x: x+" cat")
Out[207]:
0    the cat
1    the cat
2    the cat
3    the cat
4    the cat
5    the cat
6    the cat
7    the cat
8    the cat
9    the cat
Name: A

In [208]: dfrm_test["A"].apply(lambda x: x[0:2])
Out[208]:
0    the
1    the
Name: A

Based on this, it appears that apply does nothing but perform the NumPy equivalent of whatever is called inside. That is, apply seems to execute the same thing as arr + " cat" in the first example. And if NumPy happens to broadcast that, then it will work. If not, then it won't.

But this seems to break from what apply promises in the docs. Below is the quotation for what pandas.Series.apply should expect:

Invoke function on values of Series. Can be ufunc or Python function expecting only single values (link)

It says explicitly that it can accept Python functions expecting only single values. And the function that's not working (lambda x: x[0:2]) definitely satisfies that. It doesn't say that the single argument must be an array. And given that things like numpy.sqrt are commonly used for single inputs (so not exclusively arrays), it seems natural to expect Pandas to work with any such function.

Is there some way of using apply that I am missing here?

Note: I did write my own extra function below:

def ix2(arr):
    return np.asarray([x[0:2] for x in arr])

and I verified that this version does work with Pandas apply. But this is beside the point. It would be easier to write something that operated externally on top of a Series object than to have to constantly write wrappers that use list comprehensions to effectively loop over the contents of the Series. Isn't this specifically what apply is supposed to abstract away from the user?

I am using Pandas version 0.7.3, and it is on a workplace shared network, so there's no way to upgrade to the recent release.

Added:

I was able to confirm that this behavior changes from version 0.7.3 to version 0.8.1. In 0.8.1 it works as expected with no NumPy ufunc wrapper.

My guess is that in the code, someone was trying to use numpy.vectorize or numpy.frompyfunc within a try-except statement. Perhaps it did not work correctly with the particular lambda function I am using, and so in the except part of the code, it defaulted to just relying on generic NumPy broadcasting.

It would be great to get some confirmation on this from a Pandas developer, if possible. But in the meantime, the ufunc workaround should suffice.

share|improve this question
    
Pandas 0.8 return for dfrm_test["A"].apply(lambda x: x[0:2]) ten times th. –  eumiro Sep 12 '12 at 17:30
    
Are you confirming this is just a bug in version 7.2-1?? Please note that I mentioned at the bottom of the question that I cannot get away from using this version. –  Mr. F Sep 12 '12 at 17:34
    
I don't know and I cannot check it now. If I had the same problem on 0.8, I could try to find a solution, but without 7.2 I cannot. –  eumiro Sep 12 '12 at 17:51
    
Correction: I have version 0.7.3. It was the Enthought distribution that I reported earlier. Same bug still occurs though. –  Mr. F Sep 12 '12 at 18:14

3 Answers 3

up vote 3 down vote accepted

One workaround I can think of would be converting the Python function to numpy.ufunc with numpy.frompyfunc:

numpy.frompyfunc((lambda x: x[0:2]), 1, 1)

and use this in apply:

In [50]: dfrm_test
Out[50]:
     A
0  the
1  the
2  the
3  the
4  the
5  the
6  the
7  the
8  the
9  the

In [51]: dfrm_test["A"].apply(np.frompyfunc((lambda x: x[0:2]), 1, 1))
Out[51]:
0    th
1    th
2    th
3    th
4    th
5    th
6    th
7    th
8    th
9    th
Name: A

In [52]: pandas.version.version
Out[52]: '0.7.3'

In [53]: dfrm_test["A"].apply(lambda x: x[0:2])
Out[53]:
0    the
1    the
Name: A
share|improve this answer
    
Thank you; this is a very helpful workaround in the short term. –  Mr. F Sep 12 '12 at 18:13

Try dfrm_test.A.map(lambda x: x[0:2])

share|improve this answer
    
This works, but I consider it a workaround as well, since it doesn't address the fact that apply isn't working as promised. Can you verify that map will work in all the same situations where apply will work? I also don't like the inconsistency in going from map for a Series to applymap for a DataFrame. –  Mr. F Sep 13 '12 at 13:56
    
I'm not sure I agree that this is a "workaround" as Series.map is the intended method for element-wise operations. Series.apply will try passing the whole Series into the input function first and will fall back on element-wise operation only if an exception is raised. –  Chang She Sep 13 '12 at 17:32
    
That contradicts the docs for apply, as well as its 0.8.1 behavior, in which it successfully performs the elementwise version of my example above, whereas version 0.7.3 seems to use the logic you describe. Since apply should work in 0.7.3 as it does in 0.8.1 (according to the docs), that's why I think it's a workaround. map is fine, but apply should work. –  Mr. F Sep 13 '12 at 17:34
    
I'm on github master and it does not work; it probably worked in 0.8.1 by accident. apply is designed so that you can apply a ufunc and get back a Series with the index intact. Take a look at the source code, it tries to call func(self) and wraps that in a try/except block and then calls map_infer in the except. In your example, the function you gave can take a Series and return a Series but doesn't do element-wise operations so the code cannot know to trigger the element-wise case. To be explicit that you want the input function to be applied element-wise, you have to use Series.map. –  Chang She Sep 13 '12 at 19:12
    
Though I do agree with you the docstring for apply is very unclear about this aspect. We can improve the documentation for apply. –  Chang She Sep 13 '12 at 19:16

This works as of pandas 0.8.1:

In [47]: dfrm_test.A.str[:2]
Out[47]: 
0    th
1    th
2    th
3    th
4    th
5    th
6    th
7    th
8    th
9    th
Name: A
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