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I have a sparse pandas DataFrame/Series with values that look like variations of "AB1234:12, CD5678:34, EF3456:56". Something to the effect of

"AB1234:12, CD5678:34, EF3456:56"
"AB1234:12, CD5678:34"
"GH5678:34, EF3456:56"

Which I'd like to convert into

["AB1234","CD5678", "EF3456"]

This kind of "double delineation" has been proving difficult. I know we can A = df["columnName"].str.split(",") however I've run across a couple of problems including that .split(", ") doesnt seem to work and '.split(",")' leaves whitespace. Also, that iterating through the generated A and splitting seems to be interpreting my new lists as 'floats'. Although that last one might be a technical difficulty with ipython - I'm trying to work out that problem as well.

Is there a way to delineate on two types of separators - instead of just one? If not, how do you perform the loop to iterate over the inner list?

//Edit: changed the apostrophes to commas - that was just my dyslexia kicking in

share|improve this question
up vote 1 down vote accepted

You nearly had it, note you can use a regular expression to split more generally:

In [11]: s2
0    AB1234:12, CD5678:34, EF3456:56
1               AB1234:12, CD5678:34
2                                NaN
3               GH5678:34, EF3456:56
4                            OH56:34
dtype: object

In [12]: s2.str.split(", '")
0    [AB1234:12, CD5678:34, EF3456:56]
1               [AB1234:12, CD5678:34]
2                                  NaN
3               [GH5678:34, EF3456:56]
4                            [OH56:34]
dtype: object

In [13]: s2.str.split("\s*,\s*'")
0    [AB1234:12, CD5678:34, EF3456:56]
1               [AB1234:12, CD5678:34]
2                                  NaN
3               [GH5678:34, EF3456:56]
4                            [OH56:34]
dtype: object

Where this removes any spaces before or after a comma.

share|improve this answer
Prompted by your mention of regex I found that this: s2.apply(lambda x: re.split(':\d{1,3},?\s?',x)) was SUPER close. I'm not very familiar with regex so that's just somethign I hacked together. I'm getting an empty list item at the end because of the last :\d\d pattern - which I don't know how to get rid of via regex. – stites Jun 19 '13 at 17:23
@dbyte oh I see, I'd missed the : bit. Do the regex replace first: s2.str.replace(':\d+', '').str.split("\s*,\s*"). – Andy Hayden Jun 19 '13 at 17:36
perfect! although the data was structured as (",\s*"). Awesome possum. – stites Jun 19 '13 at 17:54
@dbyte the star means "0 or more" (so it doesn't care) :) – Andy Hayden Jun 19 '13 at 18:00

Here is your DataFrame

>>> df
0  AB1234:12, CD5678:34, EF3456:56
1             AB1234:12, CD5678:34
2                             None
3             GH5678:34, EF3456:56
4                          OH56:34

And now I use split and replace to split by ', ' and remove all ':'

>>> df.A = [i.replace(':','').split(", ") if isinstance(i,str) else i for i in df.A]
>>> df.A
0    [AB123412, CD567834, EF345656]
1              [AB123412, CD567834]
2                              None
3              [GH567834, EF345656]
4                          [OH5634]
Name: A
share|improve this answer
Apologies - i was, indeed, using commas - I just edited the question. I managed to reach to that point and am looking at how to delineate those lists by ":"s. Then remove the second item in those embedded lists, however that portion is easily manageable and not in the scope of the question. – stites Jun 19 '13 at 16:54
updated my answer. Hopefully that is what you were looking for! – Ryan Saxe Jun 19 '13 at 17:10
almost! I wasn't clear and needed to get rid of the numbers/score after the :. I was thinking that this would create a list or lists and could remove the second item of each embedded list - the scores. The regex route, however, seems to shortcut this. – stites Jun 19 '13 at 17:58

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