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is there any way to trim a series of string objects with out using for loop. I can do this element by element. I have a series a

print a
0    164
1     164
2     164
3     164
4     164
5     164

now I have to remove space at the start of each " 164"s. a.strip() results in AttributeError: 'Series' object has no attribute 'strip' Any help appreciated.

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I don't understand what you are trying to do. Could you please show us the strings you want to get in this specific example? –  Colin Bernet Jan 27 '14 at 13:10
    
I want to convert them into int type –  sau Jan 27 '14 at 13:38

6 Answers 6

up vote 1 down vote accepted

Well nothing wrong with your data or code, but do check the data thoroughly, even if one row doesn't have the right data, and you are trying to convert a series's particular columns type for a given range yet the entire series is being considered and thus your problem..

Reduce the test set and check for a couple of rows, it should just work fine.

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Use str.strip to remove the spaces:

df = pd.DataFrame({'a': ['164', ' 164', '    164']})
for item in df.a:
    print (len(item))
3
4
7
In [11]:

df.a = df.a.str.strip(' ')
for item in df.a:
    print (len(item))
3
3
3

To convert to ints do this:

In [20]:

df.a = df.a.astype(int)
df.dtypes

Out[20]:
a    int32
dtype: object
share|improve this answer
    
thats the 1st thing I have tried. Something is wrong with the data. I have to break the data in multiple files than may be I will be able to see whats the problem. Thanks for the ans –  sau Jan 28 '14 at 8:50
    
@sau what version of pandas are you using pd.version.version will output the version if you don't immediately know –  EdChum Jan 28 '14 at 8:54
    
pandas version 0.10.1 –  sau Jan 28 '14 at 10:44
    
@sau not sure what the problem, can you upgrade to 0.13? –  EdChum Jan 28 '14 at 11:09

You shall use a regular expression :

import re

trim_function = lambda x : re.findall("^\s*(.*?)\s*$",str(x))[0]

To explain a bit :

  • The character ^ represents the beginning of the string, and $ is the end of your string ; so that your expression will find exactly 1 match.

  • \s represents any whitespace character. So \s* is any sequence (even empty) of whitespaces.

  • .*? is any sequence of any character. I could not explain precisely why, but the ? sign let this experrsion be less greedy than \s* so that the whitespaces will be counted outside the parenthesis.

  • Finally, the parethesis (...) means that you are interseted in the substring(s) inside of them : the expression trimmed.

As re.findall provides a list of matching substrings, we have to select the first element.

Now, for a DataFrame :

df = pd.DataFrame([' 164', '164', '164 ', '  164  '])
df.applymap(trim_function)

For a Series

df = pd.Series([' 164', '164', '164 ', '  164  '])
df.apply(trim_function)

For an Index

df = pd.Index([' 164', '164', '164 ', '  164  '])
df.map(trim_function)

edit : Forgot : if you don't want to remove spaces at the end of each string, simply use the pattern "^\s*(.*?)".

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Untested, but I'm pretty sure it should work for you:

from pandas import DataFrame
df = DataFrame({'a': ['164', ' 164']})
df.a = df.a.apply(lambda x: x[1:] if x.startswith(' ') else x)
df.a
#0    164
#1    164
share|improve this answer
    
OP says he needs to remove a space before the 164, not just trim the entire string. –  Al G Jan 27 '14 at 12:41
    
Out put is same as a. didn'n give any error but spaces are still there –  sau Jan 27 '14 at 12:42
    
@Matt nothing seems to work –  sau Jan 27 '14 at 12:49
    
Do you need to remove only leading spaces or do you need to trim the strings? –  Matt Jan 27 '14 at 12:50
    
only leading spaces –  sau Jan 27 '14 at 12:52

I've never used pandas, but if I understand correctly you might be wanting to do something like this.

from pandas import DataFrame
df = DataFrame({'a': ['164', ' 165']})
for index, row in df.iterrows():  
    print int(row['a'])

Sorry if I'm off-topic :-)

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If all you need is to convert it to an int, how about just df[0].astype(int)?

In [16]: df = pd.DataFrame([' 164', '164', '164 ', '  164  '])

In [17]: df
Out[17]: 
         0
0      164
1      164
2     164 
3    164  

[4 rows x 1 columns]

In [18]: df.dtypes
Out[18]: 
0    object
dtype: object

In [19]: df[0] = df[0].astype(int)

In [20]: df.dtypes
Out[20]: 
0    int64
dtype: object

In [21]: df
Out[21]: 
     0
0  164
1  164
2  164
3  164

[4 rows x 1 columns]
share|improve this answer
    
I am new to python but I am not stupid :P –  sau Jan 28 '14 at 10:47
    
I am looking into string because astype(int) not working so I thought something is wrong in the data itself which I have not figured out yet. –  sau Jan 28 '14 at 10:49

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