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I am looking for an efficient way to remove unwanted parts from strings in a DataFrame column.

Data looks like:

    time    result
1    09:00   +52A
2    10:00   +62B
3    11:00   +44a
4    12:00   +30b
5    13:00   -110a

I need to trim these data to:

    time    result
1    09:00   52
2    10:00   62
3    11:00   44
4    12:00   30
5    13:00   110

I tried .str.lstrip('+-') and .str.rstrip('aAbBcC'), but got an error: TypeError: wrapper() takes exactly 1 argument (2 given)

Any pointers would be greatly appreciated!

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5 Answers 5

up vote 10 down vote accepted
data['result'] = data['result'].map(lambda x: x.lstrip('+-').rstrip('aAbBcC'))
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thx! that works. I'm still wrapping my mind around map(), not sure when to use or not use it... –  Yannan Wang Dec 3 '12 at 12:21
I was pleased to see that this method also works with the replace function. –  BKay Jan 16 '13 at 21:27

There's a bug here: currently cannot pass arguments to str.lstrip and str.rstrip:


EDIT: 2012-12-07 this works now on the dev branch:

In [8]: df['result'].str.lstrip('+-').str.rstrip('aAbBcC')
1     52
2     62
3     44
4     30
5    110
Name: result
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It seems to work for me though, am I missing sth here? –  Yannan Wang Dec 4 '12 at 9:53

In the particular case where you know the number of positions that you want to remove from the dataframe column, you can use string indexing inside a lambda function to get rid of that parts:

Last character:

data['result'] = data['result'].map(lambda x: str(x)[:-1])

First two characters:

data['result'] = data['result'].map(lambda x: str(x)[2:])
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i'd use the pandas replace function, very simple and powerful as you can use regex. Below i'm using the regex \D to remove any non-digit characters but obviously you could get quite creative with regex.

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I've found big differences in performance between the various methods for doing things like this (i.e. modifying every element of a series within a DataFrame). Often a list comprehension can be fastest - see code race below:

import pandas as pd
data = pd.DataFrame({'time':['09:00','10:00','11:00','12:00','13:00'], 'result':['+52A','+62B','+44a','+30b','-110a']})
%timeit data['result'] = data['result'].map(lambda x: x.lstrip('+-').rstrip('aAbBcC'))
10000 loops, best of 3: 187 µs per loop
#List comprehension
data = pd.DataFrame({'time':['09:00','10:00','11:00','12:00','13:00'], 'result':['+52A','+62B','+44a','+30b','-110a']})
%timeit data['result'] = [x.lstrip('+-').rstrip('aAbBcC') for x in data['result']]
10000 loops, best of 3: 117 µs per loop
data = pd.DataFrame({'time':['09:00','10:00','11:00','12:00','13:00'], 'result':['+52A','+62B','+44a','+30b','-110a']})
%timeit data['result'] = data['result'].str.lstrip('+-').str.rstrip('aAbBcC')
1000 loops, best of 3: 336 µs per loop
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