161

Cleaning the values of a multitype data frame in python/pandas, I want to trim the strings. I am currently doing it in two instructions :

import pandas as pd

df = pd.DataFrame([['  a  ', 10], ['  c  ', 5]])

df.replace('^\s+', '', regex=True, inplace=True) #front
df.replace('\s+$', '', regex=True, inplace=True) #end

df.values

This is quite slow, what could I improve ?

4
  • 6
    df.replace(r'\s*(.*?)\s*', r'\1', regex=True) Commented Dec 3, 2016 at 17:11
  • 1
    This is the best answer, just logged in to up-vote the answer by @MaxU
    – Linkon
    Commented Sep 28, 2020 at 15:54
  • Answer by @MaxU is the most simple one. Thanks
    – moys
    Commented May 27, 2022 at 6:06
  • I added benchmarks for answers below. Please be aware that the one in the comments here is very slow. Use appropriately. Commented Jul 8, 2022 at 16:47

10 Answers 10

283

You can use DataFrame.select_dtypes to select string columns and then apply function str.strip.

Notice: Values cannot be types like dicts or lists, because their dtypes is object.

df_obj = df.select_dtypes('object')
#if need also processing string categories
#df_obj = df.select_dtypes(['object', 'category'])
print (df_obj)
0    a  
1    c  

df[df_obj.columns] = df_obj.apply(lambda x: x.str.strip())
print (df)

   0   1
0  a  10
1  c   5

But if there are only a few columns use str.strip:

df[0] = df[0].str.strip()
2
  • 3
    And SettingWithCopyWarning should be ignored in this case as explained stackoverflow.com/questions/20625582/…
    – Hrvoje
    Commented Dec 21, 2018 at 9:09
  • 3
    If you have strings such as N/A you will want to add the parameter na_action="ignore") when doing df_obj.apply, or else pandas will convert those values to empty strings Commented Jun 21, 2022 at 22:56
143

Money Shot

Here's a compact version of using applymap with a straightforward lambda expression to call strip only when the value is of a string type:

df.applymap(lambda x: x.strip() if isinstance(x, str) else x)

Full Example

A more complete example:

import pandas as pd


def trim_all_columns(df):
    """
    Trim whitespace from ends of each value across all series in dataframe
    """
    trim_strings = lambda x: x.strip() if isinstance(x, str) else x
    return df.applymap(trim_strings)


# simple example of trimming whitespace from data elements
df = pd.DataFrame([['  a  ', 10], ['  c  ', 5]])
df = trim_all_columns(df)
print(df)


>>>
   0   1
0  a  10
1  c   5

Working Example

Here's a working example hosted by trinket: https://trinket.io/python3/e6ab7fb4ab

6
  • 1
    Hi @DaleKube ... I just tried this fresh on a new machine just as a sanity check and I get the same results as posted in the answer. Can you confirm whether you are using Python2 or Python3? I'm only using Python3 these days, but perhaps that might be a factor. If so, I'll note that in my posted answer if you are able to confirm. Thanks! Commented Nov 21, 2017 at 21:40
  • 1
    I deleted my comment. I found a bug in my code, and I can confirm that it now works like a charm. FYI, I am using Python 3. Sorry for the trouble.
    – Dale Kube
    Commented Nov 22, 2017 at 17:14
  • 1
    you should use type(x) == str, not type(x) is str
    – fjsj
    Commented Jun 12, 2019 at 20:09
  • 1
    @fjsj Thanks for the nudge. I've updated the example using PEP8 guidance favoring isinstance(x, str). Commented Jun 13, 2019 at 15:55
  • nice solution!, this does not trim column names if i load df from a csv
    – csf
    Commented Jul 8, 2022 at 13:53
16

You can try:

df[0] = df[0].str.strip()

or more specifically for all string columns

non_numeric_columns = list(set(df.columns)-set(df._get_numeric_data().columns))
df[non_numeric_columns] = df[non_numeric_columns].apply(lambda x : str(x).strip())
1
  • this will fail if you have nans Commented May 5, 2022 at 13:01
13

If you really want to use regex, then

>>> df.replace('(^\s+|\s+$)', '', regex=True, inplace=True)
>>> df
   0   1
0  a  10
1  c   5

But it should be faster to do it like this:

>>> df[0] = df[0].str.strip()
10

You can use the apply function of the Series object:

>>> df = pd.DataFrame([['  a  ', 10], ['  c  ', 5]])
>>> df[0][0]
'  a  '
>>> df[0] = df[0].apply(lambda x: x.strip())
>>> df[0][0]
'a'

Note the usage of strip and not the regex which is much faster

Another option - use the apply function of the DataFrame object:

>>> df = pd.DataFrame([['  a  ', 10], ['  c  ', 5]])
>>> df.apply(lambda x: x.apply(lambda y: y.strip() if type(y) == type('') else y), axis=0)

   0   1
0  a  10
1  c   5
1
  • 2
    df[0] = df[0].str.strip() - will, most probably, be faster on bigger DFs Commented Dec 3, 2016 at 17:24
3

@jezrael answer is looking good. But if you want to get back the other (numeric/integer etc) columns as well in the final result set then you suppose need to merge back with original DataFrame.

If it is the case then you may use this approach,

df = df.apply(lambda x: x.str.strip() if x.dtype.name == 'object' else x, axis=0)

Thanks!

3

Strip alone does not remove the inner extra spaces in a string. The workaround to this is to first replace one or more spaces with a single space. This ensures that we remove extra inner spaces and outer spaces.

# Import packages
import re 

# First inspect the dtypes of the dataframe
df.dtypes

# First replace one or more spaces with a single space. This ensures that we remove extra inner spaces and outer spaces.
df = df.applymap(lambda x: re.sub('\s+', ' ', x) if isinstance(x, str) else x)


# Then strip leading and trailing white spaces
df = df.apply(lambda x: x.str.strip() if isinstance(x, object) else x)
2

Benchmarks for best answers:

bm = Benchmark()
df = pd.read_excel(
    path, 
    sheet_name=advantage_sheet_name, 
    parse_dates=True
)
bm.mark('Loaded')

# @jezrael 's answer (accepted answer)
dfClean_1 = df\
    .select_dtypes(['object'])\
    .apply(lambda x: x.str.strip())
bm.mark('Clean method 1')

# @Jonathan B. answer 
dfClean_2 = df\
    .applymap(lambda x: x.strip() if isinstance(x, str) else x)
bm.mark('Clean method 2')

#@MaxU - stop genocide of UA / @Roman Pekar answer 
dfClean_3 = df\
    .replace(r'\s*(.*?)\s*', r'\1', regex=True)
bm.mark('Clean method 3')

Results

145.734375 - 145.734375 : Loaded
147.765625 - 2.03125 : Clean method 1
155.109375 - 7.34375 : Clean method 2
288.953125 - 133.84375 : Clean method 3
0

how about (for string columns)

df[col] = df[col].str.replace(" ","")

never fails

1
  • 2
    This would not only strip the ends of the string but also all the spaces within the string itself
    – skjerns
    Commented Nov 23, 2022 at 17:56
-3
def trim(x):
    if x.dtype == object:
        x = x.str.split(' ').str[0]
    return(x)

df = df.apply(trim)
3
  • 1
    Could you explain what the function is doing please?
    – CJ Dennis
    Commented May 9, 2018 at 3:46
  • for example, I encounter data such like this in my daily job: 가나다 봻 left part of blank is what I want, right part is garbage. trim function extract what I want from raw data. Commented May 9, 2018 at 8:17
  • 1
    Downvoted because this does not trim the string, it removes everything following the first space. This is not the behaviour asked for in the question, and introduces side-effects that a reader may not be expecting. Moreover, the side-effects may not be immediately apparent. If you are trying to trim a column of Last Names, you might think this is working as intended because most people don't have multiple last names and trailing spaces are yes removed. Then a Portuguese person with two Last Names joins your site and the code trims away their last Last Name, leaving only their first Last Name.
    – scottclowe
    Commented Nov 24, 2019 at 20:52

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