I have a pandas dataframe with the following column names:

Result1, Test1, Result2, Test2, Result3, Test3, etc...

I want to drop all the columns whose name contains the word "Test". The numbers of such columns is not static but depends on a previous function.

How can I do that?


11 Answers 11


Here is one way to do this:

df = df[df.columns.drop(list(df.filter(regex='Test')))]
  • 77
    Or directly in place: df.drop(list(df.filter(regex = 'Test')), axis = 1, inplace = True)
    – Axel
    Nov 15, 2017 at 13:46
  • 11
    This is a much more elegant solution than the accepted answer. I would break it down a bit more to show why, mainly extracting list(df.filter(regex='Test')) to better show what the line is doing. I would also opt for df.filter(regex='Test').columns over list conversion
    – Charles
    Mar 13, 2018 at 23:12
  • 3
    This one is way more elegant than the accepted answer. Oct 12, 2018 at 0:22
  • 6
    I really wonder what the comments saying this answer is "elegant" means. I myself find it quite obfuscated, when python code should first be readable. It also is twice as slower than the first answer. And it uses the regex keyword when the like keyword seems to be more adequate.
    – Jacquot
    Mar 8, 2019 at 9:15
  • 4
    This is not actually as good an answer as people claim. The problem with filter is that it returns a copy of ALL the data as columns that you want to drop. It is wasteful if you're only passing this result to drop (which again returns a copy)... a better solution would be str.startswith (I've added an answer with that here).
    – cs95
    May 31, 2019 at 3:58
import pandas as pd

import numpy as np


df=pd.DataFrame(array, columns=('Test1', 'toto', 'test2', 'riri'))

print df

      Test1      toto     test2      riri
0  0.923249  0.572528  0.845464  0.144891
1  0.020438  0.332540  0.144455  0.741412

cols = [c for c in df.columns if c.lower()[:4] != 'test']


print df
       toto      riri
0  0.572528  0.144891
1  0.332540  0.741412
  • 5
    The OP didn't specify that the removal should be case insensitive. Sep 29, 2013 at 3:55

Cheaper, Faster, and Idiomatic: str.contains

In recent versions of pandas, you can use string methods on the index and columns. Here, str.startswith seems like a good fit.

To remove all columns starting with a given substring:

# array([ True, False, False, False])


  toto test2 riri
0    x     x    x
1    x     x    x

For case-insensitive matching, you can use regex-based matching with str.contains with an SOL anchor:

df.columns.str.contains('^test', case=False)
# array([ True, False,  True, False])

df.loc[:,~df.columns.str.contains('^test', case=False)] 

  toto riri
0    x    x
1    x    x

if mixed-types is a possibility, specify na=False as well.

  • 2
    Hi cs95, can you explain the syntax / thought behind the syntax a bit more? Why do we need to use the colon and comma? Thus why df.loc[:,df....] vs df.loc[df....]?
    – Hedge92
    Sep 1, 2021 at 12:05
  • 2
    Where the accepted answer do not work properly for columns ending on _drop in my test data, this solution does work. This should be the accepted answer.
    – Hedge92
    Sep 1, 2021 at 15:37

This can be done neatly in one line with:

df = df.drop(df.filter(regex='Test').columns, axis=1)
  • 1
    Similarly (and faster): df.drop(df.filter(regex='Test').columns, axis=1, inplace=True)
    – Max Ghenis
    Apr 6, 2020 at 5:00
  • 1
    for multiple conditions, this can be done df.drop(df.filter(regex='Test|Rest|Best').columns, axis=1, inplace=True)
    – Srivatsan
    Feb 3, 2022 at 12:32
  • Awesome adaptation of the above solution to filter for multiple conditions! Thank you for posting this :)
    – veg2020
    Feb 8, 2022 at 20:42
  • @MaxGhenis I don't think doing anything with inplace = True can be considered fast these days, given that developers are considering removing this parameter at all. Sep 28, 2022 at 13:02

You can filter out the columns you DO want using 'filter'

import pandas as pd
import numpy as np

data2 = [{'test2': 1, 'result1': 2}, {'test': 5, 'result34': 10, 'c': 20}]

df = pd.DataFrame(data2)


    c   result1     result34    test    test2
0   NaN     2.0     NaN     NaN     1.0
1   20.0    NaN     10.0    5.0     NaN

Now filter



   result1  result34
0   2.0     NaN
1   NaN     10.0
  • 4
    Best answer! Thanks. How do you filter opposite ? not like='result' Jul 10, 2018 at 14:21
  • 5
    then do this: df=df.drop(df.filter(like='result',axis=1).columns,axis=1)
    – Amir
    Sep 3, 2019 at 16:36

Using a regex to match all columns not containing the unwanted word:

df = df.filter(regex='^((?!badword).)*$')

Use the DataFrame.select method:

In [38]: df = DataFrame({'Test1': randn(10), 'Test2': randn(10), 'awesome': randn(10)})

In [39]: df.select(lambda x: not re.search('Test\d+', x), axis=1)
0    1.215
1    1.247
2    0.142
3    0.169
4    0.137
5   -0.971
6    0.736
7    0.214
8    0.111
9   -0.214
  • And the op did not specify that a number had to follow 'Test': I want to drop all the columns whose name contains the word "Test".
    – 7stud
    Sep 29, 2013 at 6:31
  • The assumption that a number follows Test is perfectly reasonable. Reread the question. Sep 29, 2013 at 14:41
  • 3
    now seeing: FutureWarning: 'select' is deprecated and will be removed in a future release. You can use .loc[labels.map(crit)] as a replacement Mar 12, 2019 at 18:02
  • Remember to import re beforehand.
    – ijoseph
    Jul 18, 2019 at 20:08

This method does everything in place. Many of the other answers create copies and are not as efficient:

df.drop(df.columns[df.columns.str.contains('Test')], axis=1, inplace=True)


Question states 'I want to drop all the columns whose name contains the word "Test".'

test_columns = [col for col in df if 'Test' in col]
df.drop(columns=test_columns, inplace=True)

You can use df.filter to get the list of columns that match your string and then use df.drop

resdf = df.drop(df.filter(like='Test',axis=1).columns.to_list(), axis=1)
  • This was already covered by this answer. May 10, 2020 at 11:18
  • 3
    While the answer linked in the above comment is similar, it is not the same. In fact, it's nearly the opposite.
    – Makyen
    May 10, 2020 at 19:53

Solution when dropping a list of column names containing regex. I prefer this approach because I'm frequently editing the drop list. Uses a negative filter regex for the drop list.

drop_column_names = ['A','B.+','C.*']
drop_columns_regex = '^(?!(?:'+'|'.join(drop_column_names)+')$)'
print('Dropping columns:',', '.join([c for c in df.columns if re.search(drop_columns_regex,c)]))
df = df.filter(regex=drop_columns_regex,axis=1)

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