164

Let's say I have a DataFrame that looks like this:

a  b  c  d  e  f  g  
1  2  3  4  5  6  7
4  3  7  1  6  9  4
8  9  0  2  4  2  1

How would I go about deleting every column besides a and b?

This would result in:

a  b
1  2
4  3
8  9

I would like a way to delete these using a simple line of code that says, delete all columns besides a and b, because let's say hypothetically I have 1000 columns of data.

Thank you.

6 Answers 6

157
In [48]: df.drop(df.columns.difference(['a','b']), 1, inplace=True)
Out[48]:
   a  b
0  1  2
1  4  3
2  8  9

or:

In [55]: df = df.loc[:, df.columns.intersection(['a','b'])]

In [56]: df
Out[56]:
   a  b
0  1  2
1  4  3
2  8  9

PS please be aware that the most idiomatic Pandas way to do that was already proposed by @Wen:

df = df[['a','b']]

or

df = df.loc[:, ['a','b']]
3
104

Another option to add to the mix. I prefer this approach for readability.

df = df.filter(['a', 'b'])

Where the first positional argument is items=[]


Bonus

You can also use a like argument or regex to filter.
Helpful if you have a set of columns like ['a_1','a_2','b_1','b_2']

You can do

df = df.filter(like='b_')

and end up with ['b_1','b_2']

Pandas documentation for filter.

59

there are multiple solution .

df = df[['a','b']] #1

df = df[list('ab')] #2

df = df.loc[:,df.columns.isin(['a','b'])] #3

df = pd.DataFrame(data=df.eval('a,b').T,columns=['a','b']) #4 PS:I do not recommend this method , but still a way to achieve this 
1
  • 7
    df = df[['a','b']] if you looking to work on subset.
    – Zero
    Aug 23, 2017 at 17:50
5

Hey what you are looking for is:

df = df[["a","b"]]

You will recive a dataframe which only contains the columns a and b

2
  • As it’s currently written, your answer is unclear. Please edit to add additional details that will help others understand how this addresses the question asked. You can find more information on how to write good answers in the help center.
    – lemon
    Jun 2, 2022 at 14:14
  • This is no different than @BENY's answer's first option.
    – Akaisteph7
    Sep 19, 2022 at 16:47
3

If you only want to keep more columns than you're dropping put a "~" before the .isin statement to select every column except the ones you want:

df = df.loc[:, ~df.columns.isin(['a','b'])]
1
  • This is the only answer. "drop columns except". Thanks, I was looking for this.
    – Natacha
    Oct 29, 2020 at 19:28
2

If you have more than two columns that you want to drop, let's say 20 or 30, you can use lists as well. Make sure that you also specify the axis value.

drop_list = ["a","b"]
df = df.drop(df.columns.difference(drop_list), axis=1)

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