Suppose I have the following:

df = pd.DataFrame({'a':range(2), 'b':range(2), 'c':range(2), 'd':range(2)})

I'd like to "pop" two columns ('c' and 'd') off the dataframe, into a new dataframe, leaving 'a' and 'b' behind in the original df. The following does not work:

df2 = df.pop(['c', 'd'])

Here's my error:

TypeError: '['c', 'd']' is an invalid key

Does anyone know a quick, classy solution, besides doing the following?

df2 = df[['c', 'd']]
df3 = df[['a', 'b']]

I know the above code is not that tedious to type, but this is why DataFrame.pop was invented--to save us a step when popping one column off a database.

  • I have no idea if this works, but did you try df.pop([['c', 'd']])? – ChootsMagoots Mar 16 '18 at 21:13
  • 1
    pop returns a Series, so you can only pop a single column. – ALollz Mar 16 '18 at 21:14
  • @ChootsMagoots, if I try what you propose, it says TypeError: unhashable type: 'list' – Sean McCarthy Mar 16 '18 at 21:14
  • 1
    You could do something like pd.DataFrame([df.pop(x) for x in ['c', 'd']]).T but I don't know if that's easier that your not-classy solution. – pault Mar 16 '18 at 21:15

This will have to be a two step process (you cannot get around this, because as rightly mentioned, pop works for a single column and returns a Series).

First, slice df (step 1), and then drop those columns (step 2).

df2 = df[['c', 'd']].copy()
df = df.drop(['c', 'd'], axis=1)

And here's the ugly alternative using pd.concat:

df2 = pd.concat([df.pop(x) for x in ['c', 'd']], axis=1)

This is still a two step process, but you're doing it in one line.


   a  b
0  0  0
1  1  1


   c  d
0  0  0
1  1  1

With that said, I think there's value in allowing pop to take a list-like of column headers appropriately returning a DataFrame of popped columns. This would make a good feature request for GitHub, assuming one has the time to write one up.

  • 1
    Defining df and then running the command df2 = df[['c', 'd']].copy() returns error '['c', 'd']' is an invalid key. Is this answer outdated or am I missing something? – la_leche Feb 14 '19 at 4:41
  • @la_leche did you do df['c', 'd'] by mistake? Or perhaps you passed a string instead of a list by accident? – cs95 Feb 14 '19 at 5:10
  • 1
    Could you comment if you know the memory footprint diff between your 2 lines vs. 1 line approach. I think the one-liner IMO is more elegant (not ugly). The 2 liners may result in more human typo if # of columns is larger. – kawingkelvin Jun 27 '20 at 14:08

Here's an alternative, but I'm not sure if it's more classy than your original solution:

df2 = pd.DataFrame([df.pop(x) for x in ['c', 'd']]).T
df3 = pd.DataFrame([df.pop(x) for x in ['a', 'b']]).T


#   c  d
#0  0  0
#1  1  1

#   a  b
#0  0  0
#1  1  1
  • 1
    You can get around the unnecessary transposition by using pd.concat instead. But +1 – cs95 Mar 16 '18 at 21:18
  • Ah, I see with axis=1 - that's what I was missing. – pault Mar 16 '18 at 21:20

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.