20

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.

4
  • 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
23

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.

df

   a  b
0  0  0
1  1  1

df2

   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.

3
  • 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 Is this answer outdated or am I missing something?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
3

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

Output:

print(df2)
#   c  d
#0  0  0
#1  1  1

print(df3)
#   a  b
#0  0  0
#1  1  1
2
  • 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

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