3
import pandas as pd

Let's say I have a dataframe like so:

df = pd.DataFrame({"a":range(4),"b":range(1,5)})

it looks like this:

   a  b
0  0  1
1  1  2
2  2  3
3  3  4

and a function that multiplies X by Y:

def XtimesY(x,y):
    return x*y

If I want to add a new pandas series to df I can do:

df["c"] =df.apply( lambda x:XtimesY(x["a"],2), axis =1)

It works !

Now I want to add multiple series:

I have this function:

def divideAndMultiply(x,y):
    return x/y, x*y

something like this ?:

df["e"], df["f"] = df.apply( lambda x: divideAndMultiply(x["a"],2) , axis =1)

It doesn't work !

I want the 'e' column to receive the divisions and 'f' column the multiplications !

Note: This is not the code I'm using but I'm expecting the same behavior.

5

UPDATE

Updated for version 0.23 - using result_type='broadcast' for further details refer to documentation

Redefine your function like this:

def divideAndMultiply(x,y):
    return [x/y, x*y]

Then do this:

df[['e','f']] = df.apply(lambda x: divideAndMultiply(x["a"], 2), axis=1, result_type='broadcast')

You shall get the desired result:

In [118]: df
Out[118]:
   a  b  e  f
0  0  1  0  0
1  1  2  0  2
2  2  3  1  4
3  3  4  1  6
  • I've seen this answer multiple times, but any time I've tried, I get KeyError: "['e', 'f'] not in index. I think pandas must have changed, does it still work for you @Abbas? – seaders Jun 18 '18 at 12:52
  • It still works. Follow the question and answer to reproduce the results. – Abbas Jun 18 '18 at 13:56
  • repl.it/@seaders/SuperbIncompatibleAudacity it doesn't, not on Python 3.6 and pandas 0.23.1 - KeyError. – seaders Jun 18 '18 at 14:29
  • 1
    @seaders you are right, this answer doesn't work in 0.23.1 & this answer works stackoverflow.com/a/36600318/1437877 – Abbas Jun 18 '18 at 15:49
  • Good stuff @Abbas, I just wanted to make sure I wasn't going crazy. I can't find anywhere in the docs that this was the correct way of doing things, to then be able to see they've changed it, so it's all pretty unclear! – seaders Jun 18 '18 at 15:51
14

Almost there. Use zip* to unpack the function. Try this:

def divideAndMultiply(x,y):
    return x/y, x*y

df["e"], df["f"] = zip(*df.a.apply(lambda val: divideAndMultiply(val,2)))
0
df["e"], df["f"] = zip(*df.apply( lambda x: divideAndMultiply(x["a"],2) , axis =1))

Should do the trick.

(I show this example so you can see how to use multiple columns as the input to create multiple new columns)

0

the following solution to this frustratingly frustrating question works for me. I found the original suggestion in another StackOverflow post a while ago. The trick is to wrap up the return values into a Series like this:

def divideAndMultiply(x,y):
    return pd.Series([x/y, x*y])

Then this works as you wanted:

df[['e','f']] = df.apply( lambda x: divideAndMultiply(x["a"],2) , axis =1)

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