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Suppose I have a df which has columns of 'ID', 'col_1', 'col_2'. And I define a function :

f = lambda x, y : my_function_expression.

Now I want to apply the f to df's two columns 'col_1', 'col_2' to element-wise calculate a new column 'col_3' , somewhat like :

df['col_3'] = df[['col_1','col_2']].apply(f)  
# Pandas gives : TypeError: ('<lambda>() takes exactly 2 arguments (1 given)'

How to do ?

** Add detail sample as below ***

import pandas as pd

df = pd.DataFrame({'ID':['1','2','3'], 'col_1': [0,2,3], 'col_2':[1,4,5]})
mylist = ['a','b','c','d','e','f']

def get_sublist(sta,end):
    return mylist[sta:end+1]

#df['col_3'] = df[['col_1','col_2']].apply(get_sublist,axis=1)
# expect above to output df as below 

  ID  col_1  col_2            col_3
0  1      0      1       ['a', 'b']
1  2      2      4  ['c', 'd', 'e']
2  3      3      5  ['d', 'e', 'f']
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3  
can you apply f directly to columns: df['col_3'] = f(df['col_1'],df['col_2']) –  btel Nov 11 '12 at 13:59
    
would be useful to know what f is doing –  tehmisvh Nov 11 '12 at 14:04
1  
no, df['col_3'] = f(df['col_1'],df['col_2']) not work. For f only accepts scalar input , not vector inputs. OK, you can assume f = lambda x,y : x+y . (of course, my real f is not that simple, otherwise i can directly df['col_3'] = df['col_1'] + df['col_2'] ) –  bigbug Nov 11 '12 at 14:17
    
I found a related Q&A at below url, but my issue is calculating a new column by two existing columns, not 2 from 1 . stackoverflow.com/questions/12356501/… –  bigbug Nov 11 '12 at 14:22
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2 Answers

Here's an example using apply on the dataframe, which I am calling with axis = 1.

Note the difference is that instead of trying to pass two values to the function f, rewrite the function to accept a pandas Series object, and then index the Series to get the values needed.

In [49]: df
Out[49]: 
          0         1
0  1.000000  0.000000
1 -0.494375  0.570994
2  1.000000  0.000000
3  1.876360 -0.229738
4  1.000000  0.000000

In [50]: def f(x):    
   ....:  return x[0] + x[1]  
   ....:  

In [51]: df.apply(f, axis=1) #passes a Series object, row-wise
Out[51]: 
0    1.000000
1    0.076619
2    1.000000
3    1.646622
4    1.000000

Depending on your use case, it is sometimes helpful to create a pandas group object, and then use apply on the group.

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Yes, i tried to use apply, but can't find the valid syntax expression. And if each row of df is unique, still use groupby? –  bigbug Nov 12 '12 at 10:42
    
Added an example to my answer, hope this does what you're looking for. If not, please provide a more specific example function since sum is solved successfully by any of the methods suggested so far. –  Aman Nov 12 '12 at 14:51
    
i provide a detail sample in question. How to use Pandas 'apply' function to create 'col_3' ? –  bigbug Nov 13 '12 at 13:02
    
@bigbug My answer is apply-cable (haha) for the example you added to your question. Use apply on the whole dataframe, passing in rows with df.apply(f, axis=1). Then rewrite your function get_sublist(x) to index the col values like this start_idx = x[1], end_idx = x[2]. –  Aman Nov 13 '12 at 15:49
    
Would you pls paste your code ? I rewrite the function: def get_sublist(x): return mylist[x[1]:x[2] + 1] and df['col_3'] = df.apply(get_sublist, axis=1) gives 'ValueError: operands could not be broadcast together with shapes (2) (3)' –  bigbug Nov 16 '12 at 7:11
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The way you have written f it needs two inputs. If you look at the error message it says you are not providing two inputs to f, just one. The error message is correct.
The mismatch is because df[['col1','col2']] returns a single dataframe with two columns, not two separate columns.

You need to change your f so that it takes a single input, keep the above data frame as input, then break it up into x,y inside the function body. Then do whatever you need and return a single value.

You need this function signature because the syntax is .apply(f) So f needs to take the single thing = dataframe and not two things which is what your current f expects.

Since you haven't provided the body of f I can't help in anymore detail - but this should provide the way out without fundamentally changing your code or using some other methods rather than apply

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