3

I have the following dataframe:

    a    b    c    d    e
    1   .90  .95  .83  .56
   .95  .96  .87  .83  .63
   .83  .87  .83  .95  .81

How do I find the max value per row and the column it came from, so that it looks like:

a   1
b  .96
d  .95
2
  • read about DataFrame.max and DataFrame.idxmax
    – Paul H
    Sep 26, 2019 at 19:42
  • pd.concat([df.idxmax(1),df.max(1)],1)
    – harvpan
    Sep 26, 2019 at 19:44

4 Answers 4

5

using np.argmax and df.lookup:

s=pd.Series(df.columns[np.argmax(df.values,axis=1)])
final=pd.DataFrame(df.lookup(s.index,s),s)
0
5

Try this:

result = df.max(axis=1)
result.index = df.idxmax(axis=1)
1
  • You just answered a few minutes before me while I was verifying my program :) Sep 26, 2019 at 19:49
2

You can use idxmax() function:

import pandas as pd
a = {'a':[100,95,83],'b':[90,96,87],'c':[95,87,83],'d':[83,83,95],'e':[56,63,81]}
df = pd.DataFrame(a)
print(df)

Dataframe looks like this:

     a   b   c   d   e
0  100  90  95  83  56
1   95  96  87  83  63
2   83  87  83  95  81

Using the function idxmax we get which column does the max value per row belong:

print(df.idxmax(axis=1))

Output:

0    a
1    b
2    d

Concatenating it with the original dataframe, to the get the corresponing value, given the column it belongs to.

df_result = pd.concat([df.idxmax(axis=1),df.max(axis=1)],axis=1)
print(df_result)

Output:

   0    1
0  a  100
1  b   96
2  d   95
1
maxRow = df.idxmax(1)
maxValue = df.max(1)
print(pd.concat([maxRow , maxValue],1))

The maxRow variable gives the id of the maximum valued row in the dataframe,the 1 to to set the axis to row instead of column, Similarly, the maxValue gets the maxValues of the rows pd.concat is to zip these two lists into a dataframe

1
  • 1
    Cheers, still new to answering Sep 27, 2019 at 11:33

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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