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
DataFrame.max
andDataFrame.idxmax
pd.concat([df.idxmax(1),df.max(1)],1)