Relatively new Python scripter here with a quick question about Pandas and DataFrames. There may be an easier method in Python to do what I am doing (outside of Pandas), so I am open to any and all suggestions.

I have a large data-set (don't we all), with dozens of attributes and tens of thousands of entries. I have successfully opened it (.csv file) and removed the unnecessary columns for the exercise, as well as used pandas techniques I learned from other questions here to parry down the table to something I can use

As an example, I now have dataframe df, with three columns - A, B and C. I need to find the index of the max of A and then pull the values of B and C at that index. Based off research on the best method, it seemed that idxmax was the best option.

MaxIDX = df['A'].idxmax()

This gives me the correct answer, however when I try to then grab a value using at based on this variable, I am getting errors. I believe it is because idxmax produces a series, and not an integer output.

variable = df.at[MaxIDX, 'B']

So the question I have is kind of two part.

How do I convert the series to the proper input for at? And, is there an easier way to do this that I am completely missing? All I want to do is get the index of the max of column A, and then pull the values of Column B and C at that index.

Any help is appreciated. Thanks a bunch! Cheers!

Note: Using: Python 3.6.4 and Pandas 0.22.0

df = pd.DataFrame(np.random.randn(5, 3), columns=list('ABC'))


          A         B         C
0  1.764052  0.400157  0.978738
1  2.240893  1.867558 -0.977278
2  0.950088 -0.151357 -0.103219
3  0.410599  0.144044  1.454274
4  0.761038  0.121675  0.443863


What you claim fails, seems to work for me:

df.at[df.A.idxmax(), 'B']

Although, based on your explanation, you may instead want loc, not at:

df.loc[df.A.idxmax(), ['B', 'C']]

B    1.867558
C   -0.977278
Name: 1, dtype: float64

Note: You may want to check that your index does not contain duplicate entries. This is one possible reason for failure.

  • Thank you. The compound statement even helps me clean this up a bit, really appreciate it. The issue I am getting with the at is the TypeError: Only Integer scalar arrays can be converted to a scalar index. Could this have anything to do with my dataframe going through a groupby prior (I have as_index set to false), or the type of data contained? I am a novice so I'm trying to think for myself as well as ask. The loc does work, so thank you! Still, I would like to understand the type issue and not just accept an answer. I want to learn and not let everyone else do my work :) – Densoto Mar 5 '18 at 4:41
  • @Densoto Hard to say, since it seems the problem is based on your data (which I don't have)... – cs95 Mar 5 '18 at 4:44
  • Another possibility is that you're dealing with an older version of pandas, and so you may want to upgrade to the latest (0.22 now I believe). (pip install --upgrade pandas – cs95 Mar 5 '18 at 4:45
  • No problems. Thank you for the help. Really appreciate it. – Densoto Mar 5 '18 at 4:50
  • @Densoto Though let me just take a moment to appreciate your desire to learn. Very commendable. Great moves, keep it up! – cs95 Mar 5 '18 at 5:00

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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