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