I need to divide all but the first columns in a DataFrame by the first column.

Here's what I'm doing, but I wonder if this isn't the "right" pandas way:

df = pd.DataFrame(np.random.rand(10,3), columns=list('ABC'))

df[['B', 'C']] = (df.T.iloc[1:] / df.T.iloc[0]).T

Is there a way to do something like df[['B','C']] / df['A']? (That just gives a 10x12 dataframe of nan.)

Also, after reading some similar questions on SO, I tried df['A'].div(df[['B', 'C']]) but that gives a broadcast error.


I believe df[['B','C']].div(df.A, axis=0) and df.iloc[:,1:].div(df.A, axis=0) work.

  • 1
    This works great, but the resulting data frame is missing other columns that are not used in the above division. For example, if there is a column D that is not divided by A, the resulting data frame is missing column D and the column A. Any way to overcome this? – NAGA Oct 11 '18 at 14:02
  • I think I found a way for my data set. I moved the column D to index using pd.set_index() and after the division got back to the data set. – NAGA Oct 11 '18 at 14:06
  • @NAGA, does your method of moving one column D to index work if you have multiple columns to ignore (ie to not divide through)? – alancalvitti Mar 4 at 20:11
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    I believe you can also do df.loc[:, cols] = df.loc[:, cols].div(df['A'], axis=0), to only divide a subset of the columns – Ken Syme May 21 at 11:25
  • 3
    no need to move column D to index, just do this: df[['B','C']] = df[['B','C']].div(df.A, axis=0). All other columns are preserved in the dataframe df – noleto Jul 5 at 15:17

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