10

I have a dataframe with 4 columns an ID and three categories that results fell into

  <80% 80-90 >90
id
1   2     4    4
2   3     6    1
3   7     0    3

I would like to convert it to percentages ie:

   <80% 80-90 >90
id
1   20%   40%  40%
2   30%   60%  10%
3   70%    0%  30%

this seems like it should be within pandas capabilities but I just can't figure it out.

Thanks in advance!

  • 1
    Please provide an example dataframe, your numbers are a bit hard to interpret at first glace. – instant Feb 2 '17 at 15:41
  • I'm not sure how to post the dataframe and I appologize my example lost its format but I have an index of ID and colums for <80%, 80%-90% and >90%. then I have data in the rows so row 0 may be iindex 1 with [3, 4,3] . I would like row 0 index 1 to have 30%, 40%, 30%. I am very new to pandas sorry i am still explaining it poorly. – DTATSO Feb 2 '17 at 15:56
  • I guess it actually looks more like this: results <80%, 80%-90%, >90% id 1 3 4 3 2 7 3 0 and I want: results <80%, 80%-90%, >90% id 1 30% 40% 30% 2 70% 30% 0% – DTATSO Feb 2 '17 at 15:57
14

You can do this using basic pandas operators .div and .sum, using the axis argument to make sure the calculations happen the way you want:

cols = ['<80%', '80-90', '>90']
df[cols] = df[cols].div(df[cols].sum(axis=1), axis=0).multiply(100)
  • Calculate the sum of each column (df[cols].sum(axis=1). axis=1 makes the summation occur across the rows, rather than down the columns.
  • Divide the dataframe by the resulting series (df[cols].div(df[cols].sum(axis=1), axis=0). axis=0 makes the division happen across the columns.
  • To finish, multiply the results by 100 so they are percentages between 0 and 100 instead of proportions between 0 and 1 (or you can skip this step and store them as proportions).
  • Thank you so much this did the trick. Thanks for explaining the portions as well. Pandas seems to be a great tool that hopefully I'll get better at soon. – DTATSO Feb 2 '17 at 16:23
  • "Proportions" are percentages. 0.1 IS 10%. The % is basically a "divide by 100" operator. Putting 100 there is wrong and will probably lead to all kinds of errors down the line. – Jan Christoph Terasa Feb 2 '17 at 16:25
  • @ChristophTerasa I'm not sure I follow. I understand that you can express the same value as 0.1 or as 10%, but the OP asked for the latter. Whether or not that leads to problems down the line depends on the OP's use case - maybe it needs to be in % format for some reason. – ASGM Feb 2 '17 at 16:38
  • OK, maybe "wrong" is not the correct word here. Your solution certainly is correct. I should probably say it is a dangerous paradigm. You cannot store 10% in a DataFrame/array, but you can store 0.1. – Jan Christoph Terasa Feb 2 '17 at 16:52
0
df/df.sum()

If you want to divide the sum of rows, transpose it first.

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