1

I am translating this piece of sas code into pandas. The sas code basically groups observations by a key. Within each group, it creates a new variable A, where A[0] = B[0] / C[0] / .25. Then for i >= 1, A[i] = A[i - 1] * .85 + B[i] / C[i]. B and C are other variables in the dataframe.

I don't think any df.groupby().attribute does this.

data data;
set data2;
by key1 key2;
retain A;
if first.key1 then A = (B / C) /(.25);
else A = A * .85 + B / C;
run;

Expected output for group g01

key1 B C A
g01  1 2 2       2     = 1 / 2 /.25
g01  2 1 3.7     3.7   = 2   * .85 + 2 / 1
g01  2 4 3.645   3.645 = 3.7 * .85 + 2 / 4

I have been thinking about getting the group keys first and loop over these group names. But maybe there is a better way?

  • 3
    please give your sample input and output , someone may be help you – Kiran Jan 9 at 1:27
  • you can check the apply function which you can pass with groupby, however we would need sample data and an output as @Kiran said to reproduce the issue and come up with any solution. :) – anky_91 Jan 9 at 5:04
  • Hi, thanks! I add the expected output. Can you guys please take a look? – user9439811 Jan 9 at 21:11
0

The following solution works using pd.iterrows(), given that you have a DataFrame df containing the columns B and C that hold the values, as well as a column key1 that holds the groups name:

g = None
for i, r in df.iterrows():
    if g != r.key1:
        a = r.B / r.C / .25
    else:
        a = a * .85 + r.B / r.C
    df.loc[i, 'A'] = a
    g = r.key1

It is impossible to tackle this problem in a parallel fashion, because of the loop dependency, that is indicated by your use of [i - 1] and my caching of the variable a and g.

  • Thanks for the help! Two questions:1. does this work by group? This program seems to iter over the entire dataframe. 2. instead of "if not a", do you mean "if a"? The calculation of a for the first one in each group should be different from the rest of the group – user9439811 Jan 10 at 2:04
  • 1. Yes, it does now. I reread your question and adapted the answer. 2. The if not a was correct, as is the != which checks for a group change. You might need to sort the dataframe by group first for this to work though. – feliks Jan 10 at 2:22

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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