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I stumbled across pandas and it looks ideal for simple calculations that I'd like to do. I have a SAS background and was thinking it'd replace proc freq -- it looks like it'll scale to what I may want to do in the future. However, I just can't seem to get my head around a simple task (I'm not sure if I'm supposed to look at pivot/crosstab/indexing - whether I should have a Panel or DataFrames etc...). Could someone give me some pointers on how to do the following:

I have two CSV files (one for year 2010, one for year 2011 - simple transactional data) - The columns are category and amount





These are loaded into separate DataFrame objects.

What I'd like to do is get the category, the sum of the category, and the frequency of the category, eg:





I can't work out whether I should be using pivot/crosstab/groupby/an index etc... I can get either the sum or the frequency - I can't seem to get both... It gets a bit more complex because I would like to do it on a month by month basis, but I think if someone would be so kind to point me to the right technique/direction I'll be able to go from there.

share|improve this question
So are you saying that each .csv file is just a single row, and then in that single row the first value is the year followed by the data as you present it above? – benjaminmgross Mar 7 '12 at 15:08
Hi Factor3, that's just the way S/O decided to format it (first time I've used it, so will have to look out for that in future)... Let me clarify... there's two files - 2010.csv and 2011.csv; these contain 'n' many rows each of which contain two columns. I was trying to simplify the question - but do agree the formatting is somewhat misleading now that I've read it back! – Jon Clements Mar 8 '12 at 0:10
up vote 12 down vote accepted

Assuming that you have a file called 2010.csv with contents


Then, using the ability to apply multiple aggregation functions following a groupby, you can say:

import pandas
data_2010 = pandas.read_csv("/path/to/2010.csv")
data_2010.groupby("category").agg([len, sum])

You should get a result that looks something like

            len  sum
AB            2  300
AC            1  150
AD            1  500

Note that Wes will likely come by to point out that sum is optimized and that you should probably use np.sum.

share|improve this answer
That's the push I needed - TY. I was trying all sorts with pivot_table(data_2010, rows='???', aggfunc={'???': '???'}) etc... I had a feeling I was over-complicating the problem. Thanks again. – Jon Clements Mar 8 '12 at 19:07

Thanks, Jeff. It is possible to do this using pivot_table for those interested:

In [8]: df
  category  value
0       AB    100
1       AB    200
2       AC    150
3       AD    500

In [9]: df.pivot_table(rows='category', aggfunc=[len, np.sum])
            len    sum
          value  value
AB            2    300
AC            1    150
AD            1    500

Note that the result's columns are hierarchically indexed. If you had multiple data columns, you would get a result like this:

In [12]: df
  category  value  value2
0       AB    100       5
1       AB    200       5
2       AC    150       5
3       AD    500       5

In [13]: df.pivot_table(rows='category', aggfunc=[len, np.sum])
            len            sum        
          value  value2  value  value2
AB            2       2    300      10
AC            1       1    150       5
AD            1       1    500       5

The main reason to use __builtin__.sum vs. np.sum is that you get NA-handling from the latter. Probably could intercept the Python built-in, will make a note about that now.

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