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I am starting to use Pandas as a db substitute as I have multiple databases (oracle,mssql, etc) and I am unable to make a sequence of commands to a SQL equivalent.

I have a table loaded in a DataFrame with some columns:

YEARMONTH, CLIENTCODE, SIZE, .... etc etc

In SQL, to count the amount of different clients per year would be:

Select count(distinct CLIENTCODE) from table group by YEARMONTH

And the result would be

201301    5000
201302    13245

How can I do that in PANDAS?

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I have done table.groupby(['YEARMONTH'])['CLIENTCODE'].unique() and came with two series indexed by YEARMONTH and with all the unique values. How to count the amount of values on each series? –  Adriano Almeida Mar 14 '13 at 14:04

2 Answers 2

up vote 16 down vote accepted

Apologies for my false start. I believe this is what you want.

table.groupby('YEARMONTH').CLIENTCODE.nunique()

Example:

In [2]: table
Out[2]: 
   CLIENTCODE  YEARMONTH
0           1     201301
1           1     201301
2           2     201301
3           1     201302
4           2     201302
5           2     201302
6           3     201302

In [3]: table.groupby('YEARMONTH').CLIENTCODE.nunique()
Out[3]: 
YEARMONTH
201301       2
201302       3
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1  
No need for the .apply, I think; .CLIENTCODE.nunique() should work too. –  DSM Mar 14 '13 at 14:12
    
MANNNN, i just did the same thing you did, before refreshing the browser. F%$¨& finally. Thanks a lot anyway!!! –  Adriano Almeida Mar 14 '13 at 14:17
    
Ha. Well, that sounds more satisfying anyway. Cheers! –  Dan Allan Mar 14 '13 at 14:19

Interestingly enough, very often len(unique()) is a few times (3x-15x) faster than nunique().

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