6

In the dataframe below, I would like to eliminate the duplicate cid values so the output from df.groupby('date').cid.size() matches the output from df.groupby('date').cid.nunique().

I have looked at this post but it does not seem to have a solid solution to the problem.

df = pd.read_csv('https://raw.githubusercontent.com/108michael/ms_thesis/master/crsp.dime.mpl.df')

df.groupby('date').cid.size()

date
2005       7
2006     237
2007    3610
2008    1318
2009    2664
2010     997
2011    6390
2012    2904
2013    7875
2014    3979

df.groupby('date').cid.nunique()

date
2005      3
2006     10
2007    227
2008     52
2009    142
2010     57
2011    219
2012     99
2013    238
2014    146
Name: cid, dtype: int64

Things I tried:

  1. df.groupby([df['date']]).drop_duplicates(cols='cid') gives this error: AttributeError: Cannot access callable attribute 'drop_duplicates' of 'DataFrameGroupBy' objects, try using the 'apply' method
  2. df.groupby(('date').drop_duplicates('cid')) gives this error: AttributeError: 'str' object has no attribute 'drop_duplicates'
  • Your 2nd attribute error is simply caused by executing this: ('date').drop_duplicates('cid'), it has nothing to do with pandas. Indeed, the error message is telling you that 'date', a str type object, doesn't have an attribute called drop_duplicates. – OrangeSherbet Apr 30 at 4:51
17

You don't need groupby to drop duplicates based on a few columns, you can specify a subset instead:

df2 = df.drop_duplicates(["date", "cid"])
df2.groupby('date').cid.size()
Out[99]: 
date
2005      3
2006     10
2007    227
2008     52
2009    142
2010     57
2011    219
2012     99
2013    238
2014    146
dtype: int64
  • Thank you for commenting! Yes, that worked! I wondering about some sort of subset. – Michael Perdue May 8 '16 at 22:58
  • 1
    You are welcome. This works mainly because grouping on date and looking for the rows having the same cid in each group is the same as looking for rows in the main dataframe that have the same date and cid. – ayhan May 8 '16 at 23:09

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