I am trying to transition some code over to Python from Stata. The following code is used to drop duplicate observations for the same id variable on the same date:

quietly by id date: gen dup = cond(_N==1,0,_n) 
drop if id >= 1

The below code is used to generate a sample python dataset. What the above code in Stata does is drop the duplicate observations. For example, on date 2014-05-01, id 1 has the same data in twice, as well as date 2014-05-02, id 2 etc. However, I would only like the data to appear once. Would anyone happen to know the equivalent code in Python?

data = {'date': ['2014-05-01', '2014-05-01','2014-05-01','2014-05-01','2014-05-01',
             '2014-05-02','2014-05-02','2014-05-02','2014-05-02','2014-05-03',
             '2014-05-03','2014-05-03','2014-05-03'],'id':[1, 1, 2, 3, 4, 1, 2,
             2, 3, 1, 1, 2, 3],'obs': [10, 10, 5, 7, 3, 2, 4, 4, 3, 8, 8, 6, 11]}

df1 = pd.DataFrame(data, columns = ['date', 'id','obs'])
df1.index = df1['date']
del df1['date']

df1

Initial Data

Out[1]: 

           id  obs
date               
2014-05-01   1   10
2014-05-01   1   10
2014-05-01   2    5
2014-05-01   3    7
2014-05-01   4    3
2014-05-02   1    2
2014-05-02   2    4
2014-05-02   2    4
2014-05-02   3    3
2014-05-03   1    8
2014-05-03   1    8
2014-05-03   2    6
2014-05-03   3   11

Wanted Data

Out[2]:

            id  obs
date               
2014-05-01   1   10
2014-05-01   2    5
2014-05-01   3    7
2014-05-01   4    3
2014-05-02   1    2
2014-05-02   2    4
2014-05-02   3    3
2014-05-03   1    8
2014-05-03   2    6
2014-05-03   3   11
  • Why are you using date as an index in Pandas? In your Stata dataset it is just another variable. – Pearly Spencer Oct 2 at 9:52
  • I apologise for not including the remaining part of the code. After that line I do drop if id >= 1. I should have included that aswell. In regards to date as the index, the dataset I am dealing with is financial time series and books I have been reading recommend that. – oceanbeach96 Oct 3 at 2:17
up vote 1 down vote accepted

Idea is create column from index by reset_index and then use DataFrame.duplicated with boolean indexing or create MultiIndex by set_index and use Index.duplicated:

df1 = df1[~df1.reset_index().duplicated(subset=['date','id']).values]
#alternative
#df1 = df1[~df1.set_index('id', append=True).index.duplicated()]
print (df1)
            id  obs
date               
2014-05-01   1   10
2014-05-01   2    5
2014-05-01   3    7
2014-05-01   4    3
2014-05-02   1    2
2014-05-02   2    4
2014-05-02   3    3
2014-05-03   1    8
2014-05-03   2    6
2014-05-03   3   11

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