I am wondering if there is an equivalent code in Python which offers the same functionality of tssetand tsfill, full in Stata.

From the Stata manual, the description of tsset is as follows:

tsset declares the data in memory to be a time series

From the Stata manual, the description of tsfill, fullis as follows:

tsfill is used after tsset to fill in gaps in time-series data and gaps in panel data with new observations, which contain missing values. For instance, perhaps observations for timevar = 1, 3, 5, 6, . . . , 22 exist. tsfill would create observations for timevar = 2 and timevar = 4 containing all missing values.

Example data:

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

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

df

            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   4   11

In Stata, you would use tsset id date to declare the data to be time series, then you would use tsfill, full to transform the data into the following:

id 4 at date 2014-05-02 and id 3 at date 2014-05-03 now appear in the dataframe

           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
2014-05-02   4    .
2014-05-03   1    8
2014-05-03   2    6
2014-05-03   3    .
2014-05-03   4    11

Is there an equivalent code in Python to execute the same output that Stata does?

up vote 2 down vote accepted

The following works for me:

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

df = pd.DataFrame(data, columns = ['date', 'id','obs'])

result = df.set_index(['id','date']).unstack(fill_value='.').stack().sort_index(level=1).reset_index()  
result = result.set_index('date')

In [1]: result
Out[1]: 
            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
2014-05-02   4   .
2014-05-03   1   8
2014-05-03   2   6
2014-05-03   3   .
2014-05-03   4  11

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