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For different users, their datas are updated quarterly but not in the same day.

For user 'a', the pd.Series of his data are:

2018-01-01 556
2018-04-01 498
2018-07-02 318

The dates are indexes of the Series. Similarly, for user 'b', his data is:

2018-01-02 123
2018-04-02 456
2018-07-01 789

First, I want to convert quarterly data to daily data. For example, for 'a', the data between '2018-01-02' and '2018-03-31' should still be 556 since it was not updated yet.

Then, I want to concat the data of 'a' and 'b' in a dataframe.The expected output should be:

             a    b
2018-01-01 556  NaN
2018-01-02 556  123
...
2018-03-31 556  123
2018-04-01 498  123
2018-04-02 498  456
2018-04-03 498  456
...
2018-06-30 498  456
2018-07-01 498  789
2018-07-02 318  789

Two questions puzzles me:

  1. How to complement the missing date?
  2. 'a' and 'b' were updated not in the same day. How to align them?
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Use concat with DataFrame.asfreq with forward filling misisng values by ffill:

df = pd.concat([a, b], axis=1, keys=('a','b')).asfreq('D').ffill()
print (df)
                a      b
2018-01-01  556.0    NaN
2018-01-02  556.0  123.0
2018-01-03  556.0  123.0
2018-01-04  556.0  123.0
2018-01-05  556.0  123.0
          ...    ...
2018-06-28  498.0  456.0
2018-06-29  498.0  456.0
2018-06-30  498.0  456.0
2018-07-01  498.0  789.0
2018-07-02  318.0  789.0

[183 rows x 2 columns]
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