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I would like to fill in missing values in my pandas dataframe. Optimally I would like the minute column to range from 0-60 for each hour. Unfortunately, the data generating process did not record any rows where sub_count = 0. Is there anyway to do this? My data covers the dates 2014-03-31 and 2014-04-01.

df = 

   sub_count        date  hour  minute
0          1  2014-03-31     0       0
1          1  2014-03-31     0       4
2          1  2014-03-31     0       5
3          1  2014-03-31     0       6
4          2  2014-03-31     0       7
...
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1 Answer 1

up vote 3 down vote accepted

Construct a DatetimeIndex (you may be able to do this while reading the data in, depending on how it's stored):

df = df.set_index(pd.to_datetime(df.date + 'T' +
                                 df.hour.astype(str) + ':' +
                                 df.minute.astype(str))

In [23]: df = df['sub_count']

In [24]: df
Out[24]: 
2014-03-31 00:00:00    1
2014-03-31 00:04:00    1
2014-03-31 00:05:00    1
2014-03-31 00:06:00    1
2014-03-31 00:07:00    2
Name: sub_count, dtype: int64

Then resample:

In [26]: df.resample('T')
Out[26]: 
2014-03-31 00:00:00     1
2014-03-31 00:01:00   NaN
2014-03-31 00:02:00   NaN
2014-03-31 00:03:00   NaN
2014-03-31 00:04:00     1
2014-03-31 00:05:00     1
2014-03-31 00:06:00     1
2014-03-31 00:07:00     2
Freq: T, Name: sub_count, dtype: float64
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I'm getting an: unsupported operand type(s) for +: 'datetime.date' and 'str' error. If I add .astype(str) to the end of df.date, the code runs but df.resample('T') doesn't seem to do anything :( –  user3439329 Apr 1 at 18:37
    
sorry. Got it to work. Stupid mistake on my part :) –  user3439329 Apr 1 at 18:45
    
what kind of dataframe is this? I can't edit the column names anymore. –  user3439329 Apr 1 at 18:54
    
Do you have other data columns than sub_count? df = df['sub_count'] selected the only data column in your example, so it's a Series now. You can keep it as a DataFrame with df = df[['sub_count']] –  TomAugspurger Apr 1 at 20:40

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