5

I have a raw dataset that looks like this:

df = pd.DataFrame({'speed': [66.8,67,67.1,70,69],
                   'time': ['2017-08-09T05:41:30.168Z', '2017-08-09T05:41:31.136Z', '2017-08-09T05:41:31.386Z', '2017-08-09T05:41:31.103Z','2017-08-09T05:41:35.563Z' ]})

I could do some processing on it to make it look like (removed microseconds):

df['time']= pd.to_datetime(df.time)
df['time'] = df['time'].apply(lambda x: x.replace(microsecond=0))

>>> df
   speed                time
0   66.8 2017-08-09 05:41:30
1   67.0 2017-08-09 05:41:31
2   67.1 2017-08-09 05:41:31
3   70.0 2017-08-09 05:41:31
4   69.0 2017-08-09 05:41:35

I need to now resample the data so that any entries that arrived at the same timestamp are averaged together, and for the timestamps that did not receive any data, use the last available value. Like:

   speed                time
0   66.80 2017-08-09 05:41:30
1   68.03 2017-08-09 05:41:31
2   70.00 2017-08-09 05:41:32
3   70.00 2017-08-09 05:41:33
4   70.00 2017-08-09 05:41:34
5   69.00 2017-08-09 05:41:35

I understand this might involve the use of groupby and resample, but being a beginner I find myself struggling with these. Any ideas on how to proceed?

I have tried this but I am getting wrong results:

df.groupby( [df["time"].dt.second]).mean()
          speed
time           
30    66.800000
31    68.033333
35    69.000000
8
In [279]: df.resample('1S', on='time').mean().ffill()
Out[279]:
                         speed
time
2017-08-09 05:41:30  66.800000
2017-08-09 05:41:31  68.033333
2017-08-09 05:41:32  68.033333
2017-08-09 05:41:33  68.033333
2017-08-09 05:41:34  68.033333
2017-08-09 05:41:35  69.000000
  • I spent 3 hours struggling with this. Can't believe it is so straightforward. Thanks! – Al P Aug 9 '17 at 9:37
  • @AlP, glad i could help :) – MaxU Aug 9 '17 at 9:37

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