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I have an irregularly indexed time series of data with seconds resolution like:

import pandas as pd
idx = ['2012-01-01 12:43:35', '2012-03-12 15:46:43', 
       '2012-09-26 18:35:11', '2012-11-11 2:34:59']
status = [1, 0, 1, 0]
df = pd.DataFrame(status, index=idx, columns = ['status'])
df = df.reindex(pd.to_datetime(df.index))

In [62]: df
Out[62]: 
                     status
2012-01-01 12:43:35       1
2012-03-12 15:46:43       0
2012-09-26 18:35:11       1
2012-11-11 02:34:59       0

and I am interested in the fraction of the year when the status is 1. The way I currently do it is that I reindex df with every second in the year and use forward filling like:

full_idx = pd.date_range(start = '1/1/2012', end = '12/31/2012', freq='s')
df1 = df.reindex(full_idx, method='ffill')

which returns a DataFrame that contains every second for the year which I can then calculate the mean for, to see the percentage of time in the 1 status like:

In [66]: df1
Out[66]: 
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 31536001 entries, 2012-01-01 00:00:00 to 2012-12-31 00:00:00
Freq: S
Data columns:
status    31490186  non-null values
dtypes: float64(1)


In [67]: df1.status.mean()
Out[67]: 0.31953371123308066

The problem is that I have to do this for a lot of data, and reindexing it for every second in the year is most expensive operation by far.

What are better ways to do this?

share|improve this question
up vote 3 down vote accepted

There doesn't seem to be a pandas method to compute time differences between entries of an irregular time series, though there is a convenience method to convert a time series index to an array of datetime.datetime objects, which can be converted to datetime.timedelta objects through subtraction.

In [6]: start_end = pd.DataFrame({'status': [0, 0]},
                                 index=[pd.datetools.parse('1/1/2012'),
                                        pd.datetools.parse('12/31/2012')])

In [7]: df = df.append(start_end).sort()

In [8]: df
Out[8]: 
                     status
2012-01-01 00:00:00       0
2012-01-01 12:43:35       1
2012-03-12 15:46:43       0
2012-09-26 18:35:11       1
2012-11-11 02:34:59       0
2012-12-31 00:00:00       0

In [9]: pydatetime = pd.Series(df.index.to_pydatetime(), index=df.index)

In [11]: df['duration'] = pydatetime.diff().shift(-1).\
              map(datetime.timedelta.total_seconds, na_action='ignore')

In [16]: df
Out[16]: 
                     status  duration
2012-01-01 00:00:00       0     45815
2012-01-01 12:43:35       1   6145388
2012-03-12 15:46:43       0  17117308
2012-09-26 18:35:11       1   3916788
2012-11-11 02:34:59       0   4310701
2012-12-31 00:00:00       0       NaN

In [17]: (df.status * df.duration).sum() / df.duration.sum()
Out[17]: 0.31906950786402843

Note:

  • Our answers seem to differ because I set status before the first timestamp to zero, while those entries are NA in your df1 as there's no start value to forward fill and NA values are excluded by pandas mean().
  • timedelta.total_seconds() is new in Python 2.7.
  • Timing comparison of this method versus reindexing:

    In [8]: timeit delta_method(df)
    1000 loops, best of 3: 1.3 ms per loop
    
    In [9]: timeit redindexing(df)
    1 loops, best of 3: 2.78 s per loop
    
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