# Calculate time in certain state for time series data

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?

-

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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