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I have a pandas.core.series.TimeSeries named ts like this:

timestamp
2013-08-11 14:23:50        0.3219
2013-08-11 14:23:49        0.3222
2013-08-11 14:19:14        0.3305
2013-08-11 00:47:15        0.3400
2013-08-11 00:47:15.001    0.3310
2013-08-11 00:47:15.002    0.3310
2013-08-10 22:38:15.003    0.3400
2013-08-10 22:38:14        0.3403
2013-08-10 22:38:13        0.3410

Index of this TimeSerie are irregularly spaced.

I would like to have value of ts for a given datetime such as 2013-08-11 14:20:00

I just need to interpolate ONE value, not the whole TimeSerie

I just want to interpolate data using a linear function between the previous index (2013-08-11 14:23:49) and the next index (2013-08-11 14:19:14)

share|improve this question
    
So, to make things a little bit more clearer, for every two events that didn't happened in the same minute, you want an interpolation that will bi placed on the round minute after the first event happened? – Viktor Kerkez Aug 12 '13 at 9:30
    
Sorry, assume that index doesn't have duplicate values (2013-08-11 00:47:15:000, 2013-08-11 00:47:15:001, 2013-08-11 00:47:15:002, 2013-08-11 00:47:15:003) – working4coins Aug 12 '13 at 12:27
    
Even then you have multiple values inside one minute: 22:38 has 3 values. – Viktor Kerkez Aug 12 '13 at 13:47
up vote 4 down vote accepted

Take a subset of the Series including only the entry above and below your target. Then use interpolate.

def interpolate(ts, target):
    ts1 = ts.sort_index()
    b = (ts1.index > target).argmax() # index of first entry after target
    s = ts1.iloc[b-1:b+1]
    # Insert empty value at target time.
    s = s.reindex(pd.to_datetime(list(s.index.values) + [pd.to_datetime(target)]))
    return s.interpolate('time').loc[target]

Example:

interpolate(ts, '2013-08-11 14:20:00')
2013-08-11 14:20:00    0.329112
share|improve this answer

Thank-you Dan Allan. I'm afraid I don't have the reputation to comment but Dan Allan's interpolate function raises an exception if asked to interpolate a time already defined in the ts index. E.g.

s = pd.to_datetime('2015-08-26 00:00:00')
e = pd.to_datetime('2015-08-26 00:10:00')
ts=pd.Series([0,8000],index=[s,e])
interpolate(ts,pd.to_datetime('2015-08-26 00:00:00'))

My minor modification of the above is:

def interpolate(ts, target):
    if target in ts.index:
        return ts[target]
    ts1 = ts.sort_index()
    b = (ts1.index > target).argmax() # index of first entry after target
    s = ts1.iloc[b-1:b+1]
    # Insert empty value at target time.
    s = s.reindex(pd.to_datetime(list(s.index.values) + [pd.to_datetime(target)]))
    return s.interpolate(method='time').loc[target]
share|improve this answer

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