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I have a pandas.DatetimeIndex, e.g.:

pd.date_range('2012-1-1 02:03:04.000',periods=3,freq='1ms')
>>> [2012-01-01 02:03:04, ..., 2012-01-01 02:03:04.002000]

I would like to round the dates (Timestamps) to the nearest second. How do I do that? The expected result is similar to:

[2012-01-01 02:03:04.000000, ..., 2012-01-01 02:03:04.000000]

Is it possible to accomplish this by rounding a Numpy datetime64[ns] to seconds without changing the dtype [ns]?

np.array(['2012-01-02 00:00:00.001'],dtype='datetime64[ns]')
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@hayden, see my edit. I just want to round to the nearest second. –  Yariv Dec 9 '12 at 9:59
    
date_range defaults to day frequency, I assume you meant to have pd.date_range('2012-1-1 00:00.000',periods=2, freq='S') –  Matti John Dec 9 '12 at 14:06
    
@MattiJohn, see my correction. I meant the same second to repeat. –  Yariv Dec 9 '12 at 14:35
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2 Answers 2

up vote 5 down vote accepted

Update: if you're doing this to a DatetimeIndex / datetime64 column a better way is to use np.round directly rather than via an apply/map:

np.round(dtindex_or_datetime_col.astype(np.int64), -9).astype('datetime64[ns]')

Old answer (with some more explanation):

Whilst @Matti's answer is clearly the correct way to deal with your situation, I thought I would add an answer how you might round a Timestamp to the nearest second:

from pandas.lib import Timestamp

t1 = Timestamp('2012-1-1 00:00:00')
t2 = Timestamp('2012-1-1 00:00:00.000333')

In [4]: t1
Out[4]: <Timestamp: 2012-01-01 00:00:00>

In [5]: t2
Out[5]: <Timestamp: 2012-01-01 00:00:00.000333>

In [6]: t2.microsecond
Out[6]: 333

In [7]: t1.value
Out[7]: 1325376000000000000L

In [8]: t2.value
Out[8]: 1325376000000333000L

# Alternatively: t2.value - t2.value % 1000000000
In [9]: long(round(t2.value, -9)) # round milli-, micro- and nano-seconds
Out[9]: 1325376000000000000L

In [10]: Timestamp(long(round(t2.value, -9)))
Out[10]: <Timestamp: 2012-01-01 00:00:00>

Hence you can apply this to the entire index:

def to_the_second(ts):
    return Timestamp(long(round(ts.value, -9)))

dtindex.map(to_the_second)
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It seems like 1000000 should be replaced with 1000000000. –  Yariv Dec 9 '12 at 14:41
    
Importantly, I would like to do it on a DatetimeIndex. –  Yariv Dec 9 '12 at 14:50
    
@user1579844 you're right of course! I forgot about milli-seconds... whoops! I have corrected this and added how to apply this to the entire dt_index. –  Andy Hayden Dec 9 '12 at 15:06
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There is little point in changing the index itself - since you can just generate using date_range with the desired frequency parameter as in your question.

I assume what you are trying to do is change the frequency of a Time Series that contains data, in which case you can use resample (documentation). For example if you have the following time series:

dt_index = pd.date_range('2012-1-1 00:00.001',periods=3, freq='1ms')
ts = pd.Series(randn(3), index=dt_index)


2012-01-01 00:00:00           0.594618
2012-01-01 00:00:00.001000    0.874552
2012-01-01 00:00:00.002000   -0.700076
Freq: L

Then you can change the frequency to seconds using resample, specifying how you want to aggregate the values (mean, sum etc.):

ts.resample('S', how='sum')

2012-01-01 00:00:00    0.594618
2012-01-01 00:00:01    0.174475
Freq: S
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This eliminates some of the rows. I would like only to change the index value by rounding it to the nearest second. –  Yariv Dec 9 '12 at 14:54
    
ah, sorry I hadn't realised you wanted duplicate values. It looks like @hayden's updated answer will do what you want –  Matti John Dec 9 '12 at 15:15
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