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I have an array of datetime64 type:

dates = np.datetime64(['2010-10-17', '2011-05-13', "2012-01-15"])

Is there a better way than looping through each element just to get np.array of years:

years = f(dates)
#output:
array([2010, 2011, 2012], dtype=int8) #or dtype = string

I'm using stable numpy version 1.6.2.

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4 Answers 4

up vote 9 down vote accepted

As datetime is not stable in numpy I would use pandas for this:

In [52]: import pandas as pd

In [53]: dates = pd.DatetimeIndex(['2010-10-17', '2011-05-13', "2012-01-15"])

In [54]: dates.year
Out[54]: array([2010, 2011, 2012], dtype=int32)

Pandas uses numpy datetime internally, but seems to avoid the shortages, that numpy has up to now.

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1  
This is giving me wrong results for month with numpy 1.7.1 and pandas 0.12.0. However, Series(dates).apply(lambda x: x.month) seems to work. –  dmvianna Oct 29 '13 at 2:58
    
No problem here with the same versions. If you really get wrong results you should open a pandas issue. –  bmu Oct 29 '13 at 18:54
    
Oh, I actually used pd.DatetimeIndex(np.datetime64(['2010-10-17', '2011-05-13', "2012-01-15"])) –  dmvianna Oct 29 '13 at 22:06
    
Use np.datetime_as_string to convert Datetime64 objects to strings which Pandas can parse. –  sebix Sep 11 at 8:59

If you upgrade to numpy 1.7 (where datetime is still labled as experimental) the following should work.

dates/np.timedelta64(1,'Y')
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Unfortunately I can't upgrade to 1.7. But it's good to know. –  enedene Nov 30 '12 at 18:44

There's no direct way to do it yet, unfortunately, but there are a couple indirect ways:

[dt.year for dt in dates.astype(object)]

or

[datetime.datetime.strptime(repr(d), "%Y-%m-%d %H:%M:%S").year for d in dates]

both inspired by the examples here.

Both of these work for me on Numpy 1.6.1. You may need to be a bit more careful with the second one, since the repr() for the datetime64 might have a fraction part after a decimal point.

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I find the following tricks give between 2x and 4x speed increase versus the pandas method described above (i.e. pd.DatetimeIndex(dates).year etc.). The speed of [dt.year for dt in dates.astype(object)] I find to be similar to the pandas method. Also these tricks can be applied directly to ndarrays of any shape (2D, 3D etc.)

dates = np.arange(np.datetime64('2000-01-01'), np.datetime64('2010-01-01'))
years = dates.astype('datetime64[Y]').astype(int) + 1970
months = dates.astype('datetime64[M]').astype(int) % 12 + 1
days = dates - dates.astype('datetime64[M]') + 1
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