Vectorized year/month/day operations with NumPy datetime64

I would like to create vectors of NumPy datetime64 objects from 1-D vectors of years, months, and days, and also go the reverse direction, that is extracting vectors of years, months, or days from a daily datetime64 vector. I'm using NumPy 1.7.0b2.

For example, suppose

``````years = [1990, 1992, 1995, 1994]
months = [1, 6, 3, 7]
days = [3, 20, 14, 27]
``````

Now I want to create a np.datetime64 vector of length 4 using these years, months, and days. Is there a way without using a Python loop?

Going the other direction, suppose `dates` is a vector of datatype np.datetime64 and the frequency is daily. Then I would to be able to something like `x.DAYS()` and get back a vector `[3, 20, 14, 27]`.

-

1 Answer

I don't know of a way to do it without some sort of looping, but I inlined it a bit with a list comprehension:

``````years = [1990, 1992, 1995, 1994]
months = [1, 6, 3, 7]
days = [3, 20, 14, 27]
np.array(['{0[0]}-{0[1]}-{0[2]}'.format(x) for x in zip(years, months, days)], dtype='datetime64')
``````

Going back the other way, you have to convert each item to a regular `datetime`. You can do this by calling `astype(object)`, which works for the whole array or for individual objects. Which one you do probably depends on how your using the data.

-