# Convert numpy array to list of datetimes

I have a 2D array of dates of the form:

``````[Y Y Y ... ]
[M M M ... ]
[D D D ... ]
[H H H ... ]
[M M M ... ]
[S S S ... ]
``````

So it looks like

``````data = np.array([
[2015, 2015, 2015, 2015, 2015, 2015], # ...
[   1,    1,    1,    1,    1,    1],
[   1,    1,    1,    2,    2,    2],
[  23,   23,   23,    0,    0,    0],
[   4,    5,    5,   37,   37,   37],
[  59,    1,    2,   25,   27,   29]
])
``````

What would be the best way to convert this into one list of datetime objects?

• Can you use pandas also or do you need to stick purely on numpy arrays? Oct 20, 2016 at 22:20
• And a follow-up question - can this be done without round-tripping through `datetime.datetime`, and producing a `np.array` of `np.datetime64`s?
– Eric
Oct 21, 2016 at 1:00
• @Boud, please expound on how pandas help here. Sep 12, 2017 at 23:21

``````import datetime
import numpy as np

data = np.array(
[[2015, 2015, 2015, 2015, 2015, 2015],
[   1,    1,    1,    1,    1,    1],
[   1,    1,    1,    2,    2,    2],
[  23,   23,   23,    0,    0,    0],
[   4,    5,    5,   37,   37,   37],
[  59,    1,    2,   25,   27,   29]]
)

# Transpose the data so that columns become rows.
data = data.T

# A simple list comprehension does the trick, '*' making sure
# the values are unpacked for 'datetime.datetime'.
new_data = [datetime.datetime(*x) for x in data]

print(new_data)
``````

[datetime.datetime(2015, 1, 1, 23, 4, 59), datetime.datetime(2015, 1, 1, 23, 5, 1), datetime.datetime(2015, 1, 1, 23, 5, 2), datetime.datetime(2015, 1, 2, 0, 37, 25), datetime.datetime(2015, 1, 2, 0, 37, 27), datetime.datetime(2015, 1, 2, 0, 37, 29)]

• Upvote. I was trying to concatenate datetime.date to the datetime object. (obviously I use `from datetime import datetime` to make the code easier to read) Nice to know this way works; I never saw this in the documentation. Sep 12, 2017 at 23:24

If you want `np.datetime64` objects, then this works:

``````import functools

units = 'YMDhms'
first_vals = np.array([1970, 1, 1, 0, 0, 0])
epoch = np.datetime64('1970')

results = functools.reduce(
[
d.astype('timedelta64[{}]'.format(unit))
for d, unit in zip(data - first_vals[:,np.newaxis], units)
],
epoch
)
``````

Which gives:

``````array(['2015-01-01T23:04:59',
'2015-01-01T23:05:01',
'2015-01-01T23:05:02',
'2015-01-02T00:37:25',
'2015-01-02T00:37:27',
'2015-01-02T00:37:29'], dtype='datetime64[s]')
``````