# elegant way of convert a numpy array containing datetime.timedelta into seconds in python 2.7

I have a numpy array called `dt`. Each element is of type `datetime.timedelta`. For example:

``````>>>dt[0]
datetime.timedelta(0, 1, 36000)
``````

how can I convert `dt` into the array `dt_sec` which contains only seconds without looping? my current solution (which works, but I don't like it) is:

``````dt_sec = zeros((len(dt),1))
for i in range(0,len(dt),1):
dt_sec[i] = dt[i].total_seconds()
``````

I tried to use `dt.total_seconds()` but of course it didn't work. any idea on how to avoid this loop?

Thanks

-

``````import numpy as np

helper = np.vectorize(lambda x: x.total_seconds())
dt_sec = helper(dt)
``````
-
Why not use `x.seconds` in the `lambda`? Also, if the array is a flat 1-D array, is `map(lambda x: x.total_seconds(), dt)` faster? –  wflynny Sep 26 '13 at 21:44
sure and true (would have to convert list to array in the end). –  prgao Sep 26 '13 at 21:46
I did not know about vectorize...what a useful function! Thanks! –  KernowBunney Nov 29 '13 at 16:00

`numpy` has its own `datetime` and `timedelta` formats. Just use them ;).

Set-up for example:

``````import datetime
import numpy

times = numpy.array([datetime.timedelta(0, 1, 36000)])
``````

Code:

``````times.astype("timedelta64[ms]").astype(int) / 1000
#>>> array([ 1.036])
``````

Since people don't seem to realise that this is the best solution, here are some timings of a `timedelta64` array vs a `datetime.datetime` array:

``````SETUP="
import datetime
import numpy

times = numpy.array([datetime.timedelta(0, 1, 36000)] * 100000)
numpy_times = times.astype('timedelta64[ms]')
"

python -m timeit -s "\$SETUP" "numpy_times.astype(int) / 1000"
python -m timeit -s "\$SETUP" "numpy.vectorize(lambda x: x.total_seconds())(times)"
python -m timeit -s "\$SETUP" "[delta.total_seconds() for delta in times]"
``````

Results:

``````100 loops, best of 3: 4.54 msec per loop
10 loops, best of 3: 99.5 msec per loop
10 loops, best of 3: 67.1 msec per loop
``````

The initial translation will take about two times as much time as the vectorized expression, but each operation from then-on into perpetuity on that `timedelta` array will be about 20 times faster.

If you're never going to use those `timedelta`s again, consider asking yourself why you ever made the deltas (as opposed to `timedelta64`s) in the first place, and then use the `numpy.vectorize` expression. It's less native but for some reason it's faster.

-

I like the use of `np.vectorize` as suggested by prgao. If you just want a Python list, you can also do the following:

``````dt_sec = map(datetime.timedelta.total_seconds, dt)
``````
-

You could use a "list comprehension":

``````dt_sec = [delta.total_seconds() for delta in dt]
``````

Behind the scenes, numpy ought to translate that to a pretty speedy operation.

-
`numpy` isn't doing anything behind the scenes in that. Heck, it'll probably be slower than a loop over a normal `list`. –  Veedrac Sep 26 '13 at 21:44