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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

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4 Answers 4

up vote 5 down vote accepted
import numpy as np

helper = np.vectorize(lambda x: x.total_seconds())
dt_sec = helper(dt)
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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 timedeltas again, consider asking yourself why you ever made the deltas (as opposed to timedelta64s) in the first place, and then use the numpy.vectorize expression. It's less native but for some reason it's faster.

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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)
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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.

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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

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