`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.