How can i create a random array of floats from 0 to 5 in python
llanitedave
llanitedave at veawb.coop
Wed Mar 13 01:35:51 EDT 2013
On Tuesday, March 12, 2013 2:59:29 PM UTC-7, Oscar Benjamin wrote:
> On 12 March 2013 20:21, llanitedave <llanitedave at veawb.coop> wrote:
>
> > On Tuesday, March 12, 2013 10:47:25 AM UTC-7, Maarten wrote:
>
> >> On Tuesday, March 12, 2013 6:11:10 PM UTC+1, Norah Jones wrote:
>
> >>
>
> >> > I want to create a random float array of size 100, with the values in the array ranging from 0 to 5. I have tried random.sample(range(5),100) but that does not work. How can i get what i want to achieve?
>
> >>
>
> >> Use numpy
>
> [SNIP]
>
> >
>
> > While numpy would work, I fail to see how encouraging the op to download and install a separate library and learn a whole new set of tools would be beneficial by default, without knowing the purpose of the need. This is like recommending an RPG to fix a sticky door hinge.
>
>
>
> This suggestion comes after others that show how to use the stdlib's
>
> random module. I don't think it's unreasonable to recommend numpy for
>
> this. If you want to create *arrays* of random numbers then why not
>
> use a library that provides an API specifically for that? You can test
>
> yourself to see that numpy is 10x faster for large arrays:
>
>
>
> Python 2.7 on Linux:
>
> $ python -m timeit -s 'import random' -- '[random.uniform(0, 5) for x
>
> in range(1000)]'
>
> 1000 loops, best of 3: 729 usec per loop
>
> $ python -m timeit -s 'import random' -- '[random.random() * 5 for x
>
> in range(1000)]'
>
> 1000 loops, best of 3: 296 usec per loop
>
> $ python -m timeit -s 'import numpy' -- 'numpy.random.uniform(0, 5, 1000)'
>
> 10000 loops, best of 3: 32.2 usec per loop
>
>
>
> I would use numpy for this mainly because if I'm creating arrays of
>
> random numbers I probably want to use them in ways that are easier
>
> with numpy arrays. There's also a chance the OP might benefit more
>
> generally from using numpy depending on what they're working on.
>
>
>
>
>
> Oscar
I don't think numpy is unreasonable for you or me. I just started learning it recently, and I'm pretty jazzed about its possibilities. I obtained an app for work that uses it, and now it's up to me to maintain it, so learning it is a good idea for me regardless. Now I'm starting to fantasize about other things I could do with it.
But the OP appears like a pretty basic beginner, and I really think that for such a entry-level knowledge scale, we should stick to the standard library until they're ready to take on more sophisticated tasks. "Premature Optimization" is the analogy that comes to mind.
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