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All of numpy's random functions say things like:

Create an array of the given shape and propagate it with random samples from a uniform distribution over [0, 1).

(See here: http://docs.scipy.org/doc/numpy/reference/generated/numpy.random.rand.html#numpy.random.rand)

What is the reason for using the half-open interval [0, 1)? From a probabalistic point of view, it shouldn't matter whether 1 is included or not.

  • Most random number generators do this. E.g. cplusplus.com/reference/random/uniform_real_distribution and gcc.gnu.org/onlinedocs/gfortran/… – MaxNoe Feb 23 '16 at 19:06
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    Note that numpy doesn't actually enforce this across the board: np.random.uniform(a,b) claims to be half-open, but np.random.uniform(0, np.nextafter(0, 1)) will return the upper bound half the time. – DSM Feb 23 '16 at 19:35
  • Among other things, it integrates nicely with zero-based arrays. Multiplying your [0,1) value by the length of your array and int it will yield a randomly selected valid array index with equal likelihood for all indices. – pjs Feb 24 '16 at 5:59
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With arbitrary precision it would indeed not matter, as the probability of reaching any given real number would be zero (non-zero only for an interval).

Computationally it does matter, since you use finite numerical resolution (e.g. double numbers). So every interval is effectively a closed interval.

Using half-open intervals by default allows you to avoid problems if you stack intervals. So [0,1) and [1,2) will not have common numbers.

For achieving open-open intervals and other concerns see e.g. this other stackoverflow question

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