I find Python (and its ecosystem) to be full of strange conventions and inconsistencies and this is another example:


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


Return random floats in the half-open interval [0.0, 1.0). Results are from the “continuous uniform” distribution over the stated interval.

??? What exactly is the difference there?


First note that numpy.random.random is actually an alias for numpy.random.random_sample. I'll use the latter in the following. (See this question and answer for more aliases.)

Both functions generate samples from the uniform distribution on [0, 1). The only difference is in how the arguments are handled. With numpy.random.rand, the length of each dimension of the output array is a separate argument. With numpy.random.random_sample, the shape argument is a single tuple.

For example, to create an array of samples with shape (3, 5), you can write

sample = np.random.rand(3, 5)


sample = np.random.random_sample((3, 5))

(Really, that's it.)

  • right, so there is actually no difference. I wonder why we have two functions with different names that do the same thing.. IMHO they should clean this up. – SpaceMonkey Nov 10 '17 at 22:50
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    There are historical reasons for these, probably related to making the transition to Python+Numpy easier for Matlab programmers (c.f. Matlab's rand). Cleaning it up might cause more trouble than it is worth, because there is likely a lot of existing code that uses the different versions of the functions. – Warren Weckesser Nov 10 '17 at 22:56
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    It does seem like Python's community values "quick hacks cuz it's easy for me" over consistency. The best example of this is the matplotlib's convention to use numbers like "112" to mean (1,1,2) when creating subplots.. anyway, thanks for your answer. – SpaceMonkey Nov 10 '17 at 22:58
  • Practically speaking, @WarrenWeckesser is probably right about not cleaning it up. That said, I felt exactly like SpaceMonkey when trying to remember the difference in parameter arguments to np.zeros((tuple dimensions arg)) vs. np.random.randn(dim1, dim2, dim3) – frank Jul 18 at 3:32

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