Difference between functions generating random numbers in numpy

I am trying to understand what is the difference, if any, between these functions:

``````numpy.random.rand()

numpy.random.random()

numpy.random.uniform()
``````

It seems that they produce a random sample from a uniform distribution. So, without any parameter in the function, is there any difference?

`numpy.random.uniform(low=0.0, high=1.0, size=None)` - uniform samples from arbitrary range

Draw samples from a uniform distribution.
Samples are uniformly distributed over the half-open interval `[low, high)` (includes low, but excludes high). In other words, any value within the given interval is equally likely to be drawn by uniform.

`numpy.random.random(size=None)` - uniform distribution between 0 and 1

Return random floats in the half-open interval `[0.0, 1.0)`.
Results are from the “continuous uniform” distribution over the stated interval. To sample `Unif[a, b)`, `b > a` multiply the output of `random_sample by` (b-a) and add a:
`(b - a) * random_sample() + a`

`numpy.random.rand(d0, d1, ..., dn)` - Samples from a uniform distribution to populate an array of a given shape

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

To answer your other question, given all default parameters all of the functions `numpy.random.uniform`, `numpy.random.random`, and `numpy.random.rand` are identical.

• On a side note, all of the functions in `numpy.random` populate an array rather than create a single value (if no shape is specified, they return a single value). The main difference between `np.random.rand` and `np.random.random` is in how the shape of the array is specified. `data = np.random.random([10, 10])` instead of `data = np.random.rand(10, 10)`. Jun 10 '15 at 17:15

Without parameters, the three functions are equivalent, producing a random float in the range [0.0,1.0).

Details

`numpy.random.rand` is a convenience function that accepts an arbitrary number of parameters as dimensions. It's different from the other `numpy.random` functions, `numpy.zeros`, and `numpy.ones` also, in that all of the others accept shapes, i.e. N-tuples (specified as Python lists or tuples). The following two lines produce identical results (the random seed notwithstanding):

``````import numpy as np
x = np.random.random_sample((1,2,3)) # a single tuple as parameter
x = np.random.rand(1,2,3) # integers as parameters
``````

`numpy.random.random` is an alias for `numpy.random.random_sample`.

`numpy.random.uniform` allows you to specify the limits of the distribution, with the `low` and `high` keyword parameters, instead of using the default [0.0,1.0).

• `numpy.random.rand` was designed to mimic MATLAB's `rand` function which, incidentally, now also accepts shapes as arguments. Jun 10 '15 at 17:23