random.randrange(start, stop) only takes integer arguments. So how would I get a random number between two float values?

  • 10
    If you wanted numpy it's np.random.uniform(start, stop) or np.random.uniform(start, stop, samples) if you wanted multiple samples. Otherwise below answers are best.
    – sachinruk
    Commented Dec 4, 2019 at 0:33
  • Possible to generate uniform random between [0 , 2*pi)?
    – RSW
    Commented Aug 2, 2022 at 6:52

7 Answers 7


Use random.uniform(a, b):

>>> import random
>>> random.uniform(1.5, 1.9)
  • 9
    could this theoretically produce 1.5 and 1.9? or would it only ever produce 1.50~1 and 1.89~? Commented Apr 29, 2016 at 13:39
  • 35
    @Musixauce3000 Short Answer: Yes. Longer answer: If you look at the documentation it states Returns a random floating point number N such that a <= N <= b for a <= b and b <= N <= a for b < a In other words the output N can equal either input a and b. In this case 1.5 and 1.9.
    – Dan
    Commented Mar 1, 2017 at 13:37
  • Is there another way to do this without using the .uniform function, but instead with either .random or randrange?
    – EnigmaTech
    Commented Mar 27, 2019 at 10:12
  • 1
    @DerryckDX 1.5 + random.random() * (1.9 - 1.5) should do it, even though according to the specs this will never return exactly 1.9 (even in theory).
    – Yonatan N
    Commented Mar 29, 2019 at 0:03
  • 2
    @Musixauce3000 it seems uniform(a, b) is implemented as a + (b-a) * random() and returns a random number in the range [a, b) or [a, b] depending on rounding github.com/python/cpython/blob/…
    – Pavel
    Commented Jun 4, 2019 at 8:47

if you want generate a random float with N digits to the right of point, you can make this :

round(random.uniform(1,2), N)

the second argument is the number of decimals.


random.uniform(a, b) appears to be what your looking for. From the docs:

Return a random floating point number N such that a <= N <= b for a <= b and b <= N <= a for b < a.

See here.

  • What if I want to generate an number as follow: Range of azimuth angle is 0 to 2*Pi radians excluding 2*pi viz., in mathematics range [0, 2pi)?
    – RSW
    Commented Aug 2, 2022 at 6:55
  • @RajeshSwarnkar random.random() * 2*math.pi, as the doc says the random function "Return[s] the next random floating point number in the range 0.0 <= X < 1.0" Commented Feb 15, 2023 at 9:23

Most commonly, you'd use:

import random
random.uniform(a, b) # range [a, b) or [a, b] depending on floating-point rounding

Python provides other distributions if you need.

If you have numpy imported already, you can used its equivalent:

import numpy as np
np.random.uniform(a, b) # range [a, b)

Again, if you need another distribution, numpy provides the same distributions as python, as well as many additional ones.


From my experience dealing with python, I can only say that the random function can help in generating random float numbers. Take the example below;

import random

# Random float number between range 15.5 to 80.5
print(random.uniform(15.5, 80.5))

# between 10 and 100
print(random.uniform(10, 100))
The random.uniform() function returns a random floating-point number between a given range in Python

The two sets of code generates random float numbers. You can try experimenting with it to give you what you want.


Use this to get random floating point number between range n to m:

import random

If you want to get a random float number up to x decimal places you can use this instead:

import random
round(random.uniform(n, m), x)

For completness sake: If you use numpy, you can also call the uniform method on an instance of random number generator (now the preferred way in numpy when dealing with random numbers).

import numpy as np

seed = 42
low = 0.12
high = 3.45

rng = np.random.default_rng(seed)
rng.uniform(low, high)

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