I want to generate a numpy array of random numbers close to 1. Is there a quick way to do so that allows me to set desired neighborhood from 1, say 1e-5?

  • 1
    random according to which distribution? – fferri Apr 20 at 20:26
  • Whatever? But the mean should be 1. – Vladimir Apr 20 at 20:27
  • 1
    np.random.uniform(low=1-1e-5,high=1+1e-5,size=10) – Brenlla Apr 20 at 20:27
up vote 1 down vote accepted

Check the numpy.random module:

For example, normally distributed numbers with mean of 1.0 and standard deviation of 0.002:

>>> numpy.random.normal(1, 0.002, (5,))
array([1.00246167, 0.99722898, 0.99793482, 1.00100399, 1.00004228])

Using uniform distribution:

>>> numpy.random.uniform(1-1e-5, 1+1e-5, (5,))
array([1.00000668, 1.00000037, 0.99999398, 0.99999736, 1.00000645])

If you want, for example, 1000 uniform random numbers in the range [1 - 1e-5, 1 + 1e-5):

nums = np.random.uniform(low=1-1e-5, high=1+1e-5, size=1000)

Use a uniform distribution:

>>> window = 1e-5
>>> np.random.uniform(low=1-window, high=1+window, size=10)
array([ 1.00000539,  0.99999055,  1.00000759,  0.99999228,  1.00000737,
        1.00000557,  1.00000522,  1.00000375,  1.00000054,  0.99999047])

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.