# How to generate random numbers close to 1 using Numpy

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?

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

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])
``````