Functions like `numpy.random.uniform()`

return floating point values between a two bounds, including the first bound but *excluding* the top one. That is, `numpy.random.uniform(0,1)`

may yield 0 but will never result in 1.

I'm taking such numbers and processing them with a function that sometimes returns results outside of the range. I can use `numpy.clip()`

to chop values outside of the range back to 0-1, but unfortunately that limit is *inclusive* of the top number.

How do I specify "the number infinitesimally smaller than 1" in python?

`0.99999... < 1`

flame war brewing – wim Feb 23 '12 at 3:33`numpy.random.uniform(0,1)`

will actually sometimes return a number equal to 1? If that's the case, then, okay, fine. I don't really care about the paradox, but I want my modified-then-clipped numbers to be guaranteed to be in the same range that the originals are. – mattdm Feb 23 '12 at 3:41`uniform(x,y)`

might (extremely rarely!) give you results equal to`y`

. It shouldn't happen with`uniform(0,1)`

, but in other cases, the floating point arithmetic used to rescale the underlying`[0,1)`

random number to your bounds might sometimes give`y`

exactly. – Robert Kern Feb 23 '12 at 12:19