numpy NaN, not surviving pickle/unpickle?
Scott David Daniels
Scott.Daniels at Acm.Org
Mon Sep 14 11:05:27 EDT 2009
Steven D'Aprano wrote:
> On Sun, 13 Sep 2009 17:58:14 -0500, Robert Kern wrote:
> Exactly -- there are 2**53 distinct floats on most IEEE systems, the vast
> majority of which might as well be "random". What's the point of caching
> numbers like 2.5209481723210079? Chances are it will never come up again
> in a calculation.
You are missing a few orders of magnitude here; there are approx. 2 ** 64
distinct floats. 2 ** 53 is the mantissa of regular floats. There are
2**52 floats X where 1.0 <= X < 2.0.
The number of "normal" floats is 2 ** 64 - 2 ** 52 + 1.
The number including denormals and -0.0 is 2 ** 64 - 2 ** 53.
There are approx. 2 ** 53 NaNs (half with the sign bit on).
--Scott David Daniels
Scott.Daniels at Acm.Org
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