On Mon, 24 Oct 2022 14:52:28 +0000, "Schachner, Joseph (US)" <joseph.schach...@teledyne.com> declaimed the following:
>Floating point will always be a can of worms, as long as people expect it to >represent real numbers with more precision that float has. Usually this is >not an issue, but sometimes it is. And, although this example does not >exhibit subtractive cancellation, that is the surest way to have less >precision that the two values you subtracted. And if you try to add up lots >of values, if your sum grows large enough, tiny values will not change it >anymore, even if there are many of them - there are simple algorithms to >avoid this effect. But all of this is because float has limited precision. > Might I suggest this to those affected... https://www.amazon.com/Real-Computing-Made-Engineering-Calculations/dp/0486442217/ref=tmm_pap_swatch_0?_encoding=UTF8&qid=1666634371&sr=8-1 (Wow -- they want a fortune for the original hard-cover, which I own) -- Wulfraed Dennis Lee Bieber AF6VN wlfr...@ix.netcom.com http://wlfraed.microdiversity.freeddns.org/ -- https://mail.python.org/mailman/listinfo/python-list