On Wed, 2026-03-11 at 12:42 +0100, Ralf Gommers via NumPy-Discussion wrote: > On Wed, Mar 11, 2026 at 12:13 PM Sebastian Berg > <[email protected]> > wrote: > > > On Wed, 2026-03-11 at 11:59 +0100, Ralf Gommers via NumPy- > > Discussion > > wrote: > > > On Wed, Mar 11, 2026 at 10:58 AM matti picus via NumPy-Discussion > > > < > > > [email protected]> wrote: > > > > > > > On Tue, Mar 10, 2026 at 1:28 PM Sebastian Berg > > > > <[email protected]> wrote: > > > > > > > > > > Hi all, > > > > > > > > > > In the NumPy 2.4 cycle, there were some native float16 > > > > > implementations > > > > > merged with rather low precision leading to the following > > > > > issue: > > > > > https://github.com/numpy/numpy/issues/30821 > > > > > > > > > > That is, previously, it used float loops so ~0.5 ULP error, > > > > > now > > > > > is is > > > > > 2+ULP for many algorithms, on _some_ hardware: > > > > > https://github.com/numpy/numpy/pull/23351 > > > > > > > > > > There is always an argument around that users of float16 > > > > > probably > > > > > don't > > > > > care about many ULP, but I guess they also have very few bits > > > > > of > > > > > precision to begin with? > > > > > I don't have a huge opinion on it, but we are more and more > > > > > in > > > > > the > > > > > position where it is unclear if sacrificing a bit of > > > > > precision is > > > > > the > > > > > right thing or not... > > > > > > > > > > Similar questions actually arise for float32 math, is it OK > > > > > to > > > > > trade- > > > > > off precision for performance (or to what degree, everything > > > > > trades a > > > > > bit)? > > > > > We have had discussions around this before but it is still a > > > > > difficult > > > > > trade-off to make and there is no choice that makes everyone > > > > > happy. [1] > > > > > > > > > > - Sebastian > > > > > > > > > > [1] We can work towards something like > > > > > `np.opts(precision="low")` > > > > > or > > > > > so, but that doesn't change the question of defaults much... > > > > > > > > I do like the idea of having a precise/fast toggle. Until we > > > > can > > > > develop one, I think we should prefer precise. So we should > > > > revert > > > > and > > > > document somewhere that float16 (and the soon-to-be-incoming > > > > bfloat16) > > > > are, in NumPy, container types, and that all the math for them > > > > is > > > > done > > > > as float16. > > > > > > > > > > You meant `float32` here. And yes, I agree. Having a few code > > > paths > > > use > > > > > > No, I meant float16, > > > I was replying to "done as float16". Operations on arrays with dtype > float16 are largely done as "upcast to float32, perform the > operation, > downcast again". That's what "container types" means (I've been > calling > them "storage types", not sure what's the most standard name here). > So I > agreed with everything you said, and was just pointing out what looks > like > a confusing typo.
Ah sorry, I just over-read that one... For float16 things are tricky but I guess we may want to also just cement to not introduce serious hardware difference (which probably cements float32 use de-facto). If the wind changes slightly more there, I am not sure if we shouldn't allow a normal error range that is still very slightly larger than a float32 version. For float32 we really do need a more clear guidelines/discussion. E.g.: https://github.com/numpy/numpy/pull/29699 Proposes 4ULP versions for float32 sin/cos and that makes me very nervous. I might suggest for that we compare strictly with system math libraries precision and make sure we default to something that is very comparable or better. (The actual precision for math functions varies quite widely after all.) - Sebastian > > I don't think we have a bad variability for > > float32 right now and while there is a different discussion to be > > had > > about float32, I think those paths would at least be consistent > > across > > architectures (as it would be custom implementations). > > > > Yes agreed, float32 operations are done in float32, with many a few > exceptions. And that's fine and expected. > > > > But it sounds like you agree with "revert" here, which would is my > > tendency, even if I don't have a clear picture where to draw the > > line, > > since hardware/platform differences always exist to some degree. > > > > Indeed, I agree. > > I think the design rules should be simple: > > - Operations on both float32 and float64 should be done at their > native > precision without casts. > - Operations for float16, and a future bfloat16 if we add that, > should be > done in float32 when floating-point errors occur. Lossless operations > can > of course done without casts. > - Output dtypes should always be unchanged, so if there's an internal > upcast, there should be a matching downcast. > > There may be some exceptions for operations that are very sensitive > to > numerical errors accumulating; those should be documented and treated > as > exceptions to the general rules. > > > Cheers, > Ralf > > > > > - Sebastian > > > > > > > platform/CPU-dependent instructions like AVX512-xxx ones, and as > > > a > > > result > > > having a small subset of the NumPy API have different > > > accuracy/speed > > > trade-offs seems not all that useful to almost all users. And > > > makes > > > it > > > harder to build up a mental model of what NumPy is actually > > > doing. > > > > > > Cheers, > > > Ralf > > > _______________________________________________ > > > NumPy-Discussion mailing list -- [email protected] > > > To unsubscribe send an email to [email protected] > > > https://mail.python.org/mailman3//lists/numpy-discussion.python.org > > > Member address: [email protected] > > _______________________________________________ > > NumPy-Discussion mailing list -- [email protected] > > To unsubscribe send an email to [email protected] > > https://mail.python.org/mailman3//lists/numpy-discussion.python.org > > Member address: [email protected] > > > _______________________________________________ > NumPy-Discussion mailing list -- [email protected] > To unsubscribe send an email to [email protected] > https://mail.python.org/mailman3//lists/numpy-discussion.python.org > Member address: [email protected] _______________________________________________ NumPy-Discussion mailing list -- [email protected] To unsubscribe send an email to [email protected] https://mail.python.org/mailman3//lists/numpy-discussion.python.org Member address: [email protected]
