Commit graph

14 commits

Author SHA1 Message Date
Bill Currie
53ae2fe223 [util] Fix more ULP issues in the simd tests on arm
This time for debug (unoptimized) builds. While I could just do an
approximate check, I think it's better to document (as such) the
expected errors.
2023-03-28 12:46:16 +09:00
Bill Currie
5f6c007c7c [util] Clean up some ULP errors in tests
The problem with floating point in unit tests is, well, comparisons are
finicky.
2023-03-25 17:37:36 +09:00
Bill Currie
80c5e2c3f6 [simd] Remove requirements for AVX2 for vec4d
It seems gcc-11 does a pretty good job of emulating the instructions (it
no longer requires avx2 for 256-bit wide vectors).
2022-01-06 18:06:56 +09:00
Bill Currie
97034d9dde [simd] Add 2d vector types
For int, long, float and double. I've been meaning to add them for a
while, and they're part of the new Ruamoko instructions set (which is
progressing nicely).
2022-01-02 00:57:55 +09:00
D G Turner
b799d48ccb [simd] fix build when avx2 is not available, but avx is.
This failed with errors such as:
                 from ./include/QF/simd/vec4d.h:32,
                 from libs/util/simd.c:37:
./include/QF/simd/vec4d.h: In function ‘qmuld’:
/usr/lib/gcc/x86_64-pc-linux-gnu/10.3.0/include/avx2intrin.h:1049:1: error: inlining failed in call to ‘always_inline’ ‘_mm256_permute4x64_pd’: target specific option mismatch
 1049 | _mm256_permute4x64_pd (__m256d __X, const int __M)
2021-06-23 01:10:42 +01:00
Bill Currie
0293167bd2 [util] Get simd tests working for emulated simd
A bit of a mess for optimized vs unoptimized, but the tests acknowledge
the differences in precision while checking that the code produces the
right results allowing for that precision.
2021-06-01 18:53:53 +09:00
Bill Currie
778c07e91f [util] Get vectors working for non-SSE archs
GCC does a fairly nice job of producing code for vector types when the
hardware doesn't support SIMD, but it seems to break certain math
optimization rules due to excess precision (?). Still, it works well
enough for the core engine, but may not be well suited to the tools.
However, so far, only qfvis uses vector types (and it's not tested yet),
and tools should probably be used on suitable machines anyway (not
forces, of course).
2021-06-01 18:53:53 +09:00
Bill Currie
b6ab832ed4 [simd] Add vabsf and some more tests 2021-03-28 19:49:43 +09:00
Bill Currie
4a97bc3ba5 [util] Create simd quaternion to matrix function
This seems to be pretty close to as fast as it gets (might be able to do
better with some shuffles of the negation constants instead of loading
separate constants).
2021-03-04 17:45:10 +09:00
Bill Currie
45c0255643 [util] Add simd 4x4 matrix functions
Currently just add, subtract, multiply (m m and m v).
2021-03-03 16:34:16 +09:00
Bill Currie
015cee7b6f [util] Add vector-quaternion shortcut functions
Care needs to be taken to ensure the right function is used with the
right arguments, but with these, the need to use qconj(d|f) for a
one-off inverse rotation is removed.
2021-01-02 10:44:45 +09:00
Bill Currie
7bf90e5f4a [util] Sort out implementation issues for simd 2021-01-02 09:55:59 +09:00
Bill Currie
1ddd57b09e [util] Add qconj, vtrunc, vceil and vfloor functions
I had forgotten these rather critical functions. Both double and float
versions are included.
2020-12-30 18:20:11 +09:00
Bill Currie
09a10f80e1 [util] Add basic SIMD implemented vector functions
They take advantage of gcc's vector_size attribute and so only cross,
dot, qmul, qvmul and qrot (create rotation quaternion from two vectors)
are needed at this stage as basic (per-component) math is supported
natively by gcc.

The provided functions work on horizontal (array-of-structs) data, ie a
vec4d_t or vec4f_t represents a single vector, or traditional vector
layout. Vertical layout (struct-of-arrays) does not need any special
functions as the regular math can be used to operate on four vectors at
a time.

Functions are provided for loading a vec4 from a vec3 (4th element set
to 0) and storing a vec4 into a vec3 (discarding the 4th element).

With this, QF will require AVX2 support (needed for vec4d_t). Without
support for doubles, SSE is possible, but may not be worthwhile for
horizontal data.

Fused-multiply-add is NOT used because it alters the results between
unoptimized and optimized code, resulting in -mfma really meaning
-mfast-math-anyway. I really do not want to have to debug issues that
occur only in optimized code.
2020-12-30 18:20:11 +09:00