crlibm
sleef
crlibm | sleef | |
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1 | 17 | |
40 | 595 | |
- | - | |
0.0 | 8.1 | |
over 3 years ago | 5 days ago | |
C | C | |
GNU General Public License v3.0 only | Boost Software License 1.0 |
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crlibm
sleef
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The Case of the Missing SIMD Code
I'm the main author of Highway, so I have some opinions :D Number of operations/platforms supported are important criteria.
A hopefully unbiased commentary:
Simde allows you to take existing nonportable intrinsics and get them to run on another platform. This is useful when you have a bunch of existing code and tight deadlines. The downside is less than optimal performance - a portable abstraction can be more efficient than forcing one platform to exactly match the semantics of another. Although a ton of effort has gone into Simde, sometimes it also resorts to autovectorization which may or may not work.
Eigen and SLEEF are mostly math-focused projects that also have a portability layer. SLEEF is designed for C and thus has type suffixes which are rather verbose, see https://github.com/shibatch/sleef/blob/master/src/libm/sleef... But it offers a complete (more so than Highway's) libm.
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Does anyone have any interest in my deep-learning framework?
But the other part about SIMD: I'm unsure if mgl-mat uses SIMD for transcendental functions or even for something like element-wise multiplication and division*. SIMD easily provides a speed-boost of 4-8 times which numpy uses. Libraries like sleef have been put to use by many.
- `constexpr` what?
- Advice on porting glibc trig functions to SIMD
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SIMD intrinsics and the possibility of a standard library solution
Highway and Agner's VectorClass also have math functions. And SLEEF should definitely be mentioned.
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Portable SIMD library
"SIMD Library for Evaluating Elementary Functions, vectorized libm and DFT" - https://github.com/shibatch/sleef
- SIMD Library for Evaluating Elementary Functions, Vectorized Libm and DFT
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C library for multiple-precision floating-point arithmetic with correct rounding
Not mentioned in the list of users is SLEEF (https://github.com/shibatch/sleef), which provides fast approximations for various elementary functions. (It generates coefficients for the approximations with mpfr)
SLEEF itself is used by PyTorch.
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How to speed up array writes?
If you are looking at floats, there's https://sleef.org
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Benchmarking sine approximations and interpolators.
It would be interesting to see SLEEF added in the benchmarks.
What are some alternatives?
rlibm-32 - RLibm for 32-bit representations (float and posit32)
nsimd - Agenium Scale vectorization library for CPUs and GPUs
yenten-arm-miner-yespowerr16 - ARM 64 CPU miner for Yespower variant algorithms
sb-simd - A convenient SIMD interface for SBCL.
vector-libm
xbyak_aarch64
FftSharp - A .NET Standard library for computing the Fast Fourier Transform (FFT) of real or complex data
bmas - Basic Mathematical Subprograms - SIMD operations on strided vectors of floats, doubles, u/int/64/32/16/8
streamvbyte - Fast integer compression in C using the StreamVByte codec
highway - Performance-portable, length-agnostic SIMD with runtime dispatch
cuda-samples - Samples for CUDA Developers which demonstrates features in CUDA Toolkit