intel-intrinsics 1.3.11

Use SIMD intrinsics with Intel syntax, with any D compiler, targetting x86 or arm. Like simde but for D.


To use this package, run the following command in your project's root directory:

Manual usage
Put the following dependency into your project's dependences section:

intel-intrinsics

Travis Status x86_64 x86 gdc

intel-intrinsics is the SIMD library for D.

intel-intrinsics lets you use SIMD in D with support for LDC / DMD / GDC with a single syntax and API: the x86 Intel Intrinsics API that is also used within the C, C++, and Rust communities.

intel-intrinsics is most similar to simd-everywhere, it can target AArch64 for full-speed with Apple Silicon, and also 32-bit ARM for the Raspberry Pi.

"dependencies":
{
    "intel-intrinsics": "~>1.0"
}

Features

SIMD intrinsics with _mm_ prefix

DMDLDC x86LDC ARMGDC
MMXYes but slow (#42)YesYesYes (slow in 32-bit)
SSEYes but slow (#42)YesYesYes (slow in 32-bit)
SSE2Yes but slow (#42)YesYesYes (slow in 32-bit)
SSE3Yes but slow (#42)Yes (use -mattr=+sse3)YesYes but slow (#39)
SSSE3WIPWIP (use -mattr=+ssse3)WIPWIP
...NoNoNoNo

The intrinsics implemented follow the syntax and semantics at: https://software.intel.com/sites/landingpage/IntrinsicsGuide/

The philosophy (and guarantee) of intel-intrinsics is:

  • intel-intrinsics generates optimal code else it's a bug.
  • No promise that the exact instruction is generated, because it's often not the fastest thing to do.
  • Guarantee that the semantics of the intrinsic is preserved, above all other consideration (even at the cost of speed). See image below.

SIMD types

intel-intrinsics define the following types whatever the compiler:

long1, float2, int2, short4, byte8, float4, int4, double2

though most of the time you would deal with

alias __m128 = float4; 
alias __m128i = int4;
alias __m128d = double2;
alias __m64 = long1;

Vector Operators for all

intel-intrinsics implements Vector Operators for compilers that don't have __vector support (DMD with 32-bit x86 target). It doesn't provide unsigned vectors though.

Example:

__m128 add_4x_floats(__m128 a, __m128 b)
{
    return a + b;
}

is the same as:

__m128 add_4x_floats(__m128 a, __m128 b)
{
    return _mm_add_ps(a, b);
}

See available operators...

Individual element access

It is recommended to do it in that way for maximum portability:

__m128i A;

// recommended portable way to set a single SIMD element
A.ptr[0] = 42; 

// recommended portable way to get a single SIMD element
int elem = A.array[0];

Why intel-intrinsics?

  • Portability It just works the same for DMD, LDC, and GDC. When using LDC, intel-intrinsics allows to target AArch64 and 32-bit ARM with the same semantics.
  • Capabilities Some instructions just aren't accessible using core.simd and ldc.simd capabilities. For example: pmaddwd which is so important in digital video. Some instructions need an almost exact sequence of LLVM IR to get generated. ldc.intrinsics is a moving target and you need a layer on top of it.
  • Familiarity Intel intrinsic syntax is more familiar to C and C++ programmers. The Intel intrinsics names aren't good, but they are known identifiers. The problem with introducing new names is that you need hundreds of new identifiers.
  • Documentation There is a convenient online guide provided by Intel: https://software.intel.com/sites/landingpage/IntrinsicsGuide/ Without that Intel documentation, it's impractical to write sizeable SIMD code.

Who is using it? intel-intrinsics

Notable differences between x86 and ARM targets

  • AArch64 and 32-bit ARM respects floating-point rounding through MXCSR emulation. This works using FPCR as thread-local store for rounding mode.

Some features of MXCSR are absent:

  • Getting floating-point exception status
  • Setting floating-point exception masks
  • Separate control for denormals-are-zero and flush-to-zero (ARM has one bit for both)
  • 32-bit ARM has a different nearest rounding mode as compared to AArch64 and x86. Numbers with a 0.5 fractional part (such as -4.5) may not round in the same direction. This shouldn't affect you.

Video introduction

In this DConf 2019 talk, Auburn Sounds:

  • introduces how intel-intrinsicscame to be,
  • demonstrates a 3.5x speed-up for some particular loops,
  • reminds that normal D code can be really fast and intrinsics might harm performance

See the talk: intel-intrinsics: Not intrinsically about intrinsics

<img alt="Ben Franklin" src="https://raw.githubusercontent.com/AuburnSounds/intel-intrinsics/master/ben.jpg">

Dependencies:
none
Versions:
1.11.18 2024-Jan-03
1.11.17 2023-Dec-17
1.11.16 2023-Dec-03
1.11.15 2023-Aug-27
1.11.14 2023-Aug-27
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Short URL:
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