RFR: 8350463: AArch64: Add vector rearrange support for small lane count vectors
Xiaohong Gong
xgong at openjdk.org
Fri Mar 7 02:16:53 UTC 2025
On Wed, 26 Feb 2025 01:18:57 GMT, Xiaohong Gong <xgong at openjdk.org> wrote:
> The AArch64 vector rearrange implementation currently lacks support for vector types with lane counts < 4 (see [1]). This limitation results in significant performance gaps when running Long/Double vector benchmarks on NVIDIA Grace (SVE2 architecture with 128-bit vectors) compared to other SVE and x86 platforms.
>
> Vector rearrange operations depend on vector shuffle inputs, which used byte array as payload previously. The minimum vector lane count of 4 for byte type on AArch64 imposed this limitation on rearrange operations. However, vector shuffle payload has been updated to use vector-specific data types (e.g., `int` for `IntVector`) (see [2]). This change enables us to remove the lane count restriction for vector rearrange operations.
>
> This patch added the rearrange support for vector types with small lane count. Here are the main changes:
> - Added AArch64 match rule support for `VectorRearrange` with smaller lane counts (e.g., `2D/2S`)
> - Relocated NEON implementation from ad file to c2 macro assembler file for better handling of complex implementation
> - Optimized temporary register usage in NEON implementation for short/int/float types from two registers to one
>
> Following is the performance improvement data of several Vector API JMH benchmarks, on a NVIDIA Grace CPU with NEON and SVE. Performance of the same JMH with other vector types remains unchanged.
>
> 1) NEON
>
> JMH on panama-vector:vectorIntrinsics:
>
> Benchmark (size) Mode Cnt Units Before After Gain
> Double128Vector.rearrange 1024 thrpt 30 ops/ms 78.060 578.859 7.42x
> Double128Vector.sliceUnary 1024 thrpt 30 ops/ms 72.332 1811.664 25.05x
> Double128Vector.unsliceUnary 1024 thrpt 30 ops/ms 72.256 1812.344 25.08x
> Float64Vector.rearrange 1024 thrpt 30 ops/ms 77.879 558.797 7.18x
> Float64Vector.sliceUnary 1024 thrpt 30 ops/ms 70.528 1981.304 28.09x
> Float64Vector.unsliceUnary 1024 thrpt 30 ops/ms 71.735 1994.168 27.79x
> Int64Vector.rearrange 1024 thrpt 30 ops/ms 76.374 562.106 7.36x
> Int64Vector.sliceUnary 1024 thrpt 30 ops/ms 71.680 1190.127 16.60x
> Int64Vector.unsliceUnary 1024 thrpt 30 ops/ms 71.895 1185.094 16.48x
> Long128Vector.rearrange 1024 thrpt 30 ops/ms 78.902 579.250 7.34x
> Long128Vector.sliceUnary 1024 thrpt 30 ops/ms 72.389 747.794 10.33x
> Long128Vector.unsliceUnary 1024 thrpt 30 ops/ms 71.999 747.848 10.38x
>
>
> JMH on jdk mainline:
>
> Benchmark ...
Hi @theRealAph , could you please help take a look at this PR? Any feedback is welcome. Thanks a lot in advance!
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PR Comment: https://git.openjdk.org/jdk/pull/23790#issuecomment-2705360833
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