RFR: 8366444: Add support for add/mul reduction operations for Float16 [v2]
Marc Chevalier
mchevalier at openjdk.org
Wed Dec 17 12:43:16 UTC 2025
On Wed, 17 Dec 2025 10:45:46 GMT, Bhavana Kilambi <bkilambi at openjdk.org> wrote:
>> This patch adds mid-end support for vectorized add/mul reduction operations for half floats. It also includes backend aarch64 support for these operations. Only vectorization support through autovectorization is added as VectorAPI currently does not support Float16 vector species.
>>
>> Both add and mul reduction vectorized through autovectorization mandate the implementation to be strictly ordered. The following is how each of these reductions is implemented for different aarch64 targets -
>>
>> **For AddReduction :**
>> On Neon only targets (UseSVE = 0): Generates scalarized additions using the scalar `fadd` instruction for both 8B and 16B vector lengths. This is because Neon does not provide a direct instruction for computing strictly ordered floating point add reduction.
>>
>> On SVE targets (UseSVE > 0): Generates the `fadda` instruction which computes add reduction for floating point in strict order.
>>
>> **For MulReduction :**
>> Both Neon and SVE do not provide a direct instruction for computing strictly ordered floating point multiply reduction. For vector lengths of 8B and 16B, a scalarized sequence of scalar `fmul` instructions is generated and multiply reduction for vector lengths > 16B is not supported.
>>
>> Below is the performance of the two newly added microbenchmarks in `Float16OperationsBenchmark.java` tested on three different aarch64 machines and with varying `MaxVectorSize` -
>>
>> Note: On all machines, the score (ops/ms) is compared with the master branch without this patch which generates a sequence of loads (`ldrsh`) to load the FP16 value into an FPR and a scalar `fadd/fmul` to add/multiply the loaded value to the running sum/product. The ratios given below are the ratios between the throughput with this patch and the throughput without this patch.
>> Ratio > 1 indicates the performance with this patch is better than the master branch.
>>
>> **N1 (UseSVE = 0, max vector length = 16B):**
>>
>> Benchmark vectorDim Mode Cnt 8B 16B
>> ReductionAddFP16 256 thrpt 9 1.41 1.40
>> ReductionAddFP16 512 thrpt 9 1.41 1.41
>> ReductionAddFP16 1024 thrpt 9 1.43 1.40
>> ReductionAddFP16 2048 thrpt 9 1.43 1.40
>> ReductionMulFP16 256 thrpt 9 1.22 1.22
>> ReductionMulFP16 512 thrpt 9 1.21 1.23
>> ReductionMulFP16 1024 thrpt 9 1.21 1.22
>> ReductionMulFP16 2048 thrpt 9 1.20 1.22
>>
>>
>> On N1, the scalarized sequence of `fadd/fmul` are gener...
>
> Bhavana Kilambi has updated the pull request with a new target base due to a merge or a rebase. The incremental webrev excludes the unrelated changes brought in by the merge/rebase. The pull request contains three additional commits since the last revision:
>
> - Address review comments
> - Merge 'master'
> - 8366444: Add support for add/mul reduction operations for Float16
>
> This patch adds mid-end support for vectorized add/mul reduction
> operations for half floats. It also includes backend aarch64 support for
> these operations. Only vectorization support through autovectorization
> is added as VectorAPI currently does not support Float16 vector species.
>
> Both add and mul reduction vectorized through autovectorization mandate
> the implementation to be strictly ordered. The following is how each of
> these reductions is implemented for different aarch64 targets -
>
> For AddReduction :
> On Neon only targets (UseSVE = 0): Generates scalarized additions
> using the scalar "fadd" instruction for both 8B and 16B vector lengths.
> This is because Neon does not provide a direct instruction for computing
> strictly ordered floating point add reduction.
>
> On SVE targets (UseSVE > 0): Generates the "fadda" instruction which
> computes add reduction for floating point in strict order.
>
> For MulReduction :
> Both Neon and SVE do not provide a direct instruction for computing
> strictly ordered floating point multiply reduction. For vector lengths
> of 8B and 16B, a scalarized sequence of scalar "fmul" instructions is
> generated and multiply reduction for vector lengths > 16B is not
> supported.
>
> Below is the performance of the two newly added microbenchmarks in
> Float16OperationsBenchmark.java tested on three different aarch64
> machines and with varying MaxVectorSize -
>
> Note: On all machines, the score (ops/ms) is compared with the master
> branch without this patch which generates a sequence of loads ("ldrsh")
> to load the FP16 value into an FPR and a scalar "fadd/fmul" to
> add/multiply the loaded value to the running sum/product. The ratios
> given below are the ratios between the throughput with this patch and
> the throughput without this patch.
> Ratio > 1 indicates the performance with this patch is better than the
> master branch.
>
> N1 (UseSVE = 0, max vector length = 16B):
> Benchmark vectorDim Mode Cnt 8B 16B
> ReductionAddFP16 256 thrpt 9 1.41 1.40
> Redu...
Changes requested by mchevalier (Committer).
src/hotspot/share/opto/vectornode.hpp line 328:
> 326: ReductionNode(ctrl, in1, in2), _requires_strict_order(requires_strict_order) {}
> 327:
> 328: virtual int Opcode() const;
Build is failing on Mac because of `-Winconsistent-missing-override`: since you specified `override` on `bottom_type` and `ideal_reg`, you need to put `override` everywhere it applies. That means `Opcode` `requires_strict_order`, `hash`, `cmp` and `size_of`. And same in `MulReductionVHFNode`.
-------------
PR Review: https://git.openjdk.org/jdk/pull/27526#pullrequestreview-3587543752
PR Review Comment: https://git.openjdk.org/jdk/pull/27526#discussion_r2626909207
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