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@WuSiYu WuSiYu commented Nov 2, 2025

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Summary of Changes

Hello @WuSiYu, I'm Gemini Code Assist1! I'm currently reviewing this pull request and will post my feedback shortly. In the meantime, here's a summary to help you and other reviewers quickly get up to speed!

This pull request resolves a numerical precision problem within the Triton token_att_fwd operator. By explicitly casting the intermediate sum of attention values to float32 during computation, the change prevents potential inaccuracies that could arise from implicit type handling, thereby enhancing the stability and correctness of the model's attention mechanism.

Highlights

  • Precision Fix: Addressed a precision issue in the token_att_fwd Triton operator by explicitly setting the dtype of the tl.sum operation to tl.float32.
  • Triton Kernel Update: Modified the token_attention_nopad_att1.py kernel to ensure attention value calculations maintain float32 precision throughout the summation process.
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Code Review

This pull request correctly addresses a potential precision issue in the _fwd_kernel_token_att1 Triton kernel. By changing tl.sum(...) followed by .to(tl.float32) to tl.sum(..., dtype=tl.float32), the summation is performed using a float32 accumulator. This prevents precision loss when summing many low-precision floating-point numbers and improves numerical stability. The change is also more efficient.

This is an excellent fix. I suggest auditing other Triton kernels in the repository for similar patterns. For instance, _fwd_kernel_token_att1_int8 in the same file and kernels in lightllm/models/llama/triton_kernel/token_attention_nopad_reduceV.py seem to have summations over low-precision types that could also benefit from using a float32 accumulator to prevent potential silent precision loss.

@hiworldwzj hiworldwzj merged commit e2e9fab into ModelTC:main Nov 4, 2025
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