### What this PR does / why we need it?
**Scope of Changes**:
| File Path |
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| `vllm_ascend/ops/triton/activation/swiglu_quant.py` |
| `vllm_ascend/ops/triton/batch_invariant/matmul.py` |
| `vllm_ascend/ops/triton/batch_invariant/mean.py` |
| `vllm_ascend/ops/triton/batch_invariant/rmsnorm.py` |
| `vllm_ascend/ops/triton/fla/chunk.py` |
| `vllm_ascend/ops/triton/fla/chunk_delta_h.py` |
| `vllm_ascend/ops/triton/fla/chunk_o.py` |
| `vllm_ascend/ops/triton/fla/chunk_scaled_dot_kkt.py` |
| `vllm_ascend/ops/triton/fla/cumsum.py` |
| `vllm_ascend/ops/triton/fla/fused_qkvzba_split_reshape.py` |
| `vllm_ascend/ops/triton/fla/l2norm.py` |
| `vllm_ascend/ops/triton/fla/layernorm_guard.py` |
| `vllm_ascend/ops/triton/fla/sigmoid_gating.py` |
| `vllm_ascend/ops/triton/fla/solve_tril.py` |
| `vllm_ascend/ops/triton/fla/utils.py` |
| `vllm_ascend/ops/triton/fla/wy_fast.py` |
| `vllm_ascend/ops/triton/fused_gdn_gating.py` |
| `vllm_ascend/ops/triton/layernorm_gated.py` |
| `vllm_ascend/ops/triton/linearnorm/split_qkv_rmsnorm_rope.py` |
| `vllm_ascend/ops/triton/mamba/causal_conv1d.py` |
| `vllm_ascend/ops/triton/reject_sample.py` |
| `vllm_ascend/ops/triton/rope.py` |
| `vllm_ascend/ops/triton/spec_decode/utils.py` |
| `vllm_ascend/ops/triton/triton_utils.py` |
### Does this PR introduce _any_ user-facing change?
### How was this patch tested?
- vLLM version: v0.14.0
- vLLM main:
d68209402d
Signed-off-by: MrZ20 <2609716663@qq.com>
153 lines
5.1 KiB
Python
153 lines
5.1 KiB
Python
# Adapt from https://github.com/vllm-project/vllm/blob/main/vllm/model_executor/layers/batch_invariant.py
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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# Copyright (c) 2026 Huawei Technologies Co., Ltd. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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# This file is a part of the vllm-ascend project.
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#
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import torch
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from triton.runtime import driver # type: ignore
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from vllm.triton_utils import tl, triton
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@triton.jit
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def _rms_norm_kernel(
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input_ptr,
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weight_ptr,
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output_ptr,
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input_row_stride,
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output_row_stride,
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n_rows, # 新增参数:总行数
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n_cols,
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eps,
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BLOCK_SIZE: tl.constexpr,
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):
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"""
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Compute RMS normalization along the last dimension of a 2D tensor.
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RMS Norm: y = x / sqrt(mean(x^2) + eps) * weight
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Each program handles multiple rows of the input tensor.
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"""
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pid = tl.program_id(0)
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n_programs = tl.num_programs(0)
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rows_per_program = (n_rows + n_programs - 1) // n_programs
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start_row = pid * rows_per_program
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end_row = tl.minimum(start_row + rows_per_program, n_rows)
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for row_idx in range(start_row, end_row):
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row_start_ptr = input_ptr + row_idx * input_row_stride
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output_row_start_ptr = output_ptr + row_idx * output_row_stride
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# Step 1: Compute sum of squares in float32 to avoid overflow
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sum_sq = tl.zeros([1], dtype=tl.float32)
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for col_offset in range(0, n_cols, BLOCK_SIZE):
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col_idx = col_offset + tl.arange(0, BLOCK_SIZE)
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mask = col_idx < n_cols
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vals = tl.load(row_start_ptr + col_idx, mask=mask, other=0.0)
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vals_f32 = vals.to(tl.float32)
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sq_vals = vals_f32 * vals_f32
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sum_sq += tl.sum(tl.where(mask, sq_vals, 0.0))
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# Step 2: Compute RMS (root mean square) in float32
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mean_sq = sum_sq / n_cols
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rms = tl.sqrt(mean_sq + eps)
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inv_rms = 1.0 / rms
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# Step 3: Normalize and apply weight
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for col_offset in range(0, n_cols, BLOCK_SIZE):
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col_idx = col_offset + tl.arange(0, BLOCK_SIZE)
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mask = col_idx < n_cols
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vals = tl.load(row_start_ptr + col_idx, mask=mask, other=0.0)
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weight = tl.load(weight_ptr + col_idx, mask=mask, other=1.0)
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vals_f32 = vals.to(tl.float32)
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weight_f32 = weight.to(tl.float32)
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output_f32 = vals_f32 * inv_rms * weight_f32
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output = output_f32.to(vals.dtype)
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tl.store(output_row_start_ptr + col_idx, output, mask=mask)
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def rms_norm(
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input_: torch.Tensor,
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weight: torch.Tensor,
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eps: float = 1e-6,
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) -> torch.Tensor:
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"""
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Compute RMS normalization using Triton kernel with fixed grid size.
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RMS Norm normalizes the input by the root mean square and scales by weight:
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output = input / sqrt(mean(input^2) + eps) * weight
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Args:
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input: Input tensor of shape (..., hidden_size)
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weight: Weight tensor of shape (hidden_size,)
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eps: Small constant for numerical stability
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Returns:
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Tensor with RMS normalization applied along the last dimension
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"""
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assert weight.dim() == 1, "Weight must be 1-dimensional"
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assert input_.shape[-1] == weight.shape[0], (
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f"Input last dimension ({input_.shape[-1]}) must match weight dimension ({weight.shape[0]})"
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)
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# Flatten all dimensions except the last one
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original_shape = input_.shape
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input_2d = input_.reshape(-1, input_.shape[-1])
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input_2d = input_2d.contiguous()
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weight = weight.contiguous()
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n_rows, n_cols = input_2d.shape
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output = torch.empty_like(input_2d, dtype=input_.dtype)
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BLOCK_SIZE = 1024
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max_grid_size = driver.active.utils.get_device_properties(torch.npu.current_device())["num_vectorcore"]
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grid = (min(n_rows, max_grid_size),)
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_rms_norm_kernel[grid](
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input_2d,
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weight,
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output,
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input_2d.stride(0),
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output.stride(0),
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n_rows,
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n_cols,
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eps,
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BLOCK_SIZE=BLOCK_SIZE,
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)
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return output.reshape(original_shape)
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def rms_norm_batch_invariant(
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input_: torch.Tensor,
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weight: torch.Tensor,
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eps: float = 1e-6,
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) -> torch.Tensor:
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"""
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Batch-invariant wrapper for RMS normalization.
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This function provides a deterministic, batch-invariant implementation
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of RMS normalization for use with the batch_invariant mode.
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Args:
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input: Input tensor of shape (..., hidden_size)
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weight: Weight tensor of shape (hidden_size,)
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eps: Small constant for numerical stability
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Returns:
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RMS normalized tensor
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"""
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return rms_norm(input_, weight, eps=eps)
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