Files
xc-llm-ascend/vllm_ascend/ascend_forward_context.py
Chen Chen ad0607f900 add dispatch_gmm_combine kernel (#3532)
### What this PR does / why we need it?

This PR introduces the Ascend implementation of the
`dispatch_ffn_combine` kernel and wires it into the vLLM-Ascend runtime,
together with follow‑up fixes to ensure the kernel builds and runs
correctly in CI.

- Add full host and device implementation of the `dispatch_ffn_combine`
kernel under `csrc/dispatch_ffn_combine`, including tiling logic, MOE
routing helpers, and kernel utilities for quantized FFN dispatch.
- Integrate the new kernel with the PyTorch binding
(csrc/torch_binding.cpp, csrc/torch_binding_meta.cpp) and the Ascend
runtime (vllm_ascend/ascend_forward_context.py,
vllm_ascend/worker/model_runner_v1.py).
- Extend fused MoE communication and token dispatch support in
`vllm_ascend/ops/fused_moe`, adding methods/utilities needed by the new
dispatch path.
- Update quantization logic in vllm_ascend/quantization/w8a8_dynamic.py
to support the new FFN dispatch flow.
- Fix kernel build issues by adjusting `csrc/build_aclnn.sh`, CMake
configuration, and include/namespace usage in the new kernel files.
- Add an end‑to‑end nightly test
`tests/e2e/nightly/ops/test_dispatch_ffn_combine.py` and helper
utilities in `vllm_ascend/utils.py` to validate the new kernel.

### Does this PR introduce _any_ user-facing change?

### How was this patch tested?


- vLLM version: v0.12.0
- vLLM main: https://github.com/vllm-project/vllm/commit/v0.12.0

---------

Signed-off-by: mojave2 <chenchen145@huawei.com>
Co-authored-by: wangxiyuan <wangxiyuan1007@gmail.com>
2025-12-04 23:00:59 +08:00

200 lines
8.3 KiB
Python

import math
from contextlib import contextmanager
from enum import Enum
from typing import TYPE_CHECKING, Any, Optional
import torch
from vllm.config import CUDAGraphMode, VllmConfig
from vllm.distributed import (get_dp_group, get_ep_group,
get_tensor_model_parallel_world_size)
from vllm.forward_context import (BatchDescriptor, get_forward_context,
set_forward_context)
import vllm_ascend.envs as envs_ascend
from vllm_ascend.utils import (enable_sp, flashcomm2_enable, has_layer_idx,
is_moe_model)
if TYPE_CHECKING:
from vllm_ascend.ops.weight_prefetch import WeightPrefetchMethod
else:
WeightPrefetchMethod = None
class FusedMoEState(Enum):
AllGather = 0
All2All = 1
MC2 = 2
AllGatherEP = 3
NaiveMulticast = 4
All2AllSeq = 5
def get_fused_moe_state(ep_size: int, with_prefill: bool,
is_deepseek_v3_r1: bool):
# the fusion operator torch_npu.npu_grouped_matmul_finalize_routing called by allgather ep
# only supports deepseek v3/r1
if (envs_ascend.VLLM_ENABLE_FUSED_EXPERTS_ALLGATHER_EP and ep_size > 1
and is_deepseek_v3_r1):
return FusedMoEState.AllGatherEP
elif ep_size == 1:
if with_prefill:
return FusedMoEState.NaiveMulticast
else:
return FusedMoEState.AllGather
# NOTE: mc2 need ep_size >= 16 & all2all can't use in torchair graph.
elif ep_size < 16 or with_prefill:
return FusedMoEState.All2All
else:
return FusedMoEState.MC2
class MoECommType(Enum):
ALLGATHER = 0
MC2 = 1
ALLTOALL = 2
FUSED_ALLTOALL = 3
@contextmanager
def set_ascend_forward_context(
attn_metadata: Any,
vllm_config: VllmConfig,
virtual_engine: int = 0,
num_tokens: Optional[int] = None,
num_tokens_across_dp: Optional[torch.Tensor] = None,
with_prefill: bool = True,
in_profile_run: bool = False,
reserved_mc2_mask: Optional[torch.Tensor] = None,
moe_comm_type: Optional[MoECommType] = None,
num_actual_tokens: Optional[int] = None,
aclgraph_runtime_mode: CUDAGraphMode = CUDAGraphMode.NONE,
batch_descriptor: Optional[BatchDescriptor] = None,
prefetch_stream: torch.npu.Stream = None,
model_instance: torch.nn.Module = None,
weight_prefetch_method: Optional[WeightPrefetchMethod] = None,
is_mtp_model=False):
"""A context manager that stores the current forward context,
can be attention metadata, etc.
We add some additional param into forward_context.
"""
with set_forward_context(
attn_metadata,
vllm_config,
virtual_engine=virtual_engine,
num_tokens=num_tokens,
num_tokens_across_dp=num_tokens_across_dp,
cudagraph_runtime_mode=aclgraph_runtime_mode,
batch_descriptor=batch_descriptor,
):
forward_context = get_forward_context()
from vllm_ascend.ops.fused_moe.moe_comm_method import \
get_moe_comm_method
forward_context.moe_comm_type = moe_comm_type
forward_context.moe_comm_method = get_moe_comm_method(moe_comm_type)
forward_context.with_prefill = with_prefill
tp_world_size = get_tensor_model_parallel_world_size()
ep_size = (get_ep_group().world_size if
vllm_config.parallel_config.enable_expert_parallel else 1)
# fused_moe_state is used in torchair, it will be deleted along with torchair
is_deepseek_v3_r1 = hasattr(
vllm_config.model_config.hf_config, 'n_routed_experts'
) and vllm_config.model_config.hf_config.n_routed_experts == 256
fused_moe_state = get_fused_moe_state(ep_size, with_prefill,
is_deepseek_v3_r1)
forward_context.fused_moe_state = fused_moe_state
forward_context.in_profile_run = in_profile_run
# NOTE: This cannot be set using set_forward_context
# due to multiple warmups before actual capturing
forward_context.capturing = False
# set for sequence parallelism, 1000 is the batch size concurrency threshold for enabling the flashcomm_v1 or sequence_parallelism feature.
# Currently, it is an empirical value. In normal scenarios, if the concurrency exceeds this threshold,
# the performance benefits can be maximized. Conversely, if the concurrency is below the threshold,
# the performance may degrade due to the switching of communication methods.
mmrs_fusion = True
if is_moe_model(vllm_config):
sp_enabled = enable_sp(vllm_config) and num_tokens is not None
mmrs_fusion = False
else:
sp_enabled = enable_sp(vllm_config) and \
num_tokens is not None and num_tokens > 1000
forward_context.mmrs_fusion = mmrs_fusion
forward_context.num_tokens = num_tokens
forward_context.sp_enabled = sp_enabled
#TODO(Levi-JQ): another PR to normalize the enabling logic for sp/fc2
forward_context.flashcomm_v2_enabled = flashcomm2_enable(
) and tp_world_size > 1 and num_tokens is not None
if (forward_context.sp_enabled
or forward_context.flashcomm_v2_enabled):
pad_size = (tp_world_size -
(num_tokens % tp_world_size)) % tp_world_size
forward_context.pad_size = pad_size
# set this for rope forward_oot using
forward_context.is_first_layer = True
# set layer_idx to enable optimization features that depend on this information.
# This is only applicable to models that contain these necessary attributes.
forward_context.layer_idx = None
if has_layer_idx(model_instance):
forward_context.layer_idx = model_instance.model.start_layer
# TODO(rjg-lyh): refactor mlp weight prefetch method
# set for mlp weight prefetch
prefetch_mlp_enabled = envs_ascend.VLLM_ASCEND_ENABLE_DENSE_OPTIMIZE and \
envs_ascend.VLLM_ASCEND_ENABLE_PREFETCH_MLP and \
forward_context.layer_idx is not None and \
num_tokens is not None and num_tokens < 500
if prefetch_mlp_enabled:
forward_context.prefetch_stream = prefetch_stream
forward_context.model_instance = model_instance
forward_context.prefetch_mlp_gate_up_proj = False
forward_context.prefetch_mlp_down_proj = False
forward_context.prefetch_mlp_enabled = prefetch_mlp_enabled
forward_context.model_instance = model_instance
forward_context.weight_prefetch_method = weight_prefetch_method
forward_context.is_mtp_model = is_mtp_model
if num_tokens is None and attn_metadata is not None:
num_tokens = attn_metadata.num_actual_tokens
dp_world_size = get_dp_group().world_size
if dp_world_size > 1 and forward_context.dp_metadata is not None:
max_tokens_across_dp = \
forward_context.dp_metadata.max_tokens_across_dp_cpu.item()
if (forward_context.sp_enabled
or forward_context.flashcomm_v2_enabled):
padded_length = (max_tokens_across_dp + tp_world_size -
1) // tp_world_size * tp_world_size
pad_size = padded_length - num_tokens
forward_context.padded_length = padded_length
forward_context.pad_size = pad_size
else:
max_tokens_across_dp = num_tokens
forward_context.max_tokens_across_dp = max_tokens_across_dp
if num_tokens is not None:
if num_actual_tokens is None:
num_actual_tokens = num_tokens
# NOTE: token num which need to pad to when mc2
forward_context.padded_num_tokens = math.ceil(
max_tokens_across_dp / tp_world_size) * tp_world_size
if reserved_mc2_mask is not None:
mc2_mask = reserved_mc2_mask[:forward_context.
padded_num_tokens]
mc2_mask[:num_actual_tokens] = True
mc2_mask[num_actual_tokens:] = False
forward_context.mc2_mask = mc2_mask
try:
yield
finally:
pass