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xc-llm-ascend/tests/e2e/nightly/ops/test_dispatch_ffn_combine.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

169 lines
5.5 KiB
Python

import random
import torch
import torch.distributed as dist
import torch.multiprocessing as mp
import torch_npu
from torch.distributed.distributed_c10d import _get_default_group
from vllm_ascend.utils import enable_custom_op
enable_custom_op()
class TestDisptachFFNCombine:
def __init__(self, rank, world_size, port):
self.rank = rank
self.world_size = world_size
self.master_ip = "127.0.0.1"
self.port = port
def get_hcomm(self, comm_group):
hcomm_info = None
if torch.__version__ > "2.0.1":
hcomm_info = comm_group._get_backend(
torch.device("npu")).get_hccl_comm_name(self.rank)
else:
hcomm_info = comm_group.get_hccl_comm_name(self.rank)
return hcomm_info
def setup_ep_tp(
self,
rank,
tp_size,
ep_size,
backend_type,
ep_ranks_list=None,
tp_ranks_list=None,
):
for i in range(tp_size):
if ep_ranks_list:
ep_ranks = ep_ranks_list[i]
else:
ep_ranks = [x + ep_size * i for x in range(ep_size)]
ep_group = dist.new_group(backend=backend_type, ranks=ep_ranks)
if rank in ep_ranks:
ep_group_tmp = ep_group
for i in range(ep_size):
if tp_ranks_list:
tp_ranks = tp_ranks_list[i]
else:
tp_ranks = [x * ep_size + i for x in range(tp_size)]
tp_group = dist.new_group(backend=backend_type, ranks=tp_ranks)
if rank in tp_ranks:
tp_group_tmp = tp_group
return ep_group_tmp, tp_group_tmp
def generate_hcom(self):
torch_npu.npu.set_device(self.rank)
dist.init_process_group(
backend="hccl",
rank=self.rank,
world_size=self.world_size,
init_method=f"tcp://127.0.0.1:{self.port}",
)
ep_size = 0
tp_size = self.world_size
hcomm_info_dist = {
"default_pg_info": None,
"ep_hcomm_info": None,
"group_ep": None,
"tp_hcomm_info": None,
"group_tp": None,
}
if ep_size and tp_size:
group_ep, group_tp = self.setup_ep_tp(self.rank, tp_size, ep_size,
"hccl", None, None)
hcomm_info_dist["ep_hcomm_info"] = self.get_hcomm(group_ep)
hcomm_info_dist["tp_hcomm_info"] = self.get_hcomm(group_tp)
hcomm_info_dist["group_ep"] = group_ep
hcomm_info_dist["group_tp"] = group_tp
else:
if dist.is_available():
default_pg = _get_default_group()
hcomm_info_dist["default_pg_info"] = self.get_hcomm(default_pg)
hcomm_info = hcomm_info_dist["default_pg_info"]
self.hcomm_info = hcomm_info
def run_npu_out(self) -> bool:
torch_npu.npu.set_device(self.rank)
m = 2 # token-num 32
k = 4 # hidden_size 7168
n = 4 # mid-hidden-size 4096
topk = 2
e = 2 # expert-num-per-rank 16
k2 = n // 2
n2 = k
torch_npu.npu.config.allow_internal_format = True
x = self.generate_random_tensor((m, k), dtype=torch.bfloat16).npu()
weight1 = self.generate_random_tensor((e, k, n),
dtype=torch.int8).npu()
weight1 = torch_npu.npu_format_cast(weight1, 29)
weight2 = self.generate_random_tensor((e, k2, n2),
dtype=torch.int8).npu()
weight2 = torch_npu.npu_format_cast(weight2, 29)
expert_idx = torch.randint(0,
self.world_size * e, (m, topk),
dtype=torch.int32).npu()
scale1 = torch.randint(0, 1, (e, n), dtype=torch.int64).npu()
scale2 = torch.randint(0, 1, (e, n2), dtype=torch.int64).npu()
probs = torch.randn(size=(m, topk), dtype=torch.float32).npu()
out = self.generate_random_tensor((m, k), dtype=torch.bfloat16).npu()
torch.ops._C_ascend.dispatch_ffn_combine(
x=x,
weight1=weight1,
weight2=weight2,
expert_idx=expert_idx,
scale1=scale1,
scale2=scale2,
probs=probs,
group=self.hcomm_info,
max_output_size=512,
out=out,
)
return True
def generate_random_tensor(self, size, dtype):
if dtype in [torch.float16, torch.bfloat16, torch.float32]:
return torch.randn(size=size, dtype=dtype)
elif dtype is torch.int8:
return torch.randint(-16, 16, size=size, dtype=dtype)
elif dtype is torch.int32:
return torch.randint(-1024, 1024, size=size, dtype=dtype)
else:
raise ValueError(f"Invalid dtype: {dtype}")
def worker(rank: int, world_size: int, port: int, q: mp.SimpleQueue):
op = TestDisptachFFNCombine(rank, world_size, port)
op.generate_hcom()
out = op.run_npu_out()
q.put(out)
@torch.inference_mode()
def test_dispatch_ffn_combine_kernel():
world_size = 2
mp.set_start_method("fork", force=True)
q = mp.SimpleQueue()
p_list = []
port = 29501 + random.randint(0, 10000)
for rank in range(world_size):
p = mp.Process(target=worker, args=(rank, world_size, port, q))
p.start()
p_list.append(p)
results = [q.get() for _ in range(world_size)]
for p in p_list:
p.join()
assert all(results)