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OpenDAS
vllm_cscc
Commits
55f7b089
Commit
55f7b089
authored
Nov 03, 2025
by
zhuwenwen
Browse files
Merge branch 'v0.9.2-dev-ds' of
http://10.16.6.30/dcutoolkit/deeplearing/vllm
into v0.9.2-dev-ds
parents
5ca1259e
ab485158
Changes
23
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20 changed files
with
578 additions
and
690 deletions
+578
-690
vllm/config.py
vllm/config.py
+1
-1
vllm/distributed/device_communicators/all2all.py
vllm/distributed/device_communicators/all2all.py
+15
-5
vllm/distributed/device_communicators/cuda_communicator.py
vllm/distributed/device_communicators/cuda_communicator.py
+2
-0
vllm/distributed/parallel_state.py
vllm/distributed/parallel_state.py
+1
-1
vllm/envs.py
vllm/envs.py
+7
-6
vllm/forward_context.py
vllm/forward_context.py
+2
-2
vllm/model_executor/layers/fused_moe/__init__.py
vllm/model_executor/layers/fused_moe/__init__.py
+3
-0
vllm/model_executor/layers/fused_moe/deepep_ht_prepare_finalize.py
...l_executor/layers/fused_moe/deepep_ht_prepare_finalize.py
+11
-2
vllm/model_executor/layers/fused_moe/deepep_ll_prepare_finalize.py
...l_executor/layers/fused_moe/deepep_ll_prepare_finalize.py
+2
-1
vllm/model_executor/layers/fused_moe/ep_moe/token_dispatcher.py
...odel_executor/layers/fused_moe/ep_moe/token_dispatcher.py
+0
-559
vllm/model_executor/layers/fused_moe/fused_batched_moe.py
vllm/model_executor/layers/fused_moe/fused_batched_moe.py
+1
-0
vllm/model_executor/layers/fused_moe/layer.py
vllm/model_executor/layers/fused_moe/layer.py
+15
-7
vllm/model_executor/layers/fused_moe/modular_kernel.py
vllm/model_executor/layers/fused_moe/modular_kernel.py
+305
-0
vllm/model_executor/layers/fused_moe/mori_moe/ep_moe_utlis.py
.../model_executor/layers/fused_moe/mori_moe/ep_moe_utlis.py
+0
-0
vllm/model_executor/layers/fused_moe/mori_moe/layer.py
vllm/model_executor/layers/fused_moe/mori_moe/layer.py
+24
-76
vllm/model_executor/layers/fused_moe/pplx_prepare_finalize.py
.../model_executor/layers/fused_moe/pplx_prepare_finalize.py
+1
-0
vllm/model_executor/layers/fused_moe/prepare_finalize.py
vllm/model_executor/layers/fused_moe/prepare_finalize.py
+1
-0
vllm/model_executor/layers/fused_moe/triton_group_gemm_moe.py
.../model_executor/layers/fused_moe/triton_group_gemm_moe.py
+107
-0
vllm/model_executor/layers/quantization/slimquant_w4a8_marlin.py
...del_executor/layers/quantization/slimquant_w4a8_marlin.py
+79
-29
vllm/model_executor/models/deepseek_mtp.py
vllm/model_executor/models/deepseek_mtp.py
+1
-1
No files found.
vllm/config.py
View file @
55f7b089
...
...
@@ -4755,7 +4755,7 @@ class VllmConfig:
batch_size_capture_list
=
[]
if
self
.
model_config
is
not
None
and
\
not
self
.
model_config
.
enforce_eager
:
if
self
.
model_config
.
use_mla
and
self
.
compilation_config
.
full_cuda_graph
and
self
.
scheduler_config
.
max_num_seqs
<=
512
:
if
self
.
model_config
.
use_mla
and
self
.
scheduler_config
.
max_num_seqs
<=
512
:
cuda_graph_sizes
=
[
self
.
scheduler_config
.
max_num_seqs
]
else
:
cuda_graph_sizes
=
self
.
scheduler_config
.
cuda_graph_sizes
...
...
vllm/distributed/device_communicators/all2all.py
View file @
55f7b089
...
...
@@ -140,7 +140,7 @@ class DeepEPAll2AllManagerBase(All2AllManagerBase):
# This is the DeepEP default. Stick to it till we can establish
# reasonable defaults based on profiling.
self
.
num_sms
=
20
self
.
num_sms
=
24
#
20
def
get_handle
(
self
,
kwargs
):
raise
NotImplementedError
...
...
@@ -166,13 +166,21 @@ class DeepEPHTAll2AllManager(DeepEPAll2AllManagerBase):
def
_make_all2all_kwargs
(
self
)
->
dict
[
Any
,
Any
]:
# Defaults for internode and intranode are taken from DeepEP tests.
num_nvl_bytes
=
1024
*
1024
*
1024
num_nvl_bytes
=
int
(
2e9
/
2
)
#
1024 * 1024 * 1024
num_rdma_bytes
=
None
num_qps_per_rank
=
None
if
self
.
internode
:
num_rdma_bytes
=
1024
*
1024
*
1024
num_qps_per_rank
=
self
.
num_sms
//
2
num_rdma_bytes
=
int
(
1e9
/
2
)
#1024 * 1024 * 1024
num_qps_per_rank
=
30
#self.num_sms // 2
# import deep_ep
# num_nvl_bytes, num_rdma_bytes = 0, 0
# hidden_size = 7168
# hidden_bytes = hidden_size * 2
# for config in (deep_ep.Buffer.get_dispatch_config(self.cpu_group.size()), deep_ep.Buffer.get_combine_config(self.cpu_group.size())):
# num_nvl_bytes = max(config.get_nvl_buffer_size_hint(hidden_bytes, self.cpu_group.size()), num_nvl_bytes)
# num_rdma_bytes = max(config.get_rdma_buffer_size_hint(hidden_bytes, self.cpu_group.size()), num_rdma_bytes)
else
:
num_rdma_bytes
=
0
num_qps_per_rank
=
1
...
...
@@ -183,7 +191,9 @@ class DeepEPHTAll2AllManager(DeepEPAll2AllManagerBase):
num_nvl_bytes
=
num_nvl_bytes
,
num_rdma_bytes
=
num_rdma_bytes
,
low_latency_mode
=
False
,
num_qps_per_rank
=
num_qps_per_rank
)
num_qps_per_rank
=
num_qps_per_rank
,
explicitly_destroy
=
False
,
use_default_stream_as_comm_stream
=
False
)
def
get_handle
(
self
,
kwargs
):
...
...
vllm/distributed/device_communicators/cuda_communicator.py
View file @
55f7b089
...
...
@@ -87,6 +87,8 @@ class CudaCommunicator(DeviceCommunicatorBase):
from
.all2all
import
DeepEPLLAll2AllManager
self
.
all2all_manager
=
DeepEPLLAll2AllManager
(
self
.
cpu_group
)
logger
.
info
(
"Using DeepEP Low-Latency all2all manager."
)
elif
all2all_backend
==
"mori"
:
pass
else
:
raise
ValueError
(
f
"Unknown all2all backend:
{
all2all_backend
}
"
)
...
...
vllm/distributed/parallel_state.py
View file @
55f7b089
...
...
@@ -951,7 +951,7 @@ def init_distributed_environment(
parallel_config
=
config
.
parallel_config
data_parallel_size
=
parallel_config
.
data_parallel_size
use_mori_ep
=
envs
.
VLLM_
USE_MORI_EP
and
data_parallel_size
>
1
and
parallel_config
.
enable_expert_parallel
use_mori_ep
=
envs
.
VLLM_
ALL2ALL_BACKEND
==
'mori'
and
data_parallel_size
>
1
and
parallel_config
.
enable_expert_parallel
if
use_mori_ep
:
backend
=
"cpu:gloo,cuda:nccl"
torch
.
distributed
.
init_process_group
(
...
...
vllm/envs.py
View file @
55f7b089
...
...
@@ -173,9 +173,9 @@ if TYPE_CHECKING:
VLLM_USE_MERGE_ATTN_STATES_OPT
:
bool
=
False
USE_FUSED_RMS_QUANT
:
bool
=
False
USE_FUSED_SILU_MUL_QUANT
:
bool
=
False
VLLM_USE_MORI_EP
:
bool
=
False
VLLM_P2P_ASYNC
:
bool
=
False
VLLM_P2P_BUF_TOKENS
:
int
=
30000
VLLM_ENABLE_MOE_GROUP_GEMM
:
bool
=
False
def
get_default_cache_root
():
return
os
.
getenv
(
...
...
@@ -945,6 +945,7 @@ environment_variables: dict[str, Callable[[], Any]] = {
# - "pplx": use pplx kernels
# - "deepep_high_throughput", use deepep high-throughput kernels
# - "deepep_low_latency", use deepep low-latency kernels
# - "mori", use mori kernels
"VLLM_ALL2ALL_BACKEND"
:
lambda
:
os
.
getenv
(
"VLLM_ALL2ALL_BACKEND"
,
"naive"
),
...
...
@@ -1144,11 +1145,6 @@ environment_variables: dict[str, Callable[[], Any]] = {
lambda
:
(
os
.
getenv
(
'USE_FUSED_SILU_MUL_QUANT'
,
'0'
).
lower
()
in
(
"true"
,
"1"
)),
# vLLM will use all_to_all ep mode
"VLLM_USE_MORI_EP"
:
lambda
:
(
os
.
environ
.
get
(
"VLLM_USE_MORI_EP"
,
"True"
).
lower
()
in
(
"true"
,
"1"
)),
# vllm pd separation will be used async
"VLLM_P2P_ASYNC"
:
lambda
:
bool
(
int
(
os
.
getenv
(
"VLLM_P2P_ASYNC"
,
"0"
))),
...
...
@@ -1156,6 +1152,11 @@ environment_variables: dict[str, Callable[[], Any]] = {
# pd separation p2p async buf tokens
"VLLM_P2P_BUF_TOKENS"
:
lambda
:
int
(
os
.
getenv
(
"VLLM_P2P_BUF_TOKENS"
,
"30000"
)),
# pd separation p2p async buf tokens
"VLLM_ENABLE_MOE_GROUP_GEMM"
:
lambda
:
(
os
.
environ
.
get
(
"VLLM_ENABLE_MOE_GROUP_GEMM"
,
"False"
).
lower
()
in
(
"true"
,
"1"
)),
}
# --8<-- [end:env-vars-definition]
...
...
vllm/forward_context.py
View file @
55f7b089
...
...
@@ -136,8 +136,8 @@ def set_forward_context(
forward_start_time
=
time
.
perf_counter
()
dp_metadata
:
Optional
[
DPMetadata
]
=
None
dp_size
=
vllm_config
.
parallel_config
.
data_parallel_size
use_
mori
_ep
=
envs
.
VLLM_
USE_MORI_EP
and
dp_size
>
1
and
vllm_config
.
parallel_config
.
enable_expert_parallel
if
not
use_mori
_ep
and
dp_size
>
1
and
(
use_
navie
_ep
=
envs
.
VLLM_
ALL2ALL_BACKEND
==
'naive'
and
dp_size
>
1
and
vllm_config
.
parallel_config
.
enable_expert_parallel
if
use_navie
_ep
and
dp_size
>
1
and
(
attn_metadata
is
not
None
or
num_tokens
is
not
None
)
:
dp_metadata
=
DPMetadata
.
make
(
vllm_config
.
parallel_config
,
attn_metadata
,
num_tokens
or
0
,
...
...
vllm/model_executor/layers/fused_moe/__init__.py
View file @
55f7b089
...
...
@@ -59,6 +59,8 @@ if HAS_TRITON:
get_config_file_name
,
grouped_topk
)
from
vllm.model_executor.layers.fused_moe.triton_deep_gemm_moe
import
(
TritonOrDeepGemmExperts
)
from
vllm.model_executor.layers.fused_moe.triton_group_gemm_moe
import
(
TritonOrGroupGemmExperts
)
__all__
+=
[
"fused_moe"
,
...
...
@@ -75,4 +77,5 @@ if HAS_TRITON:
"BatchedDeepGemmExperts"
,
"TritonOrDeepGemmExperts"
,
"BatchedTritonOrDeepGemmExperts"
,
"TritonOrGroupGemmExperts"
,
]
vllm/model_executor/layers/fused_moe/deepep_ht_prepare_finalize.py
View file @
55f7b089
...
...
@@ -4,12 +4,15 @@ from typing import Optional
import
deep_ep
import
torch
import
torch.distributed
as
dist
import
vllm.model_executor.layers.fused_moe.modular_kernel
as
mk
from
vllm
import
_custom_ops
as
ops
from
vllm.model_executor.layers.fused_moe.config
import
FusedMoEQuantConfig
from
vllm.model_executor.layers.fused_moe.utils
import
(
moe_kernel_quantize_input
)
from
vllm.distributed.parallel_state
import
get_ep_group
class
DeepEPHTPrepareAndFinalize
(
mk
.
FusedMoEPrepareAndFinalize
):
...
...
@@ -54,6 +57,10 @@ class DeepEPHTPrepareAndFinalize(mk.FusedMoEPrepareAndFinalize):
if
self
.
dp_size
not
in
self
.
available_rank_configs
:
return
None
return
deep_ep
.
Buffer
.
get_combine_config
(
self
.
dp_size
)
def
sync
(
self
):
# torch.cuda.synchronize()
dist
.
barrier
()
def
_do_dispatch
(
self
,
tokens
:
torch
.
Tensor
,
token_scales
:
Optional
[
torch
.
Tensor
],
...
...
@@ -205,13 +212,14 @@ class DeepEPHTPrepareAndFinalize(mk.FusedMoEPrepareAndFinalize):
def
finalize
(
self
,
output
:
torch
.
Tensor
,
fused_expert_output
:
torch
.
Tensor
,
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
apply_router_weight_on_input
:
bool
)
->
None
:
apply_router_weight_on_input
:
bool
,
apply_weights_and_reduce
:
bool
=
True
)
->
None
:
assert
self
.
handle
is
not
None
# fused_expert_output can have 0 tokens - This happens when none of the
# tokens from the all2all reach this EP rank.
if
fused_expert_output
.
numel
()
!=
0
:
if
fused_expert_output
.
numel
()
!=
0
and
apply_weights_and_reduce
:
fused_expert_output
=
self
.
_apply_weights_and_reduce
(
num_tokens
=
topk_ids
.
size
(
0
),
fused_expert_output
=
fused_expert_output
,
...
...
@@ -227,5 +235,6 @@ class DeepEPHTPrepareAndFinalize(mk.FusedMoEPrepareAndFinalize):
previous_event
=
None
,
async_finish
=
False
,
allocate_on_comm_stream
=
False
)
# Respect inplace outputs.
output
.
copy_
(
combined_x
,
non_blocking
=
True
)
vllm/model_executor/layers/fused_moe/deepep_ll_prepare_finalize.py
View file @
55f7b089
...
...
@@ -162,7 +162,8 @@ class DeepEPLLPrepareAndFinalize(mk.FusedMoEPrepareAndFinalize):
def
finalize
(
self
,
output
:
torch
.
Tensor
,
fused_expert_output
:
torch
.
Tensor
,
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
apply_router_weight_on_input
:
bool
)
->
None
:
apply_router_weight_on_input
:
bool
,
apply_weights_and_reduce
:
bool
=
True
)
->
None
:
assert
self
.
handle
is
not
None
...
...
vllm/model_executor/layers/fused_moe/ep_moe/token_dispatcher.py
deleted
100644 → 0
View file @
5ca1259e
import
os
from
abc
import
ABC
,
abstractmethod
from
typing
import
List
,
Optional
,
Tuple
import
torch
import
torch.nn
as
nn
from
vllm.distributed.parallel_state
import
(
get_dp_group
,
get_tp_group
,
get_ep_group
,
get_tensor_model_parallel_rank
)
from
vllm.model_executor.layers.fused_moe.ep_moe.ep_moe_utlis
import
(
EPSharedExperts
,
maybe_move_tensor_to_cpu
,
maybe_move_tensor_to_cpu_block
,
permute
,
sort_chunks_by_idxs
,
unpermute
,
all_to_all
,
EpMoeConfig
)
from
vllm.distributed
import
(
tensor_model_parallel_all_gather
,
tensor_model_parallel_gather
,
expert_parallel_all_gather
,
expert_parallel_gather
)
from
vllm.platforms
import
current_platform
from
vllm.forward_context
import
ForwardContext
,
get_forward_context
from
vllm.utils
import
direct_register_custom_op
from
vllm.config
import
get_current_vllm_config
from
lightop
import
groupgemm_permute
,
groupgemm_unpermute
cuda_dtoh_stream
=
torch
.
cuda
.
Stream
()
cuda_dtoh_sync_event
=
torch
.
cuda
.
Event
(
enable_timing
=
False
)
class
MoETokenDispatcher
(
nn
.
Module
):
"""
MoE Token Dispatcher
"""
def
__init__
(
self
,
config
:
EpMoeConfig
)
->
None
:
"""
Initialize the MoE Token Dispatcher.
"""
super
().
__init__
()
self
.
config
=
config
self
.
tp_size
=
1
self
.
ep_size
=
config
.
ep_size
@
property
def
ep_group
(
self
):
"""Get expert model parallel group."""
return
get_ep_group
()
@
property
def
tp_group
(
self
):
"""Get expert tensor parallel group."""
return
get_tp_group
()
@
property
def
tp_rank
(
self
):
"""Get expert tensor parallel rank."""
return
0
#get_tensor_model_parallel_rank()
@
property
def
tp_ep_group
(
self
):
"""Get expert tensor and model parallel group."""
return
get_ep_group
()
@
abstractmethod
def
token_permutation
(
self
,
tokens
:
torch
.
Tensor
,
probs
:
torch
.
Tensor
,
routing_map
:
torch
.
Tensor
):
"""Dispatch tokens to experts.
Args:
tokens (torch.Tensor): Input tokens.
probs (torch.Tensor): The routing probability tensor [num_tokens, num_experts].
routing_map (torch.Tensor): Token to expert mapping tensor.
Returns:
torch.Tensor: Tokens tensor.
"""
raise
NotImplementedError
(
"Dispatch function not implemented."
)
@
abstractmethod
def
token_unpermutation
(
self
,
expert_output
:
torch
.
Tensor
,
bias
:
torch
.
Tensor
=
None
):
"""Restores the expert output to its original ordering.
Args:
expert_output (torch.Tensor): The output tensor from the expert models.
bias (torch.Tensor): The bias tensor.
Returns:
(torch.Tensor, torch.Tensor): Unpermuted activation and optional bias.
"""
raise
NotImplementedError
(
"Restore function not implemented."
)
def
set_shared_experts
(
self
,
shared_experts
):
"""Set shared expert to the dispatcher."""
assert
self
.
config
.
moe_shared_expert_overlap
self
.
shared_experts
=
shared_experts
class
MoEAlltoAllTokenDispatcher
(
MoETokenDispatcher
):
"""
AlltoAll-based token dispatcher.
The workflow of AlltoAll token dispatcher is as follows:
(1) preprocess(): calculate necessary metadata for communication and permute
(2) token_permutation(): permute->A2A(EP)->AG(TP)->sort_chunk(if num_local_experts>1)
(3) token_unpermutation(): sort_chunk(if num_local_experts>1)->RS(TP)->A2A(EP)->unpermute
"""
def
__init__
(
self
,
num_local_experts
:
int
,
local_expert_indices
:
List
[
int
],
config
:
EpMoeConfig
,
layer_name
:
str
=
""
)
->
None
:
"""
Initialize the AlltoAll token dispatcher.
Args:
num_local_experts (int): Number of local experts on the current device.
local_expert_indices (List[int]): Indices of local experts on the current device.
config (TransformerConfig): Configuration for the transformer model.
"""
super
().
__init__
(
config
=
config
)
self
.
num_local_experts
=
num_local_experts
assert
config
.
num_moe_experts
is
not
None
self
.
num_experts
=
config
.
num_moe_experts
assert
self
.
num_local_experts
>
0
,
"Expected at least one expert"
self
.
local_expert_indices
=
local_expert_indices
assert
(
len
(
self
.
local_expert_indices
)
==
self
.
num_local_experts
),
"Invalid local expert indices"
for
i
in
range
(
len
(
self
.
local_expert_indices
)
-
1
):
assert
(
self
.
local_expert_indices
[
i
]
==
self
.
local_expert_indices
[
i
+
1
]
-
1
),
"local_expert_indices must be continous"
self
.
layer_name
=
layer_name
# [ep_size]. Represents the number of tokens sent by the current rank to other
# EP ranks.
self
.
input_splits
=
None
# [ep_size]. Represents the number of tokens received by the current rank from
# other EP ranks.
self
.
output_splits
=
None
# [tp_size]. Represents the number of tokens received by the current rank from
# other TP ranks.
#self.output_splits_tp = None
self
.
permute_idx_device
=
torch
.
device
(
"cuda"
)
if
self
.
config
.
moe_permute_fusion
else
None
input_chunk_idxs
=
torch
.
arange
(
self
.
num_experts
*
self
.
tp_size
,
device
=
self
.
permute_idx_device
)
# [num_local_experts, tp_size * ep_size]. Sort the input chunks by local experts.
self
.
sort_input_by_local_experts
=
input_chunk_idxs
.
reshape
(
-
1
,
self
.
num_local_experts
).
T
.
ravel
()
# [tp_size * ep_size, num_local_experts]. Restore the output chunks by local experts.
self
.
restore_output_by_local_experts
=
input_chunk_idxs
.
reshape
(
self
.
num_local_experts
,
-
1
).
T
.
ravel
()
# A cuda stream synchronization is needed in self.token_permutation() in some cases,
# because there are several non-blocking DtoH data transfers called at
# `self.cuda_dtoh_point`. The synchronization happens at `self.cuda_sync_point`, which is
# decided based on the MoE and parallel settings. Valid points are "before_permutation_1",
# "before_ep_alltoall", "before_permutation_2", "before_finish", and "no_sync".
self
.
cuda_sync_point
=
"no_sync"
self
.
cuda_sync_point_priority
=
{
"before_permutation_1"
:
0
,
"before_ep_alltoall"
:
1
,
"before_permutation_2"
:
2
,
"before_finish"
:
3
,
"no_sync"
:
4
,
}
self
.
cuda_dtoh_point
=
"before_permutation_1"
#self.cuda_dtoh_stream = torch.cuda.Stream()
# Whether to use gather or all-gather to gather the logits.
self
.
use_all_gather
=
current_platform
.
use_all_gather
()
self
.
probs
=
None
# For smuggling this layer into the fused moe custom op
vllm_config
=
get_current_vllm_config
()
compilation_config
=
vllm_config
.
compilation_config
if
layer_name
in
compilation_config
.
static_forward_context
:
raise
ValueError
(
"Duplicate layer name: {}"
.
format
(
layer_name
))
compilation_config
.
static_forward_context
[
layer_name
]
=
self
def
preprocess
(
self
,
routing_map
:
torch
.
Tensor
)
->
torch
.
Tensor
:
"""
Preprocess token routing map for AlltoAll communication and token permutation.
This method computes the number of tokens assigned to each expert based on the routing_map.
It also initializes the necessary data structures for AlltoAll communication, such as input
and output splits, and the mapping between global tokens and local experts. This method
should not call any DtoH data copying due to performance consideration. The necessary DtoH
copies are made on the `self.cuda_dtoh_stream` at `self.cuda_dtoh_point`.
Args:
routing_map (torch.Tensor): The mapping of tokens to experts, with shape
[num_tokens, num_experts].
Returns:
torch.Tensor: Tensor containing the number of tokens assigned to local expert.
"""
# [num_experts], number of tokens assigned to each expert from the current rank's input.
num_local_tokens_per_expert
=
routing_map
.
sum
(
dim
=
0
).
long
()
self
.
num_out_tokens
=
routing_map
.
size
(
0
)
*
self
.
config
.
moe_router_topk
# ===================================================
# Calculate input_splits, output_splits for alltoall/allgather in variable size.
# ===================================================
# [ep_size]. Represents the number of tokens sent by the current rank to other
# EP ranks.
self
.
input_splits
=
num_local_tokens_per_expert
.
reshape
(
self
.
ep_size
,
self
.
num_local_experts
).
sum
(
axis
=
1
)
# Gather the global distribution of tokens across ranks.
# num_global_tokens_per_expert represents the number of tokens sent to each
# expert by all ranks.
# [tp_size, ep_size, num_experts]
if
self
.
use_all_gather
:
# Gather is not supported for some devices such as TPUs.
# Use all-gather instead.
num_global_tokens_per_expert
=
expert_parallel_all_gather
(
num_local_tokens_per_expert
)
\
.
reshape
(
self
.
ep_size
,
self
.
tp_size
,
self
.
num_experts
)
\
.
transpose
(
0
,
1
)
else
:
# None may be returned for rank > 0
num_global_tokens_per_expert
=
expert_parallel_gather
(
num_local_tokens_per_expert
)
\
.
reshape
(
self
.
ep_size
,
self
.
tp_size
,
self
.
num_experts
)
\
.
transpose
(
0
,
1
)
# [tp_size, ep_size, num_experts] -> [tp_size, ep_size, num_local_experts]
num_global_tokens_per_local_expert
=
num_global_tokens_per_expert
[
:,
:,
self
.
local_expert_indices
[
0
]
:
self
.
local_expert_indices
[
-
1
]
+
1
].
contiguous
()
# [tp_size, ep_size, num_local_experts] -> [tp_size, ep_size]
num_global_tokens_per_rank
=
num_global_tokens_per_local_expert
.
sum
(
axis
=
2
)
# [tp_size, ep_size] -> [ep_size]
# self.output_splits represents the number of tokens received by the current rank
# from other EP rank.
self
.
output_splits
=
num_global_tokens_per_rank
[
self
.
tp_rank
]
# [tp_size, ep_size] -> [tp_size]
# self.output_splits_tp represents the number of tokens received by the current
# rank from other TP rank.
#self.output_splits_tp = num_global_tokens_per_rank.sum(axis=1)
# [tp_size, ep_size, num_local_experts] -> [num_local_experts]
num_tokens_per_local_expert
=
num_global_tokens_per_local_expert
.
sum
(
dim
=
(
0
,
1
))
# A synchronization is needed before expert parallel AlltoAll communication
# to get the `input_splits` and `output_splits` CPU values.
#self._maybe_update_cuda_sync_point("before_ep_alltoall")
if
self
.
num_local_experts
>
1
:
# [tp_size * ep_size, num_local_experts]. Represents the number of tokens sent
# to each local expert by all ranks.
self
.
num_global_tokens_per_local_expert
=
num_global_tokens_per_local_expert
.
view
(
-
1
,
self
.
num_local_experts
)
# if not self.config.moe_permute_fusion:
# # A synchronization is needed before permutation 2
# # to get the `num_global_tokens_per_local_expert` CPU value.
# self._maybe_update_cuda_sync_point("before_permutation_2")
# assert (
# self.cuda_sync_point_priority[self.cuda_dtoh_point]
# <= self.cuda_sync_point_priority[self.cuda_sync_point]
# ), "cuda_sync_point must be after cuda_dtoh_point."
return
num_tokens_per_local_expert
def
token_permutation
(
self
,
hidden_states
:
torch
.
Tensor
,
probs
:
torch
.
Tensor
,
routing_map
:
torch
.
Tensor
,
)
->
Tuple
[
torch
.
Tensor
,
torch
.
Tensor
]:
self
.
routing_map
=
routing_map
assert
routing_map
.
dim
()
==
2
,
"Expected 2D tensor for token2expert mask"
assert
routing_map
.
dtype
==
torch
.
bool
,
"Expected bool tensor for mask"
tokens_per_expert
=
self
.
preprocess
(
self
.
routing_map
)
if
self
.
config
.
moe_shared_expert_overlap
and
self
.
shared_experts
is
not
None
:
self
.
shared_experts
.
pre_forward_comm
(
hidden_states
.
view
(
self
.
hidden_shape
))
global_input_tokens
=
torch
.
ops
.
vllm
.
token_permutation_forward
(
tokens_per_expert
,
hidden_states
,
probs
,
routing_map
,
self
.
layer_name
)
return
global_input_tokens
,
tokens_per_expert
def
token_permutation_impl
(
self
,
tokens_per_expert
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
probs
:
torch
.
Tensor
,
routing_map
:
torch
.
Tensor
,
)
->
Tuple
[
torch
.
Tensor
,
torch
.
Tensor
]:
"""
Dispatch tokens to local experts using AlltoAll communication.
This method performs the following steps:
1. Preprocess the routing map to get metadata for communication and permutation.
2. Permute input tokens for AlltoAll communication.
3. Perform expert parallel AlltoAll communication.
4. Sort tokens by local expert (if multiple local experts exist).
Args:
hidden_states (torch.Tensor): Input token embeddings.
probs (torch.Tensor): The probabilities of token to experts assignment.
routing_map (torch.Tensor): The mapping of token to experts assignment.
Returns:
Tuple[torch.Tensor, torch.Tensor]:
- Permuted token embeddings for local experts.
- Number of tokens per expert.
"""
# Preprocess: Get the metadata for communication, permutation and computation operations.
# Permutation 1: input to AlltoAll input
tokens_per_expert
=
self
.
_maybe_dtoh_and_synchronize
(
"before_permutation_1"
,
tokens_per_expert
)
self
.
hidden_shape
=
hidden_states
.
shape
if
self
.
config
.
apply_router_weight_on_input
:
self
.
probs
=
probs
assert
probs
.
dim
()
==
2
,
"Expected 2D tensor for probs"
hidden_states
=
hidden_states
.
view
(
-
1
,
self
.
hidden_shape
[
-
1
])
self
.
hidden_shape_before_permute
=
hidden_states
.
shape
if
False
:
permutated_local_input_tokens
,
self
.
reversed_local_input_permutation_mapping
=
permute
(
hidden_states
,
routing_map
,
num_out_tokens
=
self
.
num_out_tokens
,
fused
=
self
.
config
.
moe_permute_fusion
)
else
:
cuda_permute_result
=
groupgemm_permute
(
hidden_states
,
routing_map
)
permutated_local_input_tokens
,
self
.
reversed_local_input_permutation_mapping
,
\
self
.
expert_m_count
=
cuda_permute_result
# Perform expert parallel AlltoAll communication
# tokens_per_expert = self._maybe_dtoh_and_synchronize(
# "before_ep_alltoall", tokens_per_expert
# )
###test##############
#cuda_dtoh_stream.synchronize()
cuda_dtoh_sync_event
.
synchronize
()
###test##############
global_input_tokens
=
all_to_all
(
self
.
ep_group
.
device_group
,
permutated_local_input_tokens
,
self
.
output_splits
,
self
.
input_splits
)
if
self
.
config
.
moe_shared_expert_overlap
and
self
.
shared_experts
is
not
None
:
self
.
shared_experts
.
linear_fc1_forward_and_act
(
global_input_tokens
)
# Permutation 2: Sort tokens by local expert.
# tokens_per_expert = self._maybe_dtoh_and_synchronize(
# "before_permutation_2", tokens_per_expert
# )
if
self
.
num_local_experts
>
1
:
global_input_tokens
=
sort_chunks_by_idxs
(
global_input_tokens
,
self
.
num_global_tokens_per_local_expert
.
ravel
(),
self
.
sort_input_by_local_experts
,
fused
=
self
.
config
.
moe_permute_fusion
,
)
#tokens_per_expert = self._maybe_dtoh_and_synchronize("before_finish", tokens_per_expert)
return
global_input_tokens
def
token_unpermutation
(
self
,
hidden_states
:
torch
.
Tensor
,
)
->
torch
.
Tensor
:
return
torch
.
ops
.
vllm
.
token_unpermutation_forward
(
hidden_states
,
self
.
layer_name
)
def
token_unpermutation_impl
(
self
,
hidden_states
:
torch
.
Tensor
,
)
->
torch
.
Tensor
:
"""
Reverse the token permutation to restore the original order.
This method performs the following steps:
1. Unsort tokens by local expert (if multiple local experts exist).
2. Perform expert parallel AlltoAll communication to restore the original order.
3. Unpermute tokens to restore the original order.
Args:
hidden_states (torch.Tensor): Output from local experts.
bias (torch.Tensor, optional): Bias tensor (not supported).
Returns:
Tuple[torch.Tensor, Optional[torch.Tensor]]:
- Unpermuted token embeddings in the original order.
- None (bias is not supported).
"""
# Unpermutation 2: Unsort tokens by local expert.
if
self
.
num_local_experts
>
1
:
hidden_states
=
sort_chunks_by_idxs
(
hidden_states
,
self
.
num_global_tokens_per_local_expert
.
T
.
ravel
(),
self
.
restore_output_by_local_experts
,
fused
=
self
.
config
.
moe_permute_fusion
,
)
# Perform expert parallel AlltoAll communication
# hidden_states: [SEQL, H] -> [SEQL, H/TP]
permutated_local_input_tokens
=
all_to_all
(
self
.
ep_group
.
device_group
,
hidden_states
,
self
.
input_splits
,
self
.
output_splits
)
if
self
.
config
.
moe_shared_expert_overlap
and
self
.
shared_experts
is
not
None
:
self
.
shared_experts
.
linear_fc2_forward
(
permutated_local_input_tokens
)
self
.
shared_experts
.
post_forward_comm
()
# Unpermutation 1: AlltoAll output to output
if
False
:
output
=
unpermute
(
permutated_local_input_tokens
,
self
.
reversed_local_input_permutation_mapping
,
restore_shape
=
self
.
hidden_shape_before_permute
,
probs
=
self
.
probs
,
routing_map
=
self
.
routing_map
,
fused
=
self
.
config
.
moe_permute_fusion
,
)
else
:
output
=
groupgemm_unpermute
(
permutated_local_input_tokens
,
self
.
reversed_local_input_permutation_mapping
,
list
(
self
.
hidden_shape_before_permute
),
self
.
probs
,
self
.
routing_map
,
self
.
expert_m_count
)
# Reshape the output tensor
output
=
output
.
view
(
self
.
hidden_shape
)
# Add shared experts output
if
self
.
config
.
moe_shared_expert_overlap
and
self
.
shared_experts
is
not
None
:
shared_output
=
self
.
shared_experts
.
get_output
()
if
hidden_states
.
dtype
!=
torch
.
float16
:
output
=
output
+
shared_output
else
:
# Fix FP16 overflow
# See DeepseekV2DecoderLayer for more details.
output
=
output
+
shared_output
\
*
(
1.
/
self
.
config
.
routed_scaling_factor
)
return
output
def
_maybe_update_cuda_sync_point
(
self
,
point
:
str
):
"""
Update the CUDA sync point if the priority of the new point is higher than the current
sync point, which means the new point is reached earlier than the current sync point.
"""
if
(
self
.
cuda_sync_point_priority
[
point
]
<
self
.
cuda_sync_point_priority
[
self
.
cuda_sync_point
]
):
self
.
cuda_sync_point
=
point
def
_maybe_dtoh_and_synchronize
(
self
,
point
:
str
,
tokens_per_expert
:
torch
.
Tensor
=
None
)
->
torch
.
Tensor
:
"""
Move all possible GPU tensors to CPU and make a synchronization at the expected point.
"""
if
point
==
self
.
cuda_dtoh_point
:
# Move all possible GPU tensors to CPU at self.cuda_dtoh_point.
on_side_stream
=
torch
.
cuda
.
current_stream
()
!=
cuda_dtoh_stream
if
on_side_stream
:
cuda_dtoh_stream
.
wait_stream
(
torch
.
cuda
.
current_stream
())
with
torch
.
cuda
.
stream
(
cuda_dtoh_stream
):
# TODO: use MemcpyBatchAsync instead.
# tokens_per_expert = maybe_move_tensor_to_cpu(
# tokens_per_expert, record_stream=on_side_stream
# )
self
.
input_splits
=
maybe_move_tensor_to_cpu
(
self
.
input_splits
,
as_numpy
=
True
,
record_stream
=
on_side_stream
)
self
.
output_splits
=
maybe_move_tensor_to_cpu
(
self
.
output_splits
,
as_numpy
=
True
,
record_stream
=
on_side_stream
)
# self.output_splits_tp = maybe_move_tensor_to_cpu(
# self.output_splits_tp, as_numpy=True, record_stream=on_side_stream
# )
self
.
num_out_tokens
=
maybe_move_tensor_to_cpu
(
self
.
num_out_tokens
,
record_stream
=
on_side_stream
)
if
self
.
num_local_experts
>
1
and
not
self
.
config
.
moe_permute_fusion
:
self
.
num_global_tokens_per_local_expert
=
maybe_move_tensor_to_cpu
(
self
.
num_global_tokens_per_local_expert
,
record_stream
=
on_side_stream
)
cuda_dtoh_sync_event
.
record
()
# if point == self.cuda_sync_point:
# # Synchronize with the dtoh stream at self.cuda_sync_point.
# cuda_dtoh_stream.synchronize()
return
tokens_per_expert
def
token_permutation_forward
(
tokens_per_expert
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
probs
:
torch
.
Tensor
,
routing_map
:
torch
.
Tensor
,
layer_name
:
str
)
->
torch
.
Tensor
:
forward_context
:
ForwardContext
=
get_forward_context
()
self
=
forward_context
.
no_compile_layers
[
layer_name
]
return
self
.
token_permutation_impl
(
tokens_per_expert
,
hidden_states
,
probs
,
routing_map
)
def
token_permutation_forward_fake
(
tokens_per_expert
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
probs
:
torch
.
Tensor
,
routing_map
:
torch
.
Tensor
,
layer_name
:
str
)
->
torch
.
Tensor
:
return
torch
.
empty_like
(
hidden_states
)
direct_register_custom_op
(
op_name
=
"token_permutation_forward"
,
op_func
=
token_permutation_forward
,
mutates_args
=
[
"tokens_per_expert"
,
"hidden_states"
,
"probs"
,
"routing_map"
],
fake_impl
=
token_permutation_forward_fake
,
dispatch_key
=
current_platform
.
dispatch_key
,
tags
=
(
torch
.
Tag
.
needs_fixed_stride_order
,
),
)
def
token_unpermutation_forward
(
hidden_states
:
torch
.
Tensor
,
layer_name
:
str
)
->
torch
.
Tensor
:
forward_context
:
ForwardContext
=
get_forward_context
()
self
=
forward_context
.
no_compile_layers
[
layer_name
]
return
self
.
token_unpermutation_impl
(
hidden_states
)
def
token_unpermutation_forward_fake
(
hidden_states
:
torch
.
Tensor
,
layer_name
:
str
)
->
torch
.
Tensor
:
return
torch
.
empty_like
(
hidden_states
)
direct_register_custom_op
(
op_name
=
"token_unpermutation_forward"
,
op_func
=
token_unpermutation_forward
,
mutates_args
=
[
"hidden_states"
],
fake_impl
=
token_unpermutation_forward_fake
,
dispatch_key
=
current_platform
.
dispatch_key
,
tags
=
(
torch
.
Tag
.
needs_fixed_stride_order
,
),
)
\ No newline at end of file
vllm/model_executor/layers/fused_moe/fused_batched_moe.py
View file @
55f7b089
...
...
@@ -596,6 +596,7 @@ class BatchedPrepareAndFinalize(mk.FusedMoEPrepareAndFinalize):
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
apply_router_weight_on_input
:
bool
,
apply_weights_and_reduce
:
bool
=
True
)
->
None
:
num_tokens
=
topk_ids
.
size
(
0
)
num_local_experts
=
fused_expert_output
.
size
(
0
)
...
...
vllm/model_executor/layers/fused_moe/layer.py
View file @
55f7b089
...
...
@@ -28,8 +28,9 @@ from vllm.model_executor.layers.fused_moe.config import (
FusedMoEConfig
,
FusedMoEParallelConfig
)
# yapf: enable
from
vllm.model_executor.layers.fused_moe.modular_kernel
import
(
FusedMoEActivationFormat
,
FusedMoEModularKernel
,
FusedMoEPermuteExpertsUnpermute
,
FusedMoEPrepareAndFinalize
)
FusedMoEActivationFormat
,
FusedMoEModularKernel
,
DeepGemmBannedFusedMoEModularKernel
,
FusedMoEPermuteExpertsUnpermute
,
FusedMoEPrepareAndFinalize
)
# from vllm.model_executor.layers.fused_moe.rocm_aiter_fused_moe import (
# is_rocm_aiter_moe_enabled)
from
vllm.model_executor.layers.quantization.base_config
import
(
...
...
@@ -40,7 +41,7 @@ from vllm.model_executor.utils import set_weight_attrs
from
vllm.platforms
import
current_platform
from
vllm.platforms.interface
import
CpuArchEnum
from
vllm.utils
import
direct_register_custom_op
,
has_deep_ep
,
has_pplx
from
vllm.utils
import
direct_register_custom_op
,
has_deep_ep
,
has_pplx
,
has_deep_gemm
from
vllm
import
_custom_ops
as
ops
...
...
@@ -184,10 +185,17 @@ class FusedMoEMethodBase(QuantizeMethodBase):
logger
.
debug
(
"%s"
,
prepare_finalize
.
__class__
.
__name__
)
self
.
topk_indices_dtype
=
prepare_finalize
.
topk_indices_dtype
()
experts
=
self
.
select_gemm_impl
(
prepare_finalize
,
moe
)
self
.
fused_experts
=
FusedMoEModularKernel
(
prepare_finalize
,
experts
,
)
if
has_deep_gemm
():
self
.
fused_experts
=
FusedMoEModularKernel
(
prepare_finalize
,
experts
,
)
else
:
self
.
fused_experts
=
DeepGemmBannedFusedMoEModularKernel
(
prepare_finalize
,
experts
,
)
def
select_gemm_impl
(
self
,
...
...
vllm/model_executor/layers/fused_moe/modular_kernel.py
View file @
55f7b089
...
...
@@ -149,6 +149,7 @@ class FusedMoEPrepareAndFinalize(ABC):
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
apply_router_weight_on_input
:
bool
,
apply_weights_and_reduce
:
bool
=
True
)
->
None
:
"""
Perform any combine plus apply weights and perform a reduction on the
...
...
@@ -355,6 +356,168 @@ class FusedMoEPermuteExpertsUnpermute(ABC):
assigned to each expert when using batched experts format input.
"""
raise
NotImplementedError
class
CustomizedFusedMoEPermuteExpertsUnpermute
(
ABC
):
"""
An abstract base class for the [Permute-Experts-Unpermute] step described
above.
"""
def
__init__
(
self
,
quant_config
:
Optional
[
FusedMoEQuantConfig
],
):
if
quant_config
is
not
None
:
self
.
quant_config
=
quant_config
else
:
self
.
quant_config
=
FusedMoEQuantConfig
()
@
property
@
abstractmethod
def
activation_formats
(
self
)
->
tuple
[
FusedMoEActivationFormat
,
FusedMoEActivationFormat
]:
"""
A property which is a tuple of the input and output activation formats
for the 'apply' method.
"""
raise
NotImplementedError
@
property
def
quant_dtype
(
self
)
->
Optional
[
torch
.
dtype
]:
return
self
.
quant_config
.
quant_dtype
@
property
def
block_shape
(
self
)
->
Optional
[
list
[
int
]]:
return
self
.
quant_config
.
block_shape
@
property
def
per_act_token_quant
(
self
)
->
bool
:
return
self
.
quant_config
.
per_act_token_quant
@
property
def
per_out_ch_quant
(
self
)
->
bool
:
return
self
.
quant_config
.
per_out_ch_quant
# TODO (bnell): make this return a CHUNK_SIZE or None instead?
@
abstractmethod
def
supports_chunking
(
self
)
->
bool
:
"""
A flag indicating whether or not this class supports activation
chunking.
"""
raise
NotImplementedError
@
abstractmethod
def
supports_expert_map
(
self
)
->
bool
:
"""
A flag indicating whether or not this class supports expert maps
"""
raise
NotImplementedError
@
abstractmethod
def
workspace_shapes
(
self
,
a
:
torch
.
Tensor
,
aq
:
torch
.
Tensor
,
M
:
int
,
N
:
int
,
K
:
int
,
topk
:
int
,
global_num_experts
:
int
,
local_num_experts
:
int
,
)
->
tuple
[
tuple
[
int
,
...],
tuple
[
int
,
...],
tuple
[
int
,
...],
torch
.
dtype
]:
"""
Compute the shapes for the temporary and final outputs of the two gemms
and activation in the fused expert function. Since the gemms are
independent, the workspace for the first gemm can be shared with the
workspace for the last gemm.
Returns a tuple of:
- workspace13 shape tuple: must be large enough to hold the
result of either expert gemm.
- workspace2 shape tuple: must be large enough to hold the
result of the activation function.
- output shape tuple: must be exact size of the final gemm output.
- Workspace type: The dtype to use for the workspace tensors.
- Note: in order for activation chunking to work, the first dimension
of each tuple must be the number of tokens.
"""
raise
NotImplementedError
def
activation
(
self
,
activation
:
str
,
output
:
torch
.
Tensor
,
input
:
torch
.
Tensor
)
->
None
:
assert
output
.
size
(
-
1
)
*
2
==
input
.
size
(
-
1
)
if
activation
==
"silu"
:
torch
.
ops
.
_C
.
silu_and_mul
(
output
,
input
)
elif
activation
==
"gelu"
:
torch
.
ops
.
_C
.
gelu_and_mul
(
output
,
input
)
else
:
raise
ValueError
(
f
"Unsupported FusedMoe activation:
{
activation
}
"
)
def
enable_chunking
(
self
):
return
envs
.
VLLM_ENABLE_FUSED_MOE_ACTIVATION_CHUNKING
and
\
self
.
supports_chunking
()
@
abstractmethod
def
apply
(
self
,
output
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
w1
:
torch
.
Tensor
,
w2
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
activation
:
str
,
global_num_experts
:
int
,
expert_map
:
Optional
[
torch
.
Tensor
],
w1_scale
:
Optional
[
torch
.
Tensor
],
w2_scale
:
Optional
[
torch
.
Tensor
],
w1_zp
:
Optional
[
torch
.
Tensor
],
w2_zp
:
Optional
[
torch
.
Tensor
],
a1q_scale
:
Optional
[
torch
.
Tensor
],
a2_scale
:
Optional
[
torch
.
Tensor
],
workspace13
:
torch
.
Tensor
,
workspace2
:
torch
.
Tensor
,
expert_num_tokens
:
Optional
[
torch
.
Tensor
]
=
None
,
use_nn_moe
:
Optional
[
bool
]
=
False
,
shared_output
:
Optional
[
torch
.
Tensor
]
=
None
,
routed_scaling_factor
:
Optional
[
float
]
=
None
,
):
"""
This function computes the intermediate result of a Mixture of Experts
(MoE) layer using two sets of weights, w1 and w2.
Parameters:
- output: (torch.Tensor): The unweighted, unreduced output tensor.
- hidden_states: (torch.Tensor): The (quantized) input tensor to the MoE
layer.
- w1 (torch.Tensor): The first set of expert weights.
- w2 (torch.Tensor): The second set of expert weights.
- topk_ids (torch.Tensor): A map of row to expert id.
- activation (str): The activation function to apply after the first
MoE layer.
- global_num_experts (int): The total number of experts in the global
expert space.
- expert_map (Optional[torch.Tensor]): A tensor mapping expert indices
from the global expert space to the local expert space of the expert
parallel shard.
- w1_scale (Optional[torch.Tensor]): Optional scale to be used for w1.
- w2_scale (Optional[torch.Tensor]): Optional scale to be used for w2.
- w1_zp (Optional[torch.Tensor]): Optional zero points to be used for
w1.
- w2_zp (Optional[torch.Tensor]): Optional zero points to be used for
w2.
- a1q_scale (Optional[torch.Tensor]): Optional quantized scale to be
used for a1.
- a2_scale (Optional[torch.Tensor]): Optional scale to be used for a2.
- workspace13 (torch.Tensor): A scratch tensor used for gemm outputs
must be large enough to hold output of either MoE gemm.
- workspace2 (torch.Tensor): A scratch tensor used for the activation
function.
- expert_num_tokens: An optional tensor containing the number of tokens
assigned to each expert when using batched experts format input.
"""
raise
NotImplementedError
def
_chunk_scales
(
scales
:
Optional
[
torch
.
Tensor
],
start
:
int
,
...
...
@@ -596,3 +759,145 @@ class FusedMoEModularKernel(torch.nn.Module):
topk_ids
,
apply_router_weight_on_input
)
return
output
@
final
class
DeepGemmBannedFusedMoEModularKernel
(
torch
.
nn
.
Module
):
"""
This class combines a FusedMoEPrepareAndFinalize instance and
a FusedMoEPermuteExpertsUnpermute to provide an interface that
is compatible with the `fused_experts` function in fused_moe.py.
It takes care of managing any required scratch space.
Note: Instances of this class should only be used for a single model
layer due to any layer specific state that may be used by the component
objects.
"""
def
__init__
(
self
,
prepare_finalize
:
FusedMoEPrepareAndFinalize
,
fused_experts
:
CustomizedFusedMoEPermuteExpertsUnpermute
,
):
super
().
__init__
()
self
.
prepare_finalize
=
prepare_finalize
self
.
fused_experts
=
fused_experts
assert
prepare_finalize
.
activation_format
==
\
fused_experts
.
activation_formats
[
0
],
(
f
"
{
prepare_finalize
.
__class__
.
__name__
}
."
f
"
{
prepare_finalize
.
activation_format
}
== "
f
"
{
fused_experts
.
__class__
.
__name__
}
."
f
"
{
fused_experts
.
activation_formats
[
0
]
}
"
)
def
forward
(
self
,
hidden_states
:
torch
.
Tensor
,
w1
:
torch
.
Tensor
,
w2
:
torch
.
Tensor
,
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
inplace
:
bool
=
False
,
activation
:
str
=
"silu"
,
global_num_experts
:
int
=
-
1
,
expert_map
:
Optional
[
torch
.
Tensor
]
=
None
,
w1_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
w2_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
w1_zp
:
Optional
[
torch
.
Tensor
]
=
None
,
w2_zp
:
Optional
[
torch
.
Tensor
]
=
None
,
a1_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
a2_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
use_nn_moe
:
Optional
[
bool
]
=
False
,
apply_router_weight_on_input
:
bool
=
False
,
shared_output
:
Optional
[
torch
.
Tensor
]
=
None
,
routed_scaling_factor
:
Optional
[
float
]
=
None
,
)
->
torch
.
Tensor
:
"""
This function computes a Mixture of Experts (MoE) layer using two sets
of weights, w1 and w2, and top-k gating mechanism.
Parameters:
- hidden_states: (torch.Tensor): The input tensor to the MoE layer.
- w1 (torch.Tensor): The first set of expert weights.
- w2 (torch.Tensor): The second set of expert weights.
- topk_weights (torch.Tensor): The topk weights applied at the end of
the layer.
- topk_ids (torch.Tensor): A map of row to expert id.
- inplace (bool): If True, perform the operation in-place.
Defaults to False.
- activation (str): The activation function to apply after the first
MoE layer.
- global_num_experts (int): The total number of experts in the global
expert space.
- expert_map (Optional[torch.Tensor]): A tensor mapping expert indices
from the global expert space to the local expert space of the expert
parallel shard.
- w1_scale (Optional[torch.Tensor]): Optional scale to be used for w1.
- w2_scale (Optional[torch.Tensor]): Optional scale to be used for w2.
- w1_zp (Optional[torch.Tensor]): Optional zero points to be used for
w1.
- w2_zp (Optional[torch.Tensor]): Optional zero points to be used for
w2.
- a1_scale (Optional[torch.Tensor]): Optional scale to be used for a1.
- a2_scale (Optional[torch.Tensor]): Optional scale to be used for a2.
- apply_router_weight_on_input (bool): When true, the topk weights are
applied directly on the inputs. This is only applicable when topk is
1.
Returns:
- torch.Tensor: The output tensor after applying the MoE layer.
"""
a1
=
hidden_states
output
=
a1
if
inplace
else
torch
.
zeros_like
(
a1
)
local_num_experts
=
w1
.
size
(
0
)
if
global_num_experts
==
-
1
:
global_num_experts
=
local_num_experts
(
a1q
,
a1q_scale
,
expert_num_tokens
,
_expert_topk_ids
,
_expert_topk_weights
)
=
self
.
prepare_finalize
.
prepare
(
a1
,
a1_scale
,
a2_scale
,
topk_weights
,
topk_ids
,
global_num_experts
,
expert_map
,
apply_router_weight_on_input
,
self
.
fused_experts
.
quant_config
,
)
# Maybe prepare gathered topk_ids and topk_weights from other EP ranks.
topk_ids
=
topk_ids
if
_expert_topk_ids
is
None
else
_expert_topk_ids
topk_weights
=
(
topk_weights
if
_expert_topk_weights
is
None
else
_expert_topk_weights
)
fused_out
=
self
.
fused_experts
.
apply
(
None
,
a1q
,
w1
,
w2
,
topk_ids
,
topk_weights
=
topk_weights
,
activation
=
activation
,
global_num_experts
=
global_num_experts
,
expert_map
=
expert_map
,
w1_scale
=
w1_scale
,
w2_scale
=
w2_scale
,
w1_zp
=
w1_zp
,
w2_zp
=
w2_zp
,
a1q_scale
=
a1q_scale
,
a2_scale
=
a2_scale
,
workspace13
=
None
,
workspace2
=
None
,
use_nn_moe
=
use_nn_moe
,
expert_num_tokens
=
expert_num_tokens
,
shared_output
=
shared_output
,
routed_scaling_factor
=
routed_scaling_factor
,
)
self
.
prepare_finalize
.
finalize
(
output
,
fused_out
,
topk_weights
,
topk_ids
,
apply_router_weight_on_input
,
apply_weights_and_reduce
=
False
)
return
output
vllm/model_executor/layers/fused_moe/
ep
_moe/ep_moe_utlis.py
→
vllm/model_executor/layers/fused_moe/
mori
_moe/ep_moe_utlis.py
View file @
55f7b089
File moved
vllm/model_executor/layers/fused_moe/
ep
_moe/layer.py
→
vllm/model_executor/layers/fused_moe/
mori
_moe/layer.py
View file @
55f7b089
import
os
import
logging
from
typing
import
Callable
,
List
,
Optional
,
Tuple
from
dataclasses
import
dataclass
from
typing
import
Callable
,
Optional
from
collections.abc
import
Iterable
import
torch
import
torch.
nn.functional
as
F
import
torch.
distributed
as
dist
from
vllm.logger
import
init_logger
from
vllm.platforms
import
current_platform
...
...
@@ -18,10 +15,8 @@ from vllm.model_executor.layers.quantization.base_config import (
QuantizationConfig
,
QuantizeMethodBase
)
from
vllm.model_executor.layers.fused_moe
import
FusedMoE
from
vllm.model_executor.layers.fused_moe.layer
import
FusedMoEMethodBase
,
UnquantizedFusedMoEMethod
from
vllm.model_executor.layers.fused_moe.ep_moe.token_dispatcher
import
MoEAlltoAllTokenDispatcher
from
vllm.model_executor.layers.fused_moe.ep_moe.ep_moe_utlis
import
EpMoeConfig
from
vllm.model_executor.layers.fused_moe.mori_moe.ep_moe_utlis
import
EpMoeConfig
from
vllm.utils
import
direct_register_custom_op
import
torch.distributed
as
dist
try
:
import
mori
...
...
@@ -35,8 +30,8 @@ logger = init_logger(__name__)
_MORI_OP
=
None
@
CustomOp
.
register
(
"unquantized_
ep
_moe"
)
class
Unquantized
EPGroupedGemm
Method
(
UnquantizedFusedMoEMethod
):
@
CustomOp
.
register
(
"unquantized_
mori
_moe"
)
class
Unquantized
MoriMoe
Method
(
UnquantizedFusedMoEMethod
):
"""MoE method without quantization."""
def
__init__
(
self
,
moe
:
FusedMoEConfig
):
...
...
@@ -44,9 +39,9 @@ class UnquantizedEPGroupedGemmMethod(UnquantizedFusedMoEMethod):
self
.
topk_indices_dtype
=
None
self
.
moe
=
moe
self
.
rocm_aiter_moe_enabled
=
False
# is_rocm_aiter_moe_enabled()
self
.
rocm_aiter_moe_enabled
=
False
def
apply_ep
(
def
apply_
mori_
ep
(
self
,
layer
:
torch
.
nn
.
Module
,
hidden_states
:
torch
.
Tensor
,
...
...
@@ -162,7 +157,7 @@ class UnquantizedEPGroupedGemmMethod(UnquantizedFusedMoEMethod):
forward_native
=
forward_cuda
class
EP
MoE
(
FusedMoE
):
class
Mori
MoE
(
FusedMoE
):
"""
dp+ep MoE Expert Parallel Impl
...
...
@@ -194,7 +189,6 @@ class EPMoE(FusedMoE):
enable_eplb
:
bool
=
False
,
num_redundant_experts
:
int
=
0
,
moe_permute_fusion
:
bool
=
False
,
moe_shared_expert_overlap
:
bool
=
False
):
super
().
__init__
(
num_experts
,
top_k
,
hidden_size
,
intermediate_size
,
params_dtype
,
...
...
@@ -215,7 +209,6 @@ class EPMoE(FusedMoE):
moe_router_topk
=
self
.
top_k
,
# TODO: support fusion permute
moe_permute_fusion
=
moe_permute_fusion
,
moe_shared_expert_overlap
=
moe_shared_expert_overlap
,
ep_size
=
self
.
ep_size
,
num_moe_experts
=
self
.
global_num_experts
,
routed_scaling_factor
=
self
.
routed_scaling_factor
,
...
...
@@ -228,23 +221,15 @@ class EPMoE(FusedMoE):
self
.
local_expert_indices
=
[
local_expert_indices_offset
+
i
for
i
in
range
(
self
.
local_num_experts
)
]
self
.
use_shared_expert
=
False
self
.
token_dispatcher
=
MoEAlltoAllTokenDispatcher
(
self
.
local_num_experts
,
self
.
local_expert_indices
,
config
=
self
.
ep_moe_config
,
layer_name
=
f
"
{
self
.
layer_name
}
.token_dispatcher"
,
)
self
.
shared_expert_overlap
=
moe_shared_expert_overlap
self
.
shared_experts
=
None
self
.
scales
=
None
self
.
use_int8_dispatch
=
True
vllm_config
=
get_current_vllm_config
()
self
.
max_num_inp_token_per_rank
=
vllm_config
.
scheduler_config
.
max_num_seqs
self
.
max_num_inp_token_per_rank
=
1024
#
vllm_config.scheduler_config.max_num_seqs
self
.
mori_op
=
self
.
get_mori_op
()
self
.
first
=
True
def
get_mori_op
(
self
):
global
_MORI_OP
...
...
@@ -253,10 +238,6 @@ class EPMoE(FusedMoE):
assert
world_group
is
not
None
torch
.
_C
.
_distributed_c10d
.
_register_process_group
(
"mori_ep"
,
get_ep_group
().
device_group
)
mori
.
shmem
.
shmem_torch_process_group_init
(
"mori_ep"
)
# world_group = torch.distributed.group.WORLD
# assert world_group is not None
# torch._C._distributed_c10d._register_process_group("default", world_group)
# mori.shmem.shmem_torch_process_group_init("default")
vllm_config
=
get_current_vllm_config
()
multi_node
=
self
.
ep_size
/
8
>
1
...
...
@@ -278,8 +259,7 @@ class EPMoE(FusedMoE):
num_experts_per_token
=
self
.
top_k
,
max_token_type_size
=
2
,
block_num
=
80
,
warp_num_per_block
=
16
,
# kernel_type=mori.ops.EpDispatchCombineKernelType.InterNode
warp_num_per_block
=
4
,
kernel_type
=
mori
.
ops
.
EpDispatchCombineKernelType
.
InterNode
if
multi_node
else
\
mori
.
ops
.
EpDispatchCombineKernelType
.
IntraNode
)
...
...
@@ -291,14 +271,11 @@ class EPMoE(FusedMoE):
if
self
.
shared_experts
is
None
:
self
.
shared_experts
=
shared_experts
if
self
.
shared_expert_overlap
:
self
.
token_dispatcher
.
set_shared_experts
(
self
.
shared_experts
)
def
create_quant_method
(
self
,
moe
,
quant_config
,
prefix
):
# Note: get_quant_method will look at the layer's local_num_experts
# for heuristic purposes, so it must be initialized first.
quant_method
:
Optional
[
QuantizeMethodBase
]
=
None
quant_method
=
(
Unquantized
EPGroupedGemm
Method
(
moe
)
if
quant_config
is
None
quant_method
=
(
Unquantized
MoriMoe
Method
(
moe
)
if
quant_config
is
None
else
quant_config
.
get_quant_method
(
self
,
prefix
))
assert
quant_method
is
not
None
...
...
@@ -311,7 +288,7 @@ class EPMoE(FusedMoE):
def
forward
(
self
,
hidden_states
:
torch
.
Tensor
,
router_logits
:
torch
.
Tensor
):
return
torch
.
ops
.
vllm
.
ep
_moe_forward
(
hidden_states
,
router_logits
,
return
torch
.
ops
.
vllm
.
mori
_moe_forward
(
hidden_states
,
router_logits
,
self
.
layer_name
)
def
get_expert_weights
(
self
)
->
Iterable
[
torch
.
Tensor
]:
...
...
@@ -351,7 +328,7 @@ class EPMoE(FusedMoE):
routed_scaling_factor
=
self
.
routed_scaling_factor
,
use_fused_gate
=
self
.
use_fused_gate
)
if
not
self
.
ep_moe_config
.
moe_shared_expert_overlap
and
self
.
shared_experts
is
not
None
:
if
self
.
shared_experts
is
not
None
:
shared_output
=
self
.
shared_experts
(
hidden_states
)
if
self
.
use_int8_dispatch
:
...
...
@@ -378,33 +355,10 @@ class EPMoE(FusedMoE):
hidden_states
,
topk_weights
,
scales
,
topk_ids
,
topk_ids
)
# self.sync()
# expect_m = topk_ids.shape[0] * self.ep_size
# dispatch_output_clip = dispatch_output[:expect_m]
# dispatch_weights_clip = dispatch_weights[:expect_m]
# dispatch_indices_clip = dispatch_indices[:expect_m]
# dispatch_scales_clip = dispatch_scales[:expect_m]
# expert_output = self.quant_method.apply_ep(
# layer=self,
# x=dispatch_output_clip,
# topk_weights=dispatch_weights_clip,
# topk_ids=dispatch_indices_clip,
# global_num_experts=self.global_num_experts,
# expert_map=self.expert_map,
# activation=self.activation,
# apply_router_weight_on_input=self.apply_router_weight_on_input,
# use_nn_moe=self.use_nn_moe,
# num_local_tokens=dispatch_recv_num_token,
# config_select_bs=hidden_states.shape[0],
# scales=dispatch_scales_clip if self.use_int8_dispatch else None
# #routed_scaling_factor=self.routed_scaling_factor,
# )
expert_output
=
self
.
quant_method
.
apply_ep
(
expert_output
=
self
.
quant_method
.
apply_mori_ep
(
layer
=
self
,
x
=
dispatch_output
,
topk_weights
=
dispatch_weights
,
...
...
@@ -415,10 +369,10 @@ class EPMoE(FusedMoE):
apply_router_weight_on_input
=
self
.
apply_router_weight_on_input
,
use_nn_moe
=
self
.
use_nn_moe
,
num_local_tokens
=
dispatch_recv_num_token
,
config_sel
ect_
bs
=
hidden_states
.
shape
[
0
],
exp
ect_
m
=
hidden_states
.
shape
[
0
],
scales
=
dispatch_scales
if
self
.
use_int8_dispatch
else
None
# routed_scaling_factor=self.routed_scaling_factor,
)
# self.sync()
combine_output
,
_
=
self
.
mori_op
.
combine
(
expert_output
,
dispatch_weights
,
topk_ids
)
...
...
@@ -426,13 +380,7 @@ class EPMoE(FusedMoE):
# self.sync()
if
not
self
.
ep_moe_config
.
moe_shared_expert_overlap
and
self
.
shared_experts
is
not
None
:
# if shared_expert_overlap is True, the expert calculation happens in
# the token_dispatcher to overlap communications and computations
# shared_output = (
# self.maybe_all_reduce_tensor_model_parallel(
# shared_output))
if
self
.
shared_experts
is
not
None
:
if
hidden_states
.
dtype
!=
torch
.
float16
:
final_hidden_states
=
final_hidden_states
+
shared_output
else
:
...
...
@@ -444,7 +392,7 @@ class EPMoE(FusedMoE):
return
final_hidden_states
def
ep
_moe_forward
(
hidden_states
:
torch
.
Tensor
,
router_logits
:
torch
.
Tensor
,
def
mori
_moe_forward
(
hidden_states
:
torch
.
Tensor
,
router_logits
:
torch
.
Tensor
,
layer_name
:
str
)
->
torch
.
Tensor
:
forward_context
:
ForwardContext
=
get_forward_context
()
self
=
forward_context
.
no_compile_layers
[
layer_name
]
...
...
@@ -453,16 +401,16 @@ def ep_moe_forward(hidden_states: torch.Tensor, router_logits: torch.Tensor,
return
self
.
forward_impl
(
hidden_states
,
router_logits
)
def
ep
_moe_forward_fake
(
hidden_states
:
torch
.
Tensor
,
router_logits
:
torch
.
Tensor
,
def
mori
_moe_forward_fake
(
hidden_states
:
torch
.
Tensor
,
router_logits
:
torch
.
Tensor
,
layer_name
:
str
)
->
torch
.
Tensor
:
return
torch
.
empty_like
(
hidden_states
)
direct_register_custom_op
(
op_name
=
"
ep
_moe_forward"
,
op_func
=
ep
_moe_forward
,
op_name
=
"
mori
_moe_forward"
,
op_func
=
mori
_moe_forward
,
mutates_args
=
[
"hidden_states"
,
"router_logits"
],
fake_impl
=
ep
_moe_forward_fake
,
fake_impl
=
mori
_moe_forward_fake
,
dispatch_key
=
current_platform
.
dispatch_key
,
tags
=
(
torch
.
Tag
.
needs_fixed_stride_order
,),
)
\ No newline at end of file
vllm/model_executor/layers/fused_moe/pplx_prepare_finalize.py
View file @
55f7b089
...
...
@@ -207,6 +207,7 @@ class PplxPrepareAndFinalize(mk.FusedMoEPrepareAndFinalize):
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
apply_router_weight_on_input
:
bool
,
apply_weights_and_reduce
:
bool
=
True
)
->
None
:
# This argument is optional
# There's not much point setting this unless it is != topk_ids.size(0)
...
...
vllm/model_executor/layers/fused_moe/prepare_finalize.py
View file @
55f7b089
...
...
@@ -61,6 +61,7 @@ class MoEPrepareAndFinalizeNoEP(mk.FusedMoEPrepareAndFinalize):
topk_weights
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
apply_router_weight_on_input
:
bool
,
apply_weights_and_reduce
:
bool
=
True
)
->
None
:
_moe_unpermute_and_reduce
(
output
,
fused_expert_output
,
None
,
topk_weights
,
apply_router_weight_on_input
)
vllm/model_executor/layers/fused_moe/triton_group_gemm_moe.py
0 → 100644
View file @
55f7b089
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
from
typing
import
Optional
import
torch
import
vllm.model_executor.layers.fused_moe.modular_kernel
as
mk
from
vllm.model_executor.layers.fused_moe.config
import
FusedMoEQuantConfig
from
vllm.model_executor.layers.fused_moe.deep_gemm_moe
import
(
DeepGemmExperts
,
_valid_deep_gemm
,
_valid_deep_gemm_shape
)
class
TritonOrGroupGemmExperts
(
mk
.
CustomizedFusedMoEPermuteExpertsUnpermute
):
def
__init__
(
self
,
use_fp8_w8a8
:
bool
=
False
,
use_int8_w8a8
:
bool
=
False
,
use_int8_w8a16
:
bool
=
False
,
use_int4_w4a16
:
bool
=
False
,
per_act_token_quant
:
bool
=
False
,
block_shape
:
Optional
[
list
[
int
]]
=
None
,
allow_group_gemm
:
bool
=
False
,
fused_experts
=
None
):
super
().
__init__
(
FusedMoEQuantConfig
.
make
(
use_fp8_w8a8
=
use_fp8_w8a8
,
use_int8_w8a8
=
use_int8_w8a8
,
use_int8_w8a16
=
use_int8_w8a16
,
use_int4_w4a16
=
use_int4_w4a16
,
per_act_token_quant
=
per_act_token_quant
,
block_shape
=
block_shape
,
))
self
.
fused_experts
=
fused_experts
@
property
def
activation_formats
(
self
)
->
tuple
[
mk
.
FusedMoEActivationFormat
,
mk
.
FusedMoEActivationFormat
]:
return
(
mk
.
FusedMoEActivationFormat
.
Standard
,
mk
.
FusedMoEActivationFormat
.
Standard
)
def
supports_chunking
(
self
)
->
bool
:
return
True
def
supports_expert_map
(
self
)
->
bool
:
return
True
def
workspace_shapes
(
self
,
a
:
torch
.
Tensor
,
aq
:
torch
.
Tensor
,
M
:
int
,
N
:
int
,
K
:
int
,
topk
:
int
,
global_num_experts
:
int
,
local_num_experts
:
int
,
)
->
tuple
[
tuple
[
int
,
...],
tuple
[
int
,
...],
tuple
[
int
,
...],
torch
.
dtype
]:
raise
NotImplementedError
def
apply
(
self
,
output
:
torch
.
Tensor
,
hidden_states
:
torch
.
Tensor
,
w1
:
torch
.
Tensor
,
w2
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
activation
:
str
,
global_num_experts
:
int
,
expert_map
:
Optional
[
torch
.
Tensor
],
w1_scale
:
Optional
[
torch
.
Tensor
],
w2_scale
:
Optional
[
torch
.
Tensor
],
w1_zp
:
Optional
[
torch
.
Tensor
],
w2_zp
:
Optional
[
torch
.
Tensor
],
a1q_scale
:
Optional
[
torch
.
Tensor
],
a2_scale
:
Optional
[
torch
.
Tensor
],
workspace13
:
torch
.
Tensor
,
workspace2
:
torch
.
Tensor
,
topk_weights
:
Optional
[
torch
.
Tensor
]
=
None
,
expert_num_tokens
:
Optional
[
torch
.
Tensor
]
=
None
,
use_nn_moe
:
Optional
[
bool
]
=
False
,
shared_output
:
Optional
[
torch
.
Tensor
]
=
None
,
routed_scaling_factor
:
Optional
[
float
]
=
None
,
):
assert
self
.
fused_experts
is
not
None
return
self
.
fused_experts
(
x
=
hidden_states
,
w1
=
w1
,
w2
=
w2
,
topk_ids
=
topk_ids
,
topk_weights
=
topk_weights
,
global_num_experts
=
global_num_experts
,
expert_map
=
expert_map
,
apply_router_weight_on_input
=
False
,
activation
=
activation
,
w1_scale
=
w1_scale
,
w2_scale
=
w2_scale
,
a1_scale
=
a1q_scale
,
a2_scale
=
a2_scale
,
expert_num_tokens
=
expert_num_tokens
,
use_nn_moe
=
use_nn_moe
,
shared_output
=
shared_output
,
routed_scaling_factor
=
routed_scaling_factor
)
vllm/model_executor/layers/quantization/slimquant_w4a8_marlin.py
View file @
55f7b089
...
...
@@ -4,10 +4,12 @@ import os
import
torch
from
torch.nn.parameter
import
Parameter
import
vllm.envs
as
envs
from
vllm
import
_custom_ops
as
ops
from
vllm.model_executor.utils
import
set_weight_attrs
from
vllm.distributed
import
get_tensor_model_parallel_world_size
from
vllm.distributed
import
get_tensor_model_parallel_world_size
,
get_dp_group
from
vllm.logger
import
init_logger
from
vllm.config
import
get_current_vllm_config
from
vllm.model_executor.layers.quantization
import
QuantizationMethods
from
vllm.model_executor.layers.linear
import
(
LinearBase
,
LinearMethodBase
)
from
vllm.model_executor.layers.quantization.base_config
import
(
QuantizationConfig
,
...
...
@@ -125,6 +127,10 @@ class SlimQuantW4A8Int8MarlinConfig(QuantizationConfig):
def
get_scaled_act_names
(
self
)
->
List
[
str
]:
return
[]
@
property
def
weight_block_size
(
self
):
return
[
128
,
128
]
class
SlimQuantW4A8Int8MarlinMoEMethod
:
...
...
@@ -154,6 +160,15 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
def
__init__
(
self
,
quant_config
):
self
.
quant_config
=
quant_config
self
.
fused_experts
=
self
.
w4a8_marlin_forward
vllm_config
=
get_current_vllm_config
()
parallel_config
=
vllm_config
.
parallel_config
self
.
use_deepep
=
parallel_config
.
enable_expert_parallel
and
\
(
envs
.
VLLM_ALL2ALL_BACKEND
==
"deepep_high_throughput"
or
\
envs
.
VLLM_ALL2ALL_BACKEND
==
"deepep_low_latency"
)
self
.
enable_moe_group_gemm
=
parallel_config
.
enable_expert_parallel
and
envs
.
VLLM_ENABLE_MOE_GROUP_GEMM
def
create_weights
(
self
,
...
...
@@ -218,7 +233,55 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
layer
.
w13_weight
=
Parameter
(
w4a8_weight_repack_impl
(
layer
.
w13_weight
),
requires_grad
=
False
)
layer
.
w2_weight
=
Parameter
(
w4a8_weight_repack_impl
(
layer
.
w2_weight
),
requires_grad
=
False
)
def
apply_ep
(
#dp+ep
def
w4a8_marlin_forward
(
self
,
x
:
torch
.
Tensor
,
w1
:
torch
.
Tensor
,
w2
:
torch
.
Tensor
,
topk_ids
:
torch
.
Tensor
,
topk_weights
:
torch
.
Tensor
,
global_num_experts
:
int
=
-
1
,
expert_map
:
Optional
[
torch
.
Tensor
]
=
None
,
apply_router_weight_on_input
:
bool
=
False
,
activation
:
str
=
"silu"
,
w1_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
w2_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
a1_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
a2_scale
:
Optional
[
torch
.
Tensor
]
=
None
,
expert_num_tokens
:
Optional
[
torch
.
Tensor
]
=
None
,
use_nn_moe
:
Optional
[
bool
]
=
False
,
routed_scaling_factor
:
Optional
[
float
]
=
None
,
shared_output
:
Optional
[
torch
.
Tensor
]
=
None
,
**
_
):
if
not
self
.
enable_moe_group_gemm
:
workspace
,
global_reduce_buffer
=
MarlinMoeWorkspace
(
x
.
device
).
get_buffers
()
return
fused_experts_impl_w4a8_marlin
(
x
,
w1
,
w2
,
topk_ids
=
topk_ids
,
topk_weights
=
topk_weights
,
workspace
=
workspace
,
global_reduce_buffer
=
global_reduce_buffer
,
inplace
=
True
,
use_int4_w4a8
=
True
,
per_channel_quant
=
True
,
activation
=
activation
,
expert_map
=
expert_map
,
apply_router_weight_on_input
=
apply_router_weight_on_input
,
global_num_experts
=
global_num_experts
,
w1_scale
=
w1_scale
,
w2_scale
=
w2_scale
,
a1_scale
=
a1_scale
,
a2_scale
=
a2_scale
,
use_nn_moe
=
use_nn_moe
,
shared_output
=
shared_output
,
routed_scaling_factor
=
routed_scaling_factor
,
)
else
:
# TODO:
return
None
def
apply_mori_ep
(
self
,
layer
:
torch
.
nn
.
Module
,
x
:
torch
.
Tensor
,
...
...
@@ -230,7 +293,7 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
activation
:
str
=
"silu"
,
use_nn_moe
:
Optional
[
bool
]
=
False
,
num_local_tokens
:
Optional
[
torch
.
Tensor
]
=
None
,
config_sel
ect_
bs
:
Optional
[
int
]
=
None
,
exp
ect_
m
:
Optional
[
int
]
=
None
,
routed_scaling_factor
:
Optional
[
float
]
=
None
,
scales
:
Optional
[
torch
.
Tensor
]
=
None
,
**
_
...
...
@@ -253,12 +316,11 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
global_num_experts
=
global_num_experts
,
w1_scale
=
(
layer
.
w13_weight_scale
),
w2_scale
=
(
layer
.
w2_weight_scale
),
a1_scale
=
layer
.
w13_input_
scale
,
a1_scale
=
scale
s
,
a2_scale
=
layer
.
w2_input_scale
,
use_nn_moe
=
use_nn_moe
,
num_local_tokens
=
num_local_tokens
,
config_select_bs
=
config_select_bs
,
q_scales
=
scales
expect_m
=
expect_m
,
)
def
apply
(
...
...
@@ -301,29 +363,25 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
custom_routing_function
=
custom_routing_function
,
scoring_func
=
scoring_func
,
e_score_correction_bias
=
e_score_correction_bias
,
indices_type
=
torch
.
int64
if
self
.
use_deepep
else
None
,
routed_scaling_factor
=
routed_scaling_factor
,
use_fused_gate
=
use_fused_gate
)
workspace
,
global_reduce_buffer
=
MarlinMoeWorkspace
(
x
.
device
).
get_buffers
()
return
fused_experts_impl_w4a8_marlin
(
return
self
.
fused_experts
(
x
,
layer
.
w13_weight
,
layer
.
w2_weight
,
topk_weights
=
topk_weights
,
topk_ids
=
topk_ids
,
workspace
=
workspace
,
global_reduce_buffer
=
global_reduce_buffer
,
inplace
=
True
,
use_int4_w4a8
=
True
,
per_channel_quant
=
True
,
activation
=
activation
,
expert_map
=
expert_map
,
apply_router_weight_on_input
=
apply_router_weight_on_input
,
global_num_experts
=
global_num_experts
,
expert_map
=
expert_map
,
w1_scale
=
(
layer
.
w13_weight_scale
),
w2_scale
=
(
layer
.
w2_weight_scale
),
a1_scale
=
layer
.
w13_input_scale
,
a2_scale
=
layer
.
w2_input_scale
,
apply_router_weight_on_input
=
apply_router_weight_on_input
,
use_nn_moe
=
use_nn_moe
,
shared_output
=
shared_output
,
routed_scaling_factor
=
routed_scaling_factor
,
...
...
@@ -335,10 +393,7 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
moe
:
FusedMoEConfig
,
)
->
FusedMoEPermuteExpertsUnpermute
:
from
vllm.model_executor.layers.fused_moe
import
(
BatchedGroupedGemmExperts
,
GroupedGemmGemmExperts
)
assert
not
self
.
rocm_aiter_moe_enabled
,
(
"ROCm AITER are not supported with all2all yet."
)
TritonOrGroupGemmExperts
)
if
(
prepare_finalize
.
activation_format
==
FusedMoEActivationFormat
.
BatchedExperts
):
...
...
@@ -350,21 +405,16 @@ class SlimQuantW4A8Int8MarlinMoEMethod:
"max_tokens_per_rank=%s, block_size=%s, per_act_token=%s"
,
self
.
__class__
.
__name__
,
max_num_tokens_per_rank
,
self
.
quant_config
.
weight_block_size
,
False
)
return
BatchedGroupedGemmExperts
(
max_num_tokens
=
max_num_tokens_per_rank
,
num_dispatchers
=
prepare_finalize
.
num_dispatchers
(),
use_fp8_w8a8
=
False
,
block_shape
=
self
.
quant_config
.
weight_block_size
,
per_act_token_quant
=
True
,
allow_deep_gemm
=
False
,
)
return
None
else
:
logger
.
debug
(
"
GroupedGemm
GemmExperts(%s): block_size=%s, per_act_token=%s"
,
"
TritonOrGroup
GemmExperts(%s): block_size=%s, per_act_token=%s"
,
self
.
__class__
.
__name__
,
self
.
quant_config
.
weight_block_size
,
False
)
return
GroupedGemmGemmExperts
(
return
TritonOrGroupGemmExperts
(
use_fp8_w8a8
=
False
,
block_shape
=
self
.
quant_config
.
weight_block_size
,
allow_deep_gemm
=
False
,
allow_group_gemm
=
False
,
fused_experts
=
self
.
w4a8_marlin_forward
)
vllm/model_executor/models/deepseek_mtp.py
View file @
55f7b089
...
...
@@ -178,7 +178,7 @@ class DeepSeekMTP(nn.Module, SupportsPP):
parallel_config
=
vllm_config
.
parallel_config
dp_size
=
get_dp_group
().
world_size
self
.
use_mori_ep
=
envs
.
VLLM_
USE_MORI_EP
and
dp_size
>
1
and
parallel_config
.
enable_expert_parallel
self
.
use_mori_ep
=
envs
.
VLLM_
ALL2ALL_BACKEND
==
'mori'
and
dp_size
>
1
and
parallel_config
.
enable_expert_parallel
def
forward
(
...
...
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