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OpenDAS
vllm_cscc
Commits
69f30ae0
Commit
69f30ae0
authored
Sep 01, 2025
by
王敏
Browse files
Merge remote-tracking branch 'origin/v0.9.2-dev' into v0.9.2-dev
parents
d04683a4
4a946680
Changes
12
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12 changed files
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1263 additions
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21 deletions
+1263
-21
vllm/attention/backends/dual_chunk_flash_attn.py
vllm/attention/backends/dual_chunk_flash_attn.py
+7
-2
vllm/attention/backends/utils.py
vllm/attention/backends/utils.py
+27
-6
vllm/config.py
vllm/config.py
+3
-1
vllm/engine/arg_utils.py
vllm/engine/arg_utils.py
+2
-2
vllm/model_executor/layers/fused_moe/layer.py
vllm/model_executor/layers/fused_moe/layer.py
+3
-3
vllm/model_executor/layers/quantization/__init__.py
vllm/model_executor/layers/quantization/__init__.py
+4
-1
vllm/model_executor/layers/quantization/slimquant_w4a8_marlin.py
...del_executor/layers/quantization/slimquant_w4a8_marlin.py
+282
-0
vllm/model_executor/layers/quantization/utils/w4a8_utils.py
vllm/model_executor/layers/quantization/utils/w4a8_utils.py
+72
-0
vllm/model_executor/models/deepseek_v2.py
vllm/model_executor/models/deepseek_v2.py
+11
-4
vllm/perf/benchmark_moe.py
vllm/perf/benchmark_moe.py
+846
-0
vllm/platforms/rocm.py
vllm/platforms/rocm.py
+5
-1
vllm/zero_overhead/v1/core.py
vllm/zero_overhead/v1/core.py
+1
-1
No files found.
vllm/attention/backends/dual_chunk_flash_attn.py
View file @
69f30ae0
...
@@ -19,8 +19,13 @@ from vllm.attention.backends.flash_attn import (FlashAttentionBackend,
...
@@ -19,8 +19,13 @@ from vllm.attention.backends.flash_attn import (FlashAttentionBackend,
from
vllm.distributed.parallel_state
import
get_tensor_model_parallel_rank
from
vllm.distributed.parallel_state
import
get_tensor_model_parallel_rank
from
vllm.logger
import
init_logger
from
vllm.logger
import
init_logger
from
vllm.utils
import
async_tensor_h2d
from
vllm.utils
import
async_tensor_h2d
from
vllm.vllm_flash_attn
import
(
flash_attn_varlen_func
,
from
vllm.platforms
import
current_platform
flash_attn_with_kvcache
,
sparse_attn_func
)
if
not
current_platform
.
is_rocm
():
from
vllm.vllm_flash_attn
import
(
flash_attn_varlen_func
,
flash_attn_with_kvcache
,
sparse_attn_func
)
else
:
from
flash_attn
import
(
flash_attn_varlen_func
,
flash_attn_with_kvcache
,
sparse_attn_func
)
if
TYPE_CHECKING
:
if
TYPE_CHECKING
:
from
vllm.worker.model_runner
import
ModelInputForGPUBuilder
from
vllm.worker.model_runner
import
ModelInputForGPUBuilder
...
...
vllm/attention/backends/utils.py
View file @
69f30ae0
...
@@ -246,12 +246,33 @@ class CommonMetadataBuilder(AttentionMetadataBuilder[TAttentionMetadata]):
...
@@ -246,12 +246,33 @@ class CommonMetadataBuilder(AttentionMetadataBuilder[TAttentionMetadata]):
device
,
non_blocking
=
True
)
device
,
non_blocking
=
True
)
else
:
else
:
block_tables
=
make_tensor_with_pad
(
has_empty
:
bool
=
any
(
len
(
bt
)
==
0
for
bt
in
self
.
block_tables
)
self
.
block_tables
,
has_non_empty
=
any
(
len
(
bt
)
>
0
for
bt
in
self
.
block_tables
)
pad
=
0
,
max_block_length
=
0
dtype
=
torch
.
int
,
if
has_empty
and
has_non_empty
:
device
=
device
,
for
inter_data
in
self
.
input_builder
.
inter_data_list
:
)
block_tables
=
inter_data
.
block_tables
if
block_tables
:
for
seq_id
in
inter_data
.
seq_ids
:
if
seq_id
in
block_tables
:
block_table
=
block_tables
[
seq_id
]
max_block_length
=
max
(
max_block_length
,
len
(
block_table
))
if
max_block_length
>
0
:
block_tables
=
make_tensor_with_pad
(
self
.
block_tables
,
pad
=
0
,
dtype
=
torch
.
int
,
device
=
device
,
max_len
=
max_block_length
,
)
else
:
block_tables
=
make_tensor_with_pad
(
self
.
block_tables
,
pad
=
0
,
dtype
=
torch
.
int
,
device
=
device
,
)
assert
max_query_len
>
0
,
"query_lens: {}"
.
format
(
query_lens
)
assert
max_query_len
>
0
,
"query_lens: {}"
.
format
(
query_lens
)
assert
device
is
not
None
assert
device
is
not
None
...
...
vllm/config.py
View file @
69f30ae0
...
@@ -893,7 +893,8 @@ class ModelConfig:
...
@@ -893,7 +893,8 @@ class ModelConfig:
optimized_quantization_methods
=
[
optimized_quantization_methods
=
[
"fp8"
,
"marlin"
,
"modelopt"
,
"gptq_marlin_24"
,
"gptq_marlin"
,
"fp8"
,
"marlin"
,
"modelopt"
,
"gptq_marlin_24"
,
"gptq_marlin"
,
"awq_marlin"
,
"fbgemm_fp8"
,
"compressed-tensors"
,
"experts_int8"
,
"awq_marlin"
,
"fbgemm_fp8"
,
"compressed-tensors"
,
"experts_int8"
,
"quark"
,
"modelopt_fp4"
,
"bitblas"
,
"gptq_bitblas"
"quark"
,
"modelopt_fp4"
,
"bitblas"
,
"gptq_bitblas"
,
"slimquant_w4a8"
,
"slimquant_w4a8_marlin"
]
]
if
self
.
quantization
is
not
None
:
if
self
.
quantization
is
not
None
:
self
.
quantization
=
cast
(
me_quant
.
QuantizationMethods
,
self
.
quantization
=
cast
(
me_quant
.
QuantizationMethods
,
...
@@ -920,6 +921,7 @@ class ModelConfig:
...
@@ -920,6 +921,7 @@ class ModelConfig:
"awq_marlin"
,
"awq_marlin"
,
"ipex"
,
"ipex"
,
"moe_wna16"
,
"moe_wna16"
,
"slimquant_w4a8_marlin"
]
]
quantization_methods
=
[
quantization_methods
=
[
q
for
q
in
supported_quantization
if
q
not
in
overrides
q
for
q
in
supported_quantization
if
q
not
in
overrides
...
...
vllm/engine/arg_utils.py
View file @
69f30ae0
...
@@ -1107,8 +1107,8 @@ class EngineArgs:
...
@@ -1107,8 +1107,8 @@ class EngineArgs:
"Cuda graph is not supported with DualChunkFlashAttention. "
"Cuda graph is not supported with DualChunkFlashAttention. "
"To run the model in eager mode, set 'enforce_eager=True' "
"To run the model in eager mode, set 'enforce_eager=True' "
"or use '--enforce-eager' in the CLI."
)
"or use '--enforce-eager' in the CLI."
)
assert
current_platform
.
is_cuda
(),
(
assert
current_platform
.
is_cuda
()
or
current_platform
.
is_rocm
()
,
(
"DualChunkFlashAttention is
only
supported on CUDA platform."
)
"DualChunkFlashAttention is supported on CUDA
/ROCM
platform."
)
assert
not
use_v1
,
(
assert
not
use_v1
,
(
"DualChunkFlashAttention is not supported on V1 engine. "
"DualChunkFlashAttention is not supported on V1 engine. "
"To run the model in V0 engine, try set 'VLLM_USE_V1=0'"
)
"To run the model in V0 engine, try set 'VLLM_USE_V1=0'"
)
...
...
vllm/model_executor/layers/fused_moe/layer.py
View file @
69f30ae0
...
@@ -811,9 +811,9 @@ class FusedMoE(torch.nn.Module):
...
@@ -811,9 +811,9 @@ class FusedMoE(torch.nn.Module):
"CompressedTensorsWNA16MoEMethod"
)):
"CompressedTensorsWNA16MoEMethod"
)):
moe_quant_params
[
"intermediate_size_full"
]
=
intermediate_size
moe_quant_params
[
"intermediate_size_full"
]
=
intermediate_size
if
(
self
.
quant_method
.
__class__
.
__name__
in
(
"BlockInt8MoEMethod"
)):
if
(
self
.
quant_method
.
__class__
.
__name__
in
(
"BlockInt8MoEMethod"
,
moe_quant_params
[
"intermediate_size"
]
=
self
.
intermediate_size_per_partition
"SlimQuantW4A8Int8MoEMethod"
,
if
(
self
.
quant_method
.
__class__
.
__name__
in
(
"SlimQuantW4A8Int8MoEMethod"
)):
"SlimQuantW4A8Int8M
arlinM
oEMethod"
)):
moe_quant_params
[
"intermediate_size"
]
=
self
.
intermediate_size_per_partition
moe_quant_params
[
"intermediate_size"
]
=
self
.
intermediate_size_per_partition
...
...
vllm/model_executor/layers/quantization/__init__.py
View file @
69f30ae0
...
@@ -37,7 +37,8 @@ QuantizationMethods = Literal[
...
@@ -37,7 +37,8 @@ QuantizationMethods = Literal[
"auto-round"
,
"auto-round"
,
"rtn"
,
"rtn"
,
"blockwise_int8"
,
"blockwise_int8"
,
"slimquant_w4a8"
"slimquant_w4a8"
,
"slimquant_w4a8_marlin"
]
]
QUANTIZATION_METHODS
:
list
[
str
]
=
list
(
get_args
(
QuantizationMethods
))
QUANTIZATION_METHODS
:
list
[
str
]
=
list
(
get_args
(
QuantizationMethods
))
...
@@ -118,6 +119,7 @@ def get_quantization_config(quantization: str) -> type[QuantizationConfig]:
...
@@ -118,6 +119,7 @@ def get_quantization_config(quantization: str) -> type[QuantizationConfig]:
from
.tpu_int8
import
Int8TpuConfig
from
.tpu_int8
import
Int8TpuConfig
from
.blockwise_int8
import
BlockInt8Config
from
.blockwise_int8
import
BlockInt8Config
from
.slimquant_w4a8
import
SlimQuantW4A8Int8Config
from
.slimquant_w4a8
import
SlimQuantW4A8Int8Config
from
.slimquant_w4a8_marlin
import
SlimQuantW4A8Int8MarlinConfig
method_to_config
:
dict
[
str
,
type
[
QuantizationConfig
]]
=
{
method_to_config
:
dict
[
str
,
type
[
QuantizationConfig
]]
=
{
"aqlm"
:
AQLMConfig
,
"aqlm"
:
AQLMConfig
,
...
@@ -151,6 +153,7 @@ def get_quantization_config(quantization: str) -> type[QuantizationConfig]:
...
@@ -151,6 +153,7 @@ def get_quantization_config(quantization: str) -> type[QuantizationConfig]:
"rtn"
:
RTNConfig
,
"rtn"
:
RTNConfig
,
"blockwise_int8"
:
BlockInt8Config
,
"blockwise_int8"
:
BlockInt8Config
,
"slimquant_w4a8"
:
SlimQuantW4A8Int8Config
,
"slimquant_w4a8"
:
SlimQuantW4A8Int8Config
,
"slimquant_w4a8_marlin"
:
SlimQuantW4A8Int8MarlinConfig
,
}
}
# Update the `method_to_config` with customized quantization methods.
# Update the `method_to_config` with customized quantization methods.
method_to_config
.
update
(
_CUSTOMIZED_METHOD_TO_QUANT_CONFIG
)
method_to_config
.
update
(
_CUSTOMIZED_METHOD_TO_QUANT_CONFIG
)
...
...
vllm/model_executor/layers/quantization/slimquant_w4a8_marlin.py
0 → 100644
View file @
69f30ae0
from
typing
import
Any
,
Callable
,
Dict
,
List
,
Optional
import
os
import
torch
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
torch.nn.parameter
import
Parameter
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
,
QuantizeMethodBase
)
from
vllm.model_executor.layers.quantization.utils.w4a8_utils
import
w4a8_2_marlin_weight
from
vllm.model_executor.layers.fused_moe
import
(
FusedMoE
,
FusedMoEMethodBase
,
FusedMoeWeightScaleSupported
)
from
vllm.model_executor.parameter
import
(
ChannelQuantScaleParameter
,
ModelWeightParameter
)
from
vllm.model_executor.layers.quantization.slimquant_w4a8
import
SlimQuantW4A8Int8LinearMethod
try
:
from
lmslim.layers.fused_moe.fuse_moe_w4a8_marlin
import
fused_experts_impl_w4a8_marlin
except
Exception
:
print
(
"INFO: Please install lmslim if you want to infer the quantitative model of moe.
\n
"
)
class
MarlinMoeWorkspace
:
"""
Singleton manager for device-specific workspace buffers used by w4a8 Marlin-MoE.
global_reduce_buffer will take 1.5MB * cus (about 120MB for BW200) memoery in each device
"""
_instances
=
{}
def
__new__
(
cls
,
device
):
if
device
not
in
cls
.
_instances
:
instance
=
super
().
__new__
(
cls
)
instance
.
_initialized
=
False
cls
.
_instances
[
device
]
=
instance
return
cls
.
_instances
[
device
]
def
__init__
(
self
,
device
):
if
self
.
_initialized
:
return
sms
=
torch
.
cuda
.
get_device_properties
(
device
).
multi_processor_count
self
.
workspace
=
torch
.
zeros
(
500
,
dtype
=
torch
.
int
,
device
=
device
,
requires_grad
=
False
)
self
.
global_reduce_buffer
=
torch
.
zeros
(
sms
*
6
*
128
*
512
,
dtype
=
torch
.
int
,
device
=
device
,
requires_grad
=
False
)
self
.
_initialized
=
True
def
get_buffers
(
self
):
return
self
.
workspace
,
self
.
global_reduce_buffer
def
baseline_scaled_mm
(
a
:
torch
.
Tensor
,
b
:
torch
.
Tensor
,
scale_a
:
torch
.
Tensor
,
scale_b
:
torch
.
Tensor
,
out_dtype
:
torch
.
dtype
,
bias
:
Optional
[
torch
.
Tensor
]
=
None
)
->
torch
.
Tensor
:
scales
=
scale_a
*
scale_b
.
T
gemmout
=
torch
.
mm
(
a
.
to
(
dtype
=
torch
.
float32
),
b
.
to
(
dtype
=
torch
.
float32
))
output
=
(
scales
*
gemmout
).
to
(
out_dtype
)
if
bias
is
not
None
:
output
=
output
+
bias
return
output
.
to
(
out_dtype
)
class
SlimQuantW4A8Int8MarlinConfig
(
QuantizationConfig
):
"""Config class for W4A8 Int8 Quantization.
- Weight: static, per-channel, symmetric
- Activation: dynamic, per-token, symmetric
"""
def
__init__
(
self
):
pass
@
classmethod
def
get_supported_act_dtypes
(
cls
)
->
List
[
torch
.
dtype
]:
return
[
torch
.
float16
,
torch
.
bfloat16
]
@
classmethod
def
get_min_capability
(
cls
)
->
int
:
return
75
@
classmethod
def
get_name
(
self
)
->
str
:
return
"slimquant_w4a8_marlin"
@
classmethod
def
get_config_filenames
(
cls
)
->
List
[
str
]:
return
[]
@
classmethod
def
from_config
(
cls
,
config
:
Dict
[
str
,
Any
])
->
"SlimQuantW4A8Int8MarlinConfig"
:
return
cls
()
@
classmethod
def
override_quantization_method
(
cls
,
hf_quant_cfg
,
user_quant
)
->
Optional
[
QuantizationMethods
]:
if
hf_quant_cfg
.
get
(
"quant_method"
)
==
"slimquant_w4a8"
\
and
user_quant
==
"slimquant_w4a8_marlin"
:
return
cls
.
get_name
()
return
None
def
get_quant_method
(
self
,
layer
:
torch
.
nn
.
Module
,
prefix
:
str
,
)
->
Optional
[
"QuantizeMethodBase"
]:
if
isinstance
(
layer
,
LinearBase
):
return
SlimQuantW4A8Int8LinearMethod
(
self
)
elif
isinstance
(
layer
,
FusedMoE
):
return
SlimQuantW4A8Int8MarlinMoEMethod
(
self
)
return
None
def
get_scaled_act_names
(
self
)
->
List
[
str
]:
return
[]
class
SlimQuantW4A8Int8MarlinMoEMethod
:
"""MoE method for W4A8INT8 Marlin.
Supports loading INT8 checkpoints with static weight scale and
dynamic/static activation scale.
Args:
quant_config: The quantization config.
"""
def
__new__
(
cls
,
*
args
,
**
kwargs
):
if
not
hasattr
(
cls
,
"_initialized"
):
original_init
=
cls
.
__init__
new_cls
=
type
(
cls
.
__name__
,
(
FusedMoEMethodBase
,),
{
"__init__"
:
original_init
,
**
{
k
:
v
for
k
,
v
in
cls
.
__dict__
.
items
()
if
k
!=
"__dict__"
},
},
)
obj
=
super
(
new_cls
,
new_cls
).
__new__
(
new_cls
)
obj
.
__init__
(
*
args
,
**
kwargs
)
return
obj
return
super
().
__new__
(
cls
)
def
__init__
(
self
,
quant_config
):
self
.
quant_config
=
quant_config
def
create_weights
(
self
,
layer
:
torch
.
nn
.
Module
,
num_experts
:
int
,
hidden_size
:
int
,
intermediate_size
:
int
,
params_dtype
:
torch
.
dtype
,
**
extra_weight_attrs
,
):
tp_size
=
get_tensor_model_parallel_world_size
()
# WEIGHTS
w13_weight
=
torch
.
nn
.
Parameter
(
torch
.
empty
(
num_experts
,
2
*
intermediate_size
,
hidden_size
//
2
,
dtype
=
torch
.
int8
),
requires_grad
=
False
,
)
layer
.
register_parameter
(
"w13_weight"
,
w13_weight
)
set_weight_attrs
(
w13_weight
,
extra_weight_attrs
)
w2_weight
=
torch
.
nn
.
Parameter
(
torch
.
empty
(
num_experts
,
hidden_size
,
intermediate_size
//
2
,
dtype
=
torch
.
int8
),
requires_grad
=
False
,
)
layer
.
register_parameter
(
"w2_weight"
,
w2_weight
)
set_weight_attrs
(
w2_weight
,
extra_weight_attrs
)
w13_weight_scale
=
torch
.
nn
.
Parameter
(
torch
.
ones
(
num_experts
,
2
*
intermediate_size
,
1
,
dtype
=
torch
.
float32
),
requires_grad
=
False
,
)
w2_weight_scale
=
torch
.
nn
.
Parameter
(
torch
.
ones
(
num_experts
,
hidden_size
,
1
,
dtype
=
torch
.
float32
),
requires_grad
=
False
,
)
layer
.
register_parameter
(
"w13_weight_scale"
,
w13_weight_scale
)
layer
.
register_parameter
(
"w2_weight_scale"
,
w2_weight_scale
)
extra_weight_attrs
.
update
(
{
"quant_method"
:
FusedMoeWeightScaleSupported
.
CHANNEL
.
value
}
)
set_weight_attrs
(
w13_weight_scale
,
extra_weight_attrs
)
set_weight_attrs
(
w2_weight_scale
,
extra_weight_attrs
)
w13_input_scale
=
None
layer
.
register_parameter
(
"w13_input_scale"
,
w13_input_scale
)
w2_input_scale
=
None
layer
.
register_parameter
(
"w2_input_scale"
,
w2_input_scale
)
def
process_weights_after_loading
(
self
,
layer
:
torch
.
nn
.
Module
)
->
None
:
layer
.
w13_weight_scale
=
Parameter
(
layer
.
w13_weight_scale
.
data
,
requires_grad
=
False
)
layer
.
w2_weight_scale
=
Parameter
(
layer
.
w2_weight_scale
.
data
,
requires_grad
=
False
)
w1_marlin_list
=
[]
for
e
in
range
(
layer
.
w13_weight
.
shape
[
0
]):
w1_marlin_in
=
w4a8_2_marlin_weight
(
layer
.
w13_weight
[
e
])
w1_marlin_list
.
append
(
w1_marlin_in
)
layer
.
w13_weight
=
Parameter
(
torch
.
stack
(
w1_marlin_list
,
dim
=
0
),
requires_grad
=
False
)
w2_marlin_list
=
[]
for
e
in
range
(
layer
.
w2_weight
.
shape
[
0
]):
w2_marlin_in
=
w4a8_2_marlin_weight
(
layer
.
w2_weight
[
e
])
w2_marlin_list
.
append
(
w2_marlin_in
)
layer
.
w2_weight
=
Parameter
(
torch
.
stack
(
w2_marlin_list
,
dim
=
0
),
requires_grad
=
False
)
def
apply
(
self
,
layer
:
torch
.
nn
.
Module
,
x
:
torch
.
Tensor
,
router_logits
:
torch
.
Tensor
,
top_k
:
int
,
renormalize
:
bool
,
use_grouped_topk
:
bool
=
False
,
topk_group
:
Optional
[
int
]
=
None
,
num_expert_group
:
Optional
[
int
]
=
None
,
global_num_experts
:
int
=
-
1
,
expert_map
:
Optional
[
torch
.
Tensor
]
=
None
,
custom_routing_function
:
Optional
[
Callable
]
=
None
,
scoring_func
:
str
=
"softmax"
,
e_score_correction_bias
:
Optional
[
torch
.
Tensor
]
=
None
,
apply_router_weight_on_input
:
bool
=
False
,
activation
:
str
=
"silu"
,
enable_eplb
:
bool
=
False
,
use_nn_moe
:
Optional
[
bool
]
=
False
,
routed_scaling_factor
:
Optional
[
float
]
=
None
,
use_fused_gate
:
Optional
[
bool
]
=
False
,
**
_
)
->
torch
.
Tensor
:
from
vllm.model_executor.layers.fused_moe
import
fused_experts
if
enable_eplb
:
raise
NotImplementedError
(
"EPLB not supported for `SlimQuantW4A8Int8MarlinMoEMethod` yet."
)
# Expert selection
topk_weights
,
topk_ids
=
FusedMoE
.
select_experts
(
hidden_states
=
x
,
router_logits
=
router_logits
,
use_grouped_topk
=
use_grouped_topk
,
top_k
=
top_k
,
renormalize
=
renormalize
,
topk_group
=
topk_group
,
num_expert_group
=
num_expert_group
,
custom_routing_function
=
custom_routing_function
,
scoring_func
=
scoring_func
,
e_score_correction_bias
=
e_score_correction_bias
,
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
(
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
,
w1_scale
=
(
layer
.
w13_weight_scale
),
w2_scale
=
(
layer
.
w2_weight_scale
),
a1_scale
=
layer
.
w13_input_scale
,
a2_scale
=
layer
.
w2_input_scale
,
use_nn_moe
=
use_nn_moe
,
)
vllm/model_executor/layers/quantization/utils/w4a8_utils.py
0 → 100644
View file @
69f30ae0
import
torch
import
numpy
as
np
def
unpack_int8_to_int4
(
tensor_int8
:
torch
.
Tensor
)
->
torch
.
Tensor
:
"""
将[N, K//2]大小的torch.int8 Tensor,转换为[N, K]大小的torch.int32 Tensor。
每个int8包含两个int4,分别提取到int32的低4位,其余位为0。
Args:
tensor_int8 (torch.Tensor): 输入张量,形状为[N, K//2],类型为torch.int8。
Returns:
torch.Tensor: 输出张量,形状为[N, K],类型为torch.int32。
"""
if
tensor_int8
.
dtype
!=
torch
.
int8
:
raise
ValueError
(
"Input tensor must be of type torch.int8"
)
N
,
K_half
=
tensor_int8
.
shape
tensor_uint8
=
tensor_int8
.
to
(
torch
.
uint8
)
high4
=
tensor_uint8
&
0x0F
low4
=
(
tensor_uint8
>>
4
)
&
0x0F
unpacked
=
torch
.
empty
((
N
,
K_half
*
2
),
dtype
=
torch
.
int32
,
device
=
tensor_int8
.
device
)
unpacked
[:,
0
::
2
]
=
low4
.
to
(
torch
.
int32
)
unpacked
[:,
1
::
2
]
=
high4
.
to
(
torch
.
int32
)
return
unpacked
def
get_weight_perms
(
interleave
:
bool
=
True
):
perm
=
[]
for
i
in
range
(
64
):
for
col
in
range
(
4
):
cur_col
=
(
i
%
16
)
*
4
+
col
for
row
in
range
(
8
):
cur_row
=
(
i
//
16
)
*
8
+
row
cur_idx
=
cur_row
*
64
+
cur_col
perm
.
append
(
cur_idx
)
perm
=
np
.
array
(
perm
)
if
interleave
:
interleave
=
np
.
array
([
4
,
0
,
5
,
1
,
6
,
2
,
7
,
3
])
perm
=
perm
.
reshape
((
-
1
,
8
))[:,
interleave
].
ravel
()
perm
=
torch
.
from_numpy
(
perm
)
return
perm
def
marlin_weights
(
q_w
,
weight_perm
,
k_tile
=
32
,
n_tile
=
64
,
pack_factor
=
8
):
size_k
,
size_n
=
q_w
.
shape
q_w
=
q_w
.
reshape
((
size_k
//
k_tile
,
k_tile
,
size_n
//
n_tile
,
n_tile
))
q_w
=
q_w
.
permute
((
0
,
2
,
1
,
3
))
q_w
=
q_w
.
reshape
((
size_k
//
k_tile
,
size_n
*
k_tile
))
q_w
=
q_w
.
reshape
((
-
1
,
weight_perm
.
numel
()))[:,
weight_perm
].
reshape
(
q_w
.
shape
)
orig_device
=
q_w
.
device
q_w
=
q_w
.
cpu
().
numpy
().
astype
(
np
.
uint32
)
q_packed
=
np
.
zeros
((
q_w
.
shape
[
0
],
q_w
.
shape
[
1
]
//
pack_factor
),
dtype
=
np
.
uint32
)
for
i
in
range
(
pack_factor
):
q_packed
|=
q_w
[:,
i
::
pack_factor
]
<<
4
*
i
q_packed
=
torch
.
from_numpy
(
q_packed
.
astype
(
np
.
int32
)).
to
(
orig_device
)
return
q_packed
def
w4a8_2_marlin_weight
(
w4a8_w
):
full_w4a8_w
=
unpack_int8_to_int4
(
w4a8_w
)
full_w4a8_w
=
full_w4a8_w
.
T
weight_perm
=
get_weight_perms
()
marlin_q_w
=
marlin_weights
(
full_w4a8_w
,
weight_perm
,
k_tile
=
32
,
n_tile
=
64
,
pack_factor
=
8
)
return
marlin_q_w
vllm/model_executor/models/deepseek_v2.py
View file @
69f30ae0
...
@@ -67,7 +67,7 @@ from .utils import (PPMissingLayer, is_pp_missing_parameter,
...
@@ -67,7 +67,7 @@ from .utils import (PPMissingLayer, is_pp_missing_parameter,
from
vllm
import
_custom_ops
as
ops
from
vllm
import
_custom_ops
as
ops
from
vllm.utils
import
W8a8GetCacheJSON
from
vllm.utils
import
W8a8GetCacheJSON
os
.
environ
[
'DPSK_FP16_QUICK'
]
=
os
.
environ
.
get
(
'DPSK_FP16_QUICK'
,
'
1
'
)
os
.
environ
[
'DPSK_FP16_QUICK'
]
=
os
.
environ
.
get
(
'DPSK_FP16_QUICK'
,
'
0
'
)
class
DeepseekV2MLP
(
nn
.
Module
):
class
DeepseekV2MLP
(
nn
.
Module
):
def
__init__
(
def
__init__
(
...
@@ -622,9 +622,13 @@ class DeepseekV2DecoderLayer(nn.Module):
...
@@ -622,9 +622,13 @@ class DeepseekV2DecoderLayer(nn.Module):
residual
:
Optional
[
torch
.
Tensor
],
residual
:
Optional
[
torch
.
Tensor
],
)
->
torch
.
Tensor
:
)
->
torch
.
Tensor
:
# Self Attention
# Self Attention
# Fix residual FP16 overflow
residual_fix_overflow
=
False
if
residual
is
None
:
if
residual
is
None
:
residual
=
hidden_states
residual
=
hidden_states
hidden_states
=
self
.
input_layernorm
(
hidden_states
)
hidden_states
=
self
.
input_layernorm
(
hidden_states
)
residual_fix_overflow
=
True
else
:
else
:
hidden_states
,
residual
=
self
.
input_layernorm
(
hidden_states
,
residual
=
self
.
input_layernorm
(
hidden_states
,
residual
)
hidden_states
,
residual
)
...
@@ -640,7 +644,7 @@ class DeepseekV2DecoderLayer(nn.Module):
...
@@ -640,7 +644,7 @@ class DeepseekV2DecoderLayer(nn.Module):
# We scale both hidden_states and residual before
# We scale both hidden_states and residual before
# rmsnorm, and rmsnorm result would not affect by scale.
# rmsnorm, and rmsnorm result would not affect by scale.
hidden_states
*=
1.
/
self
.
routed_scaling_factor
hidden_states
*=
1.
/
self
.
routed_scaling_factor
if
self
.
layer_idx
==
0
:
if
self
.
layer_idx
==
0
or
residual_fix_overflow
:
# The residual is shared by all layers, we only scale it on
# The residual is shared by all layers, we only scale it on
# first layer.
# first layer.
residual
*=
1.
/
self
.
routed_scaling_factor
residual
*=
1.
/
self
.
routed_scaling_factor
...
@@ -778,14 +782,17 @@ class DeepseekV2ForCausalLM(nn.Module, SupportsPP, MixtureOfExperts):
...
@@ -778,14 +782,17 @@ class DeepseekV2ForCausalLM(nn.Module, SupportsPP, MixtureOfExperts):
self
.
num_expert_groups
=
config
.
n_group
self
.
num_expert_groups
=
config
.
n_group
self
.
moe_layers
:
list
[
FusedMoE
]
=
[]
self
.
moe_layers
:
list
[
FusedMoE
]
=
[]
example_moe
=
None
for
layer
in
self
.
model
.
layers
:
for
layer
in
self
.
model
.
layers
:
if
isinstance
(
layer
,
PPMissingLayer
):
continue
assert
isinstance
(
layer
,
DeepseekV2DecoderLayer
)
assert
isinstance
(
layer
,
DeepseekV2DecoderLayer
)
if
isinstance
(
layer
.
mlp
,
DeepseekV2MoE
):
if
isinstance
(
layer
.
mlp
,
DeepseekV2MoE
):
example_moe
=
layer
.
mlp
self
.
moe_layers
.
append
(
layer
.
mlp
.
experts
)
self
.
moe_layers
.
append
(
layer
.
mlp
.
experts
)
# Pick last one layer since the first ones may be dense layers.
# Pick last one layer since the first ones may be dense layers.
example_moe
=
typing
.
cast
(
DeepseekV2MoE
,
self
.
model
.
layers
[
config
.
num_hidden_layers
-
1
].
mlp
)
self
.
num_logical_experts
=
example_moe
.
n_logical_experts
self
.
num_logical_experts
=
example_moe
.
n_logical_experts
self
.
num_physical_experts
=
example_moe
.
n_physical_experts
self
.
num_physical_experts
=
example_moe
.
n_physical_experts
self
.
num_local_physical_experts
=
example_moe
.
n_local_physical_experts
self
.
num_local_physical_experts
=
example_moe
.
n_local_physical_experts
...
...
vllm/perf/benchmark_moe.py
0 → 100644
View file @
69f30ae0
This diff is collapsed.
Click to expand it.
vllm/platforms/rocm.py
View file @
69f30ae0
...
@@ -180,7 +180,7 @@ class RocmPlatform(Platform):
...
@@ -180,7 +180,7 @@ class RocmPlatform(Platform):
supported_quantization
:
list
[
str
]
=
[
supported_quantization
:
list
[
str
]
=
[
"awq"
,
"gptq"
,
"fp8"
,
"compressed-tensors"
,
"fbgemm_fp8"
,
"gguf"
,
"awq"
,
"gptq"
,
"fp8"
,
"compressed-tensors"
,
"fbgemm_fp8"
,
"gguf"
,
"quark"
,
"ptpc_fp8"
,
"moe_wna16"
,
"blockwise_int8"
,
"slimquant_w4a8"
,
"awq_marlin"
"quark"
,
"ptpc_fp8"
,
"moe_wna16"
,
"blockwise_int8"
,
"slimquant_w4a8"
,
"awq_marlin"
,
"slimquant_w4a8_marlin"
]
]
@
classmethod
@
classmethod
...
@@ -282,6 +282,10 @@ class RocmPlatform(Platform):
...
@@ -282,6 +282,10 @@ class RocmPlatform(Platform):
logger
.
info_once
(
"Using Triton backend on V1 engine."
)
logger
.
info_once
(
"Using Triton backend on V1 engine."
)
return
TRITON_ATTN_VLLM_V1
return
TRITON_ATTN_VLLM_V1
if
selected_backend
==
_Backend
.
DUAL_CHUNK_FLASH_ATTN
:
logger
.
info
(
"Using DualChunkFlashAttention backend."
)
return
(
"vllm.attention.backends.dual_chunk_flash_attn."
"DualChunkFlashAttentionBackend"
)
if
selected_backend
==
_Backend
.
ROCM_FLASH
:
if
selected_backend
==
_Backend
.
ROCM_FLASH
:
if
not
cls
.
has_device_capability
(
90
):
if
not
cls
.
has_device_capability
(
90
):
# not Instinct series GPUs.
# not Instinct series GPUs.
...
...
vllm/zero_overhead/v1/core.py
View file @
69f30ae0
...
@@ -177,11 +177,11 @@ def zero_overhead_update_from_output(scheduler:Scheduler,
...
@@ -177,11 +177,11 @@ def zero_overhead_update_from_output(scheduler:Scheduler,
# loop can be a performance bottleneck. We should do our best to avoid
# loop can be a performance bottleneck. We should do our best to avoid
# expensive operations inside the loop.
# expensive operations inside the loop.
for
request
in
scheduler
.
running
:
for
request
in
scheduler
.
running
:
req_id
=
request
.
request_id
if
request
.
is_finished
():
if
request
.
is_finished
():
if
req_id
in
requsets_valid_token_len
:
if
req_id
in
requsets_valid_token_len
:
requsets_valid_token_len
.
pop
(
req_id
)
requsets_valid_token_len
.
pop
(
req_id
)
continue
continue
req_id
=
request
.
request_id
num_tokens_scheduled
=
num_scheduled_tokens
.
get
(
req_id
,
0
)
num_tokens_scheduled
=
num_scheduled_tokens
.
get
(
req_id
,
0
)
if
num_tokens_scheduled
==
0
:
if
num_tokens_scheduled
==
0
:
# The request was not scheduled in this step.
# The request was not scheduled in this step.
...
...
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