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OpenDAS
vllm_cscc
Commits
a183111e
Commit
a183111e
authored
Nov 24, 2025
by
lizhigong
Browse files
新增pp2零消耗调度分支
parent
83c1f04a
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vllm/zero_overhead/v1/PP2mtp/gpu_model_runner.py
vllm/zero_overhead/v1/PP2mtp/gpu_model_runner.py
+749
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vllm/zero_overhead/v1/PP2mtp/gpu_worker.py
vllm/zero_overhead/v1/PP2mtp/gpu_worker.py
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vllm/zero_overhead/v1/PP2mtp/outputs.py
vllm/zero_overhead/v1/PP2mtp/outputs.py
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vllm/zero_overhead/v1/PP2mtp/gpu_model_runner.py
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vllm/zero_overhead/v1/PP2mtp/gpu_worker.py
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a183111e
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""A GPU worker class."""
import
gc
import
os
from
typing
import
TYPE_CHECKING
,
Optional
import
torch
import
torch.distributed
import
torch.nn
as
nn
import
vllm.envs
as
envs
from
vllm.config
import
VllmConfig
from
vllm.device_allocator.cumem
import
CuMemAllocator
from
vllm.distributed
import
(
ensure_model_parallel_initialized
,
init_distributed_environment
,
set_custom_all_reduce
)
from
vllm.distributed.kv_transfer
import
ensure_kv_transfer_initialized
from
vllm.distributed.parallel_state
import
get_pp_group
,
get_tp_group
from
vllm.logger
import
init_logger
from
vllm.lora.request
import
LoRARequest
from
vllm.model_executor
import
set_random_seed
from
vllm.platforms
import
current_platform
from
vllm.sequence
import
IntermediateTensors
from
vllm.utils
import
GiB_bytes
,
MemorySnapshot
,
memory_profiling
from
vllm.v1.kv_cache_interface
import
KVCacheConfig
,
KVCacheSpec
from
vllm.v1.outputs
import
ModelRunnerOutput
from
vllm.v1.utils
import
report_usage_stats
from
vllm.v1.worker.gpu_model_runner
import
GPUModelRunner
from
vllm.v1.worker.worker_base
import
WorkerBase
from
vllm.zero_overhead.utils
import
zero_overhead_stream
from
vllm.zero_overhead.v1.gpu_model_runner
import
V1ZeroModelRunner
logger
=
init_logger
(
__name__
)
if
TYPE_CHECKING
:
from
vllm.model_executor.model_loader.tensorizer
import
TensorizerConfig
from
vllm.v1.core.sched.output
import
SchedulerOutput
class
Worker
(
WorkerBase
):
def
__init__
(
self
,
vllm_config
:
VllmConfig
,
local_rank
:
int
,
rank
:
int
,
distributed_init_method
:
str
,
is_driver_worker
:
bool
=
False
,
):
super
().
__init__
(
vllm_config
=
vllm_config
,
local_rank
=
local_rank
,
rank
=
rank
,
distributed_init_method
=
distributed_init_method
,
is_driver_worker
=
is_driver_worker
)
if
self
.
model_config
.
trust_remote_code
:
# note: lazy import to avoid importing torch before initializing
from
vllm.utils
import
init_cached_hf_modules
init_cached_hf_modules
()
# Buffers saved before sleep
self
.
_sleep_saved_buffers
:
dict
[
str
,
torch
.
Tensor
]
=
{}
# Torch profiler. Enabled and configured through env vars:
# VLLM_TORCH_PROFILER_DIR=/path/to/save/trace
if
envs
.
VLLM_TORCH_PROFILER_DIR
:
torch_profiler_trace_dir
=
envs
.
VLLM_TORCH_PROFILER_DIR
logger
.
info
(
"Profiling enabled. Traces will be saved to: %s"
,
torch_profiler_trace_dir
)
self
.
profiler
=
torch
.
profiler
.
profile
(
activities
=
[
torch
.
profiler
.
ProfilerActivity
.
CPU
,
torch
.
profiler
.
ProfilerActivity
.
CUDA
,
],
with_stack
=
True
,
on_trace_ready
=
torch
.
profiler
.
tensorboard_trace_handler
(
torch_profiler_trace_dir
,
use_gzip
=
True
))
else
:
self
.
profiler
=
None
def
sleep
(
self
,
level
:
int
=
1
)
->
None
:
free_bytes_before_sleep
=
torch
.
cuda
.
mem_get_info
()[
0
]
# Save the buffers before level 2 sleep
if
level
==
2
:
model
=
self
.
model_runner
.
model
self
.
_sleep_saved_buffers
=
{
name
:
buffer
.
cpu
().
clone
()
for
name
,
buffer
in
model
.
named_buffers
()
}
allocator
=
CuMemAllocator
.
get_instance
()
allocator
.
sleep
(
offload_tags
=
(
"weights"
,
)
if
level
==
1
else
tuple
())
free_bytes_after_sleep
,
total
=
torch
.
cuda
.
mem_get_info
()
freed_bytes
=
free_bytes_after_sleep
-
free_bytes_before_sleep
used_bytes
=
total
-
free_bytes_after_sleep
assert
freed_bytes
>=
0
,
"Memory usage increased after sleeping."
logger
.
info
(
"Sleep mode freed %.2f GiB memory, "
"%.2f GiB memory is still in use."
,
freed_bytes
/
GiB_bytes
,
used_bytes
/
GiB_bytes
)
def
wake_up
(
self
,
tags
:
Optional
[
list
[
str
]]
=
None
)
->
None
:
allocator
=
CuMemAllocator
.
get_instance
()
allocator
.
wake_up
(
tags
)
# Restore the buffers after level 2 sleep
if
len
(
self
.
_sleep_saved_buffers
):
model
=
self
.
model_runner
.
model
for
name
,
buffer
in
model
.
named_buffers
():
if
name
in
self
.
_sleep_saved_buffers
:
buffer
.
data
.
copy_
(
self
.
_sleep_saved_buffers
[
name
].
data
)
self
.
_sleep_saved_buffers
=
{}
def
initialize_cache
(
self
,
num_gpu_blocks
:
int
,
num_cpu_blocks
:
int
)
->
None
:
self
.
cache_config
.
num_gpu_blocks
=
num_gpu_blocks
self
.
cache_config
.
num_cpu_blocks
=
num_cpu_blocks
def
init_device
(
self
):
if
self
.
device_config
.
device
.
type
==
"cuda"
:
# torch.distributed.all_reduce does not free the input tensor until
# the synchronization point. This causes the memory usage to grow
# as the number of all_reduce calls increases. This env var disables
# this behavior.
# Related issue:
# https://discuss.pytorch.org/t/cuda-allocation-lifetime-for-inputs-to-distributed-all-reduce/191573
os
.
environ
[
"TORCH_NCCL_AVOID_RECORD_STREAMS"
]
=
"1"
# This env var set by Ray causes exceptions with graph building.
os
.
environ
.
pop
(
"NCCL_ASYNC_ERROR_HANDLING"
,
None
)
self
.
device
=
torch
.
device
(
f
"cuda:
{
self
.
local_rank
}
"
)
torch
.
cuda
.
set_device
(
self
.
device
)
_check_if_gpu_supports_dtype
(
self
.
model_config
.
dtype
)
gc
.
collect
()
torch
.
cuda
.
empty_cache
()
# take current memory snapshot
self
.
init_snapshot
=
MemorySnapshot
()
self
.
requested_memory
=
(
self
.
init_snapshot
.
total_memory
*
self
.
cache_config
.
gpu_memory_utilization
)
if
self
.
init_snapshot
.
free_memory
<
self
.
requested_memory
:
GiB
=
lambda
b
:
round
(
b
/
GiB_bytes
,
2
)
raise
ValueError
(
f
"Free memory on device "
f
"(
{
GiB
(
self
.
init_snapshot
.
free_memory
)
}
/"
f
"
{
GiB
(
self
.
init_snapshot
.
total_memory
)
}
GiB) on startup "
f
"is less than desired GPU memory utilization "
f
"(
{
self
.
cache_config
.
gpu_memory_utilization
}
, "
f
"
{
GiB
(
self
.
requested_memory
)
}
GiB). Decrease GPU memory "
f
"utilization or reduce GPU memory used by other processes."
)
else
:
raise
RuntimeError
(
f
"Not support device type:
{
self
.
device_config
.
device
}
"
)
# Initialize the distributed environment.
init_worker_distributed_environment
(
self
.
vllm_config
,
self
.
rank
,
self
.
distributed_init_method
,
self
.
local_rank
)
# Set random seed.
set_random_seed
(
self
.
model_config
.
seed
)
# Construct the model runner
if
envs
.
VLLM_ZERO_OVERHEAD
:
logger
.
info
(
'use zero overhead model_runner'
)
self
.
model_runner
:
GPUModelRunner
=
V1ZeroModelRunner
(
self
.
vllm_config
,
self
.
device
)
else
:
self
.
model_runner
:
GPUModelRunner
=
GPUModelRunner
(
self
.
vllm_config
,
self
.
device
)
if
self
.
rank
==
0
:
# If usage stat is enabled, collect relevant info.
report_usage_stats
(
self
.
vllm_config
)
# FIXME(youkaichao & ywang96): Use TorchDispatchMode instead of memory pool
# to hijack tensor allocation.
def
load_model
(
self
)
->
None
:
if
self
.
vllm_config
.
model_config
.
enable_sleep_mode
:
allocator
=
CuMemAllocator
.
get_instance
()
assert
allocator
.
get_current_usage
()
==
0
,
(
"Sleep mode can only be "
"used for one instance per process."
)
context
=
allocator
.
use_memory_pool
(
tag
=
"weights"
)
else
:
from
contextlib
import
nullcontext
context
=
nullcontext
()
with
context
:
self
.
model_runner
.
load_model
()
@
torch
.
inference_mode
()
def
determine_available_memory
(
self
)
->
int
:
"""Profiles the peak memory usage of the model to determine how much
memory can be used for KV cache without OOMs.
The engine will first conduct a profiling of the existing memory usage.
Then, it calculate the free memory that can be used for KV cache in
bytes.
Tip:
You may limit the usage of GPU memory
by adjusting the `gpu_memory_utilization` parameter.
"""
torch
.
cuda
.
empty_cache
()
torch
.
cuda
.
reset_peak_memory_stats
()
GiB
=
lambda
b
:
b
/
GiB_bytes
# Execute a forward pass with dummy inputs to profile the memory usage
# of the model.
with
memory_profiling
(
self
.
init_snapshot
,
weights_memory
=
int
(
self
.
model_runner
.
model_memory_usage
))
as
profile_result
:
self
.
model_runner
.
profile_run
()
free_gpu_memory
=
profile_result
.
after_profile
.
free_memory
# NOTE(woosuk): Here we assume that the other processes using the same
# GPU did not change their memory usage during the profiling.
assert
self
.
init_snapshot
.
free_memory
>
free_gpu_memory
,
(
"Error in memory profiling. "
f
"Initial free memory
{
GiB
(
self
.
init_snapshot
.
free_memory
)
}
GiB, "
f
"current free memory
{
GiB
(
free_gpu_memory
)
}
GiB. "
"This happens when other processes sharing the same container "
"release GPU memory while vLLM is profiling during initialization. "
"To fix this, ensure consistent GPU memory allocation or "
"isolate vLLM in its own container."
)
available_kv_cache_memory
=
self
.
requested_memory
\
-
profile_result
.
non_kv_cache_memory
logger
.
debug
(
"Initial free memory: %.2f GiB, free memory: %.2f GiB, "
"requested GPU memory: %.2f GiB"
,
GiB
(
self
.
init_snapshot
.
free_memory
),
GiB
(
free_gpu_memory
),
GiB
(
self
.
requested_memory
))
logger
.
debug
(
profile_result
)
logger
.
info
(
"Available KV cache memory: %.2f GiB"
,
GiB
(
available_kv_cache_memory
))
gc
.
collect
()
return
int
(
available_kv_cache_memory
)
def
get_kv_cache_spec
(
self
)
->
dict
[
str
,
KVCacheSpec
]:
return
self
.
model_runner
.
get_kv_cache_spec
()
def
initialize_from_config
(
self
,
kv_cache_config
:
KVCacheConfig
)
->
None
:
"""Allocate GPU KV cache with the specified kv_cache_config."""
if
self
.
vllm_config
.
model_config
.
enable_sleep_mode
:
allocator
=
CuMemAllocator
.
get_instance
()
context
=
allocator
.
use_memory_pool
(
tag
=
"kv_cache"
)
else
:
from
contextlib
import
nullcontext
context
=
nullcontext
()
with
context
:
self
.
model_runner
.
initialize_kv_cache
(
kv_cache_config
)
def
compile_or_warm_up_model
(
self
)
->
None
:
# warm up sizes that are not in cudagraph capture sizes,
# but users still want to compile for better performance,
# e.g. for the max-num-batched token size in chunked prefill.
warmup_sizes
=
self
.
vllm_config
.
compilation_config
.
compile_sizes
.
copy
()
if
not
self
.
model_config
.
enforce_eager
:
warmup_sizes
=
[
x
for
x
in
warmup_sizes
if
x
not
in
self
.
vllm_config
.
compilation_config
.
cudagraph_capture_sizes
]
# We skip EPLB here since we don't want to record dummy metrics
for
size
in
sorted
(
warmup_sizes
,
reverse
=
True
):
logger
.
info
(
"Compile and warming up model for size %d"
,
size
)
self
.
model_runner
.
_dummy_run
(
size
,
skip_eplb
=
True
)
if
not
self
.
model_config
.
enforce_eager
:
self
.
model_runner
.
capture_model
()
# Warm up sampler and preallocate memory buffer for logits and other
# sampling related tensors of max possible shape to avoid memory
# fragmentation issue.
# NOTE: This is called after `capture_model` on purpose to prevent
# memory buffers from being cleared by `torch.cuda.empty_cache`.
if
get_pp_group
().
is_last_rank
:
max_num_reqs
=
min
(
self
.
scheduler_config
.
max_num_seqs
,
self
.
scheduler_config
.
max_num_batched_tokens
)
# We skip EPLB here since we don't want to record dummy metrics
hidden_states
,
last_hidden_states
=
\
self
.
model_runner
.
_dummy_run
(
num_tokens
=
max_num_reqs
,
skip_eplb
=
True
,
)
if
self
.
model_runner
.
is_pooling_model
:
self
.
model_runner
.
_dummy_pooler_run
(
hidden_states
)
else
:
self
.
model_runner
.
_dummy_sampler_run
(
hidden_states
=
last_hidden_states
)
# Reset the seed to ensure that the random state is not affected by
# the model initialization and profiling.
set_random_seed
(
self
.
model_config
.
seed
)
def
get_model
(
self
)
->
nn
.
Module
:
return
self
.
model_runner
.
get_model
()
@
torch
.
inference_mode
()
def
execute_model
(
self
,
scheduler_output
:
"SchedulerOutput"
,
)
->
Optional
[
ModelRunnerOutput
]:
intermediate_tensors
=
None
if
not
get_pp_group
().
is_first_rank
:
intermediate_tensors
=
IntermediateTensors
(
get_pp_group
().
recv_tensor_dict
(
all_gather_group
=
get_tp_group
()))
if
envs
.
VLLM_ZERO_OVERHEAD
:
use_stream
=
zero_overhead_stream
(
self
.
device
)
with
torch
.
cuda
.
stream
(
use_stream
):
output
=
self
.
model_runner
.
execute_model
(
scheduler_output
,
intermediate_tensors
)
else
:
output
=
self
.
model_runner
.
execute_model
(
scheduler_output
,
intermediate_tensors
)
parallel_config
=
self
.
vllm_config
.
parallel_config
if
parallel_config
.
distributed_executor_backend
!=
"external_launcher"
\
and
not
get_pp_group
().
is_last_rank
:
assert
isinstance
(
output
,
IntermediateTensors
)
get_pp_group
().
send_tensor_dict
(
output
.
tensors
,
all_gather_group
=
get_tp_group
())
return
None
assert
isinstance
(
output
,
ModelRunnerOutput
)
return
output
if
self
.
is_driver_worker
else
None
def
profile
(
self
,
is_start
:
bool
=
True
):
if
self
.
profiler
is
None
:
raise
RuntimeError
(
"Profiler is not enabled."
)
if
is_start
:
self
.
profiler
.
start
()
else
:
self
.
profiler
.
stop
()
print
(
self
.
profiler
.
key_averages
().
table
(
sort_by
=
"self_cuda_time_total"
))
def
execute_dummy_batch
(
self
)
->
None
:
self
.
model_runner
.
_dummy_run
(
1
)
def
add_lora
(
self
,
lora_request
:
LoRARequest
)
->
bool
:
return
self
.
model_runner
.
add_lora
(
lora_request
)
def
remove_lora
(
self
,
lora_id
:
int
)
->
bool
:
return
self
.
model_runner
.
remove_lora
(
lora_id
)
def
list_loras
(
self
)
->
set
[
int
]:
return
self
.
model_runner
.
list_loras
()
def
pin_lora
(
self
,
lora_id
:
int
)
->
bool
:
return
self
.
model_runner
.
pin_lora
(
lora_id
)
def
check_health
(
self
)
->
None
:
# worker will always be healthy as long as it's running.
return
def
save_sharded_state
(
self
,
path
:
str
,
pattern
:
Optional
[
str
]
=
None
,
max_size
:
Optional
[
int
]
=
None
,
)
->
None
:
from
vllm.model_executor.model_loader
import
ShardedStateLoader
ShardedStateLoader
.
save_model
(
self
.
model_runner
.
model
,
path
,
pattern
=
pattern
,
max_size
=
max_size
,
)
def
save_tensorized_model
(
self
,
tensorizer_config
:
"TensorizerConfig"
,
)
->
None
:
self
.
model_runner
.
save_tensorized_model
(
tensorizer_config
=
tensorizer_config
,
)
def
init_worker_distributed_environment
(
vllm_config
:
VllmConfig
,
rank
:
int
,
distributed_init_method
:
Optional
[
str
]
=
None
,
local_rank
:
int
=
-
1
,
backend
:
str
=
"nccl"
,
)
->
None
:
"""Initialize the distributed environment."""
parallel_config
=
vllm_config
.
parallel_config
set_custom_all_reduce
(
not
parallel_config
.
disable_custom_all_reduce
)
init_distributed_environment
(
parallel_config
.
world_size
,
rank
,
distributed_init_method
,
local_rank
,
backend
)
ensure_model_parallel_initialized
(
parallel_config
.
tensor_parallel_size
,
parallel_config
.
pipeline_parallel_size
)
ensure_kv_transfer_initialized
(
vllm_config
)
def
_check_if_gpu_supports_dtype
(
torch_dtype
:
torch
.
dtype
):
# Check if the GPU supports the dtype.
if
torch_dtype
==
torch
.
bfloat16
:
# noqa: SIM102
if
not
current_platform
.
has_device_capability
(
80
):
capability
=
current_platform
.
get_device_capability
()
gpu_name
=
current_platform
.
get_device_name
()
if
capability
is
None
:
compute_str
=
"does not have a compute capability"
else
:
version_str
=
capability
.
as_version_str
()
compute_str
=
f
"has compute capability
{
version_str
}
"
raise
ValueError
(
"Bfloat16 is only supported on GPUs with compute capability "
f
"of at least 8.0. Your
{
gpu_name
}
GPU
{
compute_str
}
. "
"You can use float16 instead by explicitly setting the "
"`dtype` flag in CLI, for example: --dtype=half."
)
vllm/zero_overhead/v1/PP2mtp/outputs.py
0 → 100644
View file @
a183111e
from
dataclasses
import
dataclass
from
vllm.v1.outputs
import
ModelRunnerOutput
@
dataclass
class
ZeroV1ModelRunnerOutput
(
ModelRunnerOutput
):
# [num_reqs]
fix_req_ids
:
list
[
str
]
=
None
fix_sampled_token_ids
:
list
[
list
[
int
]]
=
None
fix_draft_req_ids
:
list
[
str
]
=
None
fix_draft_tokens_ids
:
list
[
list
[
int
]]
=
None
is_output_valid
:
bool
=
True
\ No newline at end of file
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