LlamaGen / serve /model_runner.py
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import contextlib
import time
from enum import IntEnum
from typing import Dict, List, NamedTuple, Optional, Set, Tuple
import numpy as np
import torch
import torch.nn as nn
from vllm.attention import (AttentionMetadata, AttentionMetadataPerStage,
get_attn_backend)
from vllm.config import (DeviceConfig, LoadConfig, LoRAConfig, ModelConfig,
ParallelConfig, SchedulerConfig, VisionLanguageConfig)
from vllm.distributed import broadcast_tensor_dict, with_pynccl_for_all_reduce
from vllm.distributed.device_communicators import (custom_all_reduce,
pynccl_utils)
from vllm.logger import init_logger
from vllm.lora.layers import LoRAMapping
from vllm.lora.request import LoRARequest
from vllm.lora.worker_manager import LRUCacheWorkerLoRAManager
from vllm.model_executor import SamplingMetadata
from vllm.model_executor.model_loader import get_model
from vllm.sampling_params import SamplingParams, SamplingType
from vllm.sequence import (MultiModalData, SamplerOutput, SequenceData,
SequenceGroupMetadata)
from vllm.utils import (CudaMemoryProfiler, async_tensor_h2d, is_hip,
is_pin_memory_available, make_tensor_with_pad,
maybe_expand_dim)
from serve.gpt_model import GPT_models
logger = init_logger(__name__)
_PAD_SLOT_ID = -1
LORA_WARMUP_RANK = 8
_BATCH_SIZE_ALIGNMENT = 8
# Capture graphs for token size 1, 2, 4, 8, 16, 24, 32, 40, ..., 256.
# NOTE: _get_graph_batch_size needs to be updated if this list is changed.
_BATCH_SIZES_TO_CAPTURE = [1, 2, 4] + [
_BATCH_SIZE_ALIGNMENT * i for i in range(1, 33)
]
class PreparePromptMetadata(NamedTuple):
input_tokens: List[int]
input_positions: List[int]
attn_metadata: Optional[AttentionMetadataPerStage]
prompt_lens: List[int]
subquery_lens: List[int]
lora_index_mapping: List[int]
lora_prompt_mapping: List[int]
lora_requests: Set[LoRARequest]
multi_modal_input: Optional[torch.Tensor]
slot_mapping: List[int]
@classmethod
def empty(cls):
return PreparePromptMetadata(
input_tokens=[],
input_positions=[],
attn_metadata=None,
prompt_lens=[],
subquery_lens=[],
lora_index_mapping=[],
lora_prompt_mapping=[],
lora_requests=set(),
multi_modal_input=None,
slot_mapping=[],
)
class PrepareDecodeMetadata(NamedTuple):
input_tokens: List[int]
input_positions: List[int]
attn_metadata: Optional[AttentionMetadata]
lora_index_mapping: List[int]
lora_prompt_mapping: List[int]
lora_requests: Set[LoRARequest]
slot_mapping: List[int]
@classmethod
def empty(cls):
return PrepareDecodeMetadata(
input_tokens=[],
input_positions=[],
attn_metadata=None,
lora_index_mapping=[],
lora_prompt_mapping=[],
lora_requests=set(),
slot_mapping=[],
)
# How batches are constructed.
class BatchType(IntEnum):
# Every batch is prefill.
PREFILL = 0
# Every batch is decode.
DECODE = 1
# Batch is a mixture of prefill and decode.
MIXED = 2
class ModelRunner:
def __init__(
self,
model_config: ModelConfig,
parallel_config: ParallelConfig,
scheduler_config: SchedulerConfig,
device_config: DeviceConfig,
load_config: LoadConfig,
lora_config: Optional[LoRAConfig],
kv_cache_dtype: Optional[str] = "auto",
is_driver_worker: bool = False,
vision_language_config: Optional[VisionLanguageConfig] = None,
):
self.model_config = model_config
self.parallel_config = parallel_config
self.scheduler_config = scheduler_config
self.lora_config = lora_config
self.load_config = load_config
self.is_driver_worker = is_driver_worker
# model_config can be None in tests/samplers/test_sampler.py.
# FIXME(woosuk): This is a hack to make the tests work. Refactor this.
self.sliding_window = (model_config.get_sliding_window()
if model_config is not None else None)
self.device_config = (device_config
if device_config is not None else DeviceConfig())
self.device = self.device_config.device
# Set after load_model.
self.lora_manager: LRUCacheWorkerLoRAManager = None
self.graph_runners: Dict[int, CUDAGraphRunner] = {}
self.graph_memory_pool: Optional[Tuple[
int, int]] = None # Set during graph capture.
self.max_context_len_to_capture = (
self.model_config.max_context_len_to_capture
if self.model_config is not None else 0)
self.pin_memory = is_pin_memory_available()
self.kv_cache_dtype = kv_cache_dtype
self.vision_language_config = vision_language_config
self.attn_backend = get_attn_backend(
self.model_config.dtype if model_config is not None else None)
# Lazy initialization
self.model: torch.nn.Module # Set after load_model
self.block_size: int # Set after initial profiling.
# When using CUDA graph, the input block tables must be padded to
# max_context_len_to_capture. However, creating the block table in
# Python can be expensive. To optimize this, we cache the block table
# in numpy and only copy the actual input content at every iteration.
# The shape of the cached block table will be
# (max batch size to capture, max context len to capture / block size).
self.graph_block_tables: torch.Tensor # Set after initial profiling.
def load_model(self, args) -> None:
with CudaMemoryProfiler() as m:
precision = {'none': torch.float32, 'bf16': torch.bfloat16, 'fp16': torch.float16}[args.precision]
latent_size = args.image_size // args.downsample_size
gpt_model = GPT_models[args.gpt_model](
vocab_size=args.codebook_size,
block_size=latent_size ** 2,
num_classes=args.num_classes,
cls_token_num=args.cls_token_num,
model_type=args.gpt_type,
cfg_scale=args.cfg_scale,
).to(device='cuda', dtype=precision) # TODO: make device configurable
checkpoint = torch.load(args.gpt_ckpt, map_location="cpu")
if args.from_fsdp: # fspd
model_weight = checkpoint
elif "model" in checkpoint: # ddp
model_weight = checkpoint["model"]
elif "state_dict" in checkpoint:
model_weight = checkpoint["state_dict"]
else:
raise Exception("please check model weight")
gpt_model.custom_load_state_dict(model_weight)
gpt_model.eval()
del checkpoint
self.model = gpt_model
self.model_memory_usage = m.consumed_memory
logger.info(f"Loading model weights took "
f"{self.model_memory_usage / float(2**30):.4f} GB")
if self.lora_config:
assert hasattr(self.model, "supported_lora_modules"
) and self.model.supported_lora_modules, (
"Model does not support LoRA")
assert hasattr(
self.model,
"embedding_modules"), "Model does not have embedding_modules"
assert hasattr(self.model, "embedding_padding_modules"
), "Model does not have embedding_padding_modules"
self.lora_manager = LRUCacheWorkerLoRAManager(
self.scheduler_config.max_num_seqs,
self.scheduler_config.max_num_batched_tokens, self.vocab_size,
self.lora_config, self.device, self.model.embedding_modules,
self.model.embedding_padding_modules)
self.model = self.lora_manager.create_lora_manager(self.model)
if self.kv_cache_dtype == "fp8" and is_hip():
# Currently scaled KV cache is only enabled on ROCm
if self.model_config.quantization_param_path is not None:
if callable(getattr(self.model, "load_kv_cache_scales", None)):
self.model.load_kv_cache_scales(
self.model_config.quantization_param_path)
else:
raise RuntimeError("Using FP8 KV cache and scaling "
"factors provided but model "
f"{self.model.__class__} does not "
"support loading scaling factors.")
else:
logger.warn("Using FP8 KV cache but no scaling factors "
"provided. Defaulting to scaling factors of 1.0. "
"This may lead to less accurate results!")
elif self.model_config.quantization_param_path is not None:
logger.warn("KV cache scaling factors provided, "
"but the KV cache data type is not FP8. "
"KV cache scaling factors will not be used.")
def set_block_size(self, block_size: int) -> None:
self.block_size = block_size
self.graph_block_tables = np.zeros(
(max(_BATCH_SIZES_TO_CAPTURE), self.get_max_block_per_batch()),
dtype=np.int32)
def get_max_block_per_batch(self) -> int:
block_size = self.block_size
return (self.max_context_len_to_capture + block_size - 1) // block_size
def _prepare_prompt(
self,
seq_group_metadata_list: List[SequenceGroupMetadata],
) -> PreparePromptMetadata:
input_tokens: List[int] = []
input_positions: List[int] = []
slot_mapping: List[int] = []
lora_index_mapping: List[int] = []
lora_prompt_mapping: List[int] = []
lora_requests: Set[LoRARequest] = set()
prompt_lens: List[int] = []
context_lens: List[int] = []
subquery_lens: List[int] = []
prefix_block_tables: List[List[int]] = []
multi_modal_input_list: List[torch.Tensor] = []
if len(seq_group_metadata_list) == 0:
return PreparePromptMetadata.empty()
for seq_group_metadata in seq_group_metadata_list:
assert seq_group_metadata.is_prompt
seq_ids = list(seq_group_metadata.seq_data.keys())
assert len(seq_ids) == 1
seq_id = seq_ids[0]
computed_block_nums = seq_group_metadata.computed_block_nums
if (self.scheduler_config is not None
and self.scheduler_config.chunked_prefill_enabled
and not (computed_block_nums is None
or computed_block_nums == [])):
raise RuntimeError(
"chunked prefill cannot be used with prefix caching "
"now.")
token_chunk_size = seq_group_metadata.token_chunk_size
seq_data = seq_group_metadata.seq_data[seq_id]
computed_len = seq_data.get_num_computed_tokens()
# We should use get_len here because in case of preemption
# it contains output tokens.
prefill_end = min(seq_data.get_len(),
computed_len + token_chunk_size)
prompt_tokens = seq_data.get_token_ids()[computed_len:prefill_end]
prompt_len = prefill_end
prompt_lens.append(prompt_len)
# NOTE: This only works for oooooooxxx style attention.
if computed_block_nums is not None and len(
computed_block_nums) > 0 and self.sliding_window is None:
# Prefix is not supported with sliding_window
computed_len = len(computed_block_nums) * self.block_size
prompt_tokens = prompt_tokens[computed_len:]
prefix_block_tables.append(computed_block_nums)
elif self.scheduler_config.chunked_prefill_enabled:
if seq_group_metadata.block_tables is not None:
# Prefill has chunked before.
block_table = seq_group_metadata.block_tables[seq_id]
prefix_block_tables.append(block_table)
else:
# The first prefill.
prefix_block_tables.append([])
else:
prefix_block_tables.append([])
# Right now, prefill start is always 0. However, this
# assumption can be changed once chunked prefill is introduced.
assert computed_len == 0
# actual prompt lens
context_lens.append(computed_len)
subquery_lens.append(prompt_len - computed_len)
input_tokens.extend(prompt_tokens)
# NOTE(woosuk): Here we assume that the first token in the prompt
# is always the first token in the sequence.
input_positions.extend(list(range(computed_len, prefill_end)))
lora_id = seq_group_metadata.lora_int_id
if lora_id > 0:
lora_requests.add(seq_group_metadata.lora_request)
lora_index_mapping += [lora_id] * (prompt_len - computed_len)
lora_prompt_mapping.extend(
[lora_id] *
(prompt_len - computed_len
if seq_group_metadata.sampling_params.prompt_logprobs else 1))
if seq_group_metadata.multi_modal_data:
multi_modal_input_list.append(
seq_group_metadata.multi_modal_data.data)
if seq_group_metadata.block_tables is None:
# During memory profiling, the block tables are not initialized
# yet. In this case, we just use a dummy slot mapping.
slot_mapping.extend([_PAD_SLOT_ID] * prompt_len)
continue
# Compute the slot mapping.
block_table = seq_group_metadata.block_tables[seq_id]
# Mask the [0, start_idx) tokens of the prompt with _PAD_SLOT_ID,
# where start_idx is max(0, prompt_len - sliding_window).
# For example, if the prompt len is 10, sliding window is 8, and
# block size is 4, the first two tokens are masked and the slot
# mapping will be [-1, -1, 2, 3, 4, 5, 6, 7, 0, 1].
start_idx = 0
if self.sliding_window is not None:
assert computed_len == 0, (
"Prefix caching is currently not supported with "
"sliding window attention")
start_idx = max(0, prompt_len - self.sliding_window)
for i in range(computed_len, prefill_end):
if i < start_idx:
slot_mapping.append(_PAD_SLOT_ID)
continue
block_number = block_table[i // self.block_size]
block_offset = i % self.block_size
slot = block_number * self.block_size + block_offset
slot_mapping.append(slot)
max_subquery_len = max(subquery_lens)
max_prompt_len = max(prompt_lens)
assert max_subquery_len > 0
context_lens_tensor = torch.tensor(context_lens,
dtype=torch.int,
device=self.device)
if multi_modal_input_list:
assert self.vision_language_config, (
"Multi-modal inputs are only supported by "
"vision language models.")
multi_modal_input = torch.cat(multi_modal_input_list,
dim=0).to(self.device)
else:
multi_modal_input = None
# Prepare prefix block tables
max_prompt_block_table_len = max(len(t) for t in prefix_block_tables)
block_tables = make_tensor_with_pad(
prefix_block_tables,
max_len=max_prompt_block_table_len,
pad=0,
dtype=torch.int,
device=self.device,
)
# Query length can be shorter than key (i.e., prompt) when prefill
# is chunked or prefix cached.
subquery_lens_tensor = torch.tensor(subquery_lens,
dtype=torch.long,
device=self.device)
subquery_start_loc = torch.zeros(subquery_lens_tensor.shape[0] + 1,
dtype=torch.int32,
device=self.device)
prompt_lens_tensor = torch.tensor(prompt_lens,
dtype=torch.long,
device=self.device)
seq_start_loc = torch.zeros(prompt_lens_tensor.shape[0] + 1,
dtype=torch.int32,
device=self.device)
torch.cumsum(subquery_lens_tensor,
dim=0,
dtype=subquery_start_loc.dtype,
out=subquery_start_loc[1:])
torch.cumsum(prompt_lens_tensor,
dim=0,
dtype=seq_start_loc.dtype,
out=seq_start_loc[1:])
attn_metadata = self.attn_backend.make_metadata(
is_prompt=True,
prompt_lens=prompt_lens,
prompt_lens_tensor=prompt_lens_tensor,
max_subquery_len=max_subquery_len,
max_context_len=None,
max_prompt_len=max_prompt_len,
subquery_start_loc=subquery_start_loc,
seq_start_loc=seq_start_loc,
context_lens=context_lens_tensor,
block_tables=block_tables,
use_cuda_graph=False,
)
return PreparePromptMetadata(
input_tokens=input_tokens,
input_positions=input_positions,
attn_metadata=attn_metadata,
prompt_lens=prompt_lens,
subquery_lens=subquery_lens,
lora_index_mapping=lora_index_mapping,
lora_prompt_mapping=lora_prompt_mapping,
lora_requests=lora_requests,
multi_modal_input=multi_modal_input,
slot_mapping=slot_mapping,
)
def _prepare_decode(
self,
seq_group_metadata_list: List[SequenceGroupMetadata],
) -> PrepareDecodeMetadata:
input_tokens: List[int] = []
input_positions: List[int] = []
slot_mapping: List[int] = []
context_lens: List[int] = []
block_tables: List[List[int]] = []
lora_index_mapping: List[int] = []
lora_prompt_mapping: List[int] = []
lora_requests: Set[LoRARequest] = set()
if len(seq_group_metadata_list) == 0:
return PrepareDecodeMetadata.empty()
for seq_group_metadata in seq_group_metadata_list:
assert not seq_group_metadata.is_prompt
assert seq_group_metadata.token_chunk_size == 1
seq_ids = list(seq_group_metadata.seq_data.keys())
lora_id = seq_group_metadata.lora_int_id
if lora_id > 0:
lora_requests.add(seq_group_metadata.lora_request)
for seq_id in seq_ids:
seq_data = seq_group_metadata.seq_data[seq_id]
generation_token = seq_data.get_last_token_id()
input_tokens.append(generation_token)
seq_len = seq_data.get_len()
position = seq_len - 1
input_positions.append(position)
context_len = seq_len if self.sliding_window is None else min(
seq_len, self.sliding_window)
context_lens.append(context_len)
block_table = seq_group_metadata.block_tables[seq_id]
block_number = block_table[position // self.block_size]
block_offset = position % self.block_size
slot = block_number * self.block_size + block_offset
slot_mapping.append(slot)
lora_index_mapping.append(lora_id)
lora_prompt_mapping.append(lora_id)
if self.sliding_window is not None:
sliding_window_blocks = (self.sliding_window //
self.block_size)
block_table = block_table[-sliding_window_blocks:]
block_tables.append(block_table)
# vLLM uses cuda graph only for decoding requests.
# See `capture_model` API for more details.
# For decoding requests, batch_size == input_tokens.
batch_size = len(input_tokens)
max_context_len = max(context_lens)
use_captured_graph = (
not self.model_config.enforce_eager
and batch_size <= _BATCH_SIZES_TO_CAPTURE[-1]
and max_context_len <= self.max_context_len_to_capture)
if use_captured_graph:
graph_batch_size = _get_graph_batch_size(batch_size)
assert graph_batch_size >= batch_size
for _ in range(graph_batch_size - batch_size):
input_tokens.append(0)
input_positions.append(0)
slot_mapping.append(_PAD_SLOT_ID)
context_lens.append(1)
block_tables.append([])
lora_index_mapping.append(0)
batch_size = graph_batch_size
context_lens_tensor = torch.tensor(context_lens,
dtype=torch.int,
device=self.device)
if use_captured_graph:
# When using cuda-graph all these tensors should be
# padded.
assert context_lens_tensor.shape[0] == len(input_tokens)
assert context_lens_tensor.shape[0] == len(input_positions)
assert context_lens_tensor.shape[0] == len(slot_mapping)
# The shape of graph_block_tables is
# [max batch size, max context len // block size].
input_block_tables = self.graph_block_tables[:batch_size]
for i, block_table in enumerate(block_tables):
if block_table:
input_block_tables[i, :len(block_table)] = block_table
block_tables = torch.tensor(input_block_tables, device=self.device)
else:
max_block_table_len = max(
len(block_table) for block_table in block_tables)
block_tables = make_tensor_with_pad(
block_tables,
max_len=max_block_table_len,
pad=0,
dtype=torch.int,
device=self.device,
)
attn_metadata = self.attn_backend.make_metadata(
is_prompt=False,
prompt_lens=None,
prompt_lens_tensor=None,
max_subquery_len=None,
max_context_len=max_context_len,
max_prompt_len=None,
subquery_start_loc=None,
seq_start_loc=None,
context_lens=context_lens_tensor,
block_tables=block_tables,
use_cuda_graph=use_captured_graph,
)
return PrepareDecodeMetadata(
input_tokens=input_tokens,
input_positions=input_positions,
attn_metadata=attn_metadata,
lora_index_mapping=lora_index_mapping,
lora_prompt_mapping=lora_prompt_mapping,
lora_requests=lora_requests,
slot_mapping=slot_mapping,
)
def _prepare_sample(
self,
seq_group_metadata_list: List[SequenceGroupMetadata],
prompt_lens: List[int],
subquery_lens: Optional[List[int]],
) -> SamplingMetadata:
seq_groups: List[Tuple[List[int], SamplingParams]] = []
selected_token_indices: List[int] = []
generators: List[torch.Generator] = []
selected_token_start_idx = 0
categorized_sample_indices: Dict[SamplingType,
List[Tuple[int, int]]] = {
t: []
for t in SamplingType
}
categorized_sample_indices_start_idx = 0
categorized_sampled_token_indices_start_idx = 0
for i, seq_group_metadata in enumerate(seq_group_metadata_list):
seq_ids = list(seq_group_metadata.seq_data.keys())
sampling_params = seq_group_metadata.sampling_params
seq_groups.append((seq_ids, sampling_params))
if seq_group_metadata.is_prompt:
assert len(seq_ids) == 1
assert subquery_lens is not None
subquery_len = subquery_lens[i]
if sampling_params.prompt_logprobs is not None:
# NOTE: prompt token positions do not need sample, skip
categorized_sample_indices_start_idx += subquery_len - 1
categorized_sample_indices[
sampling_params.sampling_type].append(
(categorized_sample_indices_start_idx,
categorized_sampled_token_indices_start_idx))
categorized_sample_indices_start_idx += 1
categorized_sampled_token_indices_start_idx += 1
if sampling_params.prompt_logprobs is not None:
selected_token_indices.extend(
range(selected_token_start_idx,
selected_token_start_idx + subquery_len - 1))
selected_token_indices.append(selected_token_start_idx +
subquery_len - 1)
selected_token_start_idx += subquery_len
if sampling_params.seed is not None:
seq_group_metadata.state.generator = torch.Generator(
device=self.device).manual_seed(sampling_params.seed)
else:
num_seqs = len(seq_ids)
selected_token_indices.extend(
range(selected_token_start_idx,
selected_token_start_idx + num_seqs))
selected_token_start_idx += num_seqs
categorized_sample_indices[
sampling_params.sampling_type].extend(
list(
zip(
range(
categorized_sample_indices_start_idx,
categorized_sample_indices_start_idx +
num_seqs),
range(
categorized_sampled_token_indices_start_idx,
categorized_sampled_token_indices_start_idx
+ num_seqs))))
categorized_sample_indices_start_idx += num_seqs
categorized_sampled_token_indices_start_idx += num_seqs
if sampling_params.seed is not None:
generators.append(seq_group_metadata.state.generator)
selected_token_indices = async_tensor_h2d(selected_token_indices,
dtype=torch.long,
target_device=self.device,
pin_memory=self.pin_memory)
categorized_sample_indices = {
t: maybe_expand_dim(
async_tensor_h2d(seq_ids,
dtype=torch.int,
target_device=self.device,
pin_memory=self.pin_memory), 2, 2)
for t, seq_ids in categorized_sample_indices.items()
}
seq_data: Dict[int, SequenceData] = {}
for seq_group_metadata in seq_group_metadata_list:
seq_data.update(seq_group_metadata.seq_data)
sampling_metadata = SamplingMetadata(
seq_groups=seq_groups,
seq_data=seq_data,
prompt_lens=prompt_lens,
selected_token_indices=selected_token_indices,
categorized_sample_indices=categorized_sample_indices,
generators=generators,
)
return sampling_metadata
def prepare_input_tensors(
self,
seq_group_metadata_list: List[SequenceGroupMetadata],
) -> Tuple[torch.Tensor, torch.Tensor, AttentionMetadata, SamplingMetadata,
Set[LoRARequest], LoRAMapping, torch.Tensor]:
if self.is_driver_worker:
prefill_reqs = []
decode_reqs = []
for seq_group_meta in seq_group_metadata_list:
if seq_group_meta.is_prompt:
prefill_reqs.append(seq_group_meta)
else:
decode_reqs.append(seq_group_meta)
# Prepare input tensors.
(
input_tokens,
input_positions,
prefill_attn_metadata,
prompt_lens,
subquery_lens,
lora_index_mapping,
lora_prompt_mapping,
lora_requests,
multi_modal_input,
slot_mapping,
) = self._prepare_prompt(prefill_reqs)
(
decode_input_tokens,
decode_input_positions,
decode_attn_metadata,
decode_lora_index_mapping,
decode_lora_prompt_mapping,
decode_lora_requests,
decode_slot_mapping,
) = self._prepare_decode(decode_reqs)
sampling_metadata = self._prepare_sample(seq_group_metadata_list,
prompt_lens,
subquery_lens)
if not self.scheduler_config.chunked_prefill_enabled:
assert (len(prefill_reqs) and len(decode_reqs)) == 0
num_prefills = len(prompt_lens)
num_prefill_tokens = len(input_tokens)
num_decode_tokens = len(decode_input_tokens)
# Coalesce tensors. Note that attn_metadata is currently not
# coalesced for simplicity.
input_tokens.extend(decode_input_tokens)
input_positions.extend(decode_input_positions)
slot_mapping.extend(decode_slot_mapping)
lora_index_mapping.extend(decode_lora_index_mapping)
lora_prompt_mapping.extend(decode_lora_prompt_mapping)
lora_requests.update(decode_lora_requests)
input_tokens = torch.tensor(input_tokens,
dtype=torch.long,
device=self.device)
input_positions = torch.tensor(input_positions,
dtype=torch.long,
device=self.device)
slot_mapping = torch.tensor(slot_mapping,
dtype=torch.long,
device=self.device)
if self.lora_config:
lora_mapping = LoRAMapping(
lora_index_mapping,
lora_prompt_mapping,
)
else:
lora_mapping = None
# Broadcast the metadata.
# If batch contains both prefill and decode, it sends 2 broadcasts.
# If it only contains 1 type, it triggers a single broadcast.
if (prefill_attn_metadata is not None
and decode_attn_metadata is not None):
batch_type = BatchType.MIXED
elif prefill_attn_metadata is not None:
batch_type = BatchType.PREFILL
else:
batch_type = BatchType.DECODE
metadata_dict = {
"input_tokens": input_tokens,
"input_positions": input_positions,
"selected_token_indices":
sampling_metadata.selected_token_indices,
"lora_requests": lora_requests,
"lora_mapping": lora_mapping,
"multi_modal_input": multi_modal_input,
"num_prefill_tokens": num_prefill_tokens,
"num_decode_tokens": num_decode_tokens,
"slot_mapping": slot_mapping,
"num_prefills": num_prefills,
"batch_type": batch_type,
}
if prefill_attn_metadata is not None:
metadata_dict.update(prefill_attn_metadata.asdict_zerocopy())
else:
assert decode_attn_metadata is not None
metadata_dict.update(decode_attn_metadata.asdict_zerocopy())
broadcast_tensor_dict(metadata_dict, src=0)
# Broadcast decode attn metadata for mixed batch type.
# The additional broadcast costs 300us overhead on 4 A10 GPUs.
# We can potentially reduce the overhead by coelescing tensors.
if batch_type == BatchType.MIXED:
assert decode_attn_metadata is not None
metadata_dict = decode_attn_metadata.asdict_zerocopy()
broadcast_tensor_dict(metadata_dict, src=0)
else:
metadata_dict = broadcast_tensor_dict(src=0)
input_tokens = metadata_dict.pop("input_tokens")
input_positions = metadata_dict.pop("input_positions")
slot_mapping = metadata_dict.pop("slot_mapping")
num_prefills = metadata_dict.pop("num_prefills")
selected_token_indices = metadata_dict.pop(
"selected_token_indices")
lora_mapping = metadata_dict.pop("lora_mapping")
lora_requests = metadata_dict.pop("lora_requests")
multi_modal_input = metadata_dict.pop("multi_modal_input")
num_prefill_tokens = metadata_dict.pop("num_prefill_tokens")
num_decode_tokens = metadata_dict.pop("num_decode_tokens")
batch_type = metadata_dict.pop("batch_type")
# Create an attention metadata.
prefill_attn_metadata = None
decode_attn_metadata = None
if batch_type == BatchType.PREFILL or batch_type == BatchType.MIXED:
prefill_attn_metadata = self.attn_backend.make_metadata(
**metadata_dict)
else:
decode_attn_metadata = self.attn_backend.make_metadata(
**metadata_dict)
sampling_metadata = SamplingMetadata(
seq_groups=None,
seq_data=None,
prompt_lens=None,
selected_token_indices=selected_token_indices,
categorized_sample_indices=None,
generators=None,
perform_sampling=False,
)
# if it is a mixed batch, decode attn_metadata is broadcasted
# separately.
if batch_type == BatchType.MIXED:
metadata_dict = broadcast_tensor_dict(src=0)
decode_attn_metadata = self.attn_backend.make_metadata(
**metadata_dict)
attn_metadata = AttentionMetadata(
num_prefills=num_prefills,
slot_mapping=slot_mapping,
num_prefill_tokens=num_prefill_tokens,
num_decode_tokens=num_decode_tokens,
prefill_metadata=prefill_attn_metadata,
decode_metadata=decode_attn_metadata,
kv_cache_dtype=self.kv_cache_dtype,
)
return (input_tokens, input_positions, attn_metadata,
sampling_metadata, lora_requests, lora_mapping,
multi_modal_input)
@torch.inference_mode()
def execute_model(
self,
seq_group_metadata_list: List[SequenceGroupMetadata],
kv_caches: List[torch.Tensor],
) -> Optional[SamplerOutput]:
(input_tokens, input_positions, attn_metadata, sampling_metadata,
lora_requests, lora_mapping, multi_modal_input
) = self.prepare_input_tensors(seq_group_metadata_list)
if self.lora_config:
self.set_active_loras(lora_requests, lora_mapping)
# Currently cuda graph is only supported by the decode phase.
prefill_meta = attn_metadata.prefill_metadata
decode_meta = attn_metadata.decode_metadata
if prefill_meta is None and decode_meta.use_cuda_graph:
graph_batch_size = input_tokens.shape[0]
model_executable = self.graph_runners[graph_batch_size]
else:
model_executable = self.model
execute_model_kwargs = {
"input_ids": input_tokens,
"positions": input_positions,
"kv_caches": kv_caches,
"attn_metadata": attn_metadata,
}
if self.vision_language_config:
execute_model_kwargs.update({"image_input": multi_modal_input})
hidden_states = model_executable(**execute_model_kwargs)
# Compute the logits.
logits = self.model.compute_logits(hidden_states, sampling_metadata)
# Only perform sampling in the driver worker.
if not sampling_metadata.perform_sampling:
return None
# Sample the next token.
output = self.model.sample(
logits=logits,
sampling_metadata=sampling_metadata,
)
return output
@torch.inference_mode()
def profile_run(self) -> None:
# Enable top-k sampling to reflect the accurate memory usage.
sampling_params = SamplingParams(top_p=0.99, top_k=self.vocab_size - 1)
max_num_batched_tokens = self.scheduler_config.max_num_batched_tokens
max_num_seqs = self.scheduler_config.max_num_seqs
# This represents the maximum number of different requests
# that will have unique loras, an therefore the max amount of memory
# consumption create dummy lora request copies from the lora request
# passed in, which contains a lora from the lora warmup path.
dummy_lora_requests = []
dummy_lora_requests_per_seq = []
if self.lora_config:
for idx in range(self.lora_config.max_loras):
lora_id = idx + 1
dummy_lora_request = LoRARequest(
lora_name=f"warmup_{lora_id}",
lora_int_id=lora_id,
lora_local_path="/not/a/real/path",
)
self.lora_manager.add_dummy_lora(dummy_lora_request,
rank=LORA_WARMUP_RANK)
dummy_lora_requests.append(dummy_lora_request)
dummy_lora_requests_per_seq = [
dummy_lora_requests[idx % len(dummy_lora_requests)]
for idx in range(max_num_seqs)
]
# Profile memory usage with max_num_sequences sequences and the total
# number of tokens equal to max_num_batched_tokens.
seqs: List[SequenceGroupMetadata] = []
# Additional GPU memory may be needed for vision encoding, which needs
# to be accounted for when calculating the GPU blocks for
# vLLM blocker manager.
# To exercise the worst scenario for GPU memory consumption,
# the number of seqs (batch_size) is chosen to maximize the number
# of images processed.
if self.vision_language_config:
max_num_seqs = min(
max_num_seqs,
int(max_num_batched_tokens /
self.vision_language_config.image_feature_size))
for group_id in range(max_num_seqs):
seq_len = (max_num_batched_tokens // max_num_seqs +
(group_id < max_num_batched_tokens % max_num_seqs))
seq_data, fake_multi_modal_input = _prepare_fake_inputs(
seq_len, self.vision_language_config)
seq = SequenceGroupMetadata(
request_id=str(group_id),
is_prompt=True,
seq_data={group_id: seq_data},
sampling_params=sampling_params,
block_tables=None,
lora_request=dummy_lora_requests_per_seq[group_id]
if dummy_lora_requests_per_seq else None,
multi_modal_data=fake_multi_modal_input,
)
seqs.append(seq)
# Run the model with the dummy inputs.
num_layers = self.model_config.get_num_layers(self.parallel_config)
kv_caches = [None] * num_layers
self.execute_model(seqs, kv_caches)
torch.cuda.synchronize()
return
def remove_all_loras(self) -> bool:
if not self.lora_manager:
raise RuntimeError("LoRA is not enabled.")
return self.lora_manager.remove_all_loras()
def set_active_loras(self, lora_requests: Set[LoRARequest],
lora_mapping: LoRAMapping) -> None:
if not self.lora_manager:
raise RuntimeError("LoRA is not enabled.")
self.lora_manager.set_active_loras(lora_requests, lora_mapping)
def add_lora(self, lora_request: LoRARequest) -> bool:
if not self.lora_manager:
raise RuntimeError("LoRA is not enabled.")
return self.lora_manager.add_lora(lora_request)
def remove_lora(self, lora_id: int) -> bool:
if not self.lora_manager:
raise RuntimeError("LoRA is not enabled.")
return self.lora_manager.remove_lora(lora_id)
def list_loras(self) -> Set[int]:
if not self.lora_manager:
raise RuntimeError("LoRA is not enabled.")
return self.lora_manager.list_loras()
@torch.inference_mode()
def capture_model(self, kv_caches: List[torch.Tensor]) -> None:
"""Cuda graph capture a model.
Note that CUDA graph's performance gain is negligible if number
of batched tokens are larger than 200. And since CUDA graph
requires fixed sized tensors, supporting large/variable batch
size requires high GPU memory overhead. Thus, vLLM only captures
decoding requests. Mixed batch (chunked prefill + decoding) or
prefill requests are not captured.
Since it is used for decoding-only, it assumes there's only 1 token
per sequence in the batch.
"""
# NOTE(woosuk): This is a hack to ensure that the NCCL backend is never
# deleted before the CUDA graphs.
self.pynccl_backend = pynccl_utils.get_nccl_backend()
assert not self.model_config.enforce_eager
logger.info("Capturing the model for CUDA graphs. This may lead to "
"unexpected consequences if the model is not static. To "
"run the model in eager mode, set 'enforce_eager=True' or "
"use '--enforce-eager' in the CLI.")
logger.info("CUDA graphs can take additional 1~3 GiB memory per GPU. "
"If you are running out of memory, consider decreasing "
"`gpu_memory_utilization` or enforcing eager mode. "
"You can also reduce the `max_num_seqs` as needed "
"to decrease memory usage.")
start_time = time.perf_counter()
# Prepare dummy inputs. These will be reused for all batch sizes.
max_batch_size = max(_BATCH_SIZES_TO_CAPTURE)
input_tokens = torch.zeros(max_batch_size, dtype=torch.long).cuda()
input_positions = torch.zeros(max_batch_size, dtype=torch.long).cuda()
slot_mapping = torch.empty(max_batch_size, dtype=torch.long).cuda()
slot_mapping.fill_(_PAD_SLOT_ID)
context_lens = torch.ones(max_batch_size, dtype=torch.int32).cuda()
block_tables = torch.from_numpy(self.graph_block_tables).cuda()
graph_batch_size = _get_graph_batch_size(
self.scheduler_config.max_num_seqs)
batch_size_capture_list = [
bs for bs in _BATCH_SIZES_TO_CAPTURE if bs <= graph_batch_size
]
# NOTE(woosuk): There are 3 backends for all-reduce: custom all-reduce
# kernel, pynccl, and PyTorch NCCL. When using CUDA graph, we use
# either custom all-reduce kernel or pynccl. When not using CUDA
# graph, we use either custom all-reduce kernel or PyTorch NCCL.
# We always prioritize using custom all-reduce kernel but fall back
# to PyTorch or pynccl if it is disabled or not supported.
with custom_all_reduce.capture():
# NOTE: Capturing the largest batch size first may help reduce the
# memory usage of CUDA graph.
for batch_size in reversed(batch_size_capture_list):
# Create dummy attn_metadata.
decode_metadata = self.attn_backend.make_metadata(
is_prompt=False,
prompt_lens=None,
prompt_lens_tensor=None,
max_subquery_len=None,
max_context_len=self.max_context_len_to_capture,
max_prompt_len=None,
subquery_start_loc=None,
seq_start_loc=None,
context_lens=context_lens[:batch_size],
block_tables=block_tables[:batch_size],
use_cuda_graph=True,
)
attn_metadata = AttentionMetadata(
num_prefills=0,
num_prefill_tokens=0,
num_decode_tokens=batch_size,
slot_mapping=slot_mapping[:batch_size],
prefill_metadata=None,
decode_metadata=decode_metadata,
kv_cache_dtype=self.kv_cache_dtype,
)
if self.lora_config:
lora_mapping = LoRAMapping(
[0] * batch_size,
[0] * batch_size,
)
self.set_active_loras(set(), lora_mapping)
graph_runner = CUDAGraphRunner(self.model)
graph_runner.capture(
input_tokens[:batch_size],
input_positions[:batch_size],
kv_caches,
attn_metadata,
memory_pool=self.graph_memory_pool,
)
self.graph_memory_pool = graph_runner.graph.pool()
self.graph_runners[batch_size] = graph_runner
end_time = time.perf_counter()
elapsed_time = end_time - start_time
# This usually takes < 10 seconds.
logger.info(f"Graph capturing finished in {elapsed_time:.0f} secs.")
def __del__(self) -> None:
# Delete the CUDA graphs before deleting the pynccl communicator.
# NOTE(woosuk): This is necessary because otherwise deadlocks can
# happen.
# FIXME(woosuk): This is a bit hacky. Find a more robust solution.
# TODO(youkaichao): when we get enough user feedback that pynccl is
# more stable than cupy, we can remove this, e.g. in v0.4.1.
self.graph_runners.clear()
self.pynccl_backend = None
@property
def vocab_size(self) -> int:
return self.model_config.get_vocab_size()
class CUDAGraphRunner:
def __init__(self, model: nn.Module):
self.model = model
self.input_buffers: Dict[str, torch.Tensor] = {}
self.output_buffers: Dict[str, torch.Tensor] = {}
self._graph: Optional[torch.cuda.CUDAGraph] = None
@property
def graph(self):
assert self._graph is not None
return self._graph
def capture(
self,
input_ids: torch.Tensor,
positions: torch.Tensor,
kv_caches: List[torch.Tensor],
attn_metadata: AttentionMetadata,
memory_pool,
**kwargs,
) -> None:
assert self._graph is None
# Run the model once without capturing the graph.
# This is to make sure that the captured graph does not include the
# kernel launches for initial benchmarking (e.g., Triton autotune).
with _maybe_pynccl():
self.model(
input_ids,
positions,
kv_caches,
attn_metadata,
**kwargs,
)
torch.cuda.synchronize()
# Capture the graph.
# NOTE(woosuk): Python 3.8 does not support multi-line with statements.
# https://stackoverflow.com/questions/31039022/python-multi-line-with-statement
self._graph = torch.cuda.CUDAGraph()
with torch.cuda.graph(self._graph, pool=memory_pool): # noqa: SIM117
with _maybe_pynccl():
hidden_states = self.model(
input_ids,
positions,
kv_caches,
attn_metadata,
**kwargs,
)
torch.cuda.synchronize()
# Save the input and output buffers.
self.input_buffers = {
"input_ids": input_ids,
"positions": positions,
"kv_caches": kv_caches,
"slot_mapping": attn_metadata.slot_mapping,
"context_lens": attn_metadata.decode_metadata.context_lens,
"block_tables": attn_metadata.decode_metadata.block_tables,
}
self.output_buffers = {"hidden_states": hidden_states}
return
def forward(
self,
input_ids: torch.Tensor,
positions: torch.Tensor,
kv_caches: List[torch.Tensor],
attn_metadata: AttentionMetadata,
**kwargs,
) -> torch.Tensor:
# KV caches are fixed tensors, so we don't need to copy them.
del kv_caches
# Copy the input tensors to the input buffers.
self.input_buffers["input_ids"].copy_(input_ids, non_blocking=True)
self.input_buffers["positions"].copy_(positions, non_blocking=True)
self.input_buffers["slot_mapping"].copy_(attn_metadata.slot_mapping,
non_blocking=True)
self.input_buffers["context_lens"].copy_(
attn_metadata.decode_metadata.context_lens, non_blocking=True)
self.input_buffers["block_tables"].copy_(
attn_metadata.decode_metadata.block_tables, non_blocking=True)
# Run the graph.
self.graph.replay()
# Return the output tensor.
return self.output_buffers["hidden_states"]
def __call__(self, *args, **kwargs):
return self.forward(*args, **kwargs)
@contextlib.contextmanager
def _maybe_pynccl():
if pynccl_utils.is_initialized(
) and not custom_all_reduce.is_initialized():
with with_pynccl_for_all_reduce():
yield
else:
yield
def _get_graph_batch_size(batch_size: int) -> int:
"""Returns the padded batch size given actual batch size.
Batch sizes are 1, 2, 4, _BATCH_SIZE_ALIGNMENT,
2*_BATCH_SIZE_ALIGNMENT, 3*_BATCH_SIZE_ALIGNMENT...
"""
if batch_size <= 2:
return batch_size
elif batch_size <= 4:
return 4
else:
return ((batch_size + _BATCH_SIZE_ALIGNMENT - 1) //
_BATCH_SIZE_ALIGNMENT * _BATCH_SIZE_ALIGNMENT)
def _prepare_fake_inputs(
seq_len: int, vision_language_config: Optional[VisionLanguageConfig]):
"""Prepare fake inputs for profile run."""
if vision_language_config:
prompt_tokens = [
vision_language_config.image_token_id
] * vision_language_config.image_feature_size + [0] * (
seq_len - vision_language_config.image_feature_size)
fake_image_input = MultiModalData(
type=MultiModalData.Type.IMAGE,
data=torch.zeros(vision_language_config.image_input_shape,
dtype=torch.float16))
else:
prompt_tokens = [0] * seq_len
fake_image_input = None
return SequenceData(prompt_tokens), fake_image_input