vllm/vllm/config.py

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# SPDX-License-Identifier: Apache-2.0
import ast
import copy
import enum
import hashlib
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import json
import sys
import warnings
from contextlib import contextmanager
from dataclasses import dataclass, field, replace
from pathlib import Path
from typing import (TYPE_CHECKING, Any, Callable, ClassVar, Counter, Dict,
Final, List, Literal, Mapping, Optional, Protocol, Set,
Tuple, Type, Union)
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import torch
from pydantic import BaseModel, Field, PrivateAttr
from transformers import PretrainedConfig
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import vllm.envs as envs
from vllm.compilation.inductor_pass import CallableInductorPass, InductorPass
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from vllm.logger import init_logger
from vllm.model_executor.layers.quantization import (QUANTIZATION_METHODS,
get_quantization_config)
from vllm.model_executor.models import ModelRegistry
from vllm.platforms import CpuArchEnum
from vllm.tracing import is_otel_available, otel_import_error_traceback
from vllm.transformers_utils.config import (
ConfigFormat, get_config, get_hf_image_processor_config,
get_hf_text_config, get_pooling_config,
get_sentence_transformer_tokenizer_config, is_encoder_decoder,
try_get_generation_config, uses_mrope)
from vllm.transformers_utils.s3_utils import S3Model
from vllm.transformers_utils.utils import is_s3
from vllm.utils import (GiB_bytes, LayerBlockType, cuda_device_count_stateless,
get_cpu_memory, random_uuid, resolve_obj_by_qualname)
if TYPE_CHECKING:
from ray.util.placement_group import PlacementGroup
from vllm.executor.executor_base import ExecutorBase
from vllm.model_executor.layers.quantization.base_config import (
QuantizationConfig)
from vllm.model_executor.model_loader.loader import BaseModelLoader
from vllm.transformers_utils.tokenizer_group.base_tokenizer_group import (
BaseTokenizerGroup)
else:
QuantizationConfig = None
logger = init_logger(__name__)
_POOLING_MODEL_MAX_NUM_BATCHED_TOKENS = 32768
_MULTIMODAL_MODEL_MAX_NUM_BATCHED_TOKENS = 5120
TaskOption = Literal["auto", "generate", "embedding", "embed", "classify",
"score", "reward"]
_ResolvedTask = Literal["generate", "embed", "classify", "score", "reward",
"draft"]
RunnerType = Literal["generate", "pooling", "draft"]
_RUNNER_TASKS: Dict[RunnerType, List[_ResolvedTask]] = {
"generate": ["generate"],
"pooling": ["embed", "classify", "score", "reward"],
"draft": ["draft"],
}
_TASK_RUNNER: Dict[_ResolvedTask, RunnerType] = {
task: runner
for runner, tasks in _RUNNER_TASKS.items()
for task in tasks
}
HfOverrides = Union[Dict[str, Any], Callable[[PretrainedConfig],
PretrainedConfig]]
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class SupportsHash(Protocol):
def compute_hash(self) -> str:
...
class ModelImpl(str, enum.Enum):
AUTO = "auto"
VLLM = "vllm"
TRANSFORMERS = "transformers"
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class ModelConfig:
"""Configuration for the model.
Args:
model: Name or path of the huggingface model to use.
It is also used as the content for `model_name` tag in metrics
output when `served_model_name` is not specified.
task: The task to use the model for. Each vLLM instance only supports
one task, even if the same model can be used for multiple tasks.
When the model only supports one task, "auto" can be used to select
it; otherwise, you must specify explicitly which task to use.
tokenizer: Name or path of the huggingface tokenizer to use.
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tokenizer_mode: Tokenizer mode. "auto" will use the fast tokenizer if
available, "slow" will always use the slow tokenizer,
"mistral" will always use the tokenizer from `mistral_common`, and
"custom" will use --tokenizer to select the preregistered tokenizer.
trust_remote_code: Trust remote code (e.g., from HuggingFace) when
downloading the model and tokenizer.
allowed_local_media_path: Allowing API requests to read local images or
videos from directories specified by the server file system.
This is a security risk. Should only be enabled in trusted
environments.
dtype: Data type for model weights and activations. The "auto" option
will use FP16 precision for FP32 and FP16 models, and BF16 precision
for BF16 models.
seed: Random seed for reproducibility.
revision: The specific model version to use. It can be a branch name,
a tag name, or a commit id. If unspecified, will use the default
version.
code_revision: The specific revision to use for the model code on
Hugging Face Hub. It can be a branch name, a tag name, or a
commit id. If unspecified, will use the default version.
tokenizer_revision: The specific tokenizer version to use. It can be a
branch name, a tag name, or a commit id. If unspecified, will use
the default version.
max_model_len: Maximum length of a sequence (including prompt and
output). If None, will be derived from the model.
spec_target_max_model_len: Specify the the maximum length for spec
decoding draft models.
quantization: Quantization method that was used to quantize the model
weights. If None, we assume the model weights are not quantized.
enforce_eager: Whether to enforce eager execution. If True, we will
disable CUDA graph and always execute the model in eager mode.
If False, we will use CUDA graph and eager execution in hybrid.
If None, the user did not specify, so default to False.
max_seq_len_to_capture: Maximum sequence len covered by CUDA graphs.
When a sequence has context length larger than this, we fall back
to eager mode. Additionally for encoder-decoder models, if the
sequence length of the encoder input is larger than this, we fall
back to the eager mode.
max_logprobs: Maximum number of log probabilities. Defaults to 20.
disable_sliding_window: Whether to disable sliding window. If True,
we will disable the sliding window functionality of the model.
If the model does not support sliding window, this argument is
ignored.
skip_tokenizer_init: If true, skip initialization of tokenizer and
detokenizer.
served_model_name: The model name used in metrics tag `model_name`,
matches the model name exposed via the APIs. If multiple model
names provided, the first name will be used. If not specified,
the model name will be the same as `model`.
limit_mm_per_prompt: Maximum number of data items per modality
per prompt. Only applicable for multimodal models.
use_async_output_proc: Whether to use async output processor.
Defaults to True.
config_format: The config format which shall be loaded.
Defaults to 'auto' which defaults to 'hf'.
hf_overrides: If a dictionary, contains arguments to be forwarded to the
HuggingFace config. If a callable, it is called to update the
HuggingFace config.
mm_processor_kwargs: Arguments to be forwarded to the model's processor
for multi-modal data, e.g., image processor.
disable_mm_preprocessor_cache: If true, then disables caching of the
multi-modal preprocessor/mapper. (not recommended)
override_neuron_config: Initialize non default neuron config or
override default neuron config that are specific to Neuron devices,
this argument will be used to configure the neuron config that
can not be gathered from the vllm arguments.
override_pooler_config: Initialize non default pooling config or
override default pooling config for the pooling model.
logits_processor_pattern: Optional regex pattern specifying valid
logits processor qualified names that can be passed with the
`logits_processors` extra completion argument. Defaults to None,
which allows no processors.
generation_config: Configuration parameter file for generation.
model_impl: Which implementation of the model to use:
"auto" will try to use the vLLM implementation if it exists and
fall back to the Transformers implementation if no vLLM
implementation is available.
"vllm" will use the vLLM model implementation.
"transformers" will use the Transformers model implementation.
override_generation_config: Override the generation config with the
given config.
"""
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def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
factors: List[Any] = []
factors.append(self.model)
factors.append(self.dtype)
factors.append(self.quantization)
factors.append(self.revision)
factors.append(self.code_revision)
factors.append(self.trust_remote_code)
factors.append(self.rope_scaling)
factors.append(self.rope_theta)
return hashlib.sha256(str(factors).encode()).hexdigest()
def __init__(
self,
model: str,
task: Union[TaskOption, Literal["draft"]],
tokenizer: str,
tokenizer_mode: str,
trust_remote_code: bool,
dtype: Union[str, torch.dtype],
seed: int,
allowed_local_media_path: str = "",
revision: Optional[str] = None,
code_revision: Optional[str] = None,
rope_scaling: Optional[Dict[str, Any]] = None,
rope_theta: Optional[float] = None,
tokenizer_revision: Optional[str] = None,
max_model_len: Optional[int] = None,
spec_target_max_model_len: Optional[int] = None,
quantization: Optional[str] = None,
enforce_eager: Optional[bool] = None,
max_seq_len_to_capture: Optional[int] = None,
max_logprobs: int = 20,
disable_sliding_window: bool = False,
skip_tokenizer_init: bool = False,
served_model_name: Optional[Union[str, List[str]]] = None,
limit_mm_per_prompt: Optional[Mapping[str, int]] = None,
use_async_output_proc: bool = True,
config_format: ConfigFormat = ConfigFormat.AUTO,
hf_overrides: Optional[HfOverrides] = None,
mm_processor_kwargs: Optional[Dict[str, Any]] = None,
disable_mm_preprocessor_cache: bool = False,
override_neuron_config: Optional[Dict[str, Any]] = None,
override_pooler_config: Optional["PoolerConfig"] = None,
logits_processor_pattern: Optional[str] = None,
generation_config: Optional[str] = None,
enable_sleep_mode: bool = False,
override_generation_config: Optional[Dict[str, Any]] = None,
model_impl: Union[str, ModelImpl] = ModelImpl.AUTO,
) -> None:
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self.model = model
self.tokenizer = tokenizer
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self.tokenizer_mode = tokenizer_mode
self.trust_remote_code = trust_remote_code
self.allowed_local_media_path = allowed_local_media_path
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self.seed = seed
self.revision = revision
self.code_revision = code_revision
self.rope_scaling = rope_scaling
self.rope_theta = rope_theta
self.model_impl = model_impl
if hf_overrides is None:
hf_overrides = {}
if callable(hf_overrides):
hf_overrides_kw = {}
hf_overrides_fn = hf_overrides
else:
hf_overrides_kw = hf_overrides
hf_overrides_fn = None
if rope_scaling is not None:
hf_override: Dict[str, Any] = {"rope_scaling": rope_scaling}
hf_overrides_kw.update(hf_override)
msg = ("`--rope-scaling` will be removed in a future release. "
f"'Please instead use `--hf-overrides '{hf_override!r}'`")
warnings.warn(DeprecationWarning(msg), stacklevel=2)
if rope_theta is not None:
hf_override = {"rope_theta": rope_theta}
hf_overrides_kw.update(hf_override)
msg = ("`--rope-theta` will be removed in a future release. "
f"'Please instead use `--hf-overrides '{hf_override!r}'`")
warnings.warn(DeprecationWarning(msg), stacklevel=2)
self.maybe_pull_model_tokenizer_for_s3(model, tokenizer)
# The tokenizer version is consistent with the model version by default.
if tokenizer_revision is None:
self.tokenizer_revision = revision
else:
self.tokenizer_revision = tokenizer_revision
self.quantization = quantization
self.enforce_eager = enforce_eager
self.max_seq_len_to_capture = max_seq_len_to_capture
self.max_logprobs = max_logprobs
self.disable_sliding_window = disable_sliding_window
self.skip_tokenizer_init = skip_tokenizer_init
self.enable_sleep_mode = enable_sleep_mode
from vllm.platforms import current_platform
if self.enable_sleep_mode and not current_platform.is_cuda():
raise ValueError("Sleep mode is only supported on CUDA devices.")
hf_config = get_config(self.model, trust_remote_code, revision,
code_revision, config_format)
if hf_overrides_kw:
logger.info("Overriding HF config with %s", hf_overrides_kw)
hf_config.update(hf_overrides_kw)
if hf_overrides_fn:
logger.info("Overriding HF config with %s", hf_overrides_fn)
hf_config = hf_overrides_fn(hf_config)
self.hf_config = hf_config
self.hf_text_config = get_hf_text_config(self.hf_config)
self.encoder_config = self._get_encoder_config()
self.hf_image_processor_config = get_hf_image_processor_config(
self.model, revision)
self.dtype = _get_and_verify_dtype(self.hf_text_config, dtype)
self.use_async_output_proc = use_async_output_proc
self.mm_processor_kwargs = mm_processor_kwargs
self.disable_mm_preprocessor_cache = disable_mm_preprocessor_cache
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# Set enforce_eager to False if the value is unset.
if self.enforce_eager is None:
self.enforce_eager = False
sliding_window = getattr(self.hf_text_config, "sliding_window", None)
has_interleaved_attention = (sliding_window is not None) and (
isinstance(sliding_window, list) or
(self.hf_text_config.model_type in ["gemma2", "cohere2"]))
if (not self.disable_sliding_window and has_interleaved_attention):
if (backend :=
envs.VLLM_ATTENTION_BACKEND) in ("XFORMERS", "FLASHINFER"):
sliding_window_len_min = get_min_sliding_window(
self.hf_text_config.sliding_window)
logger.warning_once(
f"{self.hf_text_config.model_type} has interleaved "
"attention, which is currently not supported by the "
f"{backend} backend. Disabling sliding window and capping "
"the max length to the sliding window size "
f"({sliding_window_len_min}).")
self.disable_sliding_window = True
else:
# for a model with interleaved attention,
# the scheduler and the model treat it as full attention
# (i.e., not dropping any tokens outside the window).
# only the attention layer itself is aware of the sliding
# window, and use the window size to compute the attention.
self.hf_text_config.interleaved_sliding_window = sliding_window
delattr(self.hf_text_config, "sliding_window")
sliding_window = None
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self.max_model_len = _get_and_verify_max_len(
hf_config=self.hf_text_config,
max_model_len=max_model_len,
disable_sliding_window=self.disable_sliding_window,
sliding_window_len=self.get_hf_config_sliding_window(),
spec_target_max_model_len=spec_target_max_model_len,
encoder_config=self.encoder_config)
self.served_model_name = get_served_model_name(model,
served_model_name)
self.multimodal_config = self._init_multimodal_config(
limit_mm_per_prompt)
if not self.skip_tokenizer_init:
self._verify_tokenizer_mode()
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self.is_attention_free = self._init_attention_free()
self.is_hybrid = self._init_is_hybrid()
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self.has_inner_state = self._init_has_inner_state()
if current_platform.is_neuron():
self.override_neuron_config = override_neuron_config
else:
self.override_neuron_config = None
supported_tasks, task = self._resolve_task(task, self.hf_config)
self.supported_tasks = supported_tasks
self.task: Final = task
if self.task in ("draft", "generate"):
self.truncation_side = "left"
else:
self.truncation_side = "right"
self.pooler_config = self._init_pooler_config(override_pooler_config)
self.logits_processor_pattern = logits_processor_pattern
self.generation_config = generation_config
self.override_generation_config = override_generation_config or {}
self._verify_quantization()
self._verify_cuda_graph()
self._verify_bnb_config()
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def maybe_pull_model_tokenizer_for_s3(self, model: str,
tokenizer: str) -> None:
"""
Pull the model config or tokenizer to a temporary
directory in case of S3.
Args:
model: The model name or path.
tokenizer: The tokenizer name or path.
"""
if is_s3(model) or is_s3(tokenizer):
if is_s3(model):
s3_model = S3Model()
s3_model.pull_files(model, allow_pattern=["*config.json"])
self.model_weights = self.model
self.model = s3_model.dir
if is_s3(tokenizer):
s3_tokenizer = S3Model()
s3_tokenizer.pull_files(
model, ignore_pattern=["*.pt", "*.safetensors", "*.bin"])
self.tokenizer = s3_tokenizer.dir
def _init_multimodal_config(
self, limit_mm_per_prompt: Optional[Mapping[str, int]]
) -> Optional["MultiModalConfig"]:
architectures = getattr(self.hf_config, "architectures", [])
if ModelRegistry.is_multimodal_model(architectures):
return MultiModalConfig(limit_per_prompt=limit_mm_per_prompt or {})
if limit_mm_per_prompt:
raise ValueError("`limit_mm_per_prompt` is only supported for "
"multimodal models.")
return None
def _get_encoder_config(self):
return get_sentence_transformer_tokenizer_config(
self.model, self.revision)
def _init_pooler_config(
self,
override_pooler_config: Optional["PoolerConfig"],
) -> Optional["PoolerConfig"]:
if self.runner_type == "pooling":
user_config = override_pooler_config or PoolerConfig()
base_config = get_pooling_config(self.model, self.revision)
if base_config is not None:
# Only set values that are not overridden by the user
for k, v in base_config.items():
if getattr(user_config, k) is None:
setattr(user_config, k, v)
return user_config
return None
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def _init_attention_free(self) -> bool:
architectures = getattr(self.hf_config, "architectures", [])
return ModelRegistry.is_attention_free_model(architectures)
def _init_is_hybrid(self) -> bool:
architectures = getattr(self.hf_config, "architectures", [])
return ModelRegistry.is_hybrid_model(architectures)
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def _init_has_inner_state(self) -> bool:
architectures = getattr(self.hf_config, "architectures", [])
return ModelRegistry.model_has_inner_state(architectures)
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def _verify_tokenizer_mode(self) -> None:
tokenizer_mode = self.tokenizer_mode.lower()
if tokenizer_mode not in ["auto", "slow", "mistral", "custom"]:
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raise ValueError(
f"Unknown tokenizer mode: {self.tokenizer_mode}. Must be "
"either 'auto', 'slow', 'mistral' or 'custom'.")
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self.tokenizer_mode = tokenizer_mode
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def _get_preferred_task(
self,
architectures: List[str],
supported_tasks: Set[_ResolvedTask],
) -> Optional[_ResolvedTask]:
model_id = self.model
if get_pooling_config(model_id, self.revision):
return "embed"
if ModelRegistry.is_cross_encoder_model(architectures):
return "score"
suffix_to_preferred_task: List[Tuple[str, _ResolvedTask]] = [
# Other models follow this pattern
("ForCausalLM", "generate"),
("ForConditionalGeneration", "generate"),
("ForSequenceClassification", "classify"),
("ChatModel", "generate"),
("LMHeadModel", "generate"),
("EmbeddingModel", "embed"),
("RewardModel", "reward"),
]
_, arch = ModelRegistry.inspect_model_cls(architectures)
for suffix, pref_task in suffix_to_preferred_task:
if arch.endswith(suffix) and pref_task in supported_tasks:
return pref_task
return None
def _resolve_task(
self,
task_option: Union[TaskOption, Literal["draft"]],
hf_config: PretrainedConfig,
) -> Tuple[Set[_ResolvedTask], _ResolvedTask]:
if task_option == "draft":
return {"draft"}, "draft"
architectures = getattr(hf_config, "architectures", [])
runner_support: Dict[RunnerType, bool] = {
# NOTE: Listed from highest to lowest priority,
# in case the model supports multiple of them
"generate": ModelRegistry.is_text_generation_model(architectures),
"pooling": ModelRegistry.is_pooling_model(architectures),
}
supported_runner_types_lst: List[RunnerType] = [
runner_type
for runner_type, is_supported in runner_support.items()
if is_supported
]
supported_tasks_lst: List[_ResolvedTask] = [
task for runner_type in supported_runner_types_lst
for task in _RUNNER_TASKS[runner_type]
]
supported_tasks = set(supported_tasks_lst)
if task_option == "auto":
selected_task = next(iter(supported_tasks_lst))
if len(supported_tasks_lst) > 1:
preferred_task = self._get_preferred_task(
architectures, supported_tasks)
if preferred_task is not None:
selected_task = preferred_task
logger.info(
"This model supports multiple tasks: %s. "
"Defaulting to '%s'.", supported_tasks, selected_task)
else:
# Aliases
if task_option == "embedding":
preferred_task = self._get_preferred_task(
architectures, supported_tasks)
if preferred_task != "embed":
msg = ("The 'embedding' task will be restricted to "
"embedding models in a future release. Please "
"pass `--task classify`, `--task score`, or "
"`--task reward` explicitly for other pooling "
"models.")
warnings.warn(msg, DeprecationWarning, stacklevel=2)
task_option = preferred_task or "embed"
if task_option not in supported_tasks:
msg = (
f"This model does not support the '{task_option}' task. "
f"Supported tasks: {supported_tasks}")
raise ValueError(msg)
selected_task = task_option
return supported_tasks, selected_task
def _parse_quant_hf_config(self):
quant_cfg = getattr(self.hf_config, "quantization_config", None)
if quant_cfg is None:
# compressed-tensors uses a "compression_config" key
quant_cfg = getattr(self.hf_config, "compression_config", None)
return quant_cfg
def _verify_quantization(self) -> None:
supported_quantization = QUANTIZATION_METHODS
optimized_quantization_methods = [
"fp8", "marlin", "modelopt", "gptq_marlin_24", "gptq_marlin",
"awq_marlin", "fbgemm_fp8", "compressed_tensors",
"compressed-tensors", "experts_int8", "quark"
]
if self.quantization is not None:
self.quantization = self.quantization.lower()
# Parse quantization method from the HF model config, if available.
quant_cfg = self._parse_quant_hf_config()
if quant_cfg is not None:
quant_method = quant_cfg.get("quant_method", "").lower()
# Detect which checkpoint is it
for name in QUANTIZATION_METHODS:
method = get_quantization_config(name)
quantization_override = method.override_quantization_method(
quant_cfg, self.quantization)
if quantization_override:
quant_method = quantization_override
self.quantization = quantization_override
break
# Verify quantization configurations.
if self.quantization is None:
self.quantization = quant_method
elif self.quantization != quant_method:
raise ValueError(
"Quantization method specified in the model config "
f"({quant_method}) does not match the quantization "
f"method specified in the `quantization` argument "
f"({self.quantization}).")
if self.quantization is not None:
if self.quantization not in supported_quantization:
raise ValueError(
f"Unknown quantization method: {self.quantization}. Must "
f"be one of {supported_quantization}.")
from vllm.platforms import current_platform
current_platform.verify_quantization(self.quantization)
if self.quantization not in optimized_quantization_methods:
logger.warning(
"%s quantization is not fully "
"optimized yet. The speed can be slower than "
"non-quantized models.", self.quantization)
def _verify_cuda_graph(self) -> None:
if self.max_seq_len_to_capture is None:
self.max_seq_len_to_capture = self.max_model_len
self.max_seq_len_to_capture = min(self.max_seq_len_to_capture,
self.max_model_len)
MODEL_NOT_SUPPORT_CUDA_GRAPH = ['mllama']
if (self.hf_config.model_type in MODEL_NOT_SUPPORT_CUDA_GRAPH
and not self.enforce_eager):
logger.warning(
"CUDA graph is not supported for %s yet, fallback to the eager "
"mode.", self.hf_config.model_type)
self.enforce_eager = True
def _verify_bnb_config(self) -> None:
"""
The current version of bitsandbytes (0.44.0) with 8-bit models does not
yet support CUDA graph.
"""
is_bitsandbytes = self.quantization == "bitsandbytes"
has_quantization_config = (getattr(self.hf_config,
"quantization_config", None)
is not None)
is_8bit = (self.hf_config.quantization_config.get(
"load_in_8bit", False) if has_quantization_config else False)
if all([
is_bitsandbytes,
has_quantization_config,
is_8bit,
not self.enforce_eager,
]):
logger.warning(
"CUDA graph is not supported on BitAndBytes 8bit yet, "
"fallback to the eager mode.")
self.enforce_eager = True
def verify_async_output_proc(self, parallel_config, speculative_config,
device_config) -> None:
if not self.use_async_output_proc:
# Nothing to check
return
if parallel_config.pipeline_parallel_size > 1:
logger.warning("Async output processing can not be enabled "
"with pipeline parallel")
self.use_async_output_proc = False
return
# Reminder: Please update docs/source/features/compatibility_matrix.md
# If the feature combo become valid
from vllm.platforms import current_platform
if not current_platform.is_async_output_supported(self.enforce_eager):
logger.warning(
"Async output processing is not supported on the "
"current platform type %s.", current_platform.device_type)
self.use_async_output_proc = False
return
if envs.VLLM_USE_RAY_SPMD_WORKER:
logger.warning(
"Async output processing can not be enabled with ray spmd")
self.use_async_output_proc = False
return
# Async postprocessor is not necessary for pooling models
# since there is no token generation
if self.runner_type == "pooling":
self.use_async_output_proc = False
# Reminder: Please update docs/source/features/compatibility_matrix.md
# If the feature combo become valid
if speculative_config:
logger.warning("Async output processing is not supported with"
" speculative decoding currently.")
self.use_async_output_proc = False
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def verify_with_parallel_config(
self,
parallel_config: "ParallelConfig",
) -> None:
total_num_attention_heads = getattr(self.hf_text_config,
"num_attention_heads", 0)
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tensor_parallel_size = parallel_config.tensor_parallel_size
if total_num_attention_heads % tensor_parallel_size != 0:
raise ValueError(
f"Total number of attention heads ({total_num_attention_heads})"
" must be divisible by tensor parallel size "
f"({tensor_parallel_size}).")
pipeline_parallel_size = parallel_config.pipeline_parallel_size
if pipeline_parallel_size > 1:
architectures = getattr(self.hf_config, "architectures", [])
if not ModelRegistry.is_pp_supported_model(architectures):
raise NotImplementedError(
"Pipeline parallelism is not supported for this model. "
"Supported models implement the `SupportsPP` interface.")
if self.use_async_output_proc:
logger.warning("Async output processor is not supported with "
"pipeline parallelism currently. Disabling it.")
self.use_async_output_proc = False
def get_hf_config_sliding_window(
self) -> Union[Optional[int], List[Optional[int]]]:
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"""Get the sliding window size, or None if disabled."""
# Some models, like Qwen2 and Qwen1.5, use `use_sliding_window` in
# addition to sliding window size. We check if that field is present
# and if it's False, return None.
if (hasattr(self.hf_text_config, "use_sliding_window")
and not self.hf_text_config.use_sliding_window):
return None
return getattr(self.hf_text_config, "sliding_window", None)
def get_sliding_window(self) -> Optional[Union[int, List[Optional[int]]]]:
"""Get the sliding window size, or None if disabled.
"""
# If user disables sliding window, return None.
if self.disable_sliding_window:
return None
# Otherwise get the value from the hf config.
return self.get_hf_config_sliding_window()
def get_vocab_size(self) -> int:
return self.hf_text_config.vocab_size
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def get_hidden_size(self) -> int:
return self.hf_text_config.hidden_size
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@property
def is_deepseek_mla(self) -> bool:
return (hasattr(self.hf_text_config, "model_type")) \
and (self.hf_text_config.model_type in \
('deepseek_v2', 'deepseek_v3'))\
and (self.hf_text_config.kv_lora_rank is not None)
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def get_head_size(self) -> int:
# TODO remove hard code
if self.is_deepseek_mla:
qk_rope_head_dim = getattr(self.hf_text_config, "qk_rope_head_dim",
0)
if self.use_mla:
return self.hf_text_config.kv_lora_rank + qk_rope_head_dim
else:
qk_nope_head_dim = getattr(self.hf_text_config,
"qk_nope_head_dim", 0)
if qk_rope_head_dim and qk_nope_head_dim:
return qk_rope_head_dim + qk_nope_head_dim
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if self.is_attention_free:
return 0
if hasattr(self.hf_text_config, "head_dim"):
return self.hf_text_config.head_dim
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# FIXME(woosuk): This may not be true for all models.
return (self.hf_text_config.hidden_size //
self.hf_text_config.num_attention_heads)
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def get_total_num_kv_heads(self) -> int:
"""Returns the total number of KV heads."""
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# For GPTBigCode & Falcon:
# NOTE: for falcon, when new_decoder_architecture is True, the
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# multi_query flag is ignored and we use n_head_kv for the number of
# KV heads.
falcon_model_types = ["falcon", "RefinedWeb", "RefinedWebModel"]
new_decoder_arch_falcon = (
self.hf_config.model_type in falcon_model_types
and getattr(self.hf_config, "new_decoder_architecture", False))
if not new_decoder_arch_falcon and getattr(self.hf_text_config,
"multi_query", False):
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# Multi-query attention, only one KV head.
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# Currently, tensor parallelism is not supported in this case.
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return 1
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# For DBRX and MPT
if self.hf_config.model_type == "mpt":
if "kv_n_heads" in self.hf_config.attn_config:
return self.hf_config.attn_config["kv_n_heads"]
return self.hf_config.num_attention_heads
if self.hf_config.model_type == "dbrx":
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return getattr(self.hf_config.attn_config, "kv_n_heads",
self.hf_config.num_attention_heads)
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if self.is_attention_free:
return 0
attributes = [
# For Falcon:
"n_head_kv",
"num_kv_heads",
# For LLaMA-2:
"num_key_value_heads",
# For ChatGLM:
"multi_query_group_num",
]
for attr in attributes:
num_kv_heads = getattr(self.hf_text_config, attr, None)
if num_kv_heads is not None:
return num_kv_heads
# For non-grouped-query attention models, the number of KV heads is
# equal to the number of attention heads.
return self.hf_text_config.num_attention_heads
def get_num_kv_heads(self, parallel_config: "ParallelConfig") -> int:
"""Returns the number of KV heads per GPU."""
if self.use_mla:
# When using MLA during decode it becomes MQA
return 1
total_num_kv_heads = self.get_total_num_kv_heads()
# If tensor parallelism is used, we divide the number of KV heads by
# the tensor parallel size. We will replicate the KV heads in the
# case where the number of KV heads is smaller than the tensor
# parallel size so each GPU has at least one KV head.
return max(1,
total_num_kv_heads // parallel_config.tensor_parallel_size)
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def get_num_attention_heads(self,
parallel_config: "ParallelConfig") -> int:
num_heads = getattr(self.hf_text_config, "num_attention_heads", 0)
return num_heads // parallel_config.tensor_parallel_size
def get_layers_start_end_indices(
self, parallel_config: "ParallelConfig") -> Tuple[int, int]:
from vllm.distributed.utils import get_pp_indices
total_num_hidden_layers = getattr(self.hf_text_config,
"num_hidden_layers", 0)
pp_rank = parallel_config.rank // parallel_config.tensor_parallel_size
pp_size = parallel_config.pipeline_parallel_size
start, end = get_pp_indices(total_num_hidden_layers, pp_rank, pp_size)
return start, end
def get_num_layers(self, parallel_config: "ParallelConfig") -> int:
start, end = self.get_layers_start_end_indices(parallel_config)
return end - start
def get_num_layers_by_block_type(
self,
parallel_config: "ParallelConfig",
block_type: LayerBlockType = LayerBlockType.attention,
) -> int:
# This function relies on 'layers_block_type' in hf_config,
# for w/o this attribute, we will need to have workarounds like so
attn_block_type = block_type == LayerBlockType.attention
is_transformer = not self.is_hybrid and not self.is_attention_free
start, end = self.get_layers_start_end_indices(parallel_config)
if is_transformer:
# Handle the basic case first
return end - start if attn_block_type else 0
elif self.is_attention_free:
# Attention free
# Note that this code assumes there
# is only one type of attention-free block type.
return 0 if attn_block_type else end - start
else:
# Hybrid model
layers_block_type_value = getattr(self.hf_config,
"layers_block_type", None)
if layers_block_type_value is None:
raise ValueError("The model is an hybrid without a"
"layers_block_type in the hf_config,"
"cannot determine the num of "
f"{block_type.value} layers")
return sum(t == block_type.value
for t in layers_block_type_value[start:end])
def get_multimodal_config(self) -> "MultiModalConfig":
"""
Get the multimodal configuration of the model.
Raises:
ValueError: If the model is not multimodal.
"""
if self.multimodal_config is None:
raise ValueError("The model is not multimodal.")
return self.multimodal_config
def try_get_generation_config(self) -> Dict[str, Any]:
if self.generation_config is None or self.generation_config == "auto":
config = try_get_generation_config(
self.model,
trust_remote_code=self.trust_remote_code,
revision=self.revision,
)
else:
config = try_get_generation_config(
self.generation_config,
trust_remote_code=self.trust_remote_code,
)
if config is None:
return {}
return config.to_diff_dict()
def get_diff_sampling_param(self) -> Dict[str, Any]:
"""
This method returns a dictionary containing the parameters
that differ from the default sampling parameters, but only
if `generation_config` is set. If `generation_config` is not
set, an empty dictionary is returned.
Returns:
Dict[str, Any]: A dictionary with the differing sampling
parameters if `generation_config` is set, otherwise an
empty dictionary.
"""
if self.generation_config is None:
# When generation_config is not set
config = {}
else:
config = self.try_get_generation_config()
# Overriding with given generation config
config.update(self.override_generation_config)
available_params = [
"repetition_penalty",
"temperature",
"top_k",
"top_p",
"min_p",
"max_new_tokens",
]
if any(p in config for p in available_params):
diff_sampling_param = {
p: config.get(p)
for p in available_params if config.get(p) is not None
}
# Huggingface definition of max_new_tokens is equivalent
# to vLLM's max_tokens
if "max_new_tokens" in diff_sampling_param:
diff_sampling_param["max_tokens"] = diff_sampling_param.pop(
"max_new_tokens")
else:
diff_sampling_param = {}
return diff_sampling_param
@property
def is_encoder_decoder(self) -> bool:
"""Extract the HF encoder/decoder model flag."""
return is_encoder_decoder(self.hf_config)
@property
def uses_mrope(self) -> bool:
return uses_mrope(self.hf_config)
@property
def is_multimodal_model(self) -> bool:
return self.multimodal_config is not None
@property
def is_cross_encoder(self) -> bool:
architectures = getattr(self.hf_config, "architectures", [])
return ModelRegistry.is_cross_encoder_model(architectures)
@property
def use_mla(self) -> bool:
if not self.is_deepseek_mla or envs.VLLM_MLA_DISABLE:
return False
if self.quantization is not None and self.quantization not in [\
"fp8", "compressed-tensors"]:
logger.warning(
"MLA is not supported with %s quantization. "
"Disabling MLA.", self.quantization)
return False
# If using a "compressed-tensors" checkpoint, check that all groups
# have fp8 for both weights and activations.
if self.quantization == "compressed-tensors":
quant_config = self._parse_quant_hf_config()
for group_name, cfg in quant_config.get("config_groups", {
"": {}
}).items():
act_cfg = cfg.get("input_activations", {})
act_type = None if act_cfg is None else act_cfg.get("type", "")
w_cfg = cfg.get("weights", {})
w_type = None if w_cfg is None else w_cfg.get("type", "")
if act_type != "fp8" or w_type != "fp8":
logger.warning(
"compressed-tensors MLA support requires fp8 "
"activations and weights in group '%s', but got "
"activations type '%s' and weights type '%s'.\n "
"Full config: %s", group_name, act_type, w_type,
quant_config)
return False
return True
@property
def supported_runner_types(self) -> Set[RunnerType]:
return {_TASK_RUNNER[task] for task in self.supported_tasks}
@property
def runner_type(self) -> RunnerType:
return _TASK_RUNNER[self.task]
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class CacheConfig:
"""Configuration for the KV cache.
Args:
block_size: Size of a cache block in number of tokens.
gpu_memory_utilization: Fraction of GPU memory to use for the
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vLLM execution.
swap_space: Size of the CPU swap space per GPU (in GiB).
cache_dtype: Data type for kv cache storage.
is_attention_free: Whether the model is attention-free.
num_gpu_blocks_override: Number of GPU blocks to use. This overrides the
profiled num_gpu_blocks if specified. Does nothing if None.
sliding_window: Sliding window size for the KV cache. Can not work with
prefix caching enabled.
enable_prefix_caching: Whether to enable prefix caching.
cpu_offload_gb: Size of the CPU offload buffer in GiB.
"""
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
factors: List[Any] = []
factors.append(self.cache_dtype)
# `cpu_offload_gb` does not use `torch.compile` yet.
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
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def __init__(
self,
block_size: int,
gpu_memory_utilization: float,
swap_space: float,
cache_dtype: str,
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is_attention_free: bool = False,
num_gpu_blocks_override: Optional[int] = None,
sliding_window: Optional[int] = None,
enable_prefix_caching: bool = False,
cpu_offload_gb: float = 0,
calculate_kv_scales: Optional[bool] = None,
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) -> None:
self.block_size = block_size
self.gpu_memory_utilization = gpu_memory_utilization
self.swap_space_bytes = swap_space * GiB_bytes
self.num_gpu_blocks_override = num_gpu_blocks_override
self.cache_dtype = cache_dtype
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self.is_attention_free = is_attention_free
self.sliding_window = sliding_window
self.enable_prefix_caching = enable_prefix_caching
self.cpu_offload_gb = cpu_offload_gb
self.calculate_kv_scales = calculate_kv_scales
self._verify_args()
self._verify_cache_dtype()
self._verify_prefix_caching()
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# Will be set after profiling.
self.num_gpu_blocks: Optional[int] = None
self.num_cpu_blocks: Optional[int] = None
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# Set calculate_kv_scales to False if the value is unset.
if self.calculate_kv_scales is None:
self.calculate_kv_scales = False
def metrics_info(self):
# convert cache_config to dict(key: str, value: str) for prometheus
# metrics info
return {key: str(value) for key, value in self.__dict__.items()}
def _verify_args(self) -> None:
if self.gpu_memory_utilization > 1.0:
raise ValueError(
"GPU memory utilization must be less than 1.0. Got "
f"{self.gpu_memory_utilization}.")
def _verify_cache_dtype(self) -> None:
if self.cache_dtype == "auto":
pass
elif self.cache_dtype in ("fp8", "fp8_e4m3", "fp8_e5m2"):
logger.info(
"Using fp8 data type to store kv cache. It reduces the GPU "
"memory footprint and boosts the performance. "
"Meanwhile, it may cause accuracy drop without a proper "
"scaling factor")
else:
raise ValueError(f"Unknown kv cache dtype: {self.cache_dtype}")
def _verify_prefix_caching(self) -> None:
if not self.enable_prefix_caching:
return
if self.sliding_window is not None:
raise NotImplementedError(
"Prefix caching is not supported with sliding window. "
"Run with --disable-sliding-window to use prefix caching.")
def verify_with_parallel_config(
self,
parallel_config: "ParallelConfig",
) -> None:
total_cpu_memory = get_cpu_memory()
# FIXME(woosuk): Here, it is assumed that the GPUs in a tensor parallel
# group are in the same node. However, the GPUs may span multiple nodes.
num_gpus_per_node = parallel_config.tensor_parallel_size
cpu_memory_usage = self.swap_space_bytes * num_gpus_per_node
msg = (f"{cpu_memory_usage / GiB_bytes:.2f} GiB out of the "
f"{total_cpu_memory / GiB_bytes:.2f} GiB total CPU memory "
"is allocated for the swap space.")
if cpu_memory_usage > 0.7 * total_cpu_memory:
raise ValueError("Too large swap space. " + msg)
elif cpu_memory_usage > 0.4 * total_cpu_memory:
logger.warning("Possibly too large swap space. %s", msg)
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@dataclass
class TokenizerPoolConfig:
"""Configuration for the tokenizer pool.
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Args:
pool_size: Number of tokenizer workers in the pool.
pool_type: Type of the pool.
extra_config: Additional config for the pool.
The way the config will be used depends on the
pool type.
"""
pool_size: int
pool_type: Union[str, Type["BaseTokenizerGroup"]]
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extra_config: dict
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
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def __post_init__(self):
if self.pool_type not in ("ray", ) and not isinstance(
self.pool_type, type):
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raise ValueError(f"Unknown pool type: {self.pool_type}")
if not isinstance(self.extra_config, dict):
raise ValueError("extra_config must be a dictionary.")
@classmethod
def create_config(
cls, tokenizer_pool_size: int,
tokenizer_pool_type: Union[str, Type["BaseTokenizerGroup"]],
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tokenizer_pool_extra_config: Optional[Union[str, dict]]
) -> Optional["TokenizerPoolConfig"]:
"""Create a TokenizerPoolConfig from the given parameters.
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If tokenizer_pool_size is 0, return None.
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Args:
tokenizer_pool_size: Number of tokenizer workers in the pool.
tokenizer_pool_type: Type of the pool.
tokenizer_pool_extra_config: Additional config for the pool.
The way the config will be used depends on the
pool type. This can be a JSON string (will be parsed).
"""
if tokenizer_pool_size:
if isinstance(tokenizer_pool_extra_config, str):
tokenizer_pool_extra_config_parsed = json.loads(
tokenizer_pool_extra_config)
else:
tokenizer_pool_extra_config_parsed = (
tokenizer_pool_extra_config or {})
tokenizer_pool_config = cls(tokenizer_pool_size,
tokenizer_pool_type,
tokenizer_pool_extra_config_parsed)
else:
tokenizer_pool_config = None
return tokenizer_pool_config
class LoadFormat(str, enum.Enum):
AUTO = "auto"
PT = "pt"
SAFETENSORS = "safetensors"
NPCACHE = "npcache"
DUMMY = "dummy"
TENSORIZER = "tensorizer"
SHARDED_STATE = "sharded_state"
GGUF = "gguf"
BITSANDBYTES = "bitsandbytes"
MISTRAL = "mistral"
RUNAI_STREAMER = "runai_streamer"
@dataclass
class LoadConfig:
"""
download_dir: Directory to download and load the weights, default to the
default cache directory of huggingface.
load_format: The format of the model weights to load:
"auto" will try to load the weights in the safetensors format and
fall back to the pytorch bin format if safetensors format is
not available.
"pt" will load the weights in the pytorch bin format.
"safetensors" will load the weights in the safetensors format.
"npcache" will load the weights in pytorch format and store
a numpy cache to speed up the loading.
"dummy" will initialize the weights with random values, which is
mainly for profiling.
"tensorizer" will use CoreWeave's tensorizer library for
fast weight loading.
"bitsandbytes" will load nf4 type weights.
model_loader_extra_config: The extra config for the model loader.
ignore_patterns: The list of patterns to ignore when loading the model.
Default to "original/**/*" to avoid repeated loading of llama's
checkpoints.
"""
load_format: Union[str, LoadFormat, "BaseModelLoader"] = LoadFormat.AUTO
download_dir: Optional[str] = None
model_loader_extra_config: Optional[Union[str, dict]] = field(
default_factory=dict)
ignore_patterns: Optional[Union[List[str], str]] = None
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __post_init__(self):
model_loader_extra_config = self.model_loader_extra_config or {}
if isinstance(model_loader_extra_config, str):
self.model_loader_extra_config = json.loads(
model_loader_extra_config)
if isinstance(self.load_format, str):
load_format = self.load_format.lower()
self.load_format = LoadFormat(load_format)
if self.ignore_patterns is not None and len(self.ignore_patterns) > 0:
logger.info(
"Ignoring the following patterns when downloading weights: %s",
self.ignore_patterns)
else:
self.ignore_patterns = ["original/**/*"]
@dataclass
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class ParallelConfig:
"""Configuration for the distributed execution."""
pipeline_parallel_size: int = 1 # Number of pipeline parallel groups.
tensor_parallel_size: int = 1 # Number of tensor parallel groups.
# Maximum number of multiple batches
# when load model sequentially. To avoid RAM OOM when using tensor
# parallel and large models.
max_parallel_loading_workers: Optional[int] = None
# Disable the custom all-reduce kernel and fall back to NCCL.
disable_custom_all_reduce: bool = False
# Config for the tokenizer pool. If None, will use synchronous tokenization.
tokenizer_pool_config: Optional[TokenizerPoolConfig] = None
# Whether to profile Ray workers with nsight, see https://docs.ray.io/en/latest/ray-observability/user-guides/profiling.html#profiling-nsight-profiler.
ray_workers_use_nsight: bool = False
# ray distributed model workers placement group.
placement_group: Optional["PlacementGroup"] = None
# Backend to use for distributed model
# workers, either "ray" or "mp" (multiprocessing). If the product
# of pipeline_parallel_size and tensor_parallel_size is less than
# or equal to the number of GPUs available, "mp" will be used to
# keep processing on a single host. Otherwise, this will default
# to "ray" if Ray is installed and fail otherwise. Note that tpu
# and hpu only support Ray for distributed inference.
distributed_executor_backend: Optional[Union[str,
Type["ExecutorBase"]]] = None
# the full name of the worker class to use. If "auto", the worker class
# will be determined based on the platform.
worker_cls: str = "auto"
sd_worker_cls: str = "auto"
world_size: int = field(init=False)
rank: int = 0
def compute_hash(self):
"""
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
factors: List[Any] = []
factors.append(self.pipeline_parallel_size)
factors.append(self.tensor_parallel_size)
return hashlib.sha256(str(factors).encode()).hexdigest()
def __post_init__(self) -> None:
self.world_size = self.pipeline_parallel_size * \
self.tensor_parallel_size
ray_only_devices = ["tpu"]
from vllm.platforms import current_platform
if (current_platform.device_type in ray_only_devices
and self.world_size > 1):
[Hardware][Intel-Gaudi] Add Intel Gaudi (HPU) inference backend (#6143) Signed-off-by: yuwenzho <yuwen.zhou@intel.com> Signed-off-by: Chendi.Xue <chendi.xue@intel.com> Signed-off-by: Bob Zhu <bob.zhu@intel.com> Signed-off-by: zehao-intel <zehao.huang@intel.com> Signed-off-by: Konrad Zawora <kzawora@habana.ai> Co-authored-by: Kunshang Ji <kunshang.ji@intel.com> Co-authored-by: Sanju C Sudhakaran <scsudhakaran@habana.ai> Co-authored-by: Michal Adamczyk <madamczyk@habana.ai> Co-authored-by: Marceli Fylcek <mfylcek@habana.ai> Co-authored-by: Himangshu Lahkar <49579433+hlahkar@users.noreply.github.com> Co-authored-by: Vivek Goel <vgoel@habana.ai> Co-authored-by: yuwenzho <yuwen.zhou@intel.com> Co-authored-by: Dominika Olszewska <dolszewska@habana.ai> Co-authored-by: barak goldberg <149692267+bgoldberg-habana@users.noreply.github.com> Co-authored-by: Michal Szutenberg <37601244+szutenberg@users.noreply.github.com> Co-authored-by: Jan Kaniecki <jkaniecki@habana.ai> Co-authored-by: Agata Dobrzyniewicz <160237065+adobrzyniewicz-habana@users.noreply.github.com> Co-authored-by: Krzysztof Wisniewski <kwisniewski@habana.ai> Co-authored-by: Dudi Lester <160421192+dudilester@users.noreply.github.com> Co-authored-by: Ilia Taraban <tarabanil@gmail.com> Co-authored-by: Chendi.Xue <chendi.xue@intel.com> Co-authored-by: Michał Kuligowski <mkuligowski@habana.ai> Co-authored-by: Jakub Maksymczuk <jmaksymczuk@habana.ai> Co-authored-by: Tomasz Zielinski <85164140+tzielinski-habana@users.noreply.github.com> Co-authored-by: Sun Choi <schoi@habana.ai> Co-authored-by: Iryna Boiko <iboiko@habana.ai> Co-authored-by: Bob Zhu <41610754+czhu15@users.noreply.github.com> Co-authored-by: hlin99 <73271530+hlin99@users.noreply.github.com> Co-authored-by: Zehao Huang <zehao.huang@intel.com> Co-authored-by: Andrzej Kotłowski <Andrzej.Kotlowski@intel.com> Co-authored-by: Yan Tomsinsky <73292515+Yantom1@users.noreply.github.com> Co-authored-by: Nir David <ndavid@habana.ai> Co-authored-by: Yu-Zhou <yu.zhou@intel.com> Co-authored-by: Ruheena Suhani Shaik <rsshaik@habana.ai> Co-authored-by: Karol Damaszke <kdamaszke@habana.ai> Co-authored-by: Marcin Swiniarski <mswiniarski@habana.ai> Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu> Co-authored-by: Jacek Czaja <jacek.czaja@intel.com> Co-authored-by: Jacek Czaja <jczaja@habana.ai> Co-authored-by: Yuan <yuan.zhou@outlook.com>
2024-11-06 10:09:10 +01:00
if self.distributed_executor_backend is None:
self.distributed_executor_backend = "ray"
if self.distributed_executor_backend != "ray":
raise ValueError(
f"{current_platform.device_type.upper()} backend only "
"supports Ray for distributed inference.")
[Hardware][Intel-Gaudi] Add Intel Gaudi (HPU) inference backend (#6143) Signed-off-by: yuwenzho <yuwen.zhou@intel.com> Signed-off-by: Chendi.Xue <chendi.xue@intel.com> Signed-off-by: Bob Zhu <bob.zhu@intel.com> Signed-off-by: zehao-intel <zehao.huang@intel.com> Signed-off-by: Konrad Zawora <kzawora@habana.ai> Co-authored-by: Kunshang Ji <kunshang.ji@intel.com> Co-authored-by: Sanju C Sudhakaran <scsudhakaran@habana.ai> Co-authored-by: Michal Adamczyk <madamczyk@habana.ai> Co-authored-by: Marceli Fylcek <mfylcek@habana.ai> Co-authored-by: Himangshu Lahkar <49579433+hlahkar@users.noreply.github.com> Co-authored-by: Vivek Goel <vgoel@habana.ai> Co-authored-by: yuwenzho <yuwen.zhou@intel.com> Co-authored-by: Dominika Olszewska <dolszewska@habana.ai> Co-authored-by: barak goldberg <149692267+bgoldberg-habana@users.noreply.github.com> Co-authored-by: Michal Szutenberg <37601244+szutenberg@users.noreply.github.com> Co-authored-by: Jan Kaniecki <jkaniecki@habana.ai> Co-authored-by: Agata Dobrzyniewicz <160237065+adobrzyniewicz-habana@users.noreply.github.com> Co-authored-by: Krzysztof Wisniewski <kwisniewski@habana.ai> Co-authored-by: Dudi Lester <160421192+dudilester@users.noreply.github.com> Co-authored-by: Ilia Taraban <tarabanil@gmail.com> Co-authored-by: Chendi.Xue <chendi.xue@intel.com> Co-authored-by: Michał Kuligowski <mkuligowski@habana.ai> Co-authored-by: Jakub Maksymczuk <jmaksymczuk@habana.ai> Co-authored-by: Tomasz Zielinski <85164140+tzielinski-habana@users.noreply.github.com> Co-authored-by: Sun Choi <schoi@habana.ai> Co-authored-by: Iryna Boiko <iboiko@habana.ai> Co-authored-by: Bob Zhu <41610754+czhu15@users.noreply.github.com> Co-authored-by: hlin99 <73271530+hlin99@users.noreply.github.com> Co-authored-by: Zehao Huang <zehao.huang@intel.com> Co-authored-by: Andrzej Kotłowski <Andrzej.Kotlowski@intel.com> Co-authored-by: Yan Tomsinsky <73292515+Yantom1@users.noreply.github.com> Co-authored-by: Nir David <ndavid@habana.ai> Co-authored-by: Yu-Zhou <yu.zhou@intel.com> Co-authored-by: Ruheena Suhani Shaik <rsshaik@habana.ai> Co-authored-by: Karol Damaszke <kdamaszke@habana.ai> Co-authored-by: Marcin Swiniarski <mswiniarski@habana.ai> Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu> Co-authored-by: Jacek Czaja <jacek.czaja@intel.com> Co-authored-by: Jacek Czaja <jczaja@habana.ai> Co-authored-by: Yuan <yuan.zhou@outlook.com>
2024-11-06 10:09:10 +01:00
if self.distributed_executor_backend is None and self.world_size > 1:
# We use multiprocessing by default if world_size fits on the
# current node and we aren't in a ray placement group.
from vllm.executor import ray_utils
backend = "mp"
ray_found = ray_utils.ray_is_available()
if current_platform.is_neuron():
# neuron uses single process to control multiple devices
backend = "uni"
elif (current_platform.is_cuda()
and cuda_device_count_stateless() < self.world_size):
if not ray_found:
raise ValueError("Unable to load Ray which is "
"required for multi-node inference, "
"please install Ray with `pip install "
"ray`.") from ray_utils.ray_import_err
backend = "ray"
elif ray_found:
if self.placement_group:
backend = "ray"
else:
from ray import is_initialized as ray_is_initialized
if ray_is_initialized():
from ray.util import get_current_placement_group
if get_current_placement_group():
backend = "ray"
self.distributed_executor_backend = backend
logger.info("Defaulting to use %s for distributed inference",
backend)
if self.distributed_executor_backend is None and self.world_size == 1:
self.distributed_executor_backend = "uni"
2023-05-20 13:06:59 -07:00
self._verify_args()
@property
def use_ray(self) -> bool:
return self.distributed_executor_backend == "ray" or (
isinstance(self.distributed_executor_backend, type)
and self.distributed_executor_backend.uses_ray)
2023-05-20 13:06:59 -07:00
def _verify_args(self) -> None:
# Lazy import to avoid circular import
from vllm.executor.executor_base import ExecutorBase
from vllm.platforms import current_platform
if self.distributed_executor_backend not in (
"ray", "mp", "uni",
"external_launcher", None) and not (isinstance(
self.distributed_executor_backend, type) and issubclass(
self.distributed_executor_backend, ExecutorBase)):
raise ValueError(
"Unrecognized distributed executor backend "
f"{self.distributed_executor_backend}. Supported "
"values are 'ray', 'mp' 'uni', 'external_launcher' or"
" custom ExecutorBase subclass.")
if self.use_ray:
from vllm.executor import ray_utils
ray_utils.assert_ray_available()
if current_platform.is_rocm():
self.disable_custom_all_reduce = True
logger.info(
"Disabled the custom all-reduce kernel because it is not "
"supported on AMD GPUs.")
if self.ray_workers_use_nsight and not self.use_ray:
raise ValueError("Unable to use nsight profiling unless workers "
"run with Ray.")
2023-05-20 13:06:59 -07:00
@dataclass
2023-05-20 13:06:59 -07:00
class SchedulerConfig:
"""Scheduler configuration."""
runner_type: str = "generate" # The runner type to launch for the model.
# Maximum number of tokens to be processed in a single iteration.
max_num_batched_tokens: int = field(default=None) # type: ignore
# Maximum number of sequences to be processed in a single iteration.
max_num_seqs: int = 128
# Maximum length of a sequence (including prompt and generated text).
max_model_len: int = 8192
# The number of slots to allocate per sequence per
# step, beyond the known token ids. This is used in speculative
# decoding to store KV activations of tokens which may or may not be
# accepted.
num_lookahead_slots: int = 0
# Apply a delay (of delay factor multiplied by previous
# prompt latency) before scheduling next prompt.
delay_factor: float = 0.0
# If True, prefill requests can be chunked based
# on the remaining max_num_batched_tokens.
enable_chunked_prefill: bool = False
is_multimodal_model: bool = False
# NOTE: The following multimodal encoder budget will be initialized to
# max_num_batched_tokens and overridden in case max multimodal embedding
# size is larger.
# TODO (ywang96): Make these configurable.
# Multimodal encoder compute budget, only used in V1
max_num_encoder_input_tokens: int = field(default=None) # type: ignore
# Multimodal encoder cache size, only used in V1
encoder_cache_size: int = field(default=None) # type: ignore
# Whether to perform preemption by swapping or
# recomputation. If not specified, we determine the mode as follows:
# We use recomputation by default since it incurs lower overhead than
# swapping. However, when the sequence group has multiple sequences
# (e.g., beam search), recomputation is not currently supported. In
# such a case, we use swapping instead.
preemption_mode: Optional[str] = None
num_scheduler_steps: int = 1
multi_step_stream_outputs: bool = False
# Private API. If used, scheduler sends delta data to
# workers instead of an entire data. It should be enabled only
# when SPMD worker architecture is enabled. I.e.,
# VLLM_USE_RAY_SPMD_WORKER=1
send_delta_data: bool = False
# The scheduling policy to use. "fcfs" (default) or "priority".
policy: str = "fcfs"
chunked_prefill_enabled: bool = field(init=False)
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __post_init__(self) -> None:
if self.max_num_batched_tokens is None:
if self.enable_chunked_prefill:
if self.num_scheduler_steps > 1:
# Multi-step Chunked-Prefill doesn't allow prompt-chunking
# for now. Have max_num_batched_tokens set to max_model_len
# so we don't reject sequences on account of a short
# max_num_batched_tokens.
self.max_num_batched_tokens = max(self.max_model_len, 2048)
else:
# This value is chosen to have a balance between ITL
# and TTFT. Note it is not optimized for throughput.
self.max_num_batched_tokens = 2048
else:
# If max_model_len is too short, use 2048 as the default value
# for higher throughput.
self.max_num_batched_tokens = max(self.max_model_len, 2048)
if self.runner_type == "pooling":
# Choose specific value for higher throughput
self.max_num_batched_tokens = max(
self.max_num_batched_tokens,
_POOLING_MODEL_MAX_NUM_BATCHED_TOKENS,
)
if self.is_multimodal_model:
# The value needs to be at least the number of multimodal tokens
self.max_num_batched_tokens = max(
self.max_num_batched_tokens,
_MULTIMODAL_MODEL_MAX_NUM_BATCHED_TOKENS,
)
self.max_num_encoder_input_tokens = self.max_num_batched_tokens
self.encoder_cache_size = self.max_num_batched_tokens
if self.enable_chunked_prefill:
logger.info(
"Chunked prefill is enabled with max_num_batched_tokens=%d.",
self.max_num_batched_tokens)
self.chunked_prefill_enabled = self.enable_chunked_prefill
self._verify_args()
def _verify_args(self) -> None:
if (self.max_num_batched_tokens < self.max_model_len
and not self.chunked_prefill_enabled):
raise ValueError(
f"max_num_batched_tokens ({self.max_num_batched_tokens}) is "
f"smaller than max_model_len ({self.max_model_len}). "
"This effectively limits the maximum sequence length to "
"max_num_batched_tokens and makes vLLM reject longer "
"sequences. Please increase max_num_batched_tokens or "
"decrease max_model_len.")
if self.max_num_batched_tokens < self.max_num_seqs:
raise ValueError(
f"max_num_batched_tokens ({self.max_num_batched_tokens}) must "
"be greater than or equal to max_num_seqs "
f"({self.max_num_seqs}).")
2023-05-20 13:06:59 -07:00
if self.num_lookahead_slots < 0:
raise ValueError(
"num_lookahead_slots "
f"({self.num_lookahead_slots}) must be greater than or "
"equal to 0.")
if self.num_scheduler_steps < 1:
raise ValueError(
"num_scheduler_steps "
f"({self.num_scheduler_steps}) must be greater than or "
"equal to 1.")
@property
def is_multi_step(self) -> bool:
return self.num_scheduler_steps > 1
2023-05-20 13:06:59 -07:00
class DeviceConfig:
device: Optional[torch.device]
device_type: str
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# the device/platform information will be summarized
# by torch/vllm automatically.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __init__(self, device: str = "auto") -> None:
if device == "auto":
# Automated device type detection
from vllm.platforms import current_platform
self.device_type = current_platform.device_type
if not self.device_type:
raise RuntimeError("Failed to infer device type")
else:
# Device type is assigned explicitly
self.device_type = device
# Some device types require processing inputs on CPU
if self.device_type in ["neuron", "openvino"]:
self.device = torch.device("cpu")
elif self.device_type in ["tpu"]:
self.device = None
else:
# Set device with device type
self.device = torch.device(self.device_type)
class SpeculativeConfig:
"""Configuration for speculative decoding.
The configuration is currently specialized to draft-model speculative
decoding with top-1 proposals.
"""
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# spec decode does not use `torch.compile` yet.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
@staticmethod
def maybe_create_spec_config(
target_model_config: ModelConfig,
target_parallel_config: ParallelConfig,
target_dtype: str,
speculative_model: Optional[str],
speculative_model_quantization: Optional[str],
speculative_draft_tensor_parallel_size: Optional[int],
num_speculative_tokens: Optional[int],
speculative_disable_mqa_scorer: Optional[bool],
speculative_max_model_len: Optional[int],
enable_chunked_prefill: bool,
disable_log_stats: bool,
speculative_disable_by_batch_size: Optional[int],
ngram_prompt_lookup_max: Optional[int],
ngram_prompt_lookup_min: Optional[int],
draft_token_acceptance_method: str,
typical_acceptance_sampler_posterior_threshold: Optional[float],
typical_acceptance_sampler_posterior_alpha: Optional[float],
disable_logprobs: Optional[bool],
) -> Optional["SpeculativeConfig"]:
"""Create a SpeculativeConfig if possible, else return None.
This function attempts to create a SpeculativeConfig object based on the
provided parameters. If the necessary conditions are met, it returns an
instance of SpeculativeConfig. Otherwise, it returns None.
Args:
target_model_config (ModelConfig): The configuration of the target
model.
target_parallel_config (ParallelConfig): The parallel configuration
for the target model.
target_dtype (str): The data type used for the target model.
speculative_model (Optional[str]): The name of the speculative
model, if provided.
speculative_model_quantization (Optional[str]): Quantization method
that was used to quantize the speculative model weights. If
None, we assume the model weights are not quantized.
speculative_draft_tensor_parallel_size (Optional[int]): The degree
of the tensor parallelism for the draft model.
num_speculative_tokens (Optional[int]): The number of speculative
tokens, if provided. Will default to the number in the draft
model config if present, otherwise is required.
speculative_disable_mqa_scorer (Optional[bool]): Disable the MQA
scorer for the speculative model and fall back to batch
expansion for scoring.
speculative_max_model_len (Optional[int]): The maximum model len of
the speculative model. Used when testing the ability to skip
speculation for some sequences.
enable_chunked_prefill (bool): Whether vLLM is configured to use
chunked prefill or not. Used for raising an error since its not
yet compatible with spec decode.
speculative_disable_by_batch_size (Optional[int]): Disable
speculative decoding for new incoming requests when the number
of enqueue requests is larger than this value, if provided.
ngram_prompt_lookup_max (Optional[int]): Max size of ngram token
window, if provided.
ngram_prompt_lookup_min (Optional[int]): Min size of ngram token
window, if provided.
draft_token_acceptance_method (str): The method to use for
accepting draft tokens. This can take two possible
values 'rejection_sampler' and 'typical_acceptance_sampler'
for RejectionSampler and TypicalAcceptanceSampler
respectively.
typical_acceptance_sampler_posterior_threshold (Optional[float]):
A threshold value that sets a lower bound on the posterior
probability of a token in the target model for it to be
accepted. This threshold is used only when we use the
TypicalAcceptanceSampler for token acceptance.
typical_acceptance_sampler_posterior_alpha (Optional[float]):
A scaling factor for the entropy-based threshold in the
TypicalAcceptanceSampler.
disable_logprobs (Optional[bool]): If set to True, token log
probabilities are not returned during speculative decoding.
If set to False, token log probabilities are returned
according to the log probability settings in SamplingParams.
If not specified, it defaults to True.
Returns:
Optional["SpeculativeConfig"]: An instance of SpeculativeConfig if
the necessary conditions are met, else None.
"""
if speculative_model is None:
if num_speculative_tokens is not None:
raise ValueError("num_speculative_tokens was provided without "
"speculative_model.")
return None
if (speculative_disable_by_batch_size is not None
and speculative_disable_by_batch_size < 2):
raise ValueError("Expect the batch size threshold of disabling "
"speculative decoding is > 1, but got "
f"{speculative_disable_by_batch_size=}")
if (enable_chunked_prefill and speculative_model == "eagle"):
raise ValueError("Chunked prefill and EAGLE are not compatible.")
# TODO: The user should be able to specify revision/max model len
# for the draft model. It is not currently supported.
draft_revision = None
draft_code_revision = None
draft_quantization = speculative_model_quantization
if speculative_model == "[ngram]":
if ngram_prompt_lookup_min is None:
ngram_prompt_lookup_min = 1
if ngram_prompt_lookup_max is None or ngram_prompt_lookup_max < 1:
raise ValueError(f"{ngram_prompt_lookup_max=} must be > 0")
if ngram_prompt_lookup_min < 1:
raise ValueError(f"{ngram_prompt_lookup_min=} must be > 0")
if ngram_prompt_lookup_min > ngram_prompt_lookup_max:
raise ValueError(f"{ngram_prompt_lookup_min=} cannot be "
f"larger than {ngram_prompt_lookup_max=}")
# TODO: current we still need extract vocab_size from target model
# config, in future, we may try refactor it out, and set
# draft related config as None here.
draft_model_config = target_model_config
draft_parallel_config = target_parallel_config
else:
ngram_prompt_lookup_max = 0
ngram_prompt_lookup_min = 0
draft_model_config = ModelConfig(
model=speculative_model,
task="draft",
tokenizer=target_model_config.tokenizer,
tokenizer_mode=target_model_config.tokenizer_mode,
trust_remote_code=target_model_config.trust_remote_code,
allowed_local_media_path=target_model_config.
allowed_local_media_path,
dtype=target_model_config.dtype,
seed=target_model_config.seed,
revision=draft_revision,
code_revision=draft_code_revision,
tokenizer_revision=target_model_config.tokenizer_revision,
max_model_len=None,
spec_target_max_model_len=target_model_config.max_model_len,
quantization=draft_quantization,
enforce_eager=target_model_config.enforce_eager,
max_seq_len_to_capture=target_model_config.
max_seq_len_to_capture,
max_logprobs=target_model_config.max_logprobs,
)
draft_hf_config = draft_model_config.hf_config
if (num_speculative_tokens is not None
and hasattr(draft_hf_config, "num_lookahead_tokens")):
draft_hf_config.num_lookahead_tokens = num_speculative_tokens
n_predict = getattr(draft_hf_config, "n_predict", None)
if n_predict is not None:
if num_speculative_tokens is None:
# Default to max value defined in draft model config.
num_speculative_tokens = n_predict
elif num_speculative_tokens > n_predict:
# Verify provided value doesn't exceed the maximum
# supported by the draft model.
raise ValueError(
"This speculative model supports a maximum of "
f"num_speculative_tokens={n_predict}, but "
f"{num_speculative_tokens=} was provided.")
speculative_draft_tensor_parallel_size = \
SpeculativeConfig._verify_and_get_draft_model_tensor_parallel_size(
target_parallel_config,
speculative_draft_tensor_parallel_size,
draft_hf_config
)
draft_model_config.max_model_len = (
SpeculativeConfig._maybe_override_draft_max_model_len(
speculative_max_model_len,
draft_model_config.max_model_len,
target_model_config.max_model_len,
))
draft_parallel_config = (
SpeculativeConfig.create_draft_parallel_config(
target_parallel_config,
speculative_draft_tensor_parallel_size, draft_hf_config))
if num_speculative_tokens is None:
raise ValueError(
"num_speculative_tokens must be provided with "
"speculative_model unless the draft model config contains an "
"n_predict parameter.")
if typical_acceptance_sampler_posterior_threshold is None:
typical_acceptance_sampler_posterior_threshold = 0.09
if typical_acceptance_sampler_posterior_alpha is None:
typical_acceptance_sampler_posterior_alpha = 0.3
if disable_logprobs is None:
disable_logprobs = True
return SpeculativeConfig(
draft_model_config,
draft_parallel_config,
num_speculative_tokens,
speculative_disable_mqa_scorer,
speculative_disable_by_batch_size,
ngram_prompt_lookup_max,
ngram_prompt_lookup_min,
draft_token_acceptance_method=draft_token_acceptance_method,
typical_acceptance_sampler_posterior_threshold=\
typical_acceptance_sampler_posterior_threshold,
typical_acceptance_sampler_posterior_alpha=\
typical_acceptance_sampler_posterior_alpha,
disable_logprobs=disable_logprobs,
disable_log_stats=disable_log_stats,
)
@staticmethod
def _maybe_override_draft_max_model_len(
speculative_max_model_len: Optional[int],
draft_max_model_len: int,
target_max_model_len: int,
) -> int:
"""Determine the max sequence len for the draft model. This is usually
the draft_max_model_len, but may be the target_max_model_len if it is
less than the draft_max_model_len, or may be speculative_max_model_len
if it is specified.
This is necessary so that sequences do not exceed the capacity of the
draft model or the target model.
speculative_max_model_len is mainly used for testing that sequences can
skip speculation.
"""
if speculative_max_model_len is not None:
if speculative_max_model_len > draft_max_model_len:
raise ValueError(f"{speculative_max_model_len=} cannot be "
f"larger than {draft_max_model_len=}")
if speculative_max_model_len > target_max_model_len:
raise ValueError(f"{speculative_max_model_len=} cannot be "
f"larger than {target_max_model_len=}")
return speculative_max_model_len
return min(
draft_max_model_len,
target_max_model_len,
)
@staticmethod
def _verify_and_get_draft_model_tensor_parallel_size(
target_parallel_config: ParallelConfig,
speculative_draft_tensor_parallel_size: Optional[int],
draft_hf_config: PretrainedConfig) -> int:
"""
Verifies and adjusts the tensor parallel size for a draft model
specified using speculative_draft_tensor_parallel_size.
"""
# If speculative_draft_tensor_parallel_size is unset then set it
# appropriately else verify that it is set correctly.
if speculative_draft_tensor_parallel_size is None:
if draft_hf_config.model_type == "mlp_speculator":
speculative_draft_tensor_parallel_size = 1
if target_parallel_config.tensor_parallel_size > 1:
logger.warning(
"MLPSpeculator cannot currently be run with tp>1; "
"setting speculative_draft_tensor_parallel_size=1")
else:
speculative_draft_tensor_parallel_size = \
target_parallel_config.tensor_parallel_size
elif speculative_draft_tensor_parallel_size not in (
1, target_parallel_config.tensor_parallel_size):
raise ValueError(
f"{speculative_draft_tensor_parallel_size=} cannot be "
f"other value than 1 or target model tensor_parallel_size")
return speculative_draft_tensor_parallel_size
@staticmethod
def create_draft_parallel_config(
target_parallel_config: ParallelConfig,
speculative_draft_tensor_parallel_size: int,
draft_hf_config: PretrainedConfig,
) -> ParallelConfig:
"""Create a parallel config for use by the draft worker.
This is mostly a copy of the target parallel config, except the tp_size.
"""
draft_parallel_config = ParallelConfig(
pipeline_parallel_size=target_parallel_config.
pipeline_parallel_size,
tensor_parallel_size=speculative_draft_tensor_parallel_size,
distributed_executor_backend=target_parallel_config.
distributed_executor_backend,
max_parallel_loading_workers=target_parallel_config.
max_parallel_loading_workers,
disable_custom_all_reduce=target_parallel_config.
disable_custom_all_reduce,
tokenizer_pool_config=target_parallel_config.tokenizer_pool_config,
ray_workers_use_nsight=target_parallel_config.
ray_workers_use_nsight,
placement_group=target_parallel_config.placement_group,
)
return draft_parallel_config
def __init__(
self,
draft_model_config: ModelConfig,
draft_parallel_config: ParallelConfig,
num_speculative_tokens: int,
speculative_disable_mqa_scorer: Optional[bool],
speculative_disable_by_batch_size: Optional[int],
ngram_prompt_lookup_max: Optional[int],
ngram_prompt_lookup_min: Optional[int],
draft_token_acceptance_method: str,
typical_acceptance_sampler_posterior_threshold: float,
typical_acceptance_sampler_posterior_alpha: float,
disable_logprobs: bool,
disable_log_stats: bool,
):
"""Create a SpeculativeConfig object.
Args:
draft_model_config: ModelConfig for the draft model.
draft_parallel_config: ParallelConfig for the draft model.
num_speculative_tokens: The number of tokens to sample from the
draft model before scoring with the target model.
speculative_disable_by_batch_size: Disable speculative
decoding for new incoming requests when the number of
enqueue requests is larger than this value.
ngram_prompt_lookup_max: Max size of ngram token window.
ngram_prompt_lookup_min: Min size of ngram token window.
draft_token_acceptance_method (str): The method to use for
accepting draft tokens. This can take two possible
values 'rejection_sampler' and 'typical_acceptance_sampler'
for RejectionSampler and TypicalAcceptanceSampler
respectively.
typical_acceptance_sampler_posterior_threshold (Optional[float]):
A threshold value that sets a lower bound on the posterior
probability of a token in the target model for it to be
accepted. This threshold is used only when we use the
TypicalAcceptanceSampler for token acceptance.
typical_acceptance_sampler_posterior_alpha (Optional[float]):
A scaling factor for the entropy-based threshold in the
TypicalAcceptanceSampler.
disable_logprobs: If set to True, token log probabilities will not
be returned even if requested by sampling parameters. This
reduces latency by skipping logprob calculation in proposal
sampling, target sampling, and after accepted tokens are
determined. If set to False, log probabilities will be
returned.
disable_log_stats: Whether to disable periodic printing of stage
times in speculative decoding.
"""
self.draft_model_config = draft_model_config
self.draft_parallel_config = draft_parallel_config
self.num_speculative_tokens = num_speculative_tokens
self.speculative_disable_mqa_scorer = speculative_disable_mqa_scorer
self.speculative_disable_by_batch_size = \
speculative_disable_by_batch_size
self.ngram_prompt_lookup_max = ngram_prompt_lookup_max or 0
self.ngram_prompt_lookup_min = ngram_prompt_lookup_min or 0
self.draft_token_acceptance_method = draft_token_acceptance_method
self.typical_acceptance_sampler_posterior_threshold = \
typical_acceptance_sampler_posterior_threshold
self.typical_acceptance_sampler_posterior_alpha = \
typical_acceptance_sampler_posterior_alpha
self.disable_logprobs = disable_logprobs
self.disable_log_stats = disable_log_stats
self._verify_args()
def _verify_args(self) -> None:
if self.num_speculative_tokens <= 0:
raise ValueError("Expected num_speculative_tokens to be greater "
f"than zero ({self.num_speculative_tokens}).")
if self.draft_model_config:
self.draft_model_config.verify_with_parallel_config(
self.draft_parallel_config)
# Validate and set draft token acceptance related settings.
if (self.draft_token_acceptance_method is None):
raise ValueError("draft_token_acceptance_method is not set. "
"Expected values are rejection_sampler or "
"typical_acceptance_sampler.")
if (self.draft_token_acceptance_method != 'rejection_sampler'
and self.draft_token_acceptance_method
!= 'typical_acceptance_sampler'):
raise ValueError(
"Expected draft_token_acceptance_method to be either "
"rejection_sampler or typical_acceptance_sampler. Instead it "
f"is {self.draft_token_acceptance_method}")
if (self.typical_acceptance_sampler_posterior_threshold < 0
or self.typical_acceptance_sampler_posterior_alpha < 0):
raise ValueError(
"Expected typical_acceptance_sampler_posterior_threshold "
"and typical_acceptance_sampler_posterior_alpha to be > 0. "
"Instead found "
f"typical_acceptance_sampler_posterior_threshold = "
f"{self.typical_acceptance_sampler_posterior_threshold} and "
f"typical_acceptance_sampler_posterior_alpha = "
f"{self.typical_acceptance_sampler_posterior_alpha}")
@property
def num_lookahead_slots(self) -> int:
"""The number of additional slots the scheduler should allocate per
step, in addition to the slots allocated for each known token.
This is equal to the number of speculative tokens, as each speculative
token must be scored.
"""
return self.num_speculative_tokens
def __repr__(self) -> str:
if self.ngram_prompt_lookup_max > 0:
draft_model = "[ngram]"
else:
draft_model = self.draft_model_config.model
num_spec_tokens = self.num_speculative_tokens
return f"SpeculativeConfig({draft_model=}, {num_spec_tokens=})"
@dataclass
class LoRAConfig:
max_lora_rank: int
max_loras: int
fully_sharded_loras: bool = False
max_cpu_loras: Optional[int] = None
lora_dtype: Optional[Union[torch.dtype, str]] = None
lora_extra_vocab_size: int = 256
# This is a constant.
lora_vocab_padding_size: ClassVar[int] = 256
long_lora_scaling_factors: Optional[Tuple[float]] = None
bias_enabled: bool = False
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# LoRA is not compatible with `torch.compile` .
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __post_init__(self):
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# Setting the maximum rank to 256 should be able to satisfy the vast
# majority of applications.
possible_max_ranks = (8, 16, 32, 64, 128, 256)
possible_lora_extra_vocab_size = (0, 256, 512)
if self.max_lora_rank not in possible_max_ranks:
raise ValueError(
f"max_lora_rank ({self.max_lora_rank}) must be one of "
f"{possible_max_ranks}.")
if self.lora_extra_vocab_size not in possible_lora_extra_vocab_size:
raise ValueError(
f"lora_extra_vocab_size ({self.lora_extra_vocab_size}) "
f"must be one of {possible_lora_extra_vocab_size}.")
if self.max_loras < 1:
raise ValueError(f"max_loras ({self.max_loras}) must be >= 1.")
if self.max_cpu_loras is None:
self.max_cpu_loras = self.max_loras
elif self.max_cpu_loras < self.max_loras:
raise ValueError(
f"max_cpu_loras ({self.max_cpu_loras}) must be >= "
2024-02-01 02:09:23 +08:00
f"max_loras ({self.max_loras})")
def verify_with_cache_config(self, cache_config: CacheConfig):
# TODO LoRA supports CPU offload.
if cache_config.cpu_offload_gb > 0:
raise ValueError("CPU offload is not supported with LoRA yet.")
def verify_with_model_config(self, model_config: ModelConfig):
if self.lora_dtype in (None, "auto"):
self.lora_dtype = model_config.dtype
elif isinstance(self.lora_dtype, str):
self.lora_dtype = getattr(torch, self.lora_dtype)
if model_config.quantization and model_config.quantization not in [
"awq", "gptq"
]:
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# TODO support marlin
logger.warning("%s quantization is not tested with LoRA yet.",
model_config.quantization)
def verify_with_scheduler_config(self, scheduler_config: SchedulerConfig):
# Reminder: Please update docs/source/features/compatibility_matrix.md
# If the feature combo become valid
if scheduler_config.chunked_prefill_enabled:
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logger.warning("LoRA with chunked prefill is still experimental "
"and may be unstable.")
@dataclass
class PromptAdapterConfig:
max_prompt_adapters: int
max_prompt_adapter_token: int
max_cpu_prompt_adapters: Optional[int] = None
prompt_adapter_dtype: Optional[torch.dtype] = None
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __post_init__(self):
if self.max_prompt_adapters < 1:
raise ValueError(f"max_prompt_adapters "
f"({self.max_prompt_adapters}) must be >= 1.")
if self.max_prompt_adapter_token == 0:
raise ValueError("max_prompt_adapter_token must be set.")
if self.max_cpu_prompt_adapters is None:
self.max_cpu_prompt_adapters = self.max_prompt_adapters
def verify_with_model_config(self, model_config: ModelConfig):
if self.prompt_adapter_dtype in (None, "auto"):
self.prompt_adapter_dtype = model_config.dtype
elif isinstance(self.prompt_adapter_dtype, str):
self.prompt_adapter_dtype = getattr(torch,
self.prompt_adapter_dtype)
@dataclass
class MultiModalConfig:
"""Controls the behavior of multimodal models."""
limit_per_prompt: Mapping[str, int] = field(default_factory=dict)
"""
The maximum number of input items allowed per prompt for each modality.
"""
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
# TODO: Add configs to init vision tower or not.
2024-06-06 18:17:18 +08:00
@dataclass
class PoolerConfig:
"""Controls the behavior of output pooling in pooling models."""
pooling_type: Optional[str] = None
"""
The pooling method of the pooling model. This should be a key in
:class:`vllm.model_executor.layers.pooler.PoolingType`.
"""
normalize: Optional[bool] = None
"""
Whether to normalize the pooled outputs. Usually, this should be set to
``True`` for embedding outputs.
"""
softmax: Optional[bool] = None
"""
Whether to apply softmax to the pooled outputs. Usually, this should be set
to ``True`` for classification outputs.
"""
step_tag_id: Optional[int] = None
"""
If set, only the score corresponding to the ``step_tag_id`` in the
generated sentence should be returned. Otherwise, the scores for all tokens
are returned.
"""
returned_token_ids: Optional[List[int]] = None
"""
A list of indices for the vocabulary dimensions to be extracted,
such as the token IDs of ``good_token`` and ``bad_token`` in the
``math-shepherd-mistral-7b-prm`` model.
"""
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
@staticmethod
def from_json(json_str: str) -> "PoolerConfig":
return PoolerConfig(**json.loads(json_str))
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_STR_DTYPE_TO_TORCH_DTYPE = {
"half": torch.float16,
"float16": torch.float16,
"float": torch.float32,
"float32": torch.float32,
"bfloat16": torch.bfloat16,
}
_ROCM_NOT_SUPPORTED_DTYPE: List[str] = [] #
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def _get_and_verify_dtype(
config: PretrainedConfig,
dtype: Union[str, torch.dtype],
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) -> torch.dtype:
# NOTE: getattr(config, "torch_dtype", torch.float32) is not correct
# because config.torch_dtype can be None.
config_dtype = getattr(config, "torch_dtype", None)
if config_dtype is None:
config_dtype = torch.float32
if isinstance(dtype, str):
dtype = dtype.lower()
if dtype == "auto":
if config_dtype == torch.float32:
2024-06-27 13:33:56 -07:00
if config.model_type == "gemma2":
logger.info(
"For Gemma 2, we downcast float32 to bfloat16 instead "
"of float16 by default. Please specify `dtype` if you "
"want to use float16.")
torch_dtype = torch.bfloat16
else:
# Following the common practice, we use float16 for float32
# models.
torch_dtype = torch.float16
else:
torch_dtype = config_dtype
[Hardware][Intel-Gaudi] Add Intel Gaudi (HPU) inference backend (#6143) Signed-off-by: yuwenzho <yuwen.zhou@intel.com> Signed-off-by: Chendi.Xue <chendi.xue@intel.com> Signed-off-by: Bob Zhu <bob.zhu@intel.com> Signed-off-by: zehao-intel <zehao.huang@intel.com> Signed-off-by: Konrad Zawora <kzawora@habana.ai> Co-authored-by: Kunshang Ji <kunshang.ji@intel.com> Co-authored-by: Sanju C Sudhakaran <scsudhakaran@habana.ai> Co-authored-by: Michal Adamczyk <madamczyk@habana.ai> Co-authored-by: Marceli Fylcek <mfylcek@habana.ai> Co-authored-by: Himangshu Lahkar <49579433+hlahkar@users.noreply.github.com> Co-authored-by: Vivek Goel <vgoel@habana.ai> Co-authored-by: yuwenzho <yuwen.zhou@intel.com> Co-authored-by: Dominika Olszewska <dolszewska@habana.ai> Co-authored-by: barak goldberg <149692267+bgoldberg-habana@users.noreply.github.com> Co-authored-by: Michal Szutenberg <37601244+szutenberg@users.noreply.github.com> Co-authored-by: Jan Kaniecki <jkaniecki@habana.ai> Co-authored-by: Agata Dobrzyniewicz <160237065+adobrzyniewicz-habana@users.noreply.github.com> Co-authored-by: Krzysztof Wisniewski <kwisniewski@habana.ai> Co-authored-by: Dudi Lester <160421192+dudilester@users.noreply.github.com> Co-authored-by: Ilia Taraban <tarabanil@gmail.com> Co-authored-by: Chendi.Xue <chendi.xue@intel.com> Co-authored-by: Michał Kuligowski <mkuligowski@habana.ai> Co-authored-by: Jakub Maksymczuk <jmaksymczuk@habana.ai> Co-authored-by: Tomasz Zielinski <85164140+tzielinski-habana@users.noreply.github.com> Co-authored-by: Sun Choi <schoi@habana.ai> Co-authored-by: Iryna Boiko <iboiko@habana.ai> Co-authored-by: Bob Zhu <41610754+czhu15@users.noreply.github.com> Co-authored-by: hlin99 <73271530+hlin99@users.noreply.github.com> Co-authored-by: Zehao Huang <zehao.huang@intel.com> Co-authored-by: Andrzej Kotłowski <Andrzej.Kotlowski@intel.com> Co-authored-by: Yan Tomsinsky <73292515+Yantom1@users.noreply.github.com> Co-authored-by: Nir David <ndavid@habana.ai> Co-authored-by: Yu-Zhou <yu.zhou@intel.com> Co-authored-by: Ruheena Suhani Shaik <rsshaik@habana.ai> Co-authored-by: Karol Damaszke <kdamaszke@habana.ai> Co-authored-by: Marcin Swiniarski <mswiniarski@habana.ai> Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu> Co-authored-by: Jacek Czaja <jacek.czaja@intel.com> Co-authored-by: Jacek Czaja <jczaja@habana.ai> Co-authored-by: Yuan <yuan.zhou@outlook.com>
2024-11-06 10:09:10 +01:00
from vllm.platforms import current_platform
if (current_platform.is_cpu()
and current_platform.get_cpu_architecture()
== CpuArchEnum.POWERPC
and (config_dtype == torch.float16
or config_dtype == torch.float32)):
logger.info(
"For POWERPC, we cast models to bfloat16 instead of "
"using float16 by default. Float16 is not currently "
"supported for POWERPC.")
torch_dtype = torch.bfloat16
# TODO: change this condition to check if the platform support bf16
# instead of checking the OS. For instance M2 shall supports bf16
# already. But we need to modify `cpu_extension.cmake` to activate
# the feature in the build.
if (current_platform.is_cpu() and sys.platform.startswith("darwin")
and current_platform.get_cpu_architecture()
== CpuArchEnum.ARM and config_dtype == torch.bfloat16):
logger.info("For macOS with Apple Silicon, currently bfloat16 "
"is not supported. Setting dtype to float16.")
torch_dtype = torch.float16
[Hardware][Intel-Gaudi] Add Intel Gaudi (HPU) inference backend (#6143) Signed-off-by: yuwenzho <yuwen.zhou@intel.com> Signed-off-by: Chendi.Xue <chendi.xue@intel.com> Signed-off-by: Bob Zhu <bob.zhu@intel.com> Signed-off-by: zehao-intel <zehao.huang@intel.com> Signed-off-by: Konrad Zawora <kzawora@habana.ai> Co-authored-by: Kunshang Ji <kunshang.ji@intel.com> Co-authored-by: Sanju C Sudhakaran <scsudhakaran@habana.ai> Co-authored-by: Michal Adamczyk <madamczyk@habana.ai> Co-authored-by: Marceli Fylcek <mfylcek@habana.ai> Co-authored-by: Himangshu Lahkar <49579433+hlahkar@users.noreply.github.com> Co-authored-by: Vivek Goel <vgoel@habana.ai> Co-authored-by: yuwenzho <yuwen.zhou@intel.com> Co-authored-by: Dominika Olszewska <dolszewska@habana.ai> Co-authored-by: barak goldberg <149692267+bgoldberg-habana@users.noreply.github.com> Co-authored-by: Michal Szutenberg <37601244+szutenberg@users.noreply.github.com> Co-authored-by: Jan Kaniecki <jkaniecki@habana.ai> Co-authored-by: Agata Dobrzyniewicz <160237065+adobrzyniewicz-habana@users.noreply.github.com> Co-authored-by: Krzysztof Wisniewski <kwisniewski@habana.ai> Co-authored-by: Dudi Lester <160421192+dudilester@users.noreply.github.com> Co-authored-by: Ilia Taraban <tarabanil@gmail.com> Co-authored-by: Chendi.Xue <chendi.xue@intel.com> Co-authored-by: Michał Kuligowski <mkuligowski@habana.ai> Co-authored-by: Jakub Maksymczuk <jmaksymczuk@habana.ai> Co-authored-by: Tomasz Zielinski <85164140+tzielinski-habana@users.noreply.github.com> Co-authored-by: Sun Choi <schoi@habana.ai> Co-authored-by: Iryna Boiko <iboiko@habana.ai> Co-authored-by: Bob Zhu <41610754+czhu15@users.noreply.github.com> Co-authored-by: hlin99 <73271530+hlin99@users.noreply.github.com> Co-authored-by: Zehao Huang <zehao.huang@intel.com> Co-authored-by: Andrzej Kotłowski <Andrzej.Kotlowski@intel.com> Co-authored-by: Yan Tomsinsky <73292515+Yantom1@users.noreply.github.com> Co-authored-by: Nir David <ndavid@habana.ai> Co-authored-by: Yu-Zhou <yu.zhou@intel.com> Co-authored-by: Ruheena Suhani Shaik <rsshaik@habana.ai> Co-authored-by: Karol Damaszke <kdamaszke@habana.ai> Co-authored-by: Marcin Swiniarski <mswiniarski@habana.ai> Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu> Co-authored-by: Jacek Czaja <jacek.czaja@intel.com> Co-authored-by: Jacek Czaja <jczaja@habana.ai> Co-authored-by: Yuan <yuan.zhou@outlook.com>
2024-11-06 10:09:10 +01:00
if current_platform.is_hpu() and config_dtype == torch.float16:
logger.info(
"For HPU, we cast models to bfloat16 instead of"
"using float16 by default. Please specify `dtype` if you "
"want to use float16.")
torch_dtype = torch.bfloat16
2023-05-20 13:06:59 -07:00
else:
if dtype not in _STR_DTYPE_TO_TORCH_DTYPE:
raise ValueError(f"Unknown dtype: {dtype}")
torch_dtype = _STR_DTYPE_TO_TORCH_DTYPE[dtype]
elif isinstance(dtype, torch.dtype):
torch_dtype = dtype
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else:
raise ValueError(f"Unknown dtype: {dtype}")
2023-05-20 13:06:59 -07:00
# Verify the dtype.
if torch_dtype != config_dtype:
if torch_dtype == torch.float32:
# Upcasting to float32 is allowed.
logger.info("Upcasting %s to %s.", config_dtype, torch_dtype)
2023-05-20 13:06:59 -07:00
pass
elif config_dtype == torch.float32:
# Downcasting from float32 to float16 or bfloat16 is allowed.
logger.info("Downcasting %s to %s.", config_dtype, torch_dtype)
2023-05-20 13:06:59 -07:00
pass
else:
2023-06-07 00:40:21 -07:00
# Casting between float16 and bfloat16 is allowed with a warning.
logger.warning("Casting %s to %s.", config_dtype, torch_dtype)
2023-05-20 13:06:59 -07:00
return torch_dtype
def _get_and_verify_max_len(
hf_config: PretrainedConfig,
max_model_len: Optional[int],
disable_sliding_window: bool,
sliding_window_len: Optional[Union[int, List[Optional[int]]]],
spec_target_max_model_len: Optional[int] = None,
encoder_config: Optional[Any] = None,
) -> int:
"""Get and verify the model's maximum length."""
derived_max_model_len = float("inf")
possible_keys = [
# OPT
"max_position_embeddings",
# GPT-2
"n_positions",
# MPT
"max_seq_len",
# ChatGLM2
"seq_length",
# Command-R
"model_max_length",
# Whisper
"max_target_positions",
# Others
"max_sequence_length",
"max_seq_length",
"seq_len",
]
# Choose the smallest "max_length" from the possible keys.
max_len_key = None
for key in possible_keys:
max_len = getattr(hf_config, key, None)
if max_len is not None:
max_len_key = key if max_len < derived_max_model_len \
else max_len_key
derived_max_model_len = min(derived_max_model_len, max_len)
# If sliding window is manually disabled, max_length should be less
# than the sliding window length in the model config.
if disable_sliding_window and sliding_window_len is not None:
sliding_window_len_min = get_min_sliding_window(sliding_window_len)
max_len_key = "sliding_window" \
if sliding_window_len_min < derived_max_model_len else max_len_key
derived_max_model_len = min(derived_max_model_len,
sliding_window_len_min)
# If none of the keys were found in the config, use a default and
# log a warning.
if derived_max_model_len == float("inf"):
if max_model_len is not None:
# If max_model_len is specified, we use it.
return max_model_len
if spec_target_max_model_len is not None:
# If this is a speculative draft model, we use the max model len
# from the target model.
return spec_target_max_model_len
default_max_len = 2048
logger.warning(
"The model's config.json does not contain any of the following "
"keys to determine the original maximum length of the model: "
"%s. Assuming the model's maximum length is %d.", possible_keys,
default_max_len)
derived_max_model_len = default_max_len
rope_scaling = getattr(hf_config, "rope_scaling", None)
if rope_scaling is not None:
# No need to consider "type" key because of patch_rope_scaling when
# loading HF config
rope_type = rope_scaling["rope_type"]
if rope_type not in ("su", "longrope", "llama3"):
if disable_sliding_window:
# TODO(robertgshaw): Find a model that supports rope_scaling
# with sliding window to see if this case should be allowed.
raise NotImplementedError(
"Disabling sliding window is not supported for models "
"with rope_scaling. Please raise an issue so we can "
"investigate.")
# NOTE: rope_type == "default" does not define factor
# https://github.com/huggingface/transformers/blob/v4.45.2/src/transformers/modeling_rope_utils.py
scaling_factor = rope_scaling.get("factor", 1.0)
if rope_type == "yarn":
derived_max_model_len = rope_scaling[
"original_max_position_embeddings"]
derived_max_model_len *= scaling_factor
if encoder_config and "max_seq_length" in encoder_config:
derived_max_model_len = encoder_config["max_seq_length"]
# If the user specified a max length, make sure it is smaller than the
# derived length from the HF model config.
if max_model_len is None:
max_model_len = int(derived_max_model_len)
elif max_model_len > derived_max_model_len:
# Some models might have a separate key for specifying model_max_length
# that will be bigger than derived_max_model_len. We compare user input
# with model_max_length and allow this override when it's smaller.
model_max_length = getattr(hf_config, "model_max_length", None)
if model_max_length is not None and max_model_len <= model_max_length:
if disable_sliding_window:
# TODO(robertgshaw): Find a model that has model_max_length
# with sliding window to see if this case should be allowed.
raise NotImplementedError(
"Disabling sliding window is not supported for models "
"model_max_length in the config. Please raise an issue "
"so we can investigate.")
else:
msg = (
f"User-specified max_model_len ({max_model_len}) is greater "
f"than the derived max_model_len ({max_len_key}="
f"{derived_max_model_len} or model_max_length="
f"{model_max_length} in model's config.json). This may lead "
"to incorrect model outputs or CUDA errors.")
if envs.VLLM_ALLOW_LONG_MAX_MODEL_LEN:
logger.warning(
"%s Make sure the value is correct and within the "
"model context size.", msg)
else:
raise ValueError(
f"{msg} To allow overriding this maximum, set "
"the env var VLLM_ALLOW_LONG_MAX_MODEL_LEN=1")
return int(max_model_len)
def get_min_sliding_window(
sliding_window: Union[int, List[Optional[int]]]) -> int:
if isinstance(sliding_window, list):
return min(s for s in sliding_window if s is not None)
return sliding_window
def get_served_model_name(model: str,
served_model_name: Optional[Union[str, List[str]]]):
"""
If the input is a non-empty list, the first model_name in
`served_model_name` is taken.
If the input is a non-empty string, it is used directly.
For cases where the input is either an empty string or an
empty list, the fallback is to use `self.model`.
"""
if not served_model_name:
return model
if isinstance(served_model_name, list):
return served_model_name[0]
return served_model_name
@dataclass
class DecodingConfig:
"""Dataclass which contains the decoding strategy of the engine"""
# Which guided decoding algo to use.
# 'outlines' / 'lm-format-enforcer' / 'xgrammar'
guided_decoding_backend: str = 'xgrammar'
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __post_init__(self):
valid_guided_backends = ['outlines', 'lm-format-enforcer', 'xgrammar']
backend = self.guided_decoding_backend
if backend not in valid_guided_backends:
raise ValueError(f"Invalid guided_decoding_backend '{backend},"
f"must be one of {valid_guided_backends}")
@dataclass
class ObservabilityConfig:
"""Configuration for observability."""
otlp_traces_endpoint: Optional[str] = None
# Collecting detailed timing information for each request can be expensive.
# If set, collects the model forward time for the request.
collect_model_forward_time: bool = False
# If set, collects the model execute time for the request.
collect_model_execute_time: bool = False
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
def __post_init__(self):
if not is_otel_available() and self.otlp_traces_endpoint is not None:
raise ValueError(
"OpenTelemetry is not available. Unable to configure "
"'otlp_traces_endpoint'. Ensure OpenTelemetry packages are "
f"installed. Original error:\n{otel_import_error_traceback}")
class KVTransferConfig(BaseModel):
"""Configuration for distributed KV cache transfer."""
# The KV connector for vLLM to transmit KV caches between vLLM instances.
kv_connector: Optional[str] = None
# The device used by kv connector to buffer the KV cache.
# Currently only support 'cuda'.
kv_buffer_device: Optional[str] = "cuda"
# The buffer size for TorchDistributedConnector. Measured in number of
# bytes. Recommended value: 1e9 (about 1GB).
kv_buffer_size: float = 1e9
# Whether this vLLM instance produces, consumes KV cache, or both. Choices
# are 'kv_producer', 'kv_consumer', and 'both'.
kv_role: Optional[str] = None
# The rank of this vLLM instance in the KV cache transfer. Typical value:
# 0 for prefill instance, 1 for decode instance.
# Currently only 1P1D is supported.
kv_rank: Optional[int] = None
# The number of parallel instances for KV cache transfer. For
# PyNcclConnector, this should be 2.
kv_parallel_size: int = 1
# The KV connector ip, used to build distributed connection
kv_ip: str = "127.0.0.1"
# The KV connector port, used to build distributed connection
kv_port: int = 14579
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
# no factors to consider.
# this config will not affect the computation graph.
factors: List[Any] = []
hash_str = hashlib.md5(str(factors).encode()).hexdigest()
return hash_str
@classmethod
def from_cli(cls, cli_value: str) -> "KVTransferConfig":
"""Parse the CLI value for the kv cache transfer config."""
return KVTransferConfig.model_validate_json(cli_value)
def model_post_init(self, __context: Any) -> None:
if self.kv_role is not None and self.kv_role not in [
"kv_producer", "kv_consumer", "kv_both"
]:
raise ValueError(
f"Unsupported kv_role: {self.kv_role}. "
f"Supported roles are `kv_producer`, `kv_consumer`, "
f"and `kv_both`")
if self.kv_connector is not None and self.kv_role is None:
raise ValueError("Please specify kv_disagg_role when kv_connector "
"is set, supported roles are `kv_producer`, "
"`kv_consumer`, and `kv_both`")
@property
def is_kv_transfer_instance(self) -> bool:
return self.kv_connector is not None and \
self.kv_role in ["kv_producer", "kv_consumer", "kv_both"]
@property
def need_kv_parallel_group(self) -> bool:
# for those database-based connector, vLLM does not need to create
# parallel group, and in that case the kv parallel size will be 1.
return self.kv_connector is not None and self.kv_parallel_size > 1
@property
def is_kv_producer(self) -> bool:
return self.kv_connector is not None and \
self.kv_role in ["kv_producer", "kv_both"]
@property
def is_kv_consumer(self) -> bool:
return self.kv_connector is not None and \
self.kv_role in ["kv_consumer", "kv_both"]
class CompilationLevel:
# constants for the levels of the compilation process
NO_COMPILATION = 0
DYNAMO_AS_IS = 1
DYNAMO_ONCE = 2
PIECEWISE = 3
class CompilationConfig(BaseModel):
"""
Configuration for compilation.
It has three parts:
- Top-level Compilation control:
- level: the level of compilation.
- 0: no compilation.
- 1: dynamo as is.
- 2: dynamo once.
- 3: piecewise compilation.
- debug_dump_path: the path to dump the debug information.
- cache_dir: the directory to store the compiled graph, to
accelerate Inductor compilation. By default, it will use
model-related information to generate a cache directory.
- backend: the backend for compilation. It needs to be a string.
- "" (empty string): use the default backend.
- "eager"/"openxla"/...: use the specified backend registered in PyTorch.
- "full.module.name": a qualified name which can be used to import the backend function.
We use string to avoid serialization issues when using compilation in a distributed setting.
When the compilation level is 1 or 2, the backend is used for the compilation directly (it sees the whole graph).
When the compilation level is 3, the backend is used for the piecewise compilation (it sees a part of the graph).
- custom_ops: fine-grained control over which custom ops to enable/disable.
Use 'all' to enable all, 'none' to disable all.
Also specify a list of custom op names to enable (prefixed with a '+'),
or disable (prefixed with a '-').
Examples:
- 'all,-op1' to enable all except op1
- 'none,+op1,+op2' to enable only op1 and op2
By default, all custom ops are enabled when running without Inductor
and disabled when running with Inductor (compile_level >= Inductor).
- splitting_ops: a list of ops to split the full graph into subgraphs, used in piecewise compilation.
- CudaGraph capture:
- use_cudagraph: whether to use cudagraph inside compilation.
- False: cudagraph inside compilation is not used.
- True: cudagraph inside compilation is used. It requires
that all input buffers have fixed addresses, and all
splitting ops write their outputs to input buffers.
Note that this is orthogonal to the cudagraph capture logic
outside of compilation.
TODO: move outside cudagraph logic into compilation.
torch.compile will handle cudagraph capture logic in the future.
- cudagraph_capture_sizes: sizes to capture cudagraph.
- None (default): capture sizes are inferred from vllm config.
- List[int]: capture sizes are specified as given.
- cudagraph_num_of_warmups: number of warmup runs for cudagraph.
It means the first several runs will be treated as warmup runs.
Only after that, the execution will be recorded, and the recorded
cudagraph will be used for subsequent runs.
- cudagraph_copy_inputs: whether to copy input tensors for
cudagraph. If the caller can guarantee that the same input buffers
are always used, it can set this to False. Otherwise, it should
set this to True, and the compiler will copy the input to an
internally managed buffer. Default is False.
- Inductor compilation:
- use_inductor: whether to use inductor compilation.
- False: inductor compilation is not used. graph runs in eager.
- True: inductor compilation is used. one graph for symbolic shape
is compiled. In addition, compile for compile_sizes,
using configurations in inductor_compile_config.
- compile_sizes: sizes to compile for inductor. In addition
to integers, it also supports "cudagraph_capture_sizes" to
specify the sizes for cudagraph capture.
- inductor_compile_config: additional configurations for inductor.
- None: use default configurations.
- inductor_passes: additional passes for inductor. It is a dictionary
from pass name to pass function qualified name. We use function
name because the config uses json format. If we pass the config
from Python, functions can also be passed directly via Python object
constructor, e.g. `CompilationConfig(inductor_passes={"a": func})`
- custom inductor passes: see PassConfig for more details
Why we have different sizes for cudagraph and inductor:
- cudagraph: a cudagraph captured for a specific size can only be used
for the same size. We need to capture all the sizes we want to use.
- inductor: a graph compiled by inductor for a general shape can be used
for different sizes. Inductor can also compile for specific sizes,
where it can have more information to optimize the graph with fully
static shapes. However, we find the general shape compilation is
sufficient for most cases. It might be beneficial to compile for
certain small batchsizes, where inductor is good at optimizing.
""" # noqa
level: int = 0
debug_dump_path: str = ""
cache_dir: str = ""
backend: str = ""
custom_ops: List[str] = Field(default_factory=list)
splitting_ops: List[str] = Field(default=None) # type: ignore
use_inductor: bool = True
compile_sizes: Optional[List[Union[int, str]]] = Field(default=None)
inductor_compile_config: Dict = Field(default_factory=dict)
inductor_passes: Dict[str, str] = Field(default_factory=dict)
use_cudagraph: bool = False
cudagraph_num_of_warmups: int = 0
cudagraph_capture_sizes: Optional[List[int]] = None
cudagraph_copy_inputs: bool = False
class PassConfig(BaseModel):
"""
Configuration for custom Inductor passes.
This is separate from general CompilationConfig so that inductor passes
don't all have access to full configuration - that would create a cycle
as the PassManager is set as a property of config.
- dump_graph_stages: list of stages for which we want to dump the graph.
Each pass defines its own stages (before, after, maybe in-between).
- dump_graph_dir: directory to dump the graphs. Default is .
- enable_fusion: whether to enable the custom fusion pass.
- enable_reshape: whether to enable the custom reshape elimination pass.
TODO better pass enabling system.
"""
dump_graph_stages: List[str] = Field(default_factory=list)
dump_graph_dir: Path = Field(default=Path("."))
enable_fusion: bool = True
enable_reshape: bool = True
def uuid(self):
"""
Produces a hash unique to the pass configuration.
Any new fields that affect compilation should be added to the hash.
Do not include dump_graph_* in the hash - they don't affect
compilation.
"""
dict_ = self.model_dump(
include={"enable_fusion", "enable_reshape"})
encoded = json.dumps(dict_, sort_keys=True).encode("utf-8")
return hashlib.sha256(encoded).digest()
def model_post_init(self, __context: Any) -> None:
if not self.enable_reshape and self.enable_fusion:
logger.warning_once(
"Fusion enabled but reshape elimination disabled."
"RMSNorm + quant (fp8) fusion might not work")
pass_config: PassConfig = Field(default_factory=PassConfig)
# not configurable, computed after init
max_capture_size: int = PrivateAttr
local_cache_dir: str = PrivateAttr # local cache dir for each rank
# optimization:
# Intuitively, bs_to_padded_graph_size should be Dict[int, int].
# since we know all keys are in a range [0, max_capture_size],
# we can optimize it to List[int] for better lookup performance.
bs_to_padded_graph_size: List[int] = PrivateAttr
# keep track of enabled and disabled custom ops
enabled_custom_ops: Counter[str] = PrivateAttr
disabled_custom_ops: Counter[str] = PrivateAttr
traced_files: Set[str] = PrivateAttr
compilation_time: float = PrivateAttr
# Per-model forward context
# Map from layer name to the attention cls
static_forward_context: Dict[str, Any] = PrivateAttr
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
factors: List[Any] = []
factors.append(self.level)
factors.append(self.backend)
factors.append(self.custom_ops)
factors.append(self.splitting_ops)
factors.append(self.use_inductor)
factors.append(self.inductor_compile_config)
factors.append(self.inductor_passes)
factors.append(self.pass_config.uuid())
return hashlib.sha256(str(factors).encode()).hexdigest()
def __repr__(self) -> str:
exclude = {
"static_forward_context",
"enabled_custom_ops",
"disabled_custom_ops",
"compilation_time",
"bs_to_padded_graph_size",
"pass_config",
"traced_files",
}
return self.model_dump_json(exclude=exclude, exclude_unset=True)
__str__ = __repr__
@classmethod
def from_cli(cls, cli_value: str) -> "CompilationConfig":
"""Parse the CLI value for the compilation config."""
if cli_value in ["0", "1", "2", "3"]:
return cls(level=int(cli_value))
# do not use `eval`, it is dangerous and can execute arbitrary code
dict_value = ast.literal_eval(cli_value)
return CompilationConfig.model_validate(dict_value)
def model_post_init(self, __context: Any) -> None:
count_none = self.custom_ops.count("none")
count_all = self.custom_ops.count("all")
assert count_none + count_all <= 1, "Can only specify 'none' or 'all'"
if self.splitting_ops is None:
if envs.VLLM_USE_V1:
# v1 must split the graph on attention ops
# for piecewise cudagraph
self.splitting_ops = [
"vllm.unified_attention",
"vllm.unified_attention_with_output",
]
else:
# v0 uses full graph compilation
self.splitting_ops = []
for k, v in self.inductor_passes.items():
if not isinstance(v, str):
assert callable(v), (
f"pass {k} should be callable or a qualified name")
self.inductor_compile_config[k] = v if isinstance(
v, InductorPass) else CallableInductorPass(v)
continue
# resolve function from qualified name
names = v.split(".")
module = ".".join(names[:-1])
func_name = names[-1]
func = __import__(module).__dict__[func_name]
self.inductor_compile_config[k] = func if isinstance(
func, InductorPass) else CallableInductorPass(func)
self.enabled_custom_ops = Counter()
self.disabled_custom_ops = Counter()
self.traced_files = set()
self.static_forward_context = {}
self.compilation_time = 0.0
def init_backend(self, vllm_config: "VllmConfig") -> Union[str, Callable]:
if self.level == CompilationLevel.NO_COMPILATION:
raise ValueError("No compilation level is set.")
from torch._dynamo.backends.registry import list_backends
torch_backends = list_backends(exclude_tags=tuple())
if self.level in [
CompilationLevel.DYNAMO_AS_IS, CompilationLevel.DYNAMO_ONCE
]:
if self.backend == "":
return "eager"
if self.backend in torch_backends:
return self.backend
return resolve_obj_by_qualname(self.backend)
# TODO: pass user-specified backend to piecewise compilation
# merge with the config use_inductor
assert self.level == CompilationLevel.PIECEWISE
from vllm.compilation.backends import VllmBackend
return VllmBackend(vllm_config)
def init_with_cudagraph_sizes(self,
cudagraph_capture_sizes: List[int]) -> None:
"""To complete the initialization of config,
we need to know the cudagraph sizes."""
if self.cudagraph_capture_sizes is None:
self.cudagraph_capture_sizes = cudagraph_capture_sizes
else:
# de-duplicate the sizes provided by the config
self.cudagraph_capture_sizes = list(
set(self.cudagraph_capture_sizes))
logger.info(("cudagraph sizes specified by model runner"
" %s is overridden by config %s"),
cudagraph_capture_sizes, self.cudagraph_capture_sizes)
computed_compile_sizes = []
if self.compile_sizes is not None:
# de-duplicate the sizes provided by the config
self.compile_sizes = list(set(self.compile_sizes))
for x in self.compile_sizes:
if isinstance(x, str):
assert x == "cudagraph_capture_sizes", \
"Unrecognized size type in compile_sizes, " \
f"expect 'cudagraph_capture_sizes', got {x}"
computed_compile_sizes.extend(self.cudagraph_capture_sizes)
else:
assert isinstance(x, int)
computed_compile_sizes.append(x)
self.compile_sizes = computed_compile_sizes # type: ignore
# sort to make sure cudagraph capture sizes are in descending order
self.cudagraph_capture_sizes.sort(reverse=True)
self.max_capture_size = self.cudagraph_capture_sizes[
0] if self.cudagraph_capture_sizes else 0
# pre-compute the mapping from batch size to padded graph size
self.bs_to_padded_graph_size = [
0 for i in range(self.max_capture_size + 1)
]
for end, start in zip(self.cudagraph_capture_sizes,
self.cudagraph_capture_sizes[1:] + [0]):
for bs in range(start, end):
if bs == start:
self.bs_to_padded_graph_size[bs] = start
else:
self.bs_to_padded_graph_size[bs] = end
self.bs_to_padded_graph_size[
self.max_capture_size] = self.max_capture_size
@dataclass
class VllmConfig:
"""Dataclass which contains all vllm-related configuration. This
simplifies passing around the distinct configurations in the codebase.
"""
model_config: ModelConfig = field(default=None, init=True) # type: ignore
cache_config: CacheConfig = field(default=None, init=True) # type: ignore
parallel_config: ParallelConfig = field(default_factory=ParallelConfig,
init=True)
scheduler_config: SchedulerConfig = field(default_factory=SchedulerConfig,
init=True)
device_config: DeviceConfig = field(default=None,
init=True) # type: ignore
load_config: LoadConfig = field(default=None, init=True) # type: ignore
lora_config: Optional[LoRAConfig] = None
speculative_config: Optional[SpeculativeConfig] = None
decoding_config: Optional[DecodingConfig] = None
observability_config: Optional[ObservabilityConfig] = None
prompt_adapter_config: Optional[PromptAdapterConfig] = None
quant_config: Optional[QuantizationConfig] = None
compilation_config: CompilationConfig = field(default=None,
init=True) # type: ignore
kv_transfer_config: KVTransferConfig = field(default=None,
init=True) # type: ignore
# some opaque config, only used to provide additional information
# for the hash computation, mainly used for testing, debugging or out of
# tree config registration.
additional_config: SupportsHash = field(default=None,
init=True) # type: ignore
instance_id: str = ""
def compute_hash(self) -> str:
"""
WARNING: Whenever a new field is added to this config,
ensure that it is included in the factors list if
it affects the computation graph.
Provide a hash that uniquely identifies all the configs
that affect the structure of the computation
graph from input ids/embeddings to the final hidden states,
excluding anything before input ids/embeddings and after
the final hidden states.
"""
factors: List[Any] = []
# summarize vllm config
vllm_factors: List[Any] = []
from vllm import __version__
vllm_factors.append(__version__)
if self.model_config:
vllm_factors.append(self.model_config.compute_hash())
else:
vllm_factors.append("None")
if self.cache_config:
vllm_factors.append(self.cache_config.compute_hash())
else:
vllm_factors.append("None")
if self.parallel_config:
vllm_factors.append(self.parallel_config.compute_hash())
else:
vllm_factors.append("None")
if self.scheduler_config:
vllm_factors.append(self.scheduler_config.compute_hash())
else:
vllm_factors.append("None")
if self.device_config:
vllm_factors.append(self.device_config.compute_hash())
else:
vllm_factors.append("None")
if self.load_config:
vllm_factors.append(self.load_config.compute_hash())
else:
vllm_factors.append("None")
if self.lora_config:
vllm_factors.append(self.lora_config.compute_hash())
else:
vllm_factors.append("None")
if self.speculative_config:
vllm_factors.append(self.speculative_config.compute_hash())
else:
vllm_factors.append("None")
if self.decoding_config:
vllm_factors.append(self.decoding_config.compute_hash())
else:
vllm_factors.append("None")
if self.observability_config:
vllm_factors.append(self.observability_config.compute_hash())
else:
vllm_factors.append("None")
if self.prompt_adapter_config:
vllm_factors.append(self.prompt_adapter_config.compute_hash())
else:
vllm_factors.append("None")
if self.quant_config:
pass # should be captured by model_config.quantization
if self.compilation_config:
vllm_factors.append(self.compilation_config.compute_hash())
else:
vllm_factors.append("None")
if self.kv_transfer_config:
vllm_factors.append(self.kv_transfer_config.compute_hash())
else:
vllm_factors.append("None")
if self.additional_config:
vllm_factors.append(self.additional_config.compute_hash())
else:
vllm_factors.append("None")
factors.append(vllm_factors)
hash_str = hashlib.md5(str(factors).encode()).hexdigest()[:10]
return hash_str
def pad_for_cudagraph(self, batch_size: int) -> int:
# if batch_size > self.compilation_config.max_capture_size,
# it should raise an IndexError.
# the caller should make sure the batch_size is within the range,
# i.e., batch_size <= self.compilation_config.max_capture_size
return self.compilation_config.bs_to_padded_graph_size[batch_size]
@staticmethod
def _get_quantization_config(
model_config: ModelConfig,
load_config: LoadConfig) -> Optional[QuantizationConfig]:
"""Get the quantization config."""
from vllm.platforms import current_platform
if model_config.quantization is not None:
from vllm.model_executor.model_loader.weight_utils import (
get_quant_config)
quant_config = get_quant_config(model_config, load_config)
capability_tuple = current_platform.get_device_capability()
if capability_tuple is not None:
capability = capability_tuple.to_int()
if capability < quant_config.get_min_capability():
raise ValueError(
f"The quantization method {model_config.quantization} "
"is not supported for the current GPU. Minimum "
f"capability: {quant_config.get_min_capability()}. "
f"Current capability: {capability}.")
supported_dtypes = quant_config.get_supported_act_dtypes()
if model_config.dtype not in supported_dtypes:
raise ValueError(
f"{model_config.dtype} is not supported for quantization "
f"method {model_config.quantization}. Supported dtypes: "
f"{supported_dtypes}")
return quant_config
return None
def with_hf_config(
self,
hf_config: PretrainedConfig,
architectures: Optional[list[str]] = None,
) -> "VllmConfig":
if architectures is not None:
hf_config = copy.deepcopy(hf_config)
hf_config.architectures = architectures
model_config = copy.deepcopy(self.model_config)
model_config.hf_config = hf_config
return replace(self, model_config=model_config)
def __post_init__(self):
"""Verify configs are valid & consistent with each other.
"""
if self.model_config is not None:
self.model_config.verify_async_output_proc(self.parallel_config,
self.speculative_config,
self.device_config)
self.model_config.verify_with_parallel_config(self.parallel_config)
if self.cache_config is not None:
self.cache_config.verify_with_parallel_config(self.parallel_config)
if self.lora_config:
self.lora_config.verify_with_cache_config(self.cache_config)
self.lora_config.verify_with_model_config(self.model_config)
self.lora_config.verify_with_scheduler_config(
self.scheduler_config)
if self.prompt_adapter_config:
self.prompt_adapter_config.verify_with_model_config(
self.model_config)
if self.quant_config is None and \
self.model_config is not None and self.load_config is not None:
self.quant_config = VllmConfig._get_quantization_config(
self.model_config, self.load_config)
from vllm.platforms import current_platform
if self.scheduler_config is not None and \
self.model_config is not None and \
self.scheduler_config.chunked_prefill_enabled and \
self.model_config.dtype == torch.float32 and \
current_platform.get_device_capability() == (7, 5):
logger.warning_once(
"Turing devices tensor cores do not support float32 matmul. "
"To workaround this limitation, vLLM will set 'ieee' input "
"precision for chunked prefill triton kernels.")
if self.compilation_config is None:
self.compilation_config = CompilationConfig()
if envs.VLLM_USE_V1 and self.model_config is not None and \
not self.model_config.enforce_eager:
# NOTE(woosuk): Currently, we use inductor because the piecewise
# CUDA graphs do not work properly with the custom CUDA kernels.
# FIXME(woosuk): Disable inductor to reduce the compilation time
# and avoid any potential issues with the inductor.
self.compilation_config.custom_ops = ["none"]
self.compilation_config.use_cudagraph = True
self.compilation_config.use_inductor = True
self.compilation_config.cudagraph_num_of_warmups = 1
self.compilation_config.pass_config.enable_fusion = False
self.compilation_config.pass_config.enable_reshape = False
self.compilation_config.level = CompilationLevel.PIECEWISE
self._set_cudagraph_sizes()
if self.cache_config is not None and \
self.cache_config.cpu_offload_gb > 0 and \
self.compilation_config.level != CompilationLevel.NO_COMPILATION:
logger.warning(
"CPU offload is not supported with `torch.compile` yet."
" Disabling `torch.compile`.")
self.compilation_config.level = CompilationLevel.NO_COMPILATION
if self.lora_config is not None and self.compilation_config.level !=\
CompilationLevel.NO_COMPILATION:
logger.warning("LoRA is not supported with `torch.compile` yet. "
"Disabling `torch.compile`.")
self.compilation_config.level = CompilationLevel.NO_COMPILATION
current_platform.check_and_update_config(self)
# If MLA is enabled, force disable chunked prefill and prefix caching
if self.model_config and self.model_config.use_mla:
logger.info("MLA is enabled; forcing chunked prefill and prefix "
"caching to be disabled.")
self.scheduler_config.enable_chunked_prefill = False
self.scheduler_config.chunked_prefill_enabled = False
if self.cache_config is not None:
self.cache_config.enable_prefix_caching = False
if not self.instance_id:
self.instance_id = random_uuid()[:5]
def _set_cudagraph_sizes(self):
"""
cudagraph batchsize padding logic:
`[1, 2, 4] + [8 * i for i in range(1, 1025)]` is a list of all possible
batch sizes that cudagraph will capture.
Depending on the engine's configuration of `max_num_seqs`, the
candidate batch sizes to capture cudagraph will shrink to the subset
which just cover the range of `[1, max_num_seqs]`. In the common case,
`max_num_seqs` is 256, and the cudagraph batch sizes will be
`[1, 2, 4, 8, 16, 24, 32, 40, ..., 256]`.
However, if users specify the cudagraph capture sizes through
compilation config, we will use the specified sizes instead.
In the end, `vllm_config.compilation_config.cudagraph_capture_sizes`
will be the final sizes to capture cudagraph (in descending order).
During runtime, if batchsize is larger than
`vllm_config.compilation_config.cudagraph_capture_sizes`,
no cudagraph will be used.
If the batch size is no larger than
`vllm_config.compilation_config.cudagraph_capture_sizes`,
we can quickly find the padded graph size for a given batch size by
looking up `vllm_config.compilation_config.bs_to_padded_graph_size`.
"""
# calculate the default `batch_size_capture_list`
if not envs.VLLM_USE_V1:
batch_size_capture_list = []
max_batchsize_to_capture = 0
if self.scheduler_config is not None and \
self.model_config is not None and \
not self.model_config.enforce_eager:
possible_sizes = [1, 2, 4] + [8 * i for i in range(1, 1025)]
# find the minimum size that is larger than max_num_seqs,
# which then becomes the max_batchsize_to_capture
larger_sizes = [
x for x in possible_sizes
if x >= self.scheduler_config.max_num_seqs
]
if larger_sizes:
max_batchsize_to_capture = larger_sizes[0]
else:
max_batchsize_to_capture = possible_sizes[-1]
# filter out the sizes that are
# larger than max_batchsize_to_capture
batch_size_capture_list = [
size for size in possible_sizes
if size <= max_batchsize_to_capture
]
else:
batch_size_capture_list = []
if self.model_config is not None and \
not self.model_config.enforce_eager:
batch_size_capture_list = [1, 2, 4
] + [i for i in range(8, 513, 8)]
self.compilation_config.init_with_cudagraph_sizes(
batch_size_capture_list)
def __str__(self):
return (
f"model={self.model_config.model!r},"
f" speculative_config={self.speculative_config!r},"
f" tokenizer={self.model_config.tokenizer!r}, "
f"skip_tokenizer_init={self.model_config.skip_tokenizer_init},"
f" tokenizer_mode={self.model_config.tokenizer_mode}, "
f"revision={self.model_config.revision}, "
f"override_neuron_config={self.model_config.override_neuron_config},"
f" tokenizer_revision={self.model_config.tokenizer_revision}, "
f"trust_remote_code={self.model_config.trust_remote_code}, "
f"dtype={self.model_config.dtype}, "
f"max_seq_len={self.model_config.max_model_len},"
f" download_dir={self.load_config.download_dir!r}, "
f"load_format={self.load_config.load_format}, "
f"tensor_parallel_size={self.parallel_config.tensor_parallel_size},"
f" pipeline_parallel_size={self.parallel_config.pipeline_parallel_size}, " # noqa
f"disable_custom_all_reduce={self.parallel_config.disable_custom_all_reduce}, " # noqa
f"quantization={self.model_config.quantization}, "
f"enforce_eager={self.model_config.enforce_eager}, "
f"kv_cache_dtype={self.cache_config.cache_dtype}, "
f" device_config={self.device_config.device}, "
f"decoding_config={self.decoding_config!r}, "
f"observability_config={self.observability_config!r}, "
f"seed={self.model_config.seed}, "
f"served_model_name={self.model_config.served_model_name}, "
f"num_scheduler_steps={self.scheduler_config.num_scheduler_steps}, "
f"multi_step_stream_outputs={self.scheduler_config.multi_step_stream_outputs}, " # noqa
f"enable_prefix_caching={self.cache_config.enable_prefix_caching}, "
f"chunked_prefill_enabled={self.scheduler_config.chunked_prefill_enabled}, " # noqa
f"use_async_output_proc={self.model_config.use_async_output_proc}, "
f"disable_mm_preprocessor_cache={self.model_config.disable_mm_preprocessor_cache!r}, " # noqa
f"mm_processor_kwargs={self.model_config.mm_processor_kwargs}, "
f"pooler_config={self.model_config.pooler_config!r}, "
f"compilation_config={self.compilation_config!r}")
_current_vllm_config: Optional[VllmConfig] = None
@contextmanager
def set_current_vllm_config(vllm_config: VllmConfig, check_compile=False):
"""
Temporarily set the current VLLM config.
Used during model initialization.
We save the current VLLM config in a global variable,
so that all modules can access it, e.g. custom ops
can access the VLLM config to determine how to dispatch.
"""
global _current_vllm_config
old_vllm_config = _current_vllm_config
from vllm.compilation.counter import compilation_counter
num_models_seen = compilation_counter.num_models_seen
try:
_current_vllm_config = vllm_config
yield
finally:
logger.debug("enabled custom ops: %s",
vllm_config.compilation_config.enabled_custom_ops)
logger.debug("disabled custom ops: %s",
vllm_config.compilation_config.disabled_custom_ops)
if check_compile and \
vllm_config.compilation_config.level == CompilationLevel.PIECEWISE \
and compilation_counter.num_models_seen == num_models_seen:
# If the model supports compilation,
# compilation_counter.num_models_seen should be increased
# by at least 1.
# If it is not increased, it means the model does not support
# compilation (does not have @support_torch_compile decorator).
logger.warning(
"`torch.compile` is turned on, but the model %s"
" does not support it. Please open an issue on GitHub"
"if you want it to be supported.",
vllm_config.model_config.model)
_current_vllm_config = old_vllm_config
def get_current_vllm_config() -> VllmConfig:
if _current_vllm_config is None:
# in ci, usually when we test custom ops/modules directly,
# we don't set the vllm config. In that case, we set a default
# config.
logger.warning("Current VLLM config is not set.")
from vllm.config import VllmConfig
return VllmConfig()
return _current_vllm_config