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wehub-resource-sync a203934033
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chore: import upstream snapshot with attribution
2026-07-13 13:34:58 +08:00

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Python

# Copyright (c) ModelScope Contributors. All rights reserved.
import os
from dataclasses import dataclass
from typing import Literal, Optional
from swift.utils import find_free_port, get_device_count, get_logger, safe_snapshot_download
from .base_args import BaseArguments
from .infer_args import InferArguments
logger = get_logger()
@dataclass
class DeployArguments(InferArguments):
"""Arguments for model deployment.
This dataclass, which extends InferArguments, is used to define the arguments required for deploying a model.
Args:
host (str): The host address to bind the server to. Defaults to '0.0.0.0'.
port (int): The port number to bind the server to. Defaults to 8000.
api_key (Optional[str]): The API key for authentication. Defaults to None.
ssl_keyfile (Optional[str]): The path to the SSL key file. Defaults to None.
ssl_certfile (Optional[str]): The path to the SSL certificate file. Defaults to None.
owned_by (str): The owner of the deployment. Defaults to 'swift'.
served_model_name (Optional[str]): The name of the model being served. If None, the model's suffix is used by
default.
verbose (bool): Whether to log detailed request information. Defaults to True.
Note: This defaults to False when used in 'swift app' or 'swift eval'.
log_interval (int): The interval in seconds for printing tokens/s statistics. Set to -1 to disable. Defaults
to 20.
log_level (Literal['critical', 'error', 'warning', 'info', 'debug', 'trace']): Log level. Defaults to 'info'.
max_logprobs (int): The maximum number of logprobs to return to the client. Defaults to 20.
vllm_use_async_engine (Optional[bool]): Whether to use async engine for vLLM.If not set, it defaults to `True`
for deployment scenarios.
"""
host: str = '0.0.0.0'
port: int = 8000
api_key: Optional[str] = None
ssl_keyfile: Optional[str] = None
ssl_certfile: Optional[str] = None
owned_by: str = 'swift'
served_model_name: Optional[str] = None
verbose: bool = True # Whether to log request_info
log_interval: int = 20 # Interval for printing global statistics
log_level: Literal['critical', 'error', 'warning', 'info', 'debug', 'trace'] = 'info'
max_logprobs: int = 20
vllm_use_async_engine: Optional[bool] = None
def __post_init__(self):
# default to True for deployment scenarios
if self.vllm_use_async_engine is None:
self.vllm_use_async_engine = True
super().__post_init__()
self.port = find_free_port(self.port)
def _init_adapters(self):
if isinstance(self.adapters, str):
self.adapters = [self.adapters]
self.adapter_mapping = {}
adapters = []
for i, adapter in enumerate(self.adapters):
adapter_path = adapter.split('=')
if len(adapter_path) == 1:
adapter_path = (None, adapter_path[0])
adapter_name, adapter_path = adapter_path
adapter_path = safe_snapshot_download(adapter_path, use_hf=self.use_hf, hub_token=self.hub_token)
if adapter_name is None:
adapters.append(adapter_path)
else:
self.adapter_mapping[adapter_name] = adapter_path
self.adapters = adapters
def _init_ckpt_dir(self, adapters=None):
return super()._init_ckpt_dir(self.adapters + list(self.adapter_mapping.values()))
def _init_stream(self):
return BaseArguments._init_stream(self)
@dataclass
class RolloutArguments(DeployArguments):
"""Arguments for the Rollout phase in online/reinforcement learning.
This dataclass inherits from DeployArguments and adds specific parameters for the Rollout process in online
learning, such as GRPO.
Args:
multi_turn_scheduler (Optional[str]): The scheduler for multi-turn GRPO training. Pass the name of the
corresponding plugin implemented in `swift/rollout/multi_turn.py`. Defaults to None. Refer to the
documentation for details.
max_turns (Optional[int]): The maximum number of turns in multi-turn GRPO training. If None, no limit is
imposed. Defaults to None.
vllm_enable_lora (bool): Whether to enable the vLLM Engine to load LoRA adapters. Enabling this can accelerate
weight synchronization during LoRA training. Defaults to False. Refer to the documentation for details.
vllm_max_lora_rank (int): The LoRA rank parameter for the vLLM Engine. This value must be greater than or
equal to the `lora_rank` used for training; setting them as equal is recommended. Defaults to 16.
"""
vllm_use_async_engine: Optional[bool] = None
use_gym_env: Optional[bool] = None
# only for GRPO rollout with AsyncEngine, see details in swift/rollout/multi_turn
multi_turn_scheduler: Optional[str] = None
max_turns: Optional[int] = None
vllm_enable_lora: bool = False
vllm_max_lora_rank: int = 16
# GYM env
gym_env: Optional[str] = None
context_manager: Optional[str] = None
def __post_init__(self):
self._set_default_engine_type()
super().__post_init__()
self._check_args()
self._check_device_count()
self._check_vllm_enable_expert_parallel()
self._check_deprecated_args()
self._set_default_audio_load_backend()
def _set_default_engine_type(self):
if self.vllm_use_async_engine is None:
if self.multi_turn_scheduler:
self.vllm_use_async_engine = True
else:
self.vllm_use_async_engine = False
if self.use_gym_env is None:
self.use_gym_env = self.gym_env is not None
def _check_args(self):
if self.vllm_pipeline_parallel_size > 1:
raise ValueError('RolloutArguments does not support pipeline parallelism, '
'please set vllm_pipeline_parallel_size to 1.')
if self.vllm_reasoning_parser is not None:
raise ValueError('vllm_reasoning_parser is not supported for Rollout, please unset it.')
if self.multi_turn_scheduler and not self.vllm_use_async_engine:
raise ValueError('please set vllm_use_async_engine to True with multi-turn scheduler.')
def _check_device_count(self):
local_device_count = get_device_count()
required_device_count = self.vllm_data_parallel_size * self.vllm_tensor_parallel_size
if local_device_count < required_device_count:
msg = (f'Error: local_device_count ({local_device_count}) must be greater than or equal to '
f'the product of vllm_data_parallel_size ({self.vllm_data_parallel_size}) and '
f'vllm_tensor_parallel_size ({self.vllm_tensor_parallel_size}). '
f'Current required_device_count = {required_device_count}.')
raise ValueError(msg)
if local_device_count > required_device_count:
logger.warning_once(
f'local_device_count ({local_device_count}) is greater than required_device_count ({required_device_count}). ' # noqa
f'Only the first {required_device_count} devices will be utilized for rollout. '
f'To fully utilize resources, set vllm_tensor_parallel_size * vllm_data_parallel_size = device_count. ' # noqa
f'device_count: {local_device_count}, '
f'vllm_tensor_parallel_size: {self.vllm_tensor_parallel_size}, '
f'vllm_data_parallel_size: {self.vllm_data_parallel_size}, '
f'required_device_count: {required_device_count}.')
def _check_vllm_enable_expert_parallel(self):
if self.vllm_enable_expert_parallel and not self.vllm_use_async_engine:
self.vllm_use_async_engine = True
logger.warning('vllm_enable_expert_parallel is only supported with vllm_use_async_engine, '
'set vllm_use_async_engine to True.')
def _check_deprecated_args(self):
if self.context_manager is not None:
raise ValueError('The "context_manager" argument has been removed. '
'If you need to dynamically modify the conversation history between rollout turns '
'(e.g. history compression, prompt injection), implement that logic in a custom '
'`MultiTurnScheduler` subclass by overriding `step` / `run`, '
'and pass it via `--multi_turn_scheduler your_scheduler_name`.')
def _set_default_audio_load_backend(self):
# Rollout uses GRPOVllmEngine (vLLM-only); align audio decode with vLLM multimodal loader.
if os.getenv('SWIFT_AUDIO_LOAD_BACKEND') is None:
os.environ['SWIFT_AUDIO_LOAD_BACKEND'] = 'soundfile_pyav'