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- #!/usr/bin/env python
- # -*- coding: utf-8 -*-
- """
- AI模型处理器
- 用于管理生成、与嵌入模型的创建和配置
- 支持的模型类型:
- - doubao: 豆包模型
- - qwen: 通义千问模型
- - deepseek: DeepSeek模型
- - lq_qwen3_8b: 本地Qwen3-8B模型
- - lq_qwen3_8b_lq_lora: 本地Qwen3-8B-lq-lora模型
- - lq_qwen3_4b: 本地Qwen3-4B模型
- - qwen_local_14b: 本地Qwen3-14B模型
- - shutian_qwen3_embed: 蜀天Qwen3-Embedding-8B嵌入模型(默认)
- - siliconflow_embed: 硅基流动Qwen3-Embedding-8B嵌入模型
- - lq_bge_reranker_v2_m3: 本地BGE-reranker-v2-m3重排序模型
- - qwen3_5_35b_a3b: DashScope Qwen3.5-35B-A3B模型(默认兜底模型)
- - qwen3_5_27b: DashScope Qwen3.5-27B模型
- - qwen3_5_122b_a10b: DashScope Qwen3.5-122B-A10B模型
- - shutian_qwen3_5_122b: 蜀天Qwen3.5-122B-A10B模型(183.220.37.46:25423)
- - shutian_qwen3_8b: 蜀天Qwen3-8B模型(183.220.37.46:25424)
- - shutian_qwen3_5_35b: 蜀天Qwen3.5-35B模型(183.220.37.46:25427)
- - shutian_qwen3_6_27b: 蜀天Qwen3.6-27B模型(183.220.37.46:25424)
- - shutian_qwen3_embed: 蜀天Qwen3-Embedding-8B模型(183.220.37.46:25425)
- - shutian_qwen3_reranker: 蜀天Qwen3-Reranker-8B模型(183.220.37.46:25426)
- """
- # 禁用 transformers 的深度学习框架检测,避免启动时耗时扫描
- import os
- os.environ["TRANSFORMERS_VERBOSITY"] = "error"
- os.environ["HF_HUB_DISABLE_TELEMETRY"] = "1"
- import requests
- from langchain_openai import ChatOpenAI, OpenAIEmbeddings
- from foundation.infrastructure.config.config import config_handler
- from foundation.observability.logger.loggering import review_logger as logger
- class ModelConnectionError(Exception):
- """模型连接错误"""
- pass
- class ModelConfigError(Exception):
- """模型配置错误"""
- pass
- class ModelAPIError(Exception):
- """模型API调用错误"""
- pass
- class ModelHandler:
- """
- AI模型处理器类,用于管理多种AI模型的创建和配置
- """
- # 模型连接超时时间配置(秒)
- CONNECTION_TIMEOUT = 30
- REQUEST_TIMEOUT = 180
- REQUEST_TIMEOUT_THINKING = 360
- MAX_RETRIES = 2
- # 模型类型 → 工厂方法 注册表
- MODEL_FACTORY_MAP = {
- "doubao": "_get_doubao_model",
- "qwen": "_get_qwen_model",
- "deepseek": "_get_deepseek_model",
- "lq_qwen3_8b": "_get_lq_qwen3_8b_model",
- "lq_qwen3_8b_lq_lora": "_get_lq_qwen3_8b_lora_model",
- "lq_qwen3_4b": "_get_lq_qwen3_4b_model",
- "qwen_local_14b": "_get_qwen_local_14b_model",
- "qwen3_5_35b_a3b": "_get_qwen3_5_35b_a3b_model",
- "qwen3_5_27b": "_get_qwen3_5_27b_model",
- "qwen3_5_122b_a10b": "_get_qwen3_5_122b_a10b_model",
- "shutian_qwen3_5_122b": "_get_shutian_qwen3_5_122b_model",
- "shutian_qwen3_8b": "_get_shutian_qwen3_8b_model",
- "shutian_qwen3_5_35b": "_get_shutian_qwen3_5_35b_model",
- "shutian_qwen3_6_27b": "_get_shutian_qwen3_6_27b_model",
- }
- DEFAULT_FALLBACK_MODEL = "qwen3_5_35b_a3b"
- def __init__(self):
- """
- 初始化模型处理器
- 加载配置处理器,用于后续读取各种模型的配置信息
- """
- self.config = config_handler
- self._model_cache = {} # 模型实例缓存
- self._request_timeout_override = None
- def _create_model_by_type(self, model_type: str):
- """根据模型类型名称创建模型实例(通过注册表分发)"""
- method_name = self.MODEL_FACTORY_MAP.get(model_type)
- if method_name:
- return getattr(self, method_name)()
- logger.warning(f"未知的模型类型 '{model_type}',使用默认 {self.DEFAULT_FALLBACK_MODEL} 模型")
- return self._get_qwen3_5_35b_a3b_model()
- @property
- def request_timeout(self):
- """当前请求超时时间,有 override 时优先返回 override"""
- return self._request_timeout_override or self.REQUEST_TIMEOUT
- def _check_connection(self, base_url: str, api_key: str = None, timeout: int = 5) -> bool:
- """
- 检查模型服务连接是否可用
- 支持两种检查方式:
- 1. GET /models - 标准 OpenAI 兼容接口
- 2. POST /chat/completions - 直接测试 chat 接口(部分服务只支持此接口)
- Args:
- base_url: 模型服务地址
- api_key: API密钥(可选)
- timeout: 超时时间(秒)
- Returns:
- bool: 连接是否可用
- """
- headers = {}
- if api_key and api_key != "dummy":
- headers["Authorization"] = f"Bearer {api_key}"
- # 方法1: 尝试 /models 端点
- try:
- health_url = f"{base_url.rstrip('/')}/models"
- response = requests.get(
- health_url,
- headers=headers,
- timeout=timeout
- )
- if 200 <= response.status_code < 300:
- logger.debug(f"连接检查通过 (/models): {base_url}")
- return True
- except requests.exceptions.Timeout:
- logger.debug(f"连接检查超时 (/models): {base_url}")
- except Exception as e:
- logger.debug(f"连接检查失败 (/models): {base_url}, {e}")
- # 方法2: 尝试 /chat/completions 端点(发送一个简单请求)
- try:
- chat_url = f"{base_url.rstrip('/')}/chat/completions"
- test_payload = {
- "model": "test",
- "messages": [{"role": "user", "content": "test"}],
- "max_tokens": 1
- }
- response = requests.post(
- chat_url,
- headers={**headers, "Content-Type": "application/json"},
- json=test_payload,
- timeout=timeout
- )
- # 即使返回 400/401/404 也说明服务是通的
- # 只有连接错误/超时才是真的连不上
- if response.status_code != 503: # 503 表示服务不可用
- logger.debug(f"连接检查通过 (/chat/completions): {base_url}, 状态码: {response.status_code}")
- return True
- except requests.exceptions.Timeout:
- logger.warning(f"连接检查超时: {base_url}")
- except requests.exceptions.ConnectionError as e:
- logger.warning(f"连接检查错误: {base_url}, {e}")
- except Exception as e:
- logger.warning(f"连接检查异常: {base_url}, {e}")
- return False
- def _handle_model_error(self, model_name: str, error: Exception, fallback_model=None):
- """
- 统一处理模型错误
- Args:
- model_name: 模型名称
- error: 异常对象
- fallback_model: 降级模型实例(可选)
- Returns:
- 降级模型实例,如果不可用则返回None
- """
- error_type = type(error).__name__
- error_msg = str(error)
- logger.error(f"模型初始化失败 [{model_name}]: {error_type} - {error_msg}")
- # 如果提供了降级模型,记录日志并返回
- if fallback_model:
- logger.warning(f"使用降级模型: {fallback_model.__class__.__name__}")
- return fallback_model
- # 如果没有降级模型,返回None让调用方处理
- return None
- def get_models(self):
- """
- 获取AI模型实例
- Returns:
- ChatOpenAI: 配置好的AI模型实例
- Note:
- 优先从 model_setting.yaml 读取默认模型配置,如果不存在则回退到 config.ini 的 MODEL_TYPE
- 支持的模型类型:doubao, qwen, deepseek, lq_qwen3_8b, lq_qwen3_8b_lora, lq_qwen3_4b, qwen_local_14b
- """
- # 优先从 model_setting.yaml 读取默认模型配置
- try:
- from foundation.ai.models.model_config_loader import get_model_for_function
- model_type = get_model_for_function("default")
- if model_type:
- logger.debug(f"从 model_setting.yaml 读取默认模型: {model_type}")
- else:
- model_type = self.DEFAULT_FALLBACK_MODEL
- except Exception as e:
- logger.debug(f"从 model_setting.yaml 读取默认模型失败: {e},回退到默认模型")
- model_type = self.DEFAULT_FALLBACK_MODEL
- logger.info(f"正在初始化AI模型,模型类型: {model_type}")
- # 检查缓存
- cache_key = f"chat_{model_type}"
- if cache_key in self._model_cache:
- logger.info(f"使用缓存的模型: {model_type}")
- return self._model_cache[cache_key]
- model = None
- try:
- model = self._create_model_by_type(model_type)
- if model:
- self._model_cache[cache_key] = model
- logger.info(f"AI模型初始化完成: {model_type}")
- return model
- else:
- raise ModelAPIError(f"模型初始化返回None: {model_type}")
- except Exception as e:
- logger.error(f"获取模型失败 [{model_type}]: {e}")
- # 使用 qwen3_5_35b_a3b 作为兜底降级方案
- if model_type != "qwen3_5_35b_a3b":
- logger.info("尝试使用 qwen3_5_35b_a3b 模型作为降级方案")
- try:
- fallback_model = self._get_qwen3_5_35b_a3b_model()
- if fallback_model:
- self._model_cache[cache_key] = fallback_model
- logger.warning("已切换到 qwen3_5_35b_a3b 降级模型")
- return fallback_model
- except Exception as fallback_error:
- logger.error(f"降级模型也失败: {fallback_error}")
- # 如果所有模型都失败,抛出异常
- raise ModelConnectionError(f"无法初始化任何模型服务: {e}")
- def get_model_by_name(self, model_type: str = None, enable_thinking: bool = False):
- """
- 根据模型名称动态获取指定的AI模型实例
- Args:
- model_type: 模型类型名称,如果为None则使用配置文件中的默认模型
- 支持的模型类型:doubao, qwen, deepseek, gemini,
- lq_qwen3_8b, lq_qwen3_8b_lq_lora,
- lq_qwen3_4b, qwen_local_14b
- enable_thinking: 是否启用推理模式,影响 HTTP 超时时间
- Returns:
- ChatOpenAI: 配置好的AI模型实例
- Note:
- 该方法支持动态切换模型,不受配置文件中的默认MODEL_TYPE限制
- 如果model_type为None,则使用配置文件中的默认模型
- 如果model_type无效,则使用gemini作为降级模型
- """
- # 如果未指定模型类型,使用配置文件中的默认模型
- if model_type is None:
- model_type = self.DEFAULT_FALLBACK_MODEL
- logger.info(f"动态获取AI模型,模型类型: {model_type}, thinking: {enable_thinking}")
- # 检查缓存(thinking 模式使用独立缓存)
- cache_key = f"chat_{model_type}" if not enable_thinking else f"chat_{model_type}_thinking"
- if cache_key in self._model_cache:
- logger.info(f"使用缓存的模型: {model_type}")
- return self._model_cache[cache_key]
- # 设置超时 override,工厂方法通过 self.request_timeout 读取
- self._request_timeout_override = (
- self.REQUEST_TIMEOUT_THINKING if enable_thinking else None
- )
- model = None
- try:
- model = self._create_model_by_type(model_type)
- if model:
- self._model_cache[cache_key] = model
- logger.info(f"AI模型动态初始化完成: {model_type}")
- return model
- else:
- raise ModelAPIError(f"模型初始化返回None: {model_type}")
- except Exception as e:
- logger.error(f"动态获取模型失败 [{model_type}]: {e}")
- # 使用 qwen3_5_35b_a3b 作为兜底降级方案
- if model_type != "qwen3_5_35b_a3b":
- logger.info("尝试使用 qwen3_5_35b_a3b 模型作为降级方案")
- try:
- fallback_model = self._get_qwen3_5_35b_a3b_model()
- if fallback_model:
- # 注意:不要把降级模型存入原模型的缓存,避免后续调用都使用错误的模型
- fallback_cache_key = "chat_qwen3_5_35b_a3b"
- self._model_cache[fallback_cache_key] = fallback_model
- logger.warning(f"已切换到 qwen3_5_35b_a3b 降级模型(不会缓存为 {model_type})")
- return fallback_model
- except Exception as fallback_error:
- logger.error(f"降级模型也失败: {fallback_error}")
- # 如果所有模型都失败,抛出异常
- raise ModelConnectionError(f"无法初始化任何模型服务: {e}")
- finally:
- self._request_timeout_override = None
- def get_model_by_function(self, function_name: str):
- """
- 根据功能名称获取对应的AI模型实例
- 从 config/model_setting.yaml 加载功能对应的模型配置
- Args:
- function_name: 功能名称(定义在 model_setting.yaml 中),如:
- - doc_classification_secondary: 文档二级分类
- - completeness_review_generate: 完整性审查生成
- - sensitive_check: 敏感信息检查
- - grammar_check: 语法检查
- Returns:
- ChatOpenAI: 配置好的AI模型实例
- Example:
- model = model_handler.get_model_by_function("doc_classification_secondary")
- """
- try:
- from foundation.ai.models.model_config_loader import get_model_for_function
- model_type = get_model_for_function(function_name)
- logger.info(f"根据功能 '{function_name}' 获取模型: {model_type}")
- return self.get_model_by_name(model_type)
- except Exception as e:
- logger.warning(f"根据功能获取模型失败 [{function_name}]: {e},尝试使用默认模型")
- try:
- default_model = get_model_for_function("default")
- return self.get_model_by_name(default_model)
- except Exception:
- return self.get_model_by_name(self.DEFAULT_FALLBACK_MODEL)
- def get_embedding_model(self):
- """
- 获取Embedding模型实例
- Returns:
- OpenAIEmbeddings: 配置好的Embedding模型实例
- Note:
- 从 model_setting.yaml 读取embedding模型配置
- 支持的模型类型:shutian_qwen3_embed, siliconflow_embed
- 默认返回蜀天 shutian_qwen3_embed 模型
- """
- embedding_model_type = "shutian_qwen3_embed"
- try:
- from .model_config_loader import get_model_for_function
- model_name = get_model_for_function("embedding")
- if model_name:
- embedding_model_type = model_name
- logger.debug(f"从 model_setting.yaml 读取embedding模型: {embedding_model_type}")
- except Exception as e:
- logger.debug(f"从 model_setting.yaml 读取embedding配置失败: {e}")
- logger.info(f"正在初始化Embedding模型,模型类型: {embedding_model_type}")
- # 检查缓存
- cache_key = f"embed_{embedding_model_type}"
- if cache_key in self._model_cache:
- logger.info(f"使用缓存的Embedding模型: {embedding_model_type}")
- return self._model_cache[cache_key]
- model = None
- try:
- if embedding_model_type == "siliconflow_embed":
- model = self._get_siliconflow_embedding_model()
- elif embedding_model_type == "shutian_qwen3_embed":
- model = self._get_shutian_qwen3_embed()
- else:
- # 默认返回蜀天Embedding模型
- logger.warning(f"未知的Embedding模型类型 '{embedding_model_type}',使用默认蜀天Embedding")
- model = self._get_shutian_qwen3_embed()
- if model:
- self._model_cache[cache_key] = model
- logger.info(f"Embedding模型初始化完成: {embedding_model_type}")
- return model
- else:
- raise ModelAPIError(f"Embedding模型初始化返回None: {embedding_model_type}")
- except (ModelConnectionError, Exception) as e:
- logger.error(f"获取Embedding模型失败 [{embedding_model_type}]: {e}")
- raise ModelConnectionError(f"无法初始化Embedding模型服务: {e}")
- def _get_doubao_model(self):
- """
- 获取豆包模型
- Returns:
- ChatOpenAI: 配置好的豆包模型实例
- """
- try:
- doubao_url = self.config.get("doubao", "DOUBAO_SERVER_URL")
- doubao_model_id = self.config.get("doubao", "DOUBAO_MODEL_ID")
- doubao_api_key = self.config.get("doubao", "DOUBAO_API_KEY")
- # 验证配置完整性
- if not all([doubao_url, doubao_model_id, doubao_api_key]):
- missing = []
- if not doubao_url:
- missing.append("DOUBAO_SERVER_URL")
- if not doubao_model_id:
- missing.append("DOUBAO_MODEL_ID")
- if not doubao_api_key:
- missing.append("DOUBAO_API_KEY")
- raise ModelConfigError(f"豆包模型配置不完整,缺少: {', '.join(missing)}")
- # 检查连接
- if not self._check_connection(doubao_url, doubao_api_key):
- logger.warning(f"豆包模型服务连接失败: {doubao_url}")
- raise ModelConnectionError(f"无法连接到豆包模型服务: {doubao_url}")
- llm = ChatOpenAI(
- base_url=doubao_url,
- model=doubao_model_id,
- api_key=doubao_api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- extra_body={
- "enable_thinking": False,
- })
- logger.info(f"豆包模型初始化成功: {doubao_model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"豆包模型初始化异常: {e}")
- return self._handle_model_error("doubao", error)
- def _get_qwen_model(self):
- """
- 获取通义千问模型
- Returns:
- ChatOpenAI: 配置好的通义千问模型实例
- """
- try:
- qwen_url = self.config.get("qwen", "QWEN_SERVER_URL")
- qwen_model_id = self.config.get("qwen", "QWEN_MODEL_ID")
- qwen_api_key = self.config.get("qwen", "QWEN_API_KEY")
- # 验证配置完整性
- if not all([qwen_url, qwen_model_id, qwen_api_key]):
- missing = []
- if not qwen_url:
- missing.append("QWEN_SERVER_URL")
- if not qwen_model_id:
- missing.append("QWEN_MODEL_ID")
- if not qwen_api_key:
- missing.append("QWEN_API_KEY")
- raise ModelConfigError(f"通义千问模型配置不完整,缺少: {', '.join(missing)}")
- # 检查连接
- if not self._check_connection(qwen_url, qwen_api_key):
- logger.warning(f"通义千问模型服务连接失败: {qwen_url}")
- raise ModelConnectionError(f"无法连接到通义千问模型服务: {qwen_url}")
- llm = ChatOpenAI(
- base_url=qwen_url,
- model=qwen_model_id,
- api_key=qwen_api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- extra_body={
- "enable_thinking": False,
- })
- logger.info(f"通义千问模型初始化成功: {qwen_model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"通义千问模型初始化异常: {e}")
- return self._handle_model_error("qwen", error)
- def _get_deepseek_model(self):
- """
- 获取DeepSeek模型
- Returns:
- ChatOpenAI: 配置好的DeepSeek模型实例
- """
- try:
- deepseek_url = self.config.get("deepseek", "DEEPSEEK_SERVER_URL")
- deepseek_model_id = self.config.get("deepseek", "DEEPSEEK_MODEL_ID")
- deepseek_api_key = self.config.get("deepseek", "DEEPSEEK_API_KEY")
- # 验证配置完整性
- if not all([deepseek_url, deepseek_model_id, deepseek_api_key]):
- missing = []
- if not deepseek_url:
- missing.append("DEEPSEEK_SERVER_URL")
- if not deepseek_model_id:
- missing.append("DEEPSEEK_MODEL_ID")
- if not deepseek_api_key:
- missing.append("DEEPSEEK_API_KEY")
- raise ModelConfigError(f"DeepSeek模型配置不完整,缺少: {', '.join(missing)}")
- # 检查连接
- if not self._check_connection(deepseek_url, deepseek_api_key):
- logger.warning(f"DeepSeek模型服务连接失败: {deepseek_url}")
- raise ModelConnectionError(f"无法连接到DeepSeek模型服务: {deepseek_url}")
- llm = ChatOpenAI(
- base_url=deepseek_url,
- model=deepseek_model_id,
- api_key=deepseek_api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- extra_body={
- "enable_thinking": False,
- })
- logger.info(f"DeepSeek模型初始化成功: {deepseek_model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"DeepSeek模型初始化异常: {e}")
- return self._handle_model_error("deepseek", error)
- def _get_lq_qwen3_8b_model(self):
- """
- 获取本地Qwen3-8B-Instruct模型
- Returns:
- ChatOpenAI: 配置好的本地Qwen3-8B模型实例
- """
- try:
- server_url = self.config.get("lq_qwen3_8b", "QWEN_LOCAL_1_5B_SERVER_URL", "http://192.168.91.253:9002/v1")
- model_id = self.config.get("lq_qwen3_8b", "QWEN_LOCAL_1_5B_MODEL_ID", "Qwen3-8B")
- api_key = self.config.get("lq_qwen3_8b", "QWEN_LOCAL_1_5B_API_KEY", "dummy")
- if not all([server_url, model_id]):
- raise ModelConfigError("本地Qwen3-8B模型配置不完整")
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"本地Qwen3-8B模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到本地Qwen3-8B模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"本地Qwen3-8B模型初始化成功: {model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"本地Qwen3-8B模型初始化异常: {e}")
- return self._handle_model_error("lq_qwen3_8b", error)
- def _get_lq_qwen3_8b_lora_model(self):
- """
- 获取本地Qwen3-8B-lq-lora模型
- Returns:
- ChatOpenAI: 配置好的本地Qwen3-8B-lq-lora模型实例
- """
- try:
- server_url = self.config.get("lq_qwen3_8B_lora", "LQ_QWEN3_8B_LQ_LORA_SERVER_URL")
- model_id = self.config.get("lq_qwen3_8B_lora", "LQ_QWEN3_8B_LQ_LORA_MODEL_ID")
- api_key = self.config.get("lq_qwen3_8B_lora", "LQ_QWEN3_8B_LQ_LORA_API_KEY", "dummy")
- # 验证配置完整性
- if not all([server_url, model_id]):
- missing = []
- if not server_url:
- missing.append("LQ_QWEN3_8B_LQ_LORA_SERVER_URL")
- if not model_id:
- missing.append("LQ_QWEN3_8B_LQ_LORA_MODEL_ID")
- raise ModelConfigError(f"本地Qwen3-8B-lq-lora模型配置不完整,缺少: {', '.join(missing)}")
- # 检查本地服务连接
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"本地Qwen3-8B-lq-lora模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到本地Qwen3-8B-lq-lora模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"本地Qwen3-8B-lq-lora模型初始化成功: {model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"本地Qwen3-8B-lq-lora模型初始化异常: {e}")
- return self._handle_model_error("lq_qwen3_8b_lora", error)
- def _get_lq_qwen3_4b_model(self):
- """
- 获取本地Qwen3-4B-Instruct模型
- Returns:
- ChatOpenAI: 配置好的本地Qwen3-4B模型实例
- """
- try:
- server_url = self.config.get("lq_qwen3_4b", "QWEN_LOCAL_1_5B_SERVER_URL", "http://192.168.91.253:9001/v1")
- model_id = self.config.get("lq_qwen3_4b", "QWEN_LOCAL_1_5B_MODEL_ID", "Qwen3-4B")
- api_key = self.config.get("lq_qwen3_4b", "QWEN_LOCAL_1_5B_API_KEY", "dummy")
- if not all([server_url, model_id]):
- raise ModelConfigError("本地Qwen3-4B模型配置不完整")
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"本地Qwen3-4B模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到本地Qwen3-4B模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"本地Qwen3-4B模型初始化成功: {model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"本地Qwen3-4B模型初始化异常: {e}")
- return self._handle_model_error("lq_qwen3_4b", error)
- def _get_qwen_local_14b_model(self):
- """
- 获取本地Qwen3-14B-Instruct模型
- Returns:
- ChatOpenAI: 配置好的本地Qwen3-14B模型实例
- """
- try:
- server_url = self.config.get("qwen_local_14b", "QWEN_LOCAL_14B_SERVER_URL", "http://192.168.91.253:9003/v1")
- model_id = self.config.get("qwen_local_14b", "QWEN_LOCAL_14B_MODEL_ID", "Qwen3-14B")
- api_key = self.config.get("qwen_local_14b", "QWEN_LOCAL_14B_API_KEY", "dummy")
- if not all([server_url, model_id]):
- raise ModelConfigError("本地Qwen3-14B模型配置不完整")
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"本地Qwen3-14B模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到本地Qwen3-14B模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"本地Qwen3-14B模型初始化成功: {model_id}")
- return llm
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"本地Qwen3-14B模型初始化异常: {e}")
- return self._handle_model_error("qwen_local_14b", error)
- def _get_qwen3_5_35b_a3b_model(self):
- """
- 获取 DashScope Qwen3.5-35B-A3B 模型
- Returns:
- ChatOpenAI: 配置好的 DashScope Qwen3.5-35B-A3B 模型实例
- """
- try:
- url = self.config.get("qwen3_5_35b_a3b", "DASHSCOPE_SERVER_URL")
- model_id = self.config.get("qwen3_5_35b_a3b", "DASHSCOPE_MODEL_ID")
- api_key = self.config.get("qwen3_5_35b_a3b", "DASHSCOPE_API_KEY")
- # 验证配置完整性
- if not all([url, model_id, api_key]):
- missing = []
- if not url:
- missing.append("DASHSCOPE_SERVER_URL")
- if not model_id:
- missing.append("DASHSCOPE_MODEL_ID")
- if not api_key:
- missing.append("DASHSCOPE_API_KEY")
- raise ModelConfigError(f"DashScope Qwen3.5-35B 模型配置不完整,缺少: {', '.join(missing)}")
- llm = ChatOpenAI(
- base_url=url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- extra_body={
- "chat_template_kwargs": {"enable_thinking": False}
- }
- )
- logger.info(f"DashScope Qwen3.5-35B 模型初始化成功: {model_id} (思考模式: 关闭)")
- return llm
- except ModelConfigError:
- raise
- except Exception as e:
- return self._handle_model_error("qwen3_5_35b_a3b", ModelAPIError(str(e)))
- def _get_qwen3_5_27b_model(self):
- """
- 获取 DashScope Qwen3.5-27B 模型
- Returns:
- ChatOpenAI: 配置好的 DashScope Qwen3.5-27B 模型实例
- """
- try:
- url = self.config.get("qwen3_5_27b", "DASHSCOPE_SERVER_URL")
- model_id = self.config.get("qwen3_5_27b", "DASHSCOPE_MODEL_ID")
- api_key = self.config.get("qwen3_5_27b", "DASHSCOPE_API_KEY")
- # 验证配置完整性
- if not all([url, model_id, api_key]):
- missing = []
- if not url:
- missing.append("DASHSCOPE_SERVER_URL")
- if not model_id:
- missing.append("DASHSCOPE_MODEL_ID")
- if not api_key:
- missing.append("DASHSCOPE_API_KEY")
- raise ModelConfigError(f"DashScope Qwen3.5-27B 模型配置不完整,缺少: {', '.join(missing)}")
- llm = ChatOpenAI(
- base_url=url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- extra_body={
- "chat_template_kwargs": {"enable_thinking": False}
- }
- )
- logger.info(f"DashScope Qwen3.5-27B 模型初始化成功: {model_id} (思考模式: 关闭)")
- return llm
- except ModelConfigError:
- raise
- except Exception as e:
- return self._handle_model_error("qwen3_5_27b", ModelAPIError(str(e)))
- def _get_qwen3_5_122b_a10b_model(self):
- """
- 获取 DashScope Qwen3.5-122B-A10B 模型
- Returns:
- ChatOpenAI: 配置好的 DashScope Qwen3.5-122B-A10B 模型实例
- """
- try:
- url = self.config.get("qwen3_5_122b_a10b", "DASHSCOPE_SERVER_URL")
- model_id = self.config.get("qwen3_5_122b_a10b", "DASHSCOPE_MODEL_ID")
- api_key = self.config.get("qwen3_5_122b_a10b", "DASHSCOPE_API_KEY")
- # 验证配置完整性
- if not all([url, model_id, api_key]):
- missing = []
- if not url:
- missing.append("DASHSCOPE_SERVER_URL")
- if not model_id:
- missing.append("DASHSCOPE_MODEL_ID")
- if not api_key:
- missing.append("DASHSCOPE_API_KEY")
- raise ModelConfigError(f"DashScope Qwen3.5-122B 模型配置不完整,缺少: {', '.join(missing)}")
- llm = ChatOpenAI(
- base_url=url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- extra_body={
- "chat_template_kwargs": {"enable_thinking": False}
- }
- )
- logger.info(f"DashScope Qwen3.5-122B 模型初始化成功: {model_id} (思考模式: 关闭)")
- return llm
- except ModelConfigError:
- raise
- except Exception as e:
- return self._handle_model_error("qwen3_5_122b_a10b", ModelAPIError(str(e)))
- def _get_siliconflow_embedding_model(self):
- """
- 获取硅基流动Qwen3-Embedding-8B嵌入模型
- Returns:
- OpenAIEmbeddings: 配置好的硅基流动Qwen3-Embedding-8B嵌入模型实例
- """
- try:
- server_url = self.config.get("siliconflow_embed", "SLCF_EMBED_SERVER_URL")
- api_key = self.config.get("siliconflow_embed", "SLCF_EMBED_API_KEY")
- model_id = self.config.get("siliconflow_embed", "SLCF_EMBED_MODEL_ID", "Qwen/Qwen3-Embedding-8B")
- dimensions = self.config.get("siliconflow_embed", "SLCF_EMBED_DIMENSIONS", "4096")
- # 验证配置完整性
- if not all([server_url, api_key, model_id]):
- missing = []
- if not server_url:
- missing.append("SLCF_EMBED_SERVER_URL")
- if not api_key:
- missing.append("SLCF_EMBED_API_KEY")
- if not model_id:
- missing.append("SLCF_EMBED_MODEL_ID")
- raise ModelConfigError(f"硅基流动Embedding模型配置不完整,缺少: {', '.join(missing)}")
- # 检查连接
- if not self._check_connection(server_url, api_key):
- logger.warning(f"硅基流动Embedding模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到硅基流动Embedding模型服务: {server_url}")
- # 使用 langchain_openai 的 OpenAIEmbeddings
- embeddings = OpenAIEmbeddings(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- timeout=self.request_timeout,
- tiktoken_enabled=False,
- check_embedding_ctx_length=False,
- max_retries=0, # 禁用SDK内置重试,由EmbeddingClient统一管理
- )
- logger.info(f"硅基流动Embedding模型初始化成功: {model_id} (dimensions: {dimensions})")
- return embeddings
- except ModelConfigError:
- raise
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"硅基流动Embedding模型初始化异常: {e}")
- return self._handle_model_error("siliconflow_embed", error)
- def _get_shutian_qwen3_5_122b_model(self):
- """
- 获取蜀天Qwen3.5-122B-A10B模型
- Returns:
- ChatOpenAI: 配置好的蜀天Qwen3.5-122B模型实例
- """
- try:
- server_url = self.config.get("shutian", "SHUTIAN_122B_SERVER_URL", "http://183.220.37.46:25423/v1")
- model_id = self.config.get("shutian", "SHUTIAN_122B_MODEL_ID", "/model/Qwen3.5-122B-A10B")
- api_key = self.config.get("shutian", "SHUTIAN_122B_API_KEY", "lq123456")
- # 检查服务连接
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"蜀天Qwen3.5-122B模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到蜀天Qwen3.5-122B模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"蜀天Qwen3.5-122B模型初始化成功: {model_id}")
- return llm
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"蜀天Qwen3.5-122B模型初始化异常: {e}")
- return self._handle_model_error("shutian_qwen3_5_122b", error)
- def _get_shutian_qwen3_8b_model(self):
- """
- 获取蜀天Qwen3-8B模型
- Returns:
- ChatOpenAI: 配置好的蜀天Qwen3-8B模型实例
- """
- try:
- server_url = self.config.get("shutian", "SHUTIAN_8B_SERVER_URL", "http://183.220.37.46:25424/v1")
- model_id = self.config.get("shutian", "SHUTIAN_8B_MODEL_ID", "/model/Qwen3-8B")
- api_key = self.config.get("shutian", "SHUTIAN_8B_API_KEY", "lq123456")
- # 检查服务连接
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"蜀天Qwen3-8B模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到蜀天Qwen3-8B模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"蜀天Qwen3-8B模型初始化成功: {model_id}")
- return llm
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"蜀天Qwen3-8B模型初始化异常: {e}")
- return self._handle_model_error("shutian_qwen3_8b", error)
- def _get_shutian_qwen3_6_27b_model(self):
- """
- 获取蜀天Qwen3.6-27B模型
- Returns:
- ChatOpenAI: 配置好的蜀天Qwen3.6-27B模型实例
- """
- try:
- server_url = self.config.get("shutian", "SHUTIAN_27B_SERVER_URL", "http://183.220.37.46:25424/v1")
- model_id = self.config.get("shutian", "SHUTIAN_27B_MODEL_ID", "/model/Qwen3.6-27B")
- api_key = self.config.get("shutian", "SHUTIAN_27B_API_KEY", "sk_prod_SELVoIV1d3gku28koH_ONg8L_B2cQis__71f55615")
- # 检查服务连接
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"蜀天Qwen3.6-27B模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到蜀天Qwen3.6-27B模型服务: {server_url}")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- logger.info(f"蜀天Qwen3.6-27B模型初始化成功: {model_id}")
- return llm
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"蜀天Qwen3.6-27B模型初始化异常: {e}")
- return self._handle_model_error("shutian_qwen3_6_27b", error)
- def _get_shutian_qwen3_5_35b_model(self):
- """
- 获取蜀天Qwen3.5-35B模型
- Returns:
- ChatOpenAI: 配置好的蜀天Qwen3.5-35B模型实例
- """
- try:
- server_url = self.config.get("shutian", "SHUTIAN_35B_SERVER_URL", "http://183.220.37.46:25427/v1")
- model_id = self.config.get("shutian", "SHUTIAN_35B_MODEL_ID", "/model/Qwen3.5-35B")
- api_key = self.config.get("shutian", "SHUTIAN_35B_API_KEY", "lq123456")
- logger.info(f"正在初始化蜀天Qwen3.5-35B模型,服务器地址: {server_url}")
- # 检查服务连接(可通过配置禁用)
- skip_check = self.config.get("shutian", "SKIP_CONNECTION_CHECK", "false").lower() == "true"
- if not skip_check:
- connection_ok = self._check_connection(server_url, api_key, timeout=5)
- if not connection_ok:
- # 连接检查失败时记录警告,但不阻止初始化(实际调用时如果失败会报错)
- logger.warning(f"蜀天Qwen3.5-35B模型服务连接检查失败: {server_url},但仍尝试初始化")
- else:
- logger.info(f"蜀天Qwen3.5-35B模型服务连接检查通过: {server_url}")
- else:
- logger.info(f"跳过蜀天Qwen3.5-35B模型连接检查(SKIP_CONNECTION_CHECK=true)")
- llm = ChatOpenAI(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- temperature=0.7,
- timeout=self.request_timeout,
- )
- # 记录模型实例的详细信息用于调试
- logger.info(f"蜀天Qwen3.5-35B模型初始化成功: model_id={model_id}, base_url={llm.base_url if hasattr(llm, 'base_url') else server_url}")
- return llm
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"蜀天Qwen3.5-35B模型初始化异常: {e}")
- return self._handle_model_error("shutian_qwen3_5_35b", error)
- def _get_shutian_qwen3_embed(self):
- """
- 获取蜀天Qwen3-Embedding-8B嵌入模型
- Returns:
- OpenAIEmbeddings: 配置好的蜀天Embedding模型实例
- """
- try:
- server_url = self.config.get("shutian", "SHUTIAN_EMBED_SERVER_URL", "http://183.220.37.46:25425/v1")
- model_id = self.config.get("shutian", "SHUTIAN_EMBED_MODEL_ID", "/model/Qwen3-Embedding-8B")
- api_key = self.config.get("shutian", "SHUTIAN_EMBED_API_KEY", "lq123456")
- # 检查服务连接
- if not self._check_connection(server_url, api_key, timeout=3):
- logger.warning(f"蜀天Qwen3-Embedding模型服务连接失败: {server_url}")
- raise ModelConnectionError(f"无法连接到蜀天Qwen3-Embedding模型服务: {server_url}")
- embeddings = OpenAIEmbeddings(
- base_url=server_url,
- model=model_id,
- api_key=api_key,
- timeout=self.request_timeout,
- tiktoken_enabled=False,
- check_embedding_ctx_length=False,
- max_retries=0, # 禁用SDK内置重试,由EmbeddingClient统一管理
- )
- logger.info(f"蜀天Qwen3-Embedding-8B模型初始化成功: {model_id}")
- return embeddings
- except ModelConnectionError:
- raise
- except Exception as e:
- error = ModelAPIError(f"蜀天Qwen3-Embedding模型初始化异常: {e}")
- return self._handle_model_error("shutian_qwen3_embed", error)
- # 创建全局实例
- model_handler = ModelHandler()
- def get_models():
- """
- 获取模型的全局函数
- Returns:
- tuple: (llm, chat, embed) - LLM模型、聊天模型和嵌入模型实例
- 注意:当前llm和chat使用相同模型实例,embed暂时返回None
- Note:
- 这是一个便捷函数,直接使用全局model_handler实例获取模型
- """
- try:
- llm = model_handler.get_models()
- # 暂时返回相同的模型作为chat和embed
- return llm, llm, None
- except Exception as e:
- logger.error(f"获取模型失败: {e}")
- raise ModelConnectionError(f"无法获取模型服务: {e}")
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