feat: integrate RouteLLM BERT router for intelligent query classification
- 添加 transformers 和 torch 依赖 - 创建 bert_router.py 封装 RouteLLM BERT 分类器 - 新增 select_model_by_bert() 函数替代 token 长度路由 - BERT 输出映射: strong->qwen-max, weak->qwen-flash - 保留 token 长度路由作为 fallback
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bert_router.py
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bert_router.py
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"""
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RouteLLM BERT Router 封装
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基于预训练的 BERT 分类器进行查询复杂度预测
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"""
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import time
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from typing import Optional
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import torch
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from transformers import AutoTokenizer, AutoModelForSequenceClassification
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class BERTRouter:
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"""
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RouteLLM BERT 路由器
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模型信息:
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- 基础模型: BERT-base-uncased
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- 参数量: ~110M
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- 输入长度: 512 tokens
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- 输出: 二分类 (0=弱模型, 1=强模型)
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- 预期延迟: 1-5ms (CPU)
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使用方法:
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router = BERTRouter()
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result = router.predict("你的查询文本")
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# result: "strong" 或 "weak"
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"""
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MODEL_NAME = "lm-sys/routellm-bert"
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def __init__(self, device: Optional[str] = None):
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"""
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初始化 BERT Router
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Args:
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device: 运行设备 ('cpu', 'cuda', 或 None自动选择)
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"""
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self.device = device or ("cuda" if torch.cuda.is_available() else "cpu")
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self._load_model()
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def _load_model(self):
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"""加载模型和tokenizer"""
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try:
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self.tokenizer = AutoTokenizer.from_pretrained(self.MODEL_NAME)
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self.model = AutoModelForSequenceClassification.from_pretrained(self.MODEL_NAME)
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self.model.to(self.device)
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self.model.eval()
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except Exception as e:
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raise RuntimeError(f"Failed to load BERT router model: {e}")
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def predict(self, query: str) -> str:
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"""
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预测查询复杂度
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Args:
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query: 用户查询文本
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Returns:
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"strong": 复杂任务,应使用强模型
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"weak": 简单任务,应使用弱模型
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"""
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# 编码输入
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inputs = self.tokenizer(
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query,
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return_tensors="pt",
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truncation=True,
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max_length=512,
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padding=True
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)
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# 移动到设备
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inputs = {k: v.to(self.device) for k, v in inputs.items()}
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# 推理
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with torch.no_grad():
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outputs = self.model(**inputs)
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probs = torch.softmax(outputs.logits, dim=-1)
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prediction = torch.argmax(probs, dim=-1).item()
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# 0 = 弱模型, 1 = 强模型
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return "strong" if prediction == 1 else "weak"
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def predict_with_confidence(self, query: str) -> tuple:
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"""
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预测并返回置信度
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Returns:
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(prediction, confidence): ("strong"/"weak", 置信度分数)
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"""
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inputs = self.tokenizer(
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query,
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return_tensors="pt",
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truncation=True,
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max_length=512,
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padding=True
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)
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inputs = {k: v.to(self.device) for k, v in inputs.items()}
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with torch.no_grad():
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outputs = self.model(**inputs)
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probs = torch.softmax(outputs.logits, dim=-1)
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prediction = torch.argmax(probs, dim=-1).item()
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confidence = probs[0][prediction].item()
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result = "strong" if prediction == 1 else "weak"
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return result, confidence
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def benchmark(self, query: str, n_runs: int = 10) -> dict:
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"""
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基准测试推理延迟
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Args:
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query: 测试查询
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n_runs: 运行次数
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Returns:
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延迟统计信息
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"""
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latencies = []
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# 预热
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for _ in range(3):
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self.predict(query)
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# 正式测试
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for _ in range(n_runs):
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start = time.time()
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self.predict(query)
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latencies.append((time.time() - start) * 1000)
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return {
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"avg_ms": sum(latencies) / len(latencies),
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"min_ms": min(latencies),
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"max_ms": max(latencies),
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"device": self.device,
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}
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# 全局路由器实例(延迟加载)
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_bert_router: Optional[BERTRouter] = None
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def get_bert_router() -> BERTRouter:
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"""获取全局 BERT Router 实例"""
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global _bert_router
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if _bert_router is None:
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_bert_router = BERTRouter()
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return _bert_router
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def route_with_bert(query: str) -> str:
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"""
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使用 BERT 进行路由决策的便捷函数
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Args:
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query: 用户查询
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Returns:
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"strong" 或 "weak"
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"""
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router = get_bert_router()
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return router.predict(query)
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43
main.py
43
main.py
@@ -13,6 +13,7 @@ from litellm import acompletion
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import litellm
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from config import MODEL_CONFIG, ROUTING_THRESHOLDS, DEFAULT_ROUTING, DASHSCOPE_API_KEY
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from bert_router import get_bert_router, route_with_bert
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# 配置 LiteLLM 使用 DashScope (Qwen)
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if DASHSCOPE_API_KEY:
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@@ -20,6 +21,16 @@ if DASHSCOPE_API_KEY:
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# Qwen 使用 OpenAI 兼容接口,但需要通过 api_base 指定
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litellm.api_base = "https://dashscope.aliyuncs.com/compatible-mode/v1"
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# BERT Router 实例(延迟加载)
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_bert_router = None
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def get_router():
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"""获取 BERT Router 实例(延迟加载)"""
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global _bert_router
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if _bert_router is None:
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_bert_router = get_bert_router()
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return _bert_router
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# 调用历史记录
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call_history: List[Dict[str, Any]] = []
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@@ -80,7 +91,7 @@ def estimate_tokens(messages: List[Message]) -> int:
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def select_model_by_length(messages: List[Message]) -> str:
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"""基于 token 长度选择模型"""
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"""基于 token 长度选择模型(备用策略)"""
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token_count = estimate_tokens(messages)
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if token_count < ROUTING_THRESHOLDS["simple"]:
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@@ -91,6 +102,33 @@ def select_model_by_length(messages: List[Message]) -> str:
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return DEFAULT_ROUTING["complex"]
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def select_model_by_bert(messages: List[Message]) -> str:
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"""
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基于 BERT 分类器选择模型
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BERT 输出: strong / weak
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映射到 Qwen 模型:
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- strong -> qwen-max (复杂任务)
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- weak -> qwen-flash (简单任务)
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"""
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# 取最后一条用户消息作为查询
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query = messages[-1].content if messages else ""
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try:
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router = get_router()
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complexity = router.predict(query)
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# BERT 二分类映射到三模型
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if complexity == "strong":
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return "qwen-max"
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else:
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return "qwen-flash"
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except Exception as e:
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# BERT 失败时回退到 token 长度策略
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print(f"BERT routing failed: {e}, falling back to token length")
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return select_model_by_length(messages)
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def get_provider_model(model_key: str) -> str:
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"""获取 LiteLLM 格式的模型名称"""
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config = MODEL_CONFIG.get(model_key)
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@@ -142,7 +180,8 @@ async def chat_completions(request: ChatRequest):
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if request.model:
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model_key = request.model
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else:
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model_key = select_model_by_length(request.messages)
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# 使用 BERT 智能路由(替代原来的 token 长度路由)
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model_key = select_model_by_bert(request.messages)
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# 获取 LiteLLM 模型名称
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provider_model = get_provider_model(model_key)
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@@ -5,5 +5,7 @@ litellm>=1.0.0
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tiktoken>=0.5.0
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httpx>=0.25.0
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python-dotenv>=1.0.0
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transformers>=4.30.0
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torch>=2.0.0
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pytest>=7.4.0
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pytest-asyncio>=0.21.0
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