mirror of
https://github.com/snailyp/gemini-balance.git
synced 2026-06-06 16:19:35 +08:00
- 修改了 response_handler.py 中的 _handle_openai_stream_response 和 _handle_openai_normal_response 方法,增加了对推理内容 (reasoning_content) 的支持。 - 更新了 _extract_result 方法的返回值,确保能够提取推理内容。 - 在 gemini_chat_service.py 和 openai_chat_service.py 中,调整了生成配置以包含思考过程的选项。 - 在 vertex_express_chat_service.py 中,增强了对客户端思考配置的处理逻辑,确保优先使用客户端提供的配置。
401 lines
15 KiB
Python
401 lines
15 KiB
Python
# app/services/chat_service.py
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import json
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import re
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import datetime
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import time
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from typing import Any, AsyncGenerator, Dict, List
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from app.config.config import settings
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from app.core.constants import GEMINI_2_FLASH_EXP_SAFETY_SETTINGS
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from app.domain.gemini_models import GeminiRequest
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from app.handler.response_handler import GeminiResponseHandler
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from app.handler.stream_optimizer import gemini_optimizer
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from app.log.logger import get_gemini_logger
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from app.service.client.api_client import GeminiApiClient
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from app.service.key.key_manager import KeyManager
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from app.database.services import add_error_log, add_request_log
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logger = get_gemini_logger()
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def _has_image_parts(contents: List[Dict[str, Any]]) -> bool:
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"""判断消息是否包含图片部分"""
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for content in contents:
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if "parts" in content:
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for part in content["parts"]:
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if "image_url" in part or "inline_data" in part:
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return True
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return False
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def _clean_json_schema_properties(obj: Any) -> Any:
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"""清理JSON Schema中Gemini API不支持的字段"""
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if not isinstance(obj, dict):
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return obj
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# Gemini API不支持的JSON Schema字段
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unsupported_fields = {
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"exclusiveMaximum", "exclusiveMinimum", "const", "examples",
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"contentEncoding", "contentMediaType", "if", "then", "else",
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"allOf", "anyOf", "oneOf", "not", "definitions", "$schema",
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"$id", "$ref", "$comment", "readOnly", "writeOnly"
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}
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cleaned = {}
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for key, value in obj.items():
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if key in unsupported_fields:
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continue
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if isinstance(value, dict):
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cleaned[key] = _clean_json_schema_properties(value)
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elif isinstance(value, list):
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cleaned[key] = [_clean_json_schema_properties(item) for item in value]
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else:
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cleaned[key] = value
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return cleaned
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def _build_tools(model: str, payload: Dict[str, Any]) -> List[Dict[str, Any]]:
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"""构建工具"""
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def _merge_tools(tools: List[Dict[str, Any]]) -> Dict[str, Any]:
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record = dict()
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for item in tools:
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if not item or not isinstance(item, dict):
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continue
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for k, v in item.items():
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if k == "functionDeclarations" and v and isinstance(v, list):
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functions = record.get("functionDeclarations", [])
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# 清理每个函数声明中的不支持字段
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cleaned_functions = []
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for func in v:
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if isinstance(func, dict):
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cleaned_func = _clean_json_schema_properties(func)
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cleaned_functions.append(cleaned_func)
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else:
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cleaned_functions.append(func)
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functions.extend(cleaned_functions)
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record["functionDeclarations"] = functions
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else:
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record[k] = v
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return record
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tool = dict()
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if payload and isinstance(payload, dict) and "tools" in payload:
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if payload.get("tools") and isinstance(payload.get("tools"), dict):
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payload["tools"] = [payload.get("tools")]
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items = payload.get("tools", [])
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if items and isinstance(items, list):
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tool.update(_merge_tools(items))
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if (
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settings.TOOLS_CODE_EXECUTION_ENABLED
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and not (model.endswith("-search") or "-thinking" in model)
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and not _has_image_parts(payload.get("contents", []))
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):
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tool["codeExecution"] = {}
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if model.endswith("-search"):
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tool["googleSearch"] = {}
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# 解决 "Tool use with function calling is unsupported" 问题
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if tool.get("functionDeclarations"):
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tool.pop("googleSearch", None)
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tool.pop("codeExecution", None)
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return [tool] if tool else []
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def _get_safety_settings(model: str) -> List[Dict[str, str]]:
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"""获取安全设置"""
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if model == "gemini-2.0-flash-exp":
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return GEMINI_2_FLASH_EXP_SAFETY_SETTINGS
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return settings.SAFETY_SETTINGS
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def _filter_empty_parts(contents: List[Dict[str, Any]]) -> List[Dict[str, Any]]:
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"""Filters out contents with empty or invalid parts."""
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if not contents:
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return []
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filtered_contents = []
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for content in contents:
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if not content or "parts" not in content or not isinstance(content.get("parts"), list):
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continue
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valid_parts = [part for part in content["parts"] if isinstance(part, dict) and part]
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if valid_parts:
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new_content = content.copy()
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new_content["parts"] = valid_parts
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filtered_contents.append(new_content)
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return filtered_contents
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def _build_payload(model: str, request: GeminiRequest) -> Dict[str, Any]:
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"""构建请求payload"""
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request_dict = request.model_dump()
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if request.generationConfig:
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if request.generationConfig.maxOutputTokens is None:
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# 如果未指定最大输出长度,则不传递该字段,解决截断的问题
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request_dict["generationConfig"].pop("maxOutputTokens")
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payload = {
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"contents": _filter_empty_parts(request_dict.get("contents", [])),
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"tools": _build_tools(model, request_dict),
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"safetySettings": _get_safety_settings(model),
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"generationConfig": request_dict.get("generationConfig"),
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"systemInstruction": request_dict.get("systemInstruction"),
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}
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# 确保 generationConfig 不为 None
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if payload["generationConfig"] is None:
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payload["generationConfig"] = {}
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if model.endswith("-image") or model.endswith("-image-generation"):
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payload.pop("systemInstruction")
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payload["generationConfig"]["responseModalities"] = ["Text", "Image"]
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# 处理思考配置:优先使用客户端提供的配置,否则使用默认配置
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client_thinking_config = None
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if request.generationConfig and request.generationConfig.thinkingConfig:
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client_thinking_config = request.generationConfig.thinkingConfig
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if client_thinking_config is not None:
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# 客户端提供了思考配置,直接使用
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payload["generationConfig"]["thinkingConfig"] = client_thinking_config
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else:
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# 客户端没有提供思考配置,使用默认配置
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if model.endswith("-non-thinking"):
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payload["generationConfig"]["thinkingConfig"] = {"thinkingBudget": 0}
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elif model in settings.THINKING_BUDGET_MAP:
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if settings.SHOW_THINKING_PROCESS:
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payload["generationConfig"]["thinkingConfig"] = {
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"thinkingBudget": settings.THINKING_BUDGET_MAP.get(model,1000),
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"includeThoughts": True
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}
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else:
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payload["generationConfig"]["thinkingConfig"] = {"thinkingBudget": settings.THINKING_BUDGET_MAP.get(model,1000)}
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return payload
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class GeminiChatService:
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"""聊天服务"""
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def __init__(self, base_url: str, key_manager: KeyManager):
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self.api_client = GeminiApiClient(base_url, settings.TIME_OUT)
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self.key_manager = key_manager
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self.response_handler = GeminiResponseHandler()
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def _extract_text_from_response(self, response: Dict[str, Any]) -> str:
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"""从响应中提取文本内容"""
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if not response.get("candidates"):
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return ""
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candidate = response["candidates"][0]
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content = candidate.get("content", {})
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parts = content.get("parts", [])
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if parts and "text" in parts[0]:
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return parts[0].get("text", "")
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return ""
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def _create_char_response(
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self, original_response: Dict[str, Any], text: str
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) -> Dict[str, Any]:
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"""创建包含指定文本的响应"""
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response_copy = json.loads(json.dumps(original_response))
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if response_copy.get("candidates") and response_copy["candidates"][0].get(
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"content", {}
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).get("parts"):
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response_copy["candidates"][0]["content"]["parts"][0]["text"] = text
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return response_copy
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async def generate_content(
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self, model: str, request: GeminiRequest, api_key: str
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) -> Dict[str, Any]:
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"""生成内容"""
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payload = _build_payload(model, request)
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start_time = time.perf_counter()
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request_datetime = datetime.datetime.now()
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is_success = False
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status_code = None
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response = None
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try:
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response = await self.api_client.generate_content(payload, model, api_key)
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is_success = True
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status_code = 200
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return self.response_handler.handle_response(response, model, stream=False)
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except Exception as e:
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is_success = False
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error_log_msg = str(e)
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logger.error(f"Normal API call failed with error: {error_log_msg}")
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match = re.search(r"status code (\d+)", error_log_msg)
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if match:
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status_code = int(match.group(1))
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else:
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status_code = 500
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await add_error_log(
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gemini_key=api_key,
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model_name=model,
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error_type="gemini-chat-non-stream",
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error_log=error_log_msg,
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error_code=status_code,
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request_msg=payload
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)
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raise e
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finally:
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end_time = time.perf_counter()
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latency_ms = int((end_time - start_time) * 1000)
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await add_request_log(
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model_name=model,
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api_key=api_key,
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is_success=is_success,
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status_code=status_code,
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latency_ms=latency_ms,
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request_time=request_datetime
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)
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async def count_tokens(
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self, model: str, request: GeminiRequest, api_key: str
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) -> Dict[str, Any]:
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"""计算token数量"""
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# countTokens API只需要contents
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payload = {"contents": _filter_empty_parts(request.model_dump().get("contents", []))}
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start_time = time.perf_counter()
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request_datetime = datetime.datetime.now()
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is_success = False
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status_code = None
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response = None
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try:
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response = await self.api_client.count_tokens(payload, model, api_key)
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is_success = True
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status_code = 200
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return response
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except Exception as e:
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is_success = False
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error_log_msg = str(e)
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logger.error(f"Count tokens API call failed with error: {error_log_msg}")
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match = re.search(r"status code (\d+)", error_log_msg)
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if match:
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status_code = int(match.group(1))
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else:
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status_code = 500
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await add_error_log(
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gemini_key=api_key,
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model_name=model,
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error_type="gemini-count-tokens",
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error_log=error_log_msg,
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error_code=status_code,
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request_msg=payload
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)
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raise e
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finally:
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end_time = time.perf_counter()
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latency_ms = int((end_time - start_time) * 1000)
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await add_request_log(
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model_name=model,
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api_key=api_key,
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is_success=is_success,
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status_code=status_code,
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latency_ms=latency_ms,
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request_time=request_datetime
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)
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async def stream_generate_content(
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self, model: str, request: GeminiRequest, api_key: str
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) -> AsyncGenerator[str, None]:
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"""流式生成内容"""
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retries = 0
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max_retries = settings.MAX_RETRIES
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payload = _build_payload(model, request)
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is_success = False
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status_code = None
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final_api_key = api_key
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while retries < max_retries:
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request_datetime = datetime.datetime.now()
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start_time = time.perf_counter()
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current_attempt_key = api_key
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final_api_key = current_attempt_key
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try:
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async for line in self.api_client.stream_generate_content(
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payload, model, current_attempt_key
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):
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# print(line)
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if line.startswith("data:"):
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line = line[6:]
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response_data = self.response_handler.handle_response(
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json.loads(line), model, stream=True
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)
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text = self._extract_text_from_response(response_data)
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# 如果有文本内容,且开启了流式输出优化器,则使用流式输出优化器处理
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if text and settings.STREAM_OPTIMIZER_ENABLED:
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# 使用流式输出优化器处理文本输出
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async for (
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optimized_chunk
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) in gemini_optimizer.optimize_stream_output(
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text,
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lambda t: self._create_char_response(response_data, t),
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lambda c: "data: " + json.dumps(c) + "\n\n",
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):
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yield optimized_chunk
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else:
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# 如果没有文本内容(如工具调用等),整块输出
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yield "data: " + json.dumps(response_data) + "\n\n"
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logger.info("Streaming completed successfully")
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is_success = True
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status_code = 200
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break
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except Exception as e:
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retries += 1
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is_success = False
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error_log_msg = str(e)
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logger.warning(
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f"Streaming API call failed with error: {error_log_msg}. Attempt {retries} of {max_retries}"
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)
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match = re.search(r"status code (\d+)", error_log_msg)
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if match:
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status_code = int(match.group(1))
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else:
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status_code = 500
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await add_error_log(
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gemini_key=current_attempt_key,
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model_name=model,
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error_type="gemini-chat-stream",
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error_log=error_log_msg,
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error_code=status_code,
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request_msg=payload
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)
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api_key = await self.key_manager.handle_api_failure(current_attempt_key, retries)
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if api_key:
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logger.info(f"Switched to new API key: {api_key}")
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else:
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logger.error(f"No valid API key available after {retries} retries.")
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break
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if retries >= max_retries:
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logger.error(
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f"Max retries ({max_retries}) reached for streaming."
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)
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break
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finally:
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end_time = time.perf_counter()
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latency_ms = int((end_time - start_time) * 1000)
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await add_request_log(
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model_name=model,
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api_key=final_api_key,
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is_success=is_success,
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status_code=status_code,
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latency_ms=latency_ms,
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request_time=request_datetime
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)
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