Files
gemini-balance/app/handler/response_handler.py
snaily 2072f54ca1 refactor: 重构错误处理并优化路由与服务结构
主要变更:
- 新增 `app/handler/error_handler.py`,引入 `handle_route_errors` 异步上下文管理器,用于统一处理路由中的错误和日志记录。
- 在 `openai_routes` 和 `openai_compatiable_routes` 中应用 `handle_route_errors`,移除冗余的 try-except 块,简化路由逻辑。
- 将 `OpenAICompatiableService` 移动到 `app/service/openai_compatiable/` 目录下。
- 将 `StatsService` 移动到 `app/service/stats/` 目录下,并更新相关导入路径。
- 修复 `response_handler` 中处理 Gemini API 响应时 `inlineData` 字段的错误(原为 `inline_data`)。
- 修复 `openai_routes` 和 `openai_compatiable_routes` 中处理图像生成聊天(如 imagen3-chat)时未正确使用付费 API key 的问题。
- 在 `requirements.txt` 中将 `httpx` 更改为 `httpx[socks]`,以增加 SOCKS 代理支持。
2025-05-02 01:20:05 +08:00

347 lines
11 KiB
Python

import base64
import json
import random
import string
import time
import uuid
from abc import ABC, abstractmethod
from typing import Any, Dict, List, Optional
from app.config.config import settings
from app.utils.uploader import ImageUploaderFactory
class ResponseHandler(ABC):
"""响应处理器基类"""
@abstractmethod
def handle_response(
self, response: Dict[str, Any], model: str, stream: bool = False
) -> Dict[str, Any]:
pass
class GeminiResponseHandler(ResponseHandler):
"""Gemini响应处理器"""
def __init__(self):
self.thinking_first = True
self.thinking_status = False
def handle_response(
self, response: Dict[str, Any], model: str, stream: bool = False
) -> Dict[str, Any]:
if stream:
return _handle_gemini_stream_response(response, model, stream)
return _handle_gemini_normal_response(response, model, stream)
def _handle_openai_stream_response(
response: Dict[str, Any], model: str, finish_reason: str
) -> Dict[str, Any]:
text, tool_calls = _extract_result(
response, model, stream=True, gemini_format=False
)
if not text and not tool_calls:
delta = {}
else:
delta = {"content": text, "role": "assistant"}
if tool_calls:
delta["tool_calls"] = tool_calls
return {
"id": f"chatcmpl-{uuid.uuid4()}",
"object": "chat.completion.chunk",
"created": int(time.time()),
"model": model,
"choices": [{"index": 0, "delta": delta, "finish_reason": finish_reason}],
}
def _handle_openai_normal_response(
response: Dict[str, Any], model: str, finish_reason: str
) -> Dict[str, Any]:
text, tool_calls = _extract_result(
response, model, stream=False, gemini_format=False
)
return {
"id": f"chatcmpl-{uuid.uuid4()}",
"object": "chat.completion",
"created": int(time.time()),
"model": model,
"choices": [
{
"index": 0,
"message": {
"role": "assistant",
"content": text,
"tool_calls": tool_calls,
},
"finish_reason": finish_reason,
}
],
"usage": {"prompt_tokens": 0, "completion_tokens": 0, "total_tokens": 0},
}
class OpenAIResponseHandler(ResponseHandler):
"""OpenAI响应处理器"""
def __init__(self, config):
self.config = config
self.thinking_first = True
self.thinking_status = False
def handle_response(
self,
response: Dict[str, Any],
model: str,
stream: bool = False,
finish_reason: str = None,
) -> Optional[Dict[str, Any]]:
if stream:
return _handle_openai_stream_response(response, model, finish_reason)
return _handle_openai_normal_response(response, model, finish_reason)
def handle_image_chat_response(
self, image_str: str, model: str, stream=False, finish_reason="stop"
):
if stream:
return _handle_openai_stream_image_response(image_str, model, finish_reason)
return _handle_openai_normal_image_response(image_str, model, finish_reason)
def _handle_openai_stream_image_response(
image_str: str, model: str, finish_reason: str
) -> Dict[str, Any]:
return {
"id": f"chatcmpl-{uuid.uuid4()}",
"object": "chat.completion.chunk",
"created": int(time.time()),
"model": model,
"choices": [
{
"index": 0,
"delta": {"content": image_str} if image_str else {},
"finish_reason": finish_reason,
}
],
}
def _handle_openai_normal_image_response(
image_str: str, model: str, finish_reason: str
) -> Dict[str, Any]:
return {
"id": f"chatcmpl-{uuid.uuid4()}",
"object": "chat.completion",
"created": int(time.time()),
"model": model,
"choices": [
{
"index": 0,
"message": {"role": "assistant", "content": image_str},
"finish_reason": finish_reason,
}
],
"usage": {"prompt_tokens": 0, "completion_tokens": 0, "total_tokens": 0},
}
def _extract_result(
response: Dict[str, Any],
model: str,
stream: bool = False,
gemini_format: bool = False,
) -> tuple[str, List[Dict[str, Any]]]:
text, tool_calls = "", []
if stream:
if response.get("candidates"):
candidate = response["candidates"][0]
content = candidate.get("content", {})
parts = content.get("parts", [])
if not parts:
return "", []
if "text" in parts[0]:
text = parts[0].get("text")
elif "executableCode" in parts[0]:
text = _format_code_block(parts[0]["executableCode"])
elif "codeExecution" in parts[0]:
text = _format_code_block(parts[0]["codeExecution"])
elif "executableCodeResult" in parts[0]:
text = _format_execution_result(parts[0]["executableCodeResult"])
elif "codeExecutionResult" in parts[0]:
text = _format_execution_result(parts[0]["codeExecutionResult"])
elif "inlineData" in parts[0]:
text = _extract_image_data(parts[0])
else:
text = ""
text = _add_search_link_text(model, candidate, text)
tool_calls = _extract_tool_calls(parts, gemini_format)
else:
if response.get("candidates"):
candidate = response["candidates"][0]
if "thinking" in model:
if settings.SHOW_THINKING_PROCESS:
if len(candidate["content"]["parts"]) == 2:
text = (
"> thinking\n\n"
+ candidate["content"]["parts"][0]["text"]
+ "\n\n---\n> output\n\n"
+ candidate["content"]["parts"][1]["text"]
)
else:
text = candidate["content"]["parts"][0]["text"]
else:
if len(candidate["content"]["parts"]) == 2:
text = candidate["content"]["parts"][1]["text"]
else:
text = candidate["content"]["parts"][0]["text"]
else:
text = ""
if "parts" in candidate["content"]:
for part in candidate["content"]["parts"]:
if "text" in part:
text += part["text"]
elif "inlineData" in part:
text += _extract_image_data(part)
text = _add_search_link_text(model, candidate, text)
tool_calls = _extract_tool_calls(
candidate["content"]["parts"], gemini_format
)
else:
text = "暂无返回"
return text, tool_calls
def _extract_image_data(part: dict) -> str:
image_uploader = None
if settings.UPLOAD_PROVIDER == "smms":
image_uploader = ImageUploaderFactory.create(
provider=settings.UPLOAD_PROVIDER, api_key=settings.SMMS_SECRET_TOKEN
)
elif settings.UPLOAD_PROVIDER == "picgo":
image_uploader = ImageUploaderFactory.create(
provider=settings.UPLOAD_PROVIDER, api_key=settings.PICGO_API_KEY
)
elif settings.UPLOAD_PROVIDER == "cloudflare_imgbed":
image_uploader = ImageUploaderFactory.create(
provider=settings.UPLOAD_PROVIDER,
base_url=settings.CLOUDFLARE_IMGBED_URL,
auth_code=settings.CLOUDFLARE_IMGBED_AUTH_CODE,
)
current_date = time.strftime("%Y/%m/%d")
filename = f"{current_date}/{uuid.uuid4().hex[:8]}.png"
base64_data = part["inlineData"]["data"]
# 将base64_data转成bytes数组
bytes_data = base64.b64decode(base64_data)
upload_response = image_uploader.upload(bytes_data, filename)
if upload_response.success:
text = f"\n\n![image]({upload_response.data.url})\n\n"
else:
text = ""
return text
def _extract_tool_calls(
parts: List[Dict[str, Any]], gemini_format: bool
) -> List[Dict[str, Any]]:
"""提取工具调用信息"""
if not parts or not isinstance(parts, list):
return []
letters = string.ascii_lowercase + string.digits
tool_calls = list()
for i in range(len(parts)):
part = parts[i]
if not part or not isinstance(part, dict):
continue
item = part.get("functionCall", {})
if not item or not isinstance(item, dict):
continue
if gemini_format:
tool_calls.append(part)
else:
id = f"call_{''.join(random.sample(letters, 32))}"
name = item.get("name", "")
arguments = json.dumps(item.get("args", None) or {})
tool_calls.append(
{
"index": i,
"id": id,
"type": "function",
"function": {"name": name, "arguments": arguments},
}
)
return tool_calls
def _handle_gemini_stream_response(
response: Dict[str, Any], model: str, stream: bool
) -> Dict[str, Any]:
text, tool_calls = _extract_result(
response, model, stream=stream, gemini_format=True
)
if tool_calls:
content = {"parts": tool_calls, "role": "model"}
else:
content = {"parts": [{"text": text}], "role": "model"}
response["candidates"][0]["content"] = content
return response
def _handle_gemini_normal_response(
response: Dict[str, Any], model: str, stream: bool
) -> Dict[str, Any]:
text, tool_calls = _extract_result(
response, model, stream=stream, gemini_format=True
)
if tool_calls:
content = {"parts": tool_calls, "role": "model"}
else:
content = {"parts": [{"text": text}], "role": "model"}
response["candidates"][0]["content"] = content
return response
def _format_code_block(code_data: dict) -> str:
"""格式化代码块输出"""
language = code_data.get("language", "").lower()
code = code_data.get("code", "").strip()
return f"""\n\n---\n\n【代码执行】\n```{language}\n{code}\n```\n"""
def _add_search_link_text(model: str, candidate: dict, text: str) -> str:
if (
settings.SHOW_SEARCH_LINK
and model.endswith("-search")
and "groundingMetadata" in candidate
and "groundingChunks" in candidate["groundingMetadata"]
):
grounding_chunks = candidate["groundingMetadata"]["groundingChunks"]
text += "\n\n---\n\n"
text += "**【引用来源】**\n\n"
for _, grounding_chunk in enumerate(grounding_chunks, 1):
if "web" in grounding_chunk:
text += _create_search_link(grounding_chunk["web"])
return text
else:
return text
def _create_search_link(grounding_chunk: dict) -> str:
return f'\n- [{grounding_chunk["title"]}]({grounding_chunk["uri"]})'
def _format_execution_result(result_data: dict) -> str:
"""格式化执行结果输出"""
outcome = result_data.get("outcome", "")
output = result_data.get("output", "").strip()
return f"""\n【执行结果】\n> outcome: {outcome}\n\n【输出结果】\n```plaintext\n{output}\n```\n\n---\n\n"""