"""基于分享链接的聊天服务"""
import asyncio
import json
import time
import uuid
from typing import Optional, Dict, Any, AsyncGenerator, Annotated, List
from fastapi import Depends
from sqlalchemy.orm import Session
from app.core.agent.langchain_agent import LangChainAgent
from app.core.logging_config import get_business_logger
from app.core.memory.agent.langgraph_graph.write_graph import write_long_term
from app.db import get_db
from app.models import MultiAgentConfig, AgentConfig, ModelType
from app.models import WorkflowConfig
from app.repositories.tool_repository import ToolRepository
from app.schemas import DraftRunRequest
from app.schemas.app_schema import FileInput, FileType
from app.schemas.model_schema import ModelInfo
from app.schemas.prompt_schema import render_prompt_message, PromptMessageRole
from app.services.conversation_service import ConversationService
from app.services.draft_run_service import AgentRunService
from app.services.memory_agent_service import get_end_user_connected_config
from app.services.model_service import ModelApiKeyService
from app.services.multi_agent_orchestrator import MultiAgentOrchestrator
from app.services.multimodal_service import MultimodalService
from app.services.workflow_service import WorkflowService
from app.models.file_metadata_model import FileMetadata
logger = get_business_logger()
class AppChatService:
"""基于分享链接的聊天服务"""
def __init__(self, db: Session):
self.db = db
self.conversation_service = ConversationService(db)
self.agent_service = AgentRunService(db)
self.workflow_service = WorkflowService(db)
async def agnet_chat(
self,
message: str,
conversation_id: uuid.UUID,
config: AgentConfig,
files: list[FileInput],
user_id: str,
variables: Optional[Dict[str, Any]] = None,
web_search: bool = False,
memory: bool = True,
storage_type: Optional[str] = None,
user_rag_memory_id: Optional[str] = None,
workspace_id: Optional[str] = None
) -> Dict[str, Any]:
"""聊天(非流式)"""
start_time = time.time()
# 应用 features 配置
features_config: dict = config.features or {}
if hasattr(features_config, 'model_dump'):
features_config = features_config.model_dump()
web_search_feature = features_config.get("web_search", {})
if not (isinstance(web_search_feature, dict) and web_search_feature.get("enabled")):
web_search = False
# 校验文件上传
self.agent_service._validate_file_upload(features_config, files)
variables = self.agent_service.prepare_variables(variables, config.variables)
# 获取模型配置ID
model_config_id = config.default_model_config_id
api_key_obj = ModelApiKeyService.get_available_api_key(self.db, model_config_id)
# 处理系统提示词(支持变量替换)
system_prompt = config.system_prompt
if variables:
system_prompt_rendered = render_prompt_message(
system_prompt,
PromptMessageRole.USER,
variables
)
system_prompt = system_prompt_rendered.get_text_content() or system_prompt
# 准备工具列表
tools = []
# 获取工具服务
tenant_id = ToolRepository.get_tenant_id_by_workspace_id(self.db, str(workspace_id))
tools.extend(self.agent_service.load_tools_config(config.tools, web_search, tenant_id))
skill_tools, skill_prompts = self.agent_service.load_skill_config(config.skills, message, tenant_id)
tools.extend(skill_tools)
if skill_prompts:
system_prompt = f"{system_prompt}\n\n{skill_prompts}"
kb_tools, citations_collector = self.agent_service.load_knowledge_retrieval_config(config.knowledge_retrieval,
user_id)
tools.extend(kb_tools)
memory_flag = False
if memory:
memory_tools, memory_flag = self.agent_service.load_memory_config(
config.memory, user_id, storage_type, user_rag_memory_id
)
tools.extend(memory_tools)
# 获取模型参数
model_parameters = config.model_parameters
model_info = ModelInfo(
model_name=api_key_obj.model_name,
provider=api_key_obj.provider,
api_key=api_key_obj.api_key,
api_base=api_key_obj.api_base,
capability=api_key_obj.capability,
is_omni=api_key_obj.is_omni,
model_type=ModelType.LLM
)
# 加载历史消息(包含开场白)
history = await self.conversation_service.get_conversation_history(
conversation_id=conversation_id,
max_history=10,
current_provider=api_key_obj.provider,
current_is_omni=api_key_obj.is_omni
)
# 如果是新会话且有开场白,作为第一条 assistant 消息写入数据库
is_new_conversation = len(history) == 0
if is_new_conversation:
opening, suggested_questions = self.agent_service._get_opening_statement(features_config, True, variables)
if opening:
self.conversation_service.add_message(
conversation_id=conversation_id,
role="assistant",
content=opening,
meta_data={"suggested_questions": suggested_questions}
)
# 重新加载历史(包含刚写入的开场白)
history = await self.conversation_service.get_conversation_history(
conversation_id=conversation_id,
max_history=10,
current_provider=api_key_obj.provider,
current_is_omni=api_key_obj.is_omni
)
# 处理多模态文件
processed_files = None
if files:
multimodal_service = MultimodalService(self.db, model_info)
fu_config = features_config.get("file_upload", {})
if hasattr(fu_config, "model_dump"):
fu_config = fu_config.model_dump()
doc_img_recognition = isinstance(fu_config, dict) and fu_config.get("document_image_recognition", False)
processed_files = await multimodal_service.process_files(
files, document_image_recognition=doc_img_recognition,
workspace_id=workspace_id
)
logger.info(f"处理了 {len(processed_files)} 个文件")
if doc_img_recognition and "vision" in (api_key_obj.capability or []) and any(
f.type == FileType.DOCUMENT for f in files
):
system_prompt += (
"\n\n文档文字中包含图片位置标记如 [图片 第2页 第1张]:
,"
"请在回答中用 Markdown 格式  展示对应图片。"
"重要:图片 URL 中包含 UUID(如 /storage/permanent/xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx),"
"必须将 src 属性的值原封不动复制到 Markdown 的括号中,不得增删任何字符。"
)
# 创建 LangChain Agent
agent = LangChainAgent(
model_name=api_key_obj.model_name,
api_key=api_key_obj.api_key,
provider=api_key_obj.provider,
api_base=api_key_obj.api_base,
is_omni=api_key_obj.is_omni,
temperature=model_parameters.get("temperature", 0.7),
max_tokens=model_parameters.get("max_tokens", 2000),
system_prompt=system_prompt,
tools=tools,
deep_thinking=model_parameters.get("deep_thinking", False),
thinking_budget_tokens=model_parameters.get("thinking_budget_tokens"),
json_output=model_parameters.get("json_output", False),
capability=api_key_obj.capability or [],
)
# 为需要运行时上下文的工具注入上下文
for t in tools:
if hasattr(t, 'tool_instance') and hasattr(t.tool_instance, 'set_runtime_context'):
t.tool_instance.set_runtime_context(
user_id=user_id or "anonymous",
conversation_id=str(conversation_id) if conversation_id else None,
uploaded_files=processed_files or []
)
# 调用 Agent(支持多模态)
result = await agent.chat(
message=message,
history=history,
context=None,
files=processed_files # 传递处理后的文件
)
ModelApiKeyService.record_api_key_usage(self.db, api_key_obj.id)
elapsed_time = time.time() - start_time
# suggested_questions
suggested_questions = []
sq_config = features_config.get("suggested_questions_after_answer", {})
if isinstance(sq_config, dict) and sq_config.get("enabled"):
suggested_questions = await self.agent_service._generate_suggested_questions(
features_config, result["content"],
{"model_name": api_key_obj.model_name, "api_key": api_key_obj.api_key,
"api_base": api_key_obj.api_base}, {}
)
audio_url = await self.agent_service._generate_tts(
features_config, result["content"],
{"model_name": api_key_obj.model_name, "api_key": api_key_obj.api_key,
"api_base": api_key_obj.api_base, "provider": api_key_obj.provider},
tenant_id=tenant_id, workspace_id=workspace_id
)
# 过滤 citations(只调用一次)
filtered_citations = self.agent_service._filter_citations(features_config, citations_collector)
# 构建用户消息内容(含多模态文件)
human_meta = {
"files": [],
"history_files": {}
}
assistant_meta = {
"model": api_key_obj.model_name,
"usage": result.get("usage", {"prompt_tokens": 0, "completion_tokens": 0, "total_tokens": 0}),
"audio_url": None,
"citations": filtered_citations,
"reasoning_content": result.get("reasoning_content")
}
if files:
local_ids = [f.upload_file_id for f in files
if f.transfer_method.value == "local_file" and f.upload_file_id
and (not f.name or not f.size)]
meta_map = {}
if local_ids:
rows = self.db.query(FileMetadata).filter(
FileMetadata.id.in_(local_ids),
FileMetadata.status == "completed"
).all()
meta_map = {str(r.id): r for r in rows}
for f in files:
name, size = f.name, f.size
if f.transfer_method.value == "local_file" and f.upload_file_id and (not name or not size):
meta = meta_map.get(str(f.upload_file_id))
if meta:
name = name or meta.file_name
size = size or meta.file_size
human_meta["files"].append({
"type": f.type,
"url": f.url,
"name": name,
"size": size,
"file_type": f.file_type,
})
if processed_files:
human_meta["history_files"] = {
"content": processed_files,
"provider": api_key_obj.provider,
"is_omni": api_key_obj.is_omni
}
# 保存消息
if audio_url:
assistant_meta["audio_url"] = audio_url
if memory_flag:
connected_config = get_end_user_connected_config(user_id, self.db)
memory_config_id: str = connected_config.get("memory_config_id")
file_list = []
for file in files:
file_dict = file.model_dump()
file_dict["upload_file_id"] = str(file_dict["upload_file_id"]) if file_dict["upload_file_id"] else None
file_list.append(file_dict)
messages = [
{"role": "user", "content": message, "files": file_list},
{"role": "assistant", "content": result["content"]}
]
if memory_config_id:
await write_long_term(
storage_type,
user_id,
messages,
user_rag_memory_id,
memory_config_id
)
self.conversation_service.add_message(
conversation_id=conversation_id,
role="user",
content=message,
meta_data=human_meta
)
ai_message = self.conversation_service.add_message(
conversation_id=conversation_id,
role="assistant",
content=result["content"],
meta_data=assistant_meta
)
message_id = ai_message.id
return {
"conversation_id": conversation_id,
"message_id": str(message_id),
"message": result["content"],
"reasoning_content": result.get("reasoning_content"),
"usage": result.get("usage", {
"prompt_tokens": 0,
"completion_tokens": 0,
"total_tokens": 0
}),
"elapsed_time": elapsed_time,
"suggested_questions": suggested_questions,
"citations": filtered_citations,
"audio_url": audio_url,
"audio_status": "pending" if audio_url else None
}
async def agnet_chat_stream(
self,
message: str,
conversation_id: uuid.UUID,
config: AgentConfig,
files: list[FileInput],
user_id: Optional[str] = None,
variables: Optional[Dict[str, Any]] = None,
web_search: bool = False,
memory: bool = True,
storage_type: Optional[str] = None,
user_rag_memory_id: Optional[str] = None,
workspace_id: Optional[str] = None
) -> AsyncGenerator[str, None]:
"""聊天(流式)"""
try:
start_time = time.time()
message_id = uuid.uuid4()
# 应用 features 配置
features_config: dict = config.features or {}
if hasattr(features_config, 'model_dump'):
features_config = features_config.model_dump()
web_search_feature = features_config.get("web_search", {})
if not (isinstance(web_search_feature, dict) and web_search_feature.get("enabled")):
web_search = False
# 校验文件上传
self.agent_service._validate_file_upload(features_config, files)
yield f"event: start\ndata: {json.dumps({'conversation_id': str(conversation_id), 'message_id': str(message_id)}, ensure_ascii=False)}\n\n"
variables = self.agent_service.prepare_variables(variables, config.variables)
# 获取模型配置ID
model_config_id = config.default_model_config_id
api_key_obj = ModelApiKeyService.get_available_api_key(self.db, model_config_id)
# 处理系统提示词(支持变量替换)
system_prompt = config.system_prompt
if variables:
system_prompt_rendered = render_prompt_message(
system_prompt,
PromptMessageRole.USER,
variables
)
system_prompt = system_prompt_rendered.get_text_content() or system_prompt
# 准备工具列表
tools = []
# 获取工具服务
tenant_id = ToolRepository.get_tenant_id_by_workspace_id(self.db, str(workspace_id))
tools.extend(self.agent_service.load_tools_config(config.tools, web_search, tenant_id))
skill_tools, skill_prompts = self.agent_service.load_skill_config(config.skills, message, tenant_id)
tools.extend(skill_tools)
if skill_prompts:
system_prompt = f"{system_prompt}\n\n{skill_prompts}"
kb_tools, citations_collector = self.agent_service.load_knowledge_retrieval_config(
config.knowledge_retrieval, user_id)
tools.extend(kb_tools)
# 添加长期记忆工具
memory_flag = False
if memory:
memory_tools, memory_flag = self.agent_service.load_memory_config(
config.memory, user_id, storage_type, user_rag_memory_id
)
tools.extend(memory_tools)
# 获取模型参数
model_parameters = config.model_parameters
model_info = ModelInfo(
model_name=api_key_obj.model_name,
provider=api_key_obj.provider,
api_key=api_key_obj.api_key,
api_base=api_key_obj.api_base,
capability=api_key_obj.capability,
is_omni=api_key_obj.is_omni,
model_type=ModelType.LLM
)
# 加载历史消息(包含开场白)
history = await self.conversation_service.get_conversation_history(
conversation_id=conversation_id,
max_history=10,
current_provider=api_key_obj.provider,
current_is_omni=api_key_obj.is_omni
)
# 如果是新会话且有开场白,作为第一条 assistant 消息写入数据库
is_new_conversation = len(history) == 0
if is_new_conversation:
opening, suggested_questions = self.agent_service._get_opening_statement(features_config, True, variables)
if opening:
self.conversation_service.add_message(
conversation_id=conversation_id,
role="assistant",
content=opening,
meta_data={"suggested_questions": suggested_questions}
)
# 重新加载历史(包含刚写入的开场白)
history = await self.conversation_service.get_conversation_history(
conversation_id=conversation_id,
max_history=10,
current_provider=api_key_obj.provider,
current_is_omni=api_key_obj.is_omni
)
# 处理多模态文件
processed_files = None
if files:
multimodal_service = MultimodalService(self.db, model_info)
fu_config = features_config.get("file_upload", {})
if hasattr(fu_config, "model_dump"):
fu_config = fu_config.model_dump()
doc_img_recognition = isinstance(fu_config, dict) and fu_config.get("document_image_recognition", False)
processed_files = await multimodal_service.process_files(
files, document_image_recognition=doc_img_recognition,
workspace_id=workspace_id
)
logger.info(f"处理了 {len(processed_files)} 个文件")
if doc_img_recognition and "vision" in (api_key_obj.capability or []) and any(
f.type == FileType.DOCUMENT for f in files
):
from langchain.agents import create_agent
system_prompt += (
"\n\n文档文字中包含图片位置标记如 [图片 第2页 第1张]:
,"
"请在回答中用 Markdown 格式  展示对应图片。"
"重要:图片 URL 中包含 UUID(如 /storage/permanent/xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx),"
"必须将 src 属性的值原封不动复制到 Markdown 的括号中,不得增删任何字符。"
)
# 创建 LangChain Agent
agent = LangChainAgent(
model_name=api_key_obj.model_name,
api_key=api_key_obj.api_key,
provider=api_key_obj.provider,
api_base=api_key_obj.api_base,
is_omni=api_key_obj.is_omni,
temperature=model_parameters.get("temperature", 0.7),
max_tokens=model_parameters.get("max_tokens", 2000),
system_prompt=system_prompt,
tools=tools,
streaming=True,
deep_thinking=model_parameters.get("deep_thinking", False),
thinking_budget_tokens=model_parameters.get("thinking_budget_tokens"),
json_output=model_parameters.get("json_output", False),
capability=api_key_obj.capability or [],
)
# 为需要运行时上下文的工具注入上下文
for t in tools:
if hasattr(t, 'tool_instance') and hasattr(t.tool_instance, 'set_runtime_context'):
t.tool_instance.set_runtime_context(
user_id=user_id or "anonymous",
conversation_id=str(conversation_id) if conversation_id else None,
uploaded_files=processed_files or []
)
# 流式调用 Agent(支持多模态),同时并行启动 TTS
full_content = ""
full_reasoning = ""
total_tokens = 0
text_queue: asyncio.Queue = asyncio.Queue()
api_key_config = {
"model_name": api_key_obj.model_name,
"api_key": api_key_obj.api_key,
"api_base": api_key_obj.api_base,
"provider": api_key_obj.provider,
}
stream_audio_url, tts_task = await self.agent_service._generate_tts_streaming(
features_config, api_key_config,
text_queue=text_queue,
tenant_id=tenant_id, workspace_id=workspace_id
)
async for chunk in agent.chat_stream(
message=message,
history=history,
context=None,
files=processed_files
):
if isinstance(chunk, int):
total_tokens = chunk
elif isinstance(chunk, dict) and chunk.get("type") == "reasoning":
full_reasoning += chunk['content']
yield f"event: reasoning\ndata: {json.dumps({'content': chunk['content']}, ensure_ascii=False)}\n\n"
else:
full_content += chunk
yield f"event: message\ndata: {json.dumps({'content': chunk}, ensure_ascii=False)}\n\n"
if tts_task is not None:
await text_queue.put(chunk)
if tts_task is not None:
await text_queue.put(None)
elapsed_time = time.time() - start_time
ModelApiKeyService.record_api_key_usage(self.db, api_key_obj.id)
# 发送结束事件(包含 suggested_questions、tts、audio_status、citations)
end_data: dict = {"elapsed_time": elapsed_time, "message_length": len(full_content), "error": None}
sq_config = features_config.get("suggested_questions_after_answer", {})
if isinstance(sq_config, dict) and sq_config.get("enabled"):
end_data["suggested_questions"] = await self.agent_service._generate_suggested_questions(
features_config, full_content,
{"model_name": api_key_obj.model_name, "api_key": api_key_obj.api_key,
"api_base": api_key_obj.api_base}, {}
)
end_data["audio_url"] = stream_audio_url
# 检查TTS是否已完成(非阻塞,不取消任务)
audio_status = "pending"
if tts_task is not None and tts_task.done():
# 任务已完成,检查是否有异常
try:
tts_task.result()
audio_status = "completed"
except Exception as e:
logger.warning(f"TTS任务异常: {e}")
audio_status = "failed"
end_data["audio_status"] = audio_status if stream_audio_url else None
# 过滤 citations(只调用一次)
filtered_citations = self.agent_service._filter_citations(features_config, citations_collector)
end_data["citations"] = filtered_citations
# 保存消息
human_meta = {
"files": [],
"history_files": {}
}
assistant_meta = {
"model": api_key_obj.model_name,
"usage": {"prompt_tokens": 0, "completion_tokens": 0, "total_tokens": total_tokens},
"audio_url": None,
"citations": filtered_citations,
"reasoning_content": full_reasoning or None
}
if files:
local_ids = [f.upload_file_id for f in files
if f.transfer_method.value == "local_file" and f.upload_file_id
and (not f.name or not f.size)]
meta_map = {}
if local_ids:
rows = self.db.query(FileMetadata).filter(
FileMetadata.id.in_(local_ids),
FileMetadata.status == "completed"
).all()
meta_map = {str(r.id): r for r in rows}
for f in files:
name, size = f.name, f.size
if f.transfer_method.value == "local_file" and f.upload_file_id and (not name or not size):
meta = meta_map.get(str(f.upload_file_id))
if meta:
name = name or meta.file_name
size = size or meta.file_size
human_meta["files"].append({
"type": f.type,
"url": f.url,
"name": name,
"size": size,
"file_type": f.file_type,
})
if processed_files:
human_meta["history_files"] = {
"content": processed_files,
"provider": api_key_obj.provider,
"is_omni": api_key_obj.is_omni
}
if stream_audio_url:
assistant_meta["audio_url"] = stream_audio_url
if memory_flag:
connected_config = get_end_user_connected_config(user_id, self.db)
memory_config_id: str = connected_config.get("memory_config_id")
file_list = []
for file in files:
file_dict = file.model_dump()
file_dict["upload_file_id"] = str(file_dict["upload_file_id"]) if file_dict["upload_file_id"] else None
file_list.append(file_dict)
messages = [
{"role": "user", "content": message, "files": file_list},
{"role": "assistant", "content": full_content}
]
if memory_config_id:
await write_long_term(
storage_type,
user_id,
messages,
user_rag_memory_id,
memory_config_id
)
self.conversation_service.add_message(
conversation_id=conversation_id,
role="user",
content=message,
meta_data=human_meta
)
self.conversation_service.add_message(
message_id=message_id,
conversation_id=conversation_id,
role="assistant",
content=full_content,
meta_data=assistant_meta
)
yield f"event: end\ndata: {json.dumps(end_data, ensure_ascii=False)}\n\n"
logger.info(
"流式聊天完成",
extra={
"conversation_id": str(conversation_id),
"elapsed_time": elapsed_time,
"message_length": len(full_content)
}
)
except (GeneratorExit, asyncio.CancelledError):
# 生成器被关闭或任务被取消,正常退出
logger.debug("流式聊天被中断")
raise
except Exception as e:
logger.error(f"流式聊天失败: {str(e)}", exc_info=True)
# 发送错误事件
yield f"event: end\ndata: {json.dumps({'error': str(e)}, ensure_ascii=False)}\n\n"
async def multi_agent_chat(
self,
message: str,
conversation_id: uuid.UUID,
config: MultiAgentConfig,
user_id: Optional[str] = None,
variables: Optional[Dict[str, Any]] = None,
web_search: bool = False,
memory: bool = True,
storage_type: Optional[str] = None,
user_rag_memory_id: Optional[str] = None,
) -> Dict[str, Any]:
"""多 Agent 聊天(非流式)"""
start_time = time.time()
actual_config_id = None
config_id = actual_config_id
if variables is None:
variables = {}
# 2. 创建编排器
orchestrator = MultiAgentOrchestrator(self.db, config)
# 3. 执行任务
result = await orchestrator.execute(
message=message,
conversation_id=conversation_id,
user_id=user_id,
variables=variables,
use_llm_routing=True, # 默认启用 LLM 路由
web_search=web_search, # 网络搜索参数
memory=memory # 记忆功能参数
)
elapsed_time = time.time() - start_time
# 保存消息
self.conversation_service.add_message(
conversation_id=conversation_id,
role="user",
content=message
)
ai_message = self.conversation_service.add_message(
conversation_id=conversation_id,
role="assistant",
content=result.get("message", ""),
meta_data={
"mode": result.get("mode"),
"elapsed_time": result.get("elapsed_time"),
"usage": result.get("usage", {
"prompt_tokens": 0,
"completion_tokens": 0,
"total_tokens": 0
})
}
)
return {
"conversation_id": conversation_id,
"message": result.get("message", ""),
"message_id": str(ai_message.id),
"usage": {
"prompt_tokens": 0,
"completion_tokens": 0,
"total_tokens": 0
},
"elapsed_time": elapsed_time
}
async def multi_agent_chat_stream(
self,
message: str,
conversation_id: uuid.UUID,
config: MultiAgentConfig,
user_id: Optional[str] = None,
variables: Optional[Dict[str, Any]] = None,
web_search: bool = False,
memory: bool = True,
storage_type: Optional[str] = None,
user_rag_memory_id: Optional[str] = None,
) -> AsyncGenerator[str, None]:
"""多 Agent 聊天(流式)"""
start_time = time.time()
if variables is None:
variables = {}
try:
message_id = uuid.uuid4()
# 发送开始事件
yield f"event: start\ndata: {json.dumps({'conversation_id': str(conversation_id), 'message_id': str(message_id)}, ensure_ascii=False)}\n\n"
full_content = ""
total_tokens = 0
# 2. 创建编排器
orchestrator = MultiAgentOrchestrator(self.db, config)
# 3. 流式执行任务
async for event in orchestrator.execute_stream(
message=message,
conversation_id=conversation_id,
user_id=user_id,
variables=variables,
use_llm_routing=True,
web_search=web_search, # 网络搜索参数
memory=memory, # 记忆功能参数
storage_type=storage_type,
user_rag_memory_id=user_rag_memory_id
):
# 拦截 sub_usage 事件,累加 token
if "event: sub_usage" in event:
if "data:" in event:
try:
data_line = event.split("data: ", 1)[1].strip()
data = json.loads(data_line)
total_tokens += data.get("total_tokens", 0)
except:
pass
else:
yield event
# 尝试提取内容(用于保存)
if "data:" in event:
try:
data_line = event.split("data: ", 1)[1].strip()
data = json.loads(data_line)
if "content" in data:
full_content += data["content"]
except:
pass
elapsed_time = time.time() - start_time
# 保存消息
self.conversation_service.add_message(
conversation_id=conversation_id,
role="user",
content=message
)
self.conversation_service.add_message(
message_id=message_id,
conversation_id=conversation_id,
role="assistant",
content=full_content,
meta_data={
"elapsed_time": elapsed_time,
"usage": {
"prompt_tokens": 0,
"completion_tokens": 0,
"total_tokens": total_tokens
}
}
)
logger.info(
"多 Agent 流式聊天完成",
extra={
"conversation_id": str(conversation_id),
"elapsed_time": elapsed_time,
"message_length": len(full_content)
}
)
except (GeneratorExit, asyncio.CancelledError):
# 生成器被关闭或任务被取消,正常退出
logger.debug("多 Agent 流式聊天被中断")
raise
except Exception as e:
logger.error(f"多 Agent 流式聊天失败: {str(e)}", exc_info=True)
# 发送错误事件
yield f"event: error\ndata: {json.dumps({'error': str(e)}, ensure_ascii=False)}\n\n"
async def workflow_chat(
self,
message: str,
conversation_id: uuid.UUID,
config: WorkflowConfig,
app_id: uuid.UUID,
release_id: uuid.UUID,
workspace_id: uuid.UUID,
files: Optional[List[FileInput]] = None,
user_id: Optional[str] = None,
variables: Optional[Dict[str, Any]] = None,
web_search: bool = False,
memory: bool = True,
storage_type: Optional[str] = None,
user_rag_memory_id: Optional[str] = None,
) -> Dict[str, Any]:
"""聊天(非流式)"""
payload = DraftRunRequest(
message=message,
variables=variables,
conversation_id=str(conversation_id),
stream=True,
user_id=user_id,
files=files
)
return await self.workflow_service.run(
app_id=app_id,
payload=payload,
config=config,
workspace_id=workspace_id,
release_id=release_id,
)
async def workflow_chat_stream(
self,
message: str,
conversation_id: uuid.UUID,
config: WorkflowConfig,
app_id: uuid.UUID,
release_id: uuid.UUID,
workspace_id: uuid.UUID,
user_id: str = None,
variables: Optional[Dict[str, Any]] = None,
files: Optional[List[FileInput]] = None,
web_search: bool = False,
memory: bool = True,
storage_type: Optional[str] = None,
user_rag_memory_id: Optional[str] = None,
public=False
) -> AsyncGenerator[dict, None]:
"""聊天(流式)"""
payload = DraftRunRequest(
message=message,
variables=variables,
conversation_id=str(conversation_id),
stream=True,
user_id=user_id,
files=files
)
async for event in self.workflow_service.run_stream(
app_id=app_id,
payload=payload,
config=config,
workspace_id=workspace_id,
release_id=release_id,
public=public
):
yield event
# ==================== 依赖注入函数 ====================
def get_app_chat_service(
db: Annotated[Session, Depends(get_db)]
) -> AppChatService:
"""获取工作流服务(依赖注入)"""
return AppChatService(db)