Merge pull request #992 from wanxunyang/develop-wxy
fix(workflow): rectify error handling and bolster execution logging
This commit is contained in:
@@ -9,7 +9,7 @@ from app.core.logging_config import get_business_logger
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from app.core.response_utils import success
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from app.db import get_db
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from app.dependencies import get_current_user, cur_workspace_access_guard
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from app.schemas.app_log_schema import AppLogConversation, AppLogConversationDetail
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from app.schemas.app_log_schema import AppLogConversation, AppLogConversationDetail, AppLogMessage
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from app.schemas.response_schema import PageData, PageMeta
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from app.services.app_service import AppService
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from app.services.app_log_service import AppLogService
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@@ -78,17 +78,32 @@ def get_app_log_detail(
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# 验证应用访问权限
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app_service = AppService(db)
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app_service.get_app(app_id, workspace_id)
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app = app_service.get_app(app_id, workspace_id)
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# 使用 Service 层查询
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log_service = AppLogService(db)
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conversation, node_executions_map = log_service.get_conversation_detail(
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conversation, messages, node_executions_map = log_service.get_conversation_detail(
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app_id=app_id,
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conversation_id=conversation_id,
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workspace_id=workspace_id
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workspace_id=workspace_id,
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app_type=app.type
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)
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detail = AppLogConversationDetail.model_validate(conversation)
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detail.node_executions_map = node_executions_map
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# 构建基础会话信息(不经过 ORM relationship)
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base = AppLogConversation.model_validate(conversation)
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# 单独处理 messages,避免触发 SQLAlchemy relationship 校验
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if messages and isinstance(messages[0], AppLogMessage):
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# 工作流:已经是 AppLogMessage 实例
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msg_list = messages
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else:
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# Agent:ORM Message 对象逐个转换
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msg_list = [AppLogMessage.model_validate(m) for m in messages]
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detail = AppLogConversationDetail(
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**base.model_dump(),
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messages=msg_list,
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node_executions_map=node_executions_map,
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)
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return success(data=detail)
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@@ -73,6 +73,7 @@ class CustomTool(BaseTool):
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# 添加通用参数(基于第一个操作的参数)
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if self._parsed_operations:
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first_operation = next(iter(self._parsed_operations.values()))
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# path/query 参数
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for param_name, param_info in first_operation.get("parameters", {}).items():
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params.append(ToolParameter(
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name=param_name,
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@@ -85,6 +86,23 @@ class CustomTool(BaseTool):
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maximum=param_info.get("maximum"),
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pattern=param_info.get("pattern")
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))
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# requestBody 参数 — 将 body 字段平铺为独立参数暴露给模型
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request_body = first_operation.get("request_body")
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if request_body:
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body_schema = request_body.get("properties", {})
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required_fields = request_body.get("required", [])
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for prop_name, prop_schema in body_schema.items():
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params.append(ToolParameter(
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name=prop_name,
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type=self._convert_openapi_type(prop_schema.get("type", "string")),
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description=prop_schema.get("description", ""),
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required=prop_name in required_fields,
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default=prop_schema.get("default"),
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enum=prop_schema.get("enum"),
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minimum=prop_schema.get("minimum"),
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maximum=prop_schema.get("maximum"),
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pattern=prop_schema.get("pattern")
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))
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return params
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@@ -180,6 +180,9 @@ class IterationRuntime:
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"cycle_id": self.node_id,
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"cycle_idx": idx,
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"node_id": node_name,
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"node_type": node_type,
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"node_name": node_cfg.get("data", {}).get("label") if node_cfg else node_name,
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"status": result.get("node_outputs", {}).get(node_name, {}).get("status", "completed"),
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"input": result.get("node_outputs", {}).get(node_name, {}).get("input")
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if not cycle_variable else cycle_variable,
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"output": result.get("node_outputs", {}).get(node_name, {}).get("output")
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@@ -210,6 +210,9 @@ class LoopRuntime:
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"cycle_id": self.node_id,
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"cycle_idx": idx,
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"node_id": node_name,
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"node_type": node_type,
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"node_name": node_name,
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"status": result.get("node_outputs", {}).get(node_name, {}).get("status", "completed"),
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"input": result.get("node_outputs", {}).get(node_name, {}).get("input")
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if not cycle_variable else cycle_variable,
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"output": result.get("node_outputs", {}).get(node_name, {}).get("output")
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@@ -14,6 +14,7 @@ class AppLogMessage(BaseModel):
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conversation_id: uuid.UUID
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role: str = Field(description="角色: user / assistant / system")
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content: str
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status: Optional[str] = Field(default=None, description="执行状态(工作流专用): completed / failed")
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meta_data: Optional[Dict[str, Any]] = None
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created_at: datetime.datetime
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@@ -58,6 +59,7 @@ class AppLogNodeExecution(BaseModel):
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input: Optional[Any] = None
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process: Optional[Any] = None
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output: Optional[Any] = None
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cycle_items: Optional[List[Any]] = None
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elapsed_time: Optional[float] = None
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token_usage: Optional[Dict[str, Any]] = None
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@@ -65,6 +65,11 @@ class ApiKeyService:
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BizCode.BAD_REQUEST
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)
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if data.resource_id:
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app = db.get(App, data.resource_id)
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if not app or not app.current_release_id:
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raise BusinessException("该应用未发布", BizCode.APP_NOT_PUBLISHED)
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# 生成 API Key
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api_key = generate_api_key(data.type)
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@@ -1,16 +1,17 @@
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"""应用日志服务层"""
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import uuid
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import datetime as dt
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from typing import Optional, Tuple
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from datetime import datetime
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from sqlalchemy import select
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from sqlalchemy.orm import Session
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from app.core.logging_config import get_business_logger
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from app.models.app_model import AppType
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from app.models.conversation_model import Conversation, Message
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from app.models.workflow_model import WorkflowExecution
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from app.repositories.conversation_repository import ConversationRepository, MessageRepository
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from app.schemas.app_log_schema import AppLogNodeExecution
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from app.schemas.app_log_schema import AppLogMessage, AppLogNodeExecution
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logger = get_business_logger()
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@@ -83,51 +84,40 @@ class AppLogService:
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self,
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app_id: uuid.UUID,
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conversation_id: uuid.UUID,
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workspace_id: uuid.UUID
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) -> Tuple[Conversation, dict[str, list[AppLogNodeExecution]]]:
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workspace_id: uuid.UUID,
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app_type: str = AppType.AGENT
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) -> Tuple[Conversation, list, dict[str, list[AppLogNodeExecution]]]:
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"""
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查询会话详情(包含消息和工作流节点执行记录)
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Args:
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app_id: 应用 ID
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conversation_id: 会话 ID
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workspace_id: 工作空间 ID
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查询会话详情
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Returns:
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Tuple[Conversation, dict[str, list[AppLogNodeExecution]]]:
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(包含消息的会话对象, 按消息ID分组的节点执行记录)
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Raises:
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ResourceNotFoundException: 当会话不存在时
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Tuple[Conversation, list[AppLogMessage|Message], dict[str, list[AppLogNodeExecution]]]
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"""
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logger.info(
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"查询应用日志会话详情",
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extra={
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"app_id": str(app_id),
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"conversation_id": str(conversation_id),
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"workspace_id": str(workspace_id)
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"workspace_id": str(workspace_id),
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"app_type": app_type
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}
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)
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# 查询会话
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conversation = self.conversation_repository.get_conversation_for_app_log(
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conversation_id=conversation_id,
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app_id=app_id,
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workspace_id=workspace_id
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)
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# 查询消息(按时间正序)
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messages = self.message_repository.get_messages_by_conversation(
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conversation_id=conversation_id
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)
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# 将消息附加到会话对象
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conversation.messages = messages
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# 查询工作流节点执行记录(按消息分组)
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_, node_executions_map = self._get_workflow_node_executions_with_map(
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conversation_id, messages
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)
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if app_type == AppType.WORKFLOW:
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messages, node_executions_map = self._get_workflow_messages_and_nodes(conversation_id)
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else:
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messages = self.message_repository.get_messages_by_conversation(
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conversation_id=conversation_id
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)
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node_executions_map = self._get_workflow_node_executions_with_map(
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conversation_id, messages
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)
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logger.info(
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"查询应用日志会话详情成功",
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@@ -139,13 +129,129 @@ class AppLogService:
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}
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)
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return conversation, node_executions_map
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return conversation, messages, node_executions_map
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def _get_workflow_messages_and_nodes(
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self,
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conversation_id: uuid.UUID,
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) -> Tuple[list[AppLogMessage], dict[str, list[AppLogNodeExecution]]]:
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"""
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工作流应用专用:从 workflow_executions 构建 messages 和节点日志。
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每条 WorkflowExecution 对应一轮对话:
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- user message:来自 execution.input_data(content 取 message 字段,files 放 meta_data)
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- assistant message:来自 execution.output_data(失败时内容为错误信息)
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开场白的 suggested_questions 合并到第一条 assistant message 的 meta_data 里。
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Returns:
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(messages 列表, node_executions_map)
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"""
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stmt = (
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select(WorkflowExecution)
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.where(
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WorkflowExecution.conversation_id == conversation_id,
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WorkflowExecution.status.in_(["completed", "failed"])
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)
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.order_by(WorkflowExecution.started_at.asc())
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)
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executions = list(self.db.scalars(stmt).all())
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# 查开场白:Message 表里 meta_data 含 suggested_questions 的第一条 assistant 消息
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opening_stmt = (
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select(Message)
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.where(
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Message.conversation_id == conversation_id,
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Message.role == "assistant",
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)
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.order_by(Message.created_at.asc())
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.limit(10)
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)
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early_messages = list(self.db.scalars(opening_stmt).all())
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suggested_questions: list = []
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for m in early_messages:
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if isinstance(m.meta_data, dict) and "suggested_questions" in m.meta_data:
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suggested_questions = m.meta_data.get("suggested_questions") or []
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break
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messages: list[AppLogMessage] = []
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node_executions_map: dict[str, list[AppLogNodeExecution]] = {}
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# 如果有开场白,作为第一条 assistant 消息插入
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if suggested_questions or early_messages:
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opening_msg = next(
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(m for m in early_messages
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if isinstance(m.meta_data, dict) and "suggested_questions" in m.meta_data),
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None
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)
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if opening_msg:
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messages.append(AppLogMessage(
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id=opening_msg.id,
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conversation_id=conversation_id,
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role="assistant",
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content=opening_msg.content,
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status=None,
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meta_data={"suggested_questions": suggested_questions},
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created_at=opening_msg.created_at,
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))
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for execution in executions:
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started_at = execution.started_at or dt.datetime.now()
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completed_at = execution.completed_at or started_at
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# assistant message 的 id,同时作为 node_executions_map 的 key
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assistant_msg_id = uuid.uuid5(execution.id, "assistant")
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# --- user message(输入)---
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input_data = execution.input_data or {}
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input_content = input_data.get("message") or _extract_text(input_data)
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# 跳过没有用户输入的 execution(如开场白触发的记录)
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if not input_content or not input_content.strip():
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continue
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files = input_data.get("files") or []
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user_msg = AppLogMessage(
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id=uuid.uuid5(execution.id, "user"),
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conversation_id=conversation_id,
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role="user",
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content=input_content,
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meta_data={"files": files} if files else None,
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created_at=started_at,
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)
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messages.append(user_msg)
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# --- assistant message(输出)---
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if execution.status == "completed":
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output_content = _extract_text(execution.output_data)
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meta = {"usage": execution.token_usage or {}, "elapsed_time": execution.elapsed_time}
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else:
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output_content = _extract_text(execution.output_data) or ""
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meta = {"error": execution.error_message, "error_node_id": execution.error_node_id}
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assistant_msg = AppLogMessage(
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id=assistant_msg_id,
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conversation_id=conversation_id,
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role="assistant",
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content=output_content,
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status=execution.status,
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meta_data=meta,
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created_at=completed_at,
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)
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messages.append(assistant_msg)
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# --- 节点执行记录,从 workflow_executions.output_data["node_outputs"] 读取 ---
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execution_nodes = _build_nodes_from_output_data(execution.output_data)
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if execution_nodes:
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node_executions_map[str(assistant_msg_id)] = execution_nodes
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return messages, node_executions_map
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def _get_workflow_node_executions_with_map(
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self,
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conversation_id: uuid.UUID,
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messages: list[Message]
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) -> Tuple[list[AppLogNodeExecution], dict[str, list[AppLogNodeExecution]]]:
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) -> dict[str, list[AppLogNodeExecution]]:
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"""
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从 workflow_executions 表中提取节点执行记录,并按 assistant message 分组
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@@ -157,13 +263,12 @@ class AppLogService:
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Tuple[list[AppLogNodeExecution], dict[str, list[AppLogNodeExecution]]]:
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(所有节点执行记录列表, 按 message_id 分组的节点执行记录字典)
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"""
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node_executions = []
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node_executions_map: dict[str, list[AppLogNodeExecution]] = {}
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# 查询该会话关联的所有工作流执行记录(按时间正序)
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stmt = select(WorkflowExecution).where(
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WorkflowExecution.conversation_id == conversation_id,
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WorkflowExecution.status == "completed"
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WorkflowExecution.status.in_(["completed", "failed"])
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).order_by(WorkflowExecution.started_at.asc())
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executions = self.db.scalars(stmt).all()
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@@ -188,10 +293,18 @@ class AppLogService:
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used_message_ids: set[str] = set()
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for execution in executions:
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if not execution.output_data:
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# 构建节点执行记录列表,从 workflow_executions.output_data["node_outputs"] 读取
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execution_nodes = _build_nodes_from_output_data(execution.output_data)
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if not execution_nodes:
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continue
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# 找到该 execution 对应的 assistant message
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# 失败的执行没有 assistant message,直接用 execution id 作为 key
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if execution.status == "failed":
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node_executions_map[f"execution_{str(execution.id)}"] = execution_nodes
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continue
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# completed:通过时序匹配关联到对应的 assistant message
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# 逻辑:找 execution.started_at 之后最近的、未使用的 assistant message
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best_msg = None
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best_dt = None
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@@ -200,9 +313,9 @@ class AppLogService:
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if msg_id_str in used_message_ids:
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continue
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if msg.created_at and msg.created_at >= execution.started_at:
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dt = (msg.created_at - execution.started_at).total_seconds()
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if best_dt is None or dt < best_dt:
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best_dt = dt
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delta = (msg.created_at - execution.started_at).total_seconds()
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if best_dt is None or delta < best_dt:
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best_dt = delta
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best_msg = msg
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if not best_msg:
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@@ -210,31 +323,76 @@ class AppLogService:
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msg_id_str = str(best_msg.id)
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used_message_ids.add(msg_id_str)
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node_executions_map[msg_id_str] = execution_nodes
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# 提取节点输出
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output_data = execution.output_data
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if isinstance(output_data, dict):
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node_outputs = output_data.get("node_outputs", {})
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execution_nodes = []
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for node_id, node_data in node_outputs.items():
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if not isinstance(node_data, dict):
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continue
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node_execution = AppLogNodeExecution(
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node_id=node_data.get("node_id", node_id),
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node_type=node_data.get("node_type", "unknown"),
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node_name=node_data.get("node_name"),
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status=node_data.get("status", "unknown"),
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error=node_data.get("error"),
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input=node_data.get("input"),
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process=node_data.get("process"),
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output=node_data.get("output"),
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elapsed_time=node_data.get("elapsed_time"),
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token_usage=node_data.get("token_usage"),
|
||||
)
|
||||
node_executions.append(node_execution)
|
||||
execution_nodes.append(node_execution)
|
||||
return node_executions_map
|
||||
|
||||
# 将节点记录关联到 message_id
|
||||
node_executions_map[msg_id_str] = execution_nodes
|
||||
|
||||
return node_executions, node_executions_map
|
||||
def _extract_text(data: Optional[dict]) -> str:
|
||||
"""从 workflow execution 的 input_data / output_data 中提取可读文本。
|
||||
|
||||
优先取 'text'、'content'、'output' 字段;若都没有则 JSON 序列化整个 dict。
|
||||
"""
|
||||
if not data:
|
||||
return ""
|
||||
for key in ("message", "text", "content", "output", "result", "answer"):
|
||||
if key in data and isinstance(data[key], str):
|
||||
return data[key]
|
||||
import json
|
||||
return json.dumps(data, ensure_ascii=False)
|
||||
|
||||
|
||||
def _build_nodes_from_output_data(output_data: Optional[dict]) -> list[AppLogNodeExecution]:
|
||||
"""从 workflow_executions.output_data["node_outputs"] 构建节点执行记录列表。
|
||||
|
||||
output_data 结构:
|
||||
{
|
||||
"node_outputs": {
|
||||
"<node_id>": {
|
||||
"node_type": ...,
|
||||
"node_name": ...,
|
||||
"status": ...,
|
||||
"input": ...,
|
||||
"output": ...,
|
||||
"elapsed_time": ...,
|
||||
"token_usage": ...,
|
||||
"error": ...,
|
||||
"cycle_items": [...],
|
||||
...
|
||||
}
|
||||
},
|
||||
"error": ...,
|
||||
...
|
||||
}
|
||||
"""
|
||||
if not output_data:
|
||||
return []
|
||||
node_outputs: dict = output_data.get("node_outputs") or {}
|
||||
result = []
|
||||
for node_id, node_data in node_outputs.items():
|
||||
if not isinstance(node_data, dict):
|
||||
continue
|
||||
output = dict(node_data)
|
||||
cycle_items = output.pop("cycle_items", None)
|
||||
# 把已知的顶层字段剥离,剩余的作为 output
|
||||
node_type = output.pop("node_type", "unknown")
|
||||
node_name = output.pop("node_name", None)
|
||||
status = output.pop("status", "completed")
|
||||
error = output.pop("error", None)
|
||||
inp = output.pop("input", None)
|
||||
elapsed_time = output.pop("elapsed_time", None)
|
||||
token_usage = output.pop("token_usage", None)
|
||||
result.append(AppLogNodeExecution(
|
||||
node_id=node_id,
|
||||
node_type=node_type,
|
||||
node_name=node_name,
|
||||
status=status,
|
||||
error=error,
|
||||
input=inp,
|
||||
process=None,
|
||||
output=output if output else None,
|
||||
cycle_items=cycle_items,
|
||||
elapsed_time=elapsed_time,
|
||||
token_usage=token_usage,
|
||||
))
|
||||
return result
|
||||
|
||||
@@ -815,11 +815,12 @@ class ToolService:
|
||||
"default": param_info.get("default")
|
||||
})
|
||||
|
||||
# 请求体参数
|
||||
# 请求体参数 — _extract_request_body 返回 {"schema": {...}, "required": bool, ...}
|
||||
request_body = operation.get("request_body")
|
||||
if request_body:
|
||||
schema_props = request_body.get("schema", {}).get("properties", {})
|
||||
required_props = request_body.get("schema", {}).get("required", [])
|
||||
body_schema = request_body.get("schema", {})
|
||||
schema_props = body_schema.get("properties", {})
|
||||
required_props = body_schema.get("required", [])
|
||||
|
||||
for prop_name, prop_schema in schema_props.items():
|
||||
parameters.append({
|
||||
|
||||
@@ -17,8 +17,9 @@ from app.core.workflow.executor import execute_workflow, execute_workflow_stream
|
||||
from app.core.workflow.nodes.enums import NodeType
|
||||
from app.core.workflow.validator import validate_workflow_config
|
||||
from app.db import get_db
|
||||
from sqlalchemy import select
|
||||
from app.models import App
|
||||
from app.models.workflow_model import WorkflowConfig, WorkflowExecution
|
||||
from app.models.workflow_model import WorkflowConfig, WorkflowExecution, WorkflowNodeExecution
|
||||
from app.repositories import knowledge_repository
|
||||
from app.repositories.workflow_repository import (
|
||||
WorkflowConfigRepository,
|
||||
@@ -918,6 +919,7 @@ class WorkflowService:
|
||||
input_data["conv_messages"] = conv_messages
|
||||
init_message_length = len(input_data.get("conv_messages", []))
|
||||
message_id = uuid.uuid4()
|
||||
_cycle_items: dict[str, list] = {}
|
||||
|
||||
# 新会话时写入开场白
|
||||
is_new_conversation = init_message_length == 0
|
||||
@@ -948,6 +950,15 @@ class WorkflowService:
|
||||
memory_storage_type=storage_type,
|
||||
user_rag_memory_id=user_rag_memory_id
|
||||
):
|
||||
event_type = event.get("event")
|
||||
event_data = event.get("data", {})
|
||||
|
||||
if event_type == "cycle_item":
|
||||
cycle_id = event_data.get("cycle_id")
|
||||
if cycle_id not in _cycle_items:
|
||||
_cycle_items[cycle_id] = []
|
||||
_cycle_items[cycle_id].append(event_data)
|
||||
|
||||
if event.get("event") == "workflow_end":
|
||||
status = event.get("data", {}).get("status")
|
||||
token_usage = event.get("data", {}).get("token_usage", {}) or {}
|
||||
@@ -1019,6 +1030,18 @@ class WorkflowService:
|
||||
)
|
||||
else:
|
||||
logger.error(f"unexpect workflow run status, status: {status}")
|
||||
# 把积累的 cycle_item 写入 workflow_executions.output_data["node_outputs"]
|
||||
if _cycle_items and execution.output_data:
|
||||
import copy
|
||||
new_output_data = copy.deepcopy(execution.output_data)
|
||||
node_outputs = new_output_data.setdefault("node_outputs", {})
|
||||
for cycle_node_id, items in _cycle_items.items():
|
||||
if cycle_node_id in node_outputs:
|
||||
node_outputs[cycle_node_id]["cycle_items"] = items
|
||||
else:
|
||||
node_outputs[cycle_node_id] = {"cycle_items": items}
|
||||
execution.output_data = new_output_data
|
||||
self.db.commit()
|
||||
elif event.get("event") == "workflow_start":
|
||||
event["data"]["message_id"] = str(message_id)
|
||||
event = self._emit(public, event)
|
||||
|
||||
Reference in New Issue
Block a user