Merge #9 into develop from fix/memory_reflection

新增反思功能(功能配置接口+反思celery后台检测反思的迭代周期)

* fix/memory_reflection: (24 commits squashed)

  - 新增反思功能(功能配置接口+反思celery后台检测反思的迭代周期)

  - 新增反思功能(功能配置接口+反思celery后台检测反思的迭代周期)

  - 新增反思功能(检测代码/规范化程序)

  - 新增反思功能(检测代码/规范化程序)

  - 新增反思功能(检测代码/规范化程序)

  - 新增反思功能(检测代码/规范化程序)

  - 新增反思功能(检测代码/规范化程序)

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

  - 反思优化

Signed-off-by: aliyun8644380055 <accounts_68c0f5d519f260d93ee2997e@mail.teambition.com>
Commented-by: aliyun8644380055 <accounts_68c0f5d519f260d93ee2997e@mail.teambition.com>
Commented-by: aliyun6762716068 <accounts_68cb7c6b61f5dcc4200d6251@mail.teambition.com>
Reviewed-by: aliyun6762716068 <accounts_68cb7c6b61f5dcc4200d6251@mail.teambition.com>
Merged-by: aliyun6762716068 <accounts_68cb7c6b61f5dcc4200d6251@mail.teambition.com>

CR-link: https://codeup.aliyun.com/redbearai/python/redbear-mem-open/change/9
This commit is contained in:
李新月
2025-12-19 08:04:12 +00:00
committed by 孙科
parent 8d810af1d0
commit 5c0d8b42f3
21 changed files with 2384 additions and 337 deletions

View File

@@ -0,0 +1,397 @@
"""
记忆反思服务
处理反思引擎的调用和执行
"""
from datetime import datetime
from typing import Dict, Any, Optional, Set
from fastapi import Depends
from sqlalchemy.orm import Session
from sqlalchemy import text
from app.db import get_db
from app.core.logging_config import get_api_logger
from app.core.memory.storage_services.reflection_engine import ReflectionConfig, ReflectionEngine
from app.core.memory.storage_services.reflection_engine.self_reflexion import ReflectionRange, ReflectionBaseline
from app.repositories.data_config_repository import DataConfigRepository
from app.repositories.neo4j.neo4j_connector import Neo4jConnector
from app.models.app_model import App
from app.models.app_release_model import AppRelease
from app.models.end_user_model import EndUser
api_logger = get_api_logger()
class WorkspaceAppService:
"""Workplace Application Service Class """
def __init__(self, db: Session):
self.db = db
def get_workspace_apps_detailed(self, workspace_id: str) -> Dict[str, Any]:
"""
Get detailed information of all applications in the workspace
Args:
Workspace_id: Workspace ID
Returns:
Dictionary containing detailed application information
"""
apps = self.db.query(App).filter(App.workspace_id == workspace_id).all()
app_ids = [str(app.id) for app in apps]
apps_detailed_info = []
for app in apps:
app_info = self._build_app_info(app)
self._process_app_releases(app, app_info)
self._process_end_users(app, app_info)
apps_detailed_info.append(app_info)
return {
"status": "成功",
"message": f"成功查询到 {len(app_ids)} 个应用及其详细信息",
"workspace_id": str(workspace_id),
"apps_count": len(app_ids),
"app_ids": app_ids,
"apps_detailed_info": apps_detailed_info
}
def _build_app_info(self, app: App) -> Dict[str, Any]:
"""base_infomation"""
return {
"id": str(app.id),
"name": app.name,
"description": app.description,
"type": app.type,
"status": app.status,
"visibility": app.visibility,
"created_at": app.created_at.isoformat() if app.created_at else None,
"updated_at": app.updated_at.isoformat() if app.updated_at else None,
"releases": [],
"data_configs": [],
"end_users": []
}
def _process_app_releases(self, app: App, app_info: Dict[str, Any]) -> None:
"""Process the release version and configuration information of the application"""
app_releases = self.db.query(AppRelease).filter(AppRelease.app_id == app.id).all()
if not app_releases:
return
processed_configs: Set[str] = set()
for release in app_releases:
memory_content = self._extract_memory_content(release.config)
if memory_content and memory_content in processed_configs:
continue
release_info = {
"app_id": str(release.app_id),
"config": memory_content
}
if memory_content:
processed_configs.add(memory_content)
data_config_info = self._get_data_config(memory_content)
if data_config_info:
if not any(dc["config_id"] == data_config_info["config_id"] for dc in app_info["data_configs"]):
app_info["data_configs"].append(data_config_info)
app_info["releases"].append(release_info)
def _extract_memory_content(self, config: Any) -> str:
"""Extract memory_comtent from config"""
if not config or not isinstance(config, dict):
return None
memory_obj = config.get('memory')
if memory_obj and isinstance(memory_obj, dict):
return memory_obj.get('memory_content')
return None
def _get_data_config(self, memory_content: str) -> Dict[str, Any]:
"""Retrieve data_comfig information based on memory_comtent"""
try:
data_config_query, data_config_params = DataConfigRepository.build_select_reflection(memory_content)
data_config_result = self.db.execute(text(data_config_query), data_config_params).fetchone()
if data_config_result is None:
return None
if data_config_result:
return {
"config_id": data_config_result.config_id,
"enable_self_reflexion": data_config_result.enable_self_reflexion,
"iteration_period": data_config_result.iteration_period,
"reflexion_range": data_config_result.reflexion_range,
"baseline": data_config_result.baseline,
"reflection_model_id": data_config_result.reflection_model_id,
"memory_verify": data_config_result.memory_verify,
"quality_assessment": data_config_result.quality_assessment,
"user_id": data_config_result.user_id
}
except Exception as e:
api_logger.warning(f"查询data_config失败memory_content: {memory_content}, 错误: {str(e)}")
return None
def _process_end_users(self, app: App, app_info: Dict[str, Any]) -> None:
"""Processing end-user information for applications"""
end_users = self.db.query(EndUser).filter(EndUser.app_id == app.id).all()
for end_user in end_users:
end_user_info = {
"id": str(end_user.id),
"app_id": str(end_user.app_id)
}
app_info["end_users"].append(end_user_info)
def get_end_user_reflection_time(self, end_user_id: str) -> Optional[Any]:
"""
Read the reflection time of end users
Args:
End_user_id: End User ID
Returns:
Reflection time or None
"""
try:
end_user = self.db.query(EndUser).filter(EndUser.id == end_user_id).first()
if end_user:
return end_user.reflection_time
return None
except Exception as e:
api_logger.error(f"读取用户反思时间失败end_user_id: {end_user_id}, 错误: {str(e)}")
return None
def update_end_user_reflection_time(self, end_user_id: str) -> bool:
"""
Update the reflection time of end users to the current time
Args:
End_user_id: End User ID
Returns:
Is the update successful
"""
try:
from datetime import datetime
end_user = self.db.query(EndUser).filter(EndUser.id == end_user_id).first()
if end_user:
end_user.reflection_time = datetime.now()
self.db.commit()
api_logger.info(f"成功更新用户反思时间end_user_id: {end_user_id}")
return True
else:
api_logger.warning(f"未找到用户end_user_id: {end_user_id}")
return False
except Exception as e:
api_logger.error(f"更新用户反思时间失败end_user_id: {end_user_id}, 错误: {str(e)}")
self.db.rollback()
return False
class MemoryReflectionService:
"""Memory reflection service category"""
def __init__(self,db: Session = Depends(get_db)):
self.db=db
async def start_reflection_from_data(self, config_data: Dict[str, Any], end_user_id: str) -> Dict[str, Any]:
"""
Starting Reflection from Configuration Data
Args:
config_data: Configure data dictionary, including reflective configuration information
end_user_id: end_user_id
Returns:
Reflect on the execution results
"""
try:
config_id = config_data.get("config_id")
api_logger.info(f"从配置数据启动反思config_id: {config_id}, end_user_id: {end_user_id}")
if not config_data.get("enable_self_reflexion", False):
return {
"status": "跳过",
"message": "反思引擎未启用",
"config_id": config_id,
"end_user_id": end_user_id,
"config_data": config_data
}
config_data_id=config_data['config_id']
reflection_config=WorkspaceAppService(self.db)._get_data_config(config_data_id)
if reflection_config is not None and reflection_config['enable_self_reflexion']:
reflection_config= self._create_reflection_config_from_data(reflection_config)
iteration_period=reflection_config.iteration_period
workspace_service = WorkspaceAppService(self.db)
current_reflection_time = workspace_service.get_end_user_reflection_time(end_user_id)
reflection_time = datetime.fromisoformat(str(current_reflection_time))
current_time = datetime.now()
time_diff = current_time - reflection_time
hours_diff = int(time_diff.total_seconds() / 3600)
if iteration_period==hours_diff or current_reflection_time is None:
api_logger.info(f"与上次的反思时间间隔为: {hours_diff} 小时")
# 3. 执行反思引擎
reflection_results = await self._execute_reflection_engine(
reflection_config, end_user_id
)
# 更新反思时间为当前时间
update_success = workspace_service.update_end_user_reflection_time(end_user_id)
if update_success:
api_logger.info(f"成功更新用户 {end_user_id} 的反思时间")
else:
api_logger.error(f"更新用户 {end_user_id} 的反思时间失败")
return {
"status": "完成",
"message": "反思引擎执行完成",
"config_id": config_id,
"end_user_id": end_user_id,
"config_data": config_data,
"reflection_results": reflection_results
}
else:
return {
"status": "等待中..",
"message": "反思引擎未开始执行执",
"config_id": config_id,
"end_user_id": end_user_id,
"config_data": config_data,
"reflection_results": ''
}
except Exception as e:
config_id = config_data.get("config_id", "unknown")
api_logger.error(f"启动反思失败config_id: {config_id}, end_user_id: {end_user_id}, 错误: {str(e)}")
return {
"status": "错误",
"message": f"启动反思失败: {str(e)}",
"config_id": config_id,
"end_user_id": end_user_id,
"config_data": config_data
}
def _create_reflection_config_from_data(self, config_data: Dict[str, Any]) -> ReflectionConfig:
"""Create reflective configuration objects from configuration data"""
reflexion_range_value = config_data.get("reflexion_range")
if reflexion_range_value is None or reflexion_range_value == "":
reflexion_range_value = "partial"
reflexion_range = ReflectionRange(reflexion_range_value)
baseline_value = config_data.get("baseline")
if baseline_value is None or baseline_value == "":
baseline_value = "TIME"
baseline = ReflectionBaseline(baseline_value)
# iteration_period =
iteration_period = config_data.get("iteration_period", 24)
if isinstance(iteration_period, str):
try:
iteration_period = int(iteration_period)
except (ValueError, TypeError):
iteration_period = 24 # 默认24小时
return ReflectionConfig(
enabled=config_data.get("enable_self_reflexion", False),
iteration_period=str(iteration_period), # ReflectionConfig期望字符串
reflexion_range=reflexion_range,
baseline=baseline,
memory_verify=config_data.get("memory_verify", False),
quality_assessment=config_data.get("quality_assessment", False),
model_id=config_data.get("reflection_model_id", "")
)
async def _execute_reflection_engine(
self,
reflection_config: ReflectionConfig,
user_id: str
) -> Dict[str, Any]:
"""Execute Reflection Engine"""
try:
# 创建Neo4j连接器
connector = Neo4jConnector()
# 创建反思引擎
engine = ReflectionEngine(
config=reflection_config,
neo4j_connector=connector,
llm_client=reflection_config.model_id
)
# 执行反思
reflection_result = await engine.execute_reflection(user_id)
return {
"success": reflection_result.success,
"message": reflection_result.message,
"conflicts_found": reflection_result.conflicts_found,
"conflicts_resolved": reflection_result.conflicts_resolved,
"memories_updated": reflection_result.memories_updated,
"execution_time": reflection_result.execution_time,
"details": reflection_result.details
}
except Exception as e:
api_logger.error(f"反思引擎执行失败: {str(e)}")
return {
"success": False,
"message": f"反思引擎执行失败: {str(e)}",
"conflicts_found": 0,
"conflicts_resolved": 0,
"memories_updated": 0,
"execution_time": 0.0
}
class Memory_Reflection_Service:
"""Memory Reflection Service - Used for calling the/reflection interface"""
def __init__(self, db: Session):
self.db = db
self.reflection_service = MemoryReflectionService(db)
async def start_reflection(self, config_data: Dict[str, Any], end_user_id: str) -> Dict[str, Any]:
"""
Activate the reflection function
Args:
config_data: 配置数据,格式如下:
{
"config_id": 26,
"enable_self_reflexion": true,
"iteration_period": "6",
"reflexion_range": "partial",
"baseline": "TIME",
"reflection_model_id": "ea405fa6-c387-4d78-80ab-826d692301b3",
"memory_verify": true,
"quality_assessment": false,
"user_id": null
}
end_user_id: end_user_idexample "12a8b235-6eb1-4481-a53c-b77933b5c949"
Returns:
"""
api_logger.info(f"Memory_Reflection_Service启动反思config_id: {config_data.get('config_id')}, end_user_id: {end_user_id}")
# 调用核心反思服务
result = await self.reflection_service.start_reflection_from_data(config_data, end_user_id)
return result