PFC 新版基础模块适配

This commit is contained in:
DrSmoothl
2026-03-14 01:06:33 +08:00
parent a4303d9b81
commit 84212e8e95
4 changed files with 69 additions and 845 deletions

View File

@@ -1,23 +1,26 @@
import asyncio
import random
import time
import traceback
import random
from typing import List, Optional, Dict, Any, Tuple, TYPE_CHECKING
from typing import TYPE_CHECKING, Any, Dict, List, Optional, Tuple
from rich.traceback import install
from src.config.config import global_config
from src.common.logger import get_logger
from src.common.utils.utils_config import ExpressionConfigUtils
from src.bw_learner.expression_learner import ExpressionLearner
from src.bw_learner.jargon_miner import JargonMiner
from src.chat.message_receive.chat_manager import BotChatSession
from src.chat.message_receive.chat_manager import chat_manager as _chat_manager
from src.chat.message_receive.message import SessionMessage
from src.common.data_models.info_data_model import ActionPlannerInfo
from src.common.data_models.message_component_data_model import MessageSequence, TextComponent
from src.chat.message_receive.chat_manager import chat_manager as _chat_manager
from src.chat.utils.prompt_builder import global_prompt_manager
from src.chat.utils.timer_calculator import Timer
from src.chat.brain_chat.brain_planner import BrainPlanner
from src.chat.planner_actions.action_modifier import ActionModifier
from src.chat.planner_actions.action_manager import ActionManager
from src.chat.heart_flow.hfc_utils_old import CycleDetail
from src.bw_learner.expression_learner_old import expression_learner_manager
from src.bw_learner.message_recorder_old import extract_and_distribute_messages
from src.chat.heart_flow.heartFC_utils import CycleDetail
from src.person_info.person_info import Person
from src.core.types import ActionInfo, EventType
from src.core.event_bus import event_bus
@@ -31,7 +34,7 @@ from src.services import (
from src.services.message_service import build_readable_messages_with_id, get_messages_before_time_in_chat
if TYPE_CHECKING:
from src.common.data_models.database_data_model import DatabaseMessages
from src.chat.message_receive.message import SessionMessage
ERROR_LOOP_INFO = {
@@ -75,12 +78,20 @@ class BrainChatting:
"""
# 基础属性
self.stream_id: str = session_id # 聊天流ID
self.chat_stream: ChatStream = get_chat_manager().get_stream(self.stream_id) # type: ignore
self.chat_stream: BotChatSession = _chat_manager.get_session_by_session_id(self.stream_id) # type: ignore[assignment]
if not self.chat_stream:
raise ValueError(f"无法找到聊天流: {self.stream_id}")
self.log_prefix = f"[{_chat_manager.get_session_name(self.stream_id) or self.stream_id}]"
self.expression_learner = expression_learner_manager.get_expression_learner(self.stream_id)
expr_use, jargon_learn, expr_learn = ExpressionConfigUtils.get_expression_config_for_chat(self.stream_id)
self._enable_expression_use = expr_use
self._enable_expression_learning = expr_learn
self._enable_jargon_learning = jargon_learn
self._expression_learner = ExpressionLearner(self.stream_id)
self._jargon_miner = JargonMiner(self.stream_id, session_name=self.log_prefix.strip("[]"))
self._min_messages_for_extraction = 30
self._min_extraction_interval = 60
self._last_extraction_time = 0.0
self.action_manager = ActionManager()
self.action_planner = BrainPlanner(chat_id=self.stream_id, action_manager=self.action_manager)
@@ -163,6 +174,25 @@ class BrainChatting:
+ (f"\n详情: {'; '.join(timer_strings)}" if timer_strings else "")
)
async def _trigger_expression_learning(self, messages: List[SessionMessage]) -> None:
if not messages:
return
self._expression_learner.add_messages(messages)
if time.time() - self._last_extraction_time < self._min_extraction_interval:
return
if self._expression_learner.get_cache_size() < self._min_messages_for_extraction:
return
if not self._enable_expression_learning:
return
self._last_extraction_time = time.time()
try:
jargon_miner = self._jargon_miner if self._enable_jargon_learning else None
await self._expression_learner.learn(jargon_miner)
except Exception as exc:
logger.error(f"{self.log_prefix} 表达学习失败: {exc}", exc_info=True)
async def _loopbody(self): # sourcery skip: hoist-if-from-if
# 获取最新消息(用于上下文,但不影响是否调用 observe
recent_messages_list = message_api.get_messages_by_time_in_chat(
@@ -197,8 +227,8 @@ class BrainChatting:
async def _send_and_store_reply(
self,
response_set: "ReplySetModel",
action_message: "DatabaseMessages",
response_set: MessageSequence,
action_message: SessionMessage,
cycle_timers: Dict[str, float],
thinking_id,
actions,
@@ -212,11 +242,11 @@ class BrainChatting:
)
# 获取 platform如果不存在则从 chat_stream 获取,如果还是 None 则使用默认值
platform = action_message.chat_info.platform
platform = action_message.platform
if platform is None:
platform = getattr(self.chat_stream, "platform", "unknown")
person = Person(platform=platform, user_id=action_message.user_info.user_id)
person = Person(platform=platform, user_id=action_message.message_info.user_info.user_id)
person_name = person.person_name
action_prompt_display = f"你对{person_name}进行了回复:{reply_text}"
@@ -245,16 +275,15 @@ class BrainChatting:
async def _observe(
self, # interest_value: float = 0.0,
recent_messages_list: Optional[List["DatabaseMessages"]] = None,
recent_messages_list: Optional[List[SessionMessage]] = None,
) -> bool: # sourcery skip: merge-else-if-into-elif, remove-redundant-if
if recent_messages_list is None:
recent_messages_list = []
_reply_text = "" # 初始化reply_text变量避免UnboundLocalError
async with global_prompt_manager.async_message_scope(self.chat_stream.context.get_template_name()):
# 通过 MessageRecorder 统一提取消息并分发给 expression_learner 和 jargon_miner
# 在 replyer 执行时触发,统一管理时间窗口,避免重复获取消息
asyncio.create_task(extract_and_distribute_messages(self.stream_id))
if recent_messages_list:
asyncio.create_task(self._trigger_expression_learning(recent_messages_list))
cycle_timers, thinking_id = self.start_cycle()
logger.info(f"{self.log_prefix} 开始第{self._cycle_counter}次思考")
@@ -294,7 +323,7 @@ class BrainChatting:
prompt_key="brain_planner",
)
_event_msg = build_event_message(
EventType.ON_PLAN, llm_prompt=prompt_info[0], stream_id=self.chat_stream.stream_id
EventType.ON_PLAN, llm_prompt=prompt_info[0], stream_id=self.chat_stream.session_id
)
continue_flag, modified_message = await event_bus.emit(EventType.ON_PLAN, _event_msg)
if not continue_flag:
@@ -454,7 +483,7 @@ class BrainChatting:
action_data: dict,
cycle_timers: Dict[str, float],
thinking_id: str,
action_message: Optional["DatabaseMessages"] = None,
action_message: Optional[SessionMessage] = None,
) -> tuple[bool, str, str]:
"""
处理规划动作,使用动作工厂创建相应的动作处理器
@@ -508,11 +537,11 @@ class BrainChatting:
async def _send_response(
self,
reply_set: MessageSequence,
message_data: "DatabaseMessages",
message_data: SessionMessage,
selected_expressions: Optional[List[int]] = None,
) -> str:
new_message_count = message_api.count_new_messages(
chat_id=self.chat_stream.stream_id, start_time=self.last_read_time, end_time=time.time()
chat_id=self.chat_stream.session_id, start_time=self.last_read_time, end_time=time.time()
)
need_reply = new_message_count >= random.randint(2, 4)
@@ -529,7 +558,7 @@ class BrainChatting:
if not first_replied:
await send_api.text_to_stream(
text=data,
stream_id=self.chat_stream.stream_id,
stream_id=self.chat_stream.session_id,
reply_message=message_data,
set_reply=need_reply,
typing=False,
@@ -539,7 +568,7 @@ class BrainChatting:
else:
await send_api.text_to_stream(
text=data,
stream_id=self.chat_stream.stream_id,
stream_id=self.chat_stream.session_id,
reply_message=message_data,
set_reply=False,
typing=True,
@@ -585,9 +614,8 @@ class BrainChatting:
cleaned_uw: List[str] = []
for item in uw:
if isinstance(item, str):
s = item.strip()
if s:
cleaned_uw.append(s)
if stripped_item := item.strip():
cleaned_uw.append(stripped_item)
if cleaned_uw:
unknown_words = cleaned_uw

View File

@@ -1,798 +0,0 @@
import asyncio
import time
import traceback
import random
from typing import List, Optional, Dict, Any, Tuple, TYPE_CHECKING
from rich.traceback import install
from src.config.config import global_config
from src.common.logger import get_logger
from src.common.data_models.info_data_model import ActionPlannerInfo
from src.common.data_models.message_data_model import ReplyContentType
from src.chat.message_receive.chat_manager import chat_manager, BotChatSession
from src.chat.utils.prompt_builder import global_prompt_manager
from src.chat.utils.timer_calculator import Timer
from src.chat.planner_actions.planner import ActionPlanner
from src.chat.planner_actions.action_modifier import ActionModifier
from src.chat.planner_actions.action_manager import ActionManager
from src.chat.heart_flow.hfc_utils_old import CycleDetail
from src.bw_learner.expression_learner_old import expression_learner_manager
from src.chat.heart_flow.frequency_control import frequency_control_manager
from src.bw_learner.message_recorder_old import extract_and_distribute_messages
from src.person_info.person_info import Person
from src.plugin_system.base.component_types import EventType, ActionInfo
from src.plugin_system.core import events_manager
from src.plugin_system.apis import generator_api, send_api, message_api, database_api
from src.chat.utils.chat_message_builder import (
build_readable_messages_with_id,
get_raw_msg_before_timestamp_with_chat,
)
from src.chat.utils.utils import record_replyer_action_temp
from src.memory_system.chat_history_summarizer import ChatHistorySummarizer
if TYPE_CHECKING:
from src.common.data_models.database_data_model import DatabaseMessages
from src.common.data_models.message_data_model import ReplySetModel
ERROR_LOOP_INFO = {
"loop_plan_info": {
"action_result": {
"action_type": "error",
"action_data": {},
"reasoning": "循环处理失败",
},
},
"loop_action_info": {
"action_taken": False,
"reply_text": "",
"command": "",
"taken_time": time.time(),
},
}
install(extra_lines=3)
# 注释:原来的动作修改超时常量已移除,因为改为顺序执行
logger = get_logger("hfc") # Logger Name Changed
class HeartFChatting:
"""
管理一个连续的Focus Chat循环
用于在特定聊天流中生成回复。
其生命周期现在由其关联的 SubHeartflow 的 FOCUSED 状态控制。
"""
def __init__(self, session_id: str):
"""
HeartFChatting 初始化函数
参数:
session_id: 聊天会话唯一标识符(如session_id)
on_stop_focus_chat: 当收到stop_focus_chat命令时调用的回调函数
performance_version: 性能记录版本号,用于区分不同启动版本
"""
# 基础属性
self.session_id: str = session_id # 聊天会话ID
session = chat_manager.get_session_by_session_id(session_id)
if not session:
raise ValueError(f"未找到 session_id={session_id} 的聊天会话")
self.chat_session: BotChatSession = session
self.log_prefix = f"[{chat_manager.get_session_name(self.session_id) or self.session_id}]"
self.expression_learner = expression_learner_manager.get_expression_learner(self.session_id)
self.action_manager = ActionManager()
self.action_planner = ActionPlanner(chat_id=self.session_id, action_manager=self.action_manager)
self.action_modifier = ActionModifier(action_manager=self.action_manager, chat_id=self.session_id)
# 循环控制内部状态
self.running: bool = False
self._loop_task: Optional[asyncio.Task] = None # 主循环任务
# 添加循环信息管理相关的属性
self.history_loop: List[CycleDetail] = []
self._cycle_counter = 0
self._current_cycle_detail: CycleDetail = None # type: ignore
self.last_read_time = time.time() - 2
self.is_mute = False
self.last_active_time = time.time() # 记录上一次非noreply时间
self.question_probability_multiplier = 1
self.questioned = False
# 跟踪连续 no_reply 次数,用于动态调整阈值
self.consecutive_no_reply_count = 0
# 聊天内容概括器
self.chat_history_summarizer = ChatHistorySummarizer(session_id=self.session_id)
async def start(self):
"""检查是否需要启动主循环,如果未激活则启动。"""
# 如果循环已经激活,直接返回
if self.running:
logger.debug(f"{self.log_prefix} HeartFChatting 已激活,无需重复启动")
return
try:
# 标记为活动状态,防止重复启动
self.running = True
self._loop_task = asyncio.create_task(self._main_chat_loop())
self._loop_task.add_done_callback(self._handle_loop_completion)
# 启动聊天内容概括器的后台定期检查循环
await self.chat_history_summarizer.start()
logger.info(f"{self.log_prefix} HeartFChatting 启动完成")
except Exception as e:
# 启动失败时重置状态
self.running = False
self._loop_task = None
logger.error(f"{self.log_prefix} HeartFChatting 启动失败: {e}")
raise
def _handle_loop_completion(self, task: asyncio.Task):
"""当 _hfc_loop 任务完成时执行的回调。"""
try:
if exception := task.exception():
logger.error(f"{self.log_prefix} HeartFChatting: 脱离了聊天(异常): {exception}")
logger.error(traceback.format_exc()) # Log full traceback for exceptions
else:
logger.info(f"{self.log_prefix} HeartFChatting: 脱离了聊天 (外部停止)")
except asyncio.CancelledError:
logger.info(f"{self.log_prefix} HeartFChatting: 结束了聊天")
def start_cycle(self) -> Tuple[Dict[str, float], str]:
self._cycle_counter += 1
self._current_cycle_detail = CycleDetail(cycle_id=self._cycle_counter)
self._current_cycle_detail.thinking_id = f"tid{str(round(time.time(), 2))}"
cycle_timers = {}
return cycle_timers, self._current_cycle_detail.thinking_id
def end_cycle(self, loop_info, cycle_timers):
self._current_cycle_detail.set_loop_info(loop_info)
self.history_loop.append(self._current_cycle_detail)
self._current_cycle_detail.timers = cycle_timers
self._current_cycle_detail.end_time = time.time()
def print_cycle_info(self, cycle_timers):
# 记录循环信息和计时器结果
timer_strings = []
for name, elapsed in cycle_timers.items():
if elapsed < 0.1:
# 不显示小于0.1秒的计时器
continue
formatted_time = f"{elapsed:.2f}"
timer_strings.append(f"{name}: {formatted_time}")
logger.info(
f"{self.log_prefix}{self._current_cycle_detail.cycle_id}次思考,"
f"耗时: {self._current_cycle_detail.end_time - self._current_cycle_detail.start_time:.1f}秒;" # type: ignore
+ (f"详情: {'; '.join(timer_strings)}" if timer_strings else "")
)
async def _loopbody(self):
recent_messages_list = message_api.get_messages_by_time_in_chat(
chat_id=self.session_id,
start_time=self.last_read_time,
end_time=time.time(),
limit=20,
limit_mode="latest",
filter_mai=True,
filter_command=False,
filter_intercept_message_level=0,
)
# 根据连续 no_reply 次数动态调整阈值
# 3次 no_reply 时,阈值调高到 1.550%概率为150%概率为2
# 5次 no_reply 时,提高到 2大于等于两条消息的阈值
if self.consecutive_no_reply_count >= 5:
threshold = 2
elif self.consecutive_no_reply_count >= 3:
# 1.5 的含义50%概率为150%概率为2
threshold = 2 if random.random() < 0.5 else 1
else:
threshold = 1
if len(recent_messages_list) >= threshold:
# for message in recent_messages_list:
# print(message.processed_plain_text)
self.last_read_time = time.time()
# !此处使at或者提及必定回复
mentioned_message = None
for message in recent_messages_list:
if (message.is_mentioned or message.is_at) and global_config.chat.mentioned_bot_reply:
mentioned_message = message
# logger.info(f"{self.log_prefix} 当前talk_value: {TempMethods.get_talk_value(self.stream_id)}")
# *控制频率用
if mentioned_message:
await self._observe(recent_messages_list=recent_messages_list, force_reply_message=mentioned_message)
elif (
random.random()
< TempMethodsHFC.get_talk_value(self.session_id)
* frequency_control_manager.get_or_create_frequency_control(self.session_id).get_talk_frequency_adjust()
):
await self._observe(recent_messages_list=recent_messages_list)
else:
# 没有提到继续保持沉默等待5秒防止频繁触发
await asyncio.sleep(10)
return True
else:
await asyncio.sleep(0.2)
return True
return True
async def _send_and_store_reply(
self,
response_set: "ReplySetModel",
action_message: "DatabaseMessages",
cycle_timers: Dict[str, float],
thinking_id,
actions,
selected_expressions: Optional[List[int]] = None,
quote_message: Optional[bool] = None,
) -> Tuple[Dict[str, Any], str, Dict[str, float]]:
with Timer("回复发送", cycle_timers):
reply_text = await self._send_response(
reply_set=response_set,
message_data=action_message,
selected_expressions=selected_expressions,
quote_message=quote_message,
)
# 获取 platform如果不存在则从 chat_stream 获取,如果还是 None 则使用默认值
platform = action_message.chat_info.platform
if platform is None:
platform = getattr(self.chat_stream, "platform", "unknown")
person = Person(platform=platform, user_id=action_message.user_info.user_id)
person_name = person.person_name
action_prompt_display = f"你对{person_name}进行了回复:{reply_text}"
await database_api.store_action_info(
chat_stream=self.chat_stream,
action_build_into_prompt=False,
action_prompt_display=action_prompt_display,
action_done=True,
thinking_id=thinking_id,
action_data={"reply_text": reply_text},
action_name="reply",
)
# 构建循环信息
loop_info: Dict[str, Any] = {
"loop_plan_info": {
"action_result": actions,
},
"loop_action_info": {
"action_taken": True,
"reply_text": reply_text,
"command": "",
"taken_time": time.time(),
},
}
return loop_info, reply_text, cycle_timers
async def _observe(
self, # interest_value: float = 0.0,
recent_messages_list: Optional[List["DatabaseMessages"]] = None,
force_reply_message: Optional["DatabaseMessages"] = None,
) -> bool: # sourcery skip: merge-else-if-into-elif, remove-redundant-if
if recent_messages_list is None:
recent_messages_list = []
_reply_text = "" # 初始化reply_text变量避免UnboundLocalError
start_time = time.time()
async with global_prompt_manager.async_message_scope(self.chat_stream.context.get_template_name()):
# 通过 MessageRecorder 统一提取消息并分发给 expression_learner 和 jargon_miner
# 在 replyer 执行时触发,统一管理时间窗口,避免重复获取消息
asyncio.create_task(extract_and_distribute_messages(self.session_id))
# 添加curious检测任务 - 检测聊天记录中的矛盾、冲突或需要提问的内容
# asyncio.create_task(check_and_make_question(self.stream_id))
# 添加聊天内容概括任务 - 累积、打包和压缩聊天记录
# 注意后台循环已在start()中启动,这里作为额外触发点,在有思考时立即处理
# asyncio.create_task(self.chat_history_summarizer.process())
cycle_timers, thinking_id = self.start_cycle()
logger.info(
f"{self.log_prefix} 开始第{self._cycle_counter}次思考(频率: {TempMethodsHFC.get_talk_value(self.session_id)})"
)
# 第一步:动作检查
available_actions: Dict[str, ActionInfo] = {}
try:
await self.action_modifier.modify_actions()
available_actions = self.action_manager.get_using_actions()
except Exception as e:
logger.error(f"{self.log_prefix} 动作修改失败: {e}")
# 执行planner
is_group_chat, chat_target_info, _ = self.action_planner.get_necessary_info()
message_list_before_now = get_raw_msg_before_timestamp_with_chat(
chat_id=self.session_id,
timestamp=time.time(),
limit=int(global_config.chat.max_context_size * 0.6),
filter_intercept_message_level=1,
)
chat_content_block, message_id_list = build_readable_messages_with_id(
messages=message_list_before_now,
timestamp_mode="normal_no_YMD",
read_mark=self.action_planner.last_obs_time_mark,
truncate=True,
show_actions=True,
)
prompt_info = await self.action_planner.build_planner_prompt(
is_group_chat=is_group_chat,
chat_target_info=chat_target_info,
current_available_actions=available_actions,
chat_content_block=chat_content_block,
message_id_list=message_id_list,
)
continue_flag, modified_message = await events_manager.handle_mai_events(
EventType.ON_PLAN, None, prompt_info[0], None, self.chat_stream.stream_id
)
if not continue_flag:
return False
if modified_message and modified_message._modify_flags.modify_llm_prompt:
prompt_info = (modified_message.llm_prompt, prompt_info[1])
with Timer("规划器", cycle_timers):
action_to_use_info = await self.action_planner.plan(
loop_start_time=self.last_read_time,
available_actions=available_actions,
force_reply_message=force_reply_message,
)
logger.info(
f"{self.log_prefix} 决定执行{len(action_to_use_info)}个动作: {' '.join([a.action_type for a in action_to_use_info])}"
)
# 3. 并行执行所有动作
action_tasks = [
asyncio.create_task(
self._execute_action(action, action_to_use_info, thinking_id, available_actions, cycle_timers)
)
for action in action_to_use_info
]
# 并行执行所有任务
results = await asyncio.gather(*action_tasks, return_exceptions=True)
# 处理执行结果
reply_loop_info = None
reply_text_from_reply = ""
action_success = False
action_reply_text = ""
excute_result_str = ""
for result in results:
excute_result_str += f"{result['action_type']} 执行结果:{result['result']}\n"
if isinstance(result, BaseException):
logger.error(f"{self.log_prefix} 动作执行异常: {result}")
continue
if result["action_type"] != "reply":
action_success = result["success"]
action_reply_text = result["result"]
elif result["action_type"] == "reply":
if result["success"]:
reply_loop_info = result["loop_info"]
reply_text_from_reply = result["result"]
else:
logger.warning(f"{self.log_prefix} 回复动作执行失败")
self.action_planner.add_plan_excute_log(result=excute_result_str)
# 构建最终的循环信息
if reply_loop_info:
# 如果有回复信息使用回复的loop_info作为基础
loop_info = reply_loop_info
# 更新动作执行信息
loop_info["loop_action_info"].update(
{
"action_taken": action_success,
"taken_time": time.time(),
}
)
_reply_text = reply_text_from_reply
else:
# 没有回复信息构建纯动作的loop_info
loop_info = {
"loop_plan_info": {
"action_result": action_to_use_info,
},
"loop_action_info": {
"action_taken": action_success,
"reply_text": action_reply_text,
"taken_time": time.time(),
},
}
_reply_text = action_reply_text
self.end_cycle(loop_info, cycle_timers)
self.print_cycle_info(cycle_timers)
end_time = time.time()
if end_time - start_time < global_config.chat.planner_smooth:
wait_time = global_config.chat.planner_smooth - (end_time - start_time)
await asyncio.sleep(wait_time)
else:
await asyncio.sleep(0.1)
return True
# async def _main_chat_loop(self):
# """主循环,持续进行计划并可能回复消息,直到被外部取消。"""
# try:
# while self.running:
# # 主循环
# success = await self._loopbody()
# await asyncio.sleep(0.1)
# if not success:
# break
# except asyncio.CancelledError:
# # 设置了关闭标志位后被取消是正常流程
# logger.info(f"{self.log_prefix} 麦麦已关闭聊天")
# except Exception:
# logger.error(f"{self.log_prefix} 麦麦聊天意外错误将于3s后尝试重新启动")
# print(traceback.format_exc())
# await asyncio.sleep(3)
# self._loop_task = asyncio.create_task(self._main_chat_loop())
# logger.error(f"{self.log_prefix} 结束了当前聊天循环")
async def _handle_action(
self,
action: str,
action_reasoning: str,
action_data: dict,
cycle_timers: Dict[str, float],
thinking_id: str,
action_message: Optional["DatabaseMessages"] = None,
) -> tuple[bool, str, str]:
"""
处理规划动作,使用动作工厂创建相应的动作处理器
参数:
action: 动作类型
action_reasoning: 决策理由
action_data: 动作数据,包含不同动作需要的参数
cycle_timers: 计时器字典
thinking_id: 思考ID
action_message: 消息数据
返回:
tuple[bool, str, str]: (是否执行了动作, 思考消息ID, 命令)
"""
try:
# 使用工厂创建动作处理器实例
try:
action_handler = self.action_manager.create_action(
action_name=action,
action_data=action_data,
cycle_timers=cycle_timers,
thinking_id=thinking_id,
chat_stream=self.chat_stream,
log_prefix=self.log_prefix,
action_reasoning=action_reasoning,
action_message=action_message,
)
except Exception as e:
logger.error(f"{self.log_prefix} 创建动作处理器时出错: {e}")
traceback.print_exc()
return False, ""
# 处理动作并获取结果(固定记录一次动作信息)
result = await action_handler.execute()
success, action_text = result
return success, action_text
except Exception as e:
logger.error(f"{self.log_prefix} 处理{action}时出错: {e}")
traceback.print_exc()
return False, ""
async def _send_response(
self,
reply_set: "ReplySetModel",
message_data: "DatabaseMessages",
selected_expressions: Optional[List[int]] = None,
quote_message: Optional[bool] = None,
) -> str:
# 根据 llm_quote 配置决定是否使用 quote_message 参数
if global_config.chat.llm_quote:
# 如果配置为 true使用 llm_quote 参数决定是否引用回复
if quote_message is None:
logger.warning(f"{self.log_prefix} quote_message 参数为空,不引用")
need_reply = False
else:
need_reply = quote_message
if need_reply:
logger.info(f"{self.log_prefix} LLM 决定使用引用回复")
else:
# 如果配置为 false使用原来的模式
new_message_count = message_api.count_new_messages(
chat_id=self.chat_stream.stream_id, start_time=self.last_read_time, end_time=time.time()
)
need_reply = new_message_count >= random.randint(2, 3) or time.time() - self.last_read_time > 90
if need_reply:
logger.info(
f"{self.log_prefix} 从思考到回复,共有{new_message_count}条新消息使用引用回复或者上次回复时间超过90秒"
)
reply_text = ""
first_replied = False
for reply_content in reply_set.reply_data:
if reply_content.content_type != ReplyContentType.TEXT:
continue
data: str = reply_content.content # type: ignore
if not first_replied:
await send_api.text_to_stream(
text=data,
stream_id=self.chat_stream.stream_id,
reply_message=message_data,
set_reply=need_reply,
typing=False,
selected_expressions=selected_expressions,
)
first_replied = True
else:
await send_api.text_to_stream(
text=data,
stream_id=self.chat_stream.stream_id,
reply_message=message_data,
set_reply=False,
typing=True,
selected_expressions=selected_expressions,
)
reply_text += data
return reply_text
async def _execute_action(
self,
action_planner_info: ActionPlannerInfo,
chosen_action_plan_infos: List[ActionPlannerInfo],
thinking_id: str,
available_actions: Dict[str, ActionInfo],
cycle_timers: Dict[str, float],
):
"""执行单个动作的通用函数"""
try:
with Timer(f"动作{action_planner_info.action_type}", cycle_timers):
# 直接当场执行no_reply逻辑
if action_planner_info.action_type == "no_reply":
# 直接处理no_reply逻辑不再通过动作系统
reason = action_planner_info.reasoning or "选择不回复"
# logger.info(f"{self.log_prefix} 选择不回复,原因: {reason}")
# 增加连续 no_reply 计数
self.consecutive_no_reply_count += 1
await database_api.store_action_info(
chat_stream=self.chat_stream,
action_build_into_prompt=False,
action_prompt_display=reason,
action_done=True,
thinking_id=thinking_id,
action_data={},
action_name="no_reply",
action_reasoning=reason,
)
return {"action_type": "no_reply", "success": True, "result": "选择不回复", "command": ""}
elif action_planner_info.action_type == "reply":
# 直接当场执行reply逻辑
self.questioned = False
# 刷新主动发言状态
# 重置连续 no_reply 计数
self.consecutive_no_reply_count = 0
reason = action_planner_info.reasoning or ""
# 根据 think_mode 配置决定 think_level 的值
think_mode = global_config.chat.think_mode
if think_mode == "default":
think_level = 0
elif think_mode == "deep":
think_level = 1
elif think_mode == "dynamic":
# dynamic 模式:从 planner 返回的 action_data 中获取
think_level = action_planner_info.action_data.get("think_level", 1)
else:
# 默认使用 default 模式
think_level = 0
# 使用 action_reasoningplanner 的整体思考理由)作为 reply_reason
planner_reasoning = action_planner_info.action_reasoning or reason
record_replyer_action_temp(
chat_id=self.session_id,
reason=reason,
think_level=think_level,
)
await database_api.store_action_info(
chat_stream=self.chat_stream,
action_build_into_prompt=False,
action_prompt_display=reason,
action_done=True,
thinking_id=thinking_id,
action_data={},
action_name="reply",
action_reasoning=reason,
)
# 从 Planner 的 action_data 中提取未知词语列表(仅在 reply 时使用)
unknown_words = None
quote_message = None
if isinstance(action_planner_info.action_data, dict):
uw = action_planner_info.action_data.get("unknown_words")
if isinstance(uw, list):
cleaned_uw: List[str] = []
for item in uw:
if isinstance(item, str):
s = item.strip()
if s:
cleaned_uw.append(s)
if cleaned_uw:
unknown_words = cleaned_uw
# 从 Planner 的 action_data 中提取 quote_message 参数
qm = action_planner_info.action_data.get("quote")
if qm is not None:
# 支持多种格式true/false, "true"/"false", 1/0
if isinstance(qm, bool):
quote_message = qm
elif isinstance(qm, str):
quote_message = qm.lower() in ("true", "1", "yes")
elif isinstance(qm, (int, float)):
quote_message = bool(qm)
logger.info(f"{self.log_prefix} {qm}引用回复设置: {quote_message}")
success, llm_response = await generator_api.generate_reply(
chat_stream=self.chat_stream,
reply_message=action_planner_info.action_message,
available_actions=available_actions,
chosen_actions=chosen_action_plan_infos,
reply_reason=planner_reasoning,
unknown_words=unknown_words,
enable_tool=global_config.tool.enable_tool,
request_type="replyer",
from_plugin=False,
reply_time_point=action_planner_info.action_data.get("loop_start_time", time.time()),
think_level=think_level,
)
if not success or not llm_response or not llm_response.reply_set:
if action_planner_info.action_message:
logger.info(f"{action_planner_info.action_message.processed_plain_text} 的回复生成失败")
else:
logger.info("回复生成失败")
return {"action_type": "reply", "success": False, "result": "回复生成失败", "loop_info": None}
response_set = llm_response.reply_set
selected_expressions = llm_response.selected_expressions
loop_info, reply_text, _ = await self._send_and_store_reply(
response_set=response_set,
action_message=action_planner_info.action_message, # type: ignore
cycle_timers=cycle_timers,
thinking_id=thinking_id,
actions=chosen_action_plan_infos,
selected_expressions=selected_expressions,
quote_message=quote_message,
)
self.last_active_time = time.time()
return {
"action_type": "reply",
"success": True,
"result": f"你使用reply动作' {action_planner_info.action_message.processed_plain_text} '这句话进行了回复,回复内容为: '{reply_text}'",
"loop_info": loop_info,
}
else:
# 执行普通动作
with Timer("动作执行", cycle_timers):
success, result = await self._handle_action(
action=action_planner_info.action_type,
action_reasoning=action_planner_info.action_reasoning or "",
action_data=action_planner_info.action_data or {},
cycle_timers=cycle_timers,
thinking_id=thinking_id,
action_message=action_planner_info.action_message,
)
self.last_active_time = time.time()
return {
"action_type": action_planner_info.action_type,
"success": success,
"result": result,
}
except Exception as e:
logger.error(f"{self.log_prefix} 执行动作时出错: {e}")
logger.error(f"{self.log_prefix} 错误信息: {traceback.format_exc()}")
return {
"action_type": action_planner_info.action_type,
"success": False,
"result": "",
"loop_info": None,
"error": str(e),
}
class TempMethodsHFC:
@staticmethod
def get_talk_value(chat_id: Optional[str]) -> float:
result = global_config.chat.talk_value or 0.0000001
if not global_config.chat.enable_talk_value_rules or not global_config.chat.talk_value_rules:
return result
import time
local_time = time.localtime()
now_min = local_time.tm_hour * 60 + local_time.tm_min
# 先处理特定规则
if chat_id:
for rule in global_config.chat.talk_value_rules:
if not rule.platform and not rule.item_id:
continue # 一起留空表示全局,跳过
is_group = rule.rule_type == "group"
from src.chat.message_receive.chat_stream import get_chat_manager
stream_id = get_chat_manager().get_stream_id(rule.platform, str(rule.item_id), is_group)
if stream_id != chat_id:
continue
parsed_range = TempMethodsHFC._parse_range(rule.time)
if not parsed_range:
continue
start_min, end_min = parsed_range
in_range: bool = False
if start_min <= end_min:
in_range = start_min <= now_min <= end_min
else:
in_range = now_min >= start_min or now_min <= end_min
if in_range:
return rule.value or 0.0
# 再处理全局规则
for rule in global_config.chat.talk_value_rules:
if rule.platform or rule.item_id:
continue # 有指定表示特定,跳过
parsed_range = TempMethodsHFC._parse_range(rule.time)
if not parsed_range:
continue
start_min, end_min = parsed_range
in_range: bool = False
if start_min <= end_min:
in_range = start_min <= now_min <= end_min
else:
in_range = now_min >= start_min or now_min <= end_min
if in_range:
return rule.value or 0.0000001
return result
@staticmethod
def _parse_range(range_str: str) -> Optional[tuple[int, int]]:
"""解析 "HH:MM-HH:MM" 到 (start_min, end_min)。"""
try:
start_str, end_str = [s.strip() for s in range_str.split("-")]
sh, sm = [int(x) for x in start_str.split(":")]
eh, em = [int(x) for x in end_str.split(":")]
return sh * 60 + sm, eh * 60 + em
except Exception:
return None

View File

@@ -1,8 +1,8 @@
from typing import Dict, Optional, Tuple
from src.chat.message_receive.chat_manager import BotChatSession
from src.chat.message_receive.message import SessionMessage
from src.common.logger import get_logger
from src.common.data_models.database_data_model import DatabaseMessages
from src.core.component_registry import component_registry, ActionExecutor
from src.core.types import ActionInfo
@@ -52,7 +52,7 @@ class ActionManager:
chat_stream: BotChatSession,
log_prefix: str,
shutting_down: bool = False,
action_message: Optional[DatabaseMessages] = None,
action_message: Optional[SessionMessage] = None,
) -> Optional[ActionHandle]:
"""
创建动作执行句柄

View File

@@ -24,13 +24,13 @@ from src.services.message_service import (
from src.chat.utils.utils import get_chat_type_and_target_info, is_bot_self
from src.chat.planner_actions.action_manager import ActionManager
from src.chat.message_receive.chat_manager import chat_manager as _chat_manager
from src.chat.message_receive.message import SessionMessage
from src.core.types import ActionActivationType, ActionInfo, ComponentType
from src.core.component_registry import component_registry
from src.person_info.person_info import Person
if TYPE_CHECKING:
from src.common.data_models.info_data_model import TargetPersonInfo
from src.common.data_models.database_data_model import DatabaseMessages
logger = get_logger("planner")
@@ -56,8 +56,8 @@ class ActionPlanner:
self.unknown_words_cache_limit = 10
def find_message_by_id(
self, message_id: str, message_id_list: List[Tuple[str, "DatabaseMessages"]]
) -> Optional["DatabaseMessages"]:
self, message_id: str, message_id_list: List[Tuple[str, "SessionMessage"]]
) -> Optional["SessionMessage"]:
# sourcery skip: use-next
"""
根据message_id从message_id_list中查找对应的原始消息
@@ -75,7 +75,7 @@ class ActionPlanner:
return None
def _replace_message_ids_with_text(
self, text: Optional[str], message_id_list: List[Tuple[str, "DatabaseMessages"]]
self, text: Optional[str], message_id_list: List[Tuple[str, "SessionMessage"]]
) -> Optional[str]:
"""将文本中的 m+数字 消息ID替换为原消息内容并添加双引号"""
if not text:
@@ -122,13 +122,7 @@ class ActionPlanner:
msg_text = re.sub(pic_pattern, replace_pic_id, msg_text)
# 替换用户引用格式:回复<aaa:bbb> 和 @<aaa:bbb>
platform = (
getattr(message, "user_info", None)
and message.user_info.platform
or getattr(message, "chat_info", None)
and message.chat_info.platform
or "qq"
)
platform = message.platform or "qq"
msg_text = replace_user_references(msg_text, platform, replace_bot_name=True)
# 替换单独的 <用户名:用户ID> 格式replace_user_references 已处理回复<和@<格式)
@@ -160,7 +154,7 @@ class ActionPlanner:
def _parse_single_action(
self,
action_json: dict,
message_id_list: List[Tuple[str, "DatabaseMessages"]],
message_id_list: List[Tuple[str, "SessionMessage"]],
current_available_actions: List[Tuple[str, ActionInfo]],
extracted_reasoning: str = "",
) -> List[ActionPlannerInfo]:
@@ -245,10 +239,10 @@ class ActionPlanner:
return action_planner_infos
def _is_message_from_self(self, message: "DatabaseMessages") -> bool:
def _is_message_from_self(self, message: "SessionMessage") -> bool:
"""判断消息是否由机器人自身发送(支持多平台,包括 WebUI"""
try:
return is_bot_self(message.user_info.platform or "", str(message.user_info.user_id))
return is_bot_self(message.platform or "", str(message.message_info.user_info.user_id))
except AttributeError:
logger.warning(f"{self.log_prefix}检测消息发送者失败,缺少必要字段")
return False
@@ -380,7 +374,7 @@ class ActionPlanner:
self,
available_actions: Dict[str, ActionInfo],
loop_start_time: float = 0.0,
force_reply_message: Optional["DatabaseMessages"] = None,
force_reply_message: Optional["SessionMessage"] = None,
) -> List[ActionPlannerInfo]:
# sourcery skip: use-named-expression
"""
@@ -395,7 +389,7 @@ class ActionPlanner:
limit=int(global_config.chat.max_context_size * 0.6),
filter_intercept_message_level=1,
)
message_id_list: list[Tuple[str, "DatabaseMessages"]] = []
message_id_list: list[Tuple[str, "SessionMessage"]] = []
chat_content_block, message_id_list = build_readable_messages_with_id(
messages=message_list_before_now,
timestamp_mode="normal_no_YMD",
@@ -552,10 +546,10 @@ class ActionPlanner:
is_group_chat: bool,
chat_target_info: Optional["TargetPersonInfo"],
current_available_actions: Dict[str, ActionInfo],
message_id_list: List[Tuple[str, "DatabaseMessages"]],
message_id_list: List[Tuple[str, "SessionMessage"]],
chat_content_block: str = "",
interest: str = "",
) -> tuple[str, List[Tuple[str, "DatabaseMessages"]]]:
) -> tuple[str, List[Tuple[str, "SessionMessage"]]]:
"""构建 Planner LLM 的提示词 (获取模板并填充数据)"""
try:
actions_before_now_block = self.get_plan_log_str()
@@ -710,7 +704,7 @@ class ActionPlanner:
async def _execute_main_planner(
self,
prompt: str,
message_id_list: List[Tuple[str, "DatabaseMessages"]],
message_id_list: List[Tuple[str, "SessionMessage"]],
filtered_actions: Dict[str, ActionInfo],
available_actions: Dict[str, ActionInfo],
loop_start_time: float,