perf: stabilize maisaka prompt cache
This commit is contained in:
@@ -41,6 +41,11 @@ from .display.prompt_cli_renderer import PromptCLIVisualizer
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from .visual_mode_utils import resolve_enable_visual_planner
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TIMING_GATE_TOOL_NAMES = {"continue", "no_reply", "wait"}
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REQUEST_TYPE_BY_REQUEST_KIND = {
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"planner": "maisaka_planner",
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"timing_gate": "maisaka_timing_gate",
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}
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CONTEXT_SELECTION_CACHE_STABILITY_RATIO = 2.0
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@dataclass(slots=True)
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@@ -212,7 +217,7 @@ class MaisakaChatLoopService:
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self._chat_system_prompt = f"{self._personality_prompt}\n\nYou are a helpful AI assistant."
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else:
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self._chat_system_prompt = chat_system_prompt
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self._llm_chat = LLMServiceClient(task_name="planner", request_type="maisaka_planner")
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self._llm_chat_clients: dict[str, LLMServiceClient] = {}
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@property
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def personality_prompt(self) -> str:
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@@ -220,6 +225,30 @@ class MaisakaChatLoopService:
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return self._personality_prompt
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@staticmethod
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def _resolve_llm_request_type(request_kind: str) -> str:
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"""根据 Maisaka 请求类型解析 LLM 统计口径。"""
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normalized_request_kind = str(request_kind or "").strip()
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return REQUEST_TYPE_BY_REQUEST_KIND.get(
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normalized_request_kind,
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f"maisaka_{normalized_request_kind}" if normalized_request_kind else "maisaka_planner",
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)
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def _get_llm_chat_client(self, request_kind: str) -> LLMServiceClient:
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"""获取当前请求类型对应的 planner LLM 客户端。"""
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request_type = self._resolve_llm_request_type(request_kind)
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llm_client = self._llm_chat_clients.get(request_type)
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if llm_client is None:
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llm_client = LLMServiceClient(
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task_name="planner",
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request_type=request_type,
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session_id=self._session_id,
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)
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self._llm_chat_clients[request_type] = llm_client
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return llm_client
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@staticmethod
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def _get_runtime_manager() -> Any:
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"""获取插件运行时管理器。
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@@ -321,7 +350,13 @@ class MaisakaChatLoopService:
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@staticmethod
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def _build_time_block() -> str:
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"""构建当前时间提示块。"""
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"""构建静态时间提示块。"""
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return "当前时间会在每次请求末尾以用户消息形式提供。"
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@staticmethod
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def _build_current_time_user_message() -> str:
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"""构建追加到请求末尾的当前时间消息。"""
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return f"当前时间:{datetime.now().strftime('%Y-%m-%d %H:%M:%S')}"
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@@ -446,7 +481,11 @@ class MaisakaChatLoopService:
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messages.append(llm_message)
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normalized_injected_messages: List[Message] = []
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for injected_message in injected_user_messages or []:
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final_user_messages = [
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*(injected_user_messages or []),
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self._build_current_time_user_message(),
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]
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for injected_message in final_user_messages:
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normalized_message = str(injected_message or "").strip()
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if not normalized_message:
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continue
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@@ -458,31 +497,10 @@ class MaisakaChatLoopService:
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)
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if normalized_injected_messages:
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insertion_index = self._resolve_injected_user_messages_insertion_index(messages)
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messages[insertion_index:insertion_index] = normalized_injected_messages
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messages.extend(normalized_injected_messages)
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return messages
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@staticmethod
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def _resolve_injected_user_messages_insertion_index(messages: Sequence[Message]) -> int:
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"""计算 injected meta user messages 在请求中的插入位置。
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规则与 deferred attachment 更接近:
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- 从尾部向前寻找最近的 stopping point;
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- stopping point 为 assistant 消息或 tool 结果消息;
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- 找到后插入到其后面;
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- 若不存在 stopping point,则退回到 system 消息之后。
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"""
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for index in range(len(messages) - 1, -1, -1):
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message = messages[index]
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if message.role in {RoleType.Assistant, RoleType.Tool}:
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return index + 1
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if messages and messages[0].role == RoleType.System:
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return 1
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return 0
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async def chat_loop_step(
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self,
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chat_history: List[LLMContextMessage],
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@@ -575,7 +593,8 @@ class MaisakaChatLoopService:
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tool_definitions=list(all_tools),
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)
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generation_result = await self._llm_chat.generate_response_with_messages(
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llm_chat = self._get_llm_chat_client(request_kind)
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generation_result = await llm_chat.generate_response_with_messages(
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message_factory=message_factory,
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options=LLMGenerationOptions(
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tool_options=all_tools if all_tools else None,
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@@ -654,7 +673,11 @@ class MaisakaChatLoopService:
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chat_history,
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request_kind=request_kind,
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)
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effective_context_size = max(1, int(max_context_size or global_config.chat.max_context_size))
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base_context_size = max(1, int(max_context_size or global_config.chat.max_context_size))
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effective_context_size = max(
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base_context_size,
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int(base_context_size * CONTEXT_SELECTION_CACHE_STABILITY_RATIO),
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)
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selected_indices: List[int] = []
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counted_message_count = 0
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@@ -690,9 +713,11 @@ class MaisakaChatLoopService:
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selected_history, _ = normalize_tool_result_order(selected_history)
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tool_message_count = sum(1 for message in selected_history if isinstance(message, ToolResultMessage))
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normal_message_count = len(selected_history) - tool_message_count
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stability_text = f"|cache_window {base_context_size}->{effective_context_size}"
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selection_reason = (
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f"实际发送 {len(selected_history)} 条消息"
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f"|消息 {normal_message_count} 条|tool {tool_message_count} 条"
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f"{stability_text}"
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)
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return (
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selected_history,
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@@ -3,11 +3,11 @@
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from dataclasses import dataclass
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from math import ceil
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from .context_messages import AssistantMessage, LLMContextMessage
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from .context_messages import LLMContextMessage
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from .history_utils import drop_leading_orphan_tool_results, drop_orphan_tool_results, normalize_tool_result_order
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EARLY_TRIM_RATIO = 0.3
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TRIM_THRESHOLD_RATIO = 1.2
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TRIM_TARGET_RATIO = 1.0
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TRIM_THRESHOLD_RATIO = 2.0
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@dataclass(slots=True)
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@@ -36,21 +36,16 @@ def process_chat_history_after_cycle(
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compact_removed_count = 0
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trim_threshold = ceil(max_context_size * TRIM_THRESHOLD_RATIO)
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if remaining_context_count > trim_threshold:
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removed_early_message_count = _remove_early_history_messages(processed_history)
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processed_history, removed_after_message_trim_count, moved_after_message_trim_count = (
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_normalize_history_structure(processed_history)
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target_context_count = max(1, int(max_context_size * TRIM_TARGET_RATIO))
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removed_early_message_count = _trim_history_to_context_target(
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processed_history,
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target_context_count=target_context_count,
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)
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removed_assistant_thought_count = _remove_early_assistant_thoughts(processed_history)
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processed_history, removed_after_thought_trim_count, moved_after_thought_trim_count = (
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_normalize_history_structure(processed_history)
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processed_history, removed_after_trim_count, moved_after_trim_count = _normalize_history_structure(
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processed_history
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)
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compact_removed_count = (
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removed_early_message_count
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+ removed_after_message_trim_count
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+ removed_assistant_thought_count
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+ removed_after_thought_trim_count
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)
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moved_tool_result_count += moved_after_message_trim_count + moved_after_thought_trim_count
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compact_removed_count = removed_early_message_count + removed_after_trim_count
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moved_tool_result_count += moved_after_trim_count
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remaining_context_count = sum(1 for message in processed_history if message.count_in_context)
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removed_count = normalized_removed_count + compact_removed_count
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@@ -78,42 +73,27 @@ def _normalize_history_structure(
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)
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def _remove_early_history_messages(chat_history: list[LLMContextMessage]) -> int:
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"""移除最早 30% 的全部历史消息。"""
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def _trim_history_to_context_target(
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chat_history: list[LLMContextMessage],
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*,
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target_context_count: int,
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) -> int:
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"""移除最早的一段历史,直到普通上下文消息数量降到目标值以内。"""
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remaining_context_count = sum(1 for message in chat_history if message.count_in_context)
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if remaining_context_count <= target_context_count:
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return 0
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remove_count = 0
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for message in chat_history:
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remove_count += 1
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if message.count_in_context:
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remaining_context_count -= 1
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if remaining_context_count <= target_context_count:
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break
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remove_count = int(len(chat_history) * EARLY_TRIM_RATIO)
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if remove_count <= 0:
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return 0
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del chat_history[:remove_count]
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return remove_count
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def _remove_early_assistant_thoughts(chat_history: list[LLMContextMessage]) -> int:
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"""移除最早 30% 的非工具 assistant 思考内容。"""
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candidate_indexes = [
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index
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for index, message in enumerate(chat_history)
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if isinstance(message, AssistantMessage)
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and not message.tool_calls
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and message.source_kind != "perception"
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and bool(message.content.strip())
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]
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remove_count = int(len(candidate_indexes) * EARLY_TRIM_RATIO)
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if remove_count <= 0:
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return 0
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removed_indexes = set(candidate_indexes[:remove_count])
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filtered_history: list[LLMContextMessage] = []
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removed_total = 0
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for index, message in enumerate(chat_history):
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if index in removed_indexes:
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removed_total += 1
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continue
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filtered_history.append(message)
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chat_history[:] = filtered_history
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return removed_total
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@@ -52,7 +52,7 @@ if TYPE_CHECKING:
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logger = get_logger("maisaka_reasoning_engine")
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TIMING_GATE_CONTEXT_LIMIT = 24
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TIMING_GATE_CONTEXT_DROP_HEAD_RATIO = 0.7
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TIMING_GATE_MAX_TOKENS = 384
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TIMING_GATE_MAX_ATTEMPTS = 3
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TIMING_GATE_TOOL_NAMES = {"continue", "no_reply", "wait"}
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@@ -124,7 +124,6 @@ class MaisakaReasoningEngine:
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async def _run_timing_gate_sub_agent(
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self,
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*,
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context_message_limit: int,
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system_prompt: str,
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tool_definitions: list[dict[str, Any]],
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) -> Any:
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@@ -134,7 +133,10 @@ class MaisakaReasoningEngine:
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"""
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return await self._runtime.run_sub_agent(
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context_message_limit=context_message_limit,
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context_message_limit=self._runtime._max_context_size,
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drop_head_context_count=int(
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self._runtime._max_context_size * TIMING_GATE_CONTEXT_DROP_HEAD_RATIO,
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),
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system_prompt=system_prompt,
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request_kind="timing_gate",
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interrupt_flag=None,
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@@ -255,7 +257,6 @@ class MaisakaReasoningEngine:
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invalid_tool_text = ""
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for attempt_index in range(TIMING_GATE_MAX_ATTEMPTS):
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response = await self._run_timing_gate_sub_agent(
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context_message_limit=TIMING_GATE_CONTEXT_LIMIT,
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system_prompt=self._build_timing_gate_system_prompt(),
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tool_definitions=get_timing_tools(),
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)
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@@ -45,6 +45,7 @@ from .context_messages import (
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from .display.display_utils import build_tool_call_summary_lines, format_token_count
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from .display.prompt_cli_renderer import PromptCLIVisualizer
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from .display.stage_status_board import remove_stage_status, update_stage_status
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from .history_utils import drop_leading_orphan_tool_results
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from .reasoning_engine import MaisakaReasoningEngine
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from .reply_effect import ReplyEffectTracker
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from .reply_effect.image_utils import extract_visual_attachments_from_sequence
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@@ -583,6 +584,7 @@ class MaisakaHeartFlowChatting:
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self,
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*,
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context_message_limit: int,
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drop_head_context_count: int = 0,
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system_prompt: str,
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request_kind: str = "sub_agent",
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extra_messages: Optional[Sequence[LLMContextMessage]] = None,
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@@ -598,7 +600,10 @@ class MaisakaHeartFlowChatting:
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request_kind=request_kind,
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max_context_size=context_message_limit,
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)
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sub_agent_history = list(selected_history)
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sub_agent_history = self._drop_head_context_messages(
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selected_history,
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drop_head_context_count,
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)
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if extra_messages:
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sub_agent_history.extend(list(extra_messages))
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@@ -616,6 +621,31 @@ class MaisakaHeartFlowChatting:
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tool_definitions=[] if tool_definitions is None else tool_definitions,
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)
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@staticmethod
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def _drop_head_context_messages(
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chat_history: Sequence[LLMContextMessage],
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drop_context_count: int,
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) -> list[LLMContextMessage]:
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"""从已选上下文头部丢弃指定数量的普通上下文消息。"""
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if drop_context_count <= 0:
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return list(chat_history)
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first_kept_index = 0
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dropped_context_count = 0
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while (
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first_kept_index < len(chat_history)
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and dropped_context_count < drop_context_count
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):
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message = chat_history[first_kept_index]
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if message.count_in_context:
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dropped_context_count += 1
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first_kept_index += 1
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trimmed_history = list(chat_history[first_kept_index:])
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trimmed_history, _ = drop_leading_orphan_tool_results(trimmed_history)
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return trimmed_history
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async def _run_reply_effect_judge(self, prompt: str) -> str:
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"""运行回复效果观察器使用的临时 LLM 评审。"""
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