feat:添加回复后打分追踪器

This commit is contained in:
SengokuCola
2026-04-17 23:05:46 +08:00
parent f3f61d6192
commit abada55884
16 changed files with 3707 additions and 51 deletions

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@@ -0,0 +1,336 @@
from pathlib import Path
from typing import Any
from scipy import stats
import argparse
import csv
import json
import math
DEFAULT_LOG_DIR = Path("logs") / "maisaka_reply_effect"
DEFAULT_MANUAL_DIR = Path("logs") / "maisaka_reply_effect_manual"
METRIC_SPECS = [
("总分", "asi", "ASI 自动总分"),
("大项", "behavior_score", "行为满意度 B"),
("大项", "relational_score", "感知质量 R"),
("大项", "friction_score", "摩擦风险 F"),
("大项", "friction_quality_score", "低摩擦质量分"),
("行为子项", "behavior_signals.continue_2turns", "继续两轮"),
("行为子项", "behavior_signals.next_user_sentiment", "后续情绪"),
("行为子项", "behavior_signals.user_expansion", "用户展开"),
("行为子项", "behavior_signals.no_correction", "没有纠正"),
("行为子项", "behavior_signals.no_abort", "没有放弃"),
("rubric 子项", "rubric_scores.social_presence.normalized_score", "社交临场感"),
("rubric 子项", "rubric_scores.warmth.normalized_score", "温暖感"),
("rubric 子项", "rubric_scores.competence.normalized_score", "能力/有用性"),
("rubric 子项", "rubric_scores.appropriateness.normalized_score", "合适程度"),
("rubric 子项", "rubric_scores.uncanny_risk.normalized_score", "违和风险 judge"),
("摩擦子项", "friction_signals.explicit_negative", "明确负反馈"),
("摩擦子项", "friction_signals.repair_loop", "修复循环"),
("摩擦子项", "friction_signals.uncanny_risk", "违和风险"),
]
def normalize_name(value: str) -> str:
normalized = "".join(char if char.isalnum() or char in "._-" else "_" for char in str(value or "").strip())
normalized = normalized.strip("._")
return normalized or "unknown"
def load_json_file(file_path: Path) -> dict[str, Any]:
try:
payload = json.loads(file_path.read_text(encoding="utf-8"))
except (OSError, json.JSONDecodeError):
return {}
return payload if isinstance(payload, dict) else {}
def to_float(value: Any) -> float | None:
if value in {None, ""}:
return None
try:
number = float(value)
except (TypeError, ValueError):
return None
if math.isnan(number) or math.isinf(number):
return None
return number
def get_nested(payload: dict[str, Any], dotted_path: str) -> Any:
current: Any = payload
for key in dotted_path.split("."):
if not isinstance(current, dict):
return None
current = current.get(key)
return current
def annotation_path(manual_dir: Path, chat_id: str, effect_id: str) -> Path:
return manual_dir / normalize_name(chat_id) / f"{normalize_name(effect_id)}.json"
def iter_records(
log_dir: Path,
manual_dir: Path,
*,
chat_id: str,
include_pending: bool,
) -> list[dict[str, Any]]:
records: list[dict[str, Any]] = []
if not log_dir.exists():
return records
chat_dirs = [log_dir / normalize_name(chat_id)] if chat_id else [path for path in log_dir.iterdir() if path.is_dir()]
for chat_dir in sorted(chat_dirs):
if not chat_dir.exists() or not chat_dir.is_dir():
continue
for record_file in sorted(chat_dir.glob("*.json")):
effect_record = load_json_file(record_file)
if not effect_record:
continue
if not include_pending and effect_record.get("status") != "finalized":
continue
effect_id = str(effect_record.get("effect_id") or record_file.stem)
manual_record = load_json_file(annotation_path(manual_dir, chat_dir.name, effect_id))
manual_score = to_float(manual_record.get("manual_score"))
if manual_score is None:
manual_score_5 = to_float(manual_record.get("manual_score_5"))
if manual_score_5 is not None:
manual_score = (manual_score_5 - 1) / 4 * 100
if manual_score is None:
continue
raw_scores = effect_record.get("scores") if isinstance(effect_record.get("scores"), dict) else {}
scores = dict(raw_scores)
friction_score = to_float(scores.get("friction_score"))
if friction_score is not None:
scores["friction_quality_score"] = 1 - friction_score
records.append(
{
"chat_id": chat_dir.name,
"effect_id": effect_id,
"manual_score": manual_score,
"manual_score_5": manual_record.get("manual_score_5"),
"scores": scores,
"status": effect_record.get("status"),
"created_at": effect_record.get("created_at"),
"record_file": str(record_file),
}
)
return records
def calculate_metric_stats(records: list[dict[str, Any]], metric_path: str, min_n: int) -> dict[str, Any]:
pairs: list[tuple[float, float]] = []
for record in records:
x_value = to_float(get_nested(record["scores"], metric_path))
y_value = to_float(record["manual_score"])
if x_value is None or y_value is None:
continue
pairs.append((x_value, y_value))
x_values = [pair[0] for pair in pairs]
y_values = [pair[1] for pair in pairs]
result: dict[str, Any] = {
"n": len(pairs),
"pearson_r": None,
"pearson_p": None,
"spearman_r": None,
"spearman_p": None,
"kendall_tau": None,
"kendall_p": None,
"note": "",
}
if len(pairs) < min_n:
result["note"] = f"样本数少于 {min_n}"
return result
if len(set(x_values)) < 2:
result["note"] = "自动评分没有变化,无法计算相关"
return result
if len(set(y_values)) < 2:
result["note"] = "人工评分没有变化,无法计算相关"
return result
pearson = stats.pearsonr(x_values, y_values)
spearman = stats.spearmanr(x_values, y_values)
kendall = stats.kendalltau(x_values, y_values)
result.update(
{
"pearson_r": round_float(pearson.statistic),
"pearson_p": round_float(pearson.pvalue),
"spearman_r": round_float(spearman.statistic),
"spearman_p": round_float(spearman.pvalue),
"kendall_tau": round_float(kendall.statistic),
"kendall_p": round_float(kendall.pvalue),
}
)
return result
def round_float(value: Any) -> float | None:
number = to_float(value)
if number is None:
return None
return round(number, 6)
def significance_label(p_value: float | None) -> str:
if p_value is None:
return ""
if p_value < 0.001:
return "***"
if p_value < 0.01:
return "**"
if p_value < 0.05:
return "*"
if p_value < 0.1:
return "."
return "ns"
def build_report(records: list[dict[str, Any]], min_n: int) -> list[dict[str, Any]]:
report: list[dict[str, Any]] = []
for group, metric_path, label in METRIC_SPECS:
metric_stats = calculate_metric_stats(records, metric_path, min_n)
report.append(
{
"group": group,
"metric": metric_path,
"label": label,
**metric_stats,
"pearson_sig": significance_label(metric_stats["pearson_p"]),
"spearman_sig": significance_label(metric_stats["spearman_p"]),
"kendall_sig": significance_label(metric_stats["kendall_p"]),
}
)
return report
def print_report(records: list[dict[str, Any]], report: list[dict[str, Any]]) -> None:
chats = sorted({record["chat_id"] for record in records})
print("\nMaisaka 回复效果评分相关性分析")
print("=" * 96)
print(f"已匹配人工评分记录数: {len(records)}")
print(f"聊天流数量: {len(chats)}")
if chats:
print(f"聊天流: {', '.join(chats[:8])}{' ...' if len(chats) > 8 else ''}")
print("人工分使用 manual_score若只有 manual_score_5则换算到 0-100 后参与计算。")
print("显著性: *** p<0.001, ** p<0.01, * p<0.05, . p<0.1, ns 不显著")
print("-" * 96)
header = (
f"{'分组':<14} {'指标':<34} {'n':>4} "
f"{'Pearson r':>10} {'p':>10} {'sig':>4} "
f"{'Spearman r':>11} {'p':>10} {'sig':>4} "
f"{'Kendall':>9} {'p':>10} {'说明'}"
)
print(header)
print("-" * 96)
for item in report:
print(
f"{item['group']:<14} "
f"{item['label']:<34} "
f"{item['n']:>4} "
f"{format_number(item['pearson_r']):>10} "
f"{format_number(item['pearson_p']):>10} "
f"{item['pearson_sig']:>4} "
f"{format_number(item['spearman_r']):>11} "
f"{format_number(item['spearman_p']):>10} "
f"{item['spearman_sig']:>4} "
f"{format_number(item['kendall_tau']):>9} "
f"{format_number(item['kendall_p']):>10} "
f"{item['note']}"
)
total = next((item for item in report if item["metric"] == "asi"), None)
if total:
print("-" * 96)
print(
"总分 ASI 与人工分的 Pearson 相关: "
f"r={format_number(total['pearson_r'])}, "
f"p={format_number(total['pearson_p'])}, "
f"显著性={total['pearson_sig'] or 'N/A'}"
)
def format_number(value: Any) -> str:
if value is None:
return "N/A"
number = to_float(value)
if number is None:
return "N/A"
if abs(number) < 0.000001:
return "0"
return f"{number:.4g}"
def write_csv(file_path: Path, report: list[dict[str, Any]]) -> None:
file_path.parent.mkdir(parents=True, exist_ok=True)
fieldnames = [
"group",
"metric",
"label",
"n",
"pearson_r",
"pearson_p",
"pearson_sig",
"spearman_r",
"spearman_p",
"spearman_sig",
"kendall_tau",
"kendall_p",
"kendall_sig",
"note",
]
with file_path.open("w", encoding="utf-8-sig", newline="") as csv_file:
writer = csv.DictWriter(csv_file, fieldnames=fieldnames)
writer.writeheader()
writer.writerows(report)
def write_json(file_path: Path, records: list[dict[str, Any]], report: list[dict[str, Any]]) -> None:
file_path.parent.mkdir(parents=True, exist_ok=True)
payload = {
"matched_record_count": len(records),
"chat_count": len({record["chat_id"] for record in records}),
"report": report,
}
file_path.write_text(json.dumps(payload, ensure_ascii=False, indent=2), encoding="utf-8")
def main() -> None:
parser = argparse.ArgumentParser(description="分析 Maisaka 回复效果自动评分与人工评分的相关性和显著性。")
parser.add_argument("--log-dir", type=Path, default=DEFAULT_LOG_DIR, help="自动评分 JSON 目录")
parser.add_argument("--manual-dir", type=Path, default=DEFAULT_MANUAL_DIR, help="人工评分 JSON 目录")
parser.add_argument("--chat-id", default="", help="只分析某个 platform_type_id例如 qq_group_1028699246")
parser.add_argument("--include-pending", action="store_true", help="包含尚未 finalized 的记录")
parser.add_argument("--min-n", type=int, default=3, help="计算相关性需要的最小样本数,默认 3")
parser.add_argument("--csv", type=Path, default=None, help="把统计结果另存为 CSV")
parser.add_argument("--json", type=Path, default=None, help="把统计结果另存为 JSON")
args = parser.parse_args()
records = iter_records(
args.log_dir,
args.manual_dir,
chat_id=args.chat_id,
include_pending=args.include_pending,
)
report = build_report(records, max(2, args.min_n))
print_report(records, report)
if args.csv:
write_csv(args.csv, report)
print(f"\nCSV 已保存: {args.csv}")
if args.json:
write_json(args.json, records, report)
print(f"JSON 已保存: {args.json}")
if __name__ == "__main__":
main()

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@@ -2,7 +2,6 @@ from dataclasses import dataclass, field
from datetime import datetime
from typing import Any, Awaitable, Callable, Dict, List, Literal, Optional, Tuple
import random
import time
from rich.console import Group, RenderableType
@@ -83,14 +82,6 @@ class BaseMaisakaReplyGenerator:
bot_aliases = f",也有人叫你{','.join(alias_names)}" if alias_names else ""
prompt_personality = global_config.personality.personality
if (
hasattr(global_config.personality, "states")
and global_config.personality.states
and hasattr(global_config.personality, "state_probability")
and global_config.personality.state_probability > 0
and random.random() < global_config.personality.state_probability
):
prompt_personality = random.choice(global_config.personality.states)
return f"你的名字是{bot_name}{bot_aliases},你{prompt_personality};"
except Exception as exc:

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@@ -23,7 +23,6 @@ from .official_configs import (
EmojiConfig,
ExpressionConfig,
KeywordReactionConfig,
MaiSakaConfig,
MaimMessageConfig,
MCPConfig,
MemoryConfig,
@@ -55,7 +54,7 @@ BOT_CONFIG_PATH: Path = (CONFIG_DIR / "bot_config.toml").resolve().absolute()
MODEL_CONFIG_PATH: Path = (CONFIG_DIR / "model_config.toml").resolve().absolute()
LEGACY_ENV_PATH: Path = (PROJECT_ROOT / ".env").resolve().absolute()
MMC_VERSION: str = "1.0.0"
CONFIG_VERSION: str = "8.8.0"
CONFIG_VERSION: str = "8.9.3"
MODEL_CONFIG_VERSION: str = "1.14.0"
logger = get_logger("config")
@@ -121,9 +120,6 @@ class Config(ConfigBase):
database: DatabaseConfig = Field(default_factory=DatabaseConfig)
"""数据库配置类"""
maisaka: MaiSakaConfig = Field(default_factory=MaiSakaConfig)
"""MaiSaka对话系统配置类"""
mcp: MCPConfig = Field(default_factory=MCPConfig)
"""MCP 配置类"""

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@@ -113,32 +113,6 @@ class PersonalityConfig(ConfigBase):
)
"""每次构建回复时,从 multiple_reply_style 中随机替换 reply_style 的概率0.0-1.0"""
states: list[str] = Field(
default_factory=lambda: [
"是一个女大学生,喜欢上网聊天,会刷小红书。",
"是一个大二心理学生,会刷贴吧和中国知网。",
"是一个赛博网友,最近很想吐槽人。",
],
json_schema_extra={
"x-widget": "custom",
"x-icon": "shuffle",
},
)
"""_wrap_状态列表用于随机替换personality"""
state_probability: float = Field(
default=0.3,
ge=0,
le=1,
json_schema_extra={
"x-widget": "slider",
"x-icon": "percent",
"step": 0.1,
},
)
"""状态概率每次构建人格时替换personality的概率"""
class VisualConfig(ConfigBase):
"""视觉配置类"""
@@ -1161,6 +1135,16 @@ class DebugConfig(ConfigBase):
)
"""是否显示记忆检索相关prompt"""
enable_reply_effect_tracking: bool = Field(
default=False,
json_schema_extra={
"x-widget": "switch",
"x-icon": "activity",
},
)
"""是否开启回复效果评分追踪,默认关闭,需要手动打开"""
class ExtraPromptItem(ConfigBase):
platform: str = Field(
default="",

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@@ -121,13 +121,15 @@ async def handle_tool(
"Maisaka 回复生成器当前不可用。",
)
replyer_chat_history = list(tool_ctx.runtime._chat_history)
try:
success, reply_result = await replyer.generate_reply_with_context(
reply_reason=latest_thought,
reference_info=reference_info,
stream_id=tool_ctx.runtime.session_id,
reply_message=target_message,
chat_history=tool_ctx.runtime._chat_history,
chat_history=replyer_chat_history,
sub_agent_runner=lambda system_prompt: _run_expression_selector(
tool_ctx,
system_prompt,
@@ -207,6 +209,17 @@ async def handle_tool(
if tool_ctx.runtime.chat_stream.platform == CLI_PLATFORM_NAME:
tool_ctx.append_guided_reply_to_chat_history(combined_reply_text)
tool_ctx.runtime._record_reply_sent()
await tool_ctx.runtime.track_reply_effect(
tool_call_id=invocation.call_id,
target_message=target_message,
set_quote=set_quote,
reply_text=combined_reply_text,
reply_segments=reply_segments,
planner_reasoning=latest_thought,
reference_info=reference_info,
reply_metadata=reply_metadata,
replyer_context_messages=replyer_chat_history,
)
return tool_ctx.build_success_result(
invocation.tool_name,
"回复已生成并发送。",

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@@ -5,7 +5,6 @@ from datetime import datetime
from typing import Any, List, Optional, Sequence
import asyncio
import random
from rich.console import RenderableType
from src.common.data_models.llm_service_data_models import LLMGenerationOptions
@@ -263,14 +262,6 @@ class MaisakaChatLoopService:
bot_nickname = ""
prompt_personality = global_config.personality.personality
if (
hasattr(global_config.personality, "states")
and global_config.personality.states
and hasattr(global_config.personality, "state_probability")
and global_config.personality.state_probability > 0
and random.random() < global_config.personality.state_probability
):
prompt_personality = random.choice(global_config.personality.states)
return f"Your name is {bot_name}{bot_nickname}; persona: {prompt_personality};"
except Exception:

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@@ -0,0 +1,5 @@
"""Maisaka 回复效果观察器。"""
from .tracker import ReplyEffectTracker
__all__ = ["ReplyEffectTracker"]

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@@ -0,0 +1,100 @@
"""回复效果记录中的图片/表情附件提取工具。"""
from base64 import b64encode
from pathlib import Path
from typing import Any
from src.common.data_models.message_component_data_model import EmojiComponent, ImageComponent, MessageSequence
_MAX_INLINE_IMAGE_BYTES = 2 * 1024 * 1024
def extract_visual_attachments_from_sequence(message_sequence: MessageSequence | None) -> list[dict[str, Any]]:
"""从消息片段中提取可供评分页面展示的图片/表情信息。"""
if message_sequence is None:
return []
attachments: list[dict[str, Any]] = []
for index, component in enumerate(message_sequence.components):
if isinstance(component, ImageComponent):
attachments.append(_build_visual_attachment(component, index=index, kind="image"))
elif isinstance(component, EmojiComponent):
attachments.append(_build_visual_attachment(component, index=index, kind="emoji"))
return attachments
def _build_visual_attachment(component: ImageComponent | EmojiComponent, *, index: int, kind: str) -> dict[str, Any]:
binary_hash = str(component.binary_hash or "").strip()
attachment: dict[str, Any] = {
"kind": kind,
"index": index,
"hash": binary_hash,
"content": str(component.content or "").strip(),
"path": "",
"data_url": "",
}
file_path = _resolve_image_path(binary_hash, kind=kind)
if file_path:
attachment["path"] = str(file_path)
attachment["file_name"] = file_path.name
attachment["mime_type"] = _guess_mime_type(file_path.suffix)
return attachment
binary_data = bytes(component.binary_data or b"")
if binary_data and len(binary_data) <= _MAX_INLINE_IMAGE_BYTES:
mime_type = _guess_mime_type_from_bytes(binary_data)
attachment["mime_type"] = mime_type
attachment["data_url"] = f"data:{mime_type};base64,{b64encode(binary_data).decode('ascii')}"
return attachment
def _resolve_image_path(binary_hash: str, *, kind: str) -> Path | None:
if not binary_hash:
return None
try:
from sqlmodel import select
from src.common.database.database import get_db_session
from src.common.database.database_model import Images, ImageType
image_type = ImageType.EMOJI if kind == "emoji" else ImageType.IMAGE
with get_db_session() as db:
statement = select(Images).filter_by(image_hash=binary_hash, image_type=image_type).limit(1)
image_record = db.exec(statement).first()
if image_record is None or getattr(image_record, "no_file_flag", False):
return None
file_path = Path(str(image_record.full_path or "")).expanduser().resolve()
if file_path.is_file():
return file_path
except Exception:
return None
return None
def _guess_mime_type(suffix: str) -> str:
normalized_suffix = suffix.lower().lstrip(".")
if normalized_suffix in {"jpg", "jpeg"}:
return "image/jpeg"
if normalized_suffix == "gif":
return "image/gif"
if normalized_suffix == "webp":
return "image/webp"
if normalized_suffix == "bmp":
return "image/bmp"
return "image/png"
def _guess_mime_type_from_bytes(binary_data: bytes) -> str:
if binary_data.startswith(b"\xff\xd8\xff"):
return "image/jpeg"
if binary_data.startswith(b"GIF8"):
return "image/gif"
if binary_data.startswith(b"RIFF") and b"WEBP" in binary_data[:16]:
return "image/webp"
if binary_data.startswith(b"BM"):
return "image/bmp"
return "image/png"

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@@ -0,0 +1,116 @@
"""回复效果 LLM 窄维度评审。"""
from __future__ import annotations
from collections.abc import Awaitable, Callable
from typing import Any, Dict, List, Tuple
import json
from .models import FollowupMessageSnapshot, ReplyEffectRecord, RubricScoreItem, RubricScores
from .scoring import normalize_text_for_prompt
JudgeRunner = Callable[[str], Awaitable[str]]
async def judge_reply_effect(record: ReplyEffectRecord, judge_runner: JudgeRunner | None) -> Tuple[RubricScores, str]:
"""执行 LLM rubric judge失败时返回中性分。"""
if judge_runner is None:
return RubricScores(), "未提供 LLM judge runner"
prompt = build_judge_prompt(record)
try:
response_text = await judge_runner(prompt)
payload = _loads_json_object(response_text)
return parse_rubric_scores(payload), ""
except Exception as exc:
return RubricScores(), str(exc)
def build_judge_prompt(record: ReplyEffectRecord) -> str:
"""构建窄维度评分 prompt。"""
followup_text = _format_followups(record.followup_messages)
return (
"你是 Maisaka 回复效果的窄维度评审器,只评估这一次 bot 回复的交互感知质量。\n"
"不要评价总体满意度,不要给建议,只输出 JSON。\n\n"
"评分范围1 到 51=很差3=中性5=很好。\n"
"uncanny_risk 的 1=完全不怪5=非常过度拟人/越界/油腻。\n\n"
f"bot 回复:\n{normalize_text_for_prompt(record.reply.reply_text, 1200)}\n\n"
f"后续用户消息:\n{followup_text or '(暂无后续用户消息)'}\n\n"
"请输出严格 JSON 对象,格式如下:\n"
"{\n"
' "social_presence": {"score": 3, "reason": "...", "evidence_spans": ["..."], "confidence": 0.7},\n'
' "warmth": {"score": 3, "reason": "...", "evidence_spans": ["..."], "confidence": 0.7},\n'
' "competence": {"score": 3, "reason": "...", "evidence_spans": ["..."], "confidence": 0.7},\n'
' "appropriateness": {"score": 3, "reason": "...", "evidence_spans": ["..."], "confidence": 0.7},\n'
' "uncanny_risk": {"score": 3, "reason": "...", "evidence_spans": ["..."], "confidence": 0.7}\n'
"}"
)
def parse_rubric_scores(payload: Dict[str, Any]) -> RubricScores:
"""解析 LLM rubric JSON。"""
return RubricScores(
social_presence=_parse_item(payload.get("social_presence")),
warmth=_parse_item(payload.get("warmth")),
competence=_parse_item(payload.get("competence")),
appropriateness=_parse_item(payload.get("appropriateness")),
uncanny_risk=_parse_item(payload.get("uncanny_risk")),
available=True,
)
def _parse_item(raw_item: Any) -> RubricScoreItem:
if not isinstance(raw_item, dict):
raw_item = {}
score = _coerce_float(raw_item.get("score"), 3.0)
score = max(1.0, min(5.0, score))
evidence_spans = raw_item.get("evidence_spans")
if not isinstance(evidence_spans, list):
evidence_spans = []
return RubricScoreItem(
score=score,
normalized_score=round((score - 1.0) / 4.0, 4),
reason=str(raw_item.get("reason") or "").strip(),
evidence_spans=[str(item).strip() for item in evidence_spans if str(item).strip()],
confidence=max(0.0, min(1.0, _coerce_float(raw_item.get("confidence"), 0.0))),
)
def _loads_json_object(response_text: str) -> Dict[str, Any]:
normalized_response = str(response_text or "").strip()
if normalized_response.startswith("```"):
normalized_response = normalized_response.strip("`")
if normalized_response.lower().startswith("json"):
normalized_response = normalized_response[4:].strip()
try:
parsed = json.loads(normalized_response)
except json.JSONDecodeError:
start = normalized_response.find("{")
end = normalized_response.rfind("}")
if start < 0 or end <= start:
raise
parsed = json.loads(normalized_response[start : end + 1])
if not isinstance(parsed, dict):
raise ValueError("LLM judge 未返回 JSON 对象")
return parsed
def _format_followups(followups: List[FollowupMessageSnapshot]) -> str:
lines: List[str] = []
for index, followup in enumerate(followups[:5], start=1):
marker = "目标用户" if followup.is_target_user else "其他用户"
lines.append(
f"{index}. [{marker}] {normalize_text_for_prompt(followup.visible_text or followup.plain_text, 500)}"
)
return "\n".join(lines)
def _coerce_float(value: Any, default: float) -> float:
try:
return float(value)
except (TypeError, ValueError):
return default

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"""回复效果观察器的数据模型。"""
from dataclasses import asdict, dataclass, field
from datetime import datetime
from enum import Enum
from pathlib import Path
from typing import Any, Dict, List, Optional
SCHEMA_VERSION = 1
class ReplyEffectStatus(str, Enum):
"""回复效果记录状态。"""
PENDING = "pending"
FINALIZED = "finalized"
@dataclass(slots=True)
class SessionSnapshot:
"""会话快照。"""
session_id: str
platform_type_id: str
platform: str
chat_type: str
group_id: str
user_id: str
session_name: str
@dataclass(slots=True)
class UserSnapshot:
"""用户快照。"""
user_id: str
nickname: str
cardname: str
@dataclass(slots=True)
class ReplySnapshot:
"""被观察的回复内容。"""
tool_call_id: str
target_message_id: str
set_quote: bool
reply_text: str
reply_segments: List[str]
planner_reasoning: str
reference_info: str
reply_metadata: Dict[str, Any] = field(default_factory=dict)
@dataclass(slots=True)
class FollowupMessageSnapshot:
"""后续用户消息快照。"""
message_id: str
timestamp: str
user_id: str
nickname: str
cardname: str
visible_text: str
plain_text: str
latency_seconds: float
is_target_user: bool
attachments: List[Dict[str, Any]] = field(default_factory=list)
@dataclass(slots=True)
class BehaviorSignals:
"""行为满意度信号。"""
continue_2turns: float = 0.0
next_user_sentiment: float = 0.5
user_expansion: float = 0.0
no_correction: float = 1.0
no_abort: float = 1.0
evidence_source: str = "no_followup"
@dataclass(slots=True)
class RubricScoreItem:
"""单个 LLM rubric 项。"""
score: float = 3.0
normalized_score: float = 0.5
reason: str = ""
evidence_spans: List[str] = field(default_factory=list)
confidence: float = 0.0
@dataclass(slots=True)
class RubricScores:
"""LLM 感知质量评分。"""
social_presence: RubricScoreItem = field(default_factory=RubricScoreItem)
warmth: RubricScoreItem = field(default_factory=RubricScoreItem)
competence: RubricScoreItem = field(default_factory=RubricScoreItem)
appropriateness: RubricScoreItem = field(default_factory=RubricScoreItem)
uncanny_risk: RubricScoreItem = field(default_factory=RubricScoreItem)
available: bool = False
@dataclass(slots=True)
class FrictionSignals:
"""摩擦和反感信号。"""
explicit_negative: float = 0.0
repair_loop: float = 0.0
uncanny_risk: float = 0.5
evidence_messages: List[str] = field(default_factory=list)
@dataclass(slots=True)
class ReplyEffectScores:
"""最终效果评分。"""
asi: float
behavior_score: float
relational_score: float
friction_score: float
behavior_signals: BehaviorSignals
rubric_scores: RubricScores
friction_signals: FrictionSignals
judge_error: str = ""
@dataclass(slots=True)
class ReplyEffectRecord:
"""一条回复效果观察记录。"""
effect_id: str
status: ReplyEffectStatus
created_at: str
updated_at: str
session: SessionSnapshot
reply: ReplySnapshot
target_user: UserSnapshot
context_snapshot: List[Dict[str, Any]] = field(default_factory=list)
followup_messages: List[FollowupMessageSnapshot] = field(default_factory=list)
scores: Optional[ReplyEffectScores] = None
finalized_at: str = ""
finalize_reason: str = ""
confidence_note: str = ""
followup_summary: Dict[str, Any] = field(default_factory=dict)
file_path: Optional[Path] = field(default=None, repr=False)
def to_json_dict(self) -> Dict[str, Any]:
"""转换为可直接写入 JSON 的字典。"""
payload = asdict(self)
payload["schema_version"] = SCHEMA_VERSION
payload["status"] = self.status.value
payload.pop("file_path", None)
return payload
def now_iso() -> str:
"""返回本地时区 ISO 时间字符串。"""
return datetime.now().astimezone().isoformat(timespec="seconds")

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"""回复效果日志路径工具。"""
from pathlib import Path
from src.maisaka.display.preview_path_utils import build_preview_chat_dir_name, normalize_preview_name
BASE_DIR = Path("logs") / "maisaka_reply_effect"
def build_reply_effect_chat_dir_name(session_id: str) -> str:
"""构建回复效果日志的会话目录名。"""
chat_dir_name = build_preview_chat_dir_name(session_id)
normalized_chat_dir_name = normalize_preview_name(chat_dir_name)
if normalized_chat_dir_name != "unknown":
return normalized_chat_dir_name
return "unknown_chat"
def build_reply_effect_chat_dir(session_id: str, base_dir: Path | None = None) -> Path:
"""返回某个会话对应的回复效果日志目录。"""
root_dir = base_dir or BASE_DIR
return root_dir / build_reply_effect_chat_dir_name(session_id)

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"""回复效果评分规则。"""
from __future__ import annotations
from typing import Iterable, List
import re
from .models import BehaviorSignals, FollowupMessageSnapshot, FrictionSignals, ReplyEffectScores, RubricScores
NEGATIVE_PATTERNS = (
"你没懂",
"没懂",
"不是这个意思",
"不是",
"别这样",
"好烦",
"烦死",
"算了",
"离谱",
"无语",
"你在说什么",
"听不懂",
"看不懂",
"错了",
"不对",
)
REPAIR_PATTERNS = (
"我是说",
"我说的是",
"重新说",
"再说一遍",
"不是问",
"你理解错",
"你搞错",
"我问的是",
"纠正",
)
POSITIVE_PATTERNS = (
"谢谢",
"感谢",
"懂了",
"明白了",
"可以",
"有用",
"不错",
"好耶",
"太好了",
)
def clamp(value: float, lower: float = 0.0, upper: float = 1.0) -> float:
"""限制数值范围。"""
return max(lower, min(upper, value))
def score_reply_effect(
followups: List[FollowupMessageSnapshot],
rubric_scores: RubricScores,
*,
target_user_id: str = "",
judge_error: str = "",
) -> ReplyEffectScores:
"""计算一条回复的 ASI 分数。"""
behavior_signals = build_behavior_signals(followups, target_user_id=target_user_id)
friction_signals = build_friction_signals(followups, rubric_scores, target_user_id=target_user_id)
behavior_score = calculate_behavior_score(behavior_signals)
relational_score = calculate_relational_score(rubric_scores)
friction_score = calculate_friction_score(friction_signals)
asi = calculate_asi_score(behavior_score, relational_score, friction_score)
return ReplyEffectScores(
asi=asi,
behavior_score=round(behavior_score, 4),
relational_score=round(relational_score, 4),
friction_score=round(friction_score, 4),
behavior_signals=behavior_signals,
rubric_scores=rubric_scores,
friction_signals=friction_signals,
judge_error=judge_error,
)
def build_behavior_signals(
followups: List[FollowupMessageSnapshot],
*,
target_user_id: str = "",
) -> BehaviorSignals:
"""从后续消息构造行为满意度信号。"""
target_followups = [
followup
for followup in followups
if target_user_id and followup.user_id == target_user_id
]
evidence_followups = target_followups or followups
evidence_source = (
"target_user_feedback"
if target_followups
else "indirect_session_feedback"
if followups
else "no_followup"
)
if not evidence_followups:
return BehaviorSignals(
continue_2turns=0.0,
next_user_sentiment=0.5,
user_expansion=0.0,
no_correction=1.0,
no_abort=0.6,
evidence_source=evidence_source,
)
combined_text = "\n".join(followup.plain_text for followup in evidence_followups)
negative_count = count_matches(combined_text, NEGATIVE_PATTERNS)
repair_count = count_matches(combined_text, REPAIR_PATTERNS)
positive_count = count_matches(combined_text, POSITIVE_PATTERNS)
average_length = sum(len(followup.plain_text.strip()) for followup in evidence_followups) / len(evidence_followups)
return BehaviorSignals(
continue_2turns=1.0 if len(evidence_followups) >= 2 else 0.5,
next_user_sentiment=estimate_sentiment(positive_count, negative_count, repair_count),
user_expansion=clamp((average_length - 8.0) / 42.0),
no_correction=0.0 if repair_count > 0 else 1.0,
no_abort=0.0 if negative_count >= 2 or "算了" in combined_text else 1.0,
evidence_source=evidence_source,
)
def build_friction_signals(
followups: List[FollowupMessageSnapshot],
rubric_scores: RubricScores,
*,
target_user_id: str = "",
) -> FrictionSignals:
"""从后续消息和 LLM judge 结果构造摩擦信号。"""
evidence_messages: List[str] = []
explicit_negative = 0.0
repair_loop = 0.0
for followup in followups:
text = followup.plain_text
source_weight = 1.0 if target_user_id and followup.user_id == target_user_id else 0.65
if any(pattern in text for pattern in NEGATIVE_PATTERNS):
explicit_negative = max(explicit_negative, source_weight)
evidence_messages.append(followup.message_id)
if any(pattern in text for pattern in REPAIR_PATTERNS):
repair_loop = max(repair_loop, source_weight)
evidence_messages.append(followup.message_id)
uncanny_risk = rubric_scores.uncanny_risk.normalized_score if rubric_scores.available else 0.5
return FrictionSignals(
explicit_negative=round(clamp(explicit_negative), 4),
repair_loop=round(clamp(repair_loop), 4),
uncanny_risk=round(clamp(uncanny_risk), 4),
evidence_messages=sorted(set(evidence_messages)),
)
def calculate_behavior_score(signals: BehaviorSignals) -> float:
"""计算行为满意度分数。"""
return clamp(
0.30 * signals.continue_2turns
+ 0.25 * signals.next_user_sentiment
+ 0.20 * signals.user_expansion
+ 0.15 * signals.no_correction
+ 0.10 * signals.no_abort
)
def calculate_relational_score(rubric_scores: RubricScores) -> float:
"""计算感知质量分数。"""
if not rubric_scores.available:
return 0.5
return clamp(
0.35 * rubric_scores.social_presence.normalized_score
+ 0.25 * rubric_scores.warmth.normalized_score
+ 0.25 * rubric_scores.competence.normalized_score
+ 0.15 * rubric_scores.appropriateness.normalized_score
)
def calculate_friction_score(signals: FrictionSignals) -> float:
"""计算摩擦惩罚分数。"""
return clamp(
0.40 * signals.explicit_negative
+ 0.30 * signals.repair_loop
+ 0.30 * signals.uncanny_risk
)
def calculate_asi_score(behavior_score: float, relational_score: float, friction_score: float) -> float:
"""计算 0-100 的 ASI 总分,摩擦分越高扣分越多。"""
return round(
clamp(
0.45 * behavior_score
+ 0.35 * relational_score
+ 0.20 * (1.0 - friction_score)
)
* 100,
2,
)
def has_explicit_negative_feedback(
followups: Iterable[FollowupMessageSnapshot],
*,
target_user_id: str = "",
allow_indirect: bool = False,
) -> bool:
"""判断是否出现可提前结算的明确负反馈。"""
for followup in followups:
if target_user_id and followup.user_id != target_user_id and not allow_indirect:
continue
if any(pattern in followup.plain_text for pattern in NEGATIVE_PATTERNS):
return True
return False
def has_repair_loop(
followups: Iterable[FollowupMessageSnapshot],
*,
target_user_id: str = "",
allow_indirect: bool = False,
) -> bool:
"""判断是否出现修复循环。"""
repair_count = 0
for followup in followups:
if target_user_id and followup.user_id != target_user_id and not allow_indirect:
continue
if any(pattern in followup.plain_text for pattern in REPAIR_PATTERNS):
repair_count += 1
return repair_count >= 1
def count_matches(text: str, patterns: Iterable[str]) -> int:
"""统计模式命中次数。"""
return sum(1 for pattern in patterns if pattern and pattern in text)
def estimate_sentiment(positive_count: int, negative_count: int, repair_count: int) -> float:
"""用轻量规则估计后续消息情绪。"""
raw_score = 0.5 + 0.2 * positive_count - 0.25 * negative_count - 0.15 * repair_count
return round(clamp(raw_score), 4)
def normalize_text_for_prompt(text: str, limit: int = 800) -> str:
"""清理用于评分 prompt 的文本。"""
normalized_text = re.sub(r"\s+", " ", str(text or "")).strip()
if len(normalized_text) <= limit:
return normalized_text
return normalized_text[: limit - 1] + ""

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"""回复效果独立 JSON 存储。"""
from pathlib import Path
from typing import Dict
import json
import time
from .models import ReplyEffectRecord
from .path_utils import BASE_DIR, build_reply_effect_chat_dir, normalize_preview_name
class ReplyEffectStorage:
"""负责回复效果记录的独立 JSON 文件存储。"""
_MAX_RECORDS_PER_CHAT = 1024
_TRIM_COUNT = 100
def __init__(self, base_dir: Path | None = None) -> None:
self._base_dir = base_dir or BASE_DIR
def create_record_file(self, record: ReplyEffectRecord) -> Path:
"""为新记录创建文件路径并写入初始 JSON。"""
chat_dir_name = normalize_preview_name(record.session.platform_type_id)
if chat_dir_name == "unknown":
chat_dir = build_reply_effect_chat_dir(record.session.session_id, self._base_dir).resolve()
else:
chat_dir = (self._base_dir / chat_dir_name).resolve()
chat_dir.mkdir(parents=True, exist_ok=True)
timestamp_ms = int(time.time() * 1000)
safe_effect_id = record.effect_id.replace("-", "")
file_path = chat_dir / f"{timestamp_ms}_{safe_effect_id}.json"
record.file_path = file_path
self.save_record(record)
self._trim_overflow(chat_dir)
return file_path
def save_record(self, record: ReplyEffectRecord) -> None:
"""原子写入记录 JSON。"""
if record.file_path is None:
self.create_record_file(record)
return
file_path = record.file_path
file_path.parent.mkdir(parents=True, exist_ok=True)
temp_path = file_path.with_name(f".{file_path.name}.tmp")
temp_path.write_text(
json.dumps(record.to_json_dict(), ensure_ascii=False, indent=2, default=str),
encoding="utf-8",
)
temp_path.replace(file_path)
@staticmethod
def read_json(file_path: Path) -> Dict[str, object]:
"""读取已保存的 JSON 文件。"""
return json.loads(file_path.read_text(encoding="utf-8"))
def _trim_overflow(self, chat_dir: Path) -> None:
"""超过容量时删除最旧的回复效果记录。"""
files = [file_path for file_path in chat_dir.glob("*.json") if file_path.is_file()]
if len(files) <= self._MAX_RECORDS_PER_CHAT:
return
sorted_files = sorted(files, key=lambda file_path: file_path.stat().st_mtime)
overflow_count = len(files) - self._MAX_RECORDS_PER_CHAT
trim_count = min(len(sorted_files), max(self._TRIM_COUNT, overflow_count))
for old_file in sorted_files[:trim_count]:
try:
old_file.unlink()
except FileNotFoundError:
continue

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"""会话级回复效果观察器。"""
from __future__ import annotations
from datetime import datetime
from typing import Any, Dict, List
import asyncio
import time
import uuid
from src.chat.message_receive.message import SessionMessage
from src.maisaka.history_utils import build_session_message_visible_text
from .image_utils import extract_visual_attachments_from_sequence
from .judge import JudgeRunner, judge_reply_effect
from .models import (
FollowupMessageSnapshot,
ReplyEffectRecord,
ReplyEffectStatus,
ReplySnapshot,
SessionSnapshot,
UserSnapshot,
now_iso,
)
from .path_utils import build_reply_effect_chat_dir_name
from .scoring import (
has_explicit_negative_feedback,
has_repair_loop,
score_reply_effect,
)
from .storage import ReplyEffectStorage
TARGET_USER_FOLLOWUP_LIMIT = 2
SESSION_FOLLOWUP_LIMIT = 5
OBSERVATION_WINDOW_SECONDS = 600.0
class ReplyEffectTracker:
"""追踪单个 Maisaka 会话内 reply 工具回复后的用户反馈。"""
def __init__(
self,
*,
session_id: str,
session_name: str,
chat_stream: Any,
judge_runner: JudgeRunner | None = None,
storage: ReplyEffectStorage | None = None,
) -> None:
self._session_id = session_id
self._session_name = session_name
self._chat_stream = chat_stream
self._judge_runner = judge_runner
self._storage = storage or ReplyEffectStorage()
self._pending_records: Dict[str, ReplyEffectRecord] = {}
self._timeout_tasks: Dict[str, asyncio.Task[None]] = {}
async def record_reply(
self,
*,
tool_call_id: str,
target_message: SessionMessage,
set_quote: bool,
reply_text: str,
reply_segments: List[str],
planner_reasoning: str,
reference_info: str,
reply_metadata: Dict[str, Any] | None = None,
context_snapshot: List[Dict[str, Any]] | None = None,
) -> ReplyEffectRecord:
"""登记一条已经成功发出的 reply 回复。"""
effect_id = str(uuid.uuid4())
target_user_info = target_message.message_info.user_info
record = ReplyEffectRecord(
effect_id=effect_id,
status=ReplyEffectStatus.PENDING,
created_at=now_iso(),
updated_at=now_iso(),
session=self._build_session_snapshot(),
reply=ReplySnapshot(
tool_call_id=tool_call_id,
target_message_id=target_message.message_id,
set_quote=set_quote,
reply_text=reply_text,
reply_segments=list(reply_segments),
planner_reasoning=planner_reasoning,
reference_info=reference_info,
reply_metadata=dict(reply_metadata or {}),
),
target_user=UserSnapshot(
user_id=str(target_user_info.user_id or "").strip(),
nickname=str(target_user_info.user_nickname or "").strip(),
cardname=str(target_user_info.user_cardname or "").strip(),
),
context_snapshot=list(context_snapshot or []),
)
self._storage.create_record_file(record)
self._pending_records[effect_id] = record
self._timeout_tasks[effect_id] = asyncio.create_task(self._finalize_after_timeout(effect_id))
return record
async def observe_user_message(self, message: SessionMessage) -> None:
"""观察一条后续用户消息,并在满足规则时完成相关 pending 记录。"""
if not self._pending_records or message.session_id != self._session_id:
return
for effect_id, record in list(self._pending_records.items()):
if record.status != ReplyEffectStatus.PENDING:
continue
followup = self._build_followup_snapshot(message, record)
record.followup_messages.append(followup)
record.updated_at = now_iso()
self._storage.save_record(record)
reason = self._resolve_finalize_reason(record)
if reason:
await self.finalize(effect_id, reason)
async def finalize_all(self, reason: str = "runtime_stop") -> None:
"""强制完成当前会话所有 pending 记录。"""
for effect_id in list(self._pending_records.keys()):
await self.finalize(effect_id, reason)
async def finalize(self, effect_id: str, reason: str) -> None:
"""完成一条 pending 记录并写回 JSON。"""
record = self._pending_records.pop(effect_id, None)
if record is None or record.status == ReplyEffectStatus.FINALIZED:
return
timeout_task = self._timeout_tasks.pop(effect_id, None)
current_task = asyncio.current_task()
if timeout_task is not None and timeout_task is not current_task:
timeout_task.cancel()
rubric_scores, judge_error = await judge_reply_effect(record, self._judge_runner)
record.scores = score_reply_effect(
record.followup_messages,
rubric_scores,
target_user_id=record.target_user.user_id,
judge_error=judge_error,
)
record.status = ReplyEffectStatus.FINALIZED
record.finalized_at = now_iso()
record.updated_at = record.finalized_at
record.finalize_reason = reason
record.confidence_note = self._build_confidence_note(record)
record.followup_summary = self._build_followup_summary(record)
self._storage.save_record(record)
def _build_session_snapshot(self) -> SessionSnapshot:
platform = str(getattr(self._chat_stream, "platform", "") or "").strip()
group_id = str(getattr(self._chat_stream, "group_id", "") or "").strip()
user_id = str(getattr(self._chat_stream, "user_id", "") or "").strip()
is_group_session = bool(getattr(self._chat_stream, "is_group_session", False))
return SessionSnapshot(
session_id=self._session_id,
platform_type_id=build_reply_effect_chat_dir_name(self._session_id),
platform=platform,
chat_type="group" if is_group_session else "private",
group_id=group_id,
user_id=user_id,
session_name=self._session_name,
)
def _build_followup_snapshot(
self,
message: SessionMessage,
record: ReplyEffectRecord,
) -> FollowupMessageSnapshot:
user_info = message.message_info.user_info
plain_text = str(message.processed_plain_text or "").strip()
try:
visible_text = build_session_message_visible_text(message)
except Exception:
visible_text = plain_text
latency_seconds = max(0.0, time.time() - _parse_iso_timestamp(record.created_at))
user_id = str(user_info.user_id or "").strip()
return FollowupMessageSnapshot(
message_id=str(message.message_id or "").strip(),
timestamp=_message_timestamp_to_iso(message),
user_id=user_id,
nickname=str(user_info.user_nickname or "").strip(),
cardname=str(user_info.user_cardname or "").strip(),
visible_text=visible_text,
plain_text=plain_text,
latency_seconds=round(latency_seconds, 3),
is_target_user=bool(record.target_user.user_id and user_id == record.target_user.user_id),
attachments=extract_visual_attachments_from_sequence(message.raw_message),
)
def _resolve_finalize_reason(self, record: ReplyEffectRecord) -> str:
target_user_id = record.target_user.user_id
target_followups = [
followup
for followup in record.followup_messages
if target_user_id and followup.user_id == target_user_id
]
has_target_feedback = bool(target_followups)
if has_explicit_negative_feedback(target_followups, target_user_id=target_user_id, allow_indirect=False):
return "explicit_negative"
if has_repair_loop(target_followups, target_user_id=target_user_id, allow_indirect=False):
return "repair_loop"
if len(target_followups) >= TARGET_USER_FOLLOWUP_LIMIT:
return "target_user_followups"
if not target_user_id or not has_target_feedback:
allow_indirect = not target_user_id
if has_explicit_negative_feedback(
record.followup_messages,
target_user_id=target_user_id,
allow_indirect=allow_indirect,
):
return "explicit_negative"
if has_repair_loop(
record.followup_messages,
target_user_id=target_user_id,
allow_indirect=allow_indirect,
):
return "repair_loop"
if len(record.followup_messages) >= SESSION_FOLLOWUP_LIMIT:
return "session_followups_limit"
return ""
async def _finalize_after_timeout(self, effect_id: str) -> None:
try:
await asyncio.sleep(OBSERVATION_WINDOW_SECONDS)
await self.finalize(effect_id, "window_timeout")
except asyncio.CancelledError:
return
@staticmethod
def _build_confidence_note(record: ReplyEffectRecord) -> str:
if not record.followup_messages:
return "没有观察到后续用户消息,行为分使用保守中性信号。"
if any(followup.is_target_user for followup in record.followup_messages):
return "行为反馈包含回复对象本人的后续发言。"
return "行为反馈来自同会话其他用户,不是回复对象本人,置信度较低。"
@staticmethod
def _build_followup_summary(record: ReplyEffectRecord) -> Dict[str, Any]:
target_count = sum(1 for followup in record.followup_messages if followup.is_target_user)
return {
"total_count": len(record.followup_messages),
"target_user_count": target_count,
"other_user_count": len(record.followup_messages) - target_count,
"target_user_id": record.target_user.user_id,
}
def _message_timestamp_to_iso(message: SessionMessage) -> str:
timestamp = getattr(message, "timestamp", None)
if isinstance(timestamp, datetime):
return timestamp.astimezone().isoformat(timespec="seconds")
return now_iso()
def _parse_iso_timestamp(value: str) -> float:
try:
return datetime.fromisoformat(value).timestamp()
except ValueError:
return time.time()

View File

@@ -1,6 +1,7 @@
"""Maisaka 非 CLI 运行时。"""
from collections import deque
from datetime import datetime
from math import ceil
from typing import Any, Literal, Optional, Sequence
@@ -33,11 +34,13 @@ from src.plugin_runtime.tool_provider import PluginToolProvider
from src.plugin_runtime.hook_payloads import deserialize_prompt_messages
from .chat_loop_service import ChatResponse, MaisakaChatLoopService
from .context_messages import LLMContextMessage
from .context_messages import LLMContextMessage, ReferenceMessage, ReferenceMessageType
from .display.display_utils import build_tool_call_summary_lines, format_token_count
from .display.prompt_cli_renderer import PromptCLIVisualizer
from .display.stage_status_board import remove_stage_status, update_stage_status
from .reasoning_engine import MaisakaReasoningEngine
from .reply_effect import ReplyEffectTracker
from .reply_effect.image_utils import extract_visual_attachments_from_sequence
from .tool_provider import MaisakaBuiltinToolProvider
logger = get_logger("maisaka_runtime")
@@ -120,8 +123,20 @@ class MaisakaHeartFlowChatting:
self._reasoning_engine = MaisakaReasoningEngine(self)
self._tool_registry = ToolRegistry()
self._reply_effect_tracker = ReplyEffectTracker(
session_id=self.session_id,
session_name=self.session_name,
chat_stream=self.chat_stream,
judge_runner=self._run_reply_effect_judge,
)
self._register_tool_providers()
@staticmethod
def _is_reply_effect_tracking_enabled() -> bool:
"""判断是否启用回复效果评分追踪。"""
return bool(global_config.debug.enable_reply_effect_tracking)
def _update_stage_status(self, stage: str, detail: str = "", *, round_text: str = "") -> None:
"""更新当前会话的阶段状态。"""
@@ -171,6 +186,8 @@ class MaisakaHeartFlowChatting:
finally:
self._internal_loop_task = None
if self._is_reply_effect_tracking_enabled():
await self._reply_effect_tracker.finalize_all("runtime_stop")
await self._tool_registry.close()
self._mcp_manager = None
self._mcp_host_bridge = None
@@ -230,6 +247,8 @@ class MaisakaHeartFlowChatting:
self.message_cache.append(message)
self._message_received_at_by_id[message.message_id] = received_at
self._source_messages_by_id[message.message_id] = message
if self._is_reply_effect_tracking_enabled():
asyncio.create_task(self._reply_effect_tracker.observe_user_message(message))
if self._agent_state == self._STATE_RUNNING:
self._message_debounce_required = True
if self._agent_state == self._STATE_RUNNING and self._planner_interrupt_flag is not None:
@@ -266,6 +285,79 @@ class MaisakaHeartFlowChatting:
talk_value = max(0.01, float(ChatConfigUtils.get_talk_value(self.session_id)))
return max(0.01, talk_value * self._talk_frequency_adjust)
async def track_reply_effect(
self,
*,
tool_call_id: str,
target_message: SessionMessage,
set_quote: bool,
reply_text: str,
reply_segments: list[str],
planner_reasoning: str,
reference_info: str,
reply_metadata: Optional[dict[str, Any]] = None,
replyer_context_messages: Optional[Sequence[LLMContextMessage]] = None,
) -> None:
"""登记一次已成功发送的 reply 工具回复,供后续用户反馈评分。"""
if not self._is_reply_effect_tracking_enabled():
return
try:
context_snapshot = self._build_reply_effect_context_snapshot(
context_messages=replyer_context_messages,
exclude_reply_segments=reply_segments if replyer_context_messages is None else None,
)
enriched_reply_metadata = dict(reply_metadata or {})
enriched_reply_metadata["replyer_context_count"] = (
len(replyer_context_messages) if replyer_context_messages is not None else len(self._chat_history)
)
enriched_reply_metadata["recorded_context_count"] = len(context_snapshot)
await self._reply_effect_tracker.record_reply(
tool_call_id=tool_call_id,
target_message=target_message,
set_quote=set_quote,
reply_text=reply_text,
reply_segments=reply_segments,
planner_reasoning=planner_reasoning,
reference_info=reference_info,
reply_metadata=enriched_reply_metadata,
context_snapshot=context_snapshot,
)
except Exception as exc:
logger.warning(f"{self.log_prefix} 创建回复效果观察记录失败: {exc}")
def _build_reply_effect_context_snapshot(
self,
*,
context_messages: Optional[Sequence[LLMContextMessage]] = None,
exclude_reply_segments: Optional[Sequence[str]] = None,
) -> list[dict[str, Any]]:
"""构建回复效果观察使用的上下文快照。
优先记录 replyer 当次生成时实际收到的完整上下文列表;只有旧调用未传入时才回退到当前运行时历史。
"""
source_messages = list(context_messages) if context_messages is not None else list(self._chat_history)
snapshot: list[dict[str, Any]] = []
excluded_segments = [segment.strip() for segment in (exclude_reply_segments or []) if segment.strip()]
for message in source_messages:
text = str(message.processed_plain_text or "").strip()
if not text:
continue
if message.source == "guided_reply" and any(segment in text for segment in excluded_segments):
continue
snapshot.append(
{
"source": message.source,
"role": message.role,
"timestamp": message.timestamp.isoformat(timespec="seconds"),
"text": text,
"attachments": extract_visual_attachments_from_sequence(getattr(message, "raw_message", None)),
}
)
return snapshot
def _get_message_trigger_threshold(self) -> int:
"""根据回复频率折算出触发一轮循环所需的消息数。"""
effective_frequency = min(1.0, self._get_effective_reply_frequency())
@@ -496,6 +588,27 @@ class MaisakaHeartFlowChatting:
tool_definitions=[] if tool_definitions is None else tool_definitions,
)
async def _run_reply_effect_judge(self, prompt: str) -> str:
"""运行回复效果观察器使用的临时 LLM 评审。"""
judge_message = ReferenceMessage(
content=prompt,
timestamp=datetime.now(),
reference_type=ReferenceMessageType.TOOL_HINT,
remaining_uses_value=1,
display_prefix="[回复效果评分任务]",
)
response = await self.run_sub_agent(
context_message_limit=1,
system_prompt="你是回复效果评分器。请严格按用户给出的 JSON 格式输出,不要输出 JSON 之外的内容。",
request_kind="reply_effect_judge",
extra_messages=[judge_message],
max_tokens=900,
temperature=0.1,
tool_definitions=[],
)
return (response.content or "").strip()
def set_current_action_tool_names(self, tool_names: Sequence[str]) -> None:
"""记录当前 Action Loop 已实际暴露给 planner 的工具名集合。"""