328 lines
11 KiB
Python
Executable File
328 lines
11 KiB
Python
Executable File
#!/usr/bin/env python3
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"""
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微信 P0 问题实时检测与分发
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功能:
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1. 从 MySQL 读取最近一段时间的微信用户火线救火群消息
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2. 复用 sync_feishu_feedback.py 的聚类 + 优先级判定逻辑
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3. 过滤已推送过的 P0 簇(去重)
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4. 仅推送新增 P0 到「小葵小葵」群
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设计:
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- 每分钟由 crontab 调用一次
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- 查询最近 2 小时的消息,确保聚类质量
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- 用「簇签名」(sorted message_ids)做去重
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- 每天 10:00 清空去重状态(与全量分发错开)
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用法:
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python3 detect_p0_wechat.py [--dry-run] [--lookback-minutes 120]
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"""
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import sys, os, re, json, hashlib, argparse, pymysql
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from datetime import datetime, timedelta
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SKILL_DIR = os.path.join(os.path.dirname(os.path.abspath(__file__)), "..", "skills", "feishu-feedback-sync", "scripts")
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sys.path.insert(0, SKILL_DIR)
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from sync_feishu_feedback import (
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sort_threads, get_tenant_token, content_similarity,
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DISPATCH_CHAT_ID, DISPATCH_CRED_DIR, P0_NOTIFY_USERS,
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MYSQL_HOST, MYSQL_PORT, MYSQL_USER, MYSQL_PASS, MYSQL_DB,
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)
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from priority_classifier import compute_final_priority
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# === 微信专用配置 ===
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STATE_FILE = os.path.join(os.path.dirname(os.path.abspath(__file__)), "..", "tmp", "p0_dispatched_state_wechat.json")
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LOOKBACK_MINUTES = 120
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CLUSTER_MIN_SIZE = 2
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def load_dispatched_state():
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try:
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with open(STATE_FILE, "r") as f:
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state = json.load(f)
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except (FileNotFoundError, json.JSONDecodeError):
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state = {}
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cutoff = (datetime.now() - timedelta(hours=24)).isoformat()
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# 兼容新旧格式:新格式 value 是 {"time": ..., "fp": ...},旧格式是纯时间字符串
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cleaned = {}
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for k, v in state.items():
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ts = v if isinstance(v, str) else v.get("time", "")
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if ts > cutoff:
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cleaned[k] = v
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return cleaned
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def save_dispatched_state(state):
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os.makedirs(os.path.dirname(STATE_FILE), exist_ok=True)
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tmp = STATE_FILE + ".tmp"
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with open(tmp, "w") as f:
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json.dump(state, f, ensure_ascii=False, indent=2)
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os.rename(tmp, STATE_FILE)
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def cluster_signature(cluster_msgs):
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ids = sorted(str(m[0]) for m in cluster_msgs)
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return hashlib.md5(",".join(ids).encode()).hexdigest()
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def cluster_content_fingerprint(cluster_msgs):
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"""生成基于内容语义的簇指纹,用于跨扫描去重(不依赖消息ID集合)"""
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# 拼接簇内所有有意义的消息内容(跳过纯图片/文件/表情)
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all_contents = []
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for m in cluster_msgs:
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c = str(m[3]).strip() if m[3] else ""
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if c and len(c) > 8:
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all_contents.append(c[:300])
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# 取前5条聚合,保证核心问题描述稳定
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aggregated = " | ".join(all_contents[:5])
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# 提取发送人集合(排序保证一致性)
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senders = sorted(set(m[1] for m in cluster_msgs if m[1]))
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# 提取小时粒度的时间窗口
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times = [m[6] for m in cluster_msgs if m[6]]
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hour = times[0][:13] if times else "unknown"
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return {
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"content": aggregated,
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"senders": senders,
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"hour": hour,
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"msg_count": len(cluster_msgs),
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}
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def is_duplicate_p0(new_fp, dispatched_entries):
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"""
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基于内容语义判断新 P0 是否与已推送 P0 重复。
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dispatched_entries: {sig: {"time": str, "fp": dict}}
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"""
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for entry in dispatched_entries.values():
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old_fp = entry.get("fp")
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if not old_fp:
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continue
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same_hour = new_fp["hour"] == old_fp["hour"]
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sender_overlap = len(set(new_fp["senders"]) & set(old_fp["senders"]))
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# 条件1: 同一小时 + 发送人有交集 + 内容相似度 > 0.20(聚合内容稳定,宽松阈值足够区分)
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if same_hour and sender_overlap >= 1:
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sim = content_similarity(new_fp["content"], old_fp["content"])
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if sim > 0.20:
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return True
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# 条件2: 发送人高度重叠 + 内容相似度 > 0.35(跨小时场景)
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if sender_overlap >= 2:
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sim = content_similarity(new_fp["content"], old_fp["content"])
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if sim > 0.35:
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return True
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return False
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def is_probably_p0(cluster_msgs):
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if len(cluster_msgs) < CLUSTER_MIN_SIZE:
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return False, None
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info = compute_final_priority(cluster_msgs)
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return info["priority"] == "P0", info
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def _clean_summary(text):
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"""清洗摘要文本,去掉用户ID、话术后缀等冗余信息。"""
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# 去掉手机号/用户ID(11位数字,可能紧邻中文)
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text = re.sub(r'(?:^|(?<=[^\d]))1[3-9]\d{9}(?=[^\d]|$)', '', text)
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# 去掉话术后缀
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text = re.sub(r'[,,]?\s*(老师|辛苦|麻烦|帮忙)\s*(看下|看一下|看看|看)[。!!]*$', '', text)
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text = re.sub(r'[,,]?\s*@\S+\s*', '', text)
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# 清理多余空格和标点
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text = re.sub(r'\s+', ' ', text).strip()
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text = re.sub(r'^[,,\s]+|[,,\s]+$', '', text)
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return text
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def _pick_best_summary(cluster_msgs):
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"""从簇中选出最能代表 P0 问题的摘要消息。
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优先选择匹配 P0 关键词的消息,其次选第一条有意义的文本。"""
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from priority_classifier import P0_KEYWORDS
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# 收集所有 P0 关键词正则
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p0_patterns = []
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for cat_pats in P0_KEYWORDS.values():
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p0_patterns.append(cat_pats)
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combined_p0 = re.compile('|'.join(p0_patterns), re.IGNORECASE)
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best = None
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for m in cluster_msgs:
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t = str(m[3]).strip() if m[3] else ""
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if not t or len(t) <= 3:
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continue
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if best is None:
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best = t # 兜底:第一条有意义的文本
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if combined_p0.search(t):
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# 命中 P0 关键词,优先使用
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return _clean_summary(t)[:150]
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return _clean_summary(best or "")[:150]
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def generate_p0_alert_text(cluster_msgs, priority_info):
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root_sender = cluster_msgs[0][1]
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root_time = cluster_msgs[0][6]
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root_text = _pick_best_summary(cluster_msgs)
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return "\n".join([
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f"🚨 微信 P0 实时告警",
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f"",
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f"问题描述: {root_text}",
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f"报告人: {root_sender}",
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f"报告时间: {root_time}",
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f"判定依据: {priority_info.get('reasoning', 'P0')}",
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f"修复时限: {priority_info.get('deadline', '2小时内')}",
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])
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def dispatch_p0_alert(alert_text):
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import urllib.request
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token = get_tenant_token(cred_dir=DISPATCH_CRED_DIR)
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content_parts = []
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for line in alert_text.split("\n"):
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if line.strip():
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content_parts.append([{"tag": "text", "text": line + "\n"}])
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if P0_NOTIFY_USERS:
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at_line = [{"tag": "text", "text": "\n⚠️ 请关注: "}]
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for uid in P0_NOTIFY_USERS:
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at_line.append({"tag": "at", "user_id": uid})
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at_line.append({"tag": "text", "text": " "})
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content_parts.append(at_line)
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post_content = json.dumps({
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"zh_cn": {
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"title": "🚨 微信 P0 问题实时告警",
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"content": content_parts
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}
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}, ensure_ascii=False)
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body = json.dumps({
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"receive_id": DISPATCH_CHAT_ID,
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"msg_type": "post",
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"content": post_content
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}, ensure_ascii=False).encode()
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req = urllib.request.Request(
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"https://open.feishu.cn/open-apis/im/v1/messages?receive_id_type=chat_id",
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data=body,
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headers={"Authorization": f"Bearer {token}", "Content-Type": "application/json"},
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method="POST"
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)
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resp = urllib.request.urlopen(req, timeout=10)
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d = json.loads(resp.read())
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if d.get("code") == 0:
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return True
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else:
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print(f" ⚠️ 实时分发失败: {d.get('msg', '')[:100]}")
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return False
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def should_clear_state():
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now = datetime.now()
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return now.hour == 10 and now.minute <= 1
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def main():
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parser = argparse.ArgumentParser(description="微信 P0 问题实时检测与分发")
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parser.add_argument("--dry-run", action="store_true")
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parser.add_argument("--lookback-minutes", type=int, default=LOOKBACK_MINUTES)
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args = parser.parse_args()
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if should_clear_state():
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print("[P0-wechat] 10:00 清空去重状态")
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save_dispatched_state({})
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print("[P0-wechat] 全量分发时段,跳过实时检测")
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return
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print(f"[P0-wechat] 扫描最近 {args.lookback_minutes} 分钟微信消息...")
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lookback_start = (datetime.now() - timedelta(minutes=args.lookback_minutes)).strftime("%Y-%m-%d %H:%M:%S")
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now_str = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
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conn = pymysql.connect(
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host=MYSQL_HOST, port=MYSQL_PORT,
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user=MYSQL_USER, password=MYSQL_PASS,
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database=MYSQL_DB, charset="utf8mb4"
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)
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cursor = conn.cursor()
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cursor.execute("""
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SELECT svr_msg_id, sender_name, msg_type, content, media_url, refer_msg_svrid,
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DATE_FORMAT(msg_time, '%%Y-%%m-%%d %%H:%%i:%%s') as msg_time, msg_timestamp
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FROM wechat_group_message
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WHERE msg_time >= %s AND msg_time <= %s
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ORDER BY msg_time ASC
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""", (lookback_start, now_str))
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raw_rows = cursor.fetchall()
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conn.close()
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# 映射为统一元组格式 (message_id, sender_name, msg_type, content, media_url, quote_message_id, msg_time, msg_timestamp)
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rows = []
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for row in raw_rows:
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svr_id, sname, mtype, content, murl, ref_id, mtime, mts = row
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rows.append((
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str(svr_id) if svr_id else "",
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sname or "",
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mtype or "text",
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content or "",
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murl or "",
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str(ref_id) if ref_id else "",
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mtime or "",
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int(mts) if mts else 0,
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))
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print(f"[P0-wechat] 查询到 {len(rows)} 条微信消息")
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if len(rows) < 2:
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print("[P0-wechat] 消息不足,退出")
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return
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sorted_msgs, clusters, cluster_order = sort_threads(rows)
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print(f"[P0-wechat] 聚类完成:{len(clusters)} 个簇")
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state = load_dispatched_state()
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print(f"[P0-wechat] 已记录 {len(state)} 个已推送簇")
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new_p0_count = 0
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for cid in cluster_order:
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cmsgs = clusters[cid]
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is_p0, info = is_probably_p0(cmsgs)
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if not is_p0:
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continue
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sig = cluster_signature(cmsgs)
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if sig in state:
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print(f"[P0-wechat] 已推送过(精确匹配),跳过: sig={sig[:8]}...")
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continue
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# 内容语义去重
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fp = cluster_content_fingerprint(cmsgs)
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if is_duplicate_p0(fp, state):
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print(f"[P0-wechat] 已推送过(内容匹配),跳过: senders={fp['senders'][:2]}... hour={fp['hour']}")
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continue
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print(f"[P0-wechat] 🚨 发现新 P0! sig={sig[:8]}... {len(cmsgs)}条消息")
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if args.dry_run:
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alert = generate_p0_alert_text(cmsgs, info)
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print(f"[DRY-RUN] 将发送:\n{alert}")
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state[sig] = {"time": datetime.now().isoformat(), "fp": fp}
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new_p0_count += 1
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else:
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alert = generate_p0_alert_text(cmsgs, info)
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if dispatch_p0_alert(alert):
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print(f"[P0-wechat] ✅ P0 已实时推送")
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state[sig] = {"time": datetime.now().isoformat(), "fp": fp}
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new_p0_count += 1
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else:
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print(f"[P0-wechat] ❌ 推送失败")
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if new_p0_count > 0:
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save_dispatched_state(state)
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print(f"[P0-wechat] 共推送 {new_p0_count} 个新 P0")
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print("[P0-wechat] 完成")
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if __name__ == "__main__":
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main()
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