107 lines
4.0 KiB
Python
107 lines
4.0 KiB
Python
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#!/usr/bin/env python3
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"""
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从「知你客服6号」复制为「知你客服7号」,并更新 LLM 提示(强化姓名与 user_profile 记忆说明)。
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需本地平台已启动(默认 http://127.0.0.1:8037),账号 admin/123456。
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用法:
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cd backend && ..\\venv\\Scripts\\python.exe scripts/create_zhini_kefu_7.py
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或: python scripts/create_zhini_kefu_7.py
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"""
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from __future__ import annotations
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import json
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import os
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import sys
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import requests
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BASE = os.getenv("PLATFORM_BASE_URL", "http://127.0.0.1:8037").rstrip("/")
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SOURCE_AGENT_ID = os.getenv("ZHINI_6_AGENT_ID", "2acc84d5-814b-4d61-9703-94a4b117375f")
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USER = os.getenv("PLATFORM_USERNAME", "admin")
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PWD = os.getenv("PLATFORM_PASSWORD", "123456")
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NEW_NAME = "知你客服7号"
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NEW_DESC = (
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"在知你客服6号工作流基础上,配合引擎修复多轮记忆:"
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"对话历史写入真实助手回复、合并 user_profile(含姓名);"
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"LLM 提示词强调用户姓名与 user_profile 的维护。"
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)
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LLM_PROMPT = """你是客服助手。根据「用户当前输入」「已知用户信息」「相关历史(检索)」和「最近几轮」完成:
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1)判断意图;
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2)生成一句自然、有帮助的回复;
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3)【强制】只要用户说出或暗示自己的姓名、昵称,必须在 user_profile 里用字段 name 保存,例如用户说「我叫王小明」则 JSON 必须包含 "user_profile":{"name":"王小明"}(若已有其它字段则合并,不要丢字段);
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4)若用户问「我叫什么」「你还记得我名字吗」等,必须根据「已知用户信息」里的 user_profile.name 与对话历史回答;若已有 name 则禁止说「还不知道」。
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只输出一行合法 JSON,不要 markdown。格式示例:
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{"intent":"greeting","reply":"你好王小明!","user_profile":{"name":"王小明"}}
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用户输入:{{user_input}}
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已知用户信息:{{memory.user_profile}}
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相关历史(检索到的):{{memory.relevant_from_retrieval}}
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最近几轮:{{memory.recent_turns}}
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要求:reply 简洁自然,200 字以内;user_profile 为对象,至少包含 name(当用户自我介绍时)。"""
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def main() -> int:
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r = requests.post(
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f"{BASE}/api/v1/auth/login",
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data={"username": USER, "password": PWD},
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headers={"Content-Type": "application/x-www-form-urlencoded"},
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timeout=15,
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)
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if r.status_code != 200:
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print("登录失败:", r.status_code, r.text[:500], file=sys.stderr)
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return 1
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token = r.json().get("access_token")
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if not token:
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print("无 access_token", file=sys.stderr)
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return 1
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h = {"Authorization": f"Bearer {token}", "Content-Type": "application/json"}
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dup = requests.post(
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f"{BASE}/api/v1/agents/{SOURCE_AGENT_ID}/duplicate",
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headers=h,
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json={"name": NEW_NAME},
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timeout=30,
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)
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if dup.status_code != 201:
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print("复制失败:", dup.status_code, dup.text[:800], file=sys.stderr)
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return 1
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new_id = dup.json()["id"]
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print("已创建副本:", new_id, NEW_NAME)
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g = requests.get(f"{BASE}/api/v1/agents/{new_id}", headers=h, timeout=30)
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if g.status_code != 200:
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print("读取 Agent 失败:", g.text, file=sys.stderr)
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return 1
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agent = g.json()
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wf = agent["workflow_config"]
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nodes = wf.get("nodes") or []
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for n in nodes:
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if n.get("id") == "llm-unified":
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n.setdefault("data", {})["prompt"] = LLM_PROMPT
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break
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up = requests.put(
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f"{BASE}/api/v1/agents/{new_id}",
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headers=h,
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json={
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"description": NEW_DESC,
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"workflow_config": wf,
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},
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timeout=60,
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)
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if up.status_code != 200:
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print("更新失败:", up.status_code, up.text[:800], file=sys.stderr)
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return 1
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print("已更新描述与 llm-unified 提示词")
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print("Agent ID:", new_id)
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print(json.dumps({"id": new_id, "name": NEW_NAME}, ensure_ascii=False))
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return 0
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if __name__ == "__main__":
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raise SystemExit(main())
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