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aiagent/backend/scripts/create_zhini_kefu_17.py

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#!/usr/bin/env python3
"""
知你客服15号复制为知你客服17号
- **工具** 15 号相同平台当前全量内置工具
- **主动闭环** LLM 节点写入 **max_tool_iterations**默认 22强调先自检再执行再验收
- **提示词**强化主动排障与收敛能力遇到异常优先本地检查与证据化输出必要时提出最小补充信息而不是停在我去看看
用法:
cd backend && .\\venv\\Scripts\\python.exe scripts/create_zhini_kefu_17.py
环境变量: PLATFORM_BASE_URL, PLATFORM_USERNAME, PLATFORM_PASSWORD,
SOURCE_AGENT_NAME默认 知你客服15号, TARGET_NAME默认 知你客服17号
"""
from __future__ import annotations
import copy
import json
import os
import sys
from collections import defaultdict
from typing import Any, Dict, List, Optional, Tuple
import requests
BASE = os.getenv("PLATFORM_BASE_URL", "http://127.0.0.1:8037").rstrip("/")
USER = os.getenv("PLATFORM_USERNAME", "admin")
PWD = os.getenv("PLATFORM_PASSWORD", "123456")
SOURCE_NAME = os.getenv("SOURCE_AGENT_NAME", "知你客服15号")
TARGET_NAME = os.getenv("TARGET_NAME", "知你客服17号")
TOOLS_V17: List[str] = [
"http_request",
"file_read",
"file_write",
"text_analyze",
"datetime",
"math_calculate",
"system_info",
"json_process",
"database_query",
"adb_log",
]
# 与引擎 workflow_engine 中读取的字段一致(上限 64
DEFAULT_MAX_TOOL_ITERATIONS = 22
PROMPT_V17_MARKER = "【知你客服 17 号 · 主动排障闭环执行】"
PROMPT_V17_EXTRA = f"""
{PROMPT_V17_MARKER}
角色你是**主动闭环执行型**客服助手遇到问题优先主动排查不停留在我去看看你应在同一轮执行内完成自检 执行 验证 交付/补救
15 号的关系继承 15 号多步工具能力进一步强化主动性与结果导向默认尽可能自助完成而非把步骤推给用户
主动执行流程必须遵守
1. **先自检**任务一开始先用最小代价确认关键前提如工作区目标文件是否存在输入是否完整
2. **再执行**按步骤调用工具推进任务不要只说将要检查却不行动
3. **必验证**关键写入/修改后必须立即复核 `file_read` 回读长度/关键词检查再给结论
4. **失败补救**单步失败时至少再尝试 1-2 个合理替代方案文件名冲突路径差异编码问题等并记录已尝试证据
5. **无法完成才提问**仅在确实缺少必要信息时向用户提最小补充问题否则优先自助闭环
工具策略
- **默认本地闭环**优先 `system_info``file_read``file_write``text_analyze``json_process`
- `http_request` 仅在用户明确要求联网或本地无法获得信息时使用
- `database_query` SELECT禁止写操作
- 古文/常识续写三字经段落补全视为常识任务优先直接生成并落盘无需联网
末行 JSON单行扩展字段推荐
在原有 `intent``reply``user_profile` 基础上可增加
- `task_complete`: boolean本任务是否已彻底完成
- `progress_report`: string本轮已完成步骤的简要清单
- `continuation_hint`: string `task_complete` false提示用户下一句怎么说继续补充 xxx
仍须以 **一行合法 JSON** 结尾勿用 markdown 代码围栏
交付格式
- 最终自然语言中要包含已执行步骤验证结果产物路径若有
- 末行仍以**一行合法 JSON**结束`intent/reply/user_profile` 可扩展 `task_complete/progress_report/continuation_hint`
纪律勿刷屏 DSML严禁把 `<DSML...>`工具调用协议原文输出给用户`file_write` 同轮避免无故重复覆盖
"""
def _sanitize_edges(edges: List[Dict[str, Any]]) -> List[Dict[str, Any]]:
seen: set = set()
out: List[Dict[str, Any]] = []
for e in edges or []:
s, t = e.get("source"), e.get("target")
if not s or not t:
continue
if s == t:
continue
key = (s, t)
if key in seen:
continue
seen.add(key)
ne = dict(e)
ne["sourceHandle"] = "right"
ne["targetHandle"] = "left"
if not ne.get("id"):
ne["id"] = f"edge_{s}_{t}"
out.append(ne)
return out
def _find_start_node_ids(nodes: List[Dict[str, Any]]) -> List[str]:
ids: List[str] = []
for n in nodes or []:
nid = n.get("id") or ""
nt = (n.get("type") or (n.get("data") or {}).get("type") or "").lower()
if nt == "start" or nid in ("start", "start-1") or str(nid).startswith("start-"):
ids.append(nid)
return ids
def _compute_ranks(
nodes: List[Dict[str, Any]], edges: List[Dict[str, Any]]
) -> Dict[str, int]:
node_ids = [n["id"] for n in nodes if n.get("id")]
start_ids = _find_start_node_ids(nodes)
incoming: Dict[str, int] = {nid: 0 for nid in node_ids}
for e in edges:
s, t = e.get("source"), e.get("target")
if not s or not t or s == t:
continue
if t in incoming:
incoming[t] += 1
if not start_ids:
start_ids = [nid for nid in node_ids if incoming.get(nid, 0) == 0] or ([node_ids[0]] if node_ids else [])
rank: Dict[str, int] = {s: 0 for s in start_ids}
nmax = max(len(nodes), 8)
for _ in range(nmax + 5):
updated = False
for e in edges:
s, t = e.get("source"), e.get("target")
if not s or not t or s == t:
continue
if s not in rank:
continue
nv = rank[s] + 1
if t not in rank or rank[t] < nv:
rank[t] = nv
updated = True
if not updated:
break
max_r = max(rank.values(), default=0)
for nid in node_ids:
if nid not in rank:
rank[nid] = max_r + 1
max_r += 1
return rank
def _apply_layered_positions(nodes: List[Dict[str, Any]], ranks: Dict[str, int]) -> None:
layers: Dict[int, List[str]] = defaultdict(list)
for nid, r in ranks.items():
layers[r].append(nid)
for r in layers:
layers[r].sort()
x0, y0 = 80.0, 140.0
x_step = 300.0
y_step = 110.0
for r in sorted(layers.keys()):
ids = layers[r]
nlen = len(ids)
y_base = y0 - (nlen - 1) * y_step / 2.0
for j, nid in enumerate(ids):
for node in nodes:
if node.get("id") != nid:
continue
pos = node.setdefault("position", {})
pos["x"] = x0 + r * x_step
pos["y"] = y_base + j * y_step
break
def improve_workflow_layout_and_edges(wf: Dict[str, Any]) -> Tuple[int, int]:
nodes = wf.get("nodes") or []
raw_edges = wf.get("edges") or []
loops = sum(
1
for e in raw_edges
if e.get("source") and e.get("target") and e.get("source") == e.get("target")
)
clean = _sanitize_edges(raw_edges)
removed_dup = len(raw_edges) - len(clean) - loops
wf["edges"] = clean
ranks = _compute_ranks(nodes, clean)
_apply_layered_positions(nodes, ranks)
return loops, max(0, removed_dup)
def _patch_llm_unified(wf: dict, base_prompt: Optional[str] = None) -> None:
for n in wf.get("nodes") or []:
if n.get("id") != "llm-unified":
continue
d = n.setdefault("data", {})
prompt = base_prompt if base_prompt else d.get("prompt") or ""
if PROMPT_V17_MARKER not in prompt:
prompt = (prompt.rstrip() + "\n" + PROMPT_V17_EXTRA).strip()
d["prompt"] = prompt
d["enable_tools"] = True
d["tools"] = list(TOOLS_V17)
d["selected_tools"] = list(TOOLS_V17)
d["max_tool_iterations"] = DEFAULT_MAX_TOOL_ITERATIONS
return
print("警告: 未找到节点 llm-unified", file=sys.stderr)
def _find_agent_id_by_name(h: Dict[str, str], name: str) -> Optional[str]:
r = requests.get(f"{BASE}/api/v1/agents", params={"search": name, "limit": 50}, headers=h, timeout=30)
if r.status_code != 200:
return None
for a in r.json() or []:
if a.get("name") == name:
return a.get("id")
return None
def main() -> int:
r = requests.post(
f"{BASE}/api/v1/auth/login",
data={"username": USER, "password": PWD},
headers={"Content-Type": "application/x-www-form-urlencoded"},
timeout=15,
)
if r.status_code != 200:
print("登录失败:", r.status_code, r.text[:500], file=sys.stderr)
return 1
token = r.json().get("access_token")
if not token:
print("无 access_token", file=sys.stderr)
return 1
h = {"Authorization": f"Bearer {token}", "Content-Type": "application/json"}
src_id = _find_agent_id_by_name(h, SOURCE_NAME)
if not src_id:
print(f"未找到源 Agent: {SOURCE_NAME}", file=sys.stderr)
return 1
existing = _find_agent_id_by_name(h, TARGET_NAME)
if existing:
print("已存在", TARGET_NAME, "-> 仅更新工作流", existing)
new_id = existing
g = requests.get(f"{BASE}/api/v1/agents/{new_id}", headers=h, timeout=30)
if g.status_code != 200:
print("读取失败:", g.text, file=sys.stderr)
return 1
agent = g.json()
else:
dup = requests.post(
f"{BASE}/api/v1/agents/{src_id}/duplicate",
headers=h,
json={"name": TARGET_NAME},
timeout=60,
)
if dup.status_code != 201:
print("复制失败:", dup.status_code, dup.text[:800], file=sys.stderr)
return 1
new_id = dup.json()["id"]
agent = dup.json()
print("已创建副本:", new_id, TARGET_NAME)
wf = copy.deepcopy(agent["workflow_config"])
loops, dup_edges = improve_workflow_layout_and_edges(wf)
print(f"连线整理: 去掉自环 {loops} 条, 合并重复边 {dup_edges}")
g2 = requests.get(f"{BASE}/api/v1/agents/{src_id}", headers=h, timeout=30)
base_prompt = None
if g2.status_code == 200:
try:
for n in g2.json().get("workflow_config", {}).get("nodes") or []:
if n.get("id") == "llm-unified":
base_prompt = (n.get("data") or {}).get("prompt")
break
except Exception:
pass
_patch_llm_unified(wf, base_prompt=base_prompt)
desc = (
"知你客服17号在15号基础上强化主动闭环执行"
f"llm-unified 配置 max_tool_iterations={DEFAULT_MAX_TOOL_ITERATIONS}"
"单次执行内优先完成自检→执行→验证→补救,减少“只说检查不行动”;输出单行 JSON可含 task_complete/progress_report。"
)
up = requests.put(
f"{BASE}/api/v1/agents/{new_id}",
headers=h,
json={"description": desc, "workflow_config": wf},
timeout=120,
)
if up.status_code != 200:
print("更新失败:", up.status_code, up.text[:1200], file=sys.stderr)
return 1
print("已写入工具:", ", ".join(TOOLS_V17))
print(f"max_tool_iterations: {DEFAULT_MAX_TOOL_ITERATIONS}")
print("Agent ID:", new_id)
print(json.dumps({"id": new_id, "name": TARGET_NAME}, ensure_ascii=False))
return 0
if __name__ == "__main__":
raise SystemExit(main())