抽象json提取风格
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@@ -140,6 +140,12 @@ inclusion: manual
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- AI 调用应做好异常捕获和容错,单次失败不应影响整体流程
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- 长耗时 AI 调用考虑异步执行
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### AI 输出 JSON 解析
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- LLM 返回的 JSON 经常被 markdown 代码块(` ```json ... ``` `)包裹,**禁止**直接使用 LangChain 的 `JsonOutputParser`
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- 统一使用 `app.tool.json_helper.parse_llm_json` 解析 AI 输出的 JSON 文本
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- `parse_llm_json` 会自动剥离 markdown 代码块标记,并通过 `json_repair` 做容错修复
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- **不要**在各模块中自行编写 JSON 清洗/解析逻辑,统一复用 `parse_llm_json`
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## 代码格式规范
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### 紧凑风格
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@@ -64,6 +64,7 @@ offerpie_python_ai/
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│
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├─ tool/ # **工具层**(无状态、无业务依赖的通用工具)
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│ ├─ file_parser.py # 文件解析工具(PDF/Word/TXT → 纯文本,parse_to_text 入口方法)
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│ ├─ json_helper.py # AI 输出 JSON 解析工具(自动去除 markdown 代码块包裹 + json_repair 容错,parse_llm_json 入口方法)
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│ └─ snowflake.py # 雪花 ID 生成工具(next_id)
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│
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├─ schemas/ # **Schema 层**(Pydantic 请求/响应/缓存模型)
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@@ -84,7 +85,7 @@ offerpie_python_ai/
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| **ai** | AI 模型管理 + 业务 AI 能力 | `LLM` 枚举、`resume_extractor/`(简历并行提取)、`resume_diagnoser/`(简历诊断)、`skill_gap_analyzer/`(技能差距分析 + 定制简历优化 + Agent 原子化规划 + 单条记录修改/新增) |
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| **api** | REST API 路由定义 | `health.py`(健康检查)、`resume.py`(简历上传解析)、`resume_diagnose.py`(简历诊断)、`skill_gap.py`(技能差距分析 + 定制简历) |
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| **models** | SQLAlchemy ORM 模型,与 Java 端共享同一数据库 | `FuncPermission`、`UserFuncPermissionStock`、`UserFuncUsageLog`、`UserResume`、`UserResumeEducation`/`Work`/`Internship`/`Project`/`Competition`、`ResumeDiagnosisReport`、`ResumeDiagnosisIssue`、`Job`(只读) |
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| **tool** | 无状态通用工具,不依赖数据库/Redis/用户上下文 | `file_parser.py`(PDF/Word/TXT 文件解析为纯文本)、`snowflake.py`(雪花ID生成) |
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| **tool** | 无状态通用工具,不依赖数据库/Redis/用户上下文 | `file_parser.py`(PDF/Word/TXT 文件解析为纯文本)、`json_helper.py`(AI 输出 JSON 解析,去 markdown 代码块 + json_repair 容错)、`snowflake.py`(雪花ID生成) |
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| **services** | 业务逻辑实现 | `FuncPermissionService`(功能权限校验、扣减、回退)、`ResumeParseService`(简历文件解析→AI结构化→入库)、`ResumeDiagnoseService`(简历诊断→AI并行分析→评级→入库)、`SkillGapService`(技能差距分析→定制简历生成/查询/编辑/回滚→AI对话编辑(原子化操作:delete直接删/update按记录并发/add并发生成)) |
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## 3️⃣ 技术栈
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@@ -1,9 +1,6 @@
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"""简历诊断 AI 引擎:并行诊断 + 汇总评价"""
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import asyncio
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import re
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from json_repair import repair_json
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from langchain_core.output_parsers import StrOutputParser
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from langchain_core.prompts import ChatPromptTemplate
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@@ -11,13 +8,7 @@ from langchain_core.prompts import ChatPromptTemplate
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from app.ai.models import LLM
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from app.ai.resume_diagnoser.prompts import DIAGNOSE_MODULE_PROMPT, SUMMARY_PROMPT, POLISH_PROMPT
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from app.core.logger import log
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def _parse_json(text: str) -> dict:
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"""解析 AI 输出的 JSON,自动去除 markdown 代码块包裹,容错处理"""
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cleaned = re.sub(r"^```(?:json)?\s*\n?", "", text.strip())
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cleaned = re.sub(r"\n?```\s*$", "", cleaned)
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return repair_json(cleaned, return_objects=True)
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from app.tool.json_helper import parse_llm_json
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# 诊断链(StrOutputParser 拿原始文本,再手动解析 JSON,避免 markdown 代码块导致解析失败)
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@@ -92,7 +83,7 @@ async def polish_content(module_type: str, reference_content: list[dict] | str |
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}
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try:
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raw = await _polish_chain.ainvoke(inp)
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result = _parse_json(raw)
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result = parse_llm_json(raw)
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if isinstance(result, list):
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return [str(item) for item in result]
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return [str(result)]
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@@ -106,7 +97,7 @@ async def _safe_invoke(task: dict) -> dict:
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raw = ""
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try:
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raw = await _diagnose_chain.ainvoke(task)
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return _parse_json(raw)
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return parse_llm_json(raw)
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except Exception as e:
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log.warning(f"AI诊断[{task.get('module_type', '')}]失败: {e}\n原始输出: {raw[:500]}")
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return _empty_result()
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@@ -1,9 +1,7 @@
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"""简历并行提取:将完整简历文本拆分为5个AI任务并行提取"""
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import asyncio
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import re
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from json_repair import repair_json
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from langchain_core.output_parsers import StrOutputParser
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from langchain_core.prompts import ChatPromptTemplate
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@@ -13,13 +11,7 @@ from app.ai.resume_extractor.prompts import (
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PROJECT_PROMPT, COMPETITION_PROMPT,
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)
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from app.core.logger import log
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def _parse_json(text: str) -> dict:
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"""解析 AI 输出的 JSON,自动去除 markdown 代码块包裹,容错处理"""
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cleaned = re.sub(r"^```(?:json)?\s*\n?", "", text.strip())
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cleaned = re.sub(r"\n?```\s*$", "", cleaned)
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return repair_json(cleaned, return_objects=True)
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from app.tool.json_helper import parse_llm_json
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def _build_chain(prompt: str):
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@@ -65,7 +57,7 @@ async def _safe_invoke(chain, inp: dict, label: str):
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"""单个链调用,失败返回空"""
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try:
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raw = await chain.ainvoke(inp)
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return _parse_json(raw)
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return parse_llm_json(raw)
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except Exception as e:
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log.warning(f"AI提取[{label}]失败: {e}")
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return {} if "个人信息" in label else []
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@@ -5,9 +5,7 @@
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"""
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import asyncio
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import re
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from json_repair import repair_json
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from langchain_core.output_parsers import StrOutputParser
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from langchain_core.prompts import ChatPromptTemplate
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@@ -17,13 +15,7 @@ from app.ai.skill_gap_analyzer.prompts import (
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AGENT_PLAN_PROMPT, AGENT_MODULE_EDIT_PROMPT, AGENT_MODULE_ADD_PROMPT, MODULE_SCHEMAS,
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)
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from app.core.logger import log
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def _parse_json(text: str):
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"""解析 AI 输出的 JSON,自动去除 markdown 代码块包裹,容错处理"""
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cleaned = re.sub(r"^```(?:json)?\s*\n?", "", text.strip())
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cleaned = re.sub(r"\n?```\s*$", "", cleaned)
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return repair_json(cleaned, return_objects=True)
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from app.tool.json_helper import parse_llm_json
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# ===== 差距分析 =====
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@@ -39,7 +31,7 @@ async def analyze_skill_gap(skill_tags: list[str], resume_json: str) -> list[str
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"""分析技能差距,返回缺失技能列表"""
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try:
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raw = await _skill_gap_chain.ainvoke({"skill_tags": str(skill_tags), "resume_json": resume_json})
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result = _parse_json(raw)
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result = parse_llm_json(raw)
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if isinstance(result, list):
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return [s for s in result if isinstance(s, str) and s in skill_tags]
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return skill_tags # 解析异常降级:全部标记缺失
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@@ -85,7 +77,7 @@ async def optimize_module(job_title: str, job_description: str, module_data: str
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"job_title": job_title, "job_description": job_description or "",
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"original_module_data": module_data,
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})
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return _parse_json(raw)
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return parse_llm_json(raw)
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except Exception as e:
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log.warning(f"AI优化经历模块失败: {e}")
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return None
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@@ -109,7 +101,7 @@ async def plan_edit(job_title: str, job_description: str, resume_json: str,
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"resume_json": resume_json,
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"chat_history": chat_history, "instruction": instruction,
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})
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result = _parse_json(raw)
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result = parse_llm_json(raw)
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return result if isinstance(result, dict) else None
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except Exception as e:
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log.warning(f"AI规划失败: {e}")
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@@ -135,7 +127,7 @@ async def execute_record_edit(job_title: str, job_description: str, instruction:
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"instruction": instruction, "chat_history": chat_history,
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"module_schema": module_schema, "record_data": record_data,
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})
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return _parse_json(raw)
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return parse_llm_json(raw)
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except Exception as e:
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log.warning(f"AI单条记录修改失败: {e}")
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return None
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@@ -159,7 +151,7 @@ async def execute_record_add(job_title: str, job_description: str, instruction:
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"instruction": instruction, "chat_history": chat_history,
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"module_schema": module_schema,
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})
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result = _parse_json(raw)
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result = parse_llm_json(raw)
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return result if isinstance(result, dict) else None
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except Exception as e:
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log.warning(f"AI新增记录失败: {e}")
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@@ -0,0 +1,15 @@
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"""AI 输出 JSON 解析工具
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将 LLM 返回的可能带 markdown 代码块包裹的文本解析为 Python 对象。
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"""
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import re
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from json_repair import repair_json
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def parse_llm_json(text: str):
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"""解析 AI 输出的 JSON,自动去除 markdown 代码块包裹,容错处理"""
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cleaned = re.sub(r"^```(?:json)?\s*\n?", "", text.strip())
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cleaned = re.sub(r"\n?```\s*$", "", cleaned)
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return repair_json(cleaned, return_objects=True)
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