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"""求职助手 Agent 对话 AI 引擎
构造 prompt + 调 LLM + 解析返回。
依赖:LLM 枚举、job_agent/prompts、parse_llm_json
"""
from app.ai.job_agent.prompts import SYSTEM_PROMPT
from app.ai.model_config import JobAgentModel
from app.core.logger import log
from app.tool.json_helper import parse_llm_json
async def agent_chat(resume_text: str, message: str, history: list[dict],
job_categories: list[str], regions: list[str],
industries: list[str]) -> dict:
"""求职助手对话
1. 构造 system prompt 2. 拼 messages 3. 调 LLM 4. 解析返回
"""
# 1. 构造 system prompt
system_content = SYSTEM_PROMPT.format(
resume_text=resume_text,
job_categories="".join(job_categories) if job_categories else "未设置",
regions="".join(regions) if regions else "未设置",
industries="".join(industries) if industries else "未设置",
)
# 2. 拼 messages
messages = [("system", system_content)]
for msg in history:
messages.append((msg["role"], msg["content"]))
messages.append(("human", message))
# 3. 调 LLM
try:
result = await JobAgentModel.CHAT.ainvoke(messages)
raw = result.content
except Exception as e:
log.error(f"求职助手AI调用失败: {e}")
return {"message": "抱歉,我暂时无法回复,请稍后再试。", "tool": None, "toolParams": None}
# 4. 解析返回
try:
parsed = parse_llm_json(raw)
return {
"message": parsed.get("message", ""),
"tool": parsed.get("tool"),
"toolParams": parsed.get("toolParams"),
}
except Exception as e:
log.warning(f"求职助手AI返回解析失败, raw={raw}, error={e}")
return {"message": raw.strip() if raw else "抱歉,我暂时无法回复。", "tool": None, "toolParams": None}