访谈与阶段 - 新增 app/agents/stage_constants.py:集中 CHAT_STAGES、章节分类/顺序、阶段到默认 memoir 类别等,与 MemoirState 默认槽位顺序对齐;减少散落在 prompts 内的重复常量。 - 新增 app/agents/chat/prompt_context.py:以 ChatPromptContext 汇总 guided 系统提示所需字段(阶段、槽位、轮次、人设、记忆证据、回复长度模式、背景声线、职业等),统一走 get_guided_conversation_prompt。 - 大幅收敛 app/agents/chat/prompts_conversation.py;调整 prompts.py、stage_prompts.py、stage_detection.py;同步 interview_agent、profile_agent、helpers 与 state_schema,使对话侧构造提示的方式一致、可测。 回忆录流水线 - memoir/prompts.py 删除已迁至 stage_constants / 独立模板的大段常量与图片占位相关逻辑;classification / extraction / fidelity / narrative agents 与 orchest(全量历史仍可用于计数,注入模型时按轮次与字符上限截断)、image_prompt_fallback_disabled。 - dependencies 增加 get_llm_provider_fast(LRU 缓存,可与默认共用密钥与 base_url)。 任务与编排 - memoir_tasks:prepare_batches 注入 llm_fast;开启独立快档模型时打结构化日志。 - chapter_cover_tasks、story_image_tasks:与图片 prompt / JSON 工具路径或策略变更对齐(import 与行为一致)。 - story_pipeline_sync 等小处同步。 其它核心 - langchain_llm、text_normalize 随上述调用链微调。 开发者体验 - .cursor/settings.json:启用 redis-development、postman 插件。 测试 - 新增 test_image_prompt_policy:覆盖「禁止回退」等图片 prompt 策略。 - 更新 test_interview_prompts、test_interview_reply_length、test_experience_regressions、test_json_and_memory_utils,匹配新常量位置、json_utils 与对话/长度行为。
93 lines
3.4 KiB
Python
93 lines
3.4 KiB
Python
"""从 transcript 块中抽取结构化事实(LLM + JSON)。"""
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from __future__ import annotations
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from typing import Any
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from app.core.langchain_llm import ainvoke_json_object, invoke_json_object
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from app.core.logging import get_logger
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from app.features.memory.llm_schemas import (
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FactsExtractionPayload,
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facts_payload_to_dicts,
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parse_json_payload,
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)
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logger = get_logger(__name__)
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def _max_transcript_chars() -> int:
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from app.core.config import settings
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return settings.memory_enrichment_max_chars
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def extract_facts_from_transcript_sync(llm: Any, numbered_blocks: str) -> list[dict]:
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"""同步:带 chunk_id 标记的文本 → 事实列表。"""
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if not llm or not (numbered_blocks or "").strip():
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return []
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text = numbered_blocks.strip()[: _max_transcript_chars()]
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prompt = (
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"你是回忆录记忆抽取助手。阅读下列带 [chunk_id=...] 的文本块,抽取可核查的事实。\n"
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"每个事实含 fact_type: person|event|relation|place|milestone;subject;predicate;"
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"object_json(可为字符串或对象);confidence 0..1;source_chunk_id 必须等于某段的 chunk id。\n"
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'只输出 JSON:{"facts":[...]},无事实则 {"facts":[]}。\n\n'
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f"{text}"
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)
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try:
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raw = invoke_json_object(
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llm,
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prompt,
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max_tokens=4096,
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agent="memory.extract_facts_sync",
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)
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parsed = parse_json_payload(raw, FactsExtractionPayload)
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if parsed is None:
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return []
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return facts_payload_to_dicts(parsed)
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except (TypeError, ValueError) as e:
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logger.warning("extract_facts_from_transcript_sync 解析失败: {}", e)
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return []
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async def extract_facts_from_transcript_async(
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llm: Any, numbered_blocks: str
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) -> list[dict]:
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"""异步版。"""
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if not llm or not (numbered_blocks or "").strip():
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return []
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text = numbered_blocks.strip()[: _max_transcript_chars()]
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prompt = (
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"你是回忆录记忆抽取助手。阅读下列带 [chunk_id=...] 的文本块,抽取可核查的事实。\n"
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"每个事实含 fact_type: person|event|relation|place|milestone;subject;predicate;"
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"object_json;confidence 0..1;source_chunk_id 必须等于某段的 chunk id。\n"
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'只输出 JSON:{"facts":[...]},无事实则 {"facts":[]}。\n\n'
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f"{text}"
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)
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try:
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raw = await ainvoke_json_object(
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llm,
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prompt,
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max_tokens=4096,
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agent="memory.extract_facts_async",
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)
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parsed = parse_json_payload(raw, FactsExtractionPayload)
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if parsed is None:
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return []
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return facts_payload_to_dicts(parsed)
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except (TypeError, ValueError) as e:
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logger.warning("extract_facts_from_transcript_async 解析失败: {}", e)
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return []
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async def extract_facts(chunk_text: str, *, user_id: str) -> list[dict]:
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"""兼容旧接口:单块文本(无 chunk id 时传空 source_chunk_id)。"""
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from app.core.dependencies import get_llm_provider_fast
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llm = get_llm_provider_fast().langchain_llm
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blocks = f"[chunk_id=null]\n{chunk_text}"
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facts = await extract_facts_from_transcript_async(llm, blocks)
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for f in facts:
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if f.get("source_chunk_id") in (None, "null", ""):
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f["source_chunk_id"] = None
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return facts
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