本次 squash merge 将 codex-story-first-image-intent 的整体改动合入 development,核心内容包括: 1. 后端数据与迁移:新增 stories、story_versions、story_image_intents、chapter_cover_intents、assets 等模型与 Alembic 迁移,建立 story-first、markdown-first、asset-first 的主数据链路。 2. 生成与任务链:引入 StoryBuilderOrchestrator、ChapterComposerOrchestrator、story_image_tasks、chapter_cover_tasks,图片生成从正文占位符改为结构化 intent -> asset -> markdown 回填。 3. 并发与一致性:为 story/chapter intent 增加 claim_token、claimed_at、attempt_count,采用数据库原子 claim 为主、Redis 锁为辅,避免重复生成、锁误删和 processing 卡死。 4. Memoir 读写路径:章节 canonical_markdown 成为正文真源,列表/详情接口补齐 markdown、cover_asset、word_count 等字段,PDF 与 asset 解析链路同步升级。 5. Memory / Retrieval:扩展 transcript ingest、chunking、evidence 检索与 story 聚合基础设施,为后续 story-first RAG 与多 agent 编排提供底座。 6. App 端体验:章节页继续走 MarkdownRenderer 阅读链,同时吸收 fix3-19 的跨平台 UI glitch 修复;更新对话页、首页、文案资源与章节列表映射逻辑。 7. 测试与文档:补充 asset resolver、story image task、章节封面派发、markdown 映射等回归测试,并加入图片占位符退役设计文档。
110 lines
3.4 KiB
Python
110 lines
3.4 KiB
Python
import json
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import re
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from typing import Any
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from app.features.memoir.asset_resolver import strip_legacy_image_placeholders
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from .json_payload import extract_json_payload
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from .schema import IMAGE_STATUS_PENDING
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PLACEHOLDER_RE = re.compile(
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r"\{\{\{\{IMAGE:(.*?)\}\}\}\}|\{\{IMAGE:(.*?)\}\}",
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re.DOTALL,
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)
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def parse_image_placeholders(content: str, max_images: int) -> list[dict[str, Any]]:
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"""离线迁移/调试用:解析正文中的 IMAGE 占位符。"""
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items: list[dict[str, Any]] = []
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for match in PLACEHOLDER_RE.finditer(content or ""):
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description = (match.group(1) or match.group(2) or "").strip()
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if not description:
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continue
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items.append(
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{
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"index": len(items),
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"description": description,
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"placeholder": match.group(0),
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"start_offset": match.start(),
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}
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)
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if max_images is not None and len(items) >= max_images:
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break
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return items
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def build_initial_image_assets(
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placeholders: list[dict[str, Any]],
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provider: str,
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style: str,
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size: str,
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now_iso: str,
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) -> list[dict[str, Any]]:
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return [
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{
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"index": item["index"],
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"placeholder": item["placeholder"],
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"description": item["description"],
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"prompt": None,
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"url": None,
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"status": IMAGE_STATUS_PENDING,
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"provider": provider,
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"style": style,
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"size": size,
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"error": None,
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"created_at": now_iso,
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"updated_at": now_iso,
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}
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for item in placeholders
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]
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def parse_narrative_json(raw: str) -> list[dict[str, Any]]:
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"""
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解析 LLM 输出的 JSON 叙事(paragraphs)。
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不根据 image_description 生成配图占位;插图由 story/chapter 结构化流程单独处理。
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"""
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if not raw or not str(raw).strip():
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return []
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try:
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payload = extract_json_payload(raw)
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data = json.loads(payload)
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paragraphs = data.get("paragraphs") or []
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if not isinstance(paragraphs, list):
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return []
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except (json.JSONDecodeError, TypeError, AttributeError):
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return []
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result: list[dict[str, Any]] = []
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for p in paragraphs:
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if not isinstance(p, dict):
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continue
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content = (p.get("content") or "").strip()
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if content:
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result.append({"content": content, "placeholder_info": None})
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return result
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def split_plain_narrative_into_sections(narrative: str) -> list[dict[str, Any]]:
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"""非 JSON 叙事:去掉遗留占位符后按空行拆段,不产生段落配图。"""
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text = strip_legacy_image_placeholders(narrative or "")
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if not text.strip():
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return []
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parts = [p.strip() for p in text.split("\n\n") if p.strip()]
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return [{"content": p, "placeholder_info": None} for p in parts]
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def parse_narrative_to_sections(narrative: str) -> list[dict[str, Any]]:
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"""
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将 narrative 解析为 sections。
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JSON(paragraphs)走 parse_narrative_json;否则剥离占位符后按段拆分。
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"""
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if not narrative or not str(narrative).strip():
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return []
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stripped = narrative.strip()
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if stripped.startswith("{") and "paragraphs" in stripped:
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segments = parse_narrative_json(narrative)
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if segments:
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return segments
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return split_plain_narrative_into_sections(narrative)
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