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MuMuAINovel/backend/app/api/chapters.py
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"""章节管理API"""
from fastapi import APIRouter, Depends, HTTPException, Request, Query, BackgroundTasks
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from sqlalchemy.ext.asyncio import AsyncSession
from sqlalchemy import select, func
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from sqlalchemy.orm import selectinload
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import json
import asyncio
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from typing import Optional
from datetime import datetime
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from asyncio import Queue, Lock
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from app.database import get_db
from app.api.common import verify_project_access
from app.services.chapter_context_service import (
OneToManyContextBuilder,
OneToOneContextBuilder
)
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from app.models.chapter import Chapter
from app.models.project import Project
from app.models.outline import Outline
from app.models.character import Character
from app.models.career import Career, CharacterCareer
from app.models.relationship import CharacterRelationship, Organization, OrganizationMember
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from app.models.generation_history import GenerationHistory
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from app.models.writing_style import WritingStyle
from app.models.analysis_task import AnalysisTask
from app.models.memory import PlotAnalysis, StoryMemory
from app.models.batch_generation_task import BatchGenerationTask
from app.models.regeneration_task import RegenerationTask
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from app.schemas.chapter import (
ChapterCreate,
ChapterUpdate,
ChapterResponse,
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ChapterListResponse,
ChapterGenerateRequest,
BatchGenerateRequest,
BatchGenerateResponse,
BatchGenerateStatusResponse,
ExpansionPlanUpdate,
PartialRegenerateRequest
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)
from app.schemas.regeneration import (
ChapterRegenerateRequest,
RegenerationTaskResponse,
RegenerationTaskStatus
)
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from app.services.ai_service import AIService
from app.services.prompt_service import prompt_service, PromptService, WritingStyleManager
from app.services.plot_analyzer import PlotAnalyzer
from app.services.memory_service import memory_service
from app.services.foreshadow_service import foreshadow_service
from app.services.chapter_regenerator import ChapterRegenerator
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from app.logger import get_logger
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from app.api.settings import get_user_ai_service
from app.utils.sse_response import SSEResponse, create_sse_response
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router = APIRouter(prefix="/chapters", tags=["章节管理"])
logger = get_logger(__name__)
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# 全局数据库写入锁(每个用户一个锁,用于保护SQLite写入操作)
db_write_locks: dict[str, Lock] = {}
async def get_db_write_lock(user_id: str) -> Lock:
"""获取或创建用户的数据库写入锁"""
if user_id not in db_write_locks:
db_write_locks[user_id] = Lock()
logger.debug(f"🔒 为用户 {user_id} 创建数据库写入锁")
return db_write_locks[user_id]
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@router.post("", response_model=ChapterResponse, summary="创建章节")
async def create_chapter(
chapter: ChapterCreate,
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request: Request,
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db: AsyncSession = Depends(get_db)
):
"""创建新的章节"""
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# 验证用户权限和项目是否存在
user_id = getattr(request.state, 'user_id', None)
project = await verify_project_access(chapter.project_id, user_id, db)
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# 计算字数(处理content可能为None的情况)
word_count = len(chapter.content) if chapter.content else 0
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db_chapter = Chapter(
**chapter.model_dump(),
word_count=word_count
)
db.add(db_chapter)
# 更新项目的当前字数
project.current_words = project.current_words + word_count
await db.commit()
await db.refresh(db_chapter)
return db_chapter
@router.get("/project/{project_id}", response_model=ChapterListResponse, summary="获取项目的所有章节")
async def get_project_chapters(
project_id: str,
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request: Request,
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db: AsyncSession = Depends(get_db)
):
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"""获取指定项目的所有章节(带大纲信息)"""
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(project_id, user_id, db)
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# 获取总数
count_result = await db.execute(
select(func.count(Chapter.id)).where(Chapter.project_id == project_id)
)
total = count_result.scalar_one()
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# 获取章节列表,同时加载关联的大纲信息
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result = await db.execute(
select(Chapter)
.where(Chapter.project_id == project_id)
.order_by(Chapter.chapter_number)
)
chapters = result.scalars().all()
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# 获取所有大纲信息(用于填充outline_title
outline_ids = [ch.outline_id for ch in chapters if ch.outline_id]
outlines_map = {}
if outline_ids:
outlines_result = await db.execute(
select(Outline).where(Outline.id.in_(outline_ids))
)
outlines_map = {o.id: o for o in outlines_result.scalars().all()}
# 为所有章节添加大纲信息(统一处理)
chapters_with_outline = []
for chapter in chapters:
chapter_dict = {
"id": chapter.id,
"project_id": chapter.project_id,
"chapter_number": chapter.chapter_number,
"title": chapter.title,
"content": chapter.content,
"summary": chapter.summary,
"word_count": chapter.word_count,
"status": chapter.status,
"outline_id": chapter.outline_id,
"sub_index": chapter.sub_index,
"expansion_plan": chapter.expansion_plan,
"created_at": chapter.created_at,
"updated_at": chapter.updated_at,
}
# 添加大纲信息
if chapter.outline_id and chapter.outline_id in outlines_map:
outline = outlines_map[chapter.outline_id]
chapter_dict["outline_title"] = outline.title
chapter_dict["outline_order"] = outline.order_index
else:
chapter_dict["outline_title"] = None
chapter_dict["outline_order"] = None
chapters_with_outline.append(chapter_dict)
return ChapterListResponse(total=total, items=chapters_with_outline)
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@router.get("/{chapter_id}", response_model=ChapterResponse, summary="获取章节详情")
async def get_chapter(
chapter_id: str,
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request: Request,
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db: AsyncSession = Depends(get_db)
):
"""根据ID获取章节详情"""
result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter.project_id, user_id, db)
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return chapter
@router.get("/{chapter_id}/navigation", summary="获取章节导航信息")
async def get_chapter_navigation(
chapter_id: str,
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request: Request,
db: AsyncSession = Depends(get_db)
):
"""
获取章节的导航信息(上一章/下一章)
用于章节阅读器的翻页功能
"""
# 获取当前章节
result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
current_chapter = result.scalar_one_or_none()
if not current_chapter:
raise HTTPException(status_code=404, detail="章节不存在")
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(current_chapter.project_id, user_id, db)
# 获取上一章
prev_result = await db.execute(
select(Chapter)
.where(Chapter.project_id == current_chapter.project_id)
.where(Chapter.chapter_number < current_chapter.chapter_number)
.order_by(Chapter.chapter_number.desc())
.limit(1)
)
prev_chapter = prev_result.scalar_one_or_none()
# 获取下一章
next_result = await db.execute(
select(Chapter)
.where(Chapter.project_id == current_chapter.project_id)
.where(Chapter.chapter_number > current_chapter.chapter_number)
.order_by(Chapter.chapter_number.asc())
.limit(1)
)
next_chapter = next_result.scalar_one_or_none()
return {
"current": {
"id": current_chapter.id,
"chapter_number": current_chapter.chapter_number,
"title": current_chapter.title
},
"previous": {
"id": prev_chapter.id,
"chapter_number": prev_chapter.chapter_number,
"title": prev_chapter.title
} if prev_chapter else None,
"next": {
"id": next_chapter.id,
"chapter_number": next_chapter.chapter_number,
"title": next_chapter.title
} if next_chapter else None
}
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@router.put("/{chapter_id}", response_model=ChapterResponse, summary="更新章节")
async def update_chapter(
chapter_id: str,
chapter_update: ChapterUpdate,
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request: Request,
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db: AsyncSession = Depends(get_db)
):
"""更新章节信息"""
result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter.project_id, user_id, db)
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# 记录旧字数
old_word_count = chapter.word_count or 0
# 更新字段
update_data = chapter_update.model_dump(exclude_unset=True)
for field, value in update_data.items():
setattr(chapter, field, value)
# 如果内容更新了,重新计算字数(包括清空内容的情况)
if "content" in update_data:
new_word_count = len(chapter.content) if chapter.content else 0
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chapter.word_count = new_word_count
# 更新项目字数
result = await db.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = result.scalar_one_or_none()
if project:
project.current_words = project.current_words - old_word_count + new_word_count
# 如果内容被清空,清理相关数据
if not chapter.content or chapter.content.strip() == "":
chapter.status = "draft"
# 清理分析任务
analysis_tasks_result = await db.execute(
select(AnalysisTask).where(AnalysisTask.chapter_id == chapter_id)
)
analysis_tasks = analysis_tasks_result.scalars().all()
for task in analysis_tasks:
await db.delete(task)
# 清理分析结果
plot_analysis_result = await db.execute(
select(PlotAnalysis).where(PlotAnalysis.chapter_id == chapter_id)
)
plot_analyses = plot_analysis_result.scalars().all()
for analysis in plot_analyses:
await db.delete(analysis)
# 清理故事记忆(关系数据库)
story_memories_result = await db.execute(
select(StoryMemory).where(StoryMemory.chapter_id == chapter_id)
)
story_memories = story_memories_result.scalars().all()
for memory in story_memories:
await db.delete(memory)
# 清理向量数据库中的记忆数据
try:
await memory_service.delete_chapter_memories(
user_id=user_id,
project_id=chapter.project_id,
chapter_id=chapter_id
)
logger.info(f"✅ 已清理章节 {chapter_id[:8]} 的向量记忆数据")
except Exception as e:
logger.warning(f"⚠️ 清理向量记忆数据失败: {str(e)}")
# 🔮 清理章节相关的分析伏笔数据
try:
foreshadow_result = await foreshadow_service.delete_chapter_foreshadows(
db=db,
project_id=chapter.project_id,
chapter_id=chapter_id,
only_analysis_source=True # 只删除分析来源的伏笔,保留手动创建的
)
if foreshadow_result['deleted_count'] > 0:
logger.info(f"🔮 已清理章节 {chapter_id[:8]}{foreshadow_result['deleted_count']} 个伏笔数据")
except Exception as e:
logger.warning(f"⚠️ 清理伏笔数据失败: {str(e)}")
logger.info(f"🗑️ 章节 {chapter_id[:8]} 内容已清空,已清理分析、记忆和伏笔数据")
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await db.commit()
await db.refresh(chapter)
chapter_dict = {
"id": chapter.id,
"project_id": chapter.project_id,
"chapter_number": chapter.chapter_number,
"title": chapter.title,
"content": chapter.content,
"summary": chapter.summary,
"word_count": chapter.word_count,
"status": chapter.status,
"outline_id": chapter.outline_id,
"sub_index": chapter.sub_index,
"expansion_plan": chapter.expansion_plan,
"created_at": chapter.created_at,
"updated_at": chapter.updated_at,
"outline_title": None,
"outline_order": None
}
# 如果章节关联了大纲,查询大纲信息
if chapter.outline_id:
outline_result = await db.execute(
select(Outline).where(Outline.id == chapter.outline_id)
)
outline = outline_result.scalar_one_or_none()
if outline:
chapter_dict["outline_title"] = outline.title
chapter_dict["outline_order"] = outline.order_index
return chapter_dict
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@router.delete("/{chapter_id}", summary="删除章节")
async def delete_chapter(
chapter_id: str,
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request: Request,
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db: AsyncSession = Depends(get_db)
):
"""删除章节"""
result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter.project_id, user_id, db)
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# 更新项目字数
result = await db.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = result.scalar_one_or_none()
if project:
# 处理 word_count 和 current_words 可能为 None 的情况
chapter_word_count = chapter.word_count or 0
project.current_words = max(0, (project.current_words or 0) - chapter_word_count)
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# 🗑️ 清理向量数据库中的记忆数据
try:
await memory_service.delete_chapter_memories(
user_id=user_id,
project_id=chapter.project_id,
chapter_id=chapter_id
)
logger.info(f"✅ 已清理章节 {chapter_id[:8]} 的向量记忆数据")
except Exception as e:
logger.warning(f"⚠️ 清理向量记忆数据失败: {str(e)}")
# 不阻断删除流程,继续执行
# 🔮 清理与该章节相关的伏笔数据(仅分析来源的伏笔)
try:
foreshadow_result = await foreshadow_service.delete_chapter_foreshadows(
db=db,
project_id=chapter.project_id,
chapter_id=chapter_id,
only_analysis_source=True # 只删除分析来源的伏笔,保留手动创建的
)
if foreshadow_result['deleted_count'] > 0:
logger.info(f"🔮 已清理章节 {chapter_id[:8]}{foreshadow_result['deleted_count']} 个伏笔数据")
except Exception as e:
logger.warning(f"⚠️ 清理伏笔数据失败: {str(e)}")
# 不阻断删除流程,继续执行
# 删除章节(关系数据库中的记忆会被级联删除)
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await db.delete(chapter)
await db.commit()
return {"message": "章节删除成功"}
async def check_prerequisites(db: AsyncSession, chapter: Chapter) -> tuple[bool, str, list[Chapter]]:
"""
检查章节前置条件
Args:
db: 数据库会话
chapter: 当前章节
Returns:
(可否生成, 错误信息, 前置章节列表)
"""
# 如果是第一章,无需检查前置
if chapter.chapter_number == 1:
return True, "", []
# 查询所有前置章节(序号小于当前章节的)
result = await db.execute(
select(Chapter)
.where(Chapter.project_id == chapter.project_id)
.where(Chapter.chapter_number < chapter.chapter_number)
.order_by(Chapter.chapter_number)
)
previous_chapters = result.scalars().all()
# 检查是否所有前置章节都有内容
incomplete_chapters = [
ch for ch in previous_chapters
if not ch.content or ch.content.strip() == ""
]
if incomplete_chapters:
missing_numbers = [str(ch.chapter_number) for ch in incomplete_chapters]
error_msg = f"需要先完成前置章节:第 {', '.join(missing_numbers)}"
return False, error_msg, previous_chapters
return True, "", previous_chapters
async def build_characters_info_with_careers(
db: AsyncSession,
project_id: str,
characters: list[Character],
filter_character_names: Optional[list[str]] = None
) -> str:
"""
构建包含职业信息的角色上下文
Args:
db: 数据库会话
project_id: 项目ID
characters: 角色列表
filter_character_names: 可选,筛选特定角色名称列表(用于1-1模式的structure.characters或1-n模式的expansion_plan.character_focus
Returns:
格式化的角色信息字符串,包含职业信息
"""
if not characters:
return '暂无角色信息'
# 如果提供了筛选名单,只保留匹配的角色
if filter_character_names:
filtered_characters = [c for c in characters if c.name in filter_character_names]
if not filtered_characters:
logger.warning(f"筛选后无匹配角色,使用全部角色。筛选名单: {filter_character_names}")
filtered_characters = characters
else:
logger.info(f"根据筛选名单保留 {len(filtered_characters)}/{len(characters)} 个角色: {[c.name for c in filtered_characters]}")
characters = filtered_characters
# 获取所有职业信息(一次性查询,提高效率)
careers_result = await db.execute(
select(Career).where(Career.project_id == project_id)
)
careers_map = {c.id: c for c in careers_result.scalars().all()}
# 获取所有角色的职业关联(一次性查询)
character_ids = [c.id for c in characters]
if not character_ids:
return '暂无角色信息'
# 构建全局角色名称映射(用于关系显示)
all_chars_result = await db.execute(
select(Character.id, Character.name).where(Character.project_id == project_id)
)
all_char_name_map = {row.id: row.name for row in all_chars_result.all()}
character_careers_result = await db.execute(
select(CharacterCareer).where(CharacterCareer.character_id.in_(character_ids))
)
character_careers = character_careers_result.scalars().all()
# 获取所有角色的关系(一次性查询)
from sqlalchemy import or_
rels_result = await db.execute(
select(CharacterRelationship).where(
CharacterRelationship.project_id == project_id,
or_(
CharacterRelationship.character_from_id.in_(character_ids),
CharacterRelationship.character_to_id.in_(character_ids)
)
)
)
all_relationships = rels_result.scalars().all()
# 按角色ID分组关系
char_rels_map: dict[str, list] = {cid: [] for cid in character_ids}
for r in all_relationships:
if r.character_from_id in char_rels_map:
char_rels_map[r.character_from_id].append(r)
if r.character_to_id in char_rels_map:
char_rels_map[r.character_to_id].append(r)
# 获取所有组织及其成员关系(一次性查询)
orgs_result = await db.execute(
select(Organization).where(Organization.project_id == project_id)
)
all_orgs = orgs_result.scalars().all()
# 构建组织ID到组织名称的映射(通过关联的Character记录)
org_name_map = {} # org_id -> org_name
char_id_to_org = {} # character_id -> Organization(用于组织实体补充详情)
for org in all_orgs:
org_name_map[org.id] = all_char_name_map.get(org.character_id, '未知组织')
char_id_to_org[org.character_id] = org
# 获取所有组织的成员关系(一次性查询)
org_ids = [org.id for org in all_orgs]
all_org_members = []
if org_ids:
all_org_members_result = await db.execute(
select(OrganizationMember).where(
OrganizationMember.organization_id.in_(org_ids)
)
)
all_org_members = all_org_members_result.scalars().all()
# 按组织ID分组成员(用于组织实体显示成员列表)
org_members_map: dict[str, list] = {oid: [] for oid in org_ids}
for m in all_org_members:
if m.organization_id in org_members_map:
org_members_map[m.organization_id].append(m)
# 获取涉及当前非组织角色的成员关系
non_org_char_ids = [c.id for c in characters if not c.is_organization]
char_org_map: dict[str, list] = {cid: [] for cid in non_org_char_ids}
for m in all_org_members:
if m.character_id in char_org_map:
char_org_map[m.character_id].append(m)
# 构建角色ID到职业信息的映射
char_career_map = {}
for cc in character_careers:
if cc.character_id not in char_career_map:
char_career_map[cc.character_id] = {'main': None, 'sub': []}
career = careers_map.get(cc.career_id)
if not career:
continue
career_info = {
'name': career.name,
'stage': cc.current_stage,
'max_stage': career.max_stage,
'stage_progress': cc.stage_progress
}
if cc.career_type == 'main':
char_career_map[cc.character_id]['main'] = career_info
else:
char_career_map[cc.character_id]['sub'].append(career_info)
# 构建角色信息字符串
characters_info_parts = []
for c in characters:
# 基本信息(含存活状态标记)
entity_type = '组织' if c.is_organization else '角色'
status_marker = ""
char_status = getattr(c, 'status', None) or 'active'
if char_status != 'active':
STATUS_MARKERS = {
'deceased': '💀已死亡',
'missing': '❓已失踪',
'retired': '📤已退场',
'destroyed': '💀已覆灭'
}
status_marker = f" [{STATUS_MARKERS.get(char_status, char_status)}]"
base_info = f"- {c.name}({entity_type}, {c.role_type}){status_marker}"
# 组织实体:补充组织详情
org_detail_str = ""
if c.is_organization and c.id in char_id_to_org:
org = char_id_to_org[c.id]
org_detail_parts = []
if c.organization_type:
org_detail_parts.append(f"类型:{c.organization_type}")
if c.organization_purpose:
purpose_preview = c.organization_purpose[:60] if len(c.organization_purpose) > 60 else c.organization_purpose
org_detail_parts.append(f"宗旨:{purpose_preview}")
if org.power_level is not None:
org_detail_parts.append(f"势力等级:{org.power_level}")
if org.location:
org_detail_parts.append(f"据点:{org.location}")
if org.motto:
org_detail_parts.append(f"口号:{org.motto}")
if org.member_count:
org_detail_parts.append(f"成员数:{org.member_count}")
if org_detail_parts:
org_detail_str = f" | {', '.join(org_detail_parts)}"
# 显示组织的核心成员列表(最多5个)
if org.id in org_members_map and org_members_map[org.id]:
member_parts = []
for m in sorted(org_members_map[org.id], key=lambda x: -(x.rank or 0))[:5]:
m_name = all_char_name_map.get(m.character_id, '未知')
m_desc = f"{m_name}({m.position})"
if m.status and m.status != 'active':
m_desc += f"[{m.status}]"
member_parts.append(m_desc)
if member_parts:
org_detail_str += f" | 成员: {', '.join(member_parts)}"
# 职业信息
career_info_str = ""
if c.id in char_career_map:
career_data = char_career_map[c.id]
# 主职业
if career_data['main']:
main = career_data['main']
stage_desc = f"{main['stage']}/{main['max_stage']}"
career_info_str += f" | 主职业: {main['name']}({stage_desc})"
# 副职业
if career_data['sub']:
sub_list = []
for sub in career_data['sub']:
stage_desc = f"{sub['stage']}/{sub['max_stage']}"
sub_list.append(f"{sub['name']}({stage_desc})")
career_info_str += f" | 副职业: {', '.join(sub_list)}"
# 心理状态(由章节分析自动更新)
state_str = ""
if c.current_state:
state_preview = c.current_state[:50] if len(c.current_state) > 50 else c.current_state
state_str = f" | 当前状态: {state_preview}"
if c.state_updated_chapter:
state_str += f"(第{c.state_updated_chapter}章)"
# 组织成员信息(非组织角色才显示所属组织)
org_str = ""
if not c.is_organization and c.id in char_org_map and char_org_map[c.id]:
org_parts = []
for m in char_org_map[c.id][:3]: # 最多显示3个组织
o_name = org_name_map.get(m.organization_id, '未知组织')
o_desc = f"{o_name}({m.position})"
if m.loyalty is not None and m.loyalty != 50:
o_desc += f"[忠诚度:{m.loyalty}]"
if m.status and m.status != 'active':
o_desc += f"[{m.status}]"
org_parts.append(o_desc)
if org_parts:
org_str = f" | 所属组织: {', '.join(org_parts)}"
# 关系信息
rel_str = ""
if c.id in char_rels_map and char_rels_map[c.id]:
rel_parts = []
seen_pairs = set() # 避免重复显示同一对关系
for r in char_rels_map[c.id][:5]: # 最多显示5个关系
# 确定对方角色名
if r.character_from_id == c.id:
other_name = all_char_name_map.get(r.character_to_id, '未知')
else:
other_name = all_char_name_map.get(r.character_from_id, '未知')
pair_key = tuple(sorted([c.id, r.character_from_id if r.character_from_id != c.id else r.character_to_id]))
if pair_key in seen_pairs:
continue
seen_pairs.add(pair_key)
rel_name = r.relationship_name or '关联'
rel_desc = f"{other_name}({rel_name})"
if r.intimacy_level is not None and r.intimacy_level != 50:
rel_desc += f"[亲密度:{r.intimacy_level}]"
rel_parts.append(rel_desc)
if rel_parts:
rel_str = f" | 关系: {', '.join(rel_parts)}"
# 性格描述
personality_str = ""
if c.personality:
personality_preview = c.personality[:100] if len(c.personality) > 100 else c.personality
personality_str = f": {personality_preview}"
# 组合完整信息
full_info = base_info + org_detail_str + career_info_str + state_str + org_str + rel_str + personality_str
characters_info_parts.append(full_info)
return "\n".join(characters_info_parts)
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@router.get("/{chapter_id}/can-generate", summary="检查章节是否可以生成")
async def check_can_generate(
chapter_id: str,
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request: Request,
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db: AsyncSession = Depends(get_db)
):
"""
检查章节是否满足生成条件
返回可生成状态和前置章节信息
"""
# 获取章节
result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter.project_id, user_id, db)
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# 检查前置条件
can_generate, error_msg, previous_chapters = await check_prerequisites(db, chapter)
# 构建前置章节信息
previous_info = [
{
"id": ch.id,
"chapter_number": ch.chapter_number,
"title": ch.title,
"has_content": bool(ch.content and ch.content.strip()),
"word_count": ch.word_count or 0
}
for ch in previous_chapters
]
return {
"can_generate": can_generate,
"reason": error_msg if not can_generate else "",
"previous_chapters": previous_info,
"chapter_number": chapter.chapter_number
}
async def analyze_chapter_background(
chapter_id: str,
user_id: str,
project_id: str,
task_id: str,
ai_service: AIService
) -> bool:
"""
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后台异步分析章节(支持并发,使用锁保护数据库写入)
Args:
chapter_id: 章节ID
user_id: 用户ID
project_id: 项目ID
task_id: 任务ID
ai_service: AI服务实例
Returns:
bool: True表示分析成功,False表示分析失败
"""
db_session = None
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write_lock = await get_db_write_lock(user_id)
try:
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logger.info(f"🔍 开始分析章节: {chapter_id}, 任务ID: {task_id}")
# 创建独立数据库会话
from app.database import get_engine
from sqlalchemy.ext.asyncio import async_sessionmaker, AsyncSession
engine = await get_engine(user_id)
AsyncSessionLocal = async_sessionmaker(
engine,
class_=AsyncSession,
expire_on_commit=False
)
db_session = AsyncSessionLocal()
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# 1. 获取任务(读操作)
task_result = await db_session.execute(
select(AnalysisTask).where(AnalysisTask.id == task_id)
)
task = task_result.scalar_one_or_none()
if not task:
logger.error(f"❌ 任务不存在: {task_id}")
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return False
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# 更新任务状态(写操作,需要锁)
async with write_lock:
task.status = 'running'
task.started_at = datetime.now()
task.progress = 10
await db_session.commit()
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# 2. 获取章节信息(读操作)
chapter_result = await db_session.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter or not chapter.content:
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async with write_lock:
task.status = 'failed'
task.error_message = '章节不存在或内容为空'
task.completed_at = datetime.now()
await db_session.commit()
logger.error(f"❌ 章节不存在或内容为空: {chapter_id}")
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return False
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async with write_lock:
task.progress = 20
await db_session.commit()
# 获取已埋入的伏笔列表(用于回收匹配,传入当前章节号以启用智能标记)
existing_foreshadows = await foreshadow_service.get_planted_foreshadows_for_analysis(
db=db_session,
project_id=project_id,
current_chapter_number=chapter.chapter_number # 传入当前章节号以启用智能标记
)
logger.info(f"📋 后台分析 - 已获取{len(existing_foreshadows)}个已埋入伏笔用于匹配(含智能回收标记)")
# 获取项目角色信息(根据大纲/展开规划筛选本章相关角色)
filter_character_names = None
# 1-N模式:从expansion_plan中提取character_focus
if chapter.expansion_plan:
try:
plan = json.loads(chapter.expansion_plan)
focus_names = plan.get('character_focus', [])
if focus_names:
filter_character_names = focus_names
logger.info(f"📋 从expansion_plan提取角色焦点: {filter_character_names}")
except (json.JSONDecodeError, Exception):
pass
# 1-1模式:从outline.structure中提取characters
if not filter_character_names and chapter.outline_id:
try:
outline_result = await db_session.execute(
select(Outline).where(Outline.id == chapter.outline_id)
)
chapter_outline = outline_result.scalar_one_or_none()
if chapter_outline and chapter_outline.structure:
structure = json.loads(chapter_outline.structure)
raw_characters = structure.get('characters', [])
if raw_characters:
filter_character_names = [
c['name'] if isinstance(c, dict) else c
for c in raw_characters
]
logger.info(f"📋 从outline.structure提取角色: {filter_character_names}")
except (json.JSONDecodeError, Exception):
pass
# 查询角色(根据筛选名单或全部)
characters_query = select(Character).where(Character.project_id == project_id)
if filter_character_names:
characters_query = characters_query.where(Character.name.in_(filter_character_names))
characters_result = await db_session.execute(characters_query)
project_characters = characters_result.scalars().all()
# 如果筛选后无角色,降级为全部角色
if not project_characters and filter_character_names:
logger.warning(f"⚠️ 筛选后无匹配角色,降级为全部角色")
characters_result = await db_session.execute(
select(Character).where(Character.project_id == project_id)
)
project_characters = characters_result.scalars().all()
filter_character_names = None
characters_info = await build_characters_info_with_careers(
db=db_session,
project_id=project_id,
characters=project_characters,
filter_character_names=filter_character_names
)
logger.info(f"📋 后台分析 - 已获取{len(project_characters)}个角色信息用于分析")
# 定义重试回调函数,用于在重试时更新任务状态
async def on_retry_callback(attempt: int, max_retries: int, wait_time: int, error_reason: str):
"""重试时更新任务状态,让前端能感知到重试进度"""
try:
async with write_lock:
# 重新获取任务(确保获取最新状态)
task_result_retry = await db_session.execute(
select(AnalysisTask).where(AnalysisTask.id == task_id)
)
task_retry = task_result_retry.scalar_one_or_none()
if task_retry:
# 更新任务状态,保持 running 但更新 started_at 以重置超时计时器
task_retry.status = 'running'
task_retry.started_at = datetime.now() # 重置开始时间,防止超时检测误判
task_retry.progress = 25 + attempt * 5 # 根据重试次数更新进度
task_retry.error_message = f"正在重试({attempt}/{max_retries}){error_reason[:100]}"
await db_session.commit()
logger.info(f"🔄 分析任务重试状态已更新: 尝试 {attempt}/{max_retries}, 等待 {wait_time}s, 原因: {error_reason[:50]}...")
except Exception as callback_error:
logger.warning(f"⚠️ 更新重试状态失败: {callback_error}")
# 3. 使用PlotAnalyzer分析章节(传入已有伏笔列表、角色信息和重试回调)
analyzer = PlotAnalyzer(ai_service)
analysis_result = await analyzer.analyze_chapter(
chapter_number=chapter.chapter_number,
title=chapter.title,
content=chapter.content,
word_count=chapter.word_count or len(chapter.content),
existing_foreshadows=existing_foreshadows,
on_retry=on_retry_callback,
characters_info=characters_info
)
if not analysis_result:
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async with write_lock:
task.status = 'failed'
task.error_message = 'AI分析失败,请检查日志'
task.completed_at = datetime.now()
await db_session.commit()
logger.error(f"❌ AI分析失败: {chapter_id}")
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return False
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async with write_lock:
task.progress = 60
await db_session.commit()
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# 4. 保存分析结果到数据库(写操作,需要锁)
async with write_lock:
existing_analysis_result = await db_session.execute(
select(PlotAnalysis).where(PlotAnalysis.chapter_id == chapter_id)
)
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existing_analysis = existing_analysis_result.scalar_one_or_none()
if existing_analysis:
# 更新现有记录
logger.info(f" 更新现有分析记录: {existing_analysis.id}")
existing_analysis.plot_stage = analysis_result.get('plot_stage', '发展')
existing_analysis.conflict_level = analysis_result.get('conflict', {}).get('level', 0)
existing_analysis.conflict_types = analysis_result.get('conflict', {}).get('types', [])
existing_analysis.emotional_tone = analysis_result.get('emotional_arc', {}).get('primary_emotion', '')
existing_analysis.emotional_intensity = analysis_result.get('emotional_arc', {}).get('intensity', 0) / 10.0
existing_analysis.hooks = analysis_result.get('hooks', [])
existing_analysis.hooks_count = len(analysis_result.get('hooks', []))
existing_analysis.foreshadows = analysis_result.get('foreshadows', [])
existing_analysis.foreshadows_planted = sum(1 for f in analysis_result.get('foreshadows', []) if f.get('type') == 'planted')
existing_analysis.foreshadows_resolved = sum(1 for f in analysis_result.get('foreshadows', []) if f.get('type') == 'resolved')
existing_analysis.plot_points = analysis_result.get('plot_points', [])
existing_analysis.plot_points_count = len(analysis_result.get('plot_points', []))
existing_analysis.character_states = analysis_result.get('character_states', [])
existing_analysis.scenes = analysis_result.get('scenes', [])
existing_analysis.pacing = analysis_result.get('pacing', 'moderate')
existing_analysis.overall_quality_score = analysis_result.get('scores', {}).get('overall', 0)
existing_analysis.pacing_score = analysis_result.get('scores', {}).get('pacing', 0)
existing_analysis.engagement_score = analysis_result.get('scores', {}).get('engagement', 0)
existing_analysis.coherence_score = analysis_result.get('scores', {}).get('coherence', 0)
existing_analysis.analysis_report = analyzer.generate_analysis_summary(analysis_result)
existing_analysis.suggestions = analysis_result.get('suggestions', [])
existing_analysis.dialogue_ratio = analysis_result.get('dialogue_ratio', 0)
existing_analysis.description_ratio = analysis_result.get('description_ratio', 0)
else:
# 创建新记录
logger.info(f" 创建新的分析记录")
plot_analysis = PlotAnalysis(
chapter_id=chapter_id,
project_id=project_id,
plot_stage=analysis_result.get('plot_stage', '发展'),
conflict_level=analysis_result.get('conflict', {}).get('level', 0),
conflict_types=analysis_result.get('conflict', {}).get('types', []),
emotional_tone=analysis_result.get('emotional_arc', {}).get('primary_emotion', ''),
emotional_intensity=analysis_result.get('emotional_arc', {}).get('intensity', 0) / 10.0,
hooks=analysis_result.get('hooks', []),
hooks_count=len(analysis_result.get('hooks', [])),
foreshadows=analysis_result.get('foreshadows', []),
foreshadows_planted=sum(1 for f in analysis_result.get('foreshadows', []) if f.get('type') == 'planted'),
foreshadows_resolved=sum(1 for f in analysis_result.get('foreshadows', []) if f.get('type') == 'resolved'),
plot_points=analysis_result.get('plot_points', []),
plot_points_count=len(analysis_result.get('plot_points', [])),
character_states=analysis_result.get('character_states', []),
scenes=analysis_result.get('scenes', []),
pacing=analysis_result.get('pacing', 'moderate'),
overall_quality_score=analysis_result.get('scores', {}).get('overall', 0),
pacing_score=analysis_result.get('scores', {}).get('pacing', 0),
engagement_score=analysis_result.get('scores', {}).get('engagement', 0),
coherence_score=analysis_result.get('scores', {}).get('coherence', 0),
analysis_report=analyzer.generate_analysis_summary(analysis_result),
suggestions=analysis_result.get('suggestions', []),
dialogue_ratio=analysis_result.get('dialogue_ratio', 0),
description_ratio=analysis_result.get('description_ratio', 0)
)
db_session.add(plot_analysis)
await db_session.commit()
task.progress = 80
await db_session.commit()
# 5. 清理旧的分析伏笔(重新分析时需要先清理)
try:
async with write_lock:
clean_result = await foreshadow_service.clean_chapter_analysis_foreshadows(
db=db_session,
project_id=project_id,
chapter_id=chapter_id
)
if clean_result['cleaned_count'] > 0:
logger.info(f"🧹 重新分析前清理了 {clean_result['cleaned_count']} 个旧伏笔")
except Exception as clean_error:
logger.warning(f"⚠️ 清理旧伏笔失败(继续分析): {str(clean_error)}")
# 6. 提取记忆并保存到向量数据库(传入章节内容用于计算位置)
memories = analyzer.extract_memories_from_analysis(
analysis=analysis_result,
chapter_id=chapter_id,
chapter_number=chapter.chapter_number,
chapter_content=chapter.content or "",
chapter_title=chapter.title or ""
)
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# 先删除该章节的旧记忆(写操作,需要锁)
async with write_lock:
old_memories_result = await db_session.execute(
select(StoryMemory).where(StoryMemory.chapter_id == chapter_id)
)
old_memories = old_memories_result.scalars().all()
for old_mem in old_memories:
await db_session.delete(old_mem)
await db_session.commit()
logger.info(f" 删除旧记忆: {len(old_memories)}")
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# 准备批量添加的记忆数据(不需要锁)
memory_records = []
for mem in memories:
memory_id = f"{chapter_id}_{mem['type']}_{len(memory_records)}"
memory_records.append({
'id': memory_id,
'content': mem['content'],
'type': mem['type'],
'metadata': mem['metadata']
})
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# 保存到关系数据库(写操作,需要锁)
async with write_lock:
for mem in memories:
memory_id = memory_records[memories.index(mem)]['id']
text_position = mem['metadata'].get('text_position', -1)
text_length = mem['metadata'].get('text_length', 0)
story_memory = StoryMemory(
id=memory_id,
project_id=project_id,
chapter_id=chapter_id,
memory_type=mem['type'],
content=mem['content'],
title=mem['title'],
importance_score=mem['metadata'].get('importance_score', 0.5),
tags=mem['metadata'].get('tags', []),
is_foreshadow=mem['metadata'].get('is_foreshadow', 0),
story_timeline=chapter.chapter_number,
chapter_position=text_position,
text_length=text_length,
related_characters=mem['metadata'].get('related_characters', []),
related_locations=mem['metadata'].get('related_locations', [])
)
db_session.add(story_memory)
if text_position >= 0:
logger.debug(f" 保存记忆 {memory_id}: position={text_position}, length={text_length}")
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await db_session.commit()
# 批量添加到向量数据库
if memory_records:
added_count = await memory_service.batch_add_memories(
user_id=user_id,
project_id=project_id,
memories=memory_records
)
logger.info(f"✅ 添加{added_count}条记忆到向量库")
# 💼 更新角色职业(根据分析结果)
if analysis_result.get('character_states'):
try:
from app.services.career_update_service import CareerUpdateService
logger.info(f"💼 开始根据分析结果更新角色职业...")
career_update_result = await CareerUpdateService.update_careers_from_analysis(
db=db_session,
project_id=project_id,
character_states=analysis_result.get('character_states', []),
chapter_id=chapter_id,
chapter_number=chapter.chapter_number
)
if career_update_result['updated_count'] > 0:
logger.info(
f"✅ 更新了 {career_update_result['updated_count']} 个角色的职业信息"
)
if career_update_result['changes']:
for change in career_update_result['changes']:
logger.info(f" - {change}")
else:
logger.info("️ 本章节无角色职业变化")
except Exception as career_error:
# 职业更新失败不应影响整个分析流程
logger.error(f"⚠️ 更新角色职业失败: {str(career_error)}", exc_info=True)
else:
logger.debug("📋 分析结果中无角色状态信息,跳过职业更新")
# 👤 更新角色心理状态和关系(根据分析结果)
if analysis_result.get('character_states'):
try:
from app.services.character_state_update_service import CharacterStateUpdateService
logger.info(f"👤 开始根据分析结果更新角色状态、关系和组织成员...")
async with write_lock:
state_update_result = await CharacterStateUpdateService.update_from_analysis(
db=db_session,
project_id=project_id,
character_states=analysis_result.get('character_states', []),
chapter_id=chapter_id,
chapter_number=chapter.chapter_number
)
total_state_changes = (
state_update_result['state_updated_count'] +
state_update_result['relationship_created_count'] +
state_update_result['relationship_updated_count'] +
state_update_result.get('org_updated_count', 0)
)
if total_state_changes > 0:
logger.info(
f"✅ 角色状态更新: 心理状态{state_update_result['state_updated_count']}个, "
f"新建关系{state_update_result['relationship_created_count']}个, "
f"更新关系{state_update_result['relationship_updated_count']}个, "
f"组织变动{state_update_result.get('org_updated_count', 0)}"
)
if state_update_result['changes']:
for change in state_update_result['changes'][:8]:
logger.info(f" - {change}")
else:
logger.info("️ 本章节无角色状态、关系或组织变化")
except Exception as state_error:
# 角色状态更新失败不应影响整个分析流程
logger.error(f"⚠️ 更新角色状态、关系和组织失败: {str(state_error)}", exc_info=True)
# 🏛️ 更新组织自身状态(根据分析结果)
if analysis_result.get('organization_states'):
try:
from app.services.character_state_update_service import CharacterStateUpdateService
logger.info(f"🏛️ 开始根据分析结果更新组织自身状态...")
async with write_lock:
org_state_result = await CharacterStateUpdateService.update_organization_states(
db=db_session,
project_id=project_id,
organization_states=analysis_result.get('organization_states', []),
chapter_number=chapter.chapter_number
)
if org_state_result['updated_count'] > 0:
logger.info(
f"✅ 组织状态更新: {org_state_result['updated_count']}个组织"
)
if org_state_result['changes']:
for change in org_state_result['changes'][:5]:
logger.info(f" - {change}")
else:
logger.info("️ 本章节无组织自身状态变化")
except Exception as org_state_error:
# 组织状态更新失败不应影响整个分析流程
logger.error(f"⚠️ 更新组织自身状态失败: {str(org_state_error)}", exc_info=True)
# 🔮 自动更新伏笔状态(根据分析结果)
if analysis_result.get('foreshadows'):
try:
logger.info(f"🔮 开始根据分析结果自动更新伏笔状态...")
async with write_lock:
foreshadow_stats = await foreshadow_service.auto_update_from_analysis(
db=db_session,
project_id=project_id,
chapter_id=chapter_id,
chapter_number=chapter.chapter_number,
analysis_foreshadows=analysis_result.get('foreshadows', [])
)
if foreshadow_stats['planted_count'] > 0 or foreshadow_stats['resolved_count'] > 0:
logger.info(
f"✅ 伏笔自动更新: 埋入{foreshadow_stats['planted_count']}个, "
f"回收{foreshadow_stats['resolved_count']}"
)
else:
logger.info("️ 本章节无新的伏笔状态变化")
except Exception as foreshadow_error:
# 伏笔更新失败不应影响整个分析流程
logger.error(f"⚠️ 自动更新伏笔失败: {str(foreshadow_error)}", exc_info=True)
else:
logger.debug("📋 分析结果中无伏笔信息,跳过伏笔自动更新")
# 最终更新任务状态(写操作,需要锁)- 增加重试机制
update_success = False
for retry in range(3):
try:
async with write_lock:
task.progress = 100
task.status = 'completed'
task.completed_at = datetime.now()
await db_session.commit()
update_success = True
logger.info(f"✅ 章节分析完成: {chapter_id}, 提取{len(memories)}条记忆")
break
except Exception as commit_error:
logger.error(f"❌ 提交任务完成状态失败(重试{retry+1}/3): {str(commit_error)}")
if retry < 2:
await asyncio.sleep(0.1)
else:
logger.error(f"❌ 无法更新任务为completed状态: {task_id}")
# 即使失败也不抛出异常,因为分析本身已经完成
if not update_success:
logger.warning(f"⚠️ 章节分析完成但状态更新失败: {chapter_id}")
# 返回成功状态
return True
except Exception as e:
logger.error(f"❌ 后台分析异常: {str(e)}", exc_info=True)
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# 确保任务状态被更新为failed(写操作,需要锁)
if db_session:
# 多次重试更新任务状态
for retry in range(3):
try:
async with write_lock:
# 重新获取任务(可能是旧会话导致的问题)
task_result = await db_session.execute(
select(AnalysisTask).where(AnalysisTask.id == task_id)
)
task = task_result.scalar_one_or_none()
if task:
task.status = 'failed'
task.error_message = str(e)[:500]
task.completed_at = datetime.now()
task.progress = 0
await db_session.commit()
logger.info(f"✅ 任务状态已更新为failed: {task_id} (重试{retry+1}次)")
break
else:
logger.error(f"❌ 无法找到任务进行状态更新: {task_id}")
break
except Exception as update_error:
logger.error(f"❌ 更新任务状态失败(重试{retry+1}/3): {str(update_error)}")
if retry < 2:
await asyncio.sleep(0.1) # 短暂等待后重试
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else:
logger.error(f"❌ 任务状态更新失败,已达到最大重试次数: {task_id}")
# 返回失败状态
return False
finally:
if db_session:
await db_session.close()
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@router.post("/{chapter_id}/generate-stream", summary="AI创作章节内容(流式)")
async def generate_chapter_content_stream(
chapter_id: str,
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request: Request,
background_tasks: BackgroundTasks,
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generate_request: ChapterGenerateRequest = ChapterGenerateRequest(),
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user_ai_service: AIService = Depends(get_user_ai_service)
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):
"""
根据大纲、前置章节内容和项目信息AI创作章节完整内容(流式返回)
要求:必须按顺序生成,确保前置章节都已完成
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请求体参数:
- style_id: 可选,指定使用的写作风格ID。不提供则不使用任何风格
- target_word_count: 可选,目标字数,默认3000字,范围500-10000字
- enable_mcp: 可选,是否启用MCP工具增强,默认True
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注意:此函数不使用依赖注入的db,而是在生成器内部创建独立的数据库会话
以避免流式响应期间的连接泄漏问题
"""
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style_id = generate_request.style_id
target_word_count = generate_request.target_word_count or 3000
custom_model = generate_request.model if hasattr(generate_request, 'model') else None
temp_narrative_perspective = generate_request.narrative_perspective if hasattr(generate_request, 'narrative_perspective') else None
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# 预先验证章节存在性(使用临时会话)
async for temp_db in get_db(request):
try:
result = await temp_db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
# 检查前置条件
can_generate, error_msg, previous_chapters = await check_prerequisites(temp_db, chapter)
if not can_generate:
raise HTTPException(status_code=400, detail=error_msg)
# 保存前置章节数据供生成器使用
previous_chapters_data = [
{
'id': ch.id,
'chapter_number': ch.chapter_number,
'title': ch.title,
'content': ch.content
}
for ch in previous_chapters
]
finally:
await temp_db.close()
break
async def event_generator():
# 在生成器内部创建独立的数据库会话
db_session = None
db_committed = False
# 获取当前用户ID(在生成器外部就需要)
current_user_id = getattr(request.state, "user_id", "system")
# 初始化标准进度追踪器
from app.utils.sse_response import WizardProgressTracker
tracker = WizardProgressTracker("章节")
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try:
yield await tracker.start()
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# 创建新的数据库会话
async for db_session in get_db(request):
# === 加载阶段 ===
yield await tracker.loading("加载章节信息...", 0.2)
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# 重新获取章节信息
chapter_result = await db_session.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
current_chapter = chapter_result.scalar_one_or_none()
if not current_chapter:
yield await tracker.error("章节不存在", 404)
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return
yield await tracker.loading("加载项目信息...", 0.4)
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# 获取项目信息
project_result = await db_session.execute(
select(Project).where(Project.id == current_chapter.project_id)
)
project = project_result.scalar_one_or_none()
if not project:
yield await tracker.error("项目不存在", 404)
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return
# 获取项目的大纲模式
outline_mode = project.outline_mode if project else 'one-to-many'
logger.info(f"📋 项目大纲模式: {outline_mode}")
# 获取对应的大纲(优先使用 chapter.outline_id 直接关联)
if current_chapter.outline_id:
outline_result = await db_session.execute(
select(Outline)
.where(Outline.id == current_chapter.outline_id)
.execution_options(populate_existing=True)
)
else:
# 回退到按序号查找
outline_result = await db_session.execute(
select(Outline)
.where(Outline.project_id == current_chapter.project_id)
.where(Outline.order_index == current_chapter.chapter_number)
.execution_options(populate_existing=True)
)
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outline = outline_result.scalar_one_or_none()
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# 获取写作风格
style_content = ""
if style_id:
# 使用指定的风格
style_result = await db_session.execute(
select(WritingStyle).where(WritingStyle.id == style_id)
)
style = style_result.scalar_one_or_none()
if style:
# 验证风格是否可用:全局预设风格(user_id为NULL)或者当前用户的自定义风格
if style.user_id is None or style.user_id == current_user_id:
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style_content = style.prompt_content or ""
style_type = "全局预设" if style.user_id is None else "用户自定义"
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logger.info(f"使用指定风格: {style.name} ({style_type})")
else:
logger.warning(f"风格 {style_id} 不属于当前项目,无法使用")
else:
logger.warning(f"未找到风格 {style_id}")
else:
logger.info("未指定写作风格,使用原始提示词")
# 🚀 根据大纲模式选择独立的上下文构建器
if outline_mode == 'one-to-one':
# ========== 1-1模式:使用独立的简化构建器 ==========
logger.info(f"🔧 [1-1模式] 使用 OneToOneContextBuilder")
context_builder = OneToOneContextBuilder(
memory_service=memory_service,
foreshadow_service=foreshadow_service
)
chapter_context = await context_builder.build(
chapter=current_chapter,
project=project,
outline=outline,
user_id=current_user_id,
db=db_session,
target_word_count=target_word_count
)
# 日志输出统计信息
logger.info(f"📊 [1-1模式] 上下文统计:")
logger.info(f" - 章节序号: {current_chapter.chapter_number}")
logger.info(f" - 大纲长度: {chapter_context.context_stats.get('outline_length', 0)} 字符")
logger.info(f" - 上一章内容: {chapter_context.context_stats.get('previous_content_length', 0)} 字符")
logger.info(f" - 角色信息: {chapter_context.context_stats.get('characters_length', 0)} 字符")
logger.info(f" - 伏笔提醒: {chapter_context.context_stats.get('foreshadow_length', 0)} 字符")
logger.info(f" - 相关记忆: {chapter_context.context_stats.get('memories_length', 0)} 字符")
logger.info(f" - 总长度: {chapter_context.context_stats.get('total_length', 0)} 字符")
else:
# ========== 1-N模式:使用独立的完整构建器 ==========
logger.info(f"🔧 [1-N模式] 使用 OneToManyContextBuilder")
context_builder = OneToManyContextBuilder(
memory_service=memory_service,
foreshadow_service=foreshadow_service
)
chapter_context = await context_builder.build(
chapter=current_chapter,
project=project,
outline=outline,
user_id=current_user_id,
db=db_session,
style_content=style_content,
target_word_count=target_word_count,
temp_narrative_perspective=temp_narrative_perspective
)
# 日志输出统计信息
logger.info(f"📊 [1-N模式] 上下文统计:")
logger.info(f" - 章节序号: {current_chapter.chapter_number}")
logger.info(f" - 衔接锚点: {chapter_context.context_stats.get('continuation_length', 0)} 字符")
logger.info(f" - 角色信息: {chapter_context.context_stats.get('characters_length', 0)} 字符")
logger.info(f" - 相关记忆: {chapter_context.context_stats.get('memories_length', 0)} 字符")
logger.info(f" - 故事骨架: {chapter_context.context_stats.get('skeleton_length', 0)} 字符")
logger.info(f" - 伏笔提醒: {chapter_context.context_stats.get('foreshadow_length', 0)} 字符")
logger.info(f" - 总长度: {chapter_context.context_stats.get('total_length', 0)} 字符")
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yield await tracker.loading("上下文构建完成", 0.8)
# 🎭 确定使用的叙事人称(临时指定 > 项目默认 > 系统默认)
chapter_perspective = (
temp_narrative_perspective or
project.narrative_perspective or
'第三人称'
)
logger.info(f"📝 使用叙事人称: {chapter_perspective}")
# 🚀 根据大纲模式选择提示词模板和参数
if outline_mode == 'one-to-one':
# 1-1模式
if chapter_context.continuation_point:
# 有上一章内容
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_ONE_NEXT", current_user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=current_chapter.chapter_number,
chapter_title=current_chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
genre=project.genre or '未设定',
narrative_perspective=chapter_perspective,
previous_chapter_content=chapter_context.continuation_point,
previous_chapter_summary=chapter_context.previous_chapter_summary or '(无上一章摘要)',
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
relevant_memories=chapter_context.relevant_memories or '暂无相关记忆'
)
logger.debug(f"创建第{current_chapter.chapter_number}章提示词: {base_prompt}")
else:
# 第一章
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_ONE", current_user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=current_chapter.chapter_number,
chapter_title=current_chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
genre=project.genre or '未设定',
narrative_perspective=chapter_perspective,
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
relevant_memories=chapter_context.relevant_memories or '暂无相关记忆'
)
logger.debug(f"创建第一章提示词: {base_prompt}")
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else:
# ========== 1-n模式:使用完整模板 ==========
if chapter_context.continuation_point:
# 有前置内容,使用 WITH_CONTEXT 模板
logger.info(f"📝 [1-n模式] 使用带上下文的模板(第{current_chapter.chapter_number}章)")
# 提取上一章摘要
previous_summary = "(无上一章摘要,请根据锚点续写)"
if chapter_context.previous_chapter_summary:
previous_summary = chapter_context.previous_chapter_summary
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_MANY_NEXT", current_user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=current_chapter.chapter_number,
chapter_title=current_chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
continuation_point=chapter_context.continuation_point,
genre=project.genre or '未设定',
narrative_perspective=chapter_perspective,
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
previous_chapter_summary=previous_summary,
recent_chapters_context=chapter_context.recent_chapters_context or '',
relevant_memories=chapter_context.relevant_memories or ''
)
logger.debug(f"创建第{current_chapter.chapter_number}章提示词: {base_prompt}")
else:
# 第1章,使用无前置内容模板
logger.info(f"📝 [1-n模式] 使用第一章模板")
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_MANY", current_user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=current_chapter.chapter_number,
chapter_title=current_chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
genre=project.genre or '未设定',
narrative_perspective=chapter_perspective,
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
relevant_memories=chapter_context.relevant_memories or '暂无相关记忆'
)
logger.debug(f"创建第一章提示词: {base_prompt}")
# 应用写作风格
if style_content:
prompt = WritingStyleManager.apply_style_to_prompt(base_prompt, style_content)
else:
prompt = base_prompt
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# === 准备阶段 ===
yield await tracker.preparing("准备AI提示词...")
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logger.info(f"开始AI流式创作章节 {chapter_id}")
# 🎨 方案一:将写作风格注入到系统提示词(最高优先级)
system_prompt_with_style = None
if style_content:
system_prompt_with_style = f"""【🎨 写作风格要求 - 最高优先级】
{style_content}
⚠️ 请严格遵循上述写作风格要求进行创作,这是最重要的指令!
确保在整个章节创作过程中始终保持风格的一致性。"""
logger.info(f"✅ 已将写作风格注入系统提示词({len(style_content)}字符)")
# 🔢 计算 max_tokens 限制
# 中文字符约 1.5-2 个 token,使用 2.5 倍系数确保有足够空间完成段落
# 同时设置上限防止过长,下限确保基本可用
calculated_max_tokens = int(target_word_count * 3)
calculated_max_tokens = max(2000, min(calculated_max_tokens, 16000)) # 限制在 2000-16000 之间
logger.info(f"📊 目标字数: {target_word_count}, 计算 max_tokens: {calculated_max_tokens}")
# 准备生成参数
generate_kwargs = {
"prompt": prompt,
"system_prompt": system_prompt_with_style,
"tool_choice": "required",
"max_tokens": calculated_max_tokens # 添加 max_tokens 限制
}
if custom_model:
logger.info(f" 使用自定义模型: {custom_model}")
generate_kwargs["model"] = custom_model
# 注意:这里使用用户配置的AI服务,模型参数会覆盖默认模型
# 如果需要切换provider,需要在前端传递provider参数
# === 生成阶段 ===
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full_content = ""
chunk_count = 0
yield await tracker.generating(
current_chars=0,
estimated_total=target_word_count
)
async for chunk in user_ai_service.generate_text_stream(**generate_kwargs):
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full_content += chunk
chunk_count += 1
# 发送内容块
yield await tracker.generating_chunk(chunk)
# 每5个chunk发送一次进度更新
if chunk_count % 5 == 0:
yield await tracker.generating(
current_chars=len(full_content),
estimated_total=target_word_count,
message=f'正在创作中... 已生成 {len(full_content)}'
)
# 每20个chunk发送心跳
if chunk_count % 20 == 0:
yield await tracker.heartbeat()
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await asyncio.sleep(0) # 让出控制权
# === 保存阶段 ===
yield await tracker.saving("正在保存章节...", 0.3)
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# 更新章节内容到数据库
old_word_count = current_chapter.word_count or 0
current_chapter.content = full_content
new_word_count = len(full_content)
current_chapter.word_count = new_word_count
current_chapter.status = "completed"
# 更新项目字数
project.current_words = project.current_words - old_word_count + new_word_count
# 记录生成历史
history = GenerationHistory(
project_id=current_chapter.project_id,
chapter_id=current_chapter.id,
prompt=f"创作章节: 第{current_chapter.chapter_number}{current_chapter.title}",
generated_content=full_content[:500] if len(full_content) > 500 else full_content,
model="default"
)
db_session.add(history)
await db_session.commit()
db_committed = True
await db_session.refresh(current_chapter)
logger.info(f"成功创作章节 {chapter_id},共 {new_word_count}")
# 🔮 章节生成后自动标记计划在本章埋入的伏笔
try:
plant_result = await foreshadow_service.auto_plant_pending_foreshadows(
db=db_session,
project_id=project.id,
chapter_id=chapter_id,
chapter_number=current_chapter.chapter_number,
chapter_content=full_content
)
if plant_result.get('planted_count', 0) > 0:
logger.info(f"🔮 自动标记伏笔已埋入: {plant_result['planted_count']}")
except Exception as plant_error:
logger.warning(f"⚠️ 自动标记伏笔埋入失败: {str(plant_error)}")
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# 创建分析任务
analysis_task = AnalysisTask(
chapter_id=chapter_id,
user_id=current_user_id,
project_id=project.id,
status='pending',
progress=0
)
db_session.add(analysis_task)
await db_session.commit()
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await db_session.refresh(analysis_task)
task_id = analysis_task.id
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logger.info(f"📋 已创建分析任务: {task_id}")
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# 短暂延迟确保SQLite WAL完成写入
await asyncio.sleep(0.05)
# 直接启动后台分析(并发执行)
background_tasks.add_task(
analyze_chapter_background,
chapter_id=chapter_id,
user_id=current_user_id,
project_id=project.id,
task_id=task_id,
ai_service=user_ai_service
)
yield await tracker.saving("章节保存完成", 0.8)
# === 完成阶段 ===
yield await tracker.complete("创作完成!")
# 发送结果数据
yield await tracker.result({
'word_count': new_word_count,
'analysis_task_id': task_id
})
# 发送分析开始事件(使用自定义事件)
yield await SSEResponse.send_event(
event='analysis_started',
data={
'task_id': task_id,
'message': '章节分析已开始'
}
)
# 发送完成信号
yield await tracker.done()
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break # 退出async for db_session循环
except GeneratorExit:
# SSE连接断开
logger.warning("章节生成器被提前关闭(SSE断开)")
if db_session and not db_committed:
try:
if db_session.in_transaction():
await db_session.rollback()
logger.info("章节生成事务已回滚(GeneratorExit")
except Exception as e:
logger.error(f"GeneratorExit回滚失败: {str(e)}")
except Exception as e:
logger.error(f"流式创作章节失败: {str(e)}")
if db_session and not db_committed:
try:
if db_session.in_transaction():
await db_session.rollback()
logger.info("章节生成事务已回滚(异常)")
except Exception as rollback_error:
logger.error(f"回滚失败: {str(rollback_error)}")
yield await tracker.error(str(e))
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finally:
# 确保数据库会话被正确关闭
if db_session:
try:
# 最后检查:确保没有未提交的事务
if not db_committed and db_session.in_transaction():
await db_session.rollback()
logger.warning("在finally中发现未提交事务,已回滚")
await db_session.close()
logger.info("数据库会话已关闭")
except Exception as close_error:
logger.error(f"关闭数据库会话失败: {str(close_error)}")
# 强制关闭
try:
await db_session.close()
except Exception:
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pass
return create_sse_response(event_generator())
@router.get("/{chapter_id}/analysis/status", summary="查询章节分析任务状态")
async def get_analysis_task_status(
chapter_id: str,
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request: Request,
db: AsyncSession = Depends(get_db)
):
"""
查询指定章节的最新分析任务状态
自动恢复机制:
- 如果任务状态为running且超过1分钟未更新,自动标记为failed
- 如果任务状态为pending且超过2分钟未启动,自动标记为failed
返回:
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- has_task: 是否存在分析任务
- task_id: 任务ID(如果存在)
- status: pending/running/completed/failed/none(如果不存在则为none
- progress: 0-100
- error_message: 错误信息(如果失败)
- auto_recovered: 是否被自动恢复
- created_at: 创建时间
- completed_at: 完成时间
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注意:当章节不存在或无权访问时返回404,当没有分析任务时返回has_task=false
"""
from datetime import timedelta
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# 先获取章节以验证存在性和权限
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter.project_id, user_id, db)
# 获取该章节最新的分析任务
result = await db.execute(
select(AnalysisTask)
.where(AnalysisTask.chapter_id == chapter_id)
.order_by(AnalysisTask.created_at.desc())
.limit(1)
)
task = result.scalar_one_or_none()
if not task:
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# 返回无任务状态,而不是抛出404错误
return {
"has_task": False,
"chapter_id": chapter_id,
"status": "none",
"progress": 0,
"error_message": None,
"auto_recovered": False,
"task_id": None,
"created_at": None,
"started_at": None,
"completed_at": None
}
auto_recovered = False
current_time = datetime.now()
# 自动恢复卡住的任务
# 注意:后端分析有3次重试机制,每次重试会重置 started_at
# 所以超时时间需要足够长以支持完整的重试周期(约5分钟)
if task.status == 'running':
# 检查是否正在重试(error_message 包含"重试"信息)
is_retrying = task.error_message and '重试' in task.error_message
# 如果正在重试,给予更长的超时时间(5分钟),否则3分钟
timeout_minutes = 5 if is_retrying else 3
# 如果任务在running状态超过超时时间,标记为失败
if task.started_at and (current_time - task.started_at) > timedelta(minutes=timeout_minutes):
task.status = 'failed'
task.error_message = f'任务超时(超过{timeout_minutes}分钟未完成,已自动恢复)'
task.completed_at = current_time
task.progress = 0
auto_recovered = True
await db.commit()
await db.refresh(task)
logger.warning(f"🔄 自动恢复卡住的任务: {task.id}, 章节: {chapter_id}")
elif task.status == 'pending':
# 如果任务在pending状态超过3分钟仍未开始,标记为失败
if task.created_at and (current_time - task.created_at) > timedelta(minutes=3):
task.status = 'failed'
task.error_message = '任务启动超时(超过3分钟未启动,已自动恢复)'
task.completed_at = current_time
task.progress = 0
auto_recovered = True
await db.commit()
await db.refresh(task)
logger.warning(f"🔄 自动恢复未启动的任务: {task.id}, 章节: {chapter_id}")
return {
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"has_task": True,
"task_id": task.id,
"chapter_id": task.chapter_id,
"status": task.status,
"progress": task.progress,
"error_message": task.error_message,
"auto_recovered": auto_recovered,
"created_at": task.created_at.isoformat() if task.created_at else None,
"started_at": task.started_at.isoformat() if task.started_at else None,
"completed_at": task.completed_at.isoformat() if task.completed_at else None
}
@router.get("/{chapter_id}/analysis", summary="获取章节分析结果")
async def get_chapter_analysis(
chapter_id: str,
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request: Request,
db: AsyncSession = Depends(get_db)
):
"""
获取章节的完整分析结果
返回:
- analysis_data: 完整的分析数据(JSON)
- summary: 分析摘要文本
- memories: 提取的记忆列表
- created_at: 分析时间
"""
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# 先获取章节以验证权限
chapter_result_check = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter_check = chapter_result_check.scalar_one_or_none()
if chapter_check:
# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter_check.project_id, user_id, db)
# 获取分析结果
analysis_result = await db.execute(
select(PlotAnalysis)
.where(PlotAnalysis.chapter_id == chapter_id)
.order_by(PlotAnalysis.created_at.desc())
.limit(1)
)
analysis = analysis_result.scalar_one_or_none()
if not analysis:
raise HTTPException(status_code=404, detail="该章节暂无分析结果")
# 获取相关记忆
memories_result = await db.execute(
select(StoryMemory)
.where(StoryMemory.chapter_id == chapter_id)
.order_by(StoryMemory.importance_score.desc())
)
memories = memories_result.scalars().all()
return {
"chapter_id": chapter_id,
"analysis": analysis.to_dict(), # 使用to_dict()方法
"memories": [
{
"id": mem.id,
"type": mem.memory_type,
"title": mem.title,
"content": mem.content,
"importance": mem.importance_score,
"tags": mem.tags,
"is_foreshadow": mem.is_foreshadow,
"position": mem.chapter_position,
"related_characters": mem.related_characters
}
for mem in memories
],
"created_at": analysis.created_at.isoformat() if analysis.created_at else None
}
@router.get("/{chapter_id}/annotations", summary="获取章节标注数据")
async def get_chapter_annotations(
chapter_id: str,
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request: Request,
db: AsyncSession = Depends(get_db)
):
"""
获取章节的标注数据(用于前端展示标注)
返回格式化的标注列表,包含精确位置信息
适用于章节内容的可视化标注展示
"""
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# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
# 获取章节
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
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# 验证项目访问权限
await verify_project_access(chapter.project_id, user_id, db)
# 获取分析结果
analysis_result = await db.execute(
select(PlotAnalysis)
.where(PlotAnalysis.chapter_id == chapter_id)
.order_by(PlotAnalysis.created_at.desc())
.limit(1)
)
analysis = analysis_result.scalar_one_or_none()
# 获取记忆
memories_result = await db.execute(
select(StoryMemory)
.where(StoryMemory.chapter_id == chapter_id)
.order_by(StoryMemory.importance_score.desc())
)
memories = memories_result.scalars().all()
# 构建标注数据
annotations = []
for mem in memories:
# 优先从数据库读取位置信息
position = mem.chapter_position if mem.chapter_position is not None else -1
length = mem.text_length if hasattr(mem, 'text_length') and mem.text_length is not None else 0
metadata_extra = {}
# 如果数据库中没有位置信息,尝试从分析数据中重新计算
if position == -1 and analysis and chapter.content:
# 根据记忆类型从分析数据中查找对应项
if mem.memory_type == 'hook' and analysis.hooks:
for hook in analysis.hooks:
# 通过标题或内容匹配
if mem.title and hook.get('type') in mem.title:
keyword = hook.get('keyword', '')
if keyword:
pos = chapter.content.find(keyword)
if pos != -1:
position = pos
length = len(keyword)
metadata_extra["strength"] = hook.get('strength', 5)
metadata_extra["position_desc"] = hook.get('position', '')
break
elif mem.memory_type == 'foreshadow' and analysis.foreshadows:
for foreshadow in analysis.foreshadows:
if foreshadow.get('content') in mem.content:
keyword = foreshadow.get('keyword', '')
if keyword:
pos = chapter.content.find(keyword)
if pos != -1:
position = pos
length = len(keyword)
metadata_extra["foreshadow_type"] = foreshadow.get('type', 'planted')
metadata_extra["strength"] = foreshadow.get('strength', 5)
break
elif mem.memory_type == 'plot_point' and analysis.plot_points:
for plot_point in analysis.plot_points:
if plot_point.get('content') in mem.content:
keyword = plot_point.get('keyword', '')
if keyword:
pos = chapter.content.find(keyword)
if pos != -1:
position = pos
length = len(keyword)
break
else:
# 如果数据库有位置,也从分析数据中提取额外的元数据
if analysis:
if mem.memory_type == 'hook' and analysis.hooks:
for hook in analysis.hooks:
if mem.title and hook.get('type') in mem.title:
metadata_extra["strength"] = hook.get('strength', 5)
metadata_extra["position_desc"] = hook.get('position', '')
break
elif mem.memory_type == 'foreshadow' and analysis.foreshadows:
for foreshadow in analysis.foreshadows:
if foreshadow.get('content') in mem.content:
metadata_extra["foreshadow_type"] = foreshadow.get('type', 'planted')
metadata_extra["strength"] = foreshadow.get('strength', 5)
break
annotation = {
"id": mem.id,
"type": mem.memory_type,
"title": mem.title,
"content": mem.content,
"importance": mem.importance_score or 0.5,
"position": position,
"length": length,
"tags": mem.tags or [],
"metadata": {
"is_foreshadow": mem.is_foreshadow,
"related_characters": mem.related_characters or [],
"related_locations": mem.related_locations or [],
**metadata_extra
}
}
annotations.append(annotation)
return {
"chapter_id": chapter_id,
"chapter_number": chapter.chapter_number,
"title": chapter.title,
"word_count": chapter.word_count or 0,
"annotations": annotations,
"has_analysis": analysis is not None,
"summary": {
"total_annotations": len(annotations),
"hooks": len([a for a in annotations if a["type"] == "hook"]),
"foreshadows": len([a for a in annotations if a["type"] == "foreshadow"]),
"plot_points": len([a for a in annotations if a["type"] == "plot_point"]),
"character_events": len([a for a in annotations if a["type"] == "character_event"])
}
}
@router.post("/{chapter_id}/analyze", summary="手动触发章节分析")
async def trigger_chapter_analysis(
chapter_id: str,
request: Request,
background_tasks: BackgroundTasks,
db: AsyncSession = Depends(get_db),
user_ai_service: AIService = Depends(get_user_ai_service)
):
"""
手动触发章节分析(用于重新分析或分析旧章节)
"""
# 从请求中获取用户ID
user_id = getattr(request.state, "user_id", None)
if not user_id:
raise HTTPException(status_code=401, detail="未登录")
# 验证章节存在
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
if not chapter.content or chapter.content.strip() == "":
raise HTTPException(status_code=400, detail="章节内容为空,无法分析")
# 获取项目信息
project_result = await db.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = project_result.scalar_one_or_none()
if not project:
raise HTTPException(status_code=404, detail="项目不存在")
# 创建分析任务
analysis_task = AnalysisTask(
chapter_id=chapter_id,
user_id=user_id,
project_id=project.id,
status='pending',
progress=0
)
db.add(analysis_task)
await db.commit()
task_id = analysis_task.id
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logger.info(f"📋 创建分析任务: {task_id}, 章节: {chapter_id}")
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# 刷新数据库会话,确保其他会话可以看到新任务
await db.refresh(analysis_task)
# 短暂延迟确保SQLite WAL完成写入(让其他会话可见)
await asyncio.sleep(3)
# 直接启动后台分析(并发执行)
background_tasks.add_task(
analyze_chapter_background,
chapter_id=chapter_id,
user_id=user_id,
project_id=project.id,
task_id=task_id,
ai_service=user_ai_service
)
return {
"task_id": task_id,
"chapter_id": chapter_id,
"status": "pending",
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"message": "分析任务已创建并开始执行"
}
def calculate_estimated_time(
chapter_count: int,
target_word_count: int,
enable_analysis: bool
) -> int:
"""
计算预估耗时(分钟)
基准:
- 生成3000字约需2分钟
- 分析约需1分钟
"""
generation_time_per_chapter = (target_word_count / 3000) * 2
analysis_time_per_chapter = 1 if enable_analysis else 0
total_time = chapter_count * (generation_time_per_chapter + analysis_time_per_chapter)
return max(1, int(total_time))
@router.post("/project/{project_id}/batch-generate", response_model=BatchGenerateResponse, summary="批量顺序生成章节内容")
async def batch_generate_chapters_in_order(
project_id: str,
batch_request: BatchGenerateRequest,
request: Request,
background_tasks: BackgroundTasks,
db: AsyncSession = Depends(get_db),
user_ai_service: AIService = Depends(get_user_ai_service)
):
"""
从指定章节开始,按顺序批量生成指定数量的章节
特性:
1. 严格按章节序号顺序生成(不可跳过)
2. 自动检测起始章节是否可生成
3. 可选同步分析(影响耗时和质量)
4. 失败后终止,不继续后续章节
"""
user_id = getattr(request.state, "user_id", None)
if not user_id:
raise HTTPException(status_code=401, detail="未登录")
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# 验证项目存在和用户权限
project = await verify_project_access(project_id, user_id, db)
# 获取项目的所有章节,按序号排序
result = await db.execute(
select(Chapter)
.where(Chapter.project_id == project_id)
.order_by(Chapter.chapter_number)
)
all_chapters = result.scalars().all()
if not all_chapters:
raise HTTPException(status_code=404, detail="项目没有章节")
# 计算要生成的章节范围
start_number = batch_request.start_chapter_number
end_number = start_number + batch_request.count - 1
# 筛选出要生成的章节
chapters_to_generate = [
ch for ch in all_chapters
if start_number <= ch.chapter_number <= end_number
]
if not chapters_to_generate:
raise HTTPException(status_code=404, detail="指定范围内没有章节")
# 验证起始章节的前置条件
first_chapter = chapters_to_generate[0]
can_generate, error_msg, _ = await check_prerequisites(db, first_chapter)
if not can_generate:
raise HTTPException(status_code=400, detail=f"起始章节无法生成:{error_msg}")
# 创建批量生成任务
batch_task = BatchGenerationTask(
project_id=project_id,
user_id=user_id,
start_chapter_number=start_number,
chapter_count=len(chapters_to_generate),
chapter_ids=[ch.id for ch in chapters_to_generate],
style_id=batch_request.style_id,
target_word_count=batch_request.target_word_count,
enable_analysis=batch_request.enable_analysis,
max_retries=batch_request.max_retries,
status='pending',
total_chapters=len(chapters_to_generate),
completed_chapters=0,
failed_chapters=[],
current_retry_count=0
)
db.add(batch_task)
await db.commit()
await db.refresh(batch_task)
batch_id = batch_task.id
# 计算预估耗时
estimated_time = calculate_estimated_time(
chapter_count=len(chapters_to_generate),
target_word_count=batch_request.target_word_count,
enable_analysis=batch_request.enable_analysis
)
logger.info(f"📦 创建批量生成任务: {batch_id}, 章节: 第{start_number}-{end_number}章, 预估耗时: {estimated_time}分钟")
# 启动后台批量生成任务,传递model参数
background_tasks.add_task(
execute_batch_generation_in_order,
batch_id=batch_id,
user_id=user_id,
ai_service=user_ai_service,
custom_model=batch_request.model
)
return BatchGenerateResponse(
batch_id=batch_id,
message=f"批量生成任务已创建,将生成 {len(chapters_to_generate)} 个章节",
chapters_to_generate=[
{
"id": ch.id,
"chapter_number": ch.chapter_number,
"title": ch.title
}
for ch in chapters_to_generate
],
estimated_time_minutes=estimated_time
)
@router.get("/batch-generate/{batch_id}/status", response_model=BatchGenerateStatusResponse, summary="查询批量生成任务状态")
async def get_batch_generation_status(
batch_id: str,
db: AsyncSession = Depends(get_db)
):
"""查询批量生成任务的状态和进度"""
result = await db.execute(
select(BatchGenerationTask).where(BatchGenerationTask.id == batch_id)
)
task = result.scalar_one_or_none()
if not task:
raise HTTPException(status_code=404, detail="批量生成任务不存在")
return BatchGenerateStatusResponse(
batch_id=task.id,
status=task.status,
total=task.total_chapters,
completed=task.completed_chapters,
current_chapter_id=task.current_chapter_id,
current_chapter_number=task.current_chapter_number,
current_retry_count=task.current_retry_count,
max_retries=task.max_retries,
failed_chapters=task.failed_chapters or [],
created_at=task.created_at.isoformat() if task.created_at else None,
started_at=task.started_at.isoformat() if task.started_at else None,
completed_at=task.completed_at.isoformat() if task.completed_at else None,
error_message=task.error_message
)
@router.get("/project/{project_id}/batch-generate/active", summary="获取项目当前运行中的批量生成任务")
async def get_active_batch_generation(
project_id: str,
2025-11-10 21:16:55 +08:00
request: Request,
db: AsyncSession = Depends(get_db)
):
"""
获取项目当前运行中的批量生成任务
用于页面刷新后恢复任务状态
"""
2025-11-10 21:16:55 +08:00
# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(project_id, user_id, db)
result = await db.execute(
select(BatchGenerationTask)
.where(BatchGenerationTask.project_id == project_id)
.where(BatchGenerationTask.status.in_(['pending', 'running']))
.order_by(BatchGenerationTask.created_at.desc())
.limit(1)
)
task = result.scalar_one_or_none()
if not task:
return {
"has_active_task": False,
"task": None
}
return {
"has_active_task": True,
"task": {
"batch_id": task.id,
"status": task.status,
"total": task.total_chapters,
"completed": task.completed_chapters,
"current_chapter_id": task.current_chapter_id,
"current_chapter_number": task.current_chapter_number,
"created_at": task.created_at.isoformat() if task.created_at else None,
"started_at": task.started_at.isoformat() if task.started_at else None
}
}
@router.post("/batch-generate/{batch_id}/cancel", summary="取消批量生成任务")
async def cancel_batch_generation(
batch_id: str,
db: AsyncSession = Depends(get_db)
):
"""取消正在进行的批量生成任务"""
result = await db.execute(
select(BatchGenerationTask).where(BatchGenerationTask.id == batch_id)
)
task = result.scalar_one_or_none()
if not task:
raise HTTPException(status_code=404, detail="批量生成任务不存在")
if task.status in ['completed', 'failed', 'cancelled']:
raise HTTPException(status_code=400, detail=f"任务已处于 {task.status} 状态,无法取消")
task.status = 'cancelled'
task.completed_at = datetime.now()
await db.commit()
logger.info(f"🛑 批量生成任务已取消: {batch_id}")
return {
"message": "批量生成任务已取消",
"batch_id": batch_id,
"completed_chapters": task.completed_chapters,
"total_chapters": task.total_chapters
}
async def execute_batch_generation_in_order(
batch_id: str,
user_id: str,
ai_service: AIService,
custom_model: Optional[str] = None
):
"""
按顺序执行批量生成任务(后台任务)
- 严格按章节序号顺序
- 任一章节失败则终止后续生成
- 可选同步分析
"""
db_session = None
write_lock = await get_db_write_lock(user_id)
try:
logger.info(f"📦 开始执行顺序批量生成任务: {batch_id}")
# 创建独立数据库会话
from app.database import get_engine
from sqlalchemy.ext.asyncio import async_sessionmaker, AsyncSession
engine = await get_engine(user_id)
AsyncSessionLocal = async_sessionmaker(
engine,
class_=AsyncSession,
expire_on_commit=False
)
db_session = AsyncSessionLocal()
# 获取任务
task_result = await db_session.execute(
select(BatchGenerationTask).where(BatchGenerationTask.id == batch_id)
)
task = task_result.scalar_one_or_none()
if not task:
logger.error(f"❌ 批量生成任务不存在: {batch_id}")
return
# 更新任务状态为运行中
async with write_lock:
task.status = 'running'
task.started_at = datetime.now()
await db_session.commit()
# 维护上一章的摘要,用于传递给下一章(防重复上下文)
last_generated_summary = None
# 按顺序生成每个章节
for idx, chapter_id in enumerate(task.chapter_ids, 1):
# 检查任务是否被取消
await db_session.refresh(task)
if task.status == 'cancelled':
logger.info(f"🛑 批量生成任务已被取消: {batch_id}")
return
# 更新当前章节
async with write_lock:
task.current_chapter_id = chapter_id
task.current_retry_count = 0 # 重置重试计数
await db_session.commit()
# 重试循环
retry_count = 0
chapter_success = False
chapter = None
last_error = None
while retry_count <= task.max_retries and not chapter_success:
try:
# 获取章节信息
chapter_result = await db_session.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise Exception(f"章节 {chapter_id} 不存在")
# 更新当前章节序号和重试次数
async with write_lock:
task.current_chapter_number = chapter.chapter_number
task.current_retry_count = retry_count
await db_session.commit()
if retry_count > 0:
logger.info(f"🔄 [{idx}/{task.total_chapters}] 重试生成章节 (第{retry_count}次): 第{chapter.chapter_number}章 《{chapter.title}")
else:
logger.info(f"📝 [{idx}/{task.total_chapters}] 开始生成章节: 第{chapter.chapter_number}章 《{chapter.title}")
# 检查前置条件(每次都检查,确保顺序性)
can_generate, error_msg, _ = await check_prerequisites(db_session, chapter)
if not can_generate:
raise Exception(f"前置条件不满足: {error_msg}")
# 生成章节内容(复用现有流式生成逻辑的核心部分),传递model参数
# 并获取生成后的摘要(如果生成函数支持返回)
generated_summary = await generate_single_chapter_for_batch(
db_session=db_session,
chapter=chapter,
user_id=user_id,
style_id=task.style_id,
target_word_count=task.target_word_count,
ai_service=ai_service,
write_lock=write_lock,
custom_model=custom_model,
previous_summary_context=last_generated_summary
)
# 更新上一章摘要,供下一章使用
if generated_summary:
last_generated_summary = f"{chapter.chapter_number}章《{chapter.title}》:{generated_summary}"
logger.info(f"📝 已更新上一章摘要上下文: {last_generated_summary[:50]}...")
logger.info(f"✅ 章节生成完成: 第{chapter.chapter_number}")
# 如果启用同步分析
if task.enable_analysis:
logger.info(f"🔍 开始同步分析章节: 第{chapter.chapter_number}")
# 分析重试机制(最多3次)
analysis_retry_count = 0
analysis_success = False
last_analysis_error = None
while analysis_retry_count < 3 and not analysis_success:
try:
if analysis_retry_count > 0:
logger.info(f"🔄 重试分析章节 (第{analysis_retry_count}次): 第{chapter.chapter_number}")
async with write_lock:
analysis_task = AnalysisTask(
chapter_id=chapter_id,
user_id=user_id,
project_id=task.project_id,
status='pending',
progress=0
)
db_session.add(analysis_task)
await db_session.commit()
await db_session.refresh(analysis_task)
# 同步执行分析,直接使用返回值判断成功/失败
analysis_result = await analyze_chapter_background(
chapter_id=chapter_id,
user_id=user_id,
project_id=task.project_id,
task_id=analysis_task.id,
ai_service=ai_service
)
# 直接根据返回值判断
if not analysis_result:
last_analysis_error = "分析函数返回失败"
logger.error(f"❌ 章节分析失败: 第{chapter.chapter_number}")
raise Exception(f"章节分析失败")
# 分析成功
analysis_success = True
logger.info(f"✅ 章节分析成功: 第{chapter.chapter_number}")
except Exception as analysis_error:
last_analysis_error = str(analysis_error)
analysis_retry_count += 1
if analysis_retry_count < 3:
# 还有重试机会,等待后重试
wait_time = min(2 ** analysis_retry_count, 10)
logger.warning(f"⏳ 分析失败,等待 {wait_time} 秒后重试...")
await asyncio.sleep(wait_time)
else:
# 达到最大重试次数,必须终止整个批量任务
logger.error(f"❌ 章节分析失败,已达最大重试次数(3次): 第{chapter.chapter_number}")
# 记录失败信息
failed_info = {
'chapter_id': chapter_id,
'chapter_number': chapter.chapter_number,
'title': chapter.title,
'error': f"分析失败(重试3次): {last_analysis_error}",
'retry_count': 3
}
async with write_lock:
if task.failed_chapters is None:
task.failed_chapters = []
task.failed_chapters.append(failed_info)
# 标记任务失败并终止
task.status = 'failed'
task.error_message = f"{chapter.chapter_number}章分析失败(重试3次): {last_analysis_error}"[:500]
task.completed_at = datetime.now()
task.current_retry_count = 0
await db_session.commit()
logger.error(f"🛑 批量生成中断: 第{chapter.chapter_number}章分析失败")
return # 立即终止整个批量生成任务
# 标记成功
chapter_success = True
# 更新完成数
async with write_lock:
task.completed_chapters += 1
task.current_retry_count = 0 # 重置重试计数
await db_session.commit()
logger.info(f"✅ 进度: {task.completed_chapters}/{task.total_chapters}")
except Exception as e:
last_error = str(e)
error_msg = f"{chapter.chapter_number if chapter else '?'}章出错: {last_error}"
logger.error(f"{error_msg}")
retry_count += 1
# 如果还有重试机会,等待一小段时间后重试
if retry_count <= task.max_retries:
wait_time = min(2 ** retry_count, 10) # 指数退避,最多等待10秒
logger.info(f"⏳ 等待 {wait_time} 秒后重试...")
await asyncio.sleep(wait_time)
else:
# 达到最大重试次数,记录失败信息
logger.error(f"❌ 章节生成失败,已达最大重试次数({task.max_retries}): 第{chapter.chapter_number if chapter else '?'}")
failed_info = {
'chapter_id': chapter_id,
'chapter_number': chapter.chapter_number if chapter else -1,
'title': chapter.title if chapter else '未知',
'error': last_error,
'retry_count': retry_count - 1
}
async with write_lock:
if task.failed_chapters is None:
task.failed_chapters = []
task.failed_chapters.append(failed_info)
# 标记任务失败并终止
task.status = 'failed'
task.error_message = f"{chapter.chapter_number}章生成失败(重试{retry_count-1}次): {last_error}"[:500]
task.completed_at = datetime.now()
task.current_retry_count = 0
await db_session.commit()
# ⚠️ 如果启用了同步分析,任何错误都应该中断任务
# 因为章节生成或分析失败会影响后续章节的职业更新和剧情连贯性
if task.enable_analysis:
logger.error(f"🛑 批量生成中断: 因启用同步分析,任何错误都会中断任务以确保职业信息和剧情连贯性")
else:
logger.error(f"🛑 批量生成终止于第{chapter.chapter_number}")
return
# 全部完成
async with write_lock:
task.status = 'completed'
task.completed_at = datetime.now()
task.current_chapter_id = None
task.current_chapter_number = None
await db_session.commit()
logger.info(f"✅ 批量生成任务全部完成: {batch_id}, 成功生成 {task.completed_chapters}")
except Exception as e:
logger.error(f"❌ 批量生成任务异常: {str(e)}", exc_info=True)
if db_session and task:
try:
async with write_lock:
task.status = 'failed'
task.error_message = str(e)[:500]
task.completed_at = datetime.now()
await db_session.commit()
except Exception as commit_error:
logger.error(f"❌ 更新任务失败状态失败: {str(commit_error)}")
finally:
if db_session:
await db_session.close()
async def generate_single_chapter_for_batch(
db_session: AsyncSession,
chapter: Chapter,
user_id: str,
style_id: Optional[int],
target_word_count: int,
ai_service: AIService,
write_lock: Lock,
custom_model: Optional[str] = None,
previous_summary_context: Optional[str] = None
) -> Optional[str]:
"""
为批量生成执行单个章节的生成(非流式)
复用现有生成逻辑的核心部分
Returns:
生成章节的摘要(前200字)
"""
# 获取项目信息
project_result = await db_session.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = project_result.scalar_one_or_none()
if not project:
raise Exception("项目不存在")
# 获取项目的大纲模式
outline_mode = project.outline_mode if project else 'one-to-many'
logger.info(f"📋 批量生成 - 项目大纲模式: {outline_mode}")
# 获取对应的大纲(优先使用 chapter.outline_id 直接关联)
if chapter.outline_id:
outline_result = await db_session.execute(
select(Outline).where(Outline.id == chapter.outline_id)
)
else:
# 回退到按序号查找
outline_result = await db_session.execute(
select(Outline)
.where(Outline.project_id == chapter.project_id)
.where(Outline.order_index == chapter.chapter_number)
)
outline = outline_result.scalar_one_or_none()
# 获取写作风格
style_content = ""
if style_id:
style_result = await db_session.execute(
select(WritingStyle).where(WritingStyle.id == style_id)
)
style = style_result.scalar_one_or_none()
if style:
if style.user_id is None or style.user_id == user_id:
style_content = style.prompt_content or ""
# 🚀 根据大纲模式选择独立的上下文构建器(批量生成)
if outline_mode == 'one-to-one':
# 1-1模式
logger.info(f"🔧 批量生成 - [1-1模式] 使用 OneToOneContextBuilder")
context_builder = OneToOneContextBuilder(
memory_service=memory_service,
foreshadow_service=foreshadow_service
)
chapter_context = await context_builder.build(
chapter=chapter,
project=project,
outline=outline,
user_id=user_id,
db=db_session,
target_word_count=target_word_count
)
else:
# 1-N模式:使用独立的完整构建器
logger.info(f"🔧 批量生成 - [1-N模式] 使用 OneToManyContextBuilder")
context_builder = OneToManyContextBuilder(
memory_service=memory_service,
foreshadow_service=foreshadow_service
)
chapter_context = await context_builder.build(
chapter=chapter,
project=project,
outline=outline,
user_id=user_id,
db=db_session,
style_content=style_content,
target_word_count=target_word_count
)
# 日志输出统计信息
logger.info(f"📊 批量生成 - 优化上下文统计:")
logger.info(f" - 章节序号: {chapter.chapter_number}")
logger.info(f" - 衔接锚点长度: {len(chapter_context.continuation_point or '')} 字符")
logger.info(f" - 相关记忆: {chapter_context.context_stats.get('memory_count', 0)}")
logger.info(f" - 总上下文长度: {chapter_context.context_stats.get('total_length', 0)} 字符")
# 🚀 根据大纲模式选择提示词模板(批量生成)
# 统一使用 context_builder 构建的 chapter_context 结果,与单章生成保持一致
if outline_mode == 'one-to-one':
# 1-1模式
if chapter_context.continuation_point:
# 有上一章内容
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_ONE_NEXT", user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=chapter.chapter_number,
chapter_title=chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
genre=project.genre or '未设定',
narrative_perspective=project.narrative_perspective or '第三人称',
previous_chapter_content=chapter_context.continuation_point,
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
relevant_memories=chapter_context.relevant_memories or '暂无相关记忆',
previous_chapter_summary=chapter_context.previous_chapter_summary or ''
)
else:
# 第一章
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_ONE", user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=chapter.chapter_number,
chapter_title=chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
genre=project.genre or '未设定',
narrative_perspective=project.narrative_perspective or '第三人称',
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
relevant_memories=chapter_context.relevant_memories or '暂无相关记忆'
)
else:
# 1-n模式:使用 context_builder 构建的结果,与单章生成保持一致
if chapter_context.continuation_point:
# 有前置内容,使用 WITH_CONTEXT 模板
# 优先使用 context_builder 的摘要,其次使用传入的 previous_summary_context
final_prev_summary = "(无上一章摘要,请根据锚点续写)"
if chapter_context.previous_chapter_summary:
final_prev_summary = chapter_context.previous_chapter_summary
elif previous_summary_context:
final_prev_summary = previous_summary_context
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_MANY_NEXT", user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=chapter.chapter_number,
chapter_title=chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
continuation_point=chapter_context.continuation_point,
genre=project.genre or '未设定',
narrative_perspective=project.narrative_perspective or '第三人称',
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
previous_chapter_summary=final_prev_summary,
recent_chapters_context=chapter_context.recent_chapters_context or '',
relevant_memories=chapter_context.relevant_memories or ''
)
else:
# 第一章,使用无前置内容模板
template = await PromptService.get_template("CHAPTER_GENERATION_ONE_TO_MANY", user_id, db_session)
base_prompt = PromptService.format_prompt(
template,
project_title=project.title,
chapter_number=chapter.chapter_number,
chapter_title=chapter.title,
chapter_outline=chapter_context.chapter_outline,
target_word_count=target_word_count,
genre=project.genre or '未设定',
narrative_perspective=project.narrative_perspective or '第三人称',
characters_info=chapter_context.chapter_characters or '暂无角色信息',
chapter_careers=chapter_context.chapter_careers or '暂无职业信息',
foreshadow_reminders=chapter_context.foreshadow_reminders or '暂无需要关注的伏笔',
relevant_memories=chapter_context.relevant_memories or '暂无相关记忆'
)
# 应用写作风格
if style_content:
prompt = WritingStyleManager.apply_style_to_prompt(base_prompt, style_content)
else:
prompt = base_prompt
# 🎨 方案一:将写作风格注入到系统提示词(批量生成)
system_prompt_with_style = None
if style_content:
system_prompt_with_style = f"""【🎨 写作风格要求 - 最高优先级】
{style_content}
⚠️ 请严格遵循上述写作风格要求进行创作,这是最重要的指令!
确保在整个章节创作过程中始终保持风格的一致性。"""
logger.info(f"✅ 批量生成 - 已将写作风格注入系统提示词({len(style_content)}字符)")
# 🔢 计算 max_tokens 限制(批量生成)
# 中文字符约 1.5-2 个 token,使用 2.5 倍系数确保有足够空间完成段落
# 同时设置上限防止过长,下限确保基本可用
calculated_max_tokens = int(target_word_count * 3)
calculated_max_tokens = max(2000, min(calculated_max_tokens, 16000)) # 限制在 2000-16000 之间
logger.info(f"📊 批量生成 - 目标字数: {target_word_count}, 计算 max_tokens: {calculated_max_tokens}")
# 非流式生成内容
full_content = ""
# 准备生成参数
generate_kwargs = {
"prompt": prompt,
"system_prompt": system_prompt_with_style,
"tool_choice": "required",
"max_tokens": calculated_max_tokens # 添加 max_tokens 限制
}
# 如果传入了自定义模型,使用指定的模型
if custom_model:
generate_kwargs["model"] = custom_model
logger.info(f" 批量生成使用自定义模型: {custom_model}")
# 批量生成中的流式生成(非SSE,不需要修改进度显示)
async for chunk in ai_service.generate_text_stream(**generate_kwargs):
full_content += chunk
# 更新章节内容到数据库(使用锁保护)
async with write_lock:
old_word_count = chapter.word_count or 0
chapter.content = full_content
new_word_count = len(full_content)
chapter.word_count = new_word_count
chapter.status = "completed"
# 更新项目字数
project.current_words = project.current_words - old_word_count + new_word_count
# 记录生成历史
history = GenerationHistory(
project_id=chapter.project_id,
chapter_id=chapter.id,
prompt=f"批量生成: 第{chapter.chapter_number}{chapter.title}",
generated_content=full_content[:500] if len(full_content) > 500 else full_content,
model="default"
)
db_session.add(history)
await db_session.commit()
await db_session.refresh(chapter)
logger.info(f"✅ 单章节生成完成: 第{chapter.chapter_number}章,共 {new_word_count}")
# 生成简短摘要返回
summary_preview = full_content[:300].replace('\n', ' ') if full_content else ""
# 🔮 批量生成后自动标记计划在本章埋入的伏笔
try:
async with write_lock:
plant_result = await foreshadow_service.auto_plant_pending_foreshadows(
db=db_session,
project_id=chapter.project_id,
chapter_id=chapter.id,
chapter_number=chapter.chapter_number,
chapter_content=full_content
)
if plant_result.get('planted_count', 0) > 0:
logger.info(f"🔮 批量生成 - 自动标记伏笔已埋入: {plant_result['planted_count']}")
except Exception as plant_error:
logger.warning(f"⚠️ 批量生成 - 自动标记伏笔埋入失败: {str(plant_error)}")
return summary_preview
# ==================== 章节重新生成相关API ====================
@router.post("/{chapter_id}/regenerate-stream", summary="流式重新生成章节内容")
async def regenerate_chapter_stream(
chapter_id: str,
request: Request,
regenerate_request: ChapterRegenerateRequest,
background_tasks: BackgroundTasks,
db: AsyncSession = Depends(get_db),
user_ai_service: AIService = Depends(get_user_ai_service)
):
"""
根据分析建议或自定义指令重新生成章节内容(流式返回)
工作流程:
1. 验证章节和分析结果
2. 创建重新生成任务
3. 构建修改指令
4. 流式生成新内容
5. 保存为版本历史
6. 可选自动应用
"""
user_id = getattr(request.state, 'user_id', None)
if not user_id:
raise HTTPException(status_code=401, detail="未登录")
# 验证章节存在
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
if not chapter.content or chapter.content.strip() == "":
raise HTTPException(status_code=400, detail="章节内容为空,无法重新生成")
# 验证用户权限
await verify_project_access(chapter.project_id, user_id, db)
# 获取分析结果(如果使用分析建议)
analysis = None
if regenerate_request.modification_source in ['analysis_suggestions', 'mixed']:
analysis_result = await db.execute(
select(PlotAnalysis)
.where(PlotAnalysis.chapter_id == chapter_id)
.order_by(PlotAnalysis.created_at.desc())
.limit(1)
)
analysis = analysis_result.scalar_one_or_none()
if not analysis:
raise HTTPException(status_code=404, detail="该章节暂无分析结果")
# 预先获取项目上下文数据和写作风格
async for temp_db in get_db(request):
try:
# 获取项目信息
project_result = await temp_db.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = project_result.scalar_one_or_none()
# 获取角色信息(包含职业信息)
characters_result = await temp_db.execute(
select(Character).where(Character.project_id == chapter.project_id)
)
characters = characters_result.scalars().all()
# 📝 根据大纲模式智能筛选相关角色(重新生成)
outline_mode_result = await temp_db.execute(
select(Project.outline_mode).where(Project.id == chapter.project_id)
)
outline_mode = outline_mode_result.scalar_one_or_none() or 'one-to-many'
filter_character_names = None
if outline_mode == 'one-to-one':
# 1-1模式:从outline.structure中提取characters字段(优先使用 outline_id
if chapter.outline_id:
outline_result_temp = await temp_db.execute(
select(Outline.structure)
.where(Outline.id == chapter.outline_id)
)
else:
outline_result_temp = await temp_db.execute(
select(Outline.structure)
.where(Outline.project_id == chapter.project_id)
.where(Outline.order_index == chapter.chapter_number)
)
outline_structure = outline_result_temp.scalar_one_or_none()
if outline_structure:
try:
structure = json.loads(outline_structure)
filter_character_names = structure.get('characters', [])
if filter_character_names:
logger.info(f"📋 重新生成 - 1-1模式:从structure提取角色列表 {filter_character_names}")
except json.JSONDecodeError:
logger.warning(f"⚠️ 重新生成 - outline.structure解析失败,使用全部角色")
else:
# 1-n模式:从chapter.expansion_plan中提取character_focus字段
if chapter.expansion_plan:
try:
plan = json.loads(chapter.expansion_plan)
filter_character_names = plan.get('character_focus', [])
if filter_character_names:
logger.info(f"📋 重新生成 - 1-n模式:从expansion_plan提取角色焦点 {filter_character_names}")
except json.JSONDecodeError:
logger.warning(f"⚠️ 重新生成 - expansion_plan解析失败,使用全部角色")
characters_info_with_careers = await build_characters_info_with_careers(
db=temp_db,
project_id=chapter.project_id,
characters=characters,
filter_character_names=filter_character_names
)
# 获取章节大纲(优先使用 chapter.outline_id 直接关联)
if chapter.outline_id:
outline_result = await temp_db.execute(
select(Outline).where(Outline.id == chapter.outline_id)
)
else:
# 回退到按序号查找
outline_result = await temp_db.execute(
select(Outline)
.where(Outline.project_id == chapter.project_id)
.where(Outline.order_index == chapter.chapter_number)
)
outline = outline_result.scalar_one_or_none()
# 获取写作风格
style_content = ""
style_id = regenerate_request.style_id
# 如果没有指定风格,尝试使用项目的默认风格
if not style_id:
from app.models.project_default_style import ProjectDefaultStyle
default_style_result = await temp_db.execute(
select(ProjectDefaultStyle.style_id)
.where(ProjectDefaultStyle.project_id == chapter.project_id)
)
default_style_id = default_style_result.scalar_one_or_none()
if default_style_id:
style_id = default_style_id
logger.info(f"📝 使用项目默认写作风格: {style_id}")
# 获取风格内容
if style_id:
style_result = await temp_db.execute(
select(WritingStyle).where(WritingStyle.id == style_id)
)
style = style_result.scalar_one_or_none()
if style:
# 验证风格是否可用:全局预设风格(user_id为NULL)或者当前用户的自定义风格
if style.user_id is None or style.user_id == user_id:
style_content = style.prompt_content or ""
style_type = "全局预设" if style.user_id is None else "用户自定义"
logger.info(f"✅ 使用写作风格: {style.name} ({style_type})")
else:
logger.warning(f"⚠️ 风格 {style_id} 不属于当前项目,跳过")
else:
logger.warning(f"⚠️ 未找到风格 {style_id}")
else:
logger.info("️ 未指定写作风格,使用默认提示词")
# 构建项目上下文
project_context = {
'project_title': project.title if project else '未知',
'genre': project.genre if project else '未设定',
'theme': project.theme if project else '未设定',
'narrative_perspective': project.narrative_perspective if project else '第三人称',
'time_period': project.world_time_period if project else '未设定',
'location': project.world_location if project else '未设定',
'atmosphere': project.world_atmosphere if project else '未设定',
'characters_info': characters_info_with_careers,
'chapter_outline': outline.content if outline else chapter.summary or '暂无大纲',
'previous_context': '' # 可以后续扩展添加前置章节上下文
}
finally:
await temp_db.close()
break
async def event_generator():
"""流式生成事件生成器"""
db_session = None
db_committed = False
# 初始化标准进度追踪器
from app.utils.sse_response import WizardProgressTracker
tracker = WizardProgressTracker("章节重新生成")
try:
yield await tracker.start()
# 创建独立数据库会话
async for db_session in get_db(request):
yield await tracker.loading("加载章节信息...", 0.5)
# 创建重新生成任务
regen_task = RegenerationTask(
chapter_id=chapter_id,
analysis_id=analysis.id if analysis else None,
user_id=user_id,
project_id=chapter.project_id,
modification_instructions="", # 稍后填充
original_suggestions=analysis.suggestions if analysis else None,
selected_suggestion_indices=regenerate_request.selected_suggestion_indices,
custom_instructions=regenerate_request.custom_instructions,
style_id=regenerate_request.style_id,
target_word_count=regenerate_request.target_word_count,
focus_areas=regenerate_request.focus_areas,
preserve_elements=regenerate_request.preserve_elements.model_dump() if regenerate_request.preserve_elements else None,
status='running',
original_content=chapter.content,
original_word_count=chapter.word_count or len(chapter.content),
version_note=regenerate_request.version_note,
started_at=datetime.now()
)
db_session.add(regen_task)
await db_session.commit()
await db_session.refresh(regen_task)
task_id = regen_task.id
logger.info(f"📝 创建重新生成任务: {task_id}")
yield await tracker.preparing("准备重新生成...")
yield await SSEResponse.send_event(
event='task_created',
data={'task_id': task_id}
)
# 初始化重新生成器
regenerator = ChapterRegenerator(user_ai_service)
# === 生成阶段 ===
full_content = ""
estimated_total = regenerate_request.target_word_count or len(chapter.content)
yield await tracker.generating(
current_chars=0,
estimated_total=estimated_total
)
async for event in regenerator.regenerate_with_feedback(
chapter=chapter,
analysis=analysis,
regenerate_request=regenerate_request,
project_context=project_context,
style_content=style_content,
user_id=user_id,
db=db_session
):
# 处理不同类型的事件
if event['type'] == 'chunk':
# 内容块
chunk = event['content']
full_content += chunk
yield await tracker.generating_chunk(chunk)
# 定期更新进度
if len(full_content) % 500 == 0:
yield await tracker.generating(
current_chars=len(full_content),
estimated_total=estimated_total,
message=f'重新生成中... 已生成 {len(full_content)}'
)
elif event['type'] == 'progress':
# 进度更新 - 映射到对应阶段
progress = event.get('progress', 0)
message = event.get('message', '')
if progress < 20:
yield await tracker.preparing(message)
elif progress < 85:
yield await tracker.generating(
current_chars=len(full_content),
estimated_total=estimated_total,
message=message
)
else:
yield await tracker.parsing(message)
await asyncio.sleep(0)
# === 保存阶段 ===
yield await tracker.saving("保存重新生成的内容...", 0.5)
# 更新任务状态
regen_task.status = 'completed'
regen_task.regenerated_content = full_content
regen_task.regenerated_word_count = len(full_content)
regen_task.completed_at = datetime.now()
# 计算差异统计
diff_stats = regenerator.calculate_content_diff(chapter.content, full_content)
await db_session.commit()
db_committed = True
yield await tracker.saving("保存完成", 0.9)
# === 完成阶段 ===
yield await tracker.complete("重新生成完成!")
# 发送结果数据
yield await tracker.result({
'task_id': task_id,
'word_count': len(full_content),
'version_number': regen_task.version_number,
'auto_applied': regenerate_request.auto_apply,
'diff_stats': diff_stats
})
# 发送完成信号
yield await tracker.done()
logger.info(f"✅ 章节重新生成完成: {chapter_id}, 任务: {task_id}")
break
except Exception as e:
logger.error(f"❌ 重新生成失败: {str(e)}", exc_info=True)
# 更新任务状态为失败
if db_session and not db_committed:
try:
task_result = await db_session.execute(
select(RegenerationTask).where(RegenerationTask.chapter_id == chapter_id)
.order_by(RegenerationTask.created_at.desc()).limit(1)
)
task = task_result.scalar_one_or_none()
if task:
task.status = 'failed'
task.error_message = str(e)[:500]
task.completed_at = datetime.now()
await db_session.commit()
except Exception as update_error:
logger.error(f"更新任务失败状态失败: {str(update_error)}")
yield await tracker.error(str(e))
finally:
if db_session:
try:
if not db_committed and db_session.in_transaction():
await db_session.rollback()
await db_session.close()
except Exception as close_error:
logger.error(f"关闭数据库会话失败: {str(close_error)}")
return create_sse_response(event_generator())
@router.get("/{chapter_id}/regeneration/tasks", summary="获取章节的重新生成任务列表")
async def get_regeneration_tasks(
chapter_id: str,
request: Request,
limit: int = Query(10, ge=1, le=50),
db: AsyncSession = Depends(get_db)
):
"""获取指定章节的重新生成任务历史"""
user_id = getattr(request.state, 'user_id', None)
# 验证章节存在和权限
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
await verify_project_access(chapter.project_id, user_id, db)
# 获取任务列表
result = await db.execute(
select(RegenerationTask)
.where(RegenerationTask.chapter_id == chapter_id)
.order_by(RegenerationTask.created_at.desc())
.limit(limit)
)
tasks = result.scalars().all()
return {
"chapter_id": chapter_id,
"total": len(tasks),
"tasks": [
{
"task_id": task.id,
"status": task.status,
"version_number": task.version_number,
"version_note": task.version_note,
"original_word_count": task.original_word_count,
"regenerated_word_count": task.regenerated_word_count,
"created_at": task.created_at.isoformat() if task.created_at else None,
"completed_at": task.completed_at.isoformat() if task.completed_at else None
}
for task in tasks
]
}
@router.put("/{chapter_id}/expansion-plan", response_model=dict, summary="更新章节规划信息")
async def update_chapter_expansion_plan(
chapter_id: str,
expansion_plan: ExpansionPlanUpdate,
request: Request,
db: AsyncSession = Depends(get_db)
):
"""
更新章节的展开规划信息和情节概要
Args:
chapter_id: 章节ID
expansion_plan: 规划信息更新数据(包含summary和expansion_plan字段)
Returns:
更新后的章节规划信息
"""
# 获取章节
result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
# 验证用户权限
user_id = getattr(request.state, 'user_id', None)
await verify_project_access(chapter.project_id, user_id, db)
# 准备更新数据(排除None值)
plan_data = expansion_plan.model_dump(exclude_unset=True, exclude_none=True)
# 分离summary和expansion_plan数据
summary_value = plan_data.pop('summary', None)
# 更新summary字段(如果提供)
if summary_value is not None:
chapter.summary = summary_value
logger.info(f"更新章节概要: {chapter_id}")
# 更新expansion_plan字段(如果有其他字段)
if plan_data:
if chapter.expansion_plan:
try:
existing_plan = json.loads(chapter.expansion_plan)
# 合并更新
existing_plan.update(plan_data)
chapter.expansion_plan = json.dumps(existing_plan, ensure_ascii=False)
except json.JSONDecodeError:
logger.warning(f"章节 {chapter_id} 的expansion_plan格式错误,将覆盖")
chapter.expansion_plan = json.dumps(plan_data, ensure_ascii=False)
else:
chapter.expansion_plan = json.dumps(plan_data, ensure_ascii=False)
await db.commit()
await db.refresh(chapter)
logger.info(f"章节规划更新成功: {chapter_id}")
# 返回更新后的规划数据
updated_plan = json.loads(chapter.expansion_plan) if chapter.expansion_plan else None
return {
"id": chapter.id,
"summary": chapter.summary,
"expansion_plan": updated_plan,
"message": "规划信息更新成功"
}
# ==================== 局部重写相关API ====================
@router.post("/{chapter_id}/partial-regenerate-stream", summary="流式局部重写选中内容")
async def partial_regenerate_stream(
chapter_id: str,
request: Request,
partial_request: PartialRegenerateRequest,
db: AsyncSession = Depends(get_db),
user_ai_service: AIService = Depends(get_user_ai_service)
):
"""
对章节中选中的部分内容进行流式重写
工作流程:
1. 验证章节和选中内容的有效性
2. 截取上下文(前后文)
3. 根据用户要求构建提示词
4. 流式生成重写内容
5. 返回重写结果(不自动保存,由前端决定是否应用)
"""
user_id = getattr(request.state, 'user_id', None)
if not user_id:
raise HTTPException(status_code=401, detail="未登录")
# 验证章节存在
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
if not chapter.content or chapter.content.strip() == "":
raise HTTPException(status_code=400, detail="章节内容为空")
# 验证用户权限
await verify_project_access(chapter.project_id, user_id, db)
# 验证位置参数
content_length = len(chapter.content)
if partial_request.start_position >= content_length:
raise HTTPException(status_code=400, detail="起始位置超出内容范围")
if partial_request.end_position > content_length:
raise HTTPException(status_code=400, detail="结束位置超出内容范围")
if partial_request.start_position >= partial_request.end_position:
raise HTTPException(status_code=400, detail="起始位置必须小于结束位置")
# 验证选中的文本是否匹配
actual_selected = chapter.content[partial_request.start_position:partial_request.end_position]
if actual_selected != partial_request.selected_text:
# 位置可能有偏差,尝试在附近查找
search_start = max(0, partial_request.start_position - 50)
search_end = min(content_length, partial_request.end_position + 50)
search_area = chapter.content[search_start:search_end]
if partial_request.selected_text in search_area:
# 找到了,更新位置
offset = search_area.find(partial_request.selected_text)
partial_request.start_position = search_start + offset
partial_request.end_position = partial_request.start_position + len(partial_request.selected_text)
logger.info(f"⚠️ 选中文本位置校正: {partial_request.start_position}-{partial_request.end_position}")
else:
raise HTTPException(
status_code=400,
detail="选中的文本与章节内容不匹配,请刷新页面后重试"
)
# 预先获取项目信息和写作风格
project_result = await db.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = project_result.scalar_one_or_none()
# 获取写作风格
style_content = ""
style_id = partial_request.style_id
# 如果没有指定风格,尝试使用项目的默认风格
if not style_id:
from app.models.project_default_style import ProjectDefaultStyle
default_style_result = await db.execute(
select(ProjectDefaultStyle.style_id)
.where(ProjectDefaultStyle.project_id == chapter.project_id)
)
default_style_id = default_style_result.scalar_one_or_none()
if default_style_id:
style_id = default_style_id
logger.info(f"📝 局部重写 - 使用项目默认写作风格: {style_id}")
# 获取风格内容
if style_id:
style_result = await db.execute(
select(WritingStyle).where(WritingStyle.id == style_id)
)
style = style_result.scalar_one_or_none()
if style:
if style.user_id is None or style.user_id == user_id:
style_content = style.prompt_content or ""
style_type = "全局预设" if style.user_id is None else "用户自定义"
logger.info(f"✅ 局部重写 - 使用写作风格: {style.name} ({style_type})")
else:
logger.warning(f"⚠️ 风格 {style_id} 不属于当前用户,跳过")
async def event_generator():
"""流式生成事件生成器"""
from app.utils.sse_response import WizardProgressTracker
tracker = WizardProgressTracker("局部重写")
try:
yield await tracker.start()
yield await tracker.loading("准备重写上下文...", 0.3)
# 截取上下文
context_chars = partial_request.context_chars
start_pos = partial_request.start_position
end_pos = partial_request.end_position
# 前文:从start_pos往前截取context_chars个字符
context_before_start = max(0, start_pos - context_chars)
context_before = chapter.content[context_before_start:start_pos]
# 后文:从end_pos往后截取context_chars个字符
context_after_end = min(content_length, end_pos + context_chars)
context_after = chapter.content[end_pos:context_after_end]
# 原文
original_text = partial_request.selected_text
original_word_count = len(original_text)
logger.info(f"📝 局部重写 - 原文: {original_word_count}字, 前文: {len(context_before)}字, 后文: {len(context_after)}")
yield await tracker.loading("构建提示词...", 0.5)
# 构建字数要求
length_requirement = ""
if partial_request.length_mode == "similar":
min_words = int(original_word_count * 0.8)
max_words = int(original_word_count * 1.2)
length_requirement = f"保持与原文相近的字数(约{original_word_count}字,允许{min_words}-{max_words}字浮动)"
elif partial_request.length_mode == "expand":
min_words = int(original_word_count * 1.2)
max_words = int(original_word_count * 2.0)
length_requirement = f"适当扩展内容(目标{min_words}-{max_words}字)"
elif partial_request.length_mode == "condense":
min_words = int(original_word_count * 0.5)
max_words = int(original_word_count * 0.8)
length_requirement = f"精简压缩内容(目标{min_words}-{max_words}字)"
elif partial_request.length_mode == "custom" and partial_request.target_word_count:
length_requirement = f"目标字数:约{partial_request.target_word_count}字(允许±20%浮动)"
else:
length_requirement = f"保持与原文相近的字数(约{original_word_count}字)"
# 获取提示词模板
template = await PromptService.get_template("PARTIAL_REGENERATE", user_id, db)
if not template:
template = PromptService.PARTIAL_REGENERATE
# 构建提示词
prompt = PromptService.format_prompt(
template,
context_before=context_before if context_before else "(这是章节开头)",
original_word_count=original_word_count,
selected_text=original_text,
context_after=context_after if context_after else "(这是章节结尾)",
user_instructions=partial_request.user_instructions,
length_requirement=length_requirement,
style_content=style_content if style_content else "保持与原文一致的叙事风格"
)
yield await tracker.preparing("开始生成...")
# 计算 max_tokens
if partial_request.length_mode == "expand":
target_words = int(original_word_count * 2.0)
elif partial_request.length_mode == "custom" and partial_request.target_word_count:
target_words = partial_request.target_word_count
else:
target_words = int(original_word_count * 1.5)
calculated_max_tokens = max(500, min(int(target_words * 3), 8000))
# 流式生成
full_content = ""
chunk_count = 0
yield await tracker.generating(
current_chars=0,
estimated_total=target_words
)
async for chunk in user_ai_service.generate_text_stream(
prompt=prompt,
max_tokens=calculated_max_tokens
):
full_content += chunk
chunk_count += 1
# 发送内容块
yield await tracker.generating_chunk(chunk)
# 每5个chunk发送一次进度更新
if chunk_count % 5 == 0:
yield await tracker.generating(
current_chars=len(full_content),
estimated_total=target_words,
message=f'正在重写中... 已生成 {len(full_content)}'
)
await asyncio.sleep(0)
# 清理输出(移除可能的前后缀)
full_content = full_content.strip()
# 移除常见的AI输出前缀
prefixes_to_remove = [
"重写后:", "重写后:", "改写后:", "改写后:",
"以下是重写后的内容:", "以下是重写后的内容:",
"重写内容:", "重写内容:"
]
for prefix in prefixes_to_remove:
if full_content.startswith(prefix):
full_content = full_content[len(prefix):].strip()
break
# 移除首尾可能的引号
if (full_content.startswith('"') and full_content.endswith('"')) or \
(full_content.startswith("'") and full_content.endswith("'")):
full_content = full_content[1:-1]
if (full_content.startswith('') and full_content.endswith('')) or \
(full_content.startswith('') and full_content.endswith('')):
full_content = full_content[1:-1]
new_word_count = len(full_content)
logger.info(f"✅ 局部重写完成: 原文{original_word_count}字 -> 新文{new_word_count}")
# 完成
yield await tracker.complete("重写完成!")
# 发送结果数据
yield await tracker.result({
'new_text': full_content,
'word_count': new_word_count,
'original_word_count': original_word_count,
'start_position': partial_request.start_position,
'end_position': partial_request.end_position
})
yield await tracker.done()
except Exception as e:
logger.error(f"❌ 局部重写失败: {str(e)}", exc_info=True)
yield await tracker.error(str(e))
return create_sse_response(event_generator())
@router.post("/{chapter_id}/apply-partial-regenerate", summary="应用局部重写结果")
async def apply_partial_regenerate(
chapter_id: str,
request: Request,
apply_request: dict,
db: AsyncSession = Depends(get_db)
):
"""
将局部重写的结果应用到章节内容中
请求体:
- new_text: 重写后的新内容
- start_position: 原文起始位置
- end_position: 原文结束位置
"""
user_id = getattr(request.state, 'user_id', None)
if not user_id:
raise HTTPException(status_code=401, detail="未登录")
# 验证章节存在
chapter_result = await db.execute(
select(Chapter).where(Chapter.id == chapter_id)
)
chapter = chapter_result.scalar_one_or_none()
if not chapter:
raise HTTPException(status_code=404, detail="章节不存在")
# 验证用户权限
await verify_project_access(chapter.project_id, user_id, db)
# 获取参数
new_text = apply_request.get('new_text', '')
start_position = apply_request.get('start_position', 0)
end_position = apply_request.get('end_position', 0)
if not new_text:
raise HTTPException(status_code=400, detail="新内容不能为空")
# 验证位置有效性
content_length = len(chapter.content)
if start_position < 0 or end_position > content_length or start_position >= end_position:
raise HTTPException(status_code=400, detail="位置参数无效")
# 构建新内容
old_word_count = chapter.word_count or 0
new_content = chapter.content[:start_position] + new_text + chapter.content[end_position:]
new_word_count = len(new_content)
# 更新章节
chapter.content = new_content
chapter.word_count = new_word_count
# 更新项目字数
project_result = await db.execute(
select(Project).where(Project.id == chapter.project_id)
)
project = project_result.scalar_one_or_none()
if project:
project.current_words = project.current_words - old_word_count + new_word_count
await db.commit()
await db.refresh(chapter)
logger.info(f"✅ 局部重写已应用: 章节{chapter_id}, {old_word_count}字 -> {new_word_count}")
return {
"success": True,
"chapter_id": chapter_id,
"word_count": new_word_count,
"old_word_count": old_word_count,
"message": "局部重写已应用"
}