Interview/chat prompt layers, reply planner, style profiles, memory injection, interview meta store, and related tests. Work not finished. Made-with: Cursor
273 lines
14 KiB
Plaintext
273 lines
14 KiB
Plaintext
# =============================================================================
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# Life Echo API — production(生产)
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#
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# 仓库维护本文件;production 发布时 workflow 会上传并复制为运行时 .env。
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# 若仓库可被非授权人员访问,请不要在此文件中保留真实密钥。
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# =============================================================================
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# =============================================================================
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# Docker Compose(宿主机独立 Caddy 反代到本 API)
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# =============================================================================
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# 映射到宿主机的端口,默认 8000;与同机其它项目冲突时改为未占用端口,并在独立 Caddy 的 Caddyfile 中 reverse_proxy 到 127.0.0.1:该端口。
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# LIFE_ECHO_API_HOST_PORT=8000
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# 若 Caddy 跑在独立容器且非 host 网络,不要用 127.0.0.1,应把 Caddy 加入与本 compose 相同的 Docker 网络,并对 http://life-echo-api-prod:8000 做 reverse_proxy。
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# =============================================================================
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# Logging(loguru sink 最低级别:TRACE / DEBUG / INFO / WARNING / ERROR / CRITICAL)
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# =============================================================================
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# 生产默认 INFO;勿长期 DEBUG。排障 Agent 耗时可短时 LOG_AGENT_VERBOSE=1。
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LOG_LEVEL=INFO
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# Agent 单行 INFO 摘要;与 LOG_LEVEL 独立,便于生产短暂排查
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# LOG_AGENT_VERBOSE=0
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# DEBUG 下预览上限(默认 4096);0=全文
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# AGENT_LOG_MAX_CHARS=4096
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# DEBUG 下 *.prompt:preview | hash_only
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# AGENT_LOG_PROMPT_MODE=preview
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# AGENT_LOG_PROMPT_DEDUP=0
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# DEBUG 下访谈/资料:省略 SystemMessage 正文(仅 total_len+sha12);0/false=打出全文
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# AGENT_LOG_OMIT_SYSTEM_MESSAGE_BODY=1
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# DEBUG 下超长单段 *.prompt:先跳过前 N 字符再预览
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# AGENT_LOG_JSON_PROMPT_PREFIX_CHARS=0
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# AGENT_LOG_JSON_PROMPT_PREFIX_ONLY_IF_LEN_GT=4000
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# 第三方 stdlib logging(空=自动:LOG_LEVEL 为 DEBUG/TRACE 时 Celery→INFO、httpx/httpcore→WARNING,减少刷屏)
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# CELERY_LOG_LEVEL=
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# HTTPX_LOG_LEVEL=
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# =============================================================================
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# LLM / DeepSeek
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# =============================================================================
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DEEPSEEK_API_KEY=sk-09f17fb61c5a4299a3afc2a01de7af75
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DEEPSEEK_BASE_URL=https://api.deepseek.com
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DEEPSEEK_MODEL=deepseek-chat
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# =============================================================================
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# Memory 向量(智谱 BigModel 国内 embedding-3;与 DeepSeek/OpenAI 用途分离)
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# 文档:https://docs.bigmodel.cn/cn/guide/models/embedding/embedding-3
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# 本期固定 1024 维;库表经迁移与 MEMORY_EMBEDDING_DIMENSION 一致。
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# =============================================================================
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ZHIPU_API_KEY=524eda18eb3848e881eefe4c7ef17ec2.xBmGUabYDEa44m3M
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# 默认国内通用端点(与 ZhipuAiClient 一致)
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# EMBEDDING_BASE_URL=https://open.bigmodel.cn/api/paas/v4
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EMBEDDING_MODEL=embedding-3
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# Chat 访谈:每轮根据用户内容判定主人生阶段(关则仅用关键词,省一次 LLM)
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# CHAT_STAGE_DETECTION_ENABLED=true
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# CHAT_STAGE_DETECTION_MAX_TOKENS=128
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# 访谈者体验(覆盖 config 默认值;与 api/.env.development 对齐时可减少文风漂移与记忆噪声)
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CHAT_ERA_CONTEXT_ENABLED=true
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CHAT_INTERVIEW_PERSONA=warm_listener
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CHAT_INTERVIEW_TEMPERATURE=0.65
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# 访谈:是否按本轮用户话检索记忆并注入提示词(关则不调 retrieve)
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# CHAT_MEMORY_RETRIEVAL_ENABLED=true
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CHAT_MEMORY_TOP_K=4
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CHAT_MEMORY_EVIDENCE_MAX_CHARS=1400
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CHAT_REPLY_PLANNER_LLM_ENABLED=true
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# 访谈回复长度档位(brief/standard/expanded)联动:极短输入 / 默认 / 长段+新细节
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# CHAT_INTERVIEW_BRIEF_MAX_TOKENS=240
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# CHAT_INTERVIEW_BRIEF_MAX_CHARS_PER_SEGMENT=180
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# CHAT_INTERVIEW_EXPANDED_MAX_TOKENS=400
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# CHAT_INTERVIEW_EXPANDED_MAX_CHARS_PER_SEGMENT=300
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# Memoir:批处理/抽取更新 slot 时是否允许改写 MemoirState.current_stage(默认 false,访谈 switch_stage 仍可推进)
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# True 时仅当 proposed 与 existing 在同一 chat_bucket 才对齐 current_stage
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# MEMOIR_EXTRACTION_UPDATES_CURRENT_STAGE=false
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# Memoir:叙事前口述归一(segment 原文仍落库;仅 story 流水线派生输入)
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MEMOIR_ORAL_NORMALIZE_ENABLED=true
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# off | rules | llm(llm 为先规则再 LLM 纠错,失败回退规则结果)
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MEMOIR_ORAL_NORMALIZE_MODE=llm
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MEMOIR_ORAL_NORMALIZE_LLM_MAX_TOKENS=512
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MEMOIR_ORAL_NORMALIZE_LLM_MAX_INPUT_CHARS=8000
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# Chat:模型消费净稿(segment 原文仍落库;访谈编排层归一后注入 Agent / 记忆检索)
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# CHAT_INPUT_NORMALIZE_ENABLED=true
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# off | rules | llm(llm 为先规则再 LLM;失败回退规则;编排层已带 LLM 时不重复在 Agent 调)
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# CHAT_INPUT_NORMALIZE_MODE=rules
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# CHAT_INPUT_NORMALIZE_LLM_MAX_TOKENS=512
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# CHAT_INPUT_NORMALIZE_LLM_MAX_INPUT_CHARS=8000
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# =============================================================================
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# Database
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# =============================================================================
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# 本地开发:
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# DATABASE_URL=postgresql://postgres:postgres@localhost:5432/life_echo
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# Docker / 服务端(主机名一般为 compose 服务名 postgres):
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# DATABASE_URL=postgresql://postgres:postgres@postgres:5432/life_echo
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DATABASE_URL=postgresql://postgres:postgres@postgres:5432/life_echo
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# 启动时 Alembic(main.py);生产可设 ALEMBIC_STARTUP_FAIL_FAST=true,迁移失败则拒绝启动
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# ALEMBIC_RUN_ON_STARTUP=true
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# ALEMBIC_STARTUP_FAIL_FAST=false
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# ALEMBIC_STARTUP_MAX_RETRIES=3
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# ALEMBIC_STARTUP_RETRY_BASE_SECONDS=1.0
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# =============================================================================
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# Redis
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# =============================================================================
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# 本地开发:
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# REDIS_URL=redis://localhost:6379/0
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# Docker / 服务端:
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# REDIS_URL=redis://redis:6379/0
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REDIS_URL=redis://redis:6379/0
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REDIS_SESSION_TTL=86400
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# Celery:ingest 后 Memory LLM 富化任务投递队列(须被 worker 消费;见 README)
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# CELERY_MEMORY_ENRICHMENT_QUEUE=memory_idle
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# =============================================================================
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# Memory compaction(近重复 memory chunk 软排除;Celery + Redis 防抖)
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# 与 .env.example / .env.development 一致默认开启;需 running:celery worker + celery-beat(见 docker-compose.yml)。
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# =============================================================================
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MEMORY_COMPACTION_ENABLED=true
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# MEMORY_COMPACTION_DEBOUNCE_SECONDS=105
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# MEMORY_COMPACTION_LOCK_TTL_SECONDS=600
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# MEMORY_COMPACTION_CHUNK_SIMILARITY_THRESHOLD=0.92
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# MEMORY_COMPACTION_MIN_LAYERS_FOR_EXCLUDE=2
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# MEMORY_COMPACTION_MAX_CHUNKS_PER_RUN=200
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# MEMORY_COMPACTION_MAX_EXCLUDES_PER_RUN=50
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# MEMORY_COMPACTION_MAX_NEIGHBORS_PER_CHUNK=25
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# MEMORY_COMPACTION_TEXT_JACCARD_MIN=0.55
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# MEMORY_COMPACTION_METADATA_EVENT_YEAR_WINDOW=1
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# MEMORY_COMPACTION_SWEEP_RECENT_HOURS=24
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# =============================================================================
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# Story 流水线(post-commit、章节物化、append 上限、evidence 检索)
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# =============================================================================
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# STORY_IMAGE_ENQUEUE_DEDUP_TTL=300
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# RECOMPOSE_CHAPTER_DELAY_SECONDS=8
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# CHAPTER_PIPELINE_LOCK_TTL_SECONDS=120
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# STORY_APPEND_MAX_CANONICAL_CHARS=12000
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# STORY_APPEND_MAX_VERSIONS=20
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# EVIDENCE_TOP_K_DEFAULT=10
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# EVIDENCE_TOP_K_LARGE_BATCH=5
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# EVIDENCE_LARGE_BATCH_THRESHOLD=3
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# =============================================================================
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# Auth
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# =============================================================================
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# 建议使用: openssl rand -hex 32
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SECRET_KEY=cf47555c7ecbe5ddb7fd2113c59e08a8bcb110810c42f7c644e06a5acc898608
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ALGORITHM=HS256
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ACCESS_TOKEN_EXPIRE_MINUTES=120
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# =============================================================================
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# Tencent Cloud — 短信
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# =============================================================================
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# 短信、一句话 ASR/TTS、COS 为不同产品;同一主账号可共用同一对 SecretId/SecretKey(分别填三处)。
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TENCENT_SMS_SECRET_ID=AKIDa2ILCwUr56uVt31oU0JOHxPfGhvvkLiq
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TENCENT_SMS_SECRET_KEY=xiFbjlZ9XheS2NWYLvHRPAh2A5nGYcR2
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# 短信应用 SDK AppID
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TENCENT_SMS_SDK_APP_ID=1401010099
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# 短信签名内容(不包含【】符号)
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TENCENT_SMS_SIGN_NAME=上海华嘎科技有限公司
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# 短信模板 ID
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TENCENT_SMS_TEMPLATE_ID=2592163
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# 短信模板参数数量(1=仅验证码,2=验证码+过期时间)
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# 若遇 TemplateParamSetNotMatchApprovedTemplate,请对照控制台模板配置
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TENCENT_SMS_TEMPLATE_PARAM_COUNT=1
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# =============================================================================
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# ASR Provider(whisper | tencent)
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# =============================================================================
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ASR_PROVIDER=tencent
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# =============================================================================
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# Whisper ASR(ASR_PROVIDER=whisper 时使用)
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# =============================================================================
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ASR_MODEL_SIZE=small
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ASR_DEVICE=cpu
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ASR_COMPUTE_TYPE=int8
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# GPU 环境(示例,按需启用)
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# ASR_MODEL_SIZE=medium
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# ASR_DEVICE=cuda
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# ASR_COMPUTE_TYPE=float16
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# =============================================================================
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# Tencent Cloud — 一句话 ASR + TTS(ASR_PROVIDER=tencent 或 TTS_PROVIDER=tencent)
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# =============================================================================
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TENCENT_SECRET_ID=AKIDa2ILCwUr56uVt31oU0JOHxPfGhvvkLiq
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TENCENT_SECRET_KEY=xiFbjlZ9XheS2NWYLvHRPAh2A5nGYcR2
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# =============================================================================
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# TTS(文字转语音,Agent 回复播音)— 与 ASR 独立
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# =============================================================================
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# ENABLE_TTS:仅控制是否合成并下发 TTS_AUDIO;不影响用户语音转写(ASR)
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ENABLE_TTS=true
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TTS_PROVIDER=tencent
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# 仅 TTS_PROVIDER=openai 时需要(填控制台密钥;勿在注释行写 =your_* 以免旧版 CI 误匹配)
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# OPENAI_API_KEY=
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# 音色 ID 见 https://cloud.tencent.com/document/product/1073/92668
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TTS_VOICE_TYPE=502001
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TTS_CODEC=mp3
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# =============================================================================
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# WeChat Pay
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# =============================================================================
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WECHAT_PAY_APP_ID=wx1df508452e06cfb8
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WECHAT_PAY_MCH_ID=1662979099
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WECHAT_PAY_API_V3_KEY=xjvGSJLGJAJfjgskfjslafjsajsdjals
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# 商户私钥:推荐使用文件路径,避免 .env 中长 PEM 转义问题
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WECHAT_PAY_PRIVATE_KEY_PATH=certs/apiclient_key.pem
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# 若不用文件,可配置 WECHAT_PAY_PRIVATE_KEY(PEM,换行用 \n)
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# WECHAT_PAY_PRIVATE_KEY="-----BEGIN PRIVATE KEY-----\n...\n-----END PRIVATE KEY-----"
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WECHAT_PAY_CERT_SERIAL_NO=1AA82328AC1456C6F115B014606F22CD621D2032
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WECHAT_PAY_NOTIFY_URL=https://lifecho.worldsplats.com/api/payment/notify/wechat
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# 平台公钥模式(仅当无法走平台证书自动拉取时使用);勿填商户私钥路径
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# WECHAT_PAY_PLATFORM_PUBLIC_KEY_PATH=certs/wechat_platform_public_key.pem
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# WECHAT_PAY_PLATFORM_PUBLIC_KEY_ID=PUB_KEY_ID_0116629790992026020700181671002400
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# =============================================================================
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# Alipay(未接入时保持空字符串,与 Settings 默认一致)
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# =============================================================================
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ALIPAY_APP_ID=
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ALIPAY_PRIVATE_KEY=
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ALIPAY_PUBLIC_KEY=
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ALIPAY_NOTIFY_URL=https://lifecho.worldsplats.com/api/payment/notify/alipay
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# =============================================================================
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# Misc
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# =============================================================================
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ENABLE_TEST_SUBSCRIPTION=1
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# =============================================================================
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# Memoir image generation(Story 主图等;轮询 Liblib 任务)
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# =============================================================================
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MEMOIR_IMAGE_ENABLED=true
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MEMOIR_IMAGE_POLL_INTERVAL=3
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MEMOIR_IMAGE_MAX_ATTEMPTS=20
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MEMOIR_IMAGE_PROVIDER=liblib
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MEMOIR_IMAGE_STYLE_DEFAULT=watercolor
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MEMOIR_IMAGE_SIZE_DEFAULT=1280x720
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# 章节正文内至少多少张 asset:// 插图才生成/展示章节封面(≥1 即有一张图可出封面)
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MEMOIR_MIN_INLINE_IMAGES_FOR_CHAPTER_COVER=1
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# Story 正文至少多少字才生成主图 intent / 调图(0=不限制)
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STORY_IMAGE_MIN_BODY_CHARS=800
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# 叙事模型输出相对口述过短则回退为口述原文
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MEMOIR_NARRATIVE_FALLBACK_BODY_RATIO=0.5
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MEMOIR_NARRATIVE_FALLBACK_MIN_CHARS=20
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# 回忆录 segment 入队:累计 strip 后字数未达此值则暂缓提交 Celery(0=关闭字数门闸,仅静默防抖后提交)
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# MEMOIR_SEGMENT_BATCH_MIN_CHARS=50
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# 本批首条入队起最长等待(秒),超时仍提交;测试可调低,生产可调高
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# MEMOIR_SEGMENT_BATCH_MAX_WAIT_SECONDS=60
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# 可选,Liblib 返回图片域名不在默认白名单时(逗号分隔)
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# MEMOIR_IMAGE_DOWNLOAD_HOSTS=liblib.cloud,liblibai.cloud
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# =============================================================================
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# Liblib image provider
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# =============================================================================
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LIBLIB_ACCESS_KEY=zrDp6quCOKlLwcewOEfrog
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LIBLIB_SECRET_KEY=iTVHo5Nf3KA-xpC1Mja80bC93u6chJem
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LIBLIB_BASE_URL=https://openapi.liblibai.cloud
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LIBLIB_TEMPLATE_UUID=5d7e67009b344550bc1aa6ccbfa1d7f4
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# =============================================================================
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# Tencent Cloud — COS(回忆录图片存储)
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# =============================================================================
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TENCENT_COS_SECRET_ID=AKIDa2ILCwUr56uVt31oU0JOHxPfGhvvkLiq
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TENCENT_COS_SECRET_KEY=xiFbjlZ9XheS2NWYLvHRPAh2A5nGYcR2
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TENCENT_COS_REGION=ap-shanghai
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TENCENT_COS_BUCKET=life-echo-prod-1319381411
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TENCENT_COS_BASE_URL=https://life-echo-prod-1319381411.cos.ap-shanghai.myqcloud.com
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# 可选临时凭证
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# TENCENT_COS_TOKEN=
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