Summary: - Successfully deployed complete system to Aliyun SAE (2025-12-25) - All services running: Python microservice + Node.js backend + Frontend Nginx + CLB - Public access available at http://8.140.53.236/ Major Achievements: 1. Python microservice deployed (v1.0, internal IP: 172.17.173.66:8000) 2. Node.js backend deployed (v1.3, internal IP: 172.17.173.73:3001) - Fixed 4 critical issues: bash path, config directory, pino-pretty, ES Module 3. Frontend Nginx deployed (v1.0, internal IP: 172.17.173.72:80) 4. CLB load balancer configured (public IP: 8.140.53.236) New Documentation (9 docs): - 11-Node.js backend SAE deployment config checklist (21 env vars) - 12-Node.js backend SAE deployment operation manual - 13-Node.js backend image fix record (config directory) - 14-Node.js backend pino-pretty fix - 15-Node.js backend deployment success summary - 16-Frontend Nginx deployment success summary - 17-Complete deployment practical manual 2025 edition (1800 lines) - 18-Deployment documentation usage guide - 19-Daily update quick operation manual (670 lines) Key Fixes: - Environment variable name correction: EXTRACTION_SERVICE_URL (not PYTHON_SERVICE_URL) - Dockerfile fix: added COPY config ./config - Logger configuration: conditional pino-pretty for dev only - Health check fix: ES Module compatibility (require -> import) Updated Files: - System status document updated with full deployment info - Deployment progress overview updated with latest IPs - All 3 Docker services' Dockerfiles and configs refined Verification: - All health checks passed - Tool C 7 features working correctly - Literature screening module functional - Response time < 1 second BREAKING CHANGE: Node.js backend internal IP changed from 172.17.173.71 to 172.17.173.73 Closes #deployment-milestone
通用能力层
层级定义: 跨业务模块共享的核心技术能力
核心原则: 可复用、高内聚、独立部署
📋 能力清单
| 能力 | 说明 | 复用率 | 优先级 | 状态 |
|---|---|---|---|---|
| 01-LLM大模型网关 | 统一管理LLM调用、成本控制、模型切换 | 71% (5/7) | P0 | ⏳ 待实现 |
| 02-文档处理引擎 | PDF/Docx/Txt提取、OCR、表格提取 | 86% (6/7) | P0 | ✅ 已实现 |
| 03-RAG引擎 | 向量检索、语义搜索、RAG问答 | 43% (3/7) | P1 | ✅ 已实现 |
| 04-数据ETL引擎 | Excel JOIN、数据清洗、数据转换 | 29% (2/7) | P2 | ⏳ 待实现 |
| 05-医学NLP引擎 | 医学实体识别、术语标准化 | 14% (1/7) | P2 | ⏳ 待实现 |
🎯 设计原则
1. 可复用性
- 多个业务模块共享
- 避免重复开发
2. 独立部署
- 可以独立为微服务
- 支持独立扩展
3. 高内聚
- 每个能力职责单一
- 接口清晰
4. 领域知识
- 包含业务领域知识
- 不是纯技术组件
📊 复用率分析
LLM网关 - 71%复用率(最高优先级)
- AIA(AI智能问答)
- ASL(AI智能文献)
- PKB(个人知识库)
- DC(数据清洗)
- RVW(稿件审查)
文档处理引擎 - 86%复用率(已实现)
- ASL、PKB、DC、SSA、ST、RVW
RAG引擎 - 43%复用率(已实现)
- AIA、ASL、PKB
📚 快速导航
快速上下文
- [AI对接] 通用能力快速上下文.md - 2-3分钟了解通用能力层
核心能力
🔗 相关文档
最后更新: 2025-11-06
维护人: 技术架构师