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
1.8 KiB
1.8 KiB
🚀 快速开始 - 1分钟运行测试
Windows用户
方法1:双击运行(最简单)
- 双击
run_tests.bat - 等待测试完成
方法2:命令行
cd AIclinicalresearch\tests
run_tests.bat
Linux/Mac用户
cd AIclinicalresearch/tests
chmod +x run_tests.sh
./run_tests.sh
⚠️ 前提条件
必须先启动Python服务!
# 打开新终端
cd AIclinicalresearch/extraction_service
python main.py
看到这行表示启动成功:
INFO: Application startup complete.
INFO: Uvicorn running on http://0.0.0.0:8001
📊 预期结果
✅ 全部通过:
总测试数: 18
✅ 通过: 18
❌ 失败: 0
通过率: 100.0%
🎉 所有测试通过!
⚠️ 部分失败:
- 查看红色错误信息
- 检查失败的具体测试
- 查看Python服务日志
🎯 测试内容
- ✅ 6种简单填补方法(均值、中位数、众数、固定值、前向填充、后向填充)
- ✅ MICE多重插补(单列、多列)
- ✅ 边界情况(100%缺失、0%缺失、特殊字符)
- ✅ 各种数据类型(数值、分类、混合)
- ✅ 性能测试(1000行数据)
💡 提示
- 第一次运行会自动安装依赖(pandas, numpy, requests)
- 测试时间约 45-60 秒
- 测试数据自动生成,无需手动准备
- 颜色输出:绿色=通过,红色=失败,黄色=警告
🆘 遇到问题?
问题1:无法连接到服务
解决:确保Python服务在运行(python main.py)
问题2:依赖安装失败
解决:手动安装 pip install pandas numpy requests
问题3:测试失败
解决:查看错误信息,检查代码逻辑
准备好了吗?启动服务,运行测试! 🚀