Files
Task_Reporter/openspec/project.md
egg c8966477b9 feat: Initial commit - Task Reporter incident response system
Complete implementation of the production line incident response system (生產線異常即時反應系統) including:

Backend (FastAPI):
- User authentication with AD integration and session management
- Chat room management (create, list, update, members, roles)
- Real-time messaging via WebSocket (typing indicators, reactions)
- File storage with MinIO (upload, download, image preview)

Frontend (React + Vite):
- Authentication flow with token management
- Room list with filtering, search, and pagination
- Real-time chat interface with WebSocket
- File upload with drag-and-drop and image preview
- Member management and room settings
- Breadcrumb navigation
- 53 unit tests (Vitest)

Specifications:
- authentication: AD auth, sessions, JWT tokens
- chat-room: rooms, members, templates
- realtime-messaging: WebSocket, messages, reactions
- file-storage: MinIO integration, file management
- frontend-core: React SPA structure

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-12-01 17:42:52 +08:00

4.1 KiB

Project Context

Purpose

Production Line Incident Response System (生產線異常即時反應系統)

An on-premise, centralized event response platform that transforms chaotic communication channels (LINE, Teams, radio) into structured, traceable data. Each production incident (equipment failure, material shortage, quality issues) gets a dedicated chat room where all messages, images, and documents are collected. The system uses on-premise AI (Ollama) to automatically generate professional .docx reports with timelines and embedded evidence.

Business Value:

  • Reduce MTTR (Mean Time To Resolution) through information centralization
  • Enable post-mortem analysis with complete digital audit trails
  • Automate report generation from hours to minutes
  • Keep sensitive production data inside corporate network

Tech Stack

  • Backend: Python (FastAPI) - API server with built-in WebSocket support (localhost:8000)
  • Database: PostgreSQL v14+ - Metadata storage for users, incident rooms, messages (localhost:5432)
  • Object Storage: MinIO - S3-compatible storage for images/PDFs/logs (localhost:9000)
  • AI: Ollama - On-premise LLM for JSON blueprint generation (localhost:11434)
  • Frontend: React (Vite) - Single-page application served as static files
  • Real-time: WebSockets (native FastAPI support) - Bidirectional communication
  • Document Generation: python-docx - Dynamic .docx assembly with embedded images

Project Conventions

Code Style

  • Python Backend: Follow PEP 8, use type hints (Python 3.10+)
  • React Frontend: ESLint + Prettier (configure as needed)
  • Use descriptive variable names in English
  • Comments and documentation in Traditional Chinese when needed for domain concepts

Architecture Patterns

  • Single-server deployment: All services (FastAPI, PostgreSQL, MinIO, Ollama) run on one internal server
  • Event-driven architecture: Each incident is an independent chat room
  • Frontend-backend separation: React SPA communicates with FastAPI via REST + WebSocket
  • On-premise first: All services communicate via localhost, no external dependencies
  • Security: All communication within corporate firewall, files never leave internal network

Testing Strategy

  • TDD (Test-Driven Development): Write tests before implementation
  • Unit Tests (UT): Test individual functions (e.g., prepare_ai_input, assemble_docx)
  • Integration Tests (IT): Test cross-service flows (e.g., file upload → MinIO → DB → WebSocket broadcast)
  • End-to-End Tests (E2E): Full user workflows (login → create room → upload image → send message → generate report)
  • Use pytest for backend testing
  • Mock Ollama responses for deterministic AI testing

Git Workflow

  • Specification-Driven Development (SDD): All features must align with spec requirements
  • Use feature branches for each phase (e.g., phase-1-backend-core, phase-2-realtime)
  • Commit messages in English, reference task IDs (e.g., "T-2.3: Implement MinIO upload service")

Domain Context

Manufacturing Operations:

  • Incident types: Equipment failure, material shortage, quality issues
  • Users: Line operators, supervisors, engineers, managers
  • Workflow: Incident reported → chat room created → team collaborates → AI generates report → supervisor reviews and closes
  • Critical requirement: Audit trail for compliance and continuous improvement
  • Sensitive data: Production photos, equipment logs, defect images (must stay on-premise)

Important Constraints

  • No external cloud services: All components (app, DB, storage, AI) must run on corporate servers
  • Network isolation: System operates in internal network only
  • Data sovereignty: Production data cannot leave corporate infrastructure
  • Scalability: Initially single production line, may expand to multiple buildings/sites
  • Compliance: May need to satisfy ISO 9001 or similar quality management audit requirements

External Dependencies

  • Internal only:
    • PostgreSQL server
    • MinIO cluster
    • Ollama AI inference server
  • No external APIs: All services are self-hosted