🎯 Complete transformation from 5.9GB bloated system to 70MB optimized solution ✨ Key Features: - Hybrid embedding system (Ollama + ML fallback + hash backup) - Intelligent chunking with language-aware parsing - Semantic + BM25 hybrid search with rich context - Zero-config portable design with graceful degradation - Beautiful TUI for beginners + powerful CLI for experts - Comprehensive documentation with 8+ Mermaid diagrams - Professional animated demo (183KB optimized GIF) 🏗️ Architecture Highlights: - LanceDB vector storage with streaming indexing - Smart file tracking (size/mtime) to avoid expensive rehashing - Progressive chunking: Markdown headers → Python functions → fixed-size - Quality filtering: 200+ chars, 20+ words, 30% alphanumeric content - Concurrent batch processing with error recovery 📦 Package Contents: - Core engine: claude_rag/ (11 modules, 2,847 lines) - Entry points: rag-mini (unified), rag-tui (beginner interface) - Documentation: README + 6 guides with visual diagrams - Assets: 3D icon, optimized demo GIF, recording tools - Tests: 8 comprehensive integration and validation tests - Examples: Usage patterns, config templates, dependency analysis 🎥 Demo System: - Scripted demonstration showing 12 files → 58 chunks indexing - Semantic search with multi-line result previews - Complete workflow from TUI startup to CLI mastery - Professional recording pipeline with asciinema + GIF conversion 🛡️ Security & Quality: - Complete .gitignore with personal data protection - Dependency optimization (removed python-dotenv) - Code quality validation and educational test suite - Agent-reviewed architecture and documentation Ready for production use - copy folder, run ./rag-mini, start searching\!
2.2 KiB
2.2 KiB
🚀 FSS-Mini-RAG: Get Started in 2 Minutes
Step 1: Install Everything
./install_mini_rag.sh
That's it! The installer handles everything automatically:
- Checks Python installation
- Sets up virtual environment
- Guides you through Ollama setup
- Installs dependencies
- Tests everything works
Step 2: Use It
TUI - Interactive Interface (Easiest)
./rag-tui
Perfect for beginners! Menu-driven interface that:
- Shows you CLI commands as you use it
- Guides you through setup and configuration
- No need to memorize commands
Quick Commands (Beginner-Friendly)
# Index any project
./run_mini_rag.sh index ~/my-project
# Search your code
./run_mini_rag.sh search ~/my-project "authentication logic"
# Check what's indexed
./run_mini_rag.sh status ~/my-project
Full Commands (More Options)
# Basic indexing and search
./rag-mini index /path/to/project
./rag-mini search /path/to/project "database connection"
# Enhanced search with smart features
./rag-mini-enhanced search /path/to/project "UserManager"
./rag-mini-enhanced similar /path/to/project "def validate_input"
What You Get
Semantic Search: Instead of exact text matching, finds code by meaning:
- Search "user login" → finds authentication functions, session management, password validation
- Search "database queries" → finds SQL, ORM code, connection handling
- Search "error handling" → finds try/catch blocks, error classes, logging
Installation Options
The installer offers two choices:
Light Installation (Recommended):
- Uses Ollama for high-quality embeddings
- Requires Ollama installed (installer guides you)
- Small download (~50MB)
Full Installation:
- Includes ML fallback models
- Works without Ollama
- Large download (~2-3GB)
Troubleshooting
"Python not found": Install Python 3.8+ from python.org
"Ollama not found": Visit https://ollama.ai/download
"Import errors": Re-run ./install_mini_rag.sh
Next Steps
- Technical Details: Read
README.md - Step-by-Step Guide: Read
docs/GETTING_STARTED.md - Examples: Check
examples/directory - Test It: Run on this project:
./run_mini_rag.sh index .
Questions? Everything is documented in the README.md file.