# Chronara - Local Meeting Transcription & Summarization A Windows desktop application that transcribes, diarizes, and summarizes meetings using only locally-running models. ## Features - 🎙️ Real-time audio transcription with speaker diarization (WhisperX) - 📝 Intelligent meeting summarization (Llama 3.2) - 🖥️ Everything runs locally - no cloud services required - 📦 All models bundled - no separate downloads needed ## Tech Stack - **Transcription**: WhisperX (Whisper + speaker diarization) - **Summarization**: Llama 3.2 1B/3B - **Backend**: Python with FastAPI - **Frontend**: Tauri + React - **Model Runtime**: llama-cpp-python ## Project Structure ``` chronara/ ├── src/ │ ├── backend/ # Python FastAPI backend │ ├── components/ # React components │ └── App.tsx # Main React app ├── src-tauri/ # Tauri configuration ├── models/ # Bundled model files ├── scripts/ # Build and setup scripts └── assets/ # Icons, resources ``` ## Development Setup ### Prerequisites - Node.js 18+ with pnpm - Python 3.10+ - Rust (for Tauri) - Windows build tools (for native modules) ### Installation 1. Clone the repository: ```bash git clone https://github.com/naomi-lgbt/chronara.git cd chronara ``` 2. Install frontend dependencies: ```bash pnpm install ``` 3. Install Python dependencies: ```bash pip install -r requirements.txt ``` 4. Download the AI models: ```bash python scripts/download_models.py ``` 5. Run in development mode: ```bash pnpm tauri:dev ``` ## Building for Production ### Windows 1. Download models if not already done: ```bash python scripts/download_models.py ``` 2. Build the Windows executable: ```bash python scripts/build_windows.py ``` The installer will be created in `src-tauri/target/release/bundle/nsis/`. ## Usage 1. **Start Recording**: Click the "Start Recording" button to begin capturing audio 2. **Real-time Transcription**: Watch as the conversation is transcribed with speaker labels 3. **Generate Summary**: After recording, click "Generate Summary" for an AI-powered meeting summary 4. **Export**: Download both the full transcript and summary as text files ## Model Information ### Transcription (WhisperX) - **Model**: OpenAI Whisper base model with WhisperX enhancements - **Features**: Speaker diarization, timestamp alignment - **Size**: ~150MB ### Summarization (Llama 3.2) - **1B Model**: Fast, good for basic summaries (~1.2GB) - **3B Model**: Better quality summaries (~2.5GB) - **Format**: GGUF quantized models ## Privacy & Security - All processing happens locally on your machine - No audio or text data is sent to external servers - Models are bundled with the application - Meeting data stays on your device