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feat: add meeting transcription app scaffolding
- Add Python backend structure with FastAPI for transcription/summarization
- Add React UI with audio recording, transcript, and summary views
- Configure Tauri to manage Python backend lifecycle
- Set up Windows cross-compilation with cargo-xwin
- Add Gitea CI workflow for lint, test, and multi-platform builds
- Configure ESLint, Prettier, and Vitest for code quality

Note: App scaffolding only - Python env and models not yet set up
2026-01-21 20:18:03 -08:00

2.7 KiB

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:
git clone https://github.com/naomi-lgbt/chronara.git
cd chronara
  1. Install frontend dependencies:
pnpm install
  1. Install Python dependencies:
pip install -r requirements.txt
  1. Download the AI models:
python scripts/download_models.py
  1. Run in development mode:
pnpm tauri:dev

Building for Production

Windows

  1. Download models if not already done:
python scripts/download_models.py
  1. Build the Windows executable:
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