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LunaVox tooling CLI for model setup, conversion, quantization, and build workflows.

Project description

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🌌 LunaVox: High-Performance C++ Inference Engine for Qwen3-TTS

Version Platform CoreML C++ License

LunaVox is a high-performance C++ inference engine specifically designed for Qwen3-TTS. Through streamlined architecture and deep hardware optimization, it provides extreme speech synthesis speed and flexibility. Whether for local embedded devices, desktop applications, or high-performance servers, LunaVox delivers stable, low-latency TTS experience.


🚀 Key Features

  • Lightweight Runtime: Runs with only ONNX Runtime and a custom Llama inference library, no heavy Python environment required.
  • Native Multi-language Support: Built-in automatic language detection, supporting Chinese, English, Japanese, Korean, Russian, German, French, Italian, Spanish, and Portuguese.
  • Full Mode Support: Supports Base synthesis, Voice Cloning, Custom Voice, and Voice Design (Prompt-to-Voice).
  • Modern Build System: Automatic toolchain detection. Supports Windows (MSVC), Linux (GCC), and macOS (Clang/Apple Silicon).
  • Cross-platform Hardware Acceleration: Deeply integrated with CUDA (NVIDIA), CoreML/Metal (Apple), DML (DirectX 12), and Vulkan.

🛠️ Environment & Build Requirements

1. System Environment

  • Windows: Windows 10/11 (VS 2022/2025 supported)
  • Linux: Ubuntu 22.04+ or mainstream distributions (GCC >= 9.0)
  • macOS: Apple Silicon (M1/M2/M3), macOS 12+ (Metal support)
  • Compiler: MSVC (v143/v144), GCC 10.0+, or Apple Clang
  • Build Tools: CMake 3.16+, Ninja is recommended for faster builds.

2. Dependencies

  • Python 3.10+: For model conversion and automation.
  • ONNX Runtime SDK: Platform-specific C++ dynamic libraries.
  • Llama Runtime: Pre-compiled backend binaries.

📊 Performance Benchmarks

The following table shows the average performance of LunaVox across different backend configurations. For detailed reports, see the Windows Performance Evaluation Report.

Configuration Average RTF Peak RAM VRAM Relative Speedup
Baseline (CPU) 5.066 5.06 GB 1.00x
Baseline (GPU) 3.788 1.59 GB 2.29 GB 1.34x
LunaVox (Full CPU) 1.152 1.06 GB 4.40x
LunaVox (CUDA13) 0.254 1.39 GB 1.30 GB 19.94x
LunaVox (Vulkan + DML) 0.206 0.91 GB 1.05 GB 24.59x

[!NOTE]

  • Test Model: Based on Qwen3-TTS-12Hz-0.6B-Base, with Voice Cloning enabled using pre-computed .json feature files.
  • Test Environment: Intel i9-12900K + NVIDIA RTX 3090
  • Test Standard: Average of 10 runs after 3 warmup runs.

3. CLI Tool & Dependency Installation

# Install core inference tooling
pip install lunavox

[!NOTE] Developer Note: LunaVox is published on PyPI. Standard users only need to run pip install lunavox. For research into model conversion or quantization pipelines, switch to the cli-only branch to get the latest source and internal tools.

📦 Quick Setup (One-Key Setup)

LunaVox recommends using the bootstrap command to complete Model Pulling, Runtime Library Download, Project Build, and Interactive Testing in one go.

1. Automatic Guided Setup (Recommended)

# Execute full automatic setup
lunavox bootstrap

2. Local Build (From Source)

If you need fine-grained control:

# 1. Download pre-converted models (or use 'convert' for local weights)
lunavox pull-model

# 2. Download C++ runtime libraries
lunavox download-libs

# 3. Compile the project
lunavox build --clean

[!TIP] For detailed commands and advanced parameters, see the LunaVox CLI Reference Manual.


🧱 Runtime Libraries

LunaVox automatically downloads appropriate ONNX Runtime and Llama.cpp into the lib/ directory. For CUDA configurations, see:


🎙️ Inference Testing & Modes

After building, the executable is located at ./build/qwen3-tts-cli.exe.

[!NOTE]

  • On Linux/macOS, use ./build/qwen3-tts-cli.
  • --instruct is only valid for Custom and Design modes (disabled in Base mode).

Detailed tutorial: CLI Usage Tutorial.

1. Voice Cloning

Mimic a specific voice using reference audio (.wav) or pre-computed features (.json):

./build/qwen3-tts-cli.exe `
  -m models/base_small `
  -r ref/ref_0.6B.json `
  -t "Okay, fine, I'm just gonna leave this sock monkey here. Goodbye." `
  -o output/cloned.wav

2. Custom Voice

Use built-in expert speaker IDs:

./build/qwen3-tts-cli.exe `
  -m models/custom `
  --speaker Vivian `
  --instruct "Use angry tone." `
  -t "She said she would be here by noon." `
  -o output/custom.wav

3. Voice Design

Design voice using text descriptions:

.\build\qwen3-tts-cli.exe `
  -m models/design `
  -t "It's in the top drawer... wait, it's empty? No way, that's impossible! I'm sure I put it there!" `
  --instruct "Speak in an incredulous tone, but with a hint of panic beginning to creep into your voice."
  -o output/out.wav

📈 Monitoring & Logging

  • Detailed Stats: Add --stats-json report.json to get RTF and memory analysis.
  • Logs: All build and runtime output is logged to ../../logs/latest.log.
  • Thread Control: Use -j (default 4) to adjust CPU thread usage.

🙏 Acknowledgements

Inspired by or based on:

  • Qwen3-TTS: Powerful base weights and architecture design.
  • onnxruntime: High-performance audio decoding backend.
  • llama.cpp: Core for LLM sequence prediction.

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