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SOTA Omni-Modal Personal AI Orchestrator & Engine

Project description

🚀 Xoron-Dev: Unified Multimodal AI Model

Xoron-Dev Logo Version License Python PyTorch

A state-of-the-art multimodal MoE model that unifies text, image, video, and audio understanding and generation.

Architecture | Features | Installation | Usage | Training | Documentation


🏗️ Architecture Overview

Xoron-Dev is built on a modular, mixture-of-experts architecture designed for maximum flexibility and performance.

🧠 LLM Backbone (Mixture of Experts)

  • 12 Layers, 1024d, 16 Heads - Optimized for efficient inference and training.
  • Aux-Lossless MoE - 8 experts with top-2 routing and configurable shared expert isolation.
  • Ring Attention - Memory-efficient processing for up to 128K context.
  • Qwen2.5 Tokenizer - High-density 151K vocabulary for multilingual and code support.

👁️ Vision & Video

  • SigLIP-2 Encoder - 384px native resolution with multi-scale support (128-512px).
  • TiTok 1D Tokenization - Compressed visual representation (256 tokens) for faster processing.
  • VidTok 3D VAE - Efficient spatiotemporal video encoding with 4x8x8 compression.
  • 3D-RoPE & Temporal MoE - Sophisticated motion pattern recognition and spatial awareness.

🎤 Audio System

  • Raw Waveform Processing - Direct 16kHz audio input/output (no Mel spectrograms required).
  • Conformer + RMLA - Advanced speech-to-text with KV compression.
  • BigVGAN Waveform Decoder - High-fidelity direct waveform generation with Snake activation.
  • Zero-Shot Voice Cloning - Clone voices from short reference clips using speaker embeddings.

🌟 Features

Multimodal Capabilities

Modality Input Output Strategy
Text 128K Context Reasoning, Code, Agentic MoE LLM
Image 128-512px Understanding & SFT SigLIP + TiTok
Video 8-24 Frames Understanding VidTok + 3D-RoPE
Audio 16kHz Waveform ASR & TTS Conformer + BigVGAN

Agentic & Tool Calling

  • 250+ Special Tokens for structured agent behaviors.
  • Native Tool Use: Execute shell commands, Python scripts, and Jupyter notebooks.
  • Reasoning: Advanced Chain-of-Thought (<|think|>, <|plan|>) for complex tasks.
  • Safety: Anti-hallucination tokens (<|uncertain|>, <|cite|>) and confidence scores.

Optimization

  • LoRA Variants: LoRA+, rsLoRA, and DoRA (r=32, α=64).
  • Lookahead Optimizer: Enhanced stability and faster convergence.
  • 8-bit Optimization: Save up to 75% optimizer memory with bitsandbytes.
  • Continuous-Scale Training: Adaptive resolution sampling for optimal VRAM usage.

🚀 Installation

# Clone the repository
git clone https://github.com/nigfuapp-web/Xoron-Dev.git
cd Xoron-Dev

# Install dependencies
pip install -r requirements.txt

💻 Usage

Quick Start (Inference)

from load import load_xoron_model

# Load model and tokenizer
model, tokenizer, device, config = load_xoron_model("Backup-bdg/Xoron-Dev-MultiMoe")

# Generate response
output = model.generate_text("Explain quantum entanglement.", tokenizer)
print(output)

CLI Training

The build.py script provides a powerful interface for training and building models.

# Build a new model from scratch
python build.py --build

# Targeted Fine-tuning
python build.py --hf --text --math        # Fine-tune on Math
python build.py --hf --text --agent       # Fine-tune on Agentic tasks
python build.py --hf --video              # Fine-tune on Video datasets
python build.py --hf --voice              # Fine-tune on Audio/Voice

Granular Text Training Flags

Flag Description
--math Focus on mathematical reasoning and steps.
--agent Tool use, code execution, and system operations.
--software High-quality software engineering and coding.
--cot Chain-of-Thought and logical reasoning.
--medical Medical knowledge and clinical reasoning.
--hallucination Anti-hallucination and truthfulness.

🏋️ Training

Weighted Loss Strategy

The trainer applies specialized weights to ensure high performance on critical tokens:

  • Reasoning (CoT): 1.5x
  • Tool Calling: 1.3x
  • Anti-Hallucination: 1.2x

Continuous-Scale Strategy

Xoron-Dev dynamically samples resolutions during training:

  • Image: 128px to 384px (step=32)
  • Video: 8 to 24 frames, 128px to 320px

📦 Export & Quantization

Export your models for efficient deployment:

# Export to GGUF (for llama.cpp)
python build.py --hf --gguf --gguf-quant q4_k_m

# Export to ONNX
python build.py --hf --onnx --quant-bits 4

🤝 Contributing

Contributions are welcome! If you have ideas for new modalities or optimizations, please open an issue or PR.


📄 License

This project is licensed under the MIT License.


Built with ❤️ by the Xoron-Dev Team

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