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URL: https://huggingface.co/CMU-AIRe/TARS-7B

⇱ CMU-AIRe/TARS-7B · Hugging Face


TARS-7B

Overview

TARS-7B is an open-source reasoning model trained for safety using TARS: Training Adaptive Reasoners for Safety introduced in the paper: Reasoning as an Adaptive Defense for Safety, to facilitate the research of reasoning models for LLM safety. This model is trained using a mixing ratio of between harmful and harmless prompts, starting from the base model Qwen2.5-7B-Instruct.

TARS is a simple but effective online reinforcement learning (RL) method that trains models to adaptively reason for low refusal and safe behavior, using three key ingredients:

🔑 Key Ingredients

  • Ingredient 1: Lightweight supervised fine-tuning (SFT) for diverse generations
  • Ingredient 2: Mixing in harmless prompts during RL training
  • Ingredient 3: Decoupled reward model for better exploration

For full details, please check out our paper or blogpost.


📖 Citation

If you use TARS-7B in your work, please cite us:

@article{kim2025reasoning,
 title={Reasoning as an Adaptive Defense for Safety},
 author={Kim, Taeyoun and Tajwar, Fahim and Raghunathan, Aditi and Kumar, Aviral},
 journal={arXiv preprint arXiv:2507.00971},
 year={2025}
}
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Paper for CMU-AIRe/TARS-7B