AI Agents 相关度: 7/10

DeepSight: An All-in-One LM Safety Toolkit

Bo Zhang, Jiaxuan Guo, Lijun Li, Dongrui Liu, Sujin Chen, Guanxu Chen, Zhijie Zheng, Qihao Lin, Lewen Yan, Chen Qian, Yijin Zhou, Yuyao Wu, Shaoxiong Guo, Tianyi Du, Jingyi Yang, Xuhao Hu, Ziqi Miao, Xiaoya Lu, Jing Shao, Xia Hu
arXiv: 2602.12092v1 发布: 2026-02-12 更新: 2026-02-12

AI 摘要

DeepSight是一个集评估、诊断于一体的大模型安全开源工具,旨在提升安全性分析的全面性和效率。

主要贡献

  • 提出了安全评估与诊断集成的新范式
  • 构建了低成本、可复现、高效的大模型安全评估项目
  • 首个支持前沿AI风险评估和联合安全评估与诊断的开源工具

方法论

通过统一任务和数据协议,连接安全评估和诊断阶段,将黑盒评估转化为白盒洞察,从而系统性解决大模型安全问题。

原文摘要

As the development of Large Models (LMs) progresses rapidly, their safety is also a priority. In current Large Language Models (LLMs) and Multimodal Large Language Models (MLLMs) safety workflow, evaluation, diagnosis, and alignment are often handled by separate tools. Specifically, safety evaluation can only locate external behavioral risks but cannot figure out internal root causes. Meanwhile, safety diagnosis often drifts from concrete risk scenarios and remains at the explainable level. In this way, safety alignment lack dedicated explanations of changes in internal mechanisms, potentially degrading general capabilities. To systematically address these issues, we propose an open-source project, namely DeepSight, to practice a new safety evaluation-diagnosis integrated paradigm. DeepSight is low-cost, reproducible, efficient, and highly scalable large-scale model safety evaluation project consisting of a evaluation toolkit DeepSafe and a diagnosis toolkit DeepScan. By unifying task and data protocols, we build a connection between the two stages and transform safety evaluation from black-box to white-box insight. Besides, DeepSight is the first open source toolkit that support the frontier AI risk evaluation and joint safety evaluation and diagnosis.

标签

LLM Safety Evaluation Diagnosis Open Source

arXiv 分类

cs.CL cs.AI cs.CR cs.CV