AI Skill Hub 强烈推荐:LLM安全运维 是一款优质的Agent工作流。AI 综合评分 8.0 分,在同类工具中表现稳健。如果你正在寻找可靠的Agent工作流解决方案,这是一个值得深入了解的选择。
LLM安全运维 是一套完整的 AI Agent 自动化工作流方案。通过可视化的节点编排,将复杂的多步骤任务拆解为清晰的自动化流程,实现全程无人值守的智能处理。支持与数百种外部服务和 API 无缝集成,适合构建数据处理管线、业务自动化和 AI 辅助决策系统。
LLM安全运维 是一套完整的 AI Agent 自动化工作流方案。通过可视化的节点编排,将复杂的多步骤任务拆解为清晰的自动化流程,实现全程无人值守的智能处理。支持与数百种外部服务和 API 无缝集成,适合构建数据处理管线、业务自动化和 AI 辅助决策系统。
# 克隆仓库 git clone https://github.com/wearetyomsmnv/Awesome-LLMSecOps cd Awesome-LLMSecOps # 查看安装说明 cat README.md # 按 README 完成环境依赖安装后即可使用
# 查看帮助 awesome-llmsecops --help # 基本运行 awesome-llmsecops [options] <input> # 详细使用说明请查阅文档 # https://github.com/wearetyomsmnv/Awesome-LLMSecOps
# awesome-llmsecops 配置说明 # 查看配置选项 awesome-llmsecops --config-example > config.yml # 常见配置项 # output_dir: ./output # log_level: info # workers: 4 # 环境变量(覆盖配置文件) export AWESOME_LLMSECOPS_CONFIG="/path/to/config.yml"
<p align="center"> <img src="https://i.pinimg.com/736x/73/13/ff/7313ff4171a12334076a70b3c0854f4b.jpg" alt="LLMSecOps"> </p>
Common vulnerabilities and security issues found in LLM applications.
| Vulnerability | Description |
|---|---|
| Hallucination and Misinformation | These vulnerabilities often manifest themselves in the generation of fabricated content or the spread of false information, which can have far-reaching consequences such as disseminating misleading content or malicious narratives. |
| Harmful Content Generation | This vulnerability involves the creation of harmful or malicious content, including violence, hate speech, or misinformation with malicious intent, posing a threat to individuals or communities. |
| Prompt Injection | Users manipulating input prompts to bypass content filters or override model instructions can lead to the generation of inappropriate or biased content, circumventing intended safeguards. |
| Robustness | The lack of robustness in model outputs makes them sensitive to small perturbations, resulting in inconsistent or unpredictable responses that may cause confusion or undesired behavior. |
| Output Formatting | When model outputs do not align with specified format requirements, responses can be poorly structured or misformatted, failing to comply with the desired output format. |
| Information Disclosure | This vulnerability occurs when the model inadvertently reveals sensitive or private data about individuals, organizations, or entities, posing significant privacy risks and ethical concerns. |
| Stereotypes and Discrimination | If model's outputs are perpetuating biases, stereotypes, or discriminatory content, it leads to harmful societal consequences, undermining efforts to promote fairness, diversity, and inclusion. |
Step-by-step guides and tutorials for understanding and implementing LLM security practices.
| Resource | Description |
|---|---|
| [📚 HADESS - Web LLM Attacks](https://hadess.io/web-llm-attacks/) | Understanding how to carry out web attacks using LLM |
| [📚 Red Teaming with LLMs](https://redteamrecipe.com/red-teaming-with-llms) | Practical methods for attacking AI systems |
| [📚 Lakera LLM Security](https://www.lakera.ai/blog/llm-security) | Overview of attacks on LLM |
高质量的AI安全运维项目,值得关注
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建议在沙箱或测试环境中充分验证后,再部署至生产环境,并做好必要的安全评估。
总体来看,LLM安全运维 是一款质量优秀的Agent工作流,在同类工具中具备一定竞争力。AI Skill Hub 将持续追踪其更新动态,建议收藏备用,结合自身场景选择合适时机引入使用。
| 原始名称 | Awesome-LLMSecOps |
| 原始描述 | 开源AI工作流:LLM | Agentic | Security | Operations in one github repo with good links and pic。⭐135 · HTML |
| Topics | AI安全LLM运维工作流 |
| GitHub | https://github.com/wearetyomsmnv/Awesome-LLMSecOps |
| 语言 | HTML |
收录时间:2026-05-30 · 更新时间:2026-05-30 · License:未公布 · AI Skill Hub 不对第三方内容的准确性作法律背书。
选择 Agent 类型,复制安装指令后粘贴到对应客户端