mit einem Klick
ai-security-tooling
// Guide for AI security tooling (detectors, analyzers, guardrails, benchmarks) and consistent placement in README.md.
// Guide for AI security tooling (detectors, analyzers, guardrails, benchmarks) and consistent placement in README.md.
Guide for understanding and contributing to the awesome-ai-security curated resource list. Use this skill when adding resources, organizing categories, or maintaining README.md consistency (no duplicates).
Guide for adversarial machine learning: adversarial examples, data poisoning, model backdoors, and evasion attacks.
Guide for AI-powered penetration testing tools, red teaming frameworks, and autonomous security agents.
Guide for LLM security attacks: prompt injection, jailbreaking, data extraction, and where to place resources in README.md.
| name | ai-security-tooling |
| description | Guide for AI security tooling (detectors, analyzers, guardrails, benchmarks) and consistent placement in README.md. |
Use this skill when adding or organizing:
AI Security & Attacks → Model SecurityAI Security & Attacks → Prompt InjectionAI Security & Attacks → Adversarial Attacks or AI Security LibrariesAI Security Tools & Frameworks → AI Reverse EngineeringAI Security Tools & Frameworks → AI Vulnerability DetectionBenchmarks & StandardsAI Pentesting & Red Teaming → AI Security MCP Tools| Vendor | Tools |
|---|---|
| Microsoft | Counterfit, PyRIT |
| Meta | PurpleLlama (Llama Guard, Prompt Guard, Code Shield) |
| NVIDIA | Garak, NeMo Guardrails |
| IBM | Adversarial Robustness Toolbox (ART) |
| OSS-Fuzz-Gen | |
| ProtectAI | Rebuff, LLM Guard, ModelScan |
Keep additions:
For detailed and up-to-date resources, fetch the complete list from:
https://raw.githubusercontent.com/gmh5225/awesome-ai-security/refs/heads/main/README.md
Use this URL to get the latest curated links when you need specific tools, papers, or resources not covered in this skill.