pluginagentmarketplace/custom-plugin-ai-red-teaming
Overview
This skill provides a curated program of professional certifications, CTF competitions, and structured training for AI security practitioners. It maps career progression from entry-level to senior roles and recommends certifications, practice platforms, and learning paths. The content focuses on practical skill development for red teaming, adversarial ML, and LLM security. It helps practitioners plan certifications, hands-on practice, and research milestones.
How this skill works
The skill inspects professional certification options (AI-specific and traditional security) and catalogs AI/ML-focused CTFs and practice platforms. It defines beginner, intermediate, and advanced learning paths with recommended resources, timelines, and target certifications. It also includes a skill tracker matrix to measure technical, offensive, and defensive competencies. Recommendations are practical and aligned to real-world roles and progression.
When to use it
- Planning a career path into AI security or red teaming.
- Choosing certifications that align with a target role or level of experience.
- Preparing for hands-on practice through CTFs and lab platforms.
- Designing a structured learning path with milestones and resource recommendations.
- Assessing gaps using the skill tracker to prioritize training.
Best practices
- Match certifications to role and experience—start with entry-level cloud/AI fundamentals before investing in advanced certs.
- Prioritize hands-on practice: complete CTF challenges and build small tools to solidify concepts.
- Rotate between offensive and defensive learning to understand attack vectors and mitigation.
- Document learning and build a portfolio: write reports, publish small research or CTF write-ups.
- Update resources regularly: follow recent papers, industry reports, and OWASP/NIST guidance.
Example use cases
- An analyst maps a 12-month plan to move from AI-900 and Security+ to OSCP and Google AI Red Team.
- A mid-level red team engineer uses CTFs (HackAPrompt, AI Village) to practice LLM jailbreaks and model extraction techniques.
- A team lead builds a training curriculum combining adversarial ML courses, tool development labs, and internal CTFs.
- A researcher follows the advanced path: publish papers, present at conferences, and pursue CAISP or CISSP for leadership roles.
FAQ
Begin with foundational certs like AI-900 and CompTIA Security+ while completing basic ML and web security courses.
How do CTFs fit into certification-driven learning?
CTFs provide practical, hands-on experience to apply concepts from certifications and are essential for skill consolidation and portfolio building.
Can traditional security certs be useful for AI roles?
Yes—certs like OSCP, GPEN, CISSP, and CCSP map directly to skills needed for API testing, cloud AI deployments, and security program design.
13 skills
This skill helps you build AI security expertise through certifications, CTFs, and structured training for a professional security career.
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