AI Red Teamer, LLM Generalist

Handshake Handshake · Enterprise · Seattle, WA · General & Administrative

The AI Red Teamer, LLM Generalist role focuses on stress-testing large language models by designing creative, adversarial prompts to expose vulnerabilities in AI safety, guardrails, and robustness. This involves probing models across various risk categories (content safety, CBRN, cybersecurity, etc.) and potentially across different modalities (text, image, voice, agentic). The role requires strong prompt crafting skills, ethical judgment, and collaboration with engineers and researchers to share findings and strengthen defenses. It is a generalist role that may involve working with sensitive content.

What you'd actually do

  1. Craft creative prompts and multi-turn scenarios to stress-test AI guardrails across diverse risk categories
  2. Discover ways around safety filters, restrictions, and defenses using jailbreak, evasion, and prompt injection techniques
  3. Evaluate and score model responses against structured harm taxonomies and severity rubrics
  4. Document experiments clearly, including what you tried, why you tried it, and what it revealed
  5. Collaborate with engineers, data scientists, and researchers to share findings and strengthen defenses

Skills

Required

  • Hands-on experience using multiple LLMs (ChatGPT, Claude, Gemini, open-source models, etc.)
  • Intuition for crafting adversarial prompts
  • Creative, adversarial problem-solving skills
  • Clear and thoughtful written communication
  • Strong ethical judgment and the ability to separate adversarial thinking from personal values
  • Self-directed, collaborative, and comfortable in feedback-heavy environments
  • Curiosity, persistence, and comfort with frequent failure in experimentation

Nice to have

  • Familiarity with Python or other scripting languages
  • Experience working with LLM APIs or evaluation tooling
  • Comfort with structured data annotation and rubric-based scoring
  • Prior work in trust and safety, content moderation, QA, or security research
  • Subject matter expertise in any high-risk domain (cybersecurity, chemistry, biology, medicine, law, finance, etc.)
  • Familiarity with jailbreak or evasion techniques

What the JD emphasized

  • stress-test large language models
  • expose vulnerabilities
  • unsafe content
  • bias
  • broken guardrails
  • hallucinations
  • prompt injection weaknesses
  • unexpected behaviors
  • AI safety
  • model robustness
  • adversarial prompts
  • jailbreak
  • evasion
  • prompt injection techniques
  • harm taxonomies
  • severity rubrics
  • harm taxonomy development
  • evolving model behaviors
  • adversarial prompts
  • jailbreak or evasion techniques
  • adversarial problem-solving skills
  • adversarial thinking
  • adversarial testing

Other signals

  • AI safety
  • model robustness
  • adversarial prompts
  • jailbreaks
  • evaluations