Research Engineer / Scientist, Safeguards

Anthropic Anthropic · AI Frontier · AI Research & Engineering

Research Engineer/Scientist focused on AI safeguards, conducting critical safety research and engineering for reliable, interpretable, and steerable AI systems. The role involves testing robustness of safety techniques, running multi-agent RL experiments (AI Debate), building tooling for evaluating jailbreaks, and producing evaluation questions for model reasoning in safety-relevant contexts. It bridges research and engineering, with a focus on both immediate and long-term AI safety challenges, including risks from advanced systems and current threats.

What you'd actually do

  1. Testing the robustness of our safety techniques by training language models to subvert our safety techniques, and seeing how effective they are at subverting our interventions.
  2. Run multi-agent reinforcement learning experiments to test out techniques like AI Debate.
  3. Build tooling to efficiently evaluate the effectiveness of novel LLM-generated jailbreaks.
  4. Write scripts and prompts to efficiently produce evaluation questions to test models’ reasoning abilities in safety-relevant contexts.
  5. Contribute ideas, figures, and writing to research papers, blog posts, and talks.

Skills

Required

  • significant software, ML, or research engineering experience
  • experience contributing to empirical AI research projects
  • familiarity with technical AI safety research
  • fast-moving collaborative projects
  • communication skills

Nice to have

  • authoring research papers in machine learning, NLP, or AI safety
  • experience with LLMs
  • experience with reinforcement learning
  • experience with Kubernetes clusters and complex shared codebases

What the JD emphasized

  • critical safety research
  • AI safety challenges
  • Responsible Scaling Policy
  • significant software, ML, or research engineering experience
  • technical AI safety research
  • authoring research papers in machine learning, NLP, or AI safety
  • experience with LLMs
  • experience with reinforcement learning

Other signals

  • AI safety research
  • LLM robustness
  • automated red-teaming
  • monitoring techniques
  • applied threat modeling
  • AI debate
  • evaluating LLM jailbreaks
  • evaluating reasoning abilities