Applied Safety Research Engineer, Safeguards

Anthropic Anthropic · AI Frontier · AI Research & Engineering

Research-oriented engineer to develop methods for representative, robust, and informative AI safety evaluations. This role involves designing experiments to improve model behavior evaluation, shipping these methods into pipelines that inform model training and deployment, and directly shaping how Anthropic understands and improves model safety across misuse, prompt injection, and user well-being. The role also involves building tooling for policy experts and surfacing findings to drive upstream model improvements.

What you'd actually do

  1. Design and run experiments to improve evaluation quality—developing methods to generate representative test data, simulate realistic user behavior, and validate grading accuracy
  2. Research how different factors (multi-turn conversations, tools, long context, user diversity) impact model safety behavior
  3. Analyze evaluation coverage to identify gaps and inform where we need better measurement
  4. Productionize successful research into evaluation pipelines that run during model training, launch and beyond.
  5. Collaborate with Policy and Enforcement to translate real-world harm patterns into measurable evaluations

Skills

Required

  • Python
  • Software engineering
  • ML engineering
  • Data pipelines
  • Data analysis
  • LLMs

Nice to have

  • Red teaming
  • adversarial testing
  • jailbreak research
  • LLM evaluation frameworks
  • benchmarks
  • Trust and safety
  • content moderation
  • abuse detection systems
  • Synthetic data generation
  • data augmentation
  • Distributed systems
  • large-scale data processing
  • Prompt engineering
  • LLM application development

What the JD emphasized

  • 4+ years of software engineering or ML engineering experience
  • experience with LLMs and understand their capabilities and failure modes
  • move fluidly between prototyping and production-quality code

Other signals

  • Develop methods to measure model safety
  • Create evaluations reflecting real-world usage
  • Validate grading accuracy
  • Productionize research into evaluation pipelines
  • Translate harm patterns into measurable evaluations