Researcher, Alignment Science

OpenAI OpenAI · AI Frontier · San Francisco, CA · Research

Research role focused on intent alignment for AI models, including instruction following, honesty, calibration, and robustness. Involves designing and running experiments, training models with RL, developing evaluations for failure modes, and integrating successful techniques into model development. Aims to produce publishable research and deployable techniques.

What you'd actually do

  1. Design and implement alignment experiments focused on intent following, honesty, calibration, and robustness.
  2. Train and evaluate models using reinforcement learning, and other empirical ML methods.
  3. Develop evaluations for failure modes such as hallucination, instruction-following failures, reward hacking, covert actions, and scheming.
  4. Study methods that encourage models to verify their behavior and report shortcomings honestly, including confession-style training objectives.
  5. Build monitoring and inference-time interventions that ensure compliant behavior or surface model issues to users or downstream systems.

Skills

Required

  • Python
  • PyTorch
  • Reinforcement Learning
  • Model Training
  • Model Evaluation
  • Large Language Models (LLMs)
  • ML Frameworks
  • Technical Problem Solving

Nice to have

  • Post-training
  • Preference Optimization
  • Scalable Oversight
  • Competitive Programming
  • Math Contests
  • Systems Work

What the JD emphasized

  • strong hands-on experience training, evaluating, or debugging large ML models, especially LLMs
  • excellent engineering skills in Python and modern ML frameworks such as PyTorch
  • mathematical rigor, quantitative taste, and comfort turning ambiguous research questions into measurable experiments
  • experience with reinforcement learning, post-training, preference optimization, scalable oversight, model evaluation, or adjacent empirical ML research
  • high independence
  • fast-paced, collaborative research environments where priorities shift as models and evidence change
  • strong record in technical problem solving, such as competitive programming, math contests, systems work, or similarly rigorous engineering and research projects
  • making concrete progress on alignment methods that can be tested, trained, published, and deployed

Other signals

  • alignment research
  • intent following
  • honesty
  • calibration
  • robustness
  • reinforcement learning
  • model confessions
  • scalable methods