OpenAI · San Francisco · Hybrid

Researcher, Alignment Oversight

5/11/2026

Description

The Alignment Oversight team at OpenAI develops techniques for improving control, accountability, and alignment as AI systems become more capable and agentic.

We combine longer-horizon research with hands-on deployment. We study long-term questions about how increasingly intelligent systems can be supervised, constrained, and corrected, while also building oversight systems that are used in practice today, both internally and externally (see our recent work on code review and action monitoring for codex).

We also study how to learn from real-world deployments: using oversight data and human interventions to train future models to be more aligned, while preserving the effectiveness and independence of the oversight systems themselves.

About the Role

As a researcher on the Alignment team, you will design and run experiments that improve our ability to oversee increasingly capable models. You will work on hands-on model training, evaluation design, and research infrastructure, and translating promising oversight ideas into systems that can operate on real model traffic and real user workflows.

This role combines longer-horizon research with shorter deployment sprints, with projects typically scoped around 3-6 month research timelines and aimed at directly improving future model behavior.

This role is based in San Francisco, CA. We use a hybrid work model of 3 days in the office per week and offer relocation assistance to new employees.

In this role, you will:

  • Design and implement alignment experiments focused on oversight systems for increasingly agentic AI models.

  • Deploy practical systems for action monitoring, red-teaming, and human-in-the-loop control.

  • Develop evaluations for alignment failure modes of the frontier models such as overeagerness, instruction following failures, covert actions, avoiding restrictions and scheming propensity.

  • Analyze deployment data to understand model failures, oversight gaps, and opportunities for training more aligned models.

  • Develop techniques for feeding oversight signals back into training while preserving the reliability and independence of the oversight process.

  • Produce externally publishable research when results advance the broader science of alignment.

  • Collaborate across research, product, security, safety, and engineering teams to turn alignment ideas into working systems.

  • Move quickly from research intuition to working experiments, prototypes, and evidence that can shape future models.

Qualifications

  • Have strong hands-on experience training, evaluating, or debugging large ML models, especially LLMs.

  • Have experience with reinforcement learning, post-training, preference optimization, scalable oversight, model evaluation, or adjacent empirical ML research.

  • Have strong engineering execution and can turn ambiguous research ideas into reliable experiments, tools, training pipelines, and production-facing systems.

  • Have research intuitions for what experiments are likely to teach us something, while staying grounded in implementation details and empirical results.

  • Are a team player - willing to do a variety of tasks that move the team forward.

  • Enjoy fast-paced, collaborative research environments where priorities shift as models and evidence change.

  • See safety and usefulness as coupled goals.

Benefits

USD 250000-445000

Application

View listing at origin and apply!

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