About the job
We are looking for a Research Engineer / Scientist to join the Future of Computing Research team to work on RLHF and post-training for personalized, multimodal AI systems. This role will focus on building the learning and evaluation foundations that help models become more context-aware, adaptive, and useful over time.
Responsibilities
Develop RLHF and post-training methods for multimodal models.
Build reward models and preference-learning pipelines for adaptive, personalized model behavior.
Design datasets, rubrics, and evaluation frameworks that capture user preferences, contextual appropriateness, and long-term value in realistic tasks.
Run experiments on policy improvement using explicit feedback, implicit signals, and model-based grading.
Work on long-horizon evaluation problems, where model quality depends not just on a single response but on whether behavior improves outcomes over time.
Collaborate closely with safety researchers to ensure that adaptation and personalization remain aligned, interpretable, and bounded by clear constraints.
Prototype and iterate quickly on training recipes, reward formulations, data pipelines, and evaluation suites for product-relevant behaviors.
Help define how OpenAI measures success for personalized AI systems including trust, appropriateness, and long-term user benefit.
Qualifications
Minimum
Have a strong background in machine learning research, with experience in RLHF, reward modeling, preference optimization, or post-training for large models.
Have worked on one or more of: reinforcement learning, ranking, recommender systems, personalization, memory, or human-in-the-loop evaluation.
Care about rigorous empirical work and know how to design clean experiments, reliable evals, and decision-useful metrics.
Are excited by the challenge of training models against nuanced behavioral objectives.
Have experience building datasets or eval pipelines grounded in human preferences, rubrics, or real-world product behavior.
Are comfortable working across the stack, from data generation and labeling strategy to training runs, reward functions, and analysis.
Are interested in multimodal AI and in how models can learn from richer interaction signals over time.
Want to work on product-shaping research with unusually high stakes for trust, alignment, and long-term user value.
Enjoy close collaboration with engineers, designers, and safety researchers to turn frontier research into real systems.
Preferred
Want to work on product-shaping research with unusually high stakes for trust, alignment, and long-term user value.
Enjoy close collaboration with engineers, designers, and safety researchers to turn fron