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RE / RS – Foundation Retrieval Lead
Company | OpenAI |
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Location | San Francisco, CA, USA |
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Salary | $460000 – $555000 |
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Type | Full-Time |
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Degrees | |
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Experience Level | Senior, Expert or higher |
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Requirements
- Proven experience leading high-performance teams of researchers or engineers in ML infrastructure or foundational research.
- Deep technical expertise in representation learning, embedding models, or vector retrieval systems.
- Familiarity with transformer-based LLMs and how embedding spaces can interact with language model objectives.
- Research experience in areas such as contrastive learning, supervised or unsupervised embedding learning, or metric learning.
- A track record of building or scaling large machine learning systems, particularly embedding pipelines in production or research contexts.
- A first-principles mindset for challenging assumptions about how retrieval and memory should work for large models.
Responsibilities
- Lead research into embedding models and retrieval systems optimized for grounding, relevance, and adaptive reasoning.
- Manage a team of researchers and engineers building end-to-end infrastructure for training, evaluating, and integrating embeddings into frontier models.
- Drive innovation in dense, sparse, and hybrid representation techniques, metric learning, and learning-to-retrieve systems.
- Collaborate closely with Pretraining, Inference, and other Research teams to integrate retrieval throughout the model lifecycle.
- Contribute to OpenAI’s long-term vision of AI systems with memory and knowledge access capabilities rooted in learned representations.
Preferred Qualifications
No preferred qualifications provided.