Nuvepro - Task Intelligence for the Enterprise
OpenAI· Foundations· San Francisco

TL, Research Inference

Comp$380K – $555K

Classified Tasks (12)

Automate 0%Augment 83%Human-Only 17%

Augment (10)

AI assists, human decides

Build systems that enable advanced AI models to run efficiently at scale

technical

Translate new architectural ideas into high-performance inference systems that surface tradeoffs in performance, memory, and scalability

technical

Develop and evolve high-performance inference infrastructure to enable researchers to explore new ideas with clear understanding of computational and systems implications

technical

Design and build high-performance inference runtimes for large-scale AI models with a focus on efficiency, reliability, and scalability

technical

Own and optimize core execution paths, including model execution, memory management, batching, and scheduling

technical

Develop and improve distributed inference across multiple GPUs, including parallelism strategies, communication patterns, and runtime coordination

technical

Implement and optimize inference-critical operators and kernels informed by real-world workloads

technical

Diagnose and resolve performance bottlenecks through profiling, benchmarking, and low-level debugging

technical

Contribute to observability, correctness, and reliability of large-scale AI systems

operational

Surface real tradeoffs in performance, memory, and scalability to influence model design, evaluation, and iteration

analytical

Human-Only (2)

Requires human judgment

Partner closely with research teams to ensure new model architectures are supported accurately and efficiently in inference systems

communication

Ensure inference systems prioritize performance, correctness, and realism to ground AI research in what can scale

leadership

Job description

TL, Research Inference | OpenAI Careers ## TL, Research Inference Foundations - San Francisco Apply now(opens in a new window) ## **About the Team** The Foundations team focuses on how model behavior changes as we scale models, data, and compute. The team studies the interactions between model architecture, optimization, and training data, and uses those insights to guide how new models are designed and trained. ## **About the Role** In this role, you will build the systems that enable advanced AI models to run efficiently at scale. You will operate at the intersection of model research and systems engineering, translating new architectural ideas into high-performance inference systems that surface real tradeoffs in performance, memory, and scalability. Your work will directly influence how models are designed, evaluated, and iterated on across the research organization. By developing and evolving high-performance inference infrastructure, you will enable researchers to explore new ideas with a clear understanding of their computational and systems implications. This is not a product-serving role. Instead, it is a research-enabling systems role focused on performance, correctness, and realism - ensuring that AI research is grounded in what can actually scale. ## **In this role, you will:** * Design and build high-performance inference runtimes for large-scale AI models, with a focus on efficiency, reliability, and scalability. * Own and optimize core execution paths, including model execution, memory management, batching, and scheduling. * Develop and improve distributed inference across multiple GPUs, including parallelism strategies, communication patterns, and runtime coordination. * Implement and optimize inference-critical operators and kernels informed by real-world workloads. * Partner closely with research teams to ensure new model architectures are supported accurately and efficiently in inference systems. * Diagnose and resolve performance bottlenecks through profiling, benchmarking, and low-level debugging. * Contribute to observability, correctness, and reliability of large-scale AI systems. ## **You might thrive in this role if you:** * Have experience building production inference systems, not just training or running models. * Are comfortable with GPU-centric performance engineering, including memory behavior and latency/throughput tradeoffs. * Have worked on multi-GPU or distributed systems involving batching, scheduling, or runtime coordination. * Can reason end-to-end about inference pipelines, from request handling through execution and output streaming. * Are able to understand research ideas and implement them within real system and performance constraints. * Enjoy solving hard, ambiguous systems problems that only emerge at scale. * Prefer hands-on technical ownership and execution over abstract design work. **About OpenAI** OpenAI is an AI research and deployment company dedicated to ensuring that general-purpose artificial intelligence benefits all of humanity. We push the boundaries of the capabilities of AI systems and seek to safely deploy them to the world through our products. AI is an extremely powerful tool that must be created with safety and human needs at its core, and to achieve our mission, we must encompass and value the many different perspectives, voices, and experiences that form the full spectrum of humanity. We are an equal opportunity employer, and we do not discriminate on the basis of race, religion, color, national origin, sex, sexual orientation, age, veteran status, disability, genetic information, or other applicable legally protected characteristic. For additional information, please see OpenAI’s Affirmative Action and Equal Employment Opportunity Policy Statement. Background checks for applicants will be administered in accordance with applicable law, and qualified applicants with arrest or conviction records
Source: OpenAI careers · scraped 2026-05-22
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