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

ML Research Engineer - Hardware Codesign

Comp$185K – $455K

Classified Tasks (25)

Automate 0%Augment 60%Human-Only 40%

Augment (15)

AI assists, human decides

Build on the roofline simulator to track evolving workloads

technical

Deliver analyses that quantify the impact of system architecture decisions and support technology pathfinding

analytical

Debug gaps between performance simulation (rooflines) and real measurements

technical

Communicate root causes, bottlenecks, and invalid assumptions uncovered during debugging

communication

Write quantization kernels

technical

Write emulation kernels for low-precision numerics and lossy compression schemes

technical

Provide Research teams with evaluation data to enable trading efficiency against model quality

analytical

Derisk numerics via model evaluations

analytical

Quantify system architecture tradeoffs

analytical

Implement novel numeric RTL

technical

Prototype numerics modules by pushing RTL through synthesis

technical

Prototype new workloads with roofline models and/or functional simulation

technical

Communicate design tradeoffs clearly with explicit assumptions and confidence levels

communication

Produce a trail of evidence that enables confident execution

analytical

Investigate and validate assumptions to establish ground truth

analytical

Human-Only (10)

Requires human judgment

Shape numerics, architecture, and technology decisions for future OpenAI silicon in collaboration with Research and Hardware

leadership

Hand off novel numerics modules cleanly to downstream teams

operational

Own RTL modules end-to-end on occasion

leadership

Proactively pull in new ML workloads

leadership

Drive initial evaluation of new opportunities or risks

leadership

Translate end-to-end ML science and hardware optimization objectives into near-term deliverables

leadership

Build ad-hoc collaborations across teams with different goals and areas of expertise

leadership

Remove blockers to keep cross-team progress moving

leadership

Identify hard technical problems to investigate

analytical

Drive validated solutions and prototypes to production

operational

Job description

ML Research Engineer - Hardware Codesign | OpenAI Careers ## ML Research Engineer - Hardware Codesign Hardware - San Francisco Apply now(opens in a new window) ### **About the Team** OpenAI’s Hardware organization develops silicon and system-level solutions designed for the unique demands of advanced AI workloads. The team is responsible for building the next generation of AI silicon while working closely with software and research partners to co-design hardware tightly integrated with AI models. In addition to delivering production-grade silicon for OpenAI’s supercomputing infrastructure, the team also creates custom design tools and methodologies that accelerate innovation and enable hardware optimized specifically for AI. ### **About the Role** We’re seeking a Research-Hardware Codesign Engineer to operate at the boundary between model research and silicon/system architecture. You’ll help shape the numerics, architecture, and technology bets of future OpenAI silicon in collaboration with both Research and Hardware. Your work will include debugging gaps between rooflines and reality, writing quantization kernels, derisking numerics via model evals, quantifying system architecture tradeoffs, and implementing novel numeric RTL. This is a hands-on role for people who go looking for hard problems, get to ground truth, and drive it to production. Strong prioritization and clear, honest communication are essential. Location: San Francisco, CA (Hybrid: 3 days/week onsite) Relocation assistance available. ### **In this role you will:** * Build on our roofline simulator to track evolving workloads, and deliver analyses that quantify the impact of system architecture decisions and support technology pathfinding. * Debug gaps between performance simulation and real measurements; clearly communicate root cause, bottlenecks, and invalid assumptions. * Write emulation kernels for low-precision numerics and lossy compression schemes, and get Research the information they need to trade efficiency with model quality. * Prototype numerics modules by pushing RTL through synthesis; hand off novel numerics cleanly, or occasionally own an RTL module end-to-end. * Proactively pull in new ML workloads, prototype them with rooflines and/or functional simulation, and drive initial evaluation of new opportunities or risks. * Understand the whole picture from ML science to hardware optimization, and slice this end-to-end objective into near-term deliverables. * Build ad-hoc collaborations across teams with very different goals and areas of expertise, and keep progress unblocked. * Communicate design tradeoffs clearly with explicit assumptions and confidence levels; produce a trail of evidence that enables confident execution. ### **You Will Thrive in this Role if:** * An exceptional track record of high-quality technical output, and a bias for shipping a prototype now and iterating later in the absence of clear requirements. * Strong Python, and C++ or Rust, with a cautious attitude toward correctness and an intuition for clean extensibility. * Experience writing Triton, CUDA, or similar, and an understanding of the resulting mapping of tensor ops to functional units. * Working knowledge of PyTorch or JAX; experience in large ML codebases is a plus. * Practical understanding of floating point numerics, the ML tradeoffs of reduced precision, and the current state of the art in model quantization. * Deep understanding of transformer models, and strong intuition for transformer rooflines and the tradeoffs of sharded training and inference in large-scale ML systems. * Experience writing RTL (especially for floating point logic) and understanding of PPA tradeoffs is a plus. * Strong cross-functional communication (e.g. across ML researchers and hardware engineers); ability to slice ambiguous early-incubation ideas into concrete arenas in which progress can be made. *To comply with U.S. export con
Source: OpenAI careers · scraped 2026-05-22
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