Senior GPU Architect, Deep Learning

NVIDIA NVIDIA · Semiconductors · Tel Aviv, Israel +2

Senior GPU Architect role focused on defining and driving future GPU architectures for deep learning and accelerated computing. Responsibilities include architectural feature definition, microarchitectural exploration, workload analysis, performance modeling, and collaboration with design and software teams. Requires extensive experience in GPU/computer architecture, parallel processing, and deep learning acceleration.

What you'd actually do

  1. Define and architect new GPU hardware features for future deep learning and parallel processing workloads.
  2. Drive microarchitectural exploration across key areas such as compute pipelines, memory hierarchy, data movement, synchronization, and performance efficiency.
  3. Analyze workload behavior and translate bottlenecks into clear architectural requirements and hardware feature proposals.
  4. Evaluate performance, power, area, complexity, and programmability tradeoffs for new architectural directions.
  5. Develop and use functional and performance models to study new features and refine the architecture before implementation.

Skills

Required

  • BS, MS, or PhD in Computer Science, Electrical Engineering, Computer Engineering, or equivalent experience.
  • 12+ years of relevant industry experience in GPU architecture, computer architecture, or other parallel processing architectures.
  • Strong background in hardware architecture and microarchitecture.
  • Experience defining and evaluating architectural features with solid understanding of performance, power, and area tradeoffs.
  • Strong programming and scripting skills in C, C++, and Python.
  • Experience with architectural modeling, simulation, or performance analysis.
  • Background in parallel computing, memory systems, high performance computing, or deep learning acceleration.
  • Strong communication skills and the ability to drive technical work across distributed, interdisciplinary teams.

Nice to have

  • Deep understanding of modern GPU architecture and the interaction between hardware and AI workloads.
  • Experience with memory subsystem architecture, interconnects, coherence, scheduling, or execution pipelines.
  • Experience with pre-silicon performance studies, workload characterization, and architectural correlation.
  • Familiarity with training and inference behavior for large-scale deep learning models.
  • Experience with silicon bring-up, debug, or post-silicon analysis.

What the JD emphasized

  • deep learning
  • training and inference workloads
  • GPU architecture
  • deep learning acceleration

Other signals

  • defining architectural features for future GPUs
  • deep learning and accelerated computing
  • training and inference workloads
  • performance, efficiency, scalability, and programmability