NVIDIA
NVIDIA

Senior GPU System Architect

RoleDevops
LevelStaff
LocationIndia, Bengaluru, United States
WorkOn-site
TypeFull-time
Posted4 months ago
Apply now

About the role

About the Role

NVIDIA has continuously reinvented itself. Our invention of the GPU sparked the growth of the PC gaming market, redefined modern computer graphics, and revolutionized parallel computing. Today, research in artificial intelligence is booming worldwide, which calls for highly scalable and massively parallel computation horsepower that NVIDIA GPUs excel.

We are seeking a GPU System Architect who will architect and design multi-GPU scale-up and scale-out systems for next-generation datacenter platforms for AI and HPC. The architect in this role will explore and define system architectures that tightly couple GPU compute, high-bandwidth memory, in-package interconnects and GPU-to-GPU communication fabric subsystems to deliver industry-leading AI performance, scalability and resilience. The ideal candidate combines deep hands-on system-level fabric/networking architecture experience, and practical hardware-software co-design expertise.

What You Will Be Doing

  • Architect multi-GPU system topologies for scale-up and scale-out configurations, balancing AI throughput, scalability, and resilience
  • Define, modify and evaluate future architectures for high-speed interconnects such as NVLink and Ethernet co-designed with the GPU memory system
  • Collaborate with other teams to architect RDMA-capable hardware and define transport layer optimizations for GPU-based large scale AI workload deployments
  • Use and modify system models, perform simulations and bottleneck analyses to guide design trade-offs
  • Work with GPU ASIC, compiler, library and software stack teams to enable efficient hardware-software co-design across compute, memory, and communication layers
  • Contribute to interposer, package, PCB and switch co-design for novel high-density multi-die, multi-package, multi-node rack-scale systems consisting of hundreds of GPUs

What We Need to See

  • BS/MS/PhD in Electrical Engineering, Computer Engineering, or equivalent area
  • 8 years or more of relevant experience in system design and/or ASIC/SoC architecture for GPU, CPU or networking products
  • Deep understanding of communication interconnect protocols such as NVLink, Ethernet, Infini Band, CXL and PCIe
  • Experience with RDMA/RoCE or Infini Band transport offload architectures
  • Proven ability to architect multi-GPU/multi-CPU topologies, with awareness of bandwidth scaling, NUMA, memory models, coherency and resilience
  • Experience with hardware-software interaction, drivers and runtimes, and performance tuning for modern distributed computing systems
  • Strong analytical and system modeling skills (Python, SystemC, or similar)
  • Excellent cross-functional collaboration skills with silicon, packaging, board, and software teams

Ways to Stand Out From the Crowd

  • Background in system design for AI and HPC
  • Experience with NICs or DPU architecture and other transport offload engines
  • Expertise in chiplet interconnect architectures or multi-node fabrics and protocols for distributed computing
  • Hands-on experience with interposer or 2.5D/3D package co-design

Position Type: #

NVIDIA is the world leader in accelerated computing. NVIDIA pioneered accelerated computing to tackle challenges no one else can solve. Our work in AI and digital twins is transforming the world's largest industries and profoundly impacting society. Learn more about NVIDIA.

Benefits and perks

Professional Development

401k Matching

Generous Paid Time Off And Holidays

Team Events And Activities

Parental Leave

Required skills

Python

JavaScript

TypeScript

About NVIDIA

India

Headquarters