Senior Systems Software Engineer, Accelerated Kubernetes Performance and Scale - Dgx Cloud

NVIDIA NVIDIA · Semiconductors · Santa Clara, CA +1

Senior Systems Software Engineer focused on performance and scalability of AI infrastructure on Kubernetes, specifically for NVIDIA's DGX Cloud. The role involves optimizing distributed systems, Kubernetes, containers, and GPU-related components to enable low-latency inference scaling and reduce operational costs for large-scale AI workloads.

What you'd actually do

  1. Lead end‑to‑end performance and scalability analysis across the Kubernetes‑based accelerated runtime stack (control and data planes), including NVIDIA components such as GPU Operator, Network Operator, node-feature-discovery, topograph, dra-driver-nvidia-gpu, and nvsentinel, tracking issues from orchestration down to the metal.
  2. Design and contribute upstream architectural changes to the Kubernetes control plane and related projects to enable reliable operation at hyperscale cluster sizes, doing in the open what today’s hyperscalers typically do privately.
  3. Improve container startup and cold‑start latency to enable smooth, low‑latency inference scaling on Kubernetes across thousands of GPU nodes, ensuring the AI runtime stack scales without creating API server pressure or operational fragility.
  4. Assess, improve, and contribute to open‑source projects that make Kubernetes an outstanding platform for AI workloads (for example, Grove and gateway-api‑inference‑extension), composing their architectures with scalability, resilience, and multi‑node training/inference in mind.
  5. Advance scalability and performance of confidential containers (CoCo) on Kubernetes so encrypted inference workloads meet stringent efficiency and latency requirements in production.

Skills

Required

  • Kubernetes
  • distributed systems
  • systems performance
  • scalability
  • GPU operators
  • device plugins
  • distributed inference serving
  • major cloud platforms
  • Golang
  • Python
  • NVIDIA software stack
  • computer architecture
  • networking
  • storage systems
  • accelerator-based platforms
  • performance modeling
  • benchmarking

Nice to have

  • Kubernetes distributions
  • scaling Kubernetes clusters to ultra-large node and object counts
  • working in the open-source community
  • PhD or equivalent experience

What the JD emphasized

  • deep expertise in distributed systems, Kubernetes, containers, and systems performance and scalability
  • broad, hands‑on experience across the stack, including GPU operators, device plugins, distributed inference serving, and major cloud platforms
  • own hard technical problems at large scale
  • scaling AI infrastructure while minimizing total cost of ownership
  • reducing cost per token
  • enabling future AI innovation and AI factories
  • 8+ years of experience in computer architecture, networking, storage systems, and accelerator‑based platforms
  • Deep experience with large‑scale, parallel, distributed accelerator systems and performance optimization of AI workloads
  • Expertise with at least one major public cloud provider

Other signals

  • scaling AI infrastructure
  • minimizing total cost of ownership
  • reducing cost per token
  • enabling future AI innovation
  • AI factories