Software Engineer, Dgx Cloud AI Infrastructure

NVIDIA NVIDIA · Semiconductors · Santa Clara, CA +4 · Remote

Software Engineer role focused on AI infrastructure, specifically distributed training and inference workloads on NVIDIA GPU platforms. Responsibilities include bring-up, triage, benchmarking, analysis, and optimization of these workloads at scale. Requires experience with multi-GPU/multi-node systems, debugging distributed environments, and strong Python/C++ skills.

What you'd actually do

  1. Bring up, validate, and debug large-scale AI clusters, infrastructure, and end-to-end workloads.
  2. Bring up, tune, and benchmark AI pre-training, post-training, and inference workloads using PyTorch, NeMo / Megatron, TensorRT-LLM, and adjacent NVIDIA AI software stacks.
  3. Perform root-cause analysis of failures in large distributed environments
  4. Contribute to the resilience and failure-attribution tooling that detects, triages, and attributes node, fabric, and workload failures across the cluster.
  5. Build and maintain repeatable benchmark suites, automation, acceptance criteria, and qualification workflows on new platforms.

Skills

Required

  • Bachelor’s or Master’s in Computer Science or a related technical field (or equivalent experience).
  • 3+ years of experience developing software for AI, HPC, or systems-level applications.
  • Hands-on experience with multi-GPU or multi-node workloads and CUDA-aware distributed execution.
  • Background with debugging and scaling distributed systems.
  • Experience debugging and triaging AI applications across the full stack, from the application level toward the hardware.
  • Experience operating workloads in scheduled, containerized cluster environments.
  • Excellent analytical, debugging, and communication skills, and a collaborative approach across teams.
  • Strong Python and C/C++ programming skills.

Nice to have

  • Hands-on experience with NCCL and CUDA-aware distributed execution.
  • Deep familiarity with the RDMA software stack (NCCL, IB verbs, UCX, libfabric) and with InfiniBand / RoCE congestion debugging.
  • Experience building acceptance tests, benchmark harnesses, regression gates, or cluster qualification tooling for AI platforms, including MLPerf.
  • Experience diagnosing performance jitter
  • Experience building resilience, fault-detection, or failure-attribution systems for datacenter-scale infrastructure.

What the JD emphasized

  • 3+ years of experience developing software for AI, HPC, or systems-level applications.
  • Hands-on experience with multi-GPU or multi-node workloads and CUDA-aware distributed execution.
  • Backgroun with debugging and scaling distributed systems.
  • Experience debugging and triaging AI applications across the full stack, from the application level toward the hardware.

Other signals

  • distributed training
  • inference workloads
  • GPU platforms
  • large-scale clusters
  • performance optimization