Solutions Architect - Cpu and Lpu

NVIDIA NVIDIA · Semiconductors · Beijing, China +1

NVIDIA Solutions Architect focused on optimizing AI inference workloads across CPU, GPU, and LPU platforms for customers. The role involves technical expertise, proof-of-concept development, and optimizing AI efficiency in heterogeneous environments.

What you'd actually do

  1. Evangelize NVIDIA CPU platforms, including Grace, Vera, and future generations, as well as LPU-based systems and LPX-class platforms, with a strong focus on AI software stacks and workload efficiency.
  2. Help customers design and optimize AI workloads across CPU, GPU, and LPU, improving latency, throughput, utilization, and overall cost efficiency.
  3. Analyze and tune LLM and generative AI pipelines across serving, runtime, memory, I/O, batching, scheduling, and orchestration layers.
  4. Build proof-of-concepts, reference architectures, and technical guidance in partnership with Engineering, Product, and Sales teams.
  5. Establish trusted technical relationships with customer architects, infrastructure teams, and senior leaders, becoming a strategic advisor for heterogeneous AI system design.

Skills

Required

  • MS or PhD in Computer Science, Engineering, Mathematics, Physics, or a related field, or equivalent experience
  • 5+ years in AI systems, infrastructure, performance engineering, or solution architecture
  • Strong understanding of modern CPU architecture, Linux systems, and software performance tuning
  • Hands-on experience in AI inference for LLM, generative AI, or agentic AI workloads
  • Experience optimizing heterogeneous systems involving CPU and accelerators
  • Familiarity in frameworks such as PyTorch, Triton, TensorRT-LLM, vLLM, or ONNX Runtime
  • Strong programming, problem-solving, and communication skills

Nice to have

  • Experience with NVIDIA CPU platforms such as Grace, Grace Hopper, or Arm64 server environments
  • Familiarity with LPU-based systems or other low-latency inference accelerators
  • Deep expertise in LLM inference optimization, serving architecture, and workload placement across CPU, GPU, and LPU
  • Experience building customer-facing proof-of-concepts and measuring AI efficiency through latency, throughput, cost per token, power, or utilization
  • Familiarity with NVIDIA AI software and platform technologies

What the JD emphasized

  • AI inference for LLM, generative AI, or agentic AI workloads
  • optimizing AI efficiency
  • LLM inference optimization
  • AI efficiency

Other signals

  • customer-facing AI infrastructure
  • LLM inference optimization
  • heterogeneous system design