Senior Systems Software Engineer, Semiconductor Systems Inspection

NVIDIA NVIDIA · Semiconductors · Santa Clara, CA

Senior Software Engineer to develop AI products for semiconductor inspection, focusing on computer vision, multimodal AI, anomaly detection, model compression, and deployment optimization. The role involves building models, adaptation workflows, and inference pipelines for production environments, with a focus on advancing roadmap progress and delivering practical systems.

What you'd actually do

  1. Define and prototype AI system architectures for semiconductor defect inspection across optical inspection, e-beam inspection, wafer and mask inspection, metrology, and defect review workflows.
  2. Advance WFM capabilities for semiconductor inspection, including multimodal representation learning, model adaptation, domain transfer, and data-scarce defect understanding.
  3. Work with our partners to integrate and enhance existing computer vision and multimodal inspection workflows for defect detection, classification, localization, segmentation, nuisance filtering, ADC, and ADR.
  4. Design agentic inspection flows for air-gapped fab environments, connecting data triage, model inference, review assistance, root-cause analysis, human approval, and secure deployment constraints.
  5. Convert research into customer-ready semiconductor inspection products with clear evaluation, failure analysis, monitoring, optimization, and production deployment paths.

Skills

Required

  • MS, or PhD in Computer Science, Electrical Engineering, Computer Engineering, or a related technical field, or equivalent experience.
  • 3+ years of proven experience in deep learning, machine learning, computer vision, or applied AI.
  • Strong programming skills in Python and experience with modern deep learning frameworks such as PyTorch or TensorFlow.
  • Experience developing or applying foundational world models in computer vision for classification, detection, segmentation, anomaly detection, or multimodal understanding.
  • Familiarity with self-supervised, few-shot, weakly supervised, unsupervised, or domain adaptation approaches relevant to inspection problems.
  • Strong analytical, communication, and cross-functional collaboration skills.

Nice to have

  • Experience with semiconductor inspection, industrial visual inspection, manufacturing AI, metrology, or defect review workflows.
  • Experience with knowledge distillation, model compression, quantization, pruning, or deployment optimization for edge or production environments.
  • Background in anomaly detection or anomaly generation, especially in domains with unusual labels and shifting visual distributions.
  • Familiarity with NVIDIA software and deployment tools such as TensorRT, CUDA, cuDNN, Triton, DeepStream, TAO Toolkit, or RAPIDS.
  • Experience building end-to-end pipelines that span data curation, training, evaluation, export, and inference in production settings.

What the JD emphasized

  • limited data
  • domain shifts
  • tight deployment requirements
  • customer-ready semiconductor inspection products
  • production deployment paths

Other signals

  • developing concrete AI products
  • turning research momentum into deployable AI products
  • production readiness