Senior Deep Learning Test Development Engineer, Sdet

NVIDIA NVIDIA · Semiconductors · Shanghai, China

Senior Deep Learning Test Development Engineer (SDET) at NVIDIA, focusing on validating the performance and robustness of Deep Learning software and GPU infrastructure across various AI applications like autonomous driving, healthcare, and NLP. The role involves test plan design, execution, automation, bug management, and leveraging AI-powered tools for efficiency.

What you'd actually do

  1. Work closely with global cross-functional teams to understand the test requirements and take ownership of product quality.
  2. Plan/design/execute/report/automate test plan/test case/test reports.
  3. Manage bug lifecycle and co-work with inter-groups to drive for solutions.
  4. Automate test cases and assist in the architecture, crafting and implementing of test frameworks.
  5. In-house repro and verify customer issues/fixes.

Skills

Required

  • 5+ years of software quality assurance or test automation background
  • knowledge of test infrastructure
  • strong analysis skills
  • Scripting language (Python, Perl, Bash) knowledge
  • UNIX/Linux experience
  • Good C/C++ software development, DevOps or test development experience
  • Good user/development experiences of virtualization like VM & Docker container
  • Excellent English written and oral communication skills
  • Able to juggle conflicting/changing priorities and maintain a positive attitude while experiencing challenging and dynamic schedules
  • Experience with AI tools

Nice to have

  • Familiarity with NVIDIA GPU hardware products (Tesla, Tegra, DGX, etc).
  • Working knowledge of NVIDIA GPU Computing (CUDA) and CUDA libraries for Deep Learning.
  • Experience in VectorCAST, Bullseye, Gcov, or Coverity tools.
  • Automation experience.
  • Experience with LLM inference frameworks (TRT-LLM, vLLM, SGLang, etc.) and familiar with running various AI workloads, proven success in leveraging AI tools to significantly improve efficiency, streamline workflows or enhance process automation.

What the JD emphasized

  • AI product teams
  • AI scenarios
  • AI-powered tools
  • AI tools
  • AI workloads
  • NVIDIA GPU hardware products
  • NVIDIA GPU Computing (CUDA)

Other signals

  • AI product teams
  • AI scenarios
  • AI-powered tools
  • AI tools
  • AI workloads