Senior Dgx Cloud Test Development Engineer, Sdet

NVIDIA NVIDIA · Semiconductors · Shanghai, China

This role focuses on using and developing AI-powered tools to enhance software testing processes within NVIDIA's DGX Cloud platform. The engineer will be responsible for improving test case generation, defect detection, and test coverage, as well as performing various types of testing and automating test cases. While the role utilizes AI tools, its core function is software testing and quality assurance, not the direct development or research of AI models themselves.

What you'd actually do

  1. Use and develop AI-powered tools to make software testing smarter, faster, and more effective!
  2. Improve test case generation, defect detection, flaky test analysis, regression testing, and test coverage optimization.
  3. Work with product, engineering, and cross-functional teams to review requirements and define test strategies.
  4. Build test plans, design and execute test cases, and report quality status, risks, bugs, and results.
  5. Perform functional, performance, fault-injection, reliability, and regression testing for cloud-native systems.

Skills

Required

  • MS or PhD in Computer Science, Engineering, or a related field
  • 5+ years of QA, test automation, or software testing experience
  • Hands-on experience using AI tools to improve QA workflows
  • Strong QA fundamentals, test strategy, test planning, and failure analysis skills
  • Proficiency with Unix/Linux and shell or Python programming
  • Experience with Kubernetes, containers, CI/CD pipelines, and cloud-native systems
  • Experience testing observability tools such as Prometheus, Grafana, ELK Stack, Datadog, or similar platforms
  • Experience with large-scale failure testing, using tools such as KWOK, Chaos Monkey, or similar frameworks
  • Strong communication, problem-solving skills, and curiosity for complex technology

Nice to have

  • Used AI to reduce testing time, improve defect detection, or increase test coverage
  • Built AI-driven solutions that streamlined QA workflows or reduced manual effort
  • Experience with SaaS or PaaS testing
  • Experience with NVIDIA GPU hardware or GPU-accelerated software

What the JD emphasized

  • Hands-on experience using AI tools to improve QA workflows
  • Used AI to reduce testing time, improve defect detection, or increase test coverage
  • Built AI-driven solutions that streamlined QA workflows or reduced manual effort