Applied AI Engineer, Product Convergence and Closure

NVIDIA NVIDIA · Semiconductors · Shanghai, China

NVIDIA is seeking an Applied AI Engineer to rebuild their silicon toolchain using AI. The role involves building infrastructure to transform raw simulation data into firmware tuning, product specs, and manufacturing limits, automating analysis and validation using LLMs and agents, and developing observability systems. The engineer will work with various teams to translate hardware requirements into production workflows. Requires 4+ years of Python production experience and hands-on LLM application in engineering problems, with a focus on data quality and distinguishing useful AI tools from hype.

What you'd actually do

  1. Build the infrastructure that turns raw simulation data (power, noise, binning yields, and more) into real firmware tuning, product specs, and manufacturing limits. You own the pipelines between tools.
  2. Use LLMs and agents across the toolchain to automate the analysis, validation, and reporting work that currently costs engineering countless hours per chip.
  3. Build the observability and validation systems that catch data errors and inconsistencies before they turn into release blockers.
  4. Work with product convergence, silicon architecture, firmware, and manufacturing teams to translate new hardware requirements and capabilities into workflows that make it to production.

Skills

Required

  • BS/MS in CS, CE, EE, or Systems Engineering, or equivalent experience
  • 4+ years shipping production Python services and data pipelines (FastAPI, async workflows, databases, modern web frontends)
  • Hands-on experience applying LLMs to engineering problems: agents, MCP, RAG, or evaluation pipelines
  • Strong instincts for data quality: the automated checks, schema validation, and integration tests that keep pipelines trustworthy when inputs change.

Nice to have

  • Silicon product proficiency (speed, power, voltage noise, binning)
  • MCP, DSPy, or LLM evaluation frameworks
  • Perl interop for legacy chip-data workflows
  • crafted dashboards and visualizations for diverse collaborators

What the JD emphasized

  • Have shipped an LLM-backed feature in production and can tell us about a time you had to debug one.
  • You keep up with a fast-paced AI landscape and can distinguish which new tools matter and which are just hype

Other signals

  • LLM-backed feature in production
  • automate analysis, validation, and reporting
  • pipelines between tools