Soc AI Application Engineer — AI Services, Agents and Knowledge Systems

NVIDIA NVIDIA · Semiconductors · Hsinchu, Taiwan

NVIDIA is seeking an AI Engineer to build AI application-layer services for SOC design automation, including assistants, retrieval, Q&A, workflow automation, and AI agents. The role involves designing, implementing, and operating LLM-backed services, building RAG and knowledge systems, applying agent and orchestration patterns, improving developer experience with AI-assisted coding, and owning reliability and evaluation.

What you'd actually do

  1. Design, implement, and operate LLM-backed services: APIs, async jobs, streaming responses, and integration with internal tools and data sources.
  2. Build RAG and knowledge systems: chunking, embeddings, vector retrieval, reranking, access control, and quality/latency tuning.
  3. Apply agent and orchestration patterns with frameworks like LangChain (or comparable): tool use, multi-step plans, memory, and guardrails—aligned with how SOC Hardware team works.
  4. Improve developer and engineer experience with AI-assisted coding and repeatable “skills”: prompts, procedures, and small utilities that teams can run consistently (including patterns like Claude Code + structured skills).
  5. Own reliability and perform evaluation: logging, tracing, regression tests for prompts/pipelines, and metrics for usefulness and safety on proprietary data.

Skills

Required

  • Python
  • shipping services (REST/gRPC, containers, basic cloud or on-prem deployment patterns)
  • LLM application frameworks (e.g. LangChain or equivalent)
  • RAG (vector DBs, retrieval design, evaluation)
  • coding agents and IDE workflows
  • software engineering habits (dependency management, configuration, testing, clear interfaces)

Nice to have

  • RTL Coding capability
  • Makefile Coding capability
  • SOC Design know-how
  • Physical Design know-how
  • Web development (React/TypeScript, FastAPI)

What the JD emphasized

  • AI application / AI service development (building products on top of LLMs, not only ad-hoc scripts)
  • shipping services
  • Hands-on use of LLM application frameworks (e.g. LangChain or equivalent) and RAG (vector DBs, retrieval design, evaluation)
  • coding agents and IDE workflows
  • Solid software engineering habits

Other signals

  • building AI application-layer services
  • using AI to upgrade the conventional SOC Design flow
  • develop AI agent for SOC Design-related tasks