Deep Learning Applications Engineer

NVIDIA NVIDIA · Semiconductors · Seoul, South Korea

NVIDIA is seeking an AI Engineer to design and build agentic systems and deep learning applications for ADAS solutions. The role involves developing creative workflows, models, and simulations, productizing driver assistance systems, and working with LLM/VLM-powered agents, perception, and robotics models. Experience with automotive embedded platforms, AI/ML, agent engineering, and end-to-end development from prototype to SIL/HIL is required.

What you'd actually do

  1. Design and deploy LLM/VLM-powered agents for use cases across the autonomous driving stack, including automated bug diagnosis and triaging flows.
  2. Develop and optimize innovative deep learning models for robotics and ADAS systems.
  3. Build workflows, models, and simulations to productize NVIDIA driver assistance capabilities.
  4. Develop agentic workflows for SIL and HIL solutions and integrate them with validation and test infrastructure.
  5. Collaborate with solutions architecture, validation, firmware, and customer-facing teams to deliver features from prototype through SIL/HIL toward production readiness.

Skills

Required

  • BS/MS or higher in Computer Engineering, Computer Science, Electrical Engineering, Robotics, or a related field (or equivalent experience)
  • 2+ years of relevant professional software engineering experience
  • Demonstrated work in AI/ML, automation, test infrastructure, or platform/tooling
  • Hands-on experience on embedded systems in automotive-related platforms
  • Solid proficiency with modern LLM/VLM APIs, prompt engineering, and agent frameworks (e.g., LangChain, AutoGen, CrewAI, or custom orchestration)
  • Strong proficiency in Python (agent orchestration, tooling, data pipelines)
  • working proficiency in C/C++
  • Practical experience with Git, Docker, CI/CD, and test or verification frameworks used for automated software validation
  • Strong analytical and communication skills
  • Hands-on SIL/HIL or simulation experience tied to ADAS perception, planning, or validation pipelines.

Nice to have

  • PhD in Robotics and Deep learning
  • Deep embedded literacy: schematics, memory maps, RTOS/Linux log parsing, and hardware constraints
  • Experience fine-tuning open-source models (e.g., Llama-3, Mistral, Qwen) with LoRA/QLoRA for perception, code generation, or log analysis
  • Background in automated software verification, fuzzing, or symbolic execution
  • Publications, open-source contributions, or shipped projects in robotics, ADAS, or agentic automation.

What the JD emphasized

  • Hands-on experience on embedded systems in automotive-related platforms
  • Solid proficiency with modern LLM/VLM APIs, prompt engineering, and agent frameworks
  • Strong proficiency in Python
  • Hands-on SIL/HIL or simulation experience tied to ADAS perception, planning, or validation pipelines.

Other signals

  • design and build agentic systems
  • deep learning applications
  • productize NVIDIA driver assistance systems
  • LLM/VLM-powered agents
  • robotics models
  • embedded platforms
  • agent engineering skills
  • prototype to SIL/HIL
  • autonomous-driving
  • embedded problems