Deep Learning Applications Engineer
Indexed description
What You'll Be Doing
- Design and deploy LLM/VLM-powered agents for use cases across the autonomous driving stack, including automated bug diagnosis and triaging flows.
- Develop and optimize innovative deep learning models for robotics and ADAS systems.
- Build workflows, models, and simulations to productize NVIDIA driver assistance capabilities.
- Develop agentic workflows for SIL and HIL solutions and integrate them with validation and test infrastructure.
- Collaborate with solutions architecture, validation, firmware, and customer-facing teams to deliver features from prototype through SIL/HIL toward production readiness.
- 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 (e.g., in-vehicle ECU/SoC stacks, ADAS, IVI, AUTOSAR/Linux-based automotive software, automotive validation/SIL/HIL, or OEM/Tier-1 environments). Ability to read embedded logs, understand hardware–software constraints, and collaborate with firmware and validation engineers.
- 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) and working proficiency in C/C++ to read embedded code, interpret logs, and collaborate with firmware/validation teams.
- Practical experience with Git, Docker, CI/CD, and test or verification frameworks used for automated software validation.
- Strong analytical and communication skills; ability to learn quickly and own assigned features with guidance from senior engineers and multi-functional partners.
- Hands-on SIL/HIL or simulation experience tied to ADAS perception, planning, or validation pipelines.
- PhD in Robotics and Deep learning is prefered
- Deep embedded literacy: schematics, memory maps, RTOS/Linux log parsing, and hardware constraints beyond typical platform bring-up.
- 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.
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