Principal Perception Engineer, Obstacle Foundation Models - Autonomous Vehicles

NVIDIA NVIDIA · Semiconductors · Santa Clara, CA

Principal Perception Engineer at NVIDIA focusing on designing and productizing next-generation autonomous driving perception stacks. The role involves leading the technical direction for 3D obstacle perception using advanced deep learning models (CNNs, transformers, multi-modal), sensor fusion, and large-scale datasets. Responsibilities include developing production-grade models, defining KPIs, leading data strategy, and ensuring solutions meet stringent safety and performance requirements for deployment at scale. Requires extensive hands-on experience in deep learning perception systems, technical leadership, and strong programming skills.

What you'd actually do

  1. Own the technical vision, architecture, and roadmap for 3D obstacle perception to support end-to-end autonomous driving functionalities, leveraging state-of-the-art CNN and transformer-based architectures where appropriate.
  2. Design and develop advanced 3D perception models using multi-camera inputs and/or multi-sensor fusion (camera, radar, lidar) for obstacle detection and tracking, including opportunities to explore BEV and transformer-based 3D perception.
  3. Lead the development of efficient, production-grade deep learning models: define objectives, select architectures, guide experimentation, and establish best practices for training and evaluation, using techniques such as large-scale pretraining, distillation, and parameter-efficient fine-tuning (e.g., LoRA).
  4. Define and drive KPI frameworks to quantify perception performance; analyze large-scale real and synthetic datasets to identify failure modes and systematically improve accuracy, robustness, and efficiency, incorporating modern approaches like self-supervised and representation learning when beneficial.
  5. Lead data strategy for perception: specify data and labeling requirements, prioritize data collection and annotation, and collaborate closely with data and ground-truth teams to maximize impact, including model-assisted workflows (e.g., active learning, auto-labeling, VLMs) and advanced model-in-the-loop tooling.

Skills

Required

  • 15+ years of hands-on experience developing deep learning–based perception or closely related systems for complex real-world problems
  • strong proficiency in frameworks such as PyTorch
  • track record of taking models from prototype to production
  • Demonstrated technical leadership as a senior or principal-level individual contributor: owning features or subsystems end-to-end, setting technical direction, making architectural decisions, and coordinating across teams.
  • Proven experience in data-driven development, including close collaboration with data, labeling, and ground-truth teams on data strategy, labeling quality, and iterative model improvement.
  • Strong programming skills in Python and/or C++
  • history of building reliable, high-performance, production-quality software.
  • Excellent communication and collaboration skills
  • ability to influence, align, and drive consensus across multidisciplinary teams.
  • BS/MS/PhD in Computer Science, Electrical Engineering, or related fields (or equivalent experience).

Nice to have

  • Proven track record leading the design and deployment of perception solutions for autonomous driving or robotics using camera-based deep learning at scale.
  • Hands-on experience architecting and deploying DNN-based perception pipelines on embedded or real-time platforms, including optimization for latency, memory, and compute constraints
  • experience with modern architectures such as CNNs and transformers
  • familiarity with techniques like large-scale pretraining, parameter-efficient fine-tuning (e.g., LoRA), or vision-language models (VLMs).
  • Strong publication record or recognized contributions in deep learning, computer vision, or autonomous systems at leading conferences/journals (e.g., CVPR, ICCV, NeurIPS, IROS).
  • Deep understanding of 3D computer vision fundamentals, including camera modeling and calibration (intrinsic and extrinsic), multi-view geometry, and 3D representations
  • experience applying these concepts in transformer-based 3D or BEV perception pipelines.
  • Experience with CUDA development and optimizing training or inference pipelines through custom CUDA kernels or other GPU-accelerated components.

What the JD emphasized

  • 15+ years of hands-on experience developing deep learning–based perception or closely related systems for complex real-world problems
  • Demonstrated technical leadership as a senior or principal-level individual contributor
  • Proven experience in data-driven development
  • Strong publication record or recognized contributions in deep learning, computer vision, or autonomous systems at leading conferences/journals (e.g., CVPR, ICCV, NeurIPS, IROS)

Other signals

  • production-grade deep learning models
  • large-scale pretraining
  • distillation
  • parameter-efficient fine-tuning
  • 3D obstacle perception
  • multi-camera inputs
  • multi-sensor fusion
  • BEV and transformer-based 3D perception
  • real and synthetic datasets
  • self-supervised and representation learning
  • model-assisted workflows
  • autonomous driving
  • real-time platforms
  • embedded platforms
  • optimization for latency, memory, and compute constraints
  • CNNs and transformers
  • vision-language models (VLMs)
  • 3D computer vision fundamentals
  • multi-view geometry
  • 3D representations
  • BEV perception pipelines
  • CUDA development
  • GPU-accelerated components