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Engineer - Perception (Deep Learning) (m/f/d)

5 hours ago 2026/10/22
Other Business Support Services
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Job description

Role Overview
Seeking a Perception Engineer to develop and enhance a perception stack using both classical computer vision techniques and modern deep learning approaches. The role focuses on end-to-end learning systems while maintaining strong grounding in traditional methods. The work supports real-time, deployable perception systems for autonomous navigation across diverse environments and robotic platforms.

Key Responsibilities
  • Design and implement robust, real-time perception modules for both structured (on-road) and unstructured (off-road) environments using learning-based and geometric methods.
  • Develop clean, modular, and efficient code in C++ and Python, following ROS1/ROS2 and industry best practices.
  • Conduct extensive field testing and iterative system tuning to ensure performance and reliability under real-world conditions.
  • Work closely with adjacent system components such as localization, planning, and control to enable seamless integration.
  • Participate in code reviews and maintain clear, detailed technical documentation.
  • Integrate HD map data (e.g., Lanelet2 and semantic layers) into perception pipelines to support object-level reasoning, localization, and terrain adaptation.
Minimum Qualifications and Skills
  • Bachelor’s or Master’s degree in Robotics, Computer Vision, or a related field.
  • 4+ years of experience in real-time perception or computer vision systems.
  • Proficiency with libraries and tools such as OpenCV, PCL, Open3D, PyTorch, and TensorRT.
  • Strong understanding of deep learning architectures (e.g., CNNs, transformers) and their application in perception tasks.
  • Familiarity with modern perception approaches such as LSS, BEVFormer, BEVFusion, and ability to assess trade-offs between accuracy, latency, and deployability.
  • Strong programming skills in Python and C++, with experience in ROS1 or ROS2 systems.
  • Experience with modern development workflows and tools such as Git, Docker, and CI/CD systems.
Preferred Qualifications and Skills
  • Experience combining traditional perception techniques with deep learning-based methods.
  • Familiarity with experiment management and MLOps tools such as Hydra, Weights & Biases, AWS SageMaker, or GCP.
  • Knowledge of HD map frameworks such as Lanelet2 or similar systems.
  • Experience working with ARM64-based edge devices, including NVIDIA Jetson platforms.
Additional Skills
  • Strong communication skills with the ability to explain complex technical concepts clearly.
  • Ability to work independently in fast-paced environments.
  • Comfortable balancing experimental prototyping with debugging real-world system challenges

 

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