Physical AI Engineer (Model)
About this role
We are looking for the best
AD Divisionμ Physical AI Engineer (Model)λ Generative AI κΈ°μ μ μ€μ λ‘λ΄ λ° λͺ¨λΉλ¦¬ν° μμ€ν μ μμ¬κ²°μ κ³Ό μ μ΄λ‘ μ°κ²°νλ μν μ μνν©λλ€. μ°¨μΈλ End-to-End Trajectory Generation λ° Decision-making Model κ°λ°μ μ°Έμ¬νλ©°, 볡μ‘νκ³ λμ μΈ νκ²½μμλ μμ νκ³ ν¨μ¨μ μΈ μ£Όνμ΄ κ°λ₯ν Physical AI μμ€ν μ ꡬμΆν©λλ€. λν Reinforcement Learning(RL), Imitation Learning(IL), Motion Planning κΈ°μ μ μ΅ν©νμ¬ Autonomous Driving AIμ μ±λ₯μ ν₯μμν€κ³ μ€μ μ°¨λ νκ²½μ μ μ© κ°λ₯ν λͺ¨λΈμ κ°λ°ν©λλ€.
The Physical AI Engineer (Model) in the AD Division bridges generative AI technologies with real-world robotic and mobility actuation systems. This role focuses on developing next-generation end-to-end trajectory generation and decision-making models capable of safe and efficient operation in complex and dynamic environments. You will integrate reinforcement learning, imitation learning, and advanced motion planning techniques to improve autonomous driving AI performance and deploy scalable physical AI solutions.
Responsibilities
End-to-End Trajectory Generation λ° Decision-making Model κ°λ°μ μν λ°μ΄ν° μ μ²λ¦¬, λͺ¨λΈ νμ΅ λ° μ±λ₯ κ²μ¦ μν
Model-Based Reinforcement Learning(MBRL) λ° Imitation Learning(IL) μκ³ λ¦¬μ¦ κ°λ° λ° μ΅μ ν
Motion Planning, Filtering(Kalman Filter, Particle Filter λ±), Navigation μκ³ λ¦¬μ¦ ν΅ν© λ° κ²μ¦
CUDA κΈ°λ° λ₯λ¬λ λͺ¨λΈ λ° Planning Pipeline μ΅μ νλ₯Ό ν΅ν On-device Real-time μ±λ₯ ν보 μ§μ
Simulation λ° μ€μ μ°¨λ νκ²½μμ AI λͺ¨λΈ λ° μκ³ λ¦¬μ¦ κ²μ¦ μν
Perception, Planning, Control νκ³Ό νμ νμ¬ μ°¨μΈλ Physical AI μμ€ν κ°λ°
Develop data preprocessing pipelines, train models, and conduct performance validation for end-to-end trajectory generation and decision-making models
Develop and optimize Model-Based Reinforcement Learning (MBRL) and Imitation Learning (IL) algorithms
Integrate and validate motion planning, filtering (e.g., Kalman Filter, Particle Filter), and navigation algorithms
Support on-device optimization of deep learning models and planning pipelines using CUDA to achieve real-time performance
Validate AI models and algorithms in simulation and real-world vehicle environments
Collaborate with perception, planning, and control teams to develop next-generation physical AI systems
Qualifications
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Python λ° μ΅μ λ₯λ¬λ νλ μμν¬(PyTorch, JAX)λ₯Ό νμ©ν AI λͺ¨λΈ κ°λ° λ° νμ΅ κ²½ν
Motion Planning, Filtering, Navigation μκ³ λ¦¬μ¦μ λν μ΄λ‘ μ μ΄ν΄ λ° κ΅¬ν κ²½ν
Simulation λλ μ€μ Hardware νκ²½μμ AI λͺ¨λΈ λ° μκ³ λ¦¬μ¦ κ²μ¦ κ²½ν
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Masterβs degree or higher in Computer Science, Electrical Engineering, Robotics, Aerospace Engineering, or a related STEM field, or equivalent practical experience
Hands-on experience developing and training AI models using Python and modern deep learning frameworks such as PyTorch or JAX
Strong theoretical and practical understanding of motion planning, filtering, and navigation algorithms
Experience validating AI models and algorithms in simulation environments or on real hardware systems
Strong understanding of machine learning, deep learning, and reinforcement learning concepts
Preferred Qualifications
ICRA, IROS, CVPR, NeurIPS, RSS λ± Robotics λ° Computer Vision λΆμΌ Top-tier νν λλ μ λ λ Όλ¬Έ κ²μ¬ κ²½ν
C++, CUDA, TensorRT κΈ°λ° κ³ μ±λ₯ μ°μ° λ° μΆλ‘ μ΅μ ν κ²½ν
End-to-End Trajectory Generation λλ Generative AI κΈ°λ° Motion Planning νλ‘μ νΈ κ²½ν
Reinforcement Learning(RL) λλ λκ·λͺ¨ Imitation Learning(IL) λ°μ΄ν°μ κ΅¬μΆ λ° Training Pipeline μ΄μ κ²½ν
Autonomous Driving λλ Robotics λΆμΌ AI λͺ¨λΈ κ°λ° κ²½ν
λκ·λͺ¨ AI νμ΅ λ° μΆλ‘ μμ€ν κ΅¬μΆ κ²½ν
Publication record in top-tier robotics and computer vision conferences or journals such as ICRA, IROS, CVPR, NeurIPS, or RSS
Experience with high-performance computing and inference acceleration using C++, CUDA, and TensorRT
Experience developing end-to-end trajectory generation models or generative AI-based motion planning systems
Experience building datasets and operating training pipelines for reinforcement learning or large-scale imitation learning
Experience developing AI models for autonomous driving or robotics applications
Experience building large-scale AI training and inference systems
Interview Process
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Resume Screening - Coding Test - Virtual Interview (approximately 1 hour) - Onsite or Virtual Interview (approximately 3 hours) - Final Offer
Please note that the interview process may vary depending on the position and is subject to change based on scheduling and other circumstances.
Interview schedules and results will be communicated individually via the email address provided in your application.
Additional Information
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