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Physical AI Engineer (Ref 20267)

ST Engineering

Singapore

On-site

SGD 70,000 - 100,000

Full time

30+ days ago

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Job summary

A leading technology firm in Singapore is seeking a Physical AI Engineer to develop and integrate Machine Learning and Generative AI models for robotics. The ideal candidate has a background in AI, strong experience with ROS2, and a passion for robotics. This role involves training models for real-world applications and collaborating on cutting-edge projects in robotic autonomy.

Benefits

Opportunity to work on state-of-the-art AI models
Combination of research and deployment
High-impact work on robotic autonomy

Qualifications

  • 3 years of experience building robotics/Physical AI systems.
  • Strong foundation in robotics middleware integration.
  • Extensive experience with AI/ML and Generative/Foundation models.

Responsibilities

  • Develop and integrate AI/ML models for robotic applications.
  • Evaluate model performance in simulation and hardware.
  • Collaborate on R&D projects for new capabilities.

Skills

Robotics integration
Machine Learning
Generative AI
ROS2
Model compression
GPU/CUDA
Robotic systems deployment

Education

Bachelor’s/Master’s in Computer Science, AI, Robotics

Tools

TensorRT
Jetson
Linux
Job description

We are looking for Physical AI Engineers focused on developing and integrating Machine Learning (including Generative AI) models that enable real robots to perceive, reason, and act autonomously. This role bridges Robotics and Agentic AI — working on perception, decision-making, and multi-model integration for multi-robot and embodied systems.

You will work on training and adapting Generative/Foundation models (vision, language, planning, VLA models, swarm reasoning) and deploying them onto edge and robotic hardware.

Responsibilities
  • Develop and integrate AI/ML and Generative/Foundation models for perception, mapping, task planning, and embodied decision-making.
  • Fine‑tune or adapt Generative/Foundation models (Small Language Model / Small‑Vision‑Language / Vision‑Language‑Action) models for edge deployment for real‑world robotic applications.
  • Implement on‑device model optimization (quantization, distillation, TensorRT, etc.).
  • Build data pipelines: simulation → real‑world → feedback loop for continual model improvement.
  • Conduct domain adaptation and reinforcement/interactive learning for robot skills.
  • Integrate models into ROS2 and swarm autonomy stacks.
  • Evaluate model performance in both simulation and hardware deployment.
  • Optimize inference latency and reliability on edge compute platforms.
  • Formulate the conceptual and detailed technical solution for the development of applications to meet customer requirements.
  • Provide recommendations on relevant emerging technology in Physical AI/Robotics to senior management.
  • Identify and lead strategic technical capability development for Physical AI/Robotics.
  • Collaborate on research and development projects to explore new capabilities and applications for Physical AI/Robotics technology.
Minimum Requirements
  • Bachelor’s/Master’s in Computer Science, Machine Learning, AI, Robotics, or related field.
  • 3 years of experience building robotics/Physical AI systems. Candidates without work experience but with relevant skills are also welcome to apply.
  • Strong foundation in ROS2 or robotics middleware integration.
  • Extensive experience building/fine‑tuning AI/ML and Generative/Foundation models (vision, transformer‑based, or RL) for robotic systems.
  • Good knowledge of model compression/acceleration for embedded devices (Jetson, Pi, etc.).
  • GPU/CUDA experience or on‑device inference for embedded AI.
  • Experience with deployment on embedded/edge Linux systems.
  • Good understanding of robotics model training pipelines (perception → planning → control).
Preferred Experience
  • Vision‑Language‑Action (VLA) or Multi‑Modal model experience.
  • Reinforcement learning / imitation learning / interactive training loops.
  • Synthetic data and simulation‑based training (Isaac Sim, Habitat, etc.).
  • Knowledge of distributed training pipelines or MLOps for robotics.
Additional Skills
  • Strong experimentation and iterative problem‑solving mindset.
  • Comfortable bridging research prototypes into production‑grade systems.
  • Able to collaborate tightly with AI and systems engineers.
  • Curious and self‑driven — able to explore new Physical AI approaches and rapidly test them.
What We Offer
  • Opportunity to work on state‑of‑the‑art embodied AI models powering real robots.
  • Combination of research and deployment — not just writing models, but seeing them act in the physical world.
  • High‑impact work on cutting‑edge robotic autonomy and swarm behaviours.
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