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Machine Learning: Whole-Body Control

Machine Learning San Francisco Full-Time On-Site

Develop learned control policies that enable robots to perform dexterous manipulation in unstructured environments.

What you'll do

  • Design and train policies for whole-body robotic manipulation
  • Develop sim-to-real transfer methods for control policies
  • Build and maintain simulation environments for policy training
  • Integrate learned controllers with perception and planning
  • Evaluate and improve controller robustness in real-world deployments

What we're looking for

  • Strong background in robot learning, reinforcement learning, or optimal control
  • Experience with sim-to-real transfer for robotic systems
  • Proficiency in Python and deep learning frameworks
  • Experience with robotic manipulation hardware
  • PhD in Robotics, ML, or related field preferred
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