Reinforcement Learning Engineer- Spot Behavior

Do you have a passion for applying machine learning to drive real-world robot behavior? As a Reinforcement Learning Engineer on the Spot Behavior team, you will develop and deploy cutting-edge reinforcement learning techniques to expand Spot’s capabilities in dynamic, real-world environments. You’ll work on a multidisciplinary team tackling high-impact mobility challenges—ranging from terrain traversal and balance to complex locomotion behaviors. This role offers the opportunity to work hands-on with Spot and push the boundaries of legged robot performance.

Day-to-Day Activities:

  • Design and deploy reinforcement learning systems to improve Spot’s mobility and robustness.

  • Integrate learning-based solutions into Spot’s existing planning and control systems in collaboration with experts across controls, perception, and planning.

  • Build and maintain systems that support reliable, scalable, and reproducible RL training.

  • Test and debug your work using our in-house fleet of Spot robots.

  • Write high-quality, maintainable code in both Python and C++.

  • Provide mentorship and technical guidance on ML best practices.

We are looking for:

  • Master’s degree or higher in Robotics, Mechanical Engineering, Computer Science, or a related field.

  • 3+ years of experience with a proven track record of deploying models on hardware.

  • Proficiency in both Python and C++ programming languages.

  • Strong analytical and debugging skills.

  • Familiarity with modern deep RL toolkits and architectures.

Nice to Have:

  • Experience with legged robotics.

  • PhD in Robotics, Mechanical Engineering, Computer Science, or a related field.



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Full time
United States