Chief Engineer - ML, Physical AI Autonomy
Listed on 2026-07-01
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Engineering
AI Engineer (Applied/Software), Robotics
Chief Engineer - ML, Physical AI, & Autonomy
At Blue Origin, we envision millions of people living and working in space for the benefit of Earth. We're working to develop reusable, safe, and low-cost space vehicles and systems within a culture of safety, collaboration, and inclusion. Join our team of problem solvers as we add new chapters to the history of spaceflight!
This role is part of Advanced Concepts and Enterprise Engineering (ACE), supporting Blue Origin's mission of millions of people living and working in space for the benefit of Earth. The team fosters innovation and drives engineering workflows of the future, shared solutions and standards, simplicity and lower costs, and manufacturable design.
Location:
Kent, WA (preferred) | Denver, CO | Florida | Huntsville, AL | Texas | California | Remote consideration
Security Clearance:
Ability to obtain a DoD U.S. Secret clearance. U.S. citizenship required.
About the Role
Blue Origin is building a world-class Machine Learning, Physical AI, and autonomy organization to power our next generation of space vehicles, lunar systems, and robotic platforms. Our vision of millions of people living and working in space will require advanced robotics and Physical AI of all kinds. To this end we are seeking a senior ML / Autonomy / Physical AI technical leader to anchor this capability — architecting and training the models that will enable autonomous operations on the lunar surface and across our space systems.
We look to fly these capabilities into space and to the lunar surface on upcoming missions.
This is a Technical leader role for our ML, autonomy, and Physical AI capability, with the mandate to lead a focused team of 6-8 engineers. You will define the Digital Twin simulation and training pipeline, train and architect models, deploy them onto our platforms and infrastructure, and shape Blue Origin's strategy in this area. You will engage with peers in academia, industry, and government.
You will report into senior leadership and have direct visibility with Executive leadership.
Key Responsibilities:
- Model Architecture & Training:
Lead design and training of ML models for autonomy, perception, decision-making, and control in space applications - Digital Twin & Simulation:
Define the simulation and training pipeline needed for the different lunar surface and in-space applications - Platform Integration:
Operationalize models — deploy, run, and integrate into Blue Origin systems and infrastructure - Team Building:
Recruit, build, and lead a focused team of 6-8 ML/autonomy engineers - Technical Strategy:
Define autonomy reference architectures spanning lunar surface operations, in-space servicing, autonomous landing, and orbital robotics - Cross-Functional Integration:
Partner with GN&C, avionics, software, and systems engineering to translate research advances into deployable autonomy - Assured Autonomy:
Champion V&V, runtime assurance, uncertainty quantification, and safety cases for high-consequence space systems - External Engagement:
Represent Blue Origin with customers, partners, and academia - Executive Visibility:
Brief Executive leadership on autonomy capability and roadmap
Minimum Qualifications:
- M.S. in Computer Science, Electrical/Computer Engineering, Aerospace Engineering, Robotics, Applied Math, or related technical field
- 12+ years (Level
7) / 10+ years (Level
6) of progressive experience developing autonomy, robotics, or ML systems for real-world deployment - Industry leader in developing AI/ML models and training techniques for physical AI
- Demonstrated technical leadership of complex multi-disciplinary efforts
- Deep expertise in two or more of the following:
- Model architectures and training techniques for Physical AI systems
- Computer vision and perception (detection/segmentation, SLAM, visual-inertial odometry, sensor fusion)
- Robotic manipulation, grasping, and contact-rich tasks
- Modern ML stack (PyTorch / JAX / Tensor Flow), training pipelines, and model deployment
- Decision-making under uncertainty (RL, MPC, MDP/POMDP, hybrid planning)
- GN&C-integrated autonomy (rendezvous & proximity operations, hazard detection & avoidance, terrain-relative navigation, powered descent…
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