About The Position

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. This is an entry-level position for a passionate and driven engineer who wants to apply their skills in AI, machine learning, and robotics to solve some of the most challenging problems in spaceflight. You will be part of a dynamic team responsible for creating systems that allow our vehicles to perceive their environment, make intelligent decisions, and execute complex maneuvers with precision and safety. This role is ideal for a recent graduate with a strong academic and project-based background in autonomous systems. As an Autonomous Vehicle AI Engineer, you'll have the opportunity to make a significant impact on the future of transportation by crafting the vision systems and decision-making algorithms that define the safety and reliability of our autonomous vehicles. Your contributions will be vital in driving forward innovation in a field that promises to revolutionize global mobility. If you are passionate about AI and its potential in the autonomous vehicle industry, we encourage you to apply.

Requirements

  • PhD in Computer Science, Robotics, AI, Machine Learning, Aerospace Engineering, or a related field. Alternatively, a Master’s degree in a related field with demonstrated project, research, professional, or internship experience in autonomous systems.
  • Demonstrated experience applying deep learning to computer vision or decision-making, preferably through academic research, significant projects, or internships.
  • Strong theoretical understanding of sensor fusion, environmental perception, and path planning algorithms.
  • High proficiency in Python and/or C++, along with experience using deep learning libraries such as PyTorch or TensorFlow.
  • A passion for space exploration and a desire to apply your skills to solve complex, real-world challenges.
  • Ability to work collaboratively in a fast-paced, cross-functional team environment.
  • Excellent analytical and problem-solving skills, with a creative and first-principles approach.

Nice To Haves

  • Experience with simulation environments (e.g., Gazebo, NVIDIA Isaac Sim) and their application to robotics or aerospace.
  • Familiarity with classical Guidance, Navigation, and Control (GNC) concepts.
  • Experience with transformers and large machine learning models.
  • Hands-on experience with deploying and debugging software on embedded systems or robotic hardware.
  • Contributions to open-source projects or publications in relevant academic conferences (e.g., CVPR, ICRA, NeurIPS, AIAA SciTech/GNC).

Responsibilities

  • Contribute to the development of AI-driven computer vision algorithms to accurately perceive and understand a vehicle's environment using data from cameras, LiDAR, and other sensors.
  • Develop, train, and test machine learning models for object detection, classification, semantic segmentation, and anomaly detection specific to autonomous driving scenarios.
  • Implement and test path planning algorithms using modern decision-making techniques to ensure safe and efficient navigation of space vehicles during in-space operations.
  • Train, validate, and deploy neural networks for real-time performance on flight-qualified hardware, optimizing for accuracy, speed, and reliability.
  • Collaborate with a multidisciplinary team of GNC, software, and hardware engineers to integrate AI/ML solutions into the vehicle's avionics and flight software systems.
  • Design, build, and use high-fidelity simulation environments to test and validate autonomous algorithms against a wide range of mission scenarios and off-nominal conditions.
  • Analyze data from simulations and flight tests to assess and improve the performance of perception and decision-making systems.
  • Support the continuous improvement of in-house machine learning pipelines and tools for data management, model training, and performance monitoring.
  • Optimize AI models for edge and cloud deployment, addressing challenges such as latency, model compression, and distributed computing for vehicle fleets.

Benefits

  • Medical, dental, vision, basic and supplemental life insurance, paid parental leave, short and long-term disability, 401(k) with a company match of up to 5%, and an Education Support Program.
  • Paid Time Off: Up to four (4) weeks per year based on weekly scheduled hours, and up to 14 company-paid holidays.
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