Senior Applied Scientist, Leo Satellite Build Intelligence

Amazon Amazon · Big Tech · Bellevue, WA · Applied Science

Senior Applied Scientist to lead the development of AI models for satellite manufacturing, transforming data into an intelligence system that improves how satellites are built. Focuses on AI-native workflows like non-conformance disposition, root-cause analysis, and predictive test optimization, influencing real-world manufacturing decisions.

What you'd actually do

  1. Lead the design, training, and deployment of machine learning models, including LLM-based systems, retrieval models, and task-specific models
  2. Translate ambiguous, real-world manufacturing problems into well-defined scientific problems, modeling approaches, and evaluation criteria
  3. Train, fine-tune, and evaluate models using large-scale, noisy, and heterogeneous datasets with incomplete or delayed ground truth
  4. Develop models over partially observed systems spanning test data, inspection signals, quality records, supplier data, and knowledge systems
  5. Invent and extend approaches for problems such as anomaly detection, root-cause inference, multimodal learning, and generative AI under real-world constraints

Skills

Required

  • 3+ years of building machine learning models for business application experience
  • PhD, or Master's degree and 6+ years of applied research experience
  • Experience programming in Java, C++, Python or related language
  • Experience with neural deep learning methods and machine learning
  • Experience training and evaluating machine learning models on large-scale, real-world datasets
  • Experience applying statistical analysis and experimentation to measure model performance and drive improvements
  • Experience working with engineering teams to deploy machine learning models into production systems

Nice to have

  • Experience training and deploying LLM-based systems, retrieval-augmented generation (RAG), or agentic workflows
  • Experience designing evaluation frameworks for production AI systems, including safety, grounding, and regression testing
  • Experience building closed-loop or feedback-driven ML systems
  • Experience working with ambiguous problem spaces and inventing novel modeling approaches
  • Experience influencing scientific direction across teams and mentoring other scientists
  • Experience in manufacturing, aerospace, robotics, or other complex physical-world systems
  • Experience working with governed data environments, compliance constraints, or access-controlled systems
  • Experience building systems where model outputs directly drive operational or physical-world decisions

What the JD emphasized

  • models directly influence real-world manufacturing decisions
  • large-scale, noisy, and heterogeneous datasets with incomplete or delayed ground truth
  • partially observed systems
  • real-world constraints
  • real-world failure modes
  • model outputs directly influence physical outcomes
  • model behavior as first-class problems
  • production readiness

Other signals

  • AI-native workflows
  • closed-loop intelligence system
  • model outputs directly influence real-world manufacturing decisions
  • AI-native manufacturing