Manager Iii, Applied Science, Pxt Central Science

Amazon Amazon · Big Tech · Arlington, VA · Applied Science

Manager of Applied Science for PXT Central Science at Amazon, focusing on causal predictive models for workforce decisions. The role involves leading a team of scientists at the intersection of causal inference and machine learning, including deep learning, LLMs, and computer vision, to develop and productionize models that explain and predict workforce outcomes. The manager will set the scientific vision, guide model development, and ensure research translates into production systems.

What you'd actually do

  1. Manage and develop a high-performing team of scientists — fostering innovation and scientific rigor while providing coaching, mentorship, and clear growth paths
  2. Establish operating mechanisms and performance expectations to track and communicate team progress
  3. Own hiring and talent strategy for the applied science function, including hiring and conversion for other job families
  4. Set and execute the scientific vision for the applied science function — bringing deep ML expertise to the team's causal predictive modeling agenda and identifying where advanced methods (deep learning, LLMs, computer vision, novel architectures) can strengthen the causal frameworks and unlock signal that traditional approaches miss
  5. Establish standards for code quality, documentation, and scalability to ensure your team's work can be implemented directly into operational decision-making tools by partner engineering teams

Skills

Required

  • scientists or machine learning engineers management experience
  • ML
  • NLP
  • Information Retrieval
  • Analytics

Nice to have

  • Experience building machine learning models or developing algorithms for business application
  • Experience building complex software systems, especially involving deep learning, machine learning and computer vision, that have been successfully delivered to customers

What the JD emphasized

  • causal predictive models
  • causal inference meets modern machine learning
  • large language models
  • computer vision
  • deep learning
  • novel architectures
  • production systems

Other signals

  • causal inference meets modern machine learning
  • predictive modeling
  • large language models
  • computer vision