Applied Scientist, Amazon Robotics

Amazon Amazon · Big Tech · DE, Belgium +1 · Applied Science

Research scientist role focused on combining LLMs with classical AI reasoning for robotics and automation applications. The role involves generating plans, verifying correctness, learning strategies, and self-improving models, with an emphasis on publishing research and applying technology to operational problems.

What you'd actually do

  1. Work closely with other scientists and engineers, and be part of Amazon’s diverse global science community.
  2. Publish your research in top-tier academic venues and hone your presentation skills.
  3. Be inspired by challenges and opportunities to invent new techniques in your area(s) of expertise.

Skills

Required

  • Experience in patents or publications at top-tier peer-reviewed conferences or journals
  • Experience programming in Java, C++, Python or related language
  • Experience building machine learning models or developing algorithms for business application
  • Experience in state-of-the-art deep learning models architecture design and deep learning training and optimization and model pruning
  • Experience with popular deep learning frameworks such as MxNet and Tensor Flow
  • Experience implementing algorithms using both toolkits and self-developed code
  • Publication record in generative AI reasoning or classical planning
  • PhD in a relevant field (reinforcement learning, neurosymbolic AI, LLMs for formal reasoning)
  • Experience in reinforcement learning or neuro-symbolic AI
  • Practical experience with PyTorch, the HuggingFace ecosystem, SageMaker, and RL tools

Nice to have

  • Experience in professional software development
  • Experience in any of the following areas: algorithms and data structures, parsing, numerical optimization, data mining, parallel and distributed computing, high-performance computing
  • Familiarity with AWS tools and services - including AWS batch, Boto, S3, EC2 etc
  • Strong skills in experimental design/statistical analysis
  • Strong software engineering skills

What the JD emphasized

  • Experience in patents or publications at top-tier peer-reviewed conferences or journals
  • Publication record in generative AI reasoning or classical planning
  • PhD in a relevant field (reinforcement learning, neurosymbolic AI, LLMs for formal reasoning)
  • Experience in reinforcement learning or neuro-symbolic AI

Other signals

  • combining language models (LMs) with classical AI reasoning
  • using LMs to generate plans
  • using AI reasoning to verify plan correctness
  • learning efficient reasoning strategies
  • self-improving models