Applied Scientist, Prime Video Commerce Insights

Amazon Amazon · Big Tech · London, United Kingdom · Applied Science

Applied Scientist role focused on building and deploying ML-driven personalization and recommendation systems for Prime Video's commerce journey. The role involves researching, designing, and implementing models at scale, collaborating with engineers for production deployment, and contributing to the science roadmap with a focus on reinforcement learning and customer behavior.

What you'd actually do

  1. Research, design, and implement recommendation systems that personalise across different customer experience touch points.
  2. Collaborate with engineers to deploy and integrate successful model experiment results into large-scale, complex Amazon production systems with low latency.
  3. Provide machine learning thought leadership to both technical and business leaders, with the ability to think strategically about business, product, and technical challenges.
  4. Be a subject matter expert in reinforcement learning approaches for the team and actively contribute to the science roadmap
  5. Define the science roadmap and research agenda that aligns with the organisation's priorities and production constraints.

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 in any of the following areas: algorithms and data structures, parsing, numerical optimization, data mining, parallel and distributed computing, high-performance computing
  • Experience in building machine learning models for business application

Nice to have

  • reinforcement learning

What the JD emphasized

  • personalisation
  • recommendation systems
  • reinforcement learning
  • low latency
  • large-scale ML
  • customer behaviour
  • patents or publications at top-tier peer-reviewed conferences or journals

Other signals

  • ML-driven decisions
  • personalisation
  • recommendation systems
  • reinforcement learning
  • large-scale ML
  • low-latency recommendations