Machine Learning Scientist / Applied Scientist, EU Prime and Marketing Analytics & Science (primas)

Amazon Amazon · Big Tech · M, Spain +1 · Applied Science

The role focuses on developing and experimenting with 1P audience segments for Amazon's EU marketing campaigns, aiming to improve marketing efficiency by combining 1P audience signals with Value-Based Optimization (VBO). The scientist will design experiments, apply causal inference methods, build reusable frameworks for audience development and measurement, and partner with engineering to scale validated prototypes into production solutions.

What you'd actually do

  1. Build and validate 1P audience segments from Amazon behavioral, transactional, and lifecycle data
  2. Design experiments that isolate the incremental effect of 1P audience signal over platform VBO baselines
  3. Deploy audiences across activation surfaces and establish measurement standards that make cross-surface comparison valid
  4. Apply causal inference methods to measure the true incremental lift of audience-based targeting vs. VBO
  5. Develop power analysis frameworks and guardrails that enable rapid experimentation without underpowered or conflated tests

Skills

Required

  • Experience in patents or publications at top-tier peer-reviewed conferences or journals
  • Experience in any of the following areas: algorithms and data structures, parsing, numerical optimization, data mining, parallel and distributed computing, high-performance computing
  • Experience building machine learning models or developing algorithms for business application
  • Experience with programming languages such as Python, Java, C++
  • PhD in computer science, machine learning, robotics, statistics, mathematics, operations research, engineering, or equivalent quantitative field

Nice to have

  • Experience in professional software development
  • Experience in designing experiments and statistical analysis of results
  • Experience in solving business problems through machine learning, data mining and statistical algorithms

What the JD emphasized

  • 1P audience signal
  • Value-Based Optimization (VBO)
  • experimental infrastructure
  • 1P audience capabilities

Other signals

  • Develop power analysis frameworks and guardrails that enable rapid experimentation without underpowered or conflated tests
  • Build reusable audience and measurement frameworks that can be deployed across campaigns and channels — year 1 experiments should produce infrastructure, not one-off analyses
  • Partner with engineering and PMT to translate validated audience prototypes into production-ready solutions that scale beyond the experimentation phase