Data Scientist I, Worldwide Product Compliance

Amazon Amazon · Big Tech · LU, Luxembourg · Data Science

Data Scientist I role focused on developing and delivering core data science capabilities for AI-enabled operations, leveraging LLMs, Generative AI, and predictive analytics to create intelligent, data-driven operational solutions. The role involves assessing solution approaches, applying expertise to complex system interactions, owning end-to-end solutions, collaborating with diverse teams, and driving data science best practices and strategy within Amazon's global operations.

What you'd actually do

  1. Assess and select ideal solution approaches from a wide range of data science methodologies, including machine learning, statistical modeling, NLP, and LLM-based techniques, to solve complex, ambiguous operational problems with significant business impact.
  2. Apply deep expertise to problems involving complex interactions among software systems, data pipelines, and operational processes; design solutions that accurately model these interactions and are extensible, actionable, and easy for others to contribute to.
  3. Own and deliver end-to-end data science solutions for the business with minimal assistance, building a track record of successful launches that drive measurable operational improvements across Amazon's global footprint.
  4. Work closely with operations business teams to deeply understand their challenges, translate ambiguous needs into well-defined problem statements, and ensure data science solutions are grounded in real operational context.
  5. Take the lead on large, cross-functional data science initiatives; drive solutions and influence change across multiple teams connected by shared systems and processes; build consensus among discordant views and align stakeholders on the right path forward.

Skills

Required

  • Machine learning
  • Statistical modeling
  • NLP
  • LLM-based techniques
  • Data science methodologies
  • Solution architecture
  • Data enrichment
  • Model optimization
  • System architecture
  • Causal inference
  • Data analysis

Nice to have

  • Generative AI
  • Predictive analytics
  • AI-assisted investigation tools

What the JD emphasized

  • complex, ambiguous operational problems
  • complex interactions among software systems, data pipelines, and operational processes
  • end-to-end data science solutions
  • cross-functional data science initiatives
  • AI-enabled operations

Other signals

  • LLMs
  • Generative AI
  • predictive analytics
  • data-driven operational solutions
  • AI-enabled operations
  • data science strategy
  • model optimization
  • system architecture
  • AI ecosystem