Business Intelligence Engineer, Amazon Customer Service

Amazon Amazon · Big Tech · London, United Kingdom · Business Intelligence

This role focuses on building and owning production data pipelines for diagnostic analytics within Amazon Customer Service. It involves processing large-scale transcript data, enabling multi-contact journey analysis, and producing datasets for machine-learning-driven root-cause identification and LLM-based diagnostic outputs. The role operates at the intersection of data engineering and applied AI, aiming to improve customer experience insights.

What you'd actually do

  1. Build and own production data pipelines for diagnostic workloads: transcript ingestion at worldwide scale, multi-contact threading, journey-grain feature tables, and model-serving datasets.
  2. Design and maintain end-to-end data models for the team's KPI portfolio, from raw source integration through consumption-ready tables.
  3. Integrate team pipelines with central Customer Service data infrastructure, consuming shared tooling and contributing reusable components.
  4. Scale innovations from analyst prototypes into maintainable, certified production pipelines with appropriate monitoring and alerting.
  5. Build and maintain the transcript prototyping infrastructure used by stakeholders to self-serve, reducing time-to-delivery for new analytical requests.

Skills

Required

  • Experience in analyzing and interpreting data with Redshift, Oracle, NoSQL etc.
  • Experience with data visualization using Tableau, Quicksight, or similar tools
  • Experience with data modeling, warehousing and building ETL pipelines
  • Experience in Statistical Analysis packages such as R, SAS and Matlab
  • Experience using SQL to pull data from a database or data warehouse and scripting experience (Python) to process data for modeling
  • Experience with AWS solutions such as EC2, DynamoDB, S3, and Redshift
  • Experience in data mining, ETL, etc. and using databases in a business environment with large-scale, complex datasets
  • Master's degree in BI, finance, engineering, statistics, computer science, mathematics or equivalent quantitative field

Nice to have

  • Experience Productionize LLM-based diagnostic outputs into reliable datasets

What the JD emphasized

  • production data pipelines
  • large-scale transcript processing
  • machine-learning-driven root-cause identification
  • LLM-based diagnostic outputs

Other signals

  • production data pipelines
  • large-scale transcript processing
  • machine-learning-driven root-cause identification
  • LLM-based diagnostic outputs