Sr. Data Engineer, EU Books Analytics and Engineering
Role details
Job location
Tech stack
Job description
Own and evolve team-level data architecture: ingestion, transformation, storage, serving, and monitoring across multiple EU marketplaces and business domains
- Design and build scalable, self-healing data pipelines that integrate business signals from diverse sources (demand, pricing, customer behavior, operational metrics)
- Define data models and schemas optimized for both operational reporting and statistical/econometric model consumption
- Build automated data quality frameworks that ensure accuracy and reliability for high-stakes business decisions
- Engineer self-service data access through metadata-rich catalogs, governed query layers, and dashboard-ready datasets that enable stakeholders to answer recurring questions without BI mediation
- Build the measurement infrastructure for business experiments (A/B tests, weblabs), ensuring clean experiment data and statistically valid result datasets
- Drive cost optimization and data governance across the analytics data estate: lineage tracking, metric definitions, access controls, and SLA definitions
- Partner with BIEs, business stakeholders, and cross-functional teams to translate analytical requirements into robust, scalable data solutions
- Contribute to the team's AI Engineering roadmap by building the data backbone that domain-specific AI applications consume (automated narratives, anomaly detection, natural language data access)
- Break complex cross-domain problems into parallel workstreams and coordinate delivery across contributors
A day in the life You start your day reviewing pipeline health across 50+ recurring jobs via the monitoring dashboard you helped build. Mid-morning, you partner with a BIE to design a new datamart schema for a business experiment launching across multiple marketplaces. After lunch, you debug a data quality issue in a cross-domain pipeline, then join a sprint sync where engineers share progress signals. Late afternoon, you architect the data layer for an AI agent that will let analysts query demand drivers conversationally. Your work feeds dashboards leadership uses weekly and AI tools that are reshaping how the organization operates.
About the team We are a distributed team of data and business intelligence engineers across Europe, transforming EU Books analytics from traditional reporting into an AI-enabled decision intelligence engine. Operating across four pillars - Data Engineering, Business Intelligence, Advanced Analytics, and AI Engineering - we support Demand, Pricing, Deals, Finance, and Kindle Unlimited across 15 European marketplaces. We build self-healing pipelines, AI-powered tools, and self-service platforms that let business teams act faster. Our culture values ownership, craftsmanship, and depth over breadth - L6 engineers own workstreams end-to-end with full autonomy.
Requirements
Experience with data modeling, warehousing and building ETL pipelines
- Experience with SQL
- Experience in at least one modern scripting or programming language, such as Python, Java, Scala, or NodeJS
- Experience mentoring team members on best practices
- Experience as a Data Engineer or in a similar role
Preferred Qualifications
- Experience communicating with users, other technical teams, and management to collect requirements, describe data modeling decisions and data engineering strategy
- Experience providing technical leadership and mentoring other engineers for best practices on data engineering
- Knowledge of distributed systems as it pertains to data storage and computing
- Experience building/operating highly available, distributed systems of data extraction, ingestion, and processing of large data sets