Business Intelligence Engineer, EU & EL Books Analytics

Amazon Business EU Sarl, UK Branch - P97
London
3 months ago
Applications closed

Related Jobs

View all jobs

Business Intel Engineer, EU Customer Behavior and Marketing Analytics and Data Science

Senior Data Engineer

Analytics Engineer

Mid Data Engineer

Data Engineer

Azure Data Engineer

Do you believe in the power of reading to bring enjoyment, enlightenment and empowerment to people of all ages and from all backgrounds?

Do you thrive on solving complex problems with data-driven insights? Join the central EU Books Business Intelligence Engineering (BI) Team as a Senior Business Intelligence Engineer for the Kindle Unlimited (KU) team and help shape the future of one of Amazon's most exciting subscription services!

We're seeking an experienced, innovative BI professional to lead our data strategy and analytics efforts for Kindle Unlimited as well as supporting on these for our Kindle and Print Book Deals programs. Our vision is for Kindle Unlimited to be the world's most loved reading subscription, sparking joy for readers, authors and publishers. In this role, you'll dive deep into vast datasets, uncover actionable insights, and drive critical business decisions that impact millions of readers. You'll work closely with product & marketing managers, engineers, and senior leadership to optimize our content selection, improve subscriber experiences, and ensure the program's long-term success and profitability.

As a key member of our team, you'll have the opportunity to influence KU's strategy across 5 European marketplaces, support innovation in the Deals space, mentor other BIE team members, and set the standard for BI excellence within our organization. If you're ready to make a significant impact at the intersection of technology, data, and literature, we want to hear from you!


Key job responsibilities
- Design, implement, and maintain sophisticated BI solutions that provide critical insights into the KU and Deals performance, customer behavior, and content engagement
- Analyze large, complex datasets to identify trends, opportunities, and risks in the KU program
- Develop and optimize data models, ETL processes, and analytics pipelines to support KU's growing data needs
- Create compelling visualizations and dashboards that clearly communicate insights to stakeholders at all levels
- Partner with product, marketing and engineering teams to define and track key performance indicators (KPIs) for new features and initiatives
- Provide data-driven recommendations to inform content acquisition strategy, customer growth tactics, and content payout models
- Collaborate with data science teams to develop and implement advanced analytics and machine learning models
- Mentor junior team members and promote BI best practices across the organization
- Influence KU's and Deals' long-term data strategy and contribute to the broader Amazon Books organization

A day in the life
- Starting your morning by reviewing KU and Deals performance metrics; investigate anomalies
- Present analysis on content acquisition impact on subscriber engagement at product strategy meeting
- Collaborate with data engineers to optimize ETL process for processing daily reader behavior data
- Mentor junior team member on advanced SQL for content performance analysis
- Develop dashboard to visualize subscriber retention across market segments
- Partner with marketing to analyze promotional campaign effectiveness
- Concluding your day by refining a predictive model that forecasts potential high-value content for the KU catalog

About the team
We're the EU Reading Growth Programs team at Amazon, driving digital reading innovation through KU and Deals.

We are passionate about books and technology. We're on a mission to enhance daily reading while supporting authors and publishers in the digital age. In our fast-paced, data-driven environment, our insights directly impact millions of readers.

We foster creativity, ownership, and continuous learning. We're shaping the future of digital reading, changing how the world discovers books. Join us in writing the next chapter of data-driven decision-making for Kindle Unlimited.

Let's turn the page on traditional analytics together and revolutionize the reading experience!

BASIC QUALIFICATIONS

- Experience programming to extract, transform and clean large (multi-TB) data sets
- Experience with theory and practice of design of experiments and statistical analysis of results
- Experience with AWS technologies
- Experience in scripting for automation (e.g. Python) and advanced SQL skills.
- Experience with theory and practice of information retrieval, data science, machine learning and data mining
- Experience working directly with business stakeholders to translate between data and business needs
- Experience with SQL
- Experience with data visualization using Tableau, Quicksight, or similar tools
- Experience in the data/BI space

PREFERRED QUALIFICATIONS

- Experience with machine learning and statistical modeling techniques
- Familiarity with data visualization tools such as Tableau, QuickSight, or Power BI
- Knowledge of the digital content or subscription business models
- Experience with big data technologies like Hadoop or Spark
- Demonstrated ability to influence senior leadership through data-driven insights
- Prior experience in the publishing industry or with digital content platforms

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Top 10 Mistakes Candidates Make When Applying for Machine-Learning Jobs—And How to Avoid Them

Landing a machine-learning job in the UK is competitive. Learn the 10 biggest mistakes applicants make—plus tested fixes, expert resources and live links that will help you secure your next ML role. Introduction From fintechs in London’s Square Mile to advanced-research hubs in Cambridge, demand for machine-learning talent is exploding. Job boards such as MachineLearningJobs.co.uk list new vacancies daily, and LinkedIn shows more than 10,000 open ML roles across the UK right now. Yet hiring managers still reject most CVs long before interview—often for avoidable errors. Below are the ten most common mistakes we see, each paired with a practical fix and a live resource link so you can dive deeper.

Top 10 Best UK Universities for Machine Learning Degrees (2025 Guide)

Explore ten UK universities that deliver world-class machine-learning degrees in 2025. Compare entry requirements, course content, research strength and industry links to find the programme that fits your goals. Machine learning (ML) has shifted from academic curiosity to the engine powering everything from personalised medicine to autonomous vehicles. UK universities have long been pioneers in the field, and their programmes now blend rigorous theory with hands-on practice on industrial-scale datasets. Below, we highlight ten institutions whose undergraduate or postgraduate pathways focus squarely on machine learning. League tables move each year, but these universities consistently excel in teaching, research and collaboration with industry.

How to Write a Winning Cover Letter for Machine Learning Jobs: Proven 4-Paragraph Structure

Learn how to craft the perfect cover letter for machine learning jobs with this proven 4-paragraph structure. Ideal for entry-level candidates, career switchers, and professionals looking to advance in the machine learning sector. When applying for a machine learning job, your cover letter is a vital part of your application. Machine learning is an exciting and rapidly evolving field, and your cover letter offers the chance to demonstrate your technical expertise, passion for AI, and your ability to apply machine learning techniques to solve real-world problems. Writing a cover letter for machine learning roles may feel intimidating, but by following a clear structure, you can showcase your strengths effectively. Whether you're just entering the field, transitioning from another role, or looking to advance your career in machine learning, this article will guide you through a proven four-paragraph structure. We’ll provide practical tips and sample lines to help you create a compelling cover letter that catches the attention of hiring managers in the machine learning job market.