Business Intelligence Engineer, EMEA GES

Amazon Global Engineering Insights & Software Tools (GEIST) division focusing on engineering services and business intelligence.
$90,000 - $150,000
Data
Mid-Level Software Engineer
In-Person
5,000+ Employees
3+ years of experience
Enterprise SaaS

Description For Business Intelligence Engineer, EMEA GES

Amazon Global Engineering Insights & Software Tools (GEIST) is seeking a customer-focused Business Intelligence Engineer to join their team. This role is integral to the Global Engineering Services team, where actionable analytics drives decision-making. The position demands expertise in data analysis, visualization, and ETL processes, working with large-scale datasets and multiple stakeholders.

The ideal candidate will thrive in a fast-paced environment, managing multiple deliverables while maintaining strong communication skills. They will be responsible for designing and developing optimized solutions, managing data processes, and creating impactful visualizations that drive business intelligence.

Key technical requirements include proficiency in SQL, Python, and experience with various database systems (Redshift, Oracle, NoSQL). Knowledge of visualization tools like Tableau or Quicksight, along with statistical analysis packages (R, SAS, Matlab), is essential. The role offers the opportunity to work with cutting-edge technologies and contribute to improving Amazon's global engineering services.

The position is based in London, UK, offering the chance to work with one of the world's leading technology companies. Amazon provides a diverse and inclusive workplace environment, with strong support for workplace accommodations and equal opportunities for all candidates. This role presents an excellent opportunity for a data professional looking to make a significant impact in a global technology leader's engineering operations.

Last updated 24 minutes ago

Responsibilities For Business Intelligence Engineer, EMEA GES

  • Design, develop and maintain optimized solutions for reporting and process improvement
  • Manage portfolio of solutions and work with multiple stakeholders
  • Design and own customer-centric processes to improve operational efficiency
  • Identify high impact business problems and collect requirements
  • Develop ETL jobs, visualization dashboards and tools
  • Develop optimized scripts and visualizations
  • Adopt and contribute to best practices
  • Handle ad hoc and urgent requests

Requirements For Business Intelligence Engineer, EMEA GES

Python
  • Experience in analyzing and interpreting data with Redshift, Oracle, NoSQL
  • 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 and Python for data processing and modeling
  • Experience in the data/BI space

Benefits For Business Intelligence Engineer, EMEA GES

  • Equal opportunity employer
  • Workplace accommodations available

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