Statista
Technology
AnalyticsEngineer(m/f/d)
Neural analysis suggests this role is
optimal for Mid candidates.
“Analytics Engineer (m/f/d) at Statista. Skills: Data modeling, Data transformation, Data quality. Design scalable data models. Build scalable data models”
Industry & Context.
Analytical mindset; Problem-solving skills
What They're Looking For.
Must Have
3+ years analytics engineering experience, SQL skills, Data modeling experience, Modern data stack experience, Cloud data warehouse experience
Nice to Have
German language skills a plus, AI-assisted development workflows experience
What You'll Do.
Design scalable data models
Build scalable data models
Optimize scalable data models
Create clean datasets
Create reliable datasets
Create documented datasets
Define data requirements
Ensure stakeholder alignment
Implement data quality checks
Maintain data quality checks
Implement data testing
Maintain data testing
Implement data monitoring
Maintain data monitoring
Develop semantic layers
Manage semantic layers
Standardize business metrics
Govern business metrics
Improve data accessibility
Improve data usability
Promote best practices
Promote clear data structures
Document data definitions
Document data workflows
Contribute to data governance
Contribute to data harmonization
Contribute to data automation
Enable AI-driven analytics
How You'll Work.
Team & Collaboration
Data engineers; Analysts; Tracking teams; Business stakeholders
Communication Scope
English communication
Full Job Description
At Statista, we’re all about facts and data, for we are the world's leading business data platform. By providing reliable and easy-to-use data as well as various data analytics products and services, we empower people worldwide to make fact-based decisions. Founded in Hamburg in 2007, we have quickly grown into a global company with offices in major cities such as London, New York, Berlin and Tokyo. And we still have a lot of plans. Our constant growth does not only prove our success, but also keeps creating new development and career opportunities for our employees. We value and celebrate our diverse culture. You are welcome here for who you are, no matter where you come from, what you look like, or whether you prefer bar graphs to pie charts. Your story matters – keep writing it as part of our team. Are you ready to join us? Your role - Design, build, and optimize scalable data models using modern data stack tools (e.g., dbt, Snowflake) - Transform raw data into clean, reliable, and well-documented datasets for analytics, reporting, and operational use - Collaborate closely with data engineers, analysts, tracking teams, and business stakeholders to define data requirements and ensure alignment - Implement and maintain data quality checks, testing, and monitoring to ensure accuracy and reliability - Develop and manage semantic layers to standardize and govern key business metrics - Improve data accessibility and usability across teams by promoting best practices and clear data structures - Document data models, definitions, and workflows to enhance transparency and data literacy - Contribute to data governance, harmonization, and automation initiatives, including enabling AI-driven analytics use cases Your profile - 3+ years of experience in analytics engineering, data engineering, or a related role - Strong SQL skills and solid experience in data modeling (e.g., dimensional modeling, star schemas) - Hands-on experience with modern data stack tools and technologies
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