Data Engineer (Microsoft Fabric) - Education Sector

brigital • Netherlands
Remote
Apply
AI Summary

Design, build, and maintain a parameterized data warehouse architecture within the education sector. Work across multiple data sources, integrating databases and APIs into a scalable Fabric-based platform. Collaborate with a wider team across Europe.

Key Highlights
Part-time contractual role
Microsoft Fabric expertise required
Education sector focus
Key Responsibilities
Design, build, and maintain a parameterized data warehouse architecture
Work across multiple data sources, integrating databases and APIs
Collaborate with a wider team across Europe
Technical Skills Required
Microsoft Fabric Data modeling Power BI SQL API-based integrations
Benefits & Perks
Flexible work arrangement
Remote work
Contractual role
Nice to Have
Azure Data Factory
Experience working in the education sector
Familiarity with data governance, data quality frameworks, and monitoring

Job Description


About Brigital

Brigital is a full-service BI, Automation & AI agency headquartered in Amsterdam. We specialize in reporting, data engineering, low code apps, automations and agentic workflows. Our goal is to help businesses harness the full power of their data and intelligent systems to discover growth opportunities, reduce costs, mitigate risks, and gain clarity.


Role Description

This is a part time (at least 10 hours / week) contractual Data Engineer (Microsoft Fabric) role with a flexible work arrangement - fully remote, with optional collaboration from Amsterdam.


You will focus on designing, building, and maintaining a parameterized data warehouse architecture within the education sector. You will work across multiple data sources, integrating databases and APIs into a scalable Fabric-based platform. The role requires strong data modeling capabilities and the ability to structure data for downstream analytics, including Power BI reporting & Copilot Agents.


You will work closely with a wider team across Europe who specialise in business intelligence AI and automation, and can grow to a full member gaining exposure to diverse projects, industries and modern data tooling.


Must Have Qualifications

  • At least 3 years of experience in data engineering, with hands-on experience in Microsoft Fabric or similar modern data platforms
  • Proven experience building and maintaining data warehouses with parameterized or modular architectures
  • Strong experience integrating multiple data sources, including:
  • Direct database connections (SQL, etc.)
  • API-based integrations
  • Experience designing and implementing scalable data models across multiple source systems
  • Working knowledge of Power BI (data modeling, dataset structuring, or report integration)
  • Strong SQL skills and understanding of data transformation logic
  • Comfortable working in a fully remote, contract-based environment
  • Confident and clear English communication skills
  • Located in Eastern or Southern Europe


Nice to Have

  • Experience with Azure Data Factory
  • Experience working in the education sector or similar data environments
  • Familiarity with data governance, data quality frameworks, and monitoring
  • Experience optimizing data pipelines for performance and cost efficiency
  • Background in a consulting or agency environment
  • Experience with Python
  • Experience with dbt

Similar Jobs

Explore other opportunities that match your interests

Business Analyst (Technology and System Implementation)

Data Science
•
8h ago

Premium Job

Sign up is free! Login or Sign up to view full details.

•••••• •••••• ••••••
Job Type ••••••
Experience Level ••••••

TEKsystems

United State

Senior Data Professional

Data Science
•
8h ago
Visa Sponsorship Relocation Remote
Job Type Full-time
Experience Level Mid-Senior level

opareta

Kenya

AI-Driven Business Intelligence Intern

Data Science
•
12h ago
Visa Sponsorship Relocation Remote
Job Type Internship
Experience Level Internship

scaleup.agency

Austria

Subscribe our newsletter

New Things Will Always Update Regularly