Senior Data Engineer (MS Fabric)

HeadHR
Manchester
3 days ago
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At Godel Technologies, we are passionate about building innovative software solutions that empower businesses around the world. We are growing and looking for a talented Data Engineer to join our team. If you are interested in working with modern data technologies, solving complex problems, and making an impact — we want to hear from you!

As a Data Engineer, you will be part of a collaborative and agile environment where your insights and expertise will help shape business decisions. You will work with data in Microsoft Fabric and related Azure services to prepare, transform, and analyze information for reporting purposes, primarily using Power BI. You’ll collaborate closely with cross‑functional teams, including business stakeholders, Data Analysts, and Architects, to deliver accurate, timely, and actionable reports and dashboards. Where needed, you may also support data ingestion and transformation pipelines to ensure data is ready for analysis.

This is a hybrid role, which means we'd like you to work in the office occasionally, especially during client visits or other important company meetings.

Kogo poszukujemy?Responsibilities
  • Prepare, transform, and model data within Microsoft Fabric to support reporting and analytics
  • Design and build Power BI reports and dashboards delivering actionable insights for stakeholders
  • Collaborate with Data Analysts, Architects, and business teams to define data requirements
  • Perform data validation, quality checks, and reconciliation to ensure report accuracy
  • Create and maintain data pipelines to bring data into Fabric for reporting purposes
  • Ensure compliance with security, integrity, and governance standards
Requirements

Must have:

  • 1+ year of experience with Microsoft Fabric for data ingestion and transformation
  • Strong data modeling and data warehousing knowledge
  • 3+ years of Python experience
  • Strong SQL skills: complex queries, performance optimization, data validation
  • Proficiency in Power BI: Power Query, DAX, dashboard design best practices
  • Knowledge of data security and governance (RBAC, data lineage, GDPR)
  • Familiarity with Agile methodologies and cross‑functional teamwork
  • Strong analytical, problem‑solving, and communication skills
Nice to have
  • Databricks, Delta Lake / Medallion Architecture
  • Azure Monitor, Log Analytics


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