Fabric and Databricks Data Engineer - Outside IR35 - Hybrid

Tenth Revolution Group
Oxford
5 days ago
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Fabric and Databricks Data Engineer - Outside IR35 - Hybrid

Role Overview
We're looking for a skilled Fabric & Databricks Engineer to design, build, and maintain scalable analytics and data engineering solutions. You'll work at the core of our data platform, enabling analytics, reporting, and advanced data use cases by leveraging Microsoft Fabric and Databricks.

You'll collaborate closely with data analysts, data scientists, and stakeholders to deliver reliable, performant, and secure data pipelines and models.

Key Responsibilities

Design, develop, and maintain end-to-end data pipelines using Microsoft Fabric and Databricks

Build and optimize Lakehouse architectures using Delta Lake principles

Ingest, transform, and curate data from multiple sources (APIs, databases, files, streaming)

Develop scalable data transformations using PySpark and Spark SQL

Implement data models optimized for analytics and reporting (e.g. star schemas)

Monitor, troubleshoot, and optimize performance and cost of data workloads

Apply data quality, validation, and governance best practices

Collaborate with analysts and BI teams to enable self-service analytics

Contribute to CI/CD pipelines and infrastructure-as-code for data platforms

Ensure security, access controls, and compliance across the data estate

Document solutions and promote engineering best practices

Required Skills & Experience

Strong experience with Mi...

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