Data Engineer

Runcorn
2 weeks ago
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Job Title: Data Engineer - Microsoft Fabric Migration (3-Month Contract)

Remote

Outside IR35

Position Overview

We are seeking an experienced Data Engineer with a strong background in large-scale Microsoft Fabric implementations to lead the migration of an existing SQL Server data platform to Microsoft Fabric.
This is a 3-month contract, requiring expertise in Python, SQL, and Spark, with a focus on modernising and optimising data pipelines.

Key Responsibilities

Lead the migration of an existing SQL Server data platform to Microsoft Fabric.
Design, develop, and optimise ETL pipelines using Python, SQL, and Spark.
Ensure data integrity, performance, and security throughout the migration process.
Provide technical expertise on Microsoft Fabric's architecture, best practises, and optimisation.
Collaborate with stakeholders to align the new platform with business needs.

Requirements

Extensive experience in Microsoft Fabric, particularly in large-scale data platform migrations.
Strong proficiency in Python, SQL, and Spark for ETL and data pipeline development.
Hands-on experience with data platform modernisation and migration.
Ability to work independently and deliver within tight deadlines.
Experience with optimising Microsoft Fabric's data architecture for performance and scalability.
This role requires hands-on technical expertise and a strong understanding of Microsoft Fabric in enterprise environments. If you meet the criteria and are available for a 3-month contract, apply now

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