Data Engineer

Chandler's Ford
1 week ago
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A Data Engineer is needed for a contract where your work will directly shape how a business trusts, structures, and uses its data.

If you enjoy building reliable pipelines, improving models, and turning messy data into dependable assets, this is the kind of project where your impact is felt quickly. 

This role focuses on practical delivery. You’ll be strengthening the foundations of analytics and reporting by building dependable solutions that teams across the organisation rely on every day. 

What’s in it for you

£500 per day contract with immediate impact on a growing environment
Hybrid working with a balanced onsite and remote setup
A delivery-focused project where practical engineering skills are valued
The opportunity to improve and shape core assets used across the business
A collaborative environment working closely with technical teams and stakeholders
Real ownership over the reliability and structure of pipelines and models
What you’ll be getting stuck into as a Data Engineer

Building and maintaining scalable pipelines that support analytics, reporting, and operational data use
Developing and refining warehouse models that align with real business requirements
Writing and optimising SQL for transformation, integration, and performance improvements
Strengthening quality through validation, governance, and structured data workflows
Delivering reliable, accessible datasets for reporting and decision-making
Supporting monitoring, testing, and continuous improvement across data processes
What you’ll bring to the table as a Data Engineer

Strong hands-on experience delivering practical solutions
Strong SQL capability for transformation, modelling, and optimisation
Previous experience designing and working with data warehouse models
Experience building and maintaining production pipelines
Exposure to platforms such as Databricks, Synapse, or Microsoft Fabric
If you're a Data Engineer ready to step into a contract where you can quickly add value by building dependable pipelines and models, apply now to learn more.

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