Data Engineer

TEC Partners
Ipswich, United Kingdom
Last month
Applications closed

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Role: Data Engineer

Location: Ipswich/London - (1 day a fortnight)

Salary: Up to £80,000 DOE

We're partnering with a growing, tech-driven business that's investing heavily in its data platform and looking for an AWS Data Engineer to play a key role in its evolution.

This is a genuinely exciting opportunity to take ownership of an existing AWS data environment and shape it into a scalable, best-in-class platform that supports real business decisions across Product, Finance, and Operations.

You'll be working hands-on with tools like S3, Glue, Lambda, Athena and Redshift, building and optimising data pipelines, integrating API data sources, and delivering high-quality datasets for analytics and reporting. There's also scope to work on visualisation (QuickSight) and influence how data is used across the organisation.

What makes this role stand out is the level of ownership-you'll have the freedom to improve architecture, introduce best practices, and directly impact how the platform scales.

The environment is collaborative, supportive, and flexible, with strong investment in learning and development.

If you're someone who enjoys solving problems, improving systems, and working with modern AWS data tools, reach out to Fintan at TEC Partners for all of the details

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