Data Engineer

JR United Kingdom
Newcastle upon Tyne
5 months ago
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Overview

We are seeking an experienced Data Engineer with expertise in AWS cloud technologies to design and build ETL pipelines, data warehouses, and data lakes.

Location

newcastle-upon-tyne, tyne and wear, United Kingdom

Job Category

Other

EU work permit required

Yes

Job Views

9

Posted

28.09.2025

Expiry Date

12.11.2025

Job Description

Key Skills: AWS services like EMR, Glue, Redshift, Kinesis, Lambda, DynamoDB (or equivalent open-source tools).

Note: We require candidates who are eligible for SC Clearance or possess a higher level of clearance.


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