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Data Engineer

hays-gcj-v4-pd-online
Birmingham
5 days ago
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Hays are working with a client to recruit a day-rate Data Engineer.
You will be responsible for the following

Key Responsibilities of the Data Engineer:
• Develop, maintain, and optimise data pipelines and integration workflows across various platforms.
• Collaborate with cross-functional teams to gather requirements and deliver tailored data solutions.
• Build and refine automated data processes ensuring data accuracy and availability for reporting and analysis.
• Design and implement scalable ETL packages.
• Produce and enhance interactive reports and dashboards, facilitating clearmunication of insights to non-technical users.
• Assist in training end users and provide ongoing support for data tools and systems.
• Participate in peak reporting cycles and ad hoc data requests as needed.

You will need to be proficient in the following:

Data Stage RedShift QuickSight S3 Data migration/ ETL both batch and real time data warehouse development DevSecOps Java SQL Relational databases Data Quality XML AWS Data Speciality Certification

#4704926 - Harry Taylor

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National AI Awards 2025

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