Senior Data Engineer

University of Portsmouth Facilities Department
Portsmouth
5 days ago
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The University of Portsmouth is a global employer of choice where exceptional people create, share and apply knowledge that makes a difference.

Experience the pride of being part of a select group one of only four universities in the south-east of England to achieve a prestigious Gold rating in the Teaching Excellence Framework. Additionally, weproudly rank among the top 140 universities globally in the Times Higher Young University World Rankings.

Ambition, Responsibility and Openness drive our every endeavour. Join our esteemed institution with a proven track record of success, and where dedication to excellence is key. We want people to make their mark in a professional community that truly values people, innovation, and achievement.

The Role:

The Senior Data Engineer will play a senior role in the development, maintenance and support of the Business Intelligence Data Platform, including the enterprise Data Warehouse and University-wide dashboards. The post holder will proactively monitor Warehouse and Lakehouse environments, develop robust and validated dashboards, and place user experience at the centre of design and development. They will ensure solutions mee...

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