Senior Data Engineer - Azure

Morgan Hunt Recruitment
Brighton
3 days ago
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Morgan Hunt are working with a public sector organisation based in Brighton to recruit a Senior Data Engineer on a permanent basis. The purpose of the role is to work with business users and product owners to translate user stories into technical delivery, and then take full ownership of the workstreams within the team. The role is for a hands-on data engineer who has at least 5 years of experience working across Azure. The role comes with a great benefits package, which is outlined below. Key Responsibilities:· Build solutions using Azure data technologies, adhering to best practices and agile processes· Stay up to date on evolving technologies, ensure the data platform and the data engineering team remain current through coaching and technical training· Ensure that the Data Platform adheres to data governance and compliance policies· Support of operational processes and end users, implementing monitoring and alerting practices to ensure service reliability· Contribute to the development of junior data engineers and support staff· Provide guidance as needed to data analysts on interfacing with the Data Platform technologies and work with colleagues to support building data capability · Support the Principal Data Engineer in leading the team, designing solutions and deputise for them where requiredRequired Experience:

· Cloud data platforms and data storage technologies (ideally Azure).· Hands-on Data Engineering development experience.· ...

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