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Data Engineering Manager

OneFamily
Brighton
9 months ago
Applications closed

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About the job

Join OneFamily as a Data Engineering Manager

We are looking for a dynamic Data Engineering Manager to lead a team of data engineers in our IT & Change department. We are seeking a candidate with strong cloud engineering experience, excellent leadership skills and a proven track record in managing a high performing team. The successful candidate will oversee the design, development and maintenance of robust data pipelines and architectures to support our business objectives. They will also leverage advanced technologies and practises to ensure efficient and reliable data processing enabling data-driven decision-making across the organisation. They will mentor and lead the team fostering a collaborative and high-performance culture. Excellent stakeholder management skills are essential to communicate effectively with our senior leaders and translate business requirements into technical solution. If you thrive in an agile environment and continuously seek opportunities to enhance data processes and architectures, we would love to hear from you!

Have you got what it takes?

The ideal candidate will have strong cloud engineering experience and technical skills in the Azure stack, Azure Synapse, SQL, Python, data modelling concepts, CI/ CD, and DevOps. In-depth knowledge of ELT processes and data warehouse architectures in an agile environment are essential

Experience with infrastructure IaC code (Terraform), familiarity with data modelling tools such as DBT, and experience with data visualisation tools like Power BI are highly desirable. Additionally, experience implementing AI/ ML models as defined by data science teams, a background in the financial services industry (specifically life insurance and investment saving products), experience working in a highly regulated environment and knowledge of orchestration frameworks such as Air Flow would be advantageous.

If you have the skill and the will….we’d love you to apply today!

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