Data Engineering Manager

Ashdown Group
Durham
3 days ago
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- Full time permanent role

- Retail industry 

- Remote/home-based 

- Salary up to £80,000 plus bonus, private healthcare and more!

A large and growing retail business are looking to expand their IT function with the addition of a Data Integration Manager. This role will focus on end to end data engineering and integration solutions for a company wide modernisation programme. Duties will include:

- Managing the processes for data engineering and data integration in order to align to business needs 

- Leading a team across engineering and integration

- Work to ensure the data infrastructure of the business effectively supports analytics, AL, machine learning ML and reporting

- Designing of data pipelines, ETL, ELT processes and architecture

- Work with internal stakeholders and multiple 3rd parties to seamlessly integrate systems, platforms and applications

To be considered suitable for this Data Engineering Manager role you will need to have experience across the following:

- Team leadership and guidance

- Data engineering and aligning of data to business needs

- Cloud technologies (Azure/AWS)

- Understanding of Agile methodology

- Data warehousing and Data Lakes

- ETL/ELT

- DevOps understanding

- API integrations

...

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