Data Engineer

Coventry Building Society
Manchester
3 days ago
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Working in our Data and Analytics Delivery department, the Data Engineer will join the group on a 12-month fixed term contract to focus on the migration and integration of data into our new ecosystem.

The Data Engineer will be designing, developing and testing quality data engineering solutions and will look to challenge and improve our processes, tools and approach. The person in post will undertake review and assurance activity, providing other team members with guidance on design, build and test activity.

Adhering to standard driven code development, the Data Engineer will deliver solutions that meet business needs in a timely manner and will take responsibility for the testing of their solution, including the analysis of requirement, designs of test cases & scripts, preparing test data and creating and executing tests to ensure effective and accurate deliverables.

We operate on a team led hybrid approach with at least 1 days a week in the Coventry or Manchester office.

Our benefits include:

  • 28 days holiday a year plus bank holidays and a holiday buy/sell scheme
  • Annual discretionary bonus scheme
  • Personal pension with matched contributions
  • Life assurance (6 times annual salary)

Find out more about the fantastic benefits of joining Coventry Building Society here .

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