Senior Automation and Data Engineer

Rugby Borough Council
Rugby
1 month ago
Applications closed

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Senior Automation and Data Engineer

£40,777 - £45,091

Full Time / Part Time 37 hours per week


Rugby Borough Council is dedicated to both Community and Colleague growth. With a focus on wellbeing and personal development, we offer a range of career opportunities where you can take pride in the positive changes you help create. Join an organisation committed to the success of one of the Countrys fastest-growing boroughs and the people who make it thrive.



About the role

Rugby Borough Council are entering into an exciting phase of our digitalisation journey as we continue to develop, optimise and scale AI assisted tooling and automated workflows to help drive efficiency, cost savings and maximise productivity.


As our Senior Automation and Data Engineer, you will play a key leadership role in making this happen. Working closely with the Chief Officer Digital and Communications, youll lead the day-to-day operations of the Data, Insights and Automation (DIA) team and help shape how we modernise the way the Council works.


This is a great opportunity to combine hands-on technical expe...

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