Data Engineer

West Mercia Police
Worcester
1 month ago
Applications closed

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Join to apply for the Data Engineer role at West Mercia Police.


This range is provided by West Mercia Police. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Base pay range

Direct message the job poster from West Mercia Police.


Recruitment Specialist at West Mercia Police

Looking for a role where your work truly matters? Join us and help build safer, stronger communities across the three counties we serve.


The main purpose of the role is to manage the Data Engineering capabilities of West Mercia, developing and implementing data access mechanisms as per the customer need ensuring that they are fit for purpose across the Force. To contribute as part of a Digital team working to improve both the robustness and access of West Mercia’s data and digital systems.



  • The Data Engineer role is a hybrid (mix of home & office working) role
  • This is a CV only process – please ensure your employment history is up to date.
  • Candidates must have been resident in the UK for the last 5 years to meet the vetting level required for the post

The closing date for this post is 12 noon on Thursday 15th January 2026


Why work for us?

  • 28 days Annual leave (increasing to 33 after 5 years’ service) + bank holidays
  • Health and wellbeing, occupational health services, staff networks and an Employee Assistance Programme.
  • Police Mutual, affordable private healthcare and other savings.
  • Discounts on Electric Vehicles and Cycle to work scheme.
  • Register for a Blue light card – over 15,000 discounts from large national retailers.

To read more about the added benefits and rewards of working for West Mercia Police, please go to our website.



  • We embrace diversity and welcome applications from everyone.
  • We are also happy to talk flexible working where it is suitable for the role.

If you require any support to complete your application or you have any questions please contact the recruitment team on (press option 1 then 5) or email (internally please use myBop).


Internal applicants who need redeployment will be offered positions ahead of other candidates, subject to them passing a selection process.


Photo ID will be required at interview so please follow this link if you do not have a photo driving licence or passport (can be expired)


Seniority level

  • Associate

Employment type

  • Full-time

Job function

  • Information Technology

Industries

  • Law Enforcement

Referrals increase your chances of interviewing at West Mercia Police by 2x.


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