Data Engineer

Undisclosed
Telford
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Duration: contract to run until 02/08/2026


Rate: up to £460 p/d Umbrellainside IR35


Clearance required: Active Security Clearance is needed


Provide Live Support including:



  • DAPM have several Dashboards for separate independent services and are looking to consolidate and create a Live Service view which can then drill down into by service – rather than having a new dashboard per service o As well as dashboards – exposure to setting up/configuring alerting on services (Legacy) that do not have any monitoring and alerting already in place o So gathering requirements, understanding the service and delivery alerts to suit SC clearance is required.
  • Ideally experience of Grafana monitoring Experience of working in a client side role would be beneficial but not essential.

All profiles will be reviewed against the required skills and experience. Due to the high number of applications we will only be able to respond to successful applicants in the first instance. We thank you for your interest and the time taken to apply!


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