Data Engineer

CBSbutler Holdings Limited trading as CBSbutler
Telford
2 days ago
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Job Title: Data Engineer

Rate: £450 per day inside ir35

Duration: 6 months

Location: Telford /Hybrid (2 days per week in the office)

SC security clearance is required for this role

Job Description:

We are seeking experienced Data Engineers to join our growing team within a large, long-standing public-sector partnership. In this pivotal role, you will contribute to data acquisition, preparation and management projects, helping to modernise services and deliver secure, reliable data products at scale.

Responsibilities:

Design and implement robust, secure and performant data integration solutions (batch and/or near-real-time).
Build, operate and improve data pipelines (ingestion, transformation, curation) with monitoring, alerting and SLAs.
Collaborate with product teams and client stakeholders to refine requirements and align decisions to NFRs (cost, performance, security).
Support incident resolution and ensure service continuity.
Share knowledge, mentor colleagues, and contribute to Capgemini's engineering communities of practice.
Actively participate in Agile ceremonies and work cross-functionally with engineers, analysts and business teams.

Expereince Required:

Strong SQL and hands-on experience with data modelling.
Hands-on with ETL/ELT tooling (at least one of Talend, Pentaho DI, Informatica, AWS Glue, or SAS).
Experience with databases/data platforms (ideally Oracle or Cloudera).
Knowledge of cloud platforms (ideally AWS).
Good experience with programming/scripting languages (e.g. Python, Bash).
Strong grasp of data engineering fundamentals, including integration, transformation, orchestration, and version control.
Excellent client-facing and consultancy skills.

If you are interested in this role, please fell free to submit your CV

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