Lead Data Engineer

Talent
Manchester
4 days ago
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Location: Manchester, England, United Kingdom


Lead Data Engineer – Central Government

Salary: £550 per day – 12 month contract


Inside IR35. Hybrid – Manchester. Our Central Government Client is looking for experienced Data Engineers with extensive Power BI experience and full life cycle experience in Agile Digital (DDaT) environments.


Responsibilities

  • Develop accurate, efficient data solutions that meet the client's Live Service team and customer needs within agreed timescales.
  • Ensure the stability, robustness and resilience of the products you design and build, and effect changes where necessary.
  • Support continuous improvement of standards and provide leadership to develop Associate Data Engineers, offering technical guidance alongside other data engineering functions for customers.
  • Inspire best practice for data products and services within your teams.
  • Build data engineering capability by providing technical leadership and career development for the community.
  • Work with other senior team members to identify, plan, develop and deliver data services.

Qualifications

  • Experience with Power BI, Power Platform and other analytical tooling – a must.
  • Experience in the Public/government sector and understanding of GDS principles and DDaT environments.
  • Eligibility for SC clearance.

Job Details

Seniority level: Mid-Senior level


Employment type: Contract


Job function: Information Technology


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