Data Engineer

Harvey Nash
Morpeth
17 hours ago
Create job alert

Data Engineers (Consultant & Senior) - Contract - Microsoft Fabric
I'm supporting a public sector organisation looking for two hands-on Data Engineers (1 x Consultant, 1 x Senior) who can hit the ground running and deliver real value from day one.
You'll lead and deliver end-to-end Microsoft Fabric engineering across a busy, multi-team environment. This includes building and optimising bronze-silver-gold pipelines, shaping lakehouse architecture, and driving high-quality data integration, modelling, and transformation.
Location: 1 day per week on-site in Morpeth
Duration: 6 Months
Rates (Inside IR35)
Senior Data Engineer: £500/day
Consultant Data Engineer: £400/day
Clearance: BPSS only
What They're Looking For
Expert Microsoft Fabric engineer with strong end-to-end platform capability
7+ years' data engineering experience in complex environments
Strong in pipeline build, integration, modelling, lakehouse optimisation, and semantic design
Confident implementing data matching, data quality rules, and governance standards
Proven experience creating optimised Power BI models and intuitive dashboards
Comfortable operating independently in agile delivery teams
Integration experience across contact centre platforms (AWS Connect), CRM systems, and line-of-business applications
Able to support analytics teams and enable channel shift & operational insight reporting
Interviews are set to begin next week , so if you're available and have the right experience, get in touch today .

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