Azure Data Engineer

Opus Recruitment Solutions
Swindon, United Kingdom
3 weeks ago
Applications closed

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Machine Learning Engineer

PhysicsX North Tyneside, NE29 8EP, United Kingdom
On-site Clearance Required
Posted
4 Apr 2026 (3 weeks ago)

Azure Data Engineer | £350- £450 | Outside IR35 | Bristol | Hybrid - 3 days | 6‑Month Initial Term |

We’re looking for a hands-on Azure Data Engineer to support a major data platform modernisation programme. You’ll help migrate legacy SQL & Synapse workloads into Microsoft Fabric, build new Fabric Lakehouse/Warehouse pipelines, and drive the transition from Tableau to Power BI.

Responsibilities

Migrate SQL-based analytics into Microsoft Fabric (Lakehouse, Warehouse, Pipelines)

Modernise existing Synapse pipelines and dataflows

Build scalable Fabric Data Pipelines

Support enterprise move from Tableau to Power BI

Optimise ELT, modelling, and workspace governanceSkills Needed

Strong experience with Azure & Microsoft Fabric

Solid Synapse, ADF, ADLS, SQL, Python/PySpark

Hands-on Power BI modelling & dataset expertise

Experience in BI modernisation / migration projectsIf this is a role that suits your skillset, can work onsite 3 days per week in Swindon and immediately available then please apply for the job advert directly or reach out to myself at (url removed).

Azure Data Engineer | £350- £450 | Outside IR35 | Bristol | Hybrid - 3 days | 6‑Month Initial Term

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