Data engineer

SF Recruitment
Wolverhampton
1 month ago
Applications closed

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Data Integration & Analytics Specialist (D365)

Location & Onsite Requirement

You'll need to be on-site 2-3 days per week in Wolverhampton.

Start & Duration

Start date: 5th January IdeallyLength: 4-6 weeks (with potential for extension depending on project scope)

About the Role

A growing organisation is looking for an experienced Data Integration & Analytics Specialist to support a key programme of work across Dynamics 365 Finance & Supply Chain. This is a hands-on contract role ideal for someone who can quickly embed, solve problems, and enhance data flows and reporting across the D365 landscape.

What You'll Be Doing

  • Designing and developing SQL-based data solutions (queries, stored procedures, optimised data models).
  • Managing and configuring Dataflows (Gen1) to support transformation and integration needs.
  • Working with OData endpoints for D365 entities to enable secure, reliable data exchange.
  • Building and maintaining Power BI dashboards with clean, accurate data models and effective DAX.
  • Supporting finance and supply chain stakeholders with reporting, insight, and troubleshooting.
  • Resolving integration issues across multiple systems and ensuring smooth end-to-end data processes.
  • Upholding data governance, data quality, and performance standards.

...

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