Data Warehouse Manager - Fabric Lakehouse

TXP
West Bromwich
2 days ago
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Data Warehouse Development Manager

Duration: 9 months

£500 to £580 Per Day - Inside IR35

Location: 2-3 days per month in Dudley, West Midlands, the rest can be remote working

The Data Warehouse Development Manager will lead the design, development, and implementation of an enterprise-wide data warehouse using Microsoft Fabric, consolidating data from multiple ERP systems and applications across our client's acquired businesses.

This role requires a blend of technical expertise, leadership capability, and strategic thinking to deliver a solution that meets our global client's complex reporting and analytics needs.

Experience required -

Demonstrable experience working on a Fabric Lakehouse project.
Strong experience in designing and building enterprise data warehouses or data platforms in a leadership role.
Hands-on expertise in the development of a data Lakehouse within the Microsoft Fabric or Databricks data platforms.
Significant experience with PySpark and Spark-based data processing.
Deep understanding of data warehouse design principles, Lakehouse architectures, including medallion (Bronze/Silver/Gold) patterns.
Experience integrating data from multiple ERP systems (e.g. SAP, Oracle, JDE, Dynamics) and operational applications.
Strong SQL skills and experience with analytical data modelling (e.g. star/snowflake schemas).
Understanding of data security, access control, and compliance in an enterpri...

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