Data Engineer

Cardiff
10 months ago
Applications closed

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Data Engineer

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Data Engineer

Data Engineer - Hybrid working

My client is in search of a Data Engineer who will concentrate on data warehousing and business intelligence for the organisation. The role involves utilising tools such as Azure Data Factory, Power BI, Fabric, SSRS Reporting, and data cubes.

Key Responsibilities

Oversee Azure Data Factory, Data Lake, and Data Warehouse SQL environments
Work with business and technical teams to gather and document data requirements
Design, implement, update, and support data pipelines in Azure Data Factory (ADF)
Maintain data warehouse dimensional model and develop data marts
Develop standards and processes to optimize cost and service delivery
Provide ongoing support, debug issues, and perform root cause analysis
Enforce data management governance processes and standards

Experience:

Hands-on experience with Azure and Microsoft data stack, data pipelines, data cubes, SSRS to PowerBI migration
Business and technical requirements analysis, business process modeling, data architecture

In accordance with the Employment Agencies and Employment Businesses Regulations 2003, this position is advertised based upon DGH Recruitment Limited having first sought approval of its client to find candidates for this position.

DGH Recruitment Limited acts as both an Employment Agency and Employment Business

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