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Senior Azure Data Engineer

Birmingham
5 days ago
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Senior Azure Data Engineer
Birmingham (Hybrid working)
55K - 65K per year - Final salary pension - 30 days AL (plus bank holidays)

We are working in partnership with a leading organisation in that is investing heavily in their data strategy. Our client is building a forward-thinking Data & Analytics team and is looking for a highly capable Business Intelligence Developer / Data Specialist to play a pivotal role in shaping the future of data-driven decision-making across the institution.

This is an exciting opportunity for someone with strong expertise in Azure, ADF, Azure SQL Server, pipelines, ETL, database, Dev-Ops, and Power to contribute to the development of cutting-edge data solutions, influence the organisation's BI strategy, and mentor others in best practices.

Key Responsibilities

Contribute to the delivery of the organisation's data strategy, supporting projects through the full lifecycle - from requirements gathering through to design, development, testing, and release.

Lead the implementation of Microsoft Power BI reporting, ensuring solutions align with business needs and future opportunities.

Develop and maintain system architecture in partnership with chosen data and analytics solution providers.

Utilise Azure SQL data warehouse and related Azure services to build scalable data solutions and self-service reporting capabilities.

Ensure appropriate access controls are applied to safeguard data and compliance with governance standards.

Drive efficiency by identifying opportunities to automate manual processes and reduce reliance on spreadsheets and legacy tools.

Collaborate with stakeholders to define reporting needs, translating complex requirements into actionable technical specifications.

Provide expert guidance on data architecture, modelling, and analytics approaches.

Contribute to policies on data governance and promote best practices across the organisation.

Mentor junior BI developers and train stakeholders in the effective use of BI tools.

Maintain awareness of emerging technologies and continuously develop skills to stay at the forefront of data and analytics.

Person Specification

Essential skills and experience:

Significant expertise in Power BI for data visualisation and reporting.

Hands-on experience with Azure services (Azure Data Factory, Azure SQL Server).

Strong understanding of dimensional modelling (e.g., Kimball methodology).

Proficiency in sourcing, manipulating, and interpreting complex datasets.

Strong analytical mindset with excellent attention to detail and accuracy.

Experience managing stakeholders, gathering business requirements, and delivering technical specifications.

Knowledge of DevOps and agile methodologies in data project delivery.

Excellent communication skills with the ability to explain technical concepts to both technical and non-technical audiences.

Track record of supporting and training colleagues on new data products and solutions.

Desirable:

Recognised Microsoft certifications in Azure Fundamentals and Power BI

Please apply asap if interested

Senior Azure Data Engineer - GleeIT

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