Senior Data Architect

Bright Purple
Reading
3 weeks ago
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Senior Azure Data Architect
  • Based in Scotland, ideally within commutable distance to Glasgow

Salary in the range of £95,000 - £105,000 including car allowance + bonus
SC Clearance eligibility required
Are you a Senior Data Architect looking to make a meaningful impact in an organisation focused on delivering cutting-edge data solutions?
We're working with a growing tech consultancy on an exciting opportunity to join their expert Data & AI team, designing and implementing elegant, cloud-first data platforms.
You'll work on a variety of engaging projects, helping enterprise clients transition to data-guided decision making by delivering end-to-end solutions using the Microsoft Azure data stack. From presales to delivery, you'll be at the centre of it all planning, designing and leading technical data architecture across modern platforms.
This is an exciting chance to join a forward-thinking consultancy with a strong reputation and collaborative culture. You'll enjoy flexibility with UK remote working, supported by occasional visits to client sites in Glasgow or Reading.
What’s on Offer:
Salary up to £105,000 depending on experience
Car allowance and performance bonus included
UK remote working with flexible arrangements
Competitive employer contributions to pension scheme and much more
What you’ll be doing:
Designing Azure-based data solutions using services like Azure Synapse, Azure Databricks, Cosmos DB, and Data Lake Storage
Building conceptual, logical and physical data models for analytical use cases
Defining architecture frameworks, standards, and principles
Leading and mentoring technical teams through project delivery
Translating complex data concepts across technical and non-technical stakeholders
Ensuring technical readiness, scalability and quality of final deliverables
What you’ll bring:
Proven experience in modern data architecture, including data lakes, warehouses and dimensional modelling
Hands-on experience with a broad suite of Azure data services
Deep understanding of Data Management practices: governance, security, quality, and compliance
Proficiency in SQL and familiarity with Azure DevOps Pipelines and Apache Spark
Excellent stakeholder engagement and communication skills
Relevant certifications (e.g., Azure Solutions Architect Expert or TOGAF) a plus
Must be eligible for SC Clearance
Apply now to shape innovative data strategies and build truly modern platforms.
Bright Purple is an equal opportunities employer: we are proud to work with clients who share our values of diversity and inclusion in our industry.


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