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Databricks Data Architect

London
3 weeks ago
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Senior Data Architect

Location: London (Hybrid - 2 days/week onsite)
Salary: Flexible, depending on experience
Employment Type: Permanent

Overview
Our client, is seeking a highly experienced Senior Data Architect to lead the design and evolution of their enterprise data architecture. This is a strategic role focused on building scalable, secure, and future-proof data solutions that support business growth and innovation.

The ideal candidate will bring deep expertise in data modelling, Databricks, and Azure-based architecture, with a strong ability to translate complex requirements into robust technical solutions.

Key Responsibilities

Design and implement conceptual, logical, and physical data models (3NF, Kimball, Data Vault)
Architect and optimise data platforms including data lakes, lakehouses, and data warehouses
Lead the development of metadata-driven ingestion and transformation pipelines
Ensure compliance with GDPR and internal data governance policies
Collaborate with engineering and delivery teams to define and align technical direction
Oversee the full data lifecycle-from strategy and design through to delivery and maintenance
Provide architectural oversight across projects, ensuring consistency and scalability
Drive best practices in Master Data Management, data lineage, and cataloguing
Influence stakeholders and guide teams through complex solution decisions

Skills & Experience

Extensive experience in data architecture, modelling, and platform design
Strong proficiency with Databricks, Azure Data Factory, Azure SQL, CosmosDB, and Microsoft SQL Server
Proven ability to work with both structured and unstructured data
Experience designing secure, scalable, and high-performance data solutions
Familiarity with agile delivery methodologies (SCRUM, PRINCE2, Lean)
Excellent communication skills, with the ability to engage both technical and non-technical stakeholders
Strong problem-solving skills and a proactive, improvement-focused mindset

The Offer

Join a forward-thinking organisation committed to data excellence
Work in a flexible hybrid model (2 days/week in central London)
Competitive and flexible salary package
Opportunity to shape the future of data architecture in a high-impact role

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