Data Architect

Experis
City of London
1 day ago
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Data Architect

12 months

Hybrid - Croydon x1 day onsite x4 remote

£(Apply online only) per day inside IR35 - Umbrella only

Active SC clearance required

Key skills:

Proven experience as a Data Architect or Senior Data Engineer / Data Modeller.
Strong expertise in data modelling (conceptual, logical, and physical).
Experience designing data warehouses and data lake architectures.
Strong SQL skills and understanding of relational and NoSQL databases.
Experience with cloud data platforms (AWS, Azure, and/or GCP).
Knowledge of data integration, ETL/ELT, and streaming architectures.
Solid understanding of data governance, metadata, and master data concepts.
Strong communication skills with both technical and non-technical stakeholdersNice to have:

Experience with modern analytics and BI platforms.
Knowledge of big data technologies (e.g. Spark, Hadoop).
Experience with real-time or event-driven data architectures.
Familiarity with data cataloguing and lineage tools.
Experience in regulated or data-sensitive environments.
Architecture or data certifications (e.g. TOGAF, cloud data certifications)

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