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Data Architect / BI Architect

Experis Scotland
Glasgow
1 day ago
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Data Architect

Role Summary:



Leads the design and implementation of enterprise data architecture, ensuring scalable, secure, and future-ready data solutions aligned with business goals.



This role plays a key part in a large-scale digital transformation initiative spanning the next five years, supported by significant financial investment. The programme will modernise the organisation’s data estate and offers an opportunity to make a large impact within the business.



Key Responsibilities:



Define and maintain data architecture standards and models.

Design data platforms, pipelines, and integration layers.

Lead adoption of modern data tools and platforms (e.g., Microsoft Fabric).

Ensure data governance, quality, and compliance.

Collaborate with stakeholders to align data strategy with business needs.

Support analytics, BI, and AI initiatives through robust data architecture.



Skills & Experience:



Proven experience in data architecture roles.

Strong understanding of cloud-native data platforms (Azure, AWS, GCP).

Proficient in data modelling, integration patterns, and governance frameworks.

Experience with BI tools (e.g., Power BI) and semantic modelling.

Knowledge of data security, compliance (e.g., GDPR), and metadata management.

Desirable: Experience with MLOps, streaming technologies, and regulated sectors.

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