Enterprise Data Architect

Cpl Life Sciences
Uxbridge
1 day ago
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Enterprise Data Architect (Pharma / Manufacturing)

Fixed Term Contract

12/18 Month

The role of the Enterprise Data Architect is to expand the company’s use of data

as a strategic enabler of corporate goals and objectives. The Enterprise Data

Architect will achieve this by strategically designing, developing, and

implementing data models for enterprise-level applications and systems. These

models shall be architected at the following layers: conceptual, logical, business

area, and application.

This individual will act as the primary advocate of data modelling methodologies

and data processing best practices. The role will operate within a hybrid

(OCI), and various SaaS platforms.

Responsibilities & Scope:
  • Enterprise-wide data architecture and strategy ownership
  • Translating business requirements into conceptual, logical, and physical data models
  • Data governance, metadata, MDM, and quality assurance
  • Providing technical leadership to data and analytics engineers
  • Strategic involvement in data security, backup, disaster recovery, and lifecycle management
Key Experience Requirements:
  • Cloud-native services in Azure: Synapse Analytics, Data Factory, Microsoft Fabric
  • Microsoft Purview for data governance, cataloguing, lineage
  • Agile and DevOps support
  • Business requirements analysis, ER modeling, database design, reporting structures
  • Designing schemas and flows for structured and semi-structured data
  • Substantial data architect experience in regulated sectors (pharma/manufacturing)
  • Operating across hybrid environments (on-prem, Azure, OCI, SaaS)

If you are interested please apply or send your CV to


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