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Solution Data Architect

Harvey Nash Group
Glasgow
2 weeks ago
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Harvey Nash is now inviting candidates to apply for the role of Solution Data Architect, an initial 6-month contract working inside of IR35, fully remote.

This is a critical role that will lead the ongoing development of our Business Data logical model and support key strategic initiatives.

Key Responsibilities

  • Lead the ongoing development and evolution of the Business Data logical model.
  • Collaborate closely with teams responsible for physical model development.
  • Support ongoing design work and delivery of inflight activities using Microsoft information architecture.
  • Contribute to ERP implementation projects and data migration activities.
  • Ensure data governance and compliance standards are maintained throughout all initiatives.

Core Requirements

  • Data Modelling Expertise: Strong experience in developing and maintaining logical and conceptual data models.
  • Microsoft Information Architecture: Solid understanding of Microsoft Purview and related data governance tools
  • ERP Implementation: Hands-on experience with ERP implementations, preferably Microsoft Dynamics 365 (D365)
  • Data Migration: Proven experience in planning and executing complex data migration activities.

Additional Core Data Architect Skills

  • Database Technologies: Proficiency in SQL Server, Azure SQL Database, and other enterprise database platforms
  • Cloud Architecture: Experience with Azure data services (Azure Data Factory, Azure Synapse, Azure Data Lake)
  • Data Governance: Understanding of data quality, data lineage, and metadata management principles.
  • ETL/ELT Processes: Experience designing and implementing data integration workflows.
  • Business Intelligence: Knowledge of reporting and analytics platforms (Power BI, SSRS, or similar)
  • Data Warehousing: Experience with dimensional modelling and data warehouse architecture patterns
  • API Integration: Understanding of REST/SOAP APIs and data service architectures.
  • Data Security: Knowledge of data privacy regulations (GDPR) and security best practices

Please apply today with your most recent CV for consideration.


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