Senior Data Architect

Proactive Appointments
Windsor
2 months ago
Applications closed

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Senior Data Architect

We are seeking a highly experienced Senior Data Architect to lead the design, governance and strategic evolution of our enterprise data ecosystem. This role requires a visionary who can translate complex business needs into scalable data solutions while partnering closely with C-suite executives to shape data strategy, drive digital transformation and influence enterprise-wide decision-making.

This is a very strategic focussed, high-impact role where you will work also closely with the Data Systems Manager to ensure that all solutions meet the data governance standards and cybersecurity requirements. You will work across all areas of the enterprise to deliver and maintain the Digital Services strategy.

Hybrid working – 2 days

Outside IR35

Key skills/experience

  • Significant experience in data solution architecture within large, complex organisations.
  • Bachelor’s or Master’s degree in Computer Science, Information Systems, Data Engineering, or related field.
  • 10+ years of experience in data architecture, data engineering, or enterprise architecture roles.
  • Expertise with Oracle RDBMS and SQL Server RDBMS.
  • Strong knowledge of database management systems and cloud infrastructure.
  • Proficiency with Microsoft Azure, Microsoft Fab...

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