Principal Data Architect

Harnham - Data & Analytics Recruitment
London
3 days ago
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Principal Data Architect - Hybrid - London - No Sponsorship Available

About the RoleWe are seeking an experienced and visionary Principal Data Architect to join a leading consultancy in the financial services sector. This strategic role involves leading complex, high-profile data initiatives that drive innovation and transformation for major financial institutions.

The CompanyOur client is a globally recognized consultancy specializing in technology and business transformation within financial services. Known for fostering an entrepreneurial culture and championing diversity, they empower their teams to deliver impactful solutions in a collaborative and inclusive environment.

Key Responsibilities

  • Lead large-scale data architecture projects, providing strategic direction and expert guidance.
  • Partner with senior technology leaders to develop and implement modern data strategies.
  • Design and deliver innovative solutions for data management, governance, and cloud migration.
  • Oversee the development of robust data platforms using cutting-edge cloud technologies.
  • Manage project teams, mentor junior staff, and support business development initiatives.

Ideal Candidate Profile

  • Extensive experience in enterprise data architecture, strategy, and impl...

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