Lead Data Architect

Tarka Talent
London
1 month ago
Applications closed

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Lead Data Architect


  • Salary:£110-130k base
  • Location & Working Model:London or Birmingham
  • Key Feature:Shape the future of enterprise data architecture in a leading organisation



Our client is a dynamic and forward-thinking company experiencing rapid growth. They are seeking aLead Data Architectto drive innovation and efficiency in data architecture across a range of industries. With a reputation for excellence, our client is committed to fostering a culture of collaboration and professional growth.



TheLead Data Architectwill:


  • Define and develop enterprise data architectures for complex organisations.
  • Create conceptual and logical data models and architectural frameworks.
  • Lead and manage teams of data architects across various projects.
  • Align data architecture with broader business and technology strategies.
  • Shape and contribute to go-to-market propositions and services in data architecture.



Essential Skills:


  • Proven experience in enterprise data architecture and large-scale data modelling.
  • Strong background in defining and implementing data governance frameworks.
  • Expertise in data modelling tools such as Sparx, Erwin, and Archi.
  • Ability to collaborate with senior stakeholders across business and technology teams.
  • Experience in consulting-led sales and client engagement.



Benefits:


  • Competitive salary and performance-based incentives.
  • Opportunities to work across multiple industries, including telecoms, finance, public sector, and more.
  • Exposure to cutting-edge data architecture methodologies and tools.
  • A collaborative and innovative working environment.
  • Professional development and career progression opportunities.



We are committed to promoting equality of opportunity for all employees and job applicants. In line with the Equality Act 2010, we strive to create and maintain a working environment in which everyone can thrive, free from discrimination or harassment.

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