Senior Enterprise Data Architect (Freelance)

Shakers
City of London
1 day ago
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📍 UK-based - London | Remote | Contract (part time)


We are partnering with a fast-growing UK consultancy recognised as one of Britain’s fastest-growing private companies. They are seeking a Senior Enterprise Data Architect (Freelance) to lead high-impact data transformation initiatives across multiple client environments.


This is a strategic role focused on shaping enterprise-wide data architecture, aligning technical design with commercial objectives, and driving scalable transformation.


⚠️ Commitment & Timeline (Important)

  • Immediate start required (ASAP)
  • Full-time commitment during the first month
  • After month one: 1 day per week (flexible), ongoing for 12 months


🔎 What You’ll Be Doing

  • Assess and understand complex client data landscapes and define target-state architectures
  • Lead workshops to define canonical data models and enterprise ontologies
  • Design enterprise-wide integration architectures and scalable data flows
  • Shape enterprise data warehouse strategy aligned with business goals
  • Drive architectural roadmaps for large-scale data transformation initiatives
  • Provide architectural leadership and mentor junior architects
  • Ensure commercially aligned, resilient, and high-performing data solutions


âś… Required Experience

  • Proven experience as an Enterprise or Senior Data Architect
  • Strong expertise in data modelling (canonical models, ontologies)
  • Experience designing enterprise data integration architectures
  • Deep understanding of data warehousing concepts and SQL
  • Experience with cloud platforms (AWS, Azure, or GCP)
  • Ability to align architecture strategy with commercial and business objectives


Apply here if you are interested!

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