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Interim Data Architect

Broster Buchanan
London
5 days ago
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Interim Data Architect - £700 per day (Outside IR35)Central London | Creative Agency | ASAP Start A leading creative agency in Central London is looking for an experienced Interim Data Architect to help shape and deliver their data roadmap. You'll be responsible for connecting and optimising core business systems (NetSuite, BambooHR, SugarCRM, etc.), building a data lake, and supporting plans to implement Microsoft Fabric. This is a hands-on role where you'll work closely with a Data Analyst to cleanse and structure business data, while also guiding and influencing senior stakeholders on best practice. What you'll need:

  • Proven experience as a Data Architect in complex environments
  • Strong knowledge of data lakes and modern data platforms
  • Ability to influence senior leadership and drive data strategy
  • Comfortable rolling up your sleeves and working at detailed level
  • Experience with systems such as NetSuite, BambooHR, SugarCRM is beneficial

If you're available immediately and able to take on a strategic yet hands-on assignment, we'd love to hear from you. Apply today!...

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