Managing Data Architect

Trust In SODA
united kingdom, united kingdom
9 months ago
Applications closed

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đź’Ľ Managing Data Architect

đź‘” Consultancy

📍 London, Manchester, Glasgow

đź’µ ÂŁ90-100k

📦 £12k annual bonus, Travel Expenses, Certs Scheme, 10% Combined Pension, Private Medical, Uncapped Progression


Do you want to work for one of the country's top consultancies on some brand new high profile digital transformations?


Do you want to get rapidly accredited (AWS, Azure, GCP) for free whilst also using these skills commercially too?



I am partnered with one of the World’s Top Tech Consultancies who are partnered with many of the biggest names in the Private and Public Sector.

They have just won a couple of exciting new projects and are looking for aManaging Data Architectto join their team and assist with the continued scaling and optimisation of these.

Their ideal candidate would have 10+ years experience in Data Engineering/Architecture and have good knowledge within:


  • Cloud (AWS, GCP, Azure)
  • Data Warehousing (Snowflake, Redshift, BigQuery)
  • ETL (Data Fabric, Data Mesh)
  • DevOps (IaC, CI/CD, Containers)
  • Leadership / Line Management
  • Consulting / Client Facing Experience

In return they would be offering

  • ÂŁ12k annual bonus
  • Free Certification Scheme (ServiceNow, TOGAF)
  • Uncapped Progressions (Just hit the criteria and you will continually climb the ranks)
  • Travel expenses
  • Up to 10% combined pension
  • Private Medical
  • Flexi Benefits (Life Assurance, GIP, Dental etc.)
  • Hybrid Working (onsite 30% worst case)
  • Overseas Conference Budget


If you’re passionate about Data Architecture and keen to work on some really exciting projects in a client-facing capacity then please apply right away!

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