Lead Data Architect - Snowflake

Uneek Global
London
1 month ago
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Base pay range

This range is provided by Uneek Global. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.


Lead Data Architect - Snowflake - London (Hybrid) – Up to £120k + Bonus + Equity

Are you ready to take the lead in shaping the future of Snowflake delivery across data, AI, and cloud? This is a rare opportunity to step into a senior, high-impact role where you’ll set the Snowflake strategy, lead solution design, and inspire teams to deliver exceptional data platforms for a forward-thinking tech consultancy.


Role


  • Leadership impact – Be the go-to technical authority on Snowflake, setting best practices, reusable frameworks, and innovative IP.
  • Cutting-edge tech – Work with advanced Snowflake features (Snowpark, Native Apps, Data Sharing, Snowpipe, Streams & Tasks, Cortex) to deliver next-gen solutions.
  • Career growth – Shape the strategy, train and upskill teams, and represent the business at industry events.
  • Influence and innovation – Drive the development of repeatable solutions, explore integrations, and help define new business offerings.


Package


  • Salary up to £120,000
  • Bonus + equity options
  • Permanent, full-time with flexible working arrangements


What you’ll bring


  • Significant hands-on Snowflake delivery experience, including performance & cost optimisation
  • Snowflake certifications (e.g. SnowPro Core, Advanced: Architect or Data Engineer)
  • Experience leading data teams and working closely with both technical and non-technical stakeholders
  • A passion for upskilling others and sharing expertise


Seniority level


  • Director


Employment type


  • Full-time


Job function


  • Information Technology


Industries


  • IT Services and IT Consulting


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