Snowflake Data Architect

Tenth Revolution Group
Warwick
1 week ago
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Overview

6‑month assignment | Inside IR35 | 2 days onsite each week in Warwick

I’m supporting a long‑standing client who is looking for an experienced Data Architect to join a large‑scale transformation programme.

Core skillset
  • Strong background in cloud‑based data architecture (Azure)
  • High proficiency with Snowflake
  • Experience with ADF and modern orchestration tools
  • Solid exposure to DBT and transformation frameworks
  • Comfortable coding with Python
  • Understanding of monitoring/observability tools (e.g., Prometheus)
  • Knowledge of ETL/ELT patterns and best practice
Contract details
  • Contract length - 6 months (possibility for extension)
  • Contract type - inside IR35
  • Location - Warwick (hybrid 2 days pw onsite requirement)
  • Sponsorship is not available for this role


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