Senior Snowflake Data Engineer - Remote - £competitive

Tenth Revolution Group
London
1 month ago
Applications closed

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Senior Snowflake Data Engineer - Remote - £competitive

About the RoleWe are looking for an experienced Senior Snowflake Data Engineer to join a dynamic team working on cutting-edge data solutions. This is an exciting opportunity to design, build, and optimise high-performance data pipelines using Snowflake, dbt, and modern engineering practices. If you are passionate about data engineering, test-driven development, and cloud technologies, we'd love to hear from you.

Key Responsibilities

  • Design, develop, and optimise scalable data pipelines in Snowflake.
  • Build and maintain dbt models with robust testing and documentation.
  • Apply test-driven development principles for data quality and schema validation.
  • Optimise pipelines to reduce processing time and compute costs.
  • Develop modular, reusable transformations using SQL and Python.
  • Implement CI/CD pipelines and manage deployments via Git.
  • Automate workflows using orchestration tools such as Airflow or dbt Cloud.
  • Configure and optimise Snowflake warehouses for performance and cost efficiency.

Required Skills & Experience

  • 7+ years in data engineering roles.
  • 3+ years hands-on experience with Snowflake.
  • 2+ years production experience with dbt (mandatory).
  • Advanced SQL and strong Python programming skills...

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