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DBT Data Engineer (DBT & Snowflake)

Robert Half
London
1 week ago
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DBT Data Engineer (Snowflake, Azure) | Insurance | London (Hybrid)

Robert Half International (an S&P 500 global staffing provider) is supporting a global consulting firm in sourcing an experienced DBT Data Engineer to join a major insurance client engagement. The role focuses on scaling a Snowflake Data Warehouse and expanding its DBT Cloud modelling capabilities to support new analytics and regulatory data use cases across the business.


Assignment Details

  • Initial Duration: 6–12 months (until March 2026, likely extension given scope)
  • Location: Hybrid – minimum of 2 days per week in London
  • Day Rate: £450 PAYE (plus 12.07% holiday pay – PAYE with employer’s NI & Tax deducted at source, unlike umbrella companies and no umbrella company admin fees)


You’ll be part of a growing data engineering function focused on DBT model development, Snowflake optimisation, and data governance across multiple data domains. This role suits a technically strong engineer with proven DBT Cloud experience who can take ownership of data pipelines and drive best practices in transformation, testing, and automation.


Key Skills & Experience

  • Deep DBT Cloud expertise, including models, macros, tests, documentation, and CI/CD integration.
  • Hands-on experience developing and optimising in Snowflake Cloud Data Warehouse (schemas, warehouses, security, time travel, performance tuning).
  • Familiarity with Snowflake cost monitoring, governance, replication, and environment management.
  • Strong understanding of data modelling (star/snowflake schemas, SCDs, lineage).
  • Proven Azure experience (Data Factory, Synapse, Databricks) for orchestration and integration.
  • Proficient in SQL for complex analytical transformations and optimisations.
  • Comfortable working in agile teams and using Azure DevOps for CI/CD workflows.
  • Prior experience in financial services or insurance environments would be desirable

All candidates must complete standard screening (Right to Work, DBS, credit/sanctions, employment verification).

This is an exciting opportunity for a DBT-focused Data Engineer to join a high-performing consulting team and help build, scale, and optimise modern Snowflake data solutions within a leading insurance organisation.

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