Data Engineer – Insurance - Snowflake, Dbt

Arthur Recruitment
London
2 days ago
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Data Engineer – Snowflake, Dbt

Hybrid • 2 days onsite (London City office)

90K + Bonus + Benefits


Overview

We’re looking for a talented Data Engineer to join a well-known Broker that designs, builds, and delivers robust, scalable data solutions. You’ll collaborate across teams, work with modern data tooling, and help shape the data landscape that underpins our business.


Hands-on expertise with Snowflake and dbt is key for this role.


This position is hybrid and based in the London City office, with two days onsite each week.


How You’ll Make an Impact

SQL Server Expertise

  • Deep knowledge of Microsoft SQL Server and SQL
  • Ability to query, optimise, and manage large datasets

Data Warehousing & Modelling

  • Strong understanding of data warehouse principles
  • Skilled in modelling concepts including normalization/denormalization

ETL / ELT Processes

  • Experience building and maintaining pipelines across varied data sources

Problem-Solving

  • Comfortable troubleshooting discrepancies and performance issues
  • Collaborative approach to resolving user data challenges

Security & Compliance

  • Awareness of data governance, GDPR, and secure data handling practices

Industry Understanding

  • Experience working with data in the insurance sector


About You

You’ll bring:

  • Previous experience as a Data Engineer in insurance
  • Hands-on expertise with Snowflake, dbt, Fivetran, Dataiku, and ideally Collibra
  • Working knowledge of Azure technologies such as Synapse and DevOps
  • Experience with Microsoft SQL Server stack including MDS, SSIS, SSAS, and SSRS
  • Familiarity with programming languages like Python and C# (preferred)


Sound good?


APPLY NOW!

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