Data Architect- Insurance

McGregor Boyall
London
6 days ago
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Data Architect, Data Lake, AWS, Azure, Insurance, Cloud

We are seeking an experienced and forward-thinking Data Architect to lead and optimise our data architecture initiatives, with a strong focus on the insurance sector. You will be responsible for designing, implementing, and governing scalable, high-performance data solutions that support both internal objectives and client-facing initiatives.

  • Build modern data infrastructure using technologies such as Databricks, Snowflake, Data Lakes, Data Warehouses, and Lakehouse architectures.
  • Promote and implement data mesh principles to enhance data accessibility across the global organisation.
  • Utilise deep expertise in SQL and database management to optimise performance and scalability.
  • Apply industry knowledge to support insurance-specific data needs, including operational efficiency and regulatory compliance.
  • Possess expert-level knowledge in AWS or Azure cloud technologies

  • Extensive experience as a Data Architect within large, complex organisations-ideally with deep specialisation in the insurance industry.

  • A strong track record of designing and implementing successful enterprise-level data strategies.

  • Strong cloud experience in wither AWS or Azure.

  • Expertise across SQL, data solutions, and solution architecture for data lakes, data warehouses, and modern dat...

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