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Data Architect

Derisk360
London
1 day ago
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Job Title: Data Architect

Location: Paddington – 2 days per week onsite (Tuesday & Thursday)

Work Mode: Hybrid

Domain: Insurance / Financial Services

Experience: 10+ Years

Employment Type: 3months (FTC)

Mandatory Skills

  • Azure Databricks (10+years)
  • Hands-on experience with dbt, Delta Live Tables (DLT), Prefect, Azure DevOps CI/CD
  • Insurance or Finance domain experience

Role Overview

We are seeking an experienced Data Architect to support an insurance client’s data transformation initiative. This role combines architectural leadership with hands-on technical execution, focusing on delivering scalable, governed, and high-performance data platforms on Azure Databricks.

Key Responsibilities

  • Lead data architecture and platform design on Azure Databricks with Unity Catalog, ensuring scalability, governance, and performance.
  • Develop, optimize, and maintain data pipelines using dbt, Delta Live Tables, Spark, and Delta Lake.
  • Design and implement insurance data models, particularly for:
  • Claims (paid, incurred, case reserves)
  • Exposures and reference data
  • Actuarial reserving and regulatory reporting
  • Incremental vs. cumulative data structures (e.g., triangles)
  • Guide engineering teams and client stakeholders on CI/CD best practices, version control, testing, and DevOps pipelines.
  • Mentor and coordinate data engineers, analysts, and offshore teams.
  • Ensure data quality, lineage, and governance across the platform.
  • Collaborate closely with actuaries and business SMEs to validate KPIs, models, and reporting outputs.
  • Drive workflow orchestration and automation using Prefect and Azure DevOps.
  • Act as a technical escalation point and support successful execution of the data transformation roadmap.

Required Skills & Experience

  • Strong background in data architecture and data engineering on Azure Databricks.
  • Deep hands-on expertise with:
  • Spark, Delta Lake, Unity Catalog
  • dbt, Delta Live Tables, Prefect
  • Azure DevOps CI/CD pipelines
  • Solid understanding of actuarial and insurance data structures, including claims, exposures, and reserving.
  • Proven ability to bridge business and technology, working effectively with senior stakeholders.
  • Strong leadership, communication, and delivery management skills.

Nice to Have

  • Experience in reinsurance or insurance finance.
  • Knowledge of actuarial methods and reporting frameworks.
  • Exposure to advanced analytics or machine learning for claims and reserving use cases.

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