Data Architect / Data Modeler - P&C Domain

ValueMomentum
London
2 months ago
Applications closed

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Job Description

Job Title: Data Architect / Data Modeler - P&C Insurance Domain

Contract / Permanent – Open for Both

Mode of work: Hybrid 3 days onsite / week

Roles and responsibilities

• Lead the design and implementation of scalable data architecture supporting analytics and digitalization agenda in a cross-functional team of architects from business and technology

• Develop and maintain data models (Logical and Physical) to support business needs ensuring data integrity and efficiency.

• Design and govern data architecture and integration standards across Azure Data Factory and Databricks to enable integrated analytics solutions.

• Manage the Information Management framework, architecture, processes, and solutions

• Be responsible for strategic roadmaps that describe the journey to target state for all Data & Analytics domains

• Review high-level designs and implementations to ensure quality, coherence and consistency with Enterprise Data architecture

• Deliver standards and patterns, controls to deploy services in a standard and repeatable way


Key skills Needed

  • Hands-on experience in Data Architecture and Data modeling
  • Property & Casualty domain experience is a MUST
  • Proficien...

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