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Enterprise Data Architect

London
5 days ago
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We are Looking for Enterprise Data Industry Consultant – Insurance
Job Summary

  • Enterprise Data Industry Consultant with 15+ years of expertise in data architecture and transformation, specializing in Property & Casualty (P&C) and commercial insurance domain.
  • The ideal candidate will combine deep technical expertise with strong stakeholder management capabilities and executive-level advisory and presentation skills to deliver transformational data solutions
  • This strategic role involves advising client executives and leaders in design and implementation of enterprise-scale data solutions using AWS cloud technologies for complex data modernization initiatives and driving data-driven decision making across insurance operations.
    Technical Expertise and experience including
  • Data Consultant: Enterprise-scale data solutions using AWS cloud technologies with Databricks or Snowflakes platform
    • Tools: for data transformation like Calibra, Qlik, Sigma, Power Platform
    • Data Engineering: ETL/ELT pipeline development, data validation using DVT, and data quality frameworks
    • Database Technologies: Advanced expertise in PostgreSQL and Databricks or Snowflake for data warehousing and analytics
    • AWS Cloud Platform: Expert proficiency in S3, Glue, Lambda, data lake implementation, and cloud infrastructure management
      Insurance Domain Knowledge
  • P&C Insurance Operations: Deep understanding of policy administration, claims processing, underwriting, and rating systems
  • Actuarial Understanding: Familiarity with risk assessment, pricing optimization, loss reserving, and catastrophe modeling
  • Regulatory Compliance: Knowledge of insurance regulatory requirements, NAIC reporting, and statutory/GAAP financial reporting, GDPR
  • Commercial Insurance: Expertise in commercial lines including workers' compensation, general liability, and property insurance

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