Data Architecture Design(AWS services (Aurora, S3, Lambda), Snowflake, Databricks, and Reltio )[...] (Basé à London)

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Data Architecture Design(AWS services (Aurora, S3, Lambda), Snowflake, Databricks, and Reltio )-UK (Hybrid), London

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Client:

N Consulting Ltd

Location:

London, United Kingdom

Job Category:

Other

-

EU work permit required:

Yes

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Job Reference:

37a48fdfa1dd

Job Views:

14

Posted:

28.04.2025

Expiry Date:

12.06.2025

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Job Description:

Location:London, UK (Hybrid)

Contract Duration:6 months

Required Core Skills:

Data Architect, with AWS (Aurora, S3, Lambda), Snowflake, Databricks, Reltio & reporting tools

Nice to have skills: Data governance & Data privacy regulations

Minimum years of experience: 12+ years

Job Description:

  • Data Architecture Design:Develop and implement robust data architectures utilizing AWS services (Aurora, S3, Lambda), Snowflake, Databricks, and Reltio to support business objectives.
  • Data Integration:Oversee data mapping, lineage, and migration processes. Design and manage ETL pipelines, ensuring seamless data flow across systems.
  • Reporting Solutions:Collaborate with stakeholders to design and implement reporting solutions using tools like Power BI and Tableau, ensuring data accuracy and accessibility.
  • API Management:Develop and manage APIs for efficient data integration between disparate systems, ensuring scalability and security.
  • Data Governance:Establish and enforce data governance frameworks, ensuring compliance with data privacy regulations such as GDPR.
  • Data Quality Assurance:Implement processes to maintain high data quality and accuracy throughout the data lifecycle.
  • Insurance Domain Expertise:Apply knowledge of motor fleet insurance operations, including underwriting, claims, and policy management, to inform data architecture decisions.
  • Regulatory Reporting:Ensure data architectures support reporting requirements for insurance carriers and regulatory bodies.

Required Skills and Experience:

  • Experience:Minimum of 12 years in data architecture, with a focus on AWS services, Snowflake, Databricks, and Reltio.
  • Technical Proficiency:Strong understanding of data modeling, ETL processes, data migration, and validation techniques.
  • Reporting Tools:Proficiency in Power BI, Tableau, or similar platforms.
  • API Integration:Experience in developing and managing APIs for data integration.
  • Data Governance:Expertise in data governance frameworks and familiarity with data privacy regulations, including GDPR.
  • Insurance Knowledge:Understanding of motor fleet insurance operations and regulatory reporting requirements is highly desirable.

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