Data Architect

Ampstek
London
2 months ago
Applications closed

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Role: Snowflake Data Architect

Location: London, UK

Is it Permanent / Contract: Perm

Is it Onsite/Remote/Hybrid: Hybrid

Start Date: 1st Week of January

Job Description:

Roles & Responsibilities

  • Possess 15 plus years of work experience at a reputable Data & AI services firm.
  • Outstanding written and verbal communication skills, with a flair for compelling storytelling.
  • Analyse complex insurance data to identify trends, patterns, and insights that support strategic business decisions.
  • Design and implement an enterprise-grade Data Vault 2.0 architecture on Snowflake, ensuring scalability, flexibility, and auditability.
  • Lead the end-to-end data architecture design, from data ingestion through transformation to reporting layers.
  • Collaborate with business stakeholders to understand insurance-specific data requirements (e.g., policy, claims, underwriting, premiums, risk, reinsurance).
  • Define data modelling standards, naming conventions, and governance frameworks aligned with industry best practices.
  • Work with data engineering teams to implement dbt-based data pipelines for data transformation and lineage tracking.
  • Ensure efficient data integration and performance optimization across Snowflake and downstream systems.
  • Partner with BI developers to enable Power BI reporting and semantic modelling using curated data layers.
  • Oversee data quality, validation, and reconciliation processes to ensure accurate and reliable reporting.
  • Provide technical leadership and mentorship to engineering and analytics teams on Data Vault and Snowflake architecture.

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