Data Architect / Data Modeler Contract

Consortia Group
City of London
2 weeks ago
Create job alert

Are you ready to lead major enterprise data initiatives across Finance, CRM, and Master Data Management (MDM)? If you’re a passionate Data Modeler/Architect who thrives on building end-to-end data solutions, this could be the perfect opportunity for you.

Joining a highly regarded client within the financial services sector, you will collaborate with architects, engineers, and analysts to shape the data backbone of large-scale programmes. Your impact will directly influence critical business capabilities and future-proof data ecosystems across multiple domains.

Key Responsibilities:

  • Develop conceptual, logical, and physical data models for enterprise-wide initiatives.

  • Build end-to-end data lifecycle event flows aligned to logical models and systems.

  • Create and maintain comprehensive metadata, data dictionaries, and entity relationships.

  • Translate business needs into scalable, compliant data structures.

  • Champion data governance policies and standards.

  • Model structured and unstructured data across relational and NoSQL databases.

  • Implement data models on cloud platforms including AWS, Azure, and Snowflake.

  • Support data migration, integration, and reconciliation strategies.

What Is On Offer:

  • Day rate: £600 - £700 per day

  • London - 2 days in the office a week

  • Minimum of 6 months

  • IR35 Status: Outside IR35

Please apply if you want to know more!


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