Data Architect

London
20 hours ago
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Data Architect – Mainframe Migration & Modernisation (Contract)

We’re recruiting an experienced Data Architect to lead a critical mainframe data migration and modernisation programme for a large enterprise environment. This is a hands-on, delivery-focused role working on complex Db2 on z/OS systems and migrating data to modern cloud-based relational platforms.

You’ll be responsible for designing and delivering Change Data Capture (CDC) pipelines, ensuring accurate, low-risk data movement with zero-surprise cutovers. The role involves deep involvement across data modelling, integration architecture, validation, reconciliation, and event-driven design.

Key Responsibilities

  • Design and operate CDC pipelines (IBM CDC, Precisely or equivalent)

  • Migrate data from Db2 / mainframe (z/OS) to PostgreSQL / Aurora

  • Build Kafka-based integration pipelines and event-driven architectures

  • Deliver dual-run migrations, cutover planning, rollback and reconciliation

  • Perform logical and physical data modelling (OLTP and analytics trade-offs)

  • Ensure strong data quality, validation and governance controls

    Essential Skills

  • Proven experience as a Data Architect or Data Migration Architect

  • Strong Db2 and mainframe (z/OS) knowledge

  • Hands-on CDC design and delivery

  • Kafka and event-driven integration experience

  • PostgreSQL / Aurora data modelling

  • Strong SQL and data validation mindset

    Nice to Have

  • IBM CDC / Precisely

  • COBOL copybooks or VSAM exposure

  • Financial services or large-scale enterprise environments

    This role suits a senior, hands-on architect who enjoys owning complex data migrations end to end

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