Postgres Data Architect

Stackstudio Digital.
London
1 month ago
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Job Details
Role / Job Title:Postgres Data Architect with CDC Skills
Work Location:250 Bishopsgate, London, UK
Office Presence (Hybrid):2 days per week
The Role
PostgreSQL Data Architect with strong hands-on experience in Change Data Capture (CDC). The candidate will design and implement robust data migration strategies, ensuring seamless integration between legacy systems and modern cloud-based architectures.
Responsibilities
  • Architect CDC Pipelines: Design and optimize Change Data Capture workflows (IBM CDC or equivalent), including subscription design, bookmarks, resync, and replay strategies
  • Cloud Migration & Hosting: Lead PostgreSQL migration from on-premises/mainframe to cloud platforms (AWS Aurora preferred), ensuring performance, security, and scalability
  • Integration & ETL Pipelines: Build robust pipelines using CDC Kafka/S3 Aurora with UPSERT/MERGE patterns; guarantee idempotency, ordering, and reliable delivery
  • Data Encoding & Validation: Manage EBCDIC UTF-8 conversions, packed decimal/binary numeric, and validate transformations with automated test suites
  • Cutover & Governance: Execute dual-run validations, reconciliation (counts, checksums), rollback strategies, and ensure compliance with masking, encryption, and IAM policies
  • Performance &...

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