Sr. Data Architect (Enterprise Cloud Platform)

Response Informatics
London
1 day ago
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Mission::

We are looking for an Enterprise Cloud Platform Architect with strong experience across major cloud data platforms (e.g., Databricks, Snowflake, BigQuery). This role will support the Discovery, Design & Implementation phase(s) by assessing current platforms and designing integration and migration patterns for a future connected data platform, with a focus on the Retail/CPG domain and successfully mapping & delivering the leadership vision with expected outcomes.

Required skills and experience

  • 8+ years in data engineering / data platform roles, with at least 35 years in architecture-focused positions.
  • Strong hands-on experience with at least two major cloud data platforms (e.g., Databricks, Snowflake, BigQuery) in production environments.
  • Solid understanding of cross-cloud integration patterns (networking, identity, data movement, catalog/governance integration).
  • Experience designing or supporting large-scale data platform modernisation, consolidation, or migration programmes.
  • Ability to create clear technical documentation and communicate architecture options to both engineers and non-technical stakeholders.
  • Retail/CPG industry experience, with exposure to typical data domains (e.g., POS, consumer, trade prom...

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