Data Engineer

Aimtech Recruitment
City of London
1 month ago
Applications closed

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Were partnering with a leading organisation seeking a Snowflake specialist to help modernise and scale their data capability.

This is a delivery-focused role where youll shape cloud data architecture, lead migrations, and build high-performance data pipelines that directly support business-critical decision making.


The Opportunity

Youll take ownership of Snowflake environments from design through to optimisation, ensuring data is structured, accessible and engineered for performance.

Working across technical and business teams, youll translate complex requirements into scalable, resilient data solutions that support analytics, reporting and operational insight.


Your remit will include:

  • Architecting and optimising Snowflake data platforms
  • Leading data ingestion, transformation and consumption strategies
  • Delivering complex data migrations into Snowflake
  • Designing robust data models and warehousing solutions
  • Building and maintaining batch and streaming pipelines
  • Driving best practice across modern data tooling and ELT frameworks
  • Partnering with stakeholders to ensure data solutions align with co...

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