Senior Data Engineer

VIA MATCH LIMITED
London
5 days ago
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Senior Data Engineer

£70,000–£120,000 | London (Hybrid)

Snowflake | Modern Data Platforms | Consulting Environment

We’re hiring a Senior Data Engineer to help design and deliver modern data platforms for a range of clients in a consulting environment.

This is a London-based, hybrid role, with some office presence required. You’ll work on high-impact data projects using Snowflake and the modern data stack, partnering closely with engineers, architects and senior stakeholders.

If you enjoy solving complex data problems, working across different client environments, and having real influence over design and delivery, this role offers both challenge and progression.

What you’ll be doing

  • Designing and building modern, cloud-based data platforms
  • Leading or contributing to complex Snowflake implementations
  • Building scalable data ingestion, transformation and analytics pipelines
  • Translating business requirements into robust technical designs
  • Acting as a trusted data consultant to client stakeholders
  • Mentoring engineers and helpin...

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