Senior Data Engineer AWS - Finance Consultancy

Client Server
Greater London
3 days ago
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Senior Data Engineer (AWS Kafka Big Data) London / WFH to £85k

Are you a tech savvy Data Engineer with AWS expertise combined with client facing skills?

You could be joining a global technology consultancy with a range of banking, financial services and insurance clients in a senior, hands-on Data Engineer role.

As a Senior Data Engineer you will design and build end-to-end real-time data pipelines using AWS native tools, Kafka and modern data architectures, applying AWS Well-Architected Principles to ensure scalability, security and resilience. You'll collaborate directly with clients to analyse requirements, define solutions and deliver production grade systems, leading the development of robust, well tested and fault tolerant data engineering solutions.

Location / WFH:

There's a hybrid work from home model with two days a week in the London, City office (or at client site in London).

About you:

  • You are an experienced Data Engineer within financial services or consulting environments
  • You have expe...

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