Senior Data Engineer AWS

Client Server
London
3 days ago
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Senior Data Engineer (AWS) London / WFH to £90k

Do you have expertise with modern data platform engineering?

You could be progressing your career in a senior, hands-on role at a well established consumer facing financial services company that help people to manage debt, as they go through a technical transformation and scale-up following recent investment.

As a Senior Data Engineer you will be responsible for designing, building and owning the new cloud (AWS) hosted data platform from the ground up. You'll collaborate with the Data Platform Lead, work closely with software engineering teams, the BI function and the Enterprise Architect to enable analytics, insight, AI and safe system transitions.

You'll own and evolve data ingestion pipelines, including incremental migration from a legacy monolith and Oracle-based systems, dual-running and reconciliation during platform transition (12-24 month initiative) and be responsible for the ongoing ingestion from systems of record (e.g. Sage, HR systems, HubSpot) and partners with the ultimate aim of establishing a hub-and-spoke, single source of truth data architecture that supports both transition and long term scale...

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