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Senior Engineer, Data Engineering

Harnham
Newcastle upon Tyne
23 hours ago
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Data Engineer Join a fast-growing e-commerce technology company as a Data Engineer dealing with real-time data.

The team is small, highly technical, and product-driven, building the entire platform in-house for maximum flexibility and efficiency. My client is looking for a Data Engineer who enjoys working close to both data and backend systems. Build and maintain data pipelines from event capture through to storage and analytics layers.

Support backend feature development that depends on data flows and insights.

Work closely with engineers across data, backend, and frontend to ensure smooth integrations.

Deploy, test, and optimise workloads in AWS without heavy reliance on managed services.

Core language: Python (essential)

Cloud: AWS (flexibility with this)

Bonus experience:

Understanding of how web data is generated (browser events, JavaScript, network requests)

Exposure to analytical features, vector stores, or ML-driven products

2–3+ years’ experience in a Python-heavy data or backend engineering role.

~ Curiosity about how data moves across the web and how insights drive product impact.

~

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