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Data Engineer AWS

InterQuest Group
London
2 weeks ago
Applications closed

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Data Engineer – AWS | Innovative Financial Services | Hybrid London

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Principle Data Engineer ( AWS & Airflow )

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Principal Data Engineer

AWS Data Engineer

Data Engineer – Hybrid (2–3 Days in Office)
London | Full-Time
Salary - £70-80K per annum

Our client, a scaling FinTech are looking for a skilled

Data Engineer

to design, build, and maintain scalable data solutions that empower analytics, reporting, and self-service across the business.

Key Responsibilities
Build and maintain robust ELT pipelines and cloud-based data warehouses (e.g., AWS Redshift)
Model curated data layers to support analytics and decision-making
Develop and manage reusable, high-quality data products
Promote self-service with intuitive data models and BI tool integration
Ensure compliance, data governance, and security best practices

Essential:
3+ years’ experience in data engineering and warehousing
Proficiency with SQL, Python, and AWS tools (Redshift, Glue, S3, Lambda, etc.)
Strong grasp of data modeling, governance, and pipeline orchestration
Excellent communication and collaboration skills in Agile teams

Desirable:
Experience with dbt, Airflow, Monte Carlo, and BI tools (Power BI, Tableau, QuickSight)
Knowledge of data product principles, real-time pipelines, and data enablement programs

Join to shape a data-driven future and unlock the power of trusted, accessible insights.
Apply now to be part of our data transformation journey -

National AI Awards 2025

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