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Data Engineer – AWS | Innovative Financial Services | Hybrid London

Finsbury Square
3 days ago
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Data Engineer – AWS | Innovative Financial Services | Hybrid – London
£70,000 – £75,000 + Benefits | Permanent - AWS Redshift, Glue, Lambda, S3

We’re working with a fast-growing, forward-thinking company in the financial services space that is undergoing a major data transformation. As part of their commitment to a data-driven future, they’re looking to bring on a Data Engineer to help scale their modern AWS cloud data platform.

This is a fantastic opportunity for someone who enjoys hands-on engineering, collaborating across teams, and having a real impact on how data is used throughout an organisation.

🔍 What You’ll Be Doing

  • Develop and maintain robust ELT pipelines and cloud-native data warehouse infrastructure (AWS stack)

  • Create and manage curated data models to support analytics, reporting, and operational use cases

  • Build and support reusable datasets and internal data layers used across multiple business functions

  • Collaborate with stakeholders to ensure data is accessible, high-quality, and documented

  • Promote the use of self-service analytics tools by building structured models and documentation

  • Contribute to team knowledge-sharing and best practice initiatives

    ✅ What You’ll Bring

  • 3+ years' experience in a data engineering role, ideally in a cloud-native environment

  • Strong programming skills in SQL and Python for data transformation and workflow automation

  • Experience with AWS data tools (e.g. Redshift, Glue, Lambda, S3) and infrastructure tools such as Terraform

  • Understanding of data modelling concepts (e.g. dimensional models, star/snowflake schemas)

  • Knowledge of data quality, access controls, and compliance frameworks

    🌟 Nice to Have

  • Experience with orchestration or pipeline frameworks like Airflow or dbt

  • Familiarity with BI platforms (e.g. Power BI, Tableau, QuickSight)

  • Exposure to streaming data, observability, or data lineage tools

  • Comfort working with diverse data sources such as APIs, CRMs, or SFTP

    💡 Why Apply?

  • Join a growing data team with greenfield projects and genuine ownership opportunities

  • Work on cloud-first, modern tooling in a company that invests in technology

  • Be part of an open, collaborative culture with real influence over data direction

  • Hybrid working model (3 days in office – central London)

    📩 Ready to take the next step? Apply today for immediate consideration.

    Salary: £65,000 - £75,000 + benefits

    Location: London - Hybrid working - 3 days in the office

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