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Data Engineer

Chapman Tate Associates
Guildford
3 days ago
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Director - IAM, PAM, Cloud and Cyber/Information Security Recruitment

Guildford


We’re looking for a Data Engineer to join a global analytics team, helping shape data‑driven decision‑making across the organisation.


In this role, you’ll design, build, and maintain modern data infrastructures and pipelines that support advanced analytical initiatives at scale. Working closely with data scientists, business stakeholders, and IT teams, you’ll ensure that high‑quality, accessible, and secure data is at the foundation of every strategic decision.


What You’ll Do

  • Build, maintain, and optimise end‑to‑end data pipelines across multiple sources and Big Data platforms.
  • Model data landscapes and design secure, scalable integration solutions that support AA objectives.
  • Manage cloud‑based data environments, with a strong focus on AWS.
  • Use distributed processing frameworks (Spark, Hadoop, EMR, Glue) and a range of database technologies (RDBMS, NoSQL, MPP).
  • Collaborate with data scientists and engineers to curate and prepare data for machine learning and advanced analytics.
  • Modernise legacy systems into reusable, production‑ready components.
  • Help define standards and best practices.
  • Ensure compliance with data security and privacy requirements.
  • Mentor junior engineers and contribute to a collaborative, high‑performance engineering culture.
  • Stay current with emerging tools, technologies, and methodologies to drive continuous innovation.

What You’ll Bring

  • Master’s degree in a relevant field (Applied Mathematics, Computer Science, Engineering, Statistics, etc.).
  • Experience in data engineering or similar roles within large corporate or regulated environments.
  • Hands‑on experience across the full data lifecycle, including real‑time and sensor data (nice to have).
  • Strong skills working with structured, semi‑structured, and unstructured datasets.
  • Expertise with:

    • Distributed Processing: Spark, Hadoop, EMR, Glue
    • Python, Java, or Scala
    • Software engineering standards, testing frameworks, and best practices.
    • AWS cloud engineering.


  • Excellent analytical problem‑solving skills with a creative, results‑oriented mindset.
  • Clear and confident communication skills, with the ability to work cross‑functionally.
  • A passion for enabling others and making Advanced Analytics accessible across the organisation.

Apply Today

If you’re motivated to build impactful data solutions and drive analytics innovation on a global scale, we’d love to hear from you.


Apply now or get in touch for a confidential discussion.


Seniority level

  • Mid‑Senior level

Employment type

  • Full‑time

Job function

  • Information Technology
  • Technology, Information and Media, Data Infrastructure and Analytics, and IT System Data Services


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