Data Engineer

Harnham
Slough
1 day ago
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DATA ENGINEER

LONDON

£75,000


THE COMPANY

This dynamic media powerhouse is a leader in audio, publishing, and digital content. As part of a global team, you’ll play a pivotal role in shaping how data drives revenue and audience engagement, especially in the high-impact world of radio competitions. Your work will directly influence how markets across the UK and EU leverage data to optimize commercial performance, from advertising metrics to competition insights.


THE ROLE

As a Data Engineer, you will build and refine the data infrastructure that powers global commercial reporting and competition analytics. Your expertise will ensure the right data is in the right place, enabling teams to measure revenue, pricing, and audience engagement effectively.

Specifically, you can expect to be involved in the following:

  • Technical tasks: Designing and maintaining scalable data pipelines (Python, SQL), optimizing cloud-based data platforms (GCP/AWS), and collaborating on analytics layers to support real-time decision-making.
  • Other key responsibilities: Partnering with cross-functional teams to rebuild competition data infrastructure, ensuring seamless data collection and analysis for marketing and revenue insights.


SKILLS AND EXPERIENCE

The successful Data Engineer will have the following skills and experience:

  • 3+ years of hands-on experience in data engineering, with a focus on analytics layers.
  • Proficiency in Python and SQL—essential for pipeline development and data transformation.
  • Experience with cloud platforms (GCP preferred, but AWS also valued).
  • A proactive, honest, and tech-agnostic mindset - unafraid to challenge the status quo and drive improvements.
  • Confidence in collaborating across teams and markets to deliver impactful solutions.

Nice-to-haves: Familiarity with Airflow, DBT, BigQuery, Redshift, Terraform, or Kubernetes.


BENEFITS

The successful Data Engineer will receive the following benefits:

  • Salary up to £75,000
  • Flexible working arrangements, including hybrid/remote options – 2x per week in the London office maximum.
  • Opportunities for professional growth in a rapidly expanding team.
  • A collaborative environment where your ideas shape global strategy.


HOW TO APPLY

Please register your interest by sending your resume/CV to Joana Alves via the Apply link on this page.

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