Data Engineer

Harnham - Data & Analytics Recruitment
London
2 months ago
Applications closed

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Data Engineer

London - Hybrid (3 days) - £50,000 - £60,000

Company

Our client is a London-based company specialising in advertising and audience measurement. They provide independent, high-quality audience metrics and insights from advertising campaigns, leveraging multi-year datasets including telco and movement data. Working with major industry partners, the organisation focuses on delivering accurate, actionable insights for the out-of-home advertising sector, supported by a small, close-knit team.

Responsibilities

As a Data Engineer, you will be a key contributor to building and maintaining the company's data infrastructure. Responsibilities include:

  • Build, manage, and maintain data pipelines across GCP and on-prem Proxmox environments
  • Ingest and manage new datasets, including ongoing feeds from Ipsos
  • Ensure reliable, GDPR-compliant delivery of data to analysts and researchers
  • Load and manage data in PostgreSQL and BigQuery
  • Develop and support API-based data ingestion pipelines
  • Manage and optimise cloud and on-prem infrastructure for reliability and efficiency
  • Perform Linux and networking tasks related to on-prem systems
  • Support ad-hoc and exploratory data projects as required

Requirements

  • 2+ yea...

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